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Cyclic mining of alarm and operator action events for enhanced process operation 对警报和操作员操作事件进行循环挖掘,以改进工艺操作
IF 5.4 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2024-09-07 DOI: 10.1016/j.conengprac.2024.106069

This paper addresses the challenge of fault propagation in industrial facilities, where a fault in one process variable can lead to cascading faults in other variables. As a result, the propagation of alarms corresponding to these faulty variables occurs, leading operators to potentially receive an excessive number of alarm notifications that could significantly impact their decision-making capabilities. To address this issue, a systematic method is proposed to investigate potential fault propagation paths to provide decision support in response to alarm notifications, in order to minimize industrial process failures. The contributions of this paper are twofold. Firstly, it involves enhanced dependency analysis that captures dependent alarms and identifies both weak and strong dependencies among alarm variables using historical alarm and event (A&E) logs that are generated by industrial control systems. Secondly, it offers comprehensive visualization of fault propagation in response to single and multiple alarms, including extracting crucial timing information, identifying the shortest, longest, and critical paths, and determining effective operator actions. The proposed method is designed to enhance process operation and provide essential decision support for industrial operators. The effectiveness of the proposed approach is validated through a case study using real industrial data.

本文探讨了工业设施中的故障传播难题,即一个过程变量的故障可能会导致其他变量出现连锁故障。因此,与这些故障变量相对应的警报传播会导致操作员可能收到过多的警报通知,从而严重影响他们的决策能力。为解决这一问题,本文提出了一种系统方法来调查潜在的故障传播路径,以便在响应警报通知时提供决策支持,从而最大限度地减少工业流程故障。本文有两方面的贡献。首先,它涉及增强型依赖性分析,利用工业控制系统生成的历史警报和事件(A&E)日志,捕捉依赖性警报并识别警报变量之间的弱依赖性和强依赖性。其次,它还能全面可视化故障传播,以响应单个和多个警报,包括提取关键的时序信息,识别最短、最长和关键路径,以及确定有效的操作员行动。所提出的方法旨在加强流程操作,为工业操作员提供必要的决策支持。通过使用真实工业数据进行案例研究,验证了所提方法的有效性。
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引用次数: 0
An experimentally verified robust backstepping approach for controlling robotic manipulators actuated via brushless DC motors 经实验验证的用于控制无刷直流电机驱动的机器人机械手的鲁棒后步法
IF 5.4 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2024-09-06 DOI: 10.1016/j.conengprac.2024.106073

This work presents the design and the corresponding stability analysis of a robust backstepping controller for robot manipulators driven by brushless DC motors. The overall stability of the mechanical and electrical subsystems is validated via Lyapunov based arguments. The proposed methodology achieves global practical tracking (i.e., globally uniformly ultimate boundedness) of the desired joint level trajectories despite the presence of uncertainties associated with the dynamical parameters of the mechanical and the electrical actuation system. Experimental studies performed on an in house built 2 link robotic device actuated via brushless DC motors are presented to illustrate the performance and feasibility of the proposed method.

本研究介绍了无刷直流电机驱动机器人机械手的鲁棒后步进控制器的设计和相应稳定性分析。通过基于 Lyapunov 的论证,验证了机械和电气子系统的整体稳定性。尽管存在与机械和电气执行系统动态参数相关的不确定性,但所提出的方法实现了所需关节水平轨迹的全局实际跟踪(即全局均匀终极约束)。本文介绍了在一个通过无刷直流电机驱动的自制双链路机器人装置上进行的实验研究,以说明所提方法的性能和可行性。
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引用次数: 0
Predictive modeling and robust nonlinear control of a polysilicon reactor system for enhanced solar cell production 多晶硅反应器系统的预测建模和稳健非线性控制,促进太阳能电池生产
IF 5.4 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2024-09-06 DOI: 10.1016/j.conengprac.2024.106065

Solar-grade silicon production is a critical component in the solar energy sector, with fluidized-bed reactors (FBRs) emerging as a promising alternative offering superior energy efficiency and operational advantages over conventional technologies. However, the operational complexity of FBR systems poses significant challenges to effectively controlling their operation at optimal conditions. This study introduces a predictive modeling framework for silicon production in fluidized bed reactors to characterize both the particle size distribution of the product and powder loss. Two different flow regime modeling approaches are explored to describe the silane pyrolysis reaction and illustrate how the deposition rate affects particle growth and powder loss. A discrete population balance equation is employed to estimate the particle size distribution as a function of the deposition rate. Subsequently, a robust nonlinear model predictive control (RNMPC) approach is utilized to regulate the system at the desired operating conditions, stabilize the product particle size distribution, and minimize powder loss. Detailed open-loop and closed-loop simulation studies demonstrate the successful integration of RNMPC and the proposed predictive modeling approach.

