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Stochastic multi-objective optimal reactive power dispatch considering load and renewable energy sources uncertainties: a case study of the Adrar isolated power system

机译:考虑负载和可再生能源的随机多目标最佳无功功率调度:Adrar隔离电力系统的案例研究

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摘要

Optimal reactive power dispatch (ORPD) is a particular case of the optimal power flow (OPF) which consists in determining the state of an electric power system by optimizing a specific objective function and satisfying a set of some operating constraints. In this paper, the purpose is to solve deterministic and stochastic multi-objective ORPD (MO-ORPD) problem under load and renewable energy sources (RES) uncertainties. The uncertainty is modelled using stochastic scenario-based approach (SSBA). The objectives to be minimized are active power loss and cumulative voltage deviation from their corresponding nominal values. The MO-ORPD is solved using sum weighed method, and fuzzy satisfying method is used to select the best compromise solution among Pareto front of non-dominated solutions. In this paper, quantum-behaved particle swarm optimization differential mutation (QPSODM) algorithm is proposed to solve the ORPD problem. The proposed methodology has been examined and confirmed on the IEEE 14-bus and the practical Adrar's isolated power system. The performance of the proposed methodology is compared with recent algorithms. Simulation results show that the proposed methodology can solve the MO-ORPD including RES effectively and can give best and logic results. Furthermore, a sensitivity analysis is carried out to show the performance of the proposed algorithm comparing to own developed algorithms particle swarm optimization (PSO) and quantum PSO (QPSO).
机译:最佳无功功率调度(ORPD)是最佳功率流(OPF)的特定情况,其包括通过优化特定的目标函数并满足一组一些操作约束来确定电力系统的状态。在本文中,目的是解决负载和可再生能源(RES)不确定性下的确定性和随机多目标ORPD(MO-ORPD)问题。使用随机情景的方法(SSBA)建模不确定性。最小化的目标是与相应的标称值的有源功率损耗和累积电压偏差。使用SUM称量方法解决了MO-ORPD,并且模糊满足方法用于选择非主导解决方案的Pareto前面的最佳折衷解决方案。本文提出了量子行为粒子群优化差异突变(QPSODM)算法来解决ORPD问题。在IEEE 14公交车和实用的Adrar的孤立电力系统上被检查并确认了该方法。将所提出的方法的性能与最近的算法进行比较。仿真结果表明,所提出的方法可以有效地解决包括RE的MO-ORPD,可以提供最佳和逻辑结果。此外,进行了灵敏度分析,以显示与自己开发的算法粒子群优化(PSO)和量子PSO(QPSO)进行比较的所提算法的性能。

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