Bayesian networks design of load-frequency control based on GA

Fatemeh Daneshfar, H. Bevrani, F. Mansoori
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引用次数: 12

Abstract

Frequency regulation in interconnected networks is one of the main challenges in power systems. Significant interconnection frequency deviations can cause under/over frequency relaying and disconnect some loads and generations. Under unfavorable conditions, this may result in a cascading failure and system collapse. A control strategy for solving this problem in a multi-area power system is presented by an intelligent based load frequency control (LFC) using Bayesian networks (BNs). This method admits considerable flexibility in defining the control objectives specifically in a large scale power system. The BNs provide efficient probabilistic inference algorithms that permit answering various probabilistic queries about the system and incorporate expert knowledge and historical data for revising the prior belief in the light of new evidence in many fields. It is also possible to include local conditional dependencies into the model, by directly specifying the causes that influence a given effect. To demonstrate the capability of the proposed control structure, a three-control area power system simulation with two different scenarios is presented.
基于遗传算法的负载频率控制贝叶斯网络设计
互联网络的频率调节是电力系统面临的主要挑战之一。显著的互连频率偏差可能导致频率过低/过低中继,并断开某些负载和代。在不利的情况下,这可能导致级联故障和系统崩溃。提出了一种基于贝叶斯网络的智能负荷频率控制策略,以解决多区域电力系统中的这一问题。该方法在确定大型电力系统的具体控制目标方面具有很大的灵活性。bp网络提供了有效的概率推理算法,允许回答关于系统的各种概率查询,并结合专家知识和历史数据,根据许多领域的新证据修改先验信念。通过直接指定影响给定结果的原因,也可以将局部条件依赖关系包含到模型中。为了验证所提出的控制结构的能力,给出了两种不同场景下的三控制区电力系统仿真。
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