太阳能级硅生产是太阳能行业的关键组成部分,而流化床反应器(FBR)作为一种有前途的替代技术,与传统技术相比具有更高的能效和运行优势。然而,流化床反应器系统的操作复杂性给有效控制其在最佳条件下的运行带来了巨大挑战。本研究介绍了流化床反应器中硅生产的预测建模框架,以描述产品的粒度分布和粉末损耗。研究探讨了两种不同的流动状态建模方法,以描述硅烷热解反应,并说明沉积速率如何影响颗粒生长和粉末损耗。采用离散种群平衡方程来估算作为沉积速率函数的粒度分布。随后,利用鲁棒非线性模型预测控制 (RNMPC) 方法将系统调节到所需的运行条件,稳定产品粒度分布,并最大限度地减少粉末损耗。详细的开环和闭环模拟研究证明了 RNMPC 与所建议的预测建模方法的成功整合。
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引用次数: 0
A sparse regularized soft sensor based on GRU and self-interpretation double nonnegative garrote: From variable selection to structure optimization 基于 GRU 和自解释双非负加罗法的稀疏正则化软传感器:从变量选择到结构优化
IF 5.4 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2024-09-06 DOI: 10.1016/j.conengprac.2024.106074

Soft sensors, as a significant paradigm for industrial intelligence, are extensively utilized in large-scale industrial integration systems to estimate the pivotal quality variables. For deep neural network-based soft sensors, redundancy in input variables and network structure has emerged as one of the most important challenges. In this article, a sparse regularized soft sensor based on the gated recurrent unit (GRU) and self-interpretation dual nonnegative garrote is proposed. Initially, a proficiently trained GRU network is established as the pre-trained model, followed by the design of a set of self-interpretation factors based on the mean influence value of different input variables. Secondly, the contraction coefficients of the nonnegative garrote are sequentially incorporated into the GRU input and hidden layer weight matrices. Meanwhile, the self-interpretation factors are introduced into the constraints of the nonnegative garrote algorithm to guide it to adaptively adjust the applied penalty strength based on the relative importance of different input variables. The strategy integrates variable selection with the model training process to sparsify the network structure and provide self-interpretable variable selection results. Finally, the performance of the developed approach is verified through a practical application in power plant desulfurization systems. The case studies demonstrate that the developed approach for soft sensor modeling outperforms other existing methods and shows promising application prospects. In addition, the validity of the self-interpretable variable selection results is verified via the known mechanism analysis and expert experience.

软传感器作为工业智能的重要范例,被广泛应用于大型工业集成系统,以估算关键的质量变量。对于基于深度神经网络的软传感器来说,输入变量和网络结构的冗余是最重要的挑战之一。本文提出了一种基于门控递归单元(GRU)和自解释双非负加罗法的稀疏正则化软传感器。首先,建立一个训练有素的 GRU 网络作为预训练模型,然后根据不同输入变量的平均影响值设计一组自解释因子。其次,在 GRU 输入和隐藏层权重矩阵中依次加入非负加罗法的收缩系数。同时,在非负加罗法算法的约束条件中引入自解释因子,引导算法根据不同输入变量的相对重要性自适应地调整惩罚强度。该策略将变量选择与模型训练过程相结合,以稀疏化网络结构,并提供可自解释的变量选择结果。最后,通过在发电厂脱硫系统中的实际应用,验证了所开发方法的性能。案例研究表明,所开发的软传感器建模方法优于其他现有方法,具有广阔的应用前景。此外,通过已知机理分析和专家经验,验证了自解释变量选择结果的有效性。
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引用次数: 0
Interpretable operational condition attention-informed domain adaptation network for remaining useful life prediction under variable operational conditions 可解释的运行条件注意信息域适应网络,用于多变运行条件下的剩余使用寿命预测
IF 5.4 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2024-09-05 DOI: 10.1016/j.conengprac.2024.106080

