Amjad Khan, Amjad Ullah Khattak, Bilal Khan, Sahibzada Muhammad Ali, Zahid Ullah, Faisal Mehmood
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To address the above challenges, this research employs a machine learning-based distributed multiagent consensus design that offers a rapid and robust approach, mitigating the limitations associated with the Distributed Average Integral (DAI) control design. The proposed multiagent scheme empowers the successful implementation of ELD and frequency regulation, accommodating the intermittent DRES, diverse network topologies, and the dynamic plug-and-play activities of prosumers. Moreover, an optimization-based DAI tuning model is introduced to overcome tuning limitations. Intelligent renewable energy agents are trained through machine learning-based regression models that use root mean square error metrics for performance evaluations. The intelligent agents employ DAI control to overcome inherent limitations. The effectiveness of the machine learning-based DAI is thoroughly evaluated using the DRES-based IEEE 14-bus hybrid microgrid system. 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引用次数: 0
摘要
分布式可再生能源(DRES)集成了混合微电网和用户活动,构成了一个以未知网络参数为特征的动态系统。动态系统面临着各种挑战,如低惯性导致的间歇性供电、可再生能源的间歇性、即插即用的用户活动、网络拓扑结构变化以及缺乏约束处理。这些复杂性给设计有效的频率调节控制和基于共识的 DRES 经济负荷调度 (ELD) 以满足不同的负荷需求带来了重大问题。为应对上述挑战,本研究采用了基于机器学习的分布式多代理共识设计,该设计提供了一种快速、稳健的方法,缓解了分布式平均积分(DAI)控制设计的相关限制。所提出的多代理方案有助于成功实施 ELD 和频率调节,适应间歇性 DRES、多样化的网络拓扑结构以及专业消费者的动态即插即用活动。此外,还引入了基于优化的 DAI 调节模型,以克服调节限制。智能可再生能源代理通过基于机器学习的回归模型进行训练,使用均方根误差指标进行性能评估。智能代理采用 DAI 控制来克服固有的局限性。使用基于 DRES 的 IEEE 14 总线混合微电网系统对基于机器学习的 DAI 的有效性进行了全面评估。定量结果证明了它在应对集成微电网动态的复杂挑战方面的功效。
Intelligent Renewable Energy Agent-Based Distributed Control Design for Frequency Regulation and Economic Dispatch
The Distributed Renewable Energy Sources (DRESs) integrate hybrid microgrid and prosumer activities that constitute a dynamic system characterized by unknown network parameters. The dynamic system faces challenges, such as intermittent power supply due to low inertia, renewable intermittence, plug-and-play prosumer activities, network topology variations, and a lack of constraint handling. These complexities pose significant issues in designing effective control for frequency regulation and consensus-based economic load dispatch (ELD) within DRES to meet varying load demands. To address the above challenges, this research employs a machine learning-based distributed multiagent consensus design that offers a rapid and robust approach, mitigating the limitations associated with the Distributed Average Integral (DAI) control design. The proposed multiagent scheme empowers the successful implementation of ELD and frequency regulation, accommodating the intermittent DRES, diverse network topologies, and the dynamic plug-and-play activities of prosumers. Moreover, an optimization-based DAI tuning model is introduced to overcome tuning limitations. Intelligent renewable energy agents are trained through machine learning-based regression models that use root mean square error metrics for performance evaluations. The intelligent agents employ DAI control to overcome inherent limitations. The effectiveness of the machine learning-based DAI is thoroughly evaluated using the DRES-based IEEE 14-bus hybrid microgrid system. The quantitative results prove its efficacy in addressing the complex challenges of integrated microgrid dynamics.
期刊介绍:
International Transactions on Electrical Energy Systems publishes original research results on key advances in the generation, transmission, and distribution of electrical energy systems. Of particular interest are submissions concerning the modeling, analysis, optimization and control of advanced electric power systems.
Manuscripts on topics of economics, finance, policies, insulation materials, low-voltage power electronics, plasmas, and magnetics will generally not be considered for review.