首页> 外文会议>Advances in Natural Computation pt.1; Lecture Notes in Computer Science; 4221 >Cooperative Co-evolutionary Approach Applied in Reactive Power Optimization of Power System
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Cooperative Co-evolutionary Approach Applied in Reactive Power Optimization of Power System

机译:协同协同进化方法在电力系统无功优化中的应用

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Cooperative Co-evolutionary Approach (CCA) is a new architecