{"title":"特邀社论:针对各种网络攻击的非线性网络系统弹性模糊控制合成","authors":"Xiangpeng Xie, Tae H. Lee, Jianwei Xia, Reinaldo Martinez Palhares, Anh-Tu Nguyen","doi":"10.1049/cth2.12729","DOIUrl":null,"url":null,"abstract":"<p>In recent years, there has been a growing interest in non-linear networked systems. They have a wide range of applications, many of which are security-critical. This has triggered a great deal of interest in non-linear network systems where attacks exist, bringing the issue of network security into control theory.</p><p>Fuzzy control theory transforms the handling of non-linear network systems under attack, addressing security issues like spoofing and DoS attacks. It enhances resource utilization efficiency through resilient triggering mechanisms suited for frequency/duration-limited attacks. As a rule-based approach using linguistic control rules, it operates on potentially erroneous data without needing an exact mathematical model, simplifying design and application. This special issue focuses on research ideas, articles, and experimental studies related to “Resilient fuzzy control synthesis of non-linear networked systems against various cyber-attacks” in order to learn, analyse, and predict the application of fuzzy control theory in non-linear networked systems against cyber-attacks by deep learning.</p><p>In this special issue, the final 17 accepted papers have been peer-reviewed. These papers can be categorized into three main groups, and the following is a brief description of each paper in this special issue.</p><p>Arunagirinathan et al., in their paper ‘Robust T-S fuzzy-model-based non-fragile sampled-data control for cyber-physical systems with stochastic delay and cyber-attacks’, proposed a non-vulnerable sampled-data control strategy based on the Takagi-Sugeno fuzzy model for cyber-physical systems under cyber-attack. A T-S fuzzy system with augmented state vectors is designed by using random variables conforming to the Bernoulli distribution to characterize random delays and attack effects in data transmission. A new stability criterion is developed by utilizing the fractional delayed state looped functional method, and its effectiveness against periodic and non-periodic attacks is verified in simulations. The study also demonstrates its superiority over existing methods through three numerical models.</p><p>Guo et al., in their paper ‘Resilient control design for large-scale networked control systems under denial-of-service attacks’, explore the exponential stability of large-scale networked control systems under denial-of-service attacks and design a resilient state feedback controller. The prediction-based controller is used to compensate for large input delays within the system to improve system performance, and a stability criterion for large-scale networked control systems under denial-of-service attacks is obtained. In addition, a criterion based on linear matrix inequalities is proposed for designing a controller against denial-of-service attacks and the effectiveness of the proposed method is verified by an interconnected power system in two regions.</p><p>Sun et al., in their paper ‘Event-based reduced-order H<sub>∞</sub> estimation for switched complex networks based on T-S fuzzy model’, propose a memory-based adaptive trigger mechanism that utilizes the T-S fuzzy model to decompose a non-linear complex network into a set of linear components, which provides a sufficient condition for estimating the exponential stability of the error system under the given constraints. In addition, the study combines an event-triggered communication scheme with a fuzzy reduced-order filter to design a memory-type adaptive event-triggered scheme to provide adaptive functionality and thus reduce the utilization of limited network resources. Numerical simulation results show that the step-down system is effective in practice.</p><p>Zhu et al., in their paper ‘Fuzzy functional observer-based sliding mode control for T-S fuzzy cyber-physical systems subject to disturbances and deception attacks’, explore a fuzzy functional observer-based sliding mode control for T-S fuzzy cyber-physical systems has been investigated. The attack is modelled as an unknown non-linear exogenous system. A fuzzy learning functional observer is designed to estimate unavailable states, attacks, and disturbances, using fuzzy logic to learn unknown non-linearities and ensure accuracy. A fuzzy sliding mode controller is then developed for robust compensation against attacks and disturbances. Sufficient conditions ensure exponential convergence of the closed-loop system. Simulations verify the effectiveness of the algorithm.</p><p>Liu et al., in their paper ‘Event-based dynamic output feedback control of fuzzy systems against DoS attacks’, explore event-triggered dynamic output feedback control for fuzzy systems against denial-of-service (DoS) attacks. A robust framework is developed to consider random DoS attacks and actuator failures to enhance the resilience of the controller, and a probabilistic event-triggered protocol with uncertain probability is introduced to reduce network communication overhead. In addition, a dual-asynchronous dynamic output feedback controller is designed by considering the potential mismatches between premise variables and modes in fuzzy system and controller, and the effectiveness of the proposed approach is verified through comprehensive numerical examples, emphasizing its effectiveness in handling asynchronous control scenarios and resilience to DoS attacks in fuzzy systems.</p><p>Liu et al., in their paper ‘Adaptive fuzzy fault-tolerant control for cooperative output regulation with unknown non-linear disturbances and actuator faults’, propose an adaptive fuzzy fault-tolerant controller that utilizes a fuzzy logic system to approximate unknown non-linear disturbances. The controller not only can successfully handle actuator failures and effectively track references in the presence of unknown non-linear disturbances but also has superior convergence speed and tracking performance.</p><p>Lu et al., in their paper ‘Finite-time adaptive fuzzy tracking control for high-order non-linear time-delay systems with dead-zone’, explore the adaptive fuzzy finite-time tracking control problem by introducing a fuzzy logic system to approximate the uncertain non-linear function in the system, which allows the tracking error to converge to a small neighbourhood near the origin in finite time. Experimental results show that the control scheme is effective.</p><p>Gong et al., in their paper ‘Leaky echo state network based on methane topology applied to time series prediction’, propose an echo state network model called F-ESN based on methane topology, which changes the connection pattern of neurons in the initial reservoir layer, not only improving the transmission efficiency of neurons but also increasing the stability of the system structure. In addition, the MFO with adaptive dynamic operator optimization is also used to optimize three parameters of the ESN. The effectiveness of the proposed method is verified by simulating the low-frequency SIN time series, the high-frequency SIN time series, and the MG time series, and the methane topology can further improve the prediction accuracy of the leaky echo state network.