Remaining useful life (RUL) prediction is critical to formulating appropriate maintenance strategies for machinery health management and is playing a vital role in the field of predictive maintenance. Limited by the time-varying operational conditions, traditional RUL prediction models trained on some run-to-failure (RTF) datasets are unlikely to be generalized to a new degradation process. To enhance the generalizability, recent studies have focused on the development of deep domain adaptation methods for RUL prediction, which mainly align the global temporal features across the source and target domains, resulting in imprecise predictions under time-varying operational conditions. In addition, existing RUL prediction methods are lacking in clear physical significance and interpretability. To address the above-mentioned issues, an operational condition attention (OCA) subnetwork is constructed to eliminate the entanglement between the time-varying operational conditions and monitoring data. Adversarial-based domain adaptation (ABDA) and distance-based domain adaptation (DBDA) methods were utilized respectively to reduce the distribution discrepancy of the temporal features. In this way, two novel domain adaption methods were proposed for RUL prediction with time-varying operational conditions. The comprehensive experiments were conducted on aero-engines to validate the proposed methods. Owing to the explicit modeling of the influence mechanism between the operational conditions and monitoring data, the proposed methods exhibit improved performance as well as higher prediction accuracy than traditional deep domain adaption methods while being certainly interpretable.

剩余使用寿命(RUL)预测对于制定适当的机械健康管理维护策略至关重要,在预测性维护领域发挥着重要作用。受时间变化运行条件的限制,在某些运行到故障(RTF)数据集上训练的传统 RUL 预测模型不太可能推广到新的退化过程。为了增强普适性,最近的研究集中于开发用于 RUL 预测的深度域适应方法,这些方法主要是调整源域和目标域的全局时间特征,导致在时变运行条件下的预测不精确。此外,现有的 RUL 预测方法缺乏明确的物理意义和可解释性。为解决上述问题,我们构建了运行条件关注(OCA)子网络,以消除时变运行条件与监测数据之间的纠缠。分别采用基于对抗的域适应(ABDA)和基于距离的域适应(DBDA)方法来减少时间特征的分布差异。因此,针对运行条件时变的 RUL 预测,提出了两种新型域自适应方法。在航空发动机上进行了综合实验,以验证所提出的方法。由于对运行条件和监测数据之间的影响机制进行了明确的建模,与传统的深度域自适应方法相比,所提出的方法性能得到了改善,预测精度更高,同时具有良好的可解释性。
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引用次数: 0
Reinforcement learning-based decision-making for spacecraft pursuit-evasion game in elliptical orbits 基于强化学习的椭圆轨道航天器追逐-逃避博弈决策
IF 5.4 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2024-09-05 DOI: 10.1016/j.conengprac.2024.106072

The orbital game theory is a fundamental technology for the cleanup of space debris to improve the safety of useful spacecraft in future, thus, this work develops a decision-making method by reinforcement learning technology to implement the pursuit-evasion game in elliptical orbits. The linearized Tschauner-Hempel equation describes the spacecraft's motion and the problem is formulated by game theory. Subsequently, an impulsive maneuvering model in a complete three-dimensional elliptical orbit is established. Then an algorithm based on deep deterministic policy gradient is designed to solve the optimal strategy for the pursuit-evasion game. For the successful decision of the pursuer, an extensive reward function is designed and improved considering the shortest time, optimal fuel, and collision avoidance. Finally, numerical simulations of a pursuit-evasion mission are performed to demonstrate the effectiveness and superiority of the proposed decision-making algorithm. The game success rate of the algorithm against targets with different maneuvering abilities is verified, which implies that the algorithm can be applied in extended scenarios.

轨道博弈论是清理空间碎片以提高未来有用航天器安全性的基础技术,因此,本研究利用强化学习技术开发了一种决策方法,以实现椭圆轨道上的追逐-逃避博弈。线性化的 Tschauner-Hempel 方程描述了航天器的运动,并用博弈论提出了问题。随后,建立了一个完整的三维椭圆轨道中的脉冲机动模型。然后设计了一种基于深度确定性策略梯度的算法来求解追逐-逃避博弈的最优策略。针对追逐者的成功决策,考虑到最短时间、最佳燃料和避免碰撞,设计并改进了广泛的奖励函数。最后,对追逐-规避任务进行了数值模拟,以证明所提决策算法的有效性和优越性。该算法对不同机动能力目标的博弈成功率得到了验证,这意味着该算法可以应用于更多场景。
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引用次数: 0
Synchronization and tracking control of 4WISBW system considering the differences in the characteristics of corner modules 考虑角模块特性差异的 4WISBW 系统的同步和跟踪控制
IF 5.4 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2024-09-04 DOI: 10.1016/j.conengprac.2024.106043

