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A probabilistic multi-objective approach for power flow optimization in hybrid wind-PV-PEV systems

机译:混合风-PV-PEV系统中一种概率多目标潮流优化方法

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摘要

This paper formulates and solves a probabilistic optimal power flow approach (POPF) for a hybrid power system that includes plug-in electric vehicles (PEV), photovoltaic (PV) and wind energy (WE) sources. In the proposed approach, the Monte Carlo Simulation (MCS) was combined with the antithetic variates method (AVM) to determine the probability distribution function (PDF) of the power generated by the hybrid system. To reduce the computational cost of the optimal power flow calculations, we solved the POPF problem using a master slave parallel epsilon variable multi objective genetic algorithm (Pev-MOGA). The performance of the proposed approach was assessed using the IEEE 30-bus, 57-bus and 118-bus power systems. Various scenarios incorporating several configurations of WEs, PVs and PEVs sources were considered in the evaluation. Sensitivity analysis was also performed for further assessment. The obtained results along with a comparison analysis with other optimization algorithms confirmed the effectiveness of the proposed approach in accurately providing a set of optimal solutions for the hybrid power system.
机译:本文为混合动力系统(包括插电式电动汽车(PEV),光伏(PV)和风能(WE)源)制定并解决了概率最优潮流方法(POPF)。在提出的方法中,将蒙特卡洛模拟(MCS)与对立变量方法(AVM)相结合,以确定混合动力系统产生的功率的概率分布函数(PDF)。为了减少最佳潮流计算的计算成本,我们使用主从并行ε变量多目标遗传算法(Pev-MOGA)解决了POPF问题。使用IEEE 30总线,57总线和118总线电源系统评估了所建议方法的性能。评估中考虑了包含WE,PV和PEV来源几种配置的各种方案。还进行了敏感性分析以进一步评估。获得的结果以及与其他优化算法的比较分析证实了该方法在为混合动力系统准确提供一组最佳解决方案方面的有效性。

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