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Hybrid deep learning based load forecasting and AI-driven energy management for grid-connected multi-microgrids 基于深度学习的并网多微电网负荷预测与人工智能驱动的混合能源管理
IF 4.9 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2025-12-23 DOI: 10.1016/j.compeleceng.2025.110915
Adil Zohaib , Faraz Akram , Sohail Khalid , Hamid Nawaz , Mujeeb Ur Rehman
Microgrids offer a promising paradigm for sustainable and decentralized energy management; however, they face operational challenges due to fluctuating load profiles and the intermittency of renewable energy sources. This paper proposes a two-phase framework to address these challenges through accurate short-term load forecasting (STLF) and an advanced energy management system (EMS) for grid-connected multi-microgrids. In Phase I, STLF was performed using residential metering infrastructure data from the PRECON dataset. A hybrid deep learning model, Prophet-Long Short-Term Memory (PLSTM), was developed and outperformed benchmarks, including LSTM, XGBoost, SARIMA, and Prophet, reducing the error by 12%–18%. In Phase II, an AI-enhanced EMS is introduced, integrating PLSTM-based load forecasting, ANN-based photovoltaic generation prediction, adaptive self-learning weights, and deep Q-learning for forecast margin tuning. This robust hierarchical model predictive control strategy eliminates reliance on demand-side management and preserves user comfort. The simulation results demonstrate that the proposed framework outperforms conventional baseline EMS methods in terms of energy efficiency, reducing grid imports by 28%, adaptability with average SoC tracking improvement of 15%, and resilience indicated by a 22% increase in battery cycle longevity under uncertainties in load consumption and solar energy generation, offering a scalable solution for microgrid deployment in dynamic environments.
微电网为可持续和分散的能源管理提供了一个有希望的范例;然而,由于负荷波动和可再生能源的间歇性,它们面临着运营挑战。本文提出了一个两阶段框架,通过准确的短期负荷预测(STLF)和先进的并网多微电网能源管理系统(EMS)来解决这些挑战。在第一阶段,STLF使用来自PRECON数据集的住宅计量基础设施数据进行。开发了一种混合深度学习模型,Prophet- long - Short-Term Memory (PLSTM),并优于LSTM、XGBoost、SARIMA和Prophet等基准,将误差降低了12%-18%。在第二阶段,引入了人工智能增强的EMS,集成了基于plstm的负荷预测、基于人工神经网络的光伏发电预测、自适应自学习权值以及用于预测裕度调整的深度q学习。这种鲁棒的分层模型预测控制策略消除了对需求侧管理的依赖,并保持了用户的舒适性。仿真结果表明,该框架在能效方面优于传统的基线EMS方法,减少了28%的电网进口,平均SoC跟踪提高了15%的适应性,在负载消耗和太阳能发电不确定的情况下,电池循环寿命增加了22%,为动态环境下的微电网部署提供了可扩展的解决方案。
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引用次数: 0
An unsupervised domain adaptation approach for remote sensing scene classification using adaptive incremental density-based clustering and multi-objective optimization 基于自适应增量密度聚类和多目标优化的遥感场景无监督域自适应分类方法
IF 4.9 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2025-12-23 DOI: 10.1016/j.compeleceng.2025.110908
Binu Jose A. , Pranesh Das , Ebrahim Ghaderpour , Paolo Mazzanti
Unsupervised Domain Adaptation (UDA) is the process of learning knowledge from a labelled source domain to an unlabelled target domain, particularly in the context of remote sensing scene classification. The primary challenge in this process is the substantial cost associated with labelling and the significant discrepancies between domains. However, existing UDA methods degrade under severe domain shift and scene diversity, yielding noisy pseudo-labels and unstable target structure discovery. To address these issues, a novel UDA framework is proposed. The main focus of the framework is to develop a mapping using clustering-based pseudo-labelling that can provide a reliable and interpretable pseudo-labels to the target dataset. A deep learning-based Pareto font-driven feature-selection module is also added to fine-tune the source and target features, thereby significantly improving the performance of the scene classification model. An adaptive density-based clustering method with a two-step neural network in the clustering module is utilized to determine whether adjacent clusters should be merged, thereby maintaining clear class boundaries. To reduce the pseudo-label noise, an uncertainty-aware soft pseudo-labelling approach is implemented, based on a dynamic confidence threshold. The framework is evaluated on four remote-sensing datasets namely AID (A), NWPU (N), RSSCN7 (R), and UC Merced (U) across various domain-adaptation tasks (A R, R A, A U, U A, R U, U R, N R, and R N). The proposed approach achieves accuracy improvements of 5.80%, 1.8%, 2.79%, 7.56%, 3.50%, 7.39%, 5.35%, and 3.12% over some of the baseline methods. These results show the superiority of the proposed approach in managing domain shifts, reducing pseudo-label noise, and improving target recognition without the need for labelled target data. The source code is available at https://github.com/BinuJoseA/UDA.