To enhance vehicle stability and safety, the four-wheel independent steer-by-wire (4WISBW) system has garnered significant attention. However, the characteristics of corner modules, including model parameters uncertainty and disturbance torque, directly contribute to the deterioration of dynamic response in tracking control. And the differences in the characteristics leading to reduced synchronization performance in the 4WISBW system and hindering effective coordination. To enhance the synchronization and tracking control performance of the 4WISBW system, a novel control strategy, coupled with the fictitious master-generalized mean deviation coupling structure (FMGMDCS), is proposed. Firstly, the corner module dynamic model and the vehicle dynamic model are established. Subsequently, the impact of the differences in the characteristics on the system's tracking and synchronization control is analyzed. Next, the FMGMDCS and the angle synchronization controller based on a new reaching law sliding mode control (NRLSMC) are proposed to compensate for synchronization errors in the 4WISBW system caused by the differences in the characteristics of corner modules. Finally, a radial basis function neural network fast terminal sliding mode control (RBF-FTSMC) steering angle tracking controller is designed to enhance the tracking performance of corner modules. Simulation and experimental results indicate that the proposed control strategy can effectively solve the synchronization problem of the 4WISBW system and improve the system's tracking performance.

为了提高车辆的稳定性和安全性,四轮独立线控转向(4WISBW)系统备受关注。然而,包括模型参数不确定性和干扰力矩在内的转角模块特性直接导致了跟踪控制中动态响应的恶化。这些特性的差异会降低 4WISBW 系统的同步性能,阻碍系统的有效协调。为了提高 4WISBW 系统的同步和跟踪控制性能,本文提出了一种新型控制策略,即虚构主-广义均值偏差耦合结构(FMGMDCS)。首先,建立了转角模块动态模型和车辆动态模型。随后,分析了特性差异对系统跟踪和同步控制的影响。接着,提出了基于新达到律滑模控制(NRLSMC)的 FMGMDCS 和角度同步控制器,以补偿转角模块特性差异对 4WISBW 系统造成的同步误差。最后,设计了径向基函数神经网络快速终端滑模控制(RBF-FTSMC)转向角跟踪控制器,以提高转角模块的跟踪性能。仿真和实验结果表明,所提出的控制策略能有效解决 4WISBW 系统的同步问题,提高系统的跟踪性能。
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引用次数: 0
Observer-based adaptive robust control of aircraft antiskid brakes with disturbance compensation 基于观测器的飞机防滑制动器自适应鲁棒控制与干扰补偿
IF 5.4 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2024-09-04 DOI: 10.1016/j.conengprac.2024.106079

The efficient antiskid braking control of aircraft is achieved by accurately tracking the optimal slip ratio. However, aircraft antiskid braking systems are subject to many parametric uncertainties and uncertain disturbances, and the limited sensor signals make it more difficult to design a high-performance antiskid braking system controller. To address this issue, an observer-based adaptive robust aircraft antiskid braking system controller with disturbance compensation is proposed to enhance the tracking performance and disturbance rejection of aircraft antiskid braking system. The proposed controller effectively integrates parameter identification, adaptive control, and extended state observer using the backstepping method. Parametric uncertainties and fast time-varying brake torque conversion coefficient are handled by adaptive law and least squares parameter identification method, respectively. After that, the remaining parametric uncertainties, parameter identification errors, and uncertain disturbances are observed integrally by constructing extended state observer and compensated in a feedforward way. Another feature of the designed controller is that the dynamics of the hydraulic system are considered, and the disturbances of the hydraulic system are also observed and compensated with extended state observer, thus further improving tracking accuracy. Since the burden of extended state observer is greatly reduced by adaptive law and parameter identification, the proposed controller can effectively avoid high-gain feedback while theoretically guaranteeing that the tracking error is bounded in the presence of time-variant uncertainties. The effectiveness of the proposed controller is proved by several sets of simulation tests and brake testing platform experiments.

飞机的高效防滑制动控制是通过精确跟踪最佳滑移比来实现的。然而,飞机防滑制动系统受到许多参数不确定性和不确定扰动的影响,而且传感器信号有限,增加了设计高性能防滑制动系统控制器的难度。针对这一问题,本文提出了一种基于观测器的自适应鲁棒飞机防滑制动系统控制器,该控制器具有扰动补偿功能,可提高飞机防滑制动系统的跟踪性能和扰动抑制能力。所提出的控制器有效地整合了参数识别、自适应控制和使用反步进方法的扩展状态观测器。参数不确定性和快速时变制动扭矩转换系数分别通过自适应法则和最小二乘法参数识别方法来处理。然后,通过构建扩展状态观测器综合观测其余参数不确定性、参数识别误差和不确定干扰,并以前馈方式进行补偿。所设计控制器的另一个特点是考虑了液压系统的动力学特性,同时还利用扩展状态观测器观测和补偿液压系统的干扰,从而进一步提高了跟踪精度。由于自适应规律和参数识别大大减轻了扩展状态观测器的负担,因此所提出的控制器可以有效避免高增益反馈,同时从理论上保证在存在时变不确定性的情况下跟踪误差是有界的。多组仿真测试和制动测试平台实验证明了所提控制器的有效性。
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引用次数: 0
Indoor formation motion planning using B-splines parametrization and evolutionary optimization 利用 B 样条参数化和进化优化进行室内编队运动规划
IF 5.4 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2024-09-04 DOI: 10.1016/j.conengprac.2024.106066