</p><p>Lun et al., in their paper ‘A long-term memory enhanced echo state network and its optimization’, propose a novel and improved leaky integral echo state network (Leaky-ESN) model called long-term memory enhanced echo state network (LTME-ESN), the basic concept of which is to update the states of neurons in the repository by integrating the input gate and forget gate concepts of LSTM into the echo state network. Low-frequency sinusoidal, high-frequency sinusoidal time and chaotic time series were used to evaluate the effectiveness of the Leaky-ESN model. According to all the results of the simulation experiments, the LTME-ESN model exhibits better prediction accuracy and lower volatility.</p><p>Pan et al., in their paper ‘Optimal frequency fault-tolerant control of virtual synchronous generator based on adaptive dynamic programming with fuzzy critic estimator’, propose a frequency fault-tolerant control method in the distributed generation system utilizing adaptive dynamic programming combined with fuzzy critic estimation, which combines adaptive dynamic programming and fuzzy comprehensive evaluation to achieve optimal control performance in the presence of actuator faults. The highly coupled non-linear Hamilton–Jacobi–Bellman equation is solved efficiently by using an adaptive dynamic planning method based on fuzzy critic estimation, which ensures the state convergence and uniform limit boundedness of the system. Simulation results verify the effectiveness of the proposed optimal control method and demonstrate its ability to maintain finite frequency error even in the presence of faults.</p><p>Jiang et al., in their paper ‘Design of fuzzy sliding mode controller for islanded AC/DC hybrid microgrid with cyber-attacks’, propose a T-S fuzzy system control method combining sliding mode control and fuzzy logic control under an islanded AC/DC hybrid microgrid. To facilitate the controller design process, the T-S fuzzy system is proposed to approximate the original non-linear dynamic model of the AC/DC hybrid microgrid with high accuracy. To reduce the influence of external disturbance and cyber-attacks, an integral sliding mode controller is considered. In addition, to eliminate the chattering performance of the sliding mode control theory, a fuzzy logic controller is designed to optimize the switching region in the boundary layer of the saturation function. The robustness and effectiveness of the designed fuzzy sliding mode control method are verified based on the microgrid system state response simulation results.</p><p>Lun et al., in their paper ‘Fixed-time adaptive tracking control for MIMO non-linear system with input delay saturation based on echo state network’, propose a fixed-time adaptive tracking control based on echo state networks for a multi-input multi-output non-linear strict-feedback system with input delayed saturation. Based on the feature that echoes state networks can obtain better estimation performance at lower computational cost, the unknown non-linear function is approximated during the controller design process. The time-delay system with input saturation is eliminated by constructing an auxiliary system. The closed-loop system is proved to be semi-globally practical and fixed-time stabilized by simulation, and the proposed scheme is effective.</p><p>Visakamoorthi et al., in their paper ‘Reachable set estimation and H<sub>∞</sub> performance for delayed fuzzy multi-agent systems under false data injection attacks’, investigate the reachable set estimation (RSE) problem for fuzzy-model-based leader-follower multi-agent systems (MASs) that are subject to time-varying delays and false data injection (FDI) attacks. Both leader and follower agents are assumed to have time-varying delays and randomly occurring false data attacks are considered in the proposed sampled data controller for follower agents. New stability and reachable set boundary conditions are implemented in the form of linear matrix inequalities (LMIs) based on Lyapunov theory, Kronecker product, and cyclic generalized information. Control parameters and desired performance metrics are obtained by solving matrix inequalities.</p><p>Miao et al., in their paper ‘Tangent barrier Lyapunov function based adaptive event-triggered control for CPS under false data injection attacks’, present an adaptive event-triggered control scheme for a class of continuous-time linear cyber-physical systems (CPS) with unknown false data injection attacks (FDIA) and state constraints. A two-step backstepping control, an adaptive boundary estimation mechanism, and a Nussbaum-type function are combined to deal with FDIA on sensors and actuators. The tangent barrier Lyapunov function (TBLF) is used while state constraints are imposed, and communication limitations are overcome by designing an event-triggered mechanism (ETM). Simulation results validate its effectiveness.</p><p>Dai et al., in their paper ‘Fuzzy high order differentiator observer based resilient control for distributed battery energy storage systems against unbounded FDI attacks’, propose a fuzzy high order differentiator (FHOD) observer for distributed resilient control in distributed battery energy storage systems (BESSs), addressing frequency recovery and the balancing of the state of charge (SOC) after secondary control inputs have been subjected to false data injection attacks (FDI). The FHOD mitigates performance issues from traditional sliding mode observers by using fuzzy logic to optimize differentiator coefficients, reducing transient overshoot during attack signal changes for improved response and accuracy. Simulations show the strategy's effectiveness against FDI attacks and superior transient performance over standard HOD observers.</p><p>Wang et al., in their paper ‘Smart meter privacy control strategy based on multi-agent hidden Markov energy management model under low trust communication’, present a multi-agent hidden Markov model for energy management to enhance consumer privacy. It features a Bayesian risk model accounting for privacy and ESS losses, coupled with a lithium battery model to evaluate ESS degradation. The approach, integrating a Bayesian-hidden Markov simulation of attackers, is validated using the ECO dataset, demonstrating that it can prolong the ESS lifespan by factoring in multi-agent strategies and ESS degradation.</p><p>Liu et al., in their paper ‘Event-triggered adaptive fuzzy bipartite containment control for switched non-linear multi-agent systems with actuator attacks’, investigate a switched non-linear multi-agent systems (MASs) with actuator attacks and propose an event-triggered adaptive fuzzy bipartite containment control strategy. Fuzzy logic systems (FLSs) are applied to approximate the unknown non-linear functions, and an adaptive bipartite containment control approach is designed to deal with the actuator attacks and reduce the communication burden. The adaptive bipartite containment control scheme ensures all signals are semi-globally uniformly ultimately bounded, with followers reaching bipartite consensus and aligning with leaders' convex set despite actuator attacks. A simulation example confirms the strategy's effectiveness.