无监督域自适应(UDA)是一种将知识从已标记的源域学习到未标记的目标域的过程,特别是在遥感场景分类的背景下。这一过程的主要挑战是与标签相关的大量成本和域之间的显著差异。然而,现有的UDA方法在严重的域漂移和场景多样性下会退化,产生有噪声的伪标签和不稳定的目标结构发现。为了解决这些问题,提出了一种新的UDA框架。该框架的主要重点是使用基于聚类的伪标签开发映射,该映射可以为目标数据集提供可靠且可解释的伪标签。此外,还增加了基于深度学习的Pareto字体驱动特征选择模块,对源特征和目标特征进行微调,从而显著提高了场景分类模型的性能。采用基于自适应密度的聚类方法,在聚类模块中引入两步神经网络来确定相邻聚类是否合并,从而保持清晰的类边界。为了降低伪标签噪声,实现了一种基于动态置信度阈值的不确定性感知软伪标签方法。在AID (A)、NWPU (N)、RSSCN7 (R)和UC Merced (U) 4个遥感数据集上,对该框架进行了不同领域自适应任务(A→R、R→A、A→U、U→A、R→U、U→R、N→R和R→N)的评估。与一些基线方法相比,该方法的准确率分别提高了5.80%、1.8%、2.79%、7.56%、3.50%、7.39%、5.35%和3.12%。这些结果表明,该方法在不需要标记目标数据的情况下,在管理域偏移、减少伪标签噪声和提高目标识别方面具有优越性。源代码可从https://github.com/BinuJoseA/UDA获得。
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引用次数: 0
Detection of coordinated attack using data driven approach in cyber physical power system (CPPS) 基于数据驱动方法的网络物理电力系统协同攻击检测
IF 4.9 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2025-12-22 DOI: 10.1016/j.compeleceng.2025.110917
G.Y. Sree Varshini , S. Latha , G.Y. Rajaa Vikhram , Sanjeevikumar Padmanaban
A modern interconnected power grid known as a cyber-physical power system (CPPS) integrates traditional power systems with information and communication technology. The primary purpose of a CPPS is to enhance the efficiency and security of the power grid via real-time monitoring, control, and data-informed decision-making. To attain its objective of self-healing, the CPPS must autonomously detect faults, respond to them, reorganize, and restore power delivery during disturbances or outages. Therefore, anomaly detection is essential for system recovery. This research examines the effects of physical and cyber disturbances through time-domain and frequency-domain simulations in MATLAB/SIMULINK. Different disturbance scenarios namely physical disturbances, and cyber disturbances such as data integrity attack (DIA), data availability attack (DAA) and coordinated attack are considered and detected using four data-driven methods such as support vector machine (SVM), random forest(RF), K-nearest neighbour(KNN) and convolutional neural network(CNN). The WSCC 3-machine 9-bus system demonstrates the effectiveness of several classifiers for attack detection.
