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Supporting distributed energy resources with optimal placement and sizing of voltage regulators on the distribution system by an improved teaching-learning-based optimization algorithm

机译:通过改进的基于教学 - 基于教学的优化算法,通过改进的教学 - 基于教学优化算法,支持分布式能量资源和分配系统上的电压调节器的大小

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摘要

The continuous increase of the distributed energy resources (DERs) penetration levels leads to voltage stability problems in the distribution system. One of the approaches for the mentioned emerging challenge is the proper placement of automatic voltage regulators (AVRs). This paper investigates the optimal placement and sizing of AVRs in a distribution network by presenting a new modification of the teaching-learning-based optimization (TLBO) algorithm. The objective functions consist of minimizing the distribution system voltage deviation, energy generation cost, and electrical losses. The modification improves the convergence velocity and accuracy of the TLBO algorithm using the combination of mutation technique and quasi-opposition-based-learning concept. This paper compares the performance of the proposed algorithm with other famous evolutionary algorithms. The test distribution system contains installed DERs that work more efficiently after the placement of AVRs based on the mentioned objective functions by the proposed optimization algorithm. The simulation results display the best optimization algorithms for AVRs placement with a significant level of less than 0.10 (ie, probability-value). The proposed multiobjective optimization algorithm's considerable merit is the accuracy and convergence velocity in solving this specific optimization problem.
机译:分布式能源(DERs)穿透水平的连续增加导致分配系统中的电压稳定性问题。提到的新出现挑战的方法之一是适当放置自动电压调节器(AVRS)。本文通过提出基于教学的优化(TLBO)算法的新修改,调查分销网络中AVRS的最佳放置和大小。目标函数最小化分配系统电压偏差,能量产生成本和电损耗。该修改利用突变技术的组合和基于准反对基于学习概念的组合来提高TLBO算法的收敛速度和精度。本文比较了所提出的算法与其他着名进化算法的性能。测试分配系统包含安装的DER,其基于​​所提到的优化算法基于所提到的目标函数在AVRS的放置后更有效地工作。仿真结果显示AVRS放置的最佳优化算法,其具有小于0.10的显着水平(即概率值)。所提出的多目标优化算法的相当值是解决该特定优化问题的准确性和收敛速度。

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