结合MOGA-ETS的微电网在线OPF最小化损耗和延长电池寿命

Primaditya Sulistijono, A. Soeprijanto, D. Riawan
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引用次数: 0

摘要

本文提出了微电网运行中的最优潮流。它是基于一种结合了预测和优化方法的学习算法(多目标遗传算法-进化Takagi-Sugeno)来实现两个目标函数,即最小化损耗和延长在线状态下的电池寿命。该微电网在直流中运行,包括冗余的利益,即为光伏板和电池提供负载的并联电路。电池使用双向操作作为能量产生和能量储存。利用某地区的光伏发电数据和负荷数据进行了测试。并与其他学习算法进行了比较。结果表明,在许多情况下,最优解具有较高的在线性能,效率高于97%。此外,该方法还可以减少大量的cpu时间和用于保存数据的大磁盘空间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online OPF Using Combined MOGA-ETS to Minimize Losses and Extend Battery Lifetime in Micro-Grid
In this paper, an Optimal Power Flow in Micro-Grid Operation is proposed. It is based on a learning algorithm combining prediction and optimization methods (Multi-objective Genetic Algorithm - Evolving Takagi-Sugeno) for implementing two objective functions i.e. minimizing losses and extending battery lifetime in online condition. This Micro-Grid operates in DC including the interest of redundancy i.e. parallel circuits for supplying loads from photovoltaic panels and batteries. The batteries use two way operations as energy generation and energy storage. It has been tested using PV power generation data and load data in a region. It is also demonstrated the comprehensive comparisons with some other learning algorithms. The results illustrate a higher online performance with optimal solution in many cases with the efficiency are higher than 97%. Moreover, reducing a high amount of CPU-time and large disk space for saving data can be achieved by the proposed approach.
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