现代互联电网被称为网络物理电力系统(CPPS),它将传统电力系统与信息通信技术相结合。CPPS的主要目的是通过实时监测、控制和数据决策来提高电网的效率和安全性。为了实现自我修复的目标,CPPS必须在干扰或断电期间自主检测故障、响应故障、重组和恢复电力输送。因此,异常检测对系统恢复至关重要。本研究通过在MATLAB/SIMULINK中进行时域和频域仿真来检验物理和网络干扰的影响。使用支持向量机(SVM)、随机森林(RF)、k近邻(KNN)和卷积神经网络(CNN)等四种数据驱动方法,考虑并检测不同的干扰场景,即物理干扰和网络干扰,如数据完整性攻击(DIA)、数据可用性攻击(DAA)和协同攻击。WSCC 3机9总线系统验证了几种分类器对攻击检测的有效性。
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引用次数: 0
Chaotic Quasi-opposition based 3DoF (PFIDN)-LADRC for enhanced frequency regulation in hybrid restructured power system considering cyber threats 考虑网络威胁的混合重构电力系统中基于混沌准对抗的3DoF -LADRC增强频率调节
IF 4.9 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2025-12-20 DOI: 10.1016/j.compeleceng.2025.110914
Pranav Prakash Singh , Ravi Shankar , S.N. Singh
This work focuses on developing an Improved Frequency Regulation (IFR) strategy for a multi-area hybrid power system which includes reheat thermal power plant, biogas power plant, nuclear power plant and Electric Vehicle (EV). The tested system also incorporates the dynamic behaviour of wind and solar sources and its comprehensive impact on proposed IFR. Additionally, for a more realistic approach of the proposed work, incorporate nonlinearities such as Generation Dead-Band (GDB) and Generation Rate Constraint (GRC). A newly modified Chaotic Quasi-Opposition based Crayfish Optimization Algorithm (CQOCOA) is investigated along with suggested controller. For getting the different optimal gain parameters of the system, Integrated Time Absolute Error (ITAE) is considered as performance index. A CQOCOA based modified Linear Active Disturbance Rejection Control (LADRC) cascade with Three Degrees of Freedom Proportional Fractional Integral Derivative Filter (3DoF-PFIDN) controller is also proposed and investigated. The efficacy and robustness of the proposed system are further validated and implemented successfully on different load perturbations, system uncertainties, physical constraints, renewable penetrations and on bigger power system i.e., IEEE-118 test bus system. A comprehensive sensitivity analysis is performed to evaluate the resilience of the proposed controller by varying ±25 % and ± 50 % parametric uncertainties for investigated system. The proposed IFR strategy is also analysed for the physical cyber threats and its different possibilities. These cyber threats also explore the deep learning-based Attack Detection and Mitigation (ADM) system which enhance the system performance and reliability. Furthermore, the whole setup has been performed on OPAL-RT OP4510 platform, which demonstrate the supremacy of enhanced IFR strategy and validate the resilient control structure for the proposed hybrid power system under restructured scenario.
