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Comparative performance analysis of teaching learning based optimization for automatic load frequency control of multi-source power systems

机译:基于教学学习的多源电力系统负载频率自动控制优化比较性能分析

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This paper presents a new population based parameter free optimization algorithm as teaching learning based optimization (TLBO) and its application to automatic load frequency control (ALFC) of multi-source power system having thermal, hydro and gas power plants. The proposed method is based on the effect of the influence of teacher on the output of learners and the learners can enhance their knowledge by interactions among themselves in a class. In this extensive study, the algorithm is applied in multi area and multi-source realistic power system without and with DC link between two areas in order to tune the PID controller which is used for automatic generation control (AGC). The potential and effectiveness of the proposed algorithm is compared with that of differential evolution algorithm (DE) and optimal output feedback controller tuning performance for the same power systems. The dynamic performance of proposed controller is investigated by different cost functions like integral of absolute error (IAE), integral of squared error (ISE), integral of time weighted squared error (ITSE) and integral of time multiplied absolute error (ITAE) and the robustness of the optimized controller is verified by its response toward changing in load and system parameters. It is found that the dynamic performance of the proposed controller is better than that of recently published DE optimized controller and optimal output feedback controller and also the proposed system is more robust and stable to wide changes in system loading, parameters, size and locations of step load perturbation and different cost functions. (C) 2014 Elsevier Ltd. All rights reserved.
机译:本文提出了一种新的基于种群的无参数优化算法,即基于教学学习的优化算法(TLBO),并将其应用于具有火电厂,水电厂和燃气电厂的多源电力系统的自动负载频率控制(ALFC)。所提出的方法是基于教师的影响对学习者的输出的影响,并且学习者可以通过班级之间的互动来增强他们的知识。在这项广泛的研究中,该算法被应用于在两个区域之间不带直流链路且不带直流链路的多区域多源现实电力系统中,以调节用于自动发电控制(AGC)的PID控制器。将所提算法的潜力和有效性与差分演化算法(DE)以及相同电力系统的最佳输出反馈控制器调节性能进行了比较。控制器的动态性能通过不同的成本函数进行研究,例如绝对误差积分(IAE),平方误差积分(ISE),时间加权平方误差积分(ITSE)和时间乘以绝对误差积分(ITAE)以及通过优化的控制器对负载和系统参数变化的响应,可以验证其鲁棒性。发现所提出的控制器的动态性能优于最近发布的DE优化控制器和最优输出反馈控制器,并且所提出的系统对于系统负载,参数,步长和位置的广泛变化更鲁棒和稳定。负载扰动和不同的成本函数。 (C)2014 Elsevier Ltd.保留所有权利。

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