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An efficient Differential Evolution algorithm for stochastic OPF based active-reactive power dispatch problem considering renewable generators

机译:考虑可再生发生器的基于随机OPF的活性无功派遣问题的高效差分演化算法

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Optimal active-reactive power dispatch problems (OARPD) are non-convex and highly nonlinear complex optimization problems. Typically, such problems are expensive in terms of computational time and cost due to the load variations over the scheduling period. The conventional constraint-based solvers that are generally used to tackle such problems require a considerable high budget and may not provide high quality solutions. In the last decade, complexity of OARPD has further increased due to the incorporation of renewable energy sources such as: wind, solar and small-hydro generators. More specifically, the incorporation of renewable sources introduces uncertainty in generation on top of the load variations in conventional OARPD, making the problem more complicated. Recently, Differential Evolution (DE) is viewed as an excellent algorithm to solve OARPD problems, due to its effectiveness to optimize the objective function which is subject to many operational constraints. A new efficient Differential Evolution algorithm, denoted as DEa-AR, is propounded to solve the contemporary stochastic optimal power flow OARPD problems considering the renewable generators. DEa-AR uses arithmetic recombination crossover and adapts the scaling factor based on Laplace distribution. In addition, an efficient archive strategy that acts as a corresponding image of the population and stores the inferior individuals for later use, is also incorporated. The target behind using this strategy is to consider the information of inferior individuals as a direction toward finding new good solutions. The IEEE 57-bus system is used to evaluate the OARPD problems with different stochastic scenarios based on different probability distributions employed to model parameters of renewable energy sources. The performance of the proposed work is compared with other state-of-the-art algorithms. Simulation results indicate that the proposed technique can solve the OARPD problems with renewable sources effectively and can provide high quality solutions. The proposed algorithm is ranked the first with a Friedman rank equals to 1.8333 with a clear statistical significant difference compared with the most recent studies on the used problems. (C) 2018 Elsevier B.V. All rights reserved.
机译:最佳的主动 - 无功功率调度问题(OARPD)是非凸和高度非线性复杂优化问题。通常,由于调度周期的负载变化,这些问题在计算时间和成本方面是昂贵的。通常用于解决此类问题的基于传统的基于约束的求解器需要相当大的高预算,并且可能无法提供高质量的解决方案。在过去的十年中,由于纳入可再生能源,如:风,太阳能和小型水力发电机,OARPD的复杂性进一步增加。更具体地说,再生可再生源的融合在传统的OARPD中的负载变化之上引入了不确定性,使得问题更加复杂。最近,差分演进(DE)被视为解决OARPD问题的优秀算法,因为其有效性优化了受许多操作约束的目标函数。一种新的高效差分演化算法,表示为DEA-AR,以解决考虑到可再生发电机的当代随机最佳动力流量oarpd问题。 DEA-AR使用算术重组交叉,并根据LAPLACE分布调整缩放系数。另外,还结合了一种有效的归档策略,作为群体的相应图像并将劣质人储存以供以后使用。使用这种策略背后的目标是考虑劣质个人作为寻找新的良好解决方案的方向的信息。 IEEE 57总线系统用于根据可再生能源模型参数的不同概率分布评估不同随机方案的OARPD问题。将所提出的工作的表现与其他最先进的算法进行比较。仿真结果表明,所提出的技术可以有效地解决可再生能源的oarpd问题,可以提供高质量的解决方案。该算法将Friedman等级等于1.8333的第一个算法,与对二手问题的最新研究相比,具有明显的统计显着差异。 (c)2018 Elsevier B.v.保留所有权利。

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