</p><p></p><p>Xiangpeng Xie received B.S. and Ph.D. degrees in engineering from Northeastern University, Shenyang, China, in 2004 and 2010, respectively. From 2010 to 2014, he was a senior engineer with the Metallurgical Corporation of China, Ltd. He is currently a professor at the School of Internet of Things, Nanjing University of Posts and Telecommunications, Nanjing, China. His research interests include fuzzy modelling and control synthesis, state estimation, optimization in process industries, and intelligent optimization algorithms. Dr. Xie is an associate editor for <i>IEEE Transactions on Industrial Informatics</i>, <i>IEEE Transactions on Fuzzy Systems</i>, and <i>IEEE Transactions on Cybernetics</i>.</p><p></p><p>Tae H. Lee received B.S., M.S., and Ph.D. degrees in electrical engineering from Yeungnam University, Gyeongsan, Republic of Korea, in 2009, 2011, and 2015, respectively. He was a postdoctoral researcher with Yeungnam University, from 2015 to 2017, and an Alfred Deakin postdoctoral research fellow with the Institute for Intelligent Systems Research and Innovation, Deakin University, Australia, in 2017. He joined Jeonbuk National University, Jeonju, Republic of Korea, in September 2017, where he is currently an assistant professor. He is also a co-author of the monographs: Recent advances in control and filtering of dynamic systems with constrained signals (Springer-Nature, 2018) and Dynamic systems with time delays: Stability and control (Springer-Nature, 2019). His research interests include complex dynamical networks, sampled-data control systems, chaotic/biological systems, and networked-control systems. Dr. Lee was a recipient of the Highly Cited Researcher Award by Clarivate Analytics, in 2019 and 2020. He currently serves as an associate editor of <i>Applied Mathematics and Computation</i>.</p><p></p><p>Jianwei Xia received his Ph.D. degree in control theory and control engineering from Nanjing University of Science and Technology in 2007. From 2010 to 2012, he worked as a postdoctoral research associate at the School of Automation, Southeast University, Nanjing, China. From 2013 to 2014, he worked as a postdoctoral research associate in the Department of Electrical Engineering, Yeungnam University, Kyongsan, Korea. He is a professor at the School of Mathematical Sciences, Liaocheng University. Dr. Xia was awarded Special Expert of Taishan Scholar in the year 2023 from Shandong Province, and GuangYue Excellent Scholar in the year 2019 from Liaocheng University. His research topics are robust control, stochastic systems, and neural networks.</p><p></p><p>Reinaldo Martinez Palhares (Member, IEEE) received his Ph.D. degree in electrical engineering from the UNICAMP, Campinas, Brazil, in 1998. He is currently a full professor at the Department of Electronics Engineering, Federal University of Minas Gerais, Belo Horizonte, Brazil. His research interests include robust control, fault detection, diagnosis and prognosis, and artificial intelligence. Prof. Palhares has been an associate editor for the <i>IEEE Transactions on Fuzzy Systems</i>, <i>IEEE Transactions on Industrial Electronics</i>, and <i>Sensors</i>.</p><p></p><p>Anh-Tu Nguyen received a degree in engineering and an M.Sc. degree in automatic control from the Grenoble Institute of Technology, Grenoble, France, in 2009, and a Ph.D. degree in automatic control from the University of Valenciennes, Valenciennes, France, in 2013. He is currently an associate professor at the INSA Hauts-de-France, Université Polytechnique Hauts-de-France, Valenciennes. His research interests include robust control and estimation, cybernetics control systems, and human-machine shared control with a strong emphasis on mechatronics applications (see more information at https://sites.google.com/view/anh-tu-nguyen). He is an associate editor for the <i>IEEE Transactions on Intelligent Transportation Systems</i>, <i>IFAC Journal Control Engineering Practice</i>, <i>IET Journal of Engineering</i>, <i>SAE International Journal of Vehicle Dynamics, Stability, and NVH</i>, <i>Springer Automotive Innovation</i>, <i>Frontiers in Control Engineering</i>, and the guest editor of special issues in various international journals.</p>","PeriodicalId":50382,"journal":{"name":"IET Control Theory and Applications","volume":"18 16","pages":"2015-2018"},"PeriodicalIF":2.2000,"publicationDate":"2024-08-22","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://onlinelibrary.wiley.com/doi/epdf/10.1049/cth2.12729","citationCount":"0","resultStr":"{\"title\":\"Guest editorial: Resilient fuzzy control synthesis of non-linear networked systems against various cyber-attacks\",\"authors\":\"Xiangpeng Xie, Tae H. Lee, Jianwei Xia, Reinaldo Martinez Palhares, Anh-Tu Nguyen\",\"doi\":\"10.1049/cth2.12729\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p>In recent years, there has been a growing interest in non-linear networked systems. They have a wide range of applications, many of which are security-critical. This has triggered a great deal of interest in non-linear network systems where attacks exist, bringing the issue of network security into control theory.</p><p>Fuzzy control theory transforms the handling of non-linear network systems under attack, addressing security issues like spoofing and DoS attacks. It enhances resource utilization efficiency through resilient triggering mechanisms suited for frequency/duration-limited attacks. As a rule-based approach using linguistic control rules, it operates on potentially erroneous data without needing an exact mathematical model, simplifying design and application. This special issue focuses on research ideas, articles, and experimental studies related to “Resilient fuzzy control synthesis of non-linear networked systems against various cyber-attacks” in order to learn, analyse, and predict the application of fuzzy control theory in non-linear networked systems against cyber-attacks by deep learning.</p><p>In this special issue, the final 17 accepted papers have been peer-reviewed. These papers can be categorized into three main groups, and the following is a brief description of each paper in this special issue.</p><p>Arunagirinathan et al., in their paper ‘Robust T-S fuzzy-model-based non-fragile sampled-data control for cyber-physical systems with stochastic delay and cyber-attacks’, proposed a non-vulnerable sampled-data control strategy based on the Takagi-Sugeno fuzzy model for cyber-physical systems under cyber-attack. A T-S fuzzy system with augmented state vectors is designed by using random variables conforming to the Bernoulli distribution to characterize random delays and attack effects in data transmission. A new stability criterion is developed by utilizing the fractional delayed state looped functional method, and its effectiveness against periodic and non-periodic attacks is verified in simulations. The study also demonstrates its superiority over existing methods through three numerical models.</p><p>Guo et al., in their paper ‘Resilient control design for large-scale networked control systems under denial-of-service attacks’, explore the exponential stability of large-scale networked control systems under denial-of-service attacks and design a resilient state feedback controller. The prediction-based controller is used to compensate for large input delays within the system to improve system performance, and a stability criterion for large-scale networked control systems under denial-of-service attacks is obtained. In addition, a criterion based on linear matrix inequalities is proposed for designing a controller against denial-of-service attacks and the effectiveness of the proposed method is verified by an interconnected power system in two regions.