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Intelligent load frequency controller using GrADP for island smart grid with electric vehicles and renewable resources

机译:使用GrADP的智能负载频率控制器用于电动汽车和可再生资源的岛屿智能电网

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Increasing deployment of intermittent power generation from renewable resources in the smart grid, such as photovoltaic (PV) or wind farm, will cause large system frequency fluctuation when the load-frequency control (LFC) capacity is not enough to compensate the unbalance of generation and load demand. Even worse, the system inertia will decrease when the smart grid is in island operating mode, which would degrade system damping and cause system instability. Meanwhile, electric vehicles (EVs) will be widely used by customers in the near future, where the EV station could be treated as dispersed battery energy storage. Therefore, the vehicle-to-grid (V2G) technology can be employed to compensate for inadequate LFC capacity, thus improving the island smart grid frequency stability. In this paper, an on-line reinforcement learning (RI) based method, called goal representation adaptive dynamic programming (GrADP), is employed to adaptive control of units in an island smart grid. In the controller design, adaptive supplementary control signals are provided to proportional-integral-derivative (PID) controller by GrADP in a real-time manner. Comparative simulation studies on a benchmark smart grid with micro-turbine (MT), EVs, PV array and wind power are carried out among the GrADP controller, the original PID controller and the particle swarm optimization (PSO) based fuzzy logic controller. Simulation results demonstrate competitive performance and satisfied learning ability of the GrADP based coordinate controller. Moreover, the impact of signal transmission delay on the control performance is also considered, and suggestions to address this issue are given in the paper. (C) 2015 Elsevier B.V. All rights reserved.
机译:当负载频率控制(LFC)容量不足以补偿发电和电网的不平衡时,从智能电网中的可再生资源(例如光伏(PV)或风电场)中增加间歇性发电的部署,将导致较大的系统频率波动。负载需求。更糟的是,当智能电网处于孤岛运行模式时,系统惯性将降低​​,这将降低系统阻尼并导致系统不稳定。同时,在不久的将来,电动汽车(EV)将被客户广泛使用,其中EV站可被视为分散的电池能量存储。因此,可以采用车辆到电网(V2G)技术来补偿LFC容量不足,从而提高孤岛智能电网的频率稳定性。本文采用一种基于在线强化学习(RI)的方法,即目标表示自适应动态规划(GrADP),对孤岛智能电网中的单元进行自适应控制。在控制器设计中,通过GrADP将自适应辅助控制信号实时提供给比例积分微分(PID)控制器。在具有GrADP控制器,原始PID控制器和基于粒子群优化(PSO)的模糊逻辑控制器之​​间,对具有微涡轮(MT),电动汽车,光伏阵列和风力的基准智能电网进行了比较仿真研究。仿真结果证明了基于GrADP的坐标控制器的竞争性能和令人满意的学习能力。此外,还考虑了信号传输延迟对控制性能的影响,并提出了解决此问题的建议。 (C)2015 Elsevier B.V.保留所有权利。

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