Application of chaotic simulation and self-organizing neural net to power system voltage stability monitoring

L. Chen
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引用次数: 3

Abstract

This paper introduces a chaotic neural net model to calculate the multiple load flow solutions, especially the lower voltage solution for power system voltage stability monitoring. Chaos is now understood to be an inherent feature of many nonlinear systems. Unlike Lyapunov dynamics, the proposed neural net aimed at dealing with global optimization problems, is based on the chaotic dynamics regime which allows neural networks to be temporarily unstable, keeping stability due to convergent dynamics. Therefore, by converting the load flow problem into an energy-minimum problem and taking advantage of 'chaotic itinerary', multiple load flow solutions can be obtained. Numerical calculations have been undertaken in this paper, where a number of fractual structures of orbit and Poincare maps plotted with varying phases were provided to certify chaos occurrence, and a practical power system was also used to show the efficiency and effectiveness of the proposed approach.<>
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混沌仿真和自组织神经网络在电力系统电压稳定监测中的应用
本文介绍了一种混沌神经网络模型,用于电力系统电压稳定监测中多种潮流解的计算,特别是低压解的计算。混沌现在被理解为许多非线性系统的固有特征。与Lyapunov动力学不同,所提出的神经网络旨在处理全局优化问题,它基于混沌动力学体系,该体系允许神经网络暂时不稳定,但由于收敛动力学而保持稳定。因此,通过将负荷流问题转化为能量最小问题,并利用“混沌行程”,可以得到多个负荷流解。本文进行了数值计算,其中提供了许多轨道分形结构和不同相位的庞加莱图来证明混沌的发生,并使用一个实际的电力系统来证明所提出方法的效率和有效性。
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