</p><p>Sun et al., in their paper ‘Event-based reduced-order H<sub>∞</sub> estimation for switched complex networks based on T-S fuzzy model’, propose a memory-based adaptive trigger mechanism that utilizes the T-S fuzzy model to decompose a non-linear complex network into a set of linear components, which provides a sufficient condition for estimating the exponential stability of the error system under the given constraints. In addition, the study combines an event-triggered communication scheme with a fuzzy reduced-order filter to design a memory-type adaptive event-triggered scheme to provide adaptive functionality and thus reduce the utilization of limited network resources. Numerical simulation results show that the step-down system is effective in practice.</p><p>Zhu et al., in their paper ‘Fuzzy functional observer-based sliding mode control for T-S fuzzy cyber-physical systems subject to disturbances and deception attacks’, explore a fuzzy functional observer-based sliding mode control for T-S fuzzy cyber-physical systems has been investigated. The attack is modelled as an unknown non-linear exogenous system. A fuzzy learning functional observer is designed to estimate unavailable states, attacks, and disturbances, using fuzzy logic to learn unknown non-linearities and ensure accuracy. A fuzzy sliding mode controller is then developed for robust compensation against attacks and disturbances. Sufficient conditions ensure exponential convergence of the closed-loop system. Simulations verify the effectiveness of the algorithm.</p><p>Liu et al., in their paper ‘Event-based dynamic output feedback control of fuzzy systems against DoS attacks’, explore event-triggered dynamic output feedback control for fuzzy systems against denial-of-service (DoS) attacks. A robust framework is developed to consider random DoS attacks and actuator failures to enhance the resilience of the controller, and a probabilistic event-triggered protocol with uncertain probability is introduced to reduce network communication overhead. In addition, a dual-asynchronous dynamic output feedback controller is designed by considering the potential mismatches between premise variables and modes in fuzzy system and controller, and the effectiveness of the proposed approach is verified through comprehensive numerical examples, emphasizing its effectiveness in handling asynchronous control scenarios and resilience to DoS attacks in fuzzy systems.</p><p>Liu et al., in their paper ‘Adaptive fuzzy fault-tolerant control for cooperative output regulation with unknown non-linear disturbances and actuator faults’, propose an adaptive fuzzy fault-tolerant controller that utilizes a fuzzy logic system to approximate unknown non-linear disturbances. The controller not only can successfully handle actuator failures and effectively track references in the presence of unknown non-linear disturbances but also has superior convergence speed and tracking performance.</p><p>Lu et al., in their paper ‘Finite-time adaptive fuzzy tracking control for high-order non-linear time-delay systems with dead-zone’, explore the adaptive fuzzy finite-time tracking control problem by introducing a fuzzy logic system to approximate the uncertain non-linear function in the system, which allows the tracking error to converge to a small neighbourhood near the origin in finite time. Experimental results show that the control scheme is effective.</p><p>Gong et al., in their paper ‘Leaky echo state network based on methane topology applied to time series prediction’, propose an echo state network model called F-ESN based on methane topology, which changes the connection pattern of neurons in the initial reservoir layer, not only improving the transmission efficiency of neurons but also increasing the stability of the system structure. In addition, the MFO with adaptive dynamic operator optimization is also used to optimize three parameters of the ESN. The effectiveness of the proposed method is verified by simulating the low-frequency SIN time series, the high-frequency SIN time series, and the MG time series, and the methane topology can further improve the prediction accuracy of the leaky echo state network.</p><p>Lun et al., in their paper ‘A long-term memory enhanced echo state network and its optimization’, propose a novel and improved leaky integral echo state network (Leaky-ESN) model called long-term memory enhanced echo state network (LTME-ESN), the basic concept of which is to update the states of neurons in the repository by integrating the input gate and forget gate concepts of LSTM into the echo state network. Low-frequency sinusoidal, high-frequency sinusoidal time and chaotic time series were used to evaluate the effectiveness of the Leaky-ESN model. According to all the results of the simulation experiments, the LTME-ESN model exhibits better prediction accuracy and lower volatility.</p><p>Pan et al., in their paper ‘Optimal frequency fault-tolerant control of virtual synchronous generator based on adaptive dynamic programming with fuzzy critic estimator’, propose a frequency fault-tolerant control method in the distributed generation system utilizing adaptive dynamic programming combined with fuzzy critic estimation, which combines adaptive dynamic programming and fuzzy comprehensive evaluation to achieve optimal control performance in the presence of actuator faults. The highly coupled non-linear Hamilton–Jacobi–Bellman equation is solved efficiently by using an adaptive dynamic planning method based on fuzzy critic estimation, which ensures the state convergence and uniform limit boundedness of the system. Simulation results verify the effectiveness of the proposed optimal control method and demonstrate its ability to maintain finite frequency error even in the presence of faults.</p><p>Jiang et al., in their paper ‘Design of fuzzy sliding mode controller for islanded AC/DC hybrid microgrid with cyber-attacks’, propose a T-S fuzzy system control method combining sliding mode control and fuzzy logic control under an islanded AC/DC hybrid microgrid. To facilitate the controller design process, the T-S fuzzy system is proposed to approximate the original non-linear dynamic model of the AC/DC hybrid microgrid with high accuracy. To reduce the influence of external disturbance and cyber-attacks, an integral sliding mode controller is considered. In addition, to eliminate the chattering performance of the sliding mode control theory, a fuzzy logic controller is designed to optimize the switching region in the boundary layer of the saturation function. The robustness and effectiveness of the designed fuzzy sliding mode control method are verified based on the microgrid system state response simulation results.</p><p>Lun et al., in their paper ‘Fixed-time adaptive tracking control for MIMO non-linear system with input delay saturation based on echo state network’, propose a fixed-time adaptive tracking control based on echo state networks for a multi-input multi-output non-linear strict-feedback system with input delayed saturation. Based on the feature that echoes state networks can obtain better estimation performance at lower computational cost, the unknown non-linear function is approximated during the controller design process. The time-delay system with input saturation is eliminated by constructing an auxiliary system. The closed-loop system is proved to be semi-globally practical and fixed-time stabilized by simulation, and the proposed scheme is effective.