本文的研究重点是针对多区域混合动力系统(包括再热热电厂、沼气电厂、核电站和电动汽车)开发改进的频率调节(IFR)策略。测试系统还结合了风能和太阳能的动态特性及其对拟议IFR的综合影响。此外,对于提议的工作,一个更现实的方法,纳入非线性,如发电死带(GDB)和发电速率约束(GRC)。研究了一种改进的混沌拟对抗小龙虾优化算法(CQOCOA),并给出了相应的控制器。为了得到系统不同的最优增益参数,考虑了积分时间绝对误差(ITAE)作为性能指标。提出并研究了一种基于CQOCOA的改进线性自抗扰控制(LADRC)级联三自由度比例分数阶积分导数滤波器(3DoF-PFIDN)控制器。该系统的有效性和鲁棒性在不同的负载扰动、系统不确定性、物理约束、可再生能源渗透以及更大的电力系统(即IEEE-118测试母线系统)上得到了进一步验证和成功实施。通过对所研究系统的±25%和±50%的参数不确定性进行综合灵敏度分析,以评估所提出的控制器的弹性。提出的IFR策略还分析了物理网络威胁及其不同的可能性。这些网络威胁还探索了基于深度学习的攻击检测和缓解(ADM)系统,提高了系统的性能和可靠性。最后,在OPAL-RT OP4510平台上进行了整个设置,验证了增强型IFR策略的优越性,并验证了所提出的混合电力系统在重构场景下的弹性控制结构。
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引用次数: 0
Collaborative planning and scheduling framework of EV charging infrastructure with Vehicle-to-Grid facility in a renewable integrated smart grid 可再生能源综合智能电网中电动汽车充电基础设施与车对网设施协同规划与调度框架
IF 4.9 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2025-12-20 DOI: 10.1016/j.compeleceng.2025.110911
Sriparna Roy Ghatak , Sasmita Tripathy , Chandrashekhar Narayan Bhende , Sharmistha Nandi , Surajit Sannigrahi , Parimal Acharjee
The present study proposes a novel bi-level coordinated planning and scheduling framework of Vehicle-to-Grid (V2G)-enabled Electric Vehicle (EV) Parking Lot Charging Infrastructure in a renewable integrated smart grid. Developed in collaboration with the Distribution System Operator and EV aggregator, the proposed model leverages PV and V2G to reduce grid dependency, mitigate PV intermittency, enhance EV battery longevity, and address storage challenges. To fully realize the scheduling process in the long-term planning, an interactive hybrid optimization technique is developed that combines Harris Hawk Optimization and Linear Programming at the upper-level and lower-level of the model, respectively. The model optimizes the number of chargers and their hourly charging-discharging power, considering the key factors such as energy losses, investment costs, and charging expenses while adhering to security constraints. To ensure participation of EV users in the V2G program, monetary incentives are designed. As V2G operations negatively impact battery life, EV battery degradation and lifecycle assessments are conducted using Rain flow Counting Algorithm. To prove the efficacy of the proposed model, transient and frequency stability analysis is performed. The proposed approach is validated in 33-bus network, achieves a 30 % reduction in energy losses, a 37 % decrease in charging costs, enhanced system voltage profile, extended battery life, and hence a 21 % reduction in replacement costs of EV batteries.
本文提出了一种基于可再生能源集成智能电网的车辆到电网(V2G)的电动汽车(EV)停车场充电基础设施的双层协调规划和调度框架。该模型是与配电系统运营商和电动汽车聚合商合作开发的,利用光伏和V2G来减少对电网的依赖,缓解光伏间歇性,提高电动汽车电池寿命,并解决存储挑战。为了充分实现长期规划中的调度过程,在模型的上、下两层分别采用Harris Hawk优化和线性规划相结合的交互式混合优化技术。该模型在遵守安全约束的前提下,考虑了能量损失、投资成本、充电费用等关键因素,对充电器数量和每小时充放电功率进行了优化。为了确保电动汽车用户参与V2G计划,设计了货币激励措施。由于V2G操作会对电池寿命产生负面影响,因此使用雨流计数算法进行电动汽车电池退化和生命周期评估。为了证明该模型的有效性,进行了暂态和频率稳定性分析。该方法在33总线网络中得到了验证,实现了能量损失减少30%,充电成本降低37%,系统电压分布增强,电池寿命延长,从而降低了21%的电动汽车电池更换成本。
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引用次数: 0
A noise-resilient adaptive deep learning framework for accurate state-of-charge prediction in lithium-ion batteries for electric vehicles 用于电动汽车锂离子电池准确状态预测的噪声弹性自适应深度学习框架
IF 4.9 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2025-12-18 DOI: 10.1016/j.compeleceng.2025.110909
Chinmay Bera , Rajib Mandal , Amitesh Kumar
