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Backbone-network Reconfiguration for Power System Restoration using Genetic Algorithm and Expert System

机译:基于遗传算法和专家系统的电力系统恢复的骨干网络重新配置

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During the last few years many blackouts have been experienced throughout the world. It seems that modern power systems are more exposed to major blackouts. This raises the necessity of having an obvious restoration plan to rebuild the power system as soon as possible. This problem is characterized by a large solution space which can be constrained with expert knowledge. This paper describes a new power system restoration algorithm jointly using Genetic Algorithms (GA) and Expert systems (ES). GA's are used to obtain optimized Skeleton Networks for power systems, while ES acts as an effective system operator to constrain the solution space for the GA. Also ES allows the GA to be more informed about the overall power system physical performance. This includes, for example, Frequency response to sudden load pick up, Reactive power balance, load- generation balance, Stability limits, high and low voltage levels limits, MW and MVAR reserve requirement and line transfer capability, etc. In order to show the advantages of combining the GA and ES to this problem, this paper presents a comparative result between the hybrid algorithm and pure ES method. The case study presented in this study is 39 IEEE bus systems. The results presented in this paper show that the application of ES can be significantly enhanced by the stated combination.
机译:在过去的几年里,世界各地都有许多停电。似乎现代电力系统更接触到主要的停电。这提高了具有明显恢复计划来尽快重建电力系统的必要性。这个问题的特点是大型解决方案,其可以受到专家知识的限制。本文介绍了一种使用遗传算法(GA)和专家系统的新电力系统恢复算法。 GA的用于获得功率系统的优化骨架网络,而ES充当有效的系统运营商,以限制GA的解决方案空间。此外,ES允许GA更加了解整体电力系统物理性能。这包括例如频率响应突然载荷拾取,无功功率平衡,装载平衡,稳定性限制,高电压水平限制,MW和MVAR备用要求和线路传输能力等。为了显示组合GA和ES对此问题的优点,本文提出了混合算法与纯ES方法的比较结果。本研究中提出的案例研究是39个IEEE总线系统。本文提出的结果表明,通过所述组合可以显着提高ES的应用。

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