</p><p>Visakamoorthi et al., in their paper ‘Reachable set estimation and H<sub>∞</sub> performance for delayed fuzzy multi-agent systems under false data injection attacks’, investigate the reachable set estimation (RSE) problem for fuzzy-model-based leader-follower multi-agent systems (MASs) that are subject to time-varying delays and false data injection (FDI) attacks. Both leader and follower agents are assumed to have time-varying delays and randomly occurring false data attacks are considered in the proposed sampled data controller for follower agents. New stability and reachable set boundary conditions are implemented in the form of linear matrix inequalities (LMIs) based on Lyapunov theory, Kronecker product, and cyclic generalized information. Control parameters and desired performance metrics are obtained by solving matrix inequalities.</p><p>Miao et al., in their paper ‘Tangent barrier Lyapunov function based adaptive event-triggered control for CPS under false data injection attacks’, present an adaptive event-triggered control scheme for a class of continuous-time linear cyber-physical systems (CPS) with unknown false data injection attacks (FDIA) and state constraints. A two-step backstepping control, an adaptive boundary estimation mechanism, and a Nussbaum-type function are combined to deal with FDIA on sensors and actuators. The tangent barrier Lyapunov function (TBLF) is used while state constraints are imposed, and communication limitations are overcome by designing an event-triggered mechanism (ETM). Simulation results validate its effectiveness.</p><p>Dai et al., in their paper ‘Fuzzy high order differentiator observer based resilient control for distributed battery energy storage systems against unbounded FDI attacks’, propose a fuzzy high order differentiator (FHOD) observer for distributed resilient control in distributed battery energy storage systems (BESSs), addressing frequency recovery and the balancing of the state of charge (SOC) after secondary control inputs have been subjected to false data injection attacks (FDI). The FHOD mitigates performance issues from traditional sliding mode observers by using fuzzy logic to optimize differentiator coefficients, reducing transient overshoot during attack signal changes for improved response and accuracy. Simulations show the strategy's effectiveness against FDI attacks and superior transient performance over standard HOD observers.</p><p>Wang et al., in their paper ‘Smart meter privacy control strategy based on multi-agent hidden Markov energy management model under low trust communication’, present a multi-agent hidden Markov model for energy management to enhance consumer privacy. It features a Bayesian risk model accounting for privacy and ESS losses, coupled with a lithium battery model to evaluate ESS degradation. The approach, integrating a Bayesian-hidden Markov simulation of attackers, is validated using the ECO dataset, demonstrating that it can prolong the ESS lifespan by factoring in multi-agent strategies and ESS degradation.</p><p>Liu et al., in their paper ‘Event-triggered adaptive fuzzy bipartite containment control for switched non-linear multi-agent systems with actuator attacks’, investigate a switched non-linear multi-agent systems (MASs) with actuator attacks and propose an event-triggered adaptive fuzzy bipartite containment control strategy. Fuzzy logic systems (FLSs) are applied to approximate the unknown non-linear functions, and an adaptive bipartite containment control approach is designed to deal with the actuator attacks and reduce the communication burden. The adaptive bipartite containment control scheme ensures all signals are semi-globally uniformly ultimately bounded, with followers reaching bipartite consensus and aligning with leaders' convex set despite actuator attacks. A simulation example confirms the strategy's effectiveness.</p><p></p><p>Xiangpeng Xie received B.S. and Ph.D. degrees in engineering from Northeastern University, Shenyang, China, in 2004 and 2010, respectively. From 2010 to 2014, he was a senior engineer with the Metallurgical Corporation of China, Ltd. He is currently a professor at the School of Internet of Things, Nanjing University of Posts and Telecommunications, Nanjing, China. His research interests include fuzzy modelling and control synthesis, state estimation, optimization in process industries, and intelligent optimization algorithms. Dr. Xie is an associate editor for <i>IEEE Transactions on Industrial Informatics</i>, <i>IEEE Transactions on Fuzzy Systems</i>, and <i>IEEE Transactions on Cybernetics</i>.</p><p></p><p>Tae H. Lee received B.S., M.S., and Ph.D. degrees in electrical engineering from Yeungnam University, Gyeongsan, Republic of Korea, in 2009, 2011, and 2015, respectively. He was a postdoctoral researcher with Yeungnam University, from 2015 to 2017, and an Alfred Deakin postdoctoral research fellow with the Institute for Intelligent Systems Research and Innovation, Deakin University, Australia, in 2017. He joined Jeonbuk National University, Jeonju, Republic of Korea, in September 2017, where he is currently an assistant professor. He is also a co-author of the monographs: Recent advances in control and filtering of dynamic systems with constrained signals (Springer-Nature, 2018) and Dynamic systems with time delays: Stability and control (Springer-Nature, 2019). His research interests include complex dynamical networks, sampled-data control systems, chaotic/biological systems, and networked-control systems. Dr. Lee was a recipient of the Highly Cited Researcher Award by Clarivate Analytics, in 2019 and 2020. He currently serves as an associate editor of <i>Applied Mathematics and Computation</i>.</p><p></p><p>Jianwei Xia received his Ph.D. degree in control theory and control engineering from Nanjing University of Science and Technology in 2007. From 2010 to 2012, he worked as a postdoctoral research associate at the School of Automation, Southeast University, Nanjing, China. From 2013 to 2014, he worked as a postdoctoral research associate in the Department of Electrical Engineering, Yeungnam University, Kyongsan, Korea. He is a professor at the School of Mathematical Sciences, Liaocheng University. Dr. Xia was awarded Special Expert of Taishan Scholar in the year 2023 from Shandong Province, and GuangYue Excellent Scholar in the year 2019 from Liaocheng University. His research topics are robust control, stochastic systems, and neural networks.</p><p></p><p>Reinaldo Martinez Palhares (Member, IEEE) received his Ph.D. degree in electrical engineering from the UNICAMP, Campinas, Brazil, in 1998. He is currently a full professor at the Department of Electronics Engineering, Federal University of Minas Gerais, Belo Horizonte, Brazil. His research interests include robust control, fault detection, diagnosis and prognosis, and artificial intelligence. Prof. Palhares has been an associate editor for the <i>IEEE Transactions on Fuzzy Systems</i>, <i>IEEE Transactions on Industrial Electronics</i>, and <i>Sensors</i>.