基于蚁群的电力系统负荷频率PID控制器最优整定

Michael Bernard, P. Musílek
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引用次数: 10

摘要

分布式发电的高渗透、负荷的突然变化、系统的不确定性和参数的变化等都是电力系统频率波动的主要原因。如果不采取适当的控制措施,电力系统频率的波动可能会影响系统的正常运行。本文提出了一种基于蚁群优化算法的鲁棒智能控制技术,用于比例控制器、积分控制器和导数控制器的最优整定。目标是提高智能电力系统的负荷频率控制能力。将所设计的算法应用于一个由燃煤热电厂、可再生能源光伏发电、热泵热水器和电动汽车作为可控负荷组成的电力系统。在各种实际运行条件下的Matlab仿真结果证实了系统分析的正确性和所提方案的优越性能。仿真结果表明,与传统的PID控制器和模型预测控制方案相比,采用该控制方案的系统更加稳定,在面对系统不确定性、参数变化和分布式能源波动时能够实现快速响应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ant-based optimal tuning of PID controllers for load frequency control in power systems
Frequency fluctuations in power system result from high penetration of distributed generation as well as sudden load changes, system uncertainties, and parameters variations. If adequate control actions are not put into place, the fluctuations in power system frequency may deteriorate the normal operation of the system. This paper proposes a robust, intelligent control technique using Ant Colony Optimization algorithms for optimal tuning of proportional, integral and derivative controllers. The goal is to enhance load frequency control capabilities in smart power systems. The designed algorithm is applied to a power system consisting of a coal thermal plant, photovoltaic power generation as a renewable energy source, as well as heat pump water heaters and electric vehicles as controllable loads. Simulation results obtained using Matlab under various practical operating conditions confirm the correctness of system analysis and superior performance of the proposed scheme. The results of the simulation illustrate that the system with the proposed control scheme is more stable, and can achieve a fast response in the face of system uncertainties, parameter variations and fluctuations from distributed energy sources, as compared to the conventional PID controller and the model predictive control scheme.
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