Formation generation with connectivity maintenance under efficiency restrictions for a group of autonomous vehicles is a challenging problem. By planning trajectories offline, the vehicles can follow optimized paths, resulting in improved efficiency in terms of time, energy, and resource utilization. This paper introduces a coherent approach that leverages evolutionary computing, notably a differential evolutionary algorithm, along with B-spline parametrizations, to effectively coordinate multiple indoor nanodrones. Off-line trajectories for both the leader and followers are designed to enforce multiple constraints (i.e., position, velocity, angles, thrust, angular velocity, waypoint passing, obstacle avoidance). The proposed approach accommodates intricate maneuvers such as formation switching and obstacle avoidance, facilitated by a knot refinement procedure that minimizes conservatism in constraint enforcement. The theoretical results are validated in both simulation and experiments.

在效率限制条件下为一组自动驾驶车辆生成具有连接性的编队是一个具有挑战性的问题。通过离线规划轨迹,车辆可以遵循优化路径,从而提高时间、能源和资源利用效率。本文介绍了一种利用进化计算(特别是微分进化算法)和 B 样条参数化的连贯方法,以有效协调多个室内纳米无人机。为领导者和跟随者设计的离线轨迹可执行多重约束(即位置、速度、角度、推力、角速度、航点通过、避障)。所提出的方法能适应复杂的机动,如编队切换和避障,并通过节点细化程序将约束执行中的保守性降到最低。模拟和实验验证了理论结果。
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引用次数: 0
Comparative study of adaptive trajectory tracking controller for four-wheel mobile robot with prescribed-prediction performance 具有规定预测性能的四轮移动机器人自适应轨迹跟踪控制器比较研究
IF 5.4 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2024-09-03 DOI: 10.1016/j.conengprac.2024.106076

The nonlinear external disturbances and unmodeled dynamics characteristics have crucial impacts on trajectory tracking control accuracy of a four-wheel mobile robot (FWMR) under complicated working conditions. In this work, an adaptive trajectory tracking controller is designed for the FWMR to achieve the prescribed-prediction performance. On the basis of establishing the FWMR’s dynamics equations, an enhanced prescribed performance function (EPPF) is constructed to restrain the tracking errors of the FWMR within a certain range without requiring the exact initial conditions, thus guaranteeing the transient performance of the control system. Then, an optimal-predictive control (OPC) approach is presented to fulfill the asymptotic stability of the tracking errors of the FWMR. Specifically, the radial basis function neural network (RBFNN) incorporating a minimum parameter learning approach that are implanted into the expected controller is designed to attenuate the nonlinear external disturbances and the unmodeled dynamics of the FWMR. Lastly, comparative simulation investigations are carried out to illustrate the superiority of the proposed EPPF-OPC controller, and moreover, the comparative experiments are further performed to validate the practical effectiveness of the EPPF-OPC controller based on a self-established robot operating system (ROS) test platform of the FWMR.

非线性外部干扰和未建模的动力学特性对复杂工况下四轮移动机器人(FWMR)的轨迹跟踪控制精度有着至关重要的影响。本研究为四轮移动机器人设计了一种自适应轨迹跟踪控制器,以实现规定的预测性能。在建立 FWMR 动力学方程的基础上,构建了增强型规定性能函数(EPPF),在不要求精确初始条件的情况下,将 FWMR 的跟踪误差限制在一定范围内,从而保证了控制系统的瞬态性能。然后,提出了一种优化预测控制(OPC)方法,以实现 FWMR 跟踪误差的渐近稳定性。具体来说,将径向基函数神经网络(RBFNN)与最小参数学习方法相结合,植入预期控制器,以减弱非线性外部干扰和 FWMR 的未建模动态。最后,通过比较仿真研究说明了所提出的 EPPF-OPC 控制器的优越性,并基于自建的 FWMR 机器人操作系统(ROS)测试平台进一步进行了比较实验,以验证 EPPF-OPC 控制器的实际效果。
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引用次数: 0
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Control Engineering Practice
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