</p><p></p><p>Anh-Tu Nguyen received a degree in engineering and an M.Sc. degree in automatic control from the Grenoble Institute of Technology, Grenoble, France, in 2009, and a Ph.D. degree in automatic control from the University of Valenciennes, Valenciennes, France, in 2013. He is currently an associate professor at the INSA Hauts-de-France, Université Polytechnique Hauts-de-France, Valenciennes. His research interests include robust control and estimation, cybernetics control systems, and human-machine shared control with a strong emphasis on mechatronics applications (see more information at https://sites.google.com/view/anh-tu-nguyen). He is an associate editor for the <i>IEEE Transactions on Intelligent Transportation Systems</i>, <i>IFAC Journal Control Engineering Practice</i>, <i>IET Journal of Engineering</i>, <i>SAE International Journal of Vehicle Dynamics, Stability, and NVH</i>, <i>Springer Automotive Innovation</i>, <i>Frontiers in Control Engineering</i>, and the guest editor of special issues in various international journals.</p>\",\"PeriodicalId\":50382,\"journal\":{\"name\":\"IET Control Theory and Applications\",\"volume\":\"18 16\",\"pages\":\"2015-2018\"},\"PeriodicalIF\":2.2000,\"publicationDate\":\"2024-08-22\",\"publicationTypes\":\"Journal Article\",\"fieldsOfStudy\":null,\"isOpenAccess\":false,\"openAccessPdf\":\"https://onlinelibrary.wiley.com/doi/epdf/10.1049/cth2.12729\",\"citationCount\":\"0\",\"resultStr\":null,\"platform\":\"Semanticscholar\",\"paperid\":null,\"PeriodicalName\":\"IET Control Theory and Applications\",\"FirstCategoryId\":\"94\",\"ListUrlMain\":\"https://onlinelibrary.wiley.com/doi/10.1049/cth2.12729\",\"RegionNum\":4,\"RegionCategory\":\"计算机科学\",\"ArticlePicture\":[],\"TitleCN\":null,\"AbstractTextCN\":null,\"PMCID\":null,\"EPubDate\":\"\",\"PubModel\":\"\",\"JCR\":\"Q2\",\"JCRName\":\"AUTOMATION & CONTROL SYSTEMS\",\"Score\":null,\"Total\":0}","platform":"Semanticscholar","paperid":null,"PeriodicalName":"IET Control Theory and Applications","FirstCategoryId":"94","ListUrlMain":"https://onlinelibrary.wiley.com/doi/10.1049/cth2.12729","RegionNum":4,"RegionCategory":"计算机科学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q2","JCRName":"AUTOMATION & CONTROL SYSTEMS","Score":null,"Total":0}
引用次数: 0
摘要
近年来,人们对非线性网络系统的兴趣与日俱增。非线性网络系统的应用范围十分广泛,其中许多都对安全至关重要。模糊控制理论改变了受攻击的非线性网络系统的处理方式,解决了欺骗和 DoS 攻击等安全问题。它通过适合频率/持续时间有限攻击的弹性触发机制,提高了资源利用效率。作为一种使用语言控制规则的基于规则的方法,它无需精确的数学模型即可对潜在的错误数据进行操作,从而简化了设计和应用。本特刊重点关注与 "非线性网络系统抵御各种网络攻击的弹性模糊控制合成 "相关的研究观点、文章和实验研究,以便通过深度学习学习、分析和预测模糊控制理论在非线性网络系统中抵御网络攻击的应用。Arunagirinathan等人在论文《Robust T-S fuzzy-model-based non-fragile sampled-data control for cyber-physical systems with stochastic delay and cyber-attacks》中提出了一种基于Takagi-Sugeno模糊模型的非脆弱性采样数据控制策略,适用于网络攻击下的网络物理系统。通过使用符合伯努利分布的随机变量来描述数据传输中的随机延迟和攻击效应,设计了一个具有增强状态向量的 T-S 模糊系统。利用分数延迟状态循环函数法开发了一种新的稳定性准则,并通过仿真验证了该准则对周期性和非周期性攻击的有效性。Guo 等人在论文《拒绝服务攻击下大规模网络控制系统的弹性控制设计》中探讨了拒绝服务攻击下大规模网络控制系统的指数稳定性,并设计了一种弹性状态反馈控制器。基于预测的控制器用于补偿系统内的大输入延迟,以提高系统性能,并获得了拒绝服务攻击下大规模网络控制系统的稳定性准则。此外,还提出了一种基于线性矩阵不等式的控制器设计准则,用于抵御拒绝服务攻击,并通过两个地区的互联电力系统验证了所提方法的有效性、提出了一种基于记忆的自适应触发机制,利用 T-S 模糊模型将非线性复杂网络分解为一组线性分量,为在给定约束条件下估计误差系统的指数稳定性提供了充分条件。此外,该研究还将事件触发通信方案与模糊降阶滤波器相结合,设计了一种记忆型自适应事件触发方案,以提供自适应功能,从而降低有限网络资源的利用率。数值仿真结果表明,降阶系统在实践中是有效的。Zhu 等人在论文 "Fuzzy functional observer-based sliding mode control for T-S fuzzy cyber-physical systems subject to disturbances and deception attacks "中探讨了一种基于模糊函数观测器的 T-S 模糊网络物理系统滑模控制。攻击被模拟为一个未知的非线性外生系统。设计了一个模糊学习功能观测器来估计不可用的状态、攻击和干扰,使用模糊逻辑来学习未知的非线性并确保准确性。然后开发了一个模糊滑模控制器,用于对攻击和干扰进行稳健补偿。充分条件确保了闭环系统的指数收敛性。Liu 等人在论文 "基于事件的模糊系统动态输出反馈控制对抗 DoS 攻击 "中探讨了模糊系统对抗拒绝服务(DoS)攻击的事件触发动态输出反馈控制。他们开发了一个考虑随机 DoS 攻击和执行器故障的稳健框架,以增强控制器的弹性,并引入了一个具有不确定概率的概率事件触发协议,以减少网络通信开销。 在他们的论文《基于回波状态网络的具有输入延迟饱和的多输入多输出非线性严格反馈系统的固定时间自适应跟踪控制》中,提出了一种基于回波状态网络的具有输入延迟饱和的多输入多输出非线性严格反馈系统的固定时间自适应跟踪控制。基于回声状态网络能以较低的计算成本获得更好的估计性能这一特点,在控制器设计过程中对未知的非线性函数进行了近似。通过构建辅助系统,消除了输入饱和的时延系统。Visakamoorthi 等人在论文 "Reachable set estimation and H∞ performance for delayed fuzzy multi-agent systems under false data injection attacks "中研究了基于模糊模型的领导者-追随者多代理系统(MAS)的可达集估计(RSE)问题,该系统受到时变延迟和虚假数据注入(FDI)攻击。假定领导者和追随者代理都有时变延迟,并且在为追随者代理提出的采样数据控制器中考虑了随机发生的虚假数据攻击。基于 Lyapunov 理论、Kronecker 积和循环广义信息,以线性矩阵不等式 (LMI) 的形式实现了新的稳定性和可达集边界条件。Miao 等人在论文《虚假数据注入攻击下基于切线障壁 Lyapunov 函数的 CPS 自适应事件触发控制》中,针对一类具有未知虚假数据注入攻击(FDIA)和状态约束的连续时间线性网络物理系统(CPS)提出了一种自适应事件触发控制方案。该方案结合了两步反步进控制、自适应边界估计机制和 Nussbaum 型函数,以应对传感器和执行器上的 FDIA。在施加状态约束的同时,还使用了切线屏障 Lyapunov 函数 (TBLF),并通过设计事件触发机制 (ETM) 克服了通信限制。Dai 等人在论文《基于模糊高阶微分器观测器的分布式电池储能系统弹性控制,对抗无约束 FDI 攻击》中提出了一种模糊高阶微分器观测器(FHOD),用于分布式电池储能系统(BESS)中的分布式弹性控制,解决二次控制输入受到虚假数据注入攻击(FDI)后的频率恢复和电荷状态(SOC)平衡问题。FHOD 利用模糊逻辑优化微分器系数,减少了攻击信号变化时的瞬态过冲,从而提高了响应速度和精度,从而缓解了传统滑动模式观测器的性能问题。仿真结果表明,该策略能有效抵御 FDI 攻击,其瞬态性能优于标准 HOD 观察器。Wang 等人在论文《低信任度通信下基于多代理隐马尔可夫能源管理模式的智能电表隐私控制策略》中,提出了一种用于能源管理的多代理隐马尔可夫模型,以增强消费者隐私保护。该模型的特点是采用贝叶斯风险模型来考虑隐私和 ESS 损失,并采用锂电池模型来评估 ESS 退化情况。该方法整合了对攻击者的贝叶斯隐马尔可夫模拟,并利用 ECO 数据集进行了验证,证明它可以通过考虑多代理策略和 ESS 退化因素来延长 ESS 的使用寿命、在他们的论文 "Event-triggered adaptive fuzzy bipartite containment control for switched non-linear multi-agent systems with actuator attacks "中,研究了一种具有执行器攻击的交换式非线性多代理系统(MASs),并提出了一种事件触发的自适应模糊双方框控制策略。应用模糊逻辑系统(FLS)来逼近未知的非线性函数,并设计了一种自适应双方框控制方法来应对执行器攻击并减轻通信负担。自适应双方位遏制控制方案确保所有信号都是半全局均匀最终有界的,追随者会达成双方位共识,并与领导者的凸集保持一致,尽管会受到致动器的攻击。一个仿真实例证实了该策略的有效性。谢祥鹏分别于 2004 年和 2010 年获得中国沈阳东北大学工学学士和博士学位。2010 年至 2014 年,他在中国冶金科工股份有限公司担任高级工程师。现任南京邮电大学物联网学院教授。
Guest editorial: Resilient fuzzy control synthesis of non-linear networked systems against various cyber-attacks
In recent years, there has been a growing interest in non-linear networked systems. They have a wide range of applications, many of which are security-critical. This has triggered a great deal of interest in non-linear network systems where attacks exist, bringing the issue of network security into control theory.
Fuzzy control theory transforms the handling of non-linear network systems under attack, addressing security issues like spoofing and DoS attacks. It enhances resource utilization efficiency through resilient triggering mechanisms suited for frequency/duration-limited attacks. As a rule-based approach using linguistic control rules, it operates on potentially erroneous data without needing an exact mathematical model, simplifying design and application. This special issue focuses on research ideas, articles, and experimental studies related to “Resilient fuzzy control synthesis of non-linear networked systems against various cyber-attacks” in order to learn, analyse, and predict the application of fuzzy control theory in non-linear networked systems against cyber-attacks by deep learning.
In this special issue, the final 17 accepted papers have been peer-reviewed. These papers can be categorized into three main groups, and the following is a brief description of each paper in this special issue.
Arunagirinathan et al., in their paper ‘Robust T-S fuzzy-model-based non-fragile sampled-data control for cyber-physical systems with stochastic delay and cyber-attacks’, proposed a non-vulnerable sampled-data control strategy based on the Takagi-Sugeno fuzzy model for cyber-physical systems under cyber-attack. A T-S fuzzy system with augmented state vectors is designed by using random variables conforming to the Bernoulli distribution to characterize random delays and attack effects in data transmission. A new stability criterion is developed by utilizing the fractional delayed state looped functional method, and its effectiveness against periodic and non-periodic attacks is verified in simulations. The study also demonstrates its superiority over existing methods through three numerical models.
