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Enhanced Velocity Differential Evolutionary Particle Swarm Optimization for Optimal Scheduling of a Distributed Energy Resources With Uncertain Scenarios

机译:增强速度差分进化粒子群优化,以优化具有不确定情景的分布式能源的最佳调度

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In the MicroGrid environment, the high penetration of uncertain energy sources such as solar Photovoltaics (PVs), Energy Storage Systems (ESSs), Demand Response (DR) programs, Vehicles to Grid (V2G or G2V) and Electricity Markets make the Energy Resource Management (ERM) problem highly complex. All such complexities should be addressed while maximizing income and minimizing the total operating costs of aggregators that accumulate all types of available energy resources from the MicroGrid system. Due to the presence of mixed-integer, discrete variables and non-linear network constraints, it is sometimes very difficult to solve such problem using traditional optimization methods. This paper proposes a new metaheuristic optimization technique entitled the "Enhanced Velocity Differential Evolutionary Particle Swarm Optimization'' (EVDEPSO) algorithm to tackle the ERM problem. Its key feature is the updation of the Velocity by the terms named as Enhanced Velocity, Cooperation and Stochastic Uni-Random Distribution and position by the term Deceleration Factor. The performance of the proposed method is measured by a case study comprises of 100 scenarios of a 25-bus MicroGrid with high penetration of aforementioned energy sources. IEEE Computational Intelligence Society organized the competition on the above mentioned problem, in which EVDEPSO secured a second rank. The results of EVDEPSO are compared with the competition participated optimization algorithms. It also compared with well-known optimization algorithms such as Variable Neighborhood Search and Differential Evolutionary Particle Swarm Optimization. The comparison results show that the performance of EVDEPSO is superior in terms of the Ranking Index (R.I) and Average Ranking Index (A.R.I) as compared to the aforementioned algorithms. For effective comparative analysis of algorithms, standard statistical test named as One-Way ANOVA and Tukey Test is used. The results of this test also prove the effectiveness of EVDEPSO algorithm as compared to all tested algorithms.
机译:在微电网环境中,太阳能光伏(PVS),能量存储系统(ESS),需求响应(DR)程序,车辆到电网(V2G或G2V)和电力市场的高渗透,使能源资源管理(ERM)问题高度复杂。所有此类复杂性应解决,同时最大限度地提高收入,并最大限度地降低累积来自微电网系统的所有类型的可用能源的总运营成本。由于存在混合整数,离散变量和非线性网络约束,有时非常难以使用传统优化方法解决此类问题。本文提出了一种新的成分型优化技术,题为“增强速度差分进化粒子群优化优化”(EVDEPSO)算法来解决ERM问题。其关键特征是由名为增强速度,合作和随机的术语的速度更新术语减速因子的大规模分布与位置。通过案例研究来衡量所提出的方法的性能,该案例包括一个25总线微普里德的100个场景,具有上述能源的高渗透。IEEE计算智能社会组织了竞争上述问题,其中EVDEPSO确保了第二级。将EVDEPSO的结果与竞争参与优化算法进行了比较。它还与众所周知的优化算法相比,例如可变邻域搜索和差分进化粒子群优化。比较结果表明EVDEPS的表现与上述算法相比,o在排名指数(R.I)和平均排名指数(A.R.I)方面优越。为了有效对比分析算法,使用标准统计测试名为单向ANOVA和TUKEY测试的标准统计测试。与所有测试算法相比,该测试的结果还证明了EVDEPSO算法的有效性。

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