Accurate estimation of the State-of-Charge (SoC) in lithium-ion batteries (LIBs) is essential for optimizing performance, ensuring safety, and prolonging battery life in Battery Management Systems (BMS) for Electric Vehicles (EVs). While Long Short-Term Memory (LSTM) networks have shown significant promise for SoC estimation, they often rely on manual hyperparameter tuning, leading to inconsistent accuracy and reduced adaptability. To overcome these limitations, this study introduces a robust, noise-resilient, and adaptive deep learning framework—MRFOSA-LSTM, that combines Manta Ray Foraging Optimization (MRFO) with Simulated Annealing (SA) to automate LSTM hyperparameter tuning. The hybrid MRFOSA enhances convergence and avoids local optima, while the addition of controlled noise during training improves the model’s robustness to external interference. The proposed method is rigorously analyzed and validated using multiple real-world driving cycles and evaluated across a wide range of initial SoC levels. Comparative analysis against baseline methods, including EKF, Particle swarm optimization (PSO) based LSTM, Genetic algorithm (GA) based LSTM, MRFO-LSTM, Transformer and Bi-LSTM methods, confirms the superior performance of MRFOSA-LSTM, achieving a Mean Absolute Error (MAE) of 0.25% and Root Mean Square Error (RMSE) of 0.36%. This framework offers a highly accurate and resilient solution for real-time SoC estimation in LIBs.
在电动汽车电池管理系统(BMS)中,准确估计锂离子电池(lib)的荷电状态(SoC)对于优化性能、确保安全性和延长电池寿命至关重要。虽然长短期记忆(LSTM)网络在SoC估计方面表现出了巨大的前景,但它们通常依赖于手动超参数调优,导致准确性不一致,适应性降低。为了克服这些限制,本研究引入了一种鲁棒、抗噪声、自适应的深度学习框架——mrfosa -LSTM,该框架将蝠鲼觅食优化(MRFO)与模拟退火(SA)相结合,实现了LSTM超参数调优的自动化。混合MRFOSA增强了收敛性,避免了局部最优,同时在训练过程中加入可控噪声,提高了模型对外部干扰的鲁棒性。所提出的方法经过了多次真实驾驶循环的严格分析和验证,并在广泛的初始SoC水平范围内进行了评估。与基线方法(包括EKF、基于粒子群优化(PSO)的LSTM、基于遗传算法(GA)的LSTM、MRFO-LSTM、Transformer和Bi-LSTM)进行对比分析,证实了MRFOSA-LSTM的优越性能,平均绝对误差(MAE)为0.25%,均方根误差(RMSE)为0.36%。该框架为lib中的实时SoC估计提供了高度精确和弹性的解决方案。
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引用次数: 0
Ethereum smart contract security: Vulnerabilities, analysis techniques, challenges and research directions 以太坊智能合约安全:漏洞、分析技术、挑战与研究方向
IF 4.9 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2025-12-18 DOI: 10.1016/j.compeleceng.2025.110895
Vikas Kumar Jain , Meenakshi Tripathi
Smart contracts, a key component of blockchain technology, automate and enforce contractual agreements, facilitating trustless transactions across decentralized networks. However, their immutable and decentralized nature introduces unique security challenges, making vulnerability analysis crucial as vulnerabilities can lead to financial losses, exploitation, and manipulation. This research presents a comprehensive survey of smart contract vulnerability analysis techniques, encompassing rule-based, machine learning, and large language model-driven approaches. The study systematically categorizes vulnerabilities by their nature and impact into coding flaws, logical inconsistencies, and dependency-based risks, providing a unified taxonomy. Comparative evaluations reveal that while machine learning models excel in pattern-based detection, large language models demonstrate superior performance in semantic reasoning and contextual understanding of complex vulnerabilities. Additionally, the study identifies open research gaps, proposes a standardized evaluation framework, and outlines future directions for analyzing smart contract vulnerabilities. The findings of this survey aim to provide valuable insights into smart contract vulnerability analysis for researchers, developers, and practitioners and contribute to the advancement of more secure blockchain-based applications.