Guo et al., in their paper ‘Resilient control design for large-scale networked control systems under denial-of-service attacks’, explore the exponential stability of large-scale networked control systems under denial-of-service attacks and design a resilient state feedback controller. The prediction-based controller is used to compensate for large input delays within the system to improve system performance, and a stability criterion for large-scale networked control systems under denial-of-service attacks is obtained. In addition, a criterion based on linear matrix inequalities is proposed for designing a controller against denial-of-service attacks and the effectiveness of the proposed method is verified by an interconnected power system in two regions.
Sun et al., in their paper ‘Event-based reduced-order H∞ estimation for switched complex networks based on T-S fuzzy model’, propose a memory-based adaptive trigger mechanism that utilizes the T-S fuzzy model to decompose a non-linear complex network into a set of linear components, which provides a sufficient condition for estimating the exponential stability of the error system under the given constraints. In addition, the study combines an event-triggered communication scheme with a fuzzy reduced-order filter to design a memory-type adaptive event-triggered scheme to provide adaptive functionality and thus reduce the utilization of limited network resources. Numerical simulation results show that the step-down system is effective in practice.
Zhu et al., in their paper ‘Fuzzy functional observer-based sliding mode control for T-S fuzzy cyber-physical systems subject to disturbances and deception attacks’, explore a fuzzy functional observer-based sliding mode control for T-S fuzzy cyber-physical systems has been investigated. The attack is modelled as an unknown non-linear exogenous system. A fuzzy learning functional observer is designed to estimate unavailable states, attacks, and disturbances, using fuzzy logic to learn unknown non-linearities and ensure accuracy. A fuzzy sliding mode controller is then developed for robust compensation against attacks and disturbances. Sufficient conditions ensure exponential convergence of the closed-loop system. Simulations verify the effectiveness of the algorithm.
Liu et al., in their paper ‘Event-based dynamic output feedback control of fuzzy systems against DoS attacks’, explore event-triggered dynamic output feedback control for fuzzy systems against denial-of-service (DoS) attacks. A robust framework is developed to consider random DoS attacks and actuator failures to enhance the resilience of the controller, and a probabilistic event-triggered protocol with uncertain probability is introduced to reduce network communication overhead. In addition, a dual-asynchronous dynamic output feedback controller is designed by considering the potential mismatches between premise variables and modes in fuzzy system and controller, and the effectiveness of the proposed approach is verified through comprehensive numerical examples, emphasizing its effectiveness in handling asynchronous control scenarios and resilience to DoS attacks in fuzzy systems.
Liu et al., in their paper ‘Adaptive fuzzy fault-tolerant control for cooperative output regulation with unknown non-linear disturbances and actuator faults’, propose an adaptive fuzzy fault-tolerant controller that utilizes a fuzzy logic system to approximate unknown non-linear disturbances. The controller not only can successfully handle actuator failures and effectively track references in the presence of unknown non-linear disturbances but also has superior convergence speed and tracking performance.
Lu et al., in their paper ‘Finite-time adaptive fuzzy tracking control for high-order non-linear time-delay systems with dead-zone’, explore the adaptive fuzzy finite-time tracking control problem by introducing a fuzzy logic system to approximate the uncertain non-linear function in the system, which allows the tracking error to converge to a small neighbourhood near the origin in finite time. Experimental results show that the control scheme is effective.
Gong et al., in their paper ‘Leaky echo state network based on methane topology applied to time series prediction’, propose an echo state network model called F-ESN based on methane topology, which changes the connection pattern of neurons in the initial reservoir layer, not only improving the transmission efficiency of neurons but also increasing the stability of the system structure. In addition, the MFO with adaptive dynamic operator optimization is also used to optimize three parameters of the ESN. The effectiveness of the proposed method is verified by simulating the low-frequency SIN time series, the high-frequency SIN time series, and the MG time series, and the methane topology can further improve the prediction accuracy of the leaky echo state network.
Lun et al., in their paper ‘A long-term memory enhanced echo state network and its optimization’, propose a novel and improved leaky integral echo state network (Leaky-ESN) model called long-term memory enhanced echo state network (LTME-ESN), the basic concept of which is to update the states of neurons in the repository by integrating the input gate and forget gate concepts of LSTM into the echo state network. Low-frequency sinusoidal, high-frequency sinusoidal time and chaotic time series were used to evaluate the effectiveness of the Leaky-ESN model. According to all the results of the simulation experiments, the LTME-ESN model exhibits better prediction accuracy and lower volatility.
Pan et al., in their paper ‘Optimal frequency fault-tolerant control of virtual synchronous generator based on adaptive dynamic programming with fuzzy critic estimator’, propose a frequency fault-tolerant control method in the distributed generation system utilizing adaptive dynamic programming combined with fuzzy critic estimation, which combines adaptive dynamic programming and fuzzy comprehensive evaluation to achieve optimal control performance in the presence of actuator faults. The highly coupled non-linear Hamilton–Jacobi–Bellman equation is solved efficiently by using an adaptive dynamic planning method based on fuzzy critic estimation, which ensures the state convergence and uniform limit boundedness of the system. Simulation results verify the effectiveness of the proposed optimal control method and demonstrate its ability to maintain finite frequency error even in the presence of faults.
Jiang et al., in their paper ‘Design of fuzzy sliding mode controller for islanded AC/DC hybrid microgrid with cyber-attacks’, propose a T-S fuzzy system control method combining sliding mode control and fuzzy logic control under an islanded AC/DC hybrid microgrid. To facilitate the controller design process, the T-S fuzzy system is proposed to approximate the original non-linear dynamic model of the AC/DC hybrid microgrid with high accuracy. To reduce the influence of external disturbance and cyber-attacks, an integral sliding mode controller is considered. In addition, to eliminate the chattering performance of the sliding mode control theory, a fuzzy logic controller is designed to optimize the switching region in the boundary layer of the saturation function. The robustness and effectiveness of the designed fuzzy sliding mode control method are verified based on the microgrid system state response simulation results.
Lun et al., in their paper ‘Fixed-time adaptive tracking control for MIMO non-linear system with input delay saturation based on echo state network’, propose a fixed-time adaptive tracking control based on echo state networks for a multi-input multi-output non-linear strict-feedback system with input delayed saturation. Based on the feature that echoes state networks can obtain better estimation performance at lower computational cost, the unknown non-linear function is approximated during the controller design process. The time-delay system with input saturation is eliminated by constructing an auxiliary system. The closed-loop system is proved to be semi-globally practical and fixed-time stabilized by simulation, and the proposed scheme is effective.
Visakamoorthi et al., in their paper ‘Reachable set estimation and H∞ performance for delayed fuzzy multi-agent systems under false data injection attacks’, investigate the reachable set estimation (RSE) problem for fuzzy-model-based leader-follower multi-agent systems (MASs) that are subject to time-varying delays and false data injection (FDI) attacks. Both leader and follower agents are assumed to have time-varying delays and randomly occurring false data attacks are considered in the proposed sampled data controller for follower agents. New stability and reachable set boundary conditions are implemented in the form of linear matrix inequalities (LMIs) based on Lyapunov theory, Kronecker product, and cyclic generalized information. Control parameters and desired performance metrics are obtained by solving matrix inequalities.
