Optimal Model Predictive Frequency Control Management of Grid Integration PV/Wind/FC/Storage Battery Based Smart Grid Using Multi Objective Particle Swarm Optimization MOPSO

A. Elgammal, Tagore Ramlal
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引用次数: 9

Abstract

This article forecasts the performance of smart-grid electrical transmission systems and integrated battery/FC/Wind/PV storage system renewable power sources in the context of unpredictable solar and wind power supplies. The research provided a hybrid renewable energy sources smart grid power system electrical frequency control solution using adaptive control techniques and model predictive control (MPC) based on the Multi-Objective Practical Swarm Optimization Algorithm MOPSO. To solve the problems of parameter tuning in Load Frequency Control, the suggested adaptive control approach is utilized to accomplish on-line adjustment of the Load Frequency Control parameters. During the electrical grid's integration, the system under investigation is a hybrid Wind/PV/FC/Battery smart grid with variable demand load. To achieve optimal outcomes, all of the controller settings for various units in power grids are determined by means of a customized objective function and a particle swarm optimization method rather than a regular objective function with fluctuating restrictions. To suppress the consumption and generation balance, MPCs were designed for each of the Storage Battery, Wind Turbine Generation, and the model Photovoltaic Generation. In addition, demand response (real-time pricing) was used in this scheme to reduce the load frequency by adjusting the controlled loads. The suggested control strategy is evaluated in the Simulink /MATLAB environment in order to analyse the suggested approach's working in the power system, as well as its effectiveness, reliability, robustness, and stability. The simulation findings show that the proposed control method generally converges to an optimal operating point that minimises total user disutility, restores normal frequency and planned tie-line power flows, and maintains transmission line thermal restrictions. The simulation results further indicate that the convergence holds even when the control algorithm uses inaccurate system parameters. Finally, numerical simulations are used to illustrate the proposed algorithm's robustness, optimality, and effectiveness. In compared to previous methodologies, the system frequency recovers effectively and efficiently in the event of a power demand disturbance, as demonstrated. A sensitivity test is also performed to assess the suggested technique's effectiveness.
基于多目标粒子群优化MOPSO的光伏/风能/FC/储能智能电网最优模型预测频率控制管理
本文预测了在不可预测的太阳能和风能供应背景下,智能电网输电系统和集成电池/FC/风能/光伏存储系统可再生能源的性能。研究提出了一种基于多目标实用群优化算法MOPSO的自适应控制技术和模型预测控制(MPC)相结合的混合可再生能源智能电网电力系统电频控制方案。针对负载频率控制中的参数整定问题,采用所提出的自适应控制方法实现了负载频率控制参数的在线整定。在电网整合过程中,所研究的系统是一个具有可变需求负载的风能/光伏/FC/电池混合智能电网。为了获得最优的结果,电网中各单元的所有控制器设置都是通过自定义目标函数和粒子群优化方法来确定的,而不是通过具有波动限制的规则目标函数来确定。为了抑制消耗和发电平衡,分别为蓄电池、风力发电和光伏发电模型设计了mpc。此外,该方案还采用了需求响应(实时定价),通过调节被控负荷来降低负荷频率。在Simulink /MATLAB环境下对所提出的控制策略进行了评估,以分析所提出的控制策略在电力系统中的有效性、可靠性、鲁棒性和稳定性。仿真结果表明,所提出的控制方法一般收敛于一个最优工作点,该工作点能使总用户负效用最小化,恢复正常频率和规划的联络线潮流,并保持输电线路的热约束。仿真结果进一步表明,即使控制算法使用不准确的系统参数,其收敛性仍然保持不变。最后,通过数值仿真验证了该算法的鲁棒性、最优性和有效性。与以前的方法相比,系统频率在电力需求干扰的情况下有效地恢复,如所示。灵敏度测试也进行了评估所建议的技术的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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