智能合约是区块链技术的关键组成部分,可以自动执行合同协议,促进分散网络上的无信任交易。然而,它们不可变和分散的特性带来了独特的安全挑战,使得漏洞分析至关重要,因为漏洞可能导致财务损失、利用和操纵。本研究对智能合约漏洞分析技术进行了全面调查,包括基于规则的、机器学习的和大型语言模型驱动的方法。该研究根据漏洞的性质和影响将其系统地分类为编码缺陷、逻辑不一致和基于依赖的风险,提供了统一的分类。对比评估显示,虽然机器学习模型在基于模式的检测方面表现出色,但大型语言模型在复杂漏洞的语义推理和上下文理解方面表现出色。此外,该研究还确定了开放的研究差距,提出了一个标准化的评估框架,并概述了分析智能合约漏洞的未来方向。本调查的结果旨在为研究人员、开发人员和从业者提供有关智能合约漏洞分析的宝贵见解,并为更安全的基于区块链的应用程序的发展做出贡献。
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引用次数: 0
A general and lightweight method for private set intersection computation 一种通用的、轻量级的私有集交集计算方法
IF 4.9 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2025-12-18 DOI: 10.1016/j.compeleceng.2025.110893
Jiangbing Sun , Yan Zhang , Jie Chen , Ruoting Xiong , Wei Ren
Given two or more sets with elements that are in plain text, it is straightforward to compute the intersection. If the elements are encrypted, then it becomes non-trivial. In this paper, we formally define the computational problem for private set intersection (PSI), and its corresponding security. We propose a general method for computing PSI with only semantics of encryption. Our method is lightweight so as to be feasible for sets with a large scale elements. We extensively analyze the security and performance to justify that our method can protect the privacy yet maintain the feasibility.
给定两个或多个元素为纯文本的集合,计算交集是很简单的。如果元素是加密的,那么它就变得不平凡了。本文形式化地定义了私有集相交的计算问题及其相应的安全性。我们提出了一种仅使用加密语义计算PSI的通用方法。我们的方法是轻量级的,因此对于具有大规模元素的集合是可行的。我们对安全性和性能进行了广泛的分析,以证明我们的方法在保护隐私的同时保持了可行性。
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引用次数: 0
Design and analysis of a novel seven-level DC–AC converter with high gain and reducing spike current capabilities 具有高增益和减小尖峰电流能力的新型七电平DC-AC变换器的设计与分析
IF 4.9 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2025-12-17 DOI: 10.1016/j.compeleceng.2025.110913
Ravi Anand , Rajib Kumar Mandal
This paper presents a novel seven-level switched-capacitor (SC) inverter topology configuration that incorporates a triple-boost mechanism. The proposed design significantly reduces component count by utilizing only six switches, four diodes, four capacitors, and two inductors, while simultaneously mitigating capacitor charging currents and minimizing voltage stress across the devices. Capacitor voltage self-balancing is achieved without the need for additional sensors through PD-PWM modulation. The topology effectively supports a wide modulation index range, dynamic load variations, and different operating frequencies, demonstrating high versatility. The system’s performance is confirmed by both simulations and experiments, which show that it has a low output current THD of 0.78% and an efficiency of 98.13%. A hardware prototype confirms stable operation under transient and steady-state conditions. Comparative analysis highlights the proposed inverter’s superior performance in terms of reduced total standing voltage (TSV), higher efficiency, and fewer components required compared to existing seven-level inverters. This makes the topology a promising choice for integration into renewable energy systems and other advanced power electronic applications.
