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A Comparative Study on AGC of Power Systems Using Reinforcement Learning and Genetic Algorithm

机译:基于强化学习和遗传算法的电力系统自动增益控制的比较研究

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摘要

In this paper the automatic generation control (AGC) of interconnected power systems is considered. The main objective of Automatic Generation Control (AGC) is to regulate the output of the power system within an area in response to changes in system frequency and tie-line flow. AGC helps to maintain the scheduled system frequency and tie-line power flow with the other areas within the limits. AGCs are mostly composed of an integral controller. The integrator gain is set as a compromise between fast transient recovery and low overshoot in the dynamic response of the overall system. This type of controller is slow in action and does not consider nonlinearities in the generator unit. Also it is not robust. So in order to avoid these drawbacks two artificial intelligence techniques are used to tune the integral gains of conventional controller. The reinforcement learning and Genetic algorithm are used for the parameter tuning of AGC. The performance of RL & GA based controller is found to be better than conventional controller, has less complication in controlling power system.
机译:在本文中,考虑了互连电力系统的自动发电控制(AGC)。自动发电控制(AGC)的主要目标是响应系统频率和联络线流量的变化来调节区域内电力系统的输出。 AGC有助于将排定的系统频率和联络线功率保持在限制范围内。 AGC主要由集成控制器组成。积分器增益设置为快速瞬态恢复与整个系统动态响应中的低过冲之间的折衷。这种类型的控制器动作缓慢,并且不考虑发电机单元中的非线性。而且它也不健壮。因此,为了避免这些缺点,使用了两种人工智能技术来调整常规控制器的积分增益。强化学习和遗传算法用于AGC的参数整定。发现基于RL&GA的控制器的性能优于常规控制器,在控制电力系统方面具有较少的复杂性。

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