Miao et al., in their paper ‘Tangent barrier Lyapunov function based adaptive event-triggered control for CPS under false data injection attacks’, present an adaptive event-triggered control scheme for a class of continuous-time linear cyber-physical systems (CPS) with unknown false data injection attacks (FDIA) and state constraints. A two-step backstepping control, an adaptive boundary estimation mechanism, and a Nussbaum-type function are combined to deal with FDIA on sensors and actuators. The tangent barrier Lyapunov function (TBLF) is used while state constraints are imposed, and communication limitations are overcome by designing an event-triggered mechanism (ETM). Simulation results validate its effectiveness.
Dai et al., in their paper ‘Fuzzy high order differentiator observer based resilient control for distributed battery energy storage systems against unbounded FDI attacks’, propose a fuzzy high order differentiator (FHOD) observer for distributed resilient control in distributed battery energy storage systems (BESSs), addressing frequency recovery and the balancing of the state of charge (SOC) after secondary control inputs have been subjected to false data injection attacks (FDI). The FHOD mitigates performance issues from traditional sliding mode observers by using fuzzy logic to optimize differentiator coefficients, reducing transient overshoot during attack signal changes for improved response and accuracy. Simulations show the strategy's effectiveness against FDI attacks and superior transient performance over standard HOD observers.
Wang et al., in their paper ‘Smart meter privacy control strategy based on multi-agent hidden Markov energy management model under low trust communication’, present a multi-agent hidden Markov model for energy management to enhance consumer privacy. It features a Bayesian risk model accounting for privacy and ESS losses, coupled with a lithium battery model to evaluate ESS degradation. The approach, integrating a Bayesian-hidden Markov simulation of attackers, is validated using the ECO dataset, demonstrating that it can prolong the ESS lifespan by factoring in multi-agent strategies and ESS degradation.
Liu et al., in their paper ‘Event-triggered adaptive fuzzy bipartite containment control for switched non-linear multi-agent systems with actuator attacks’, investigate a switched non-linear multi-agent systems (MASs) with actuator attacks and propose an event-triggered adaptive fuzzy bipartite containment control strategy. Fuzzy logic systems (FLSs) are applied to approximate the unknown non-linear functions, and an adaptive bipartite containment control approach is designed to deal with the actuator attacks and reduce the communication burden. The adaptive bipartite containment control scheme ensures all signals are semi-globally uniformly ultimately bounded, with followers reaching bipartite consensus and aligning with leaders' convex set despite actuator attacks. A simulation example confirms the strategy's effectiveness.
Xiangpeng Xie received B.S. and Ph.D. degrees in engineering from Northeastern University, Shenyang, China, in 2004 and 2010, respectively. From 2010 to 2014, he was a senior engineer with the Metallurgical Corporation of China, Ltd. He is currently a professor at the School of Internet of Things, Nanjing University of Posts and Telecommunications, Nanjing, China. His research interests include fuzzy modelling and control synthesis, state estimation, optimization in process industries, and intelligent optimization algorithms. Dr. Xie is an associate editor for IEEE Transactions on Industrial Informatics, IEEE Transactions on Fuzzy Systems, and IEEE Transactions on Cybernetics.
Tae H. Lee received B.S., M.S., and Ph.D. degrees in electrical engineering from Yeungnam University, Gyeongsan, Republic of Korea, in 2009, 2011, and 2015, respectively. He was a postdoctoral researcher with Yeungnam University, from 2015 to 2017, and an Alfred Deakin postdoctoral research fellow with the Institute for Intelligent Systems Research and Innovation, Deakin University, Australia, in 2017. He joined Jeonbuk National University, Jeonju, Republic of Korea, in September 2017, where he is currently an assistant professor. He is also a co-author of the monographs: Recent advances in control and filtering of dynamic systems with constrained signals (Springer-Nature, 2018) and Dynamic systems with time delays: Stability and control (Springer-Nature, 2019). His research interests include complex dynamical networks, sampled-data control systems, chaotic/biological systems, and networked-control systems. Dr. Lee was a recipient of the Highly Cited Researcher Award by Clarivate Analytics, in 2019 and 2020. He currently serves as an associate editor of Applied Mathematics and Computation.
Jianwei Xia received his Ph.D. degree in control theory and control engineering from Nanjing University of Science and Technology in 2007. From 2010 to 2012, he worked as a postdoctoral research associate at the School of Automation, Southeast University, Nanjing, China. From 2013 to 2014, he worked as a postdoctoral research associate in the Department of Electrical Engineering, Yeungnam University, Kyongsan, Korea. He is a professor at the School of Mathematical Sciences, Liaocheng University. Dr. Xia was awarded Special Expert of Taishan Scholar in the year 2023 from Shandong Province, and GuangYue Excellent Scholar in the year 2019 from Liaocheng University. His research topics are robust control, stochastic systems, and neural networks.
Reinaldo Martinez Palhares (Member, IEEE) received his Ph.D. degree in electrical engineering from the UNICAMP, Campinas, Brazil, in 1998. He is currently a full professor at the Department of Electronics Engineering, Federal University of Minas Gerais, Belo Horizonte, Brazil. His research interests include robust control, fault detection, diagnosis and prognosis, and artificial intelligence. Prof. Palhares has been an associate editor for the IEEE Transactions on Fuzzy Systems, IEEE Transactions on Industrial Electronics, and Sensors.
Anh-Tu Nguyen received a degree in engineering and an M.Sc. degree in automatic control from the Grenoble Institute of Technology, Grenoble, France, in 2009, and a Ph.D. degree in automatic control from the University of Valenciennes, Valenciennes, France, in 2013. He is currently an associate professor at the INSA Hauts-de-France, Université Polytechnique Hauts-de-France, Valenciennes. His research interests include robust control and estimation, cybernetics control systems, and human-machine shared control with a strong emphasis on mechatronics applications (see more information at https://sites.google.com/view/anh-tu-nguyen). He is an associate editor for the IEEE Transactions on Intelligent Transportation Systems, IFAC Journal Control Engineering Practice, IET Journal of Engineering, SAE International Journal of Vehicle Dynamics, Stability, and NVH, Springer Automotive Innovation, Frontiers in Control Engineering, and the guest editor of special issues in various international journals.
期刊介绍:
IET Control Theory & Applications is devoted to control systems in the broadest sense, covering new theoretical results and the applications of new and established control methods. Among the topics of interest are system modelling, identification and simulation, the analysis and design of control systems (including computer-aided design), and practical implementation. The scope encompasses technological, economic, physiological (biomedical) and other systems, including man-machine interfaces.
Most of the papers published deal with original work from industrial and government laboratories and universities, but subject reviews and tutorial expositions of current methods are welcomed. Correspondence discussing published papers is also welcomed.
Applications papers need not necessarily involve new theory. Papers which describe new realisations of established methods, or control techniques applied in a novel situation, or practical studies which compare various designs, would be of interest. Of particular value are theoretical papers which discuss the applicability of new work or applications which engender new theoretical applications.