本文提出了一种新颖的七电平开关电容(SC)逆变器拓扑结构,其中包含三升压机制。提出的设计通过仅使用6个开关,4个二极管,4个电容器和2个电感显着减少了组件数量,同时减轻了电容器充电电流并最小化了器件之间的电压应力。通过PD-PWM调制,无需额外的传感器即可实现电容电压自平衡。该拓扑结构有效地支持宽调制指数范围、动态负载变化和不同的工作频率,具有很高的通用性。仿真和实验结果表明,该系统具有0.78%的低输出电流THD和98.13%的效率。硬件样机证实了在瞬态和稳态条件下的稳定运行。对比分析表明,与现有的七电平逆变器相比,所提出的逆变器在降低总电压(TSV)、提高效率和减少所需组件方面具有优越的性能。这使得拓扑结构成为集成到可再生能源系统和其他先进电力电子应用的有希望的选择。
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引用次数: 0
A novel hybrid optimization approach for stochastic reactive power dispatch in hybrid energy systems 混合能源系统随机无功调度的一种新的混合优化方法
IF 4.9 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2025-12-16 DOI: 10.1016/j.compeleceng.2025.110912
G.K. Jaiswal, U. Nangia, N.K. Jain
This research introduces a novel hybrid algorithm that combines opposition-based strategies with Differential Evolution and the Giza Pyramids Construction algorithm to address the deterministic and stochastic Optimal Reactive Power Dispatch (ORPD) problem in power systems. This novel algorithm is initially evaluated on thirteen benchmark functions, including unimodal and multimodal functions. It is then applied to single-objective deterministic ORPD problems in IEEE 30-bus and IEEE 57-bus systems, and further extended to a stochastic ORPD problem in a modified IEEE 30-bus system. In the stochastic ORPD problem, the uncertainties in load demand, wind speed, solar irradiation, and small-hydro inflows are considered. These uncertainties account for the continuous fluctuations and intrinsic intermittency of solar irradiation, wind speed, water flow rate and demand fluctuation. To demonstrate the robustness of the proposed hybrid algorithm, a comparative analysis is conducted against the recently introduced Giza Pyramids Construction Algorithm (GPC), Honey Badger Algorithm (HBA), and COOT Algorithm (COOT). For the deterministic ORPD problem, the proposed method achieves the highest savings among all four methods for PLoss, VD and VSI that are 21.75%, 92.54%, and 32.95% for the IEEE 30-bus system and 18.12%, 61.51% and 38.42% for the IEEE 57-bus system, respectively. For the stochastic ORPD problem, the proposed method obtained the expected sum of PLoss, VD and VSI as 3.8425 MW, 0.0592 p.u., and 0.0771 p.u., respectively.
针对电力系统中确定性和随机最优无功调度(ORPD)问题,提出了一种将基于差分进化的对抗策略与吉萨金字塔构造算法相结合的混合算法。该算法在13个基准函数上进行了初步评估,包括单峰函数和多峰函数。然后将其应用于IEEE 30总线和IEEE 57总线系统中的单目标确定性ORPD问题,并进一步推广到改进的IEEE 30总线系统中的随机ORPD问题。在随机ORPD问题中,考虑了负荷需求、风速、太阳辐照和小水电流入等因素的不确定性。这些不确定性解释了太阳辐照、风速、水流量和需求波动的连续波动和内在间歇性。为了证明所提出的混合算法的鲁棒性,与最近引入的吉萨金字塔构建算法(GPC)、蜜獾算法(HBA)和COOT算法(COOT)进行了比较分析。对于确定性ORPD问题,本文提出的方法在所有四种方法中对PLoss、VD和VSI的节省最高,在IEEE 30总线系统中分别为21.75%、92.54%和32.95%,在IEEE 57总线系统中分别为18.12%、61.51%和38.42%。对于随机ORPD问题,该方法得到的PLoss、VD和VSI的期望值分别为3.8425 MW、0.0592 p.u和0.0771 p.u。
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