Optimal Allocation of Solar-Wind based DG Considering Uncertainty Using Improved Grasshopper Algorithm

Ashraf Ramadan, Mohamed Ebeed, S. Kamel, C. Rahmann
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Abstract

Grasshopper optimization algorithm (GOA) is an efficient technique which mimics the movement orientation and lifestyle of grasshopper in natural. However, the GOA is applied for solve successfully numerous optimizations problem, it failed to solve other cases efficiently and it prone to stuck in local optima. Thus, an improved version of the GOA is proposed to enhance the performance the conventional GOA. The improved GOA (IGOA) is based on improving the exploration and the exploitation process of the GOA. The exploration is enhanced using a mutation operator to enable the algorithm to a new area to avoid the stagnation of this technique while the exploitation process is enhanced using an adaptive operator to update the positions of the grasshopper around the best so far solution. In this paper, the IGOA is applied to address the allocation problem of renewable energy resources in radial distribution grid (RDG). The renewable resources include hybrid solar wind based Distributed Generator (DG) units for the expected power loss minimization to consider the uncertainty in the electric system. The IGOA is tested on 85-bus distribution grid and the captured results are compared with the traditional GOA to verify its applicability and efficiency. Numerous scenarios are generated using Monte-Carlo simulation to take into consideration the uncertainties of system which include load demands, solar irradiation, and wind speed variations. The simulation results demonstrate that the IGOA is superior for addressing the allocation problem of DG compared with traditional GOA in terms of objective function.
考虑不确定性的改进Grasshopper算法的太阳风DG优化分配
蚱蜢优化算法(Grasshopper optimization algorithm, GOA)是一种模拟自然环境中蚱蜢运动方向和生活方式的高效技术。然而,目标寻优算法在成功求解众多优化问题时,不能有效地求解其他情况,且容易陷入局部最优。因此,本文提出了一种改进的GOA,以提高传统GOA的性能。改进的GOA (IGOA)是在改进GOA勘探开发流程的基础上提出的。利用突变算子增强了算法的探索能力,使算法能够进入一个新的区域,从而避免了该技术的停滞;同时利用自适应算子增强了开发过程,以更新迄今为止最佳解周围蚱蜢的位置。本文将IGOA应用于解决径向配电网中可再生能源的分配问题。考虑到电力系统的不确定性,可再生能源包括基于混合太阳能风能的分布式发电机组。在85总线配电网上对IGOA进行了测试,并将捕获结果与传统的GOA进行了比较,验证了其适用性和有效性。利用蒙特卡罗模拟生成了许多情景,以考虑系统的不确定性,包括负荷需求、太阳辐照和风速变化。仿真结果表明,在目标函数方面,IGOA比传统的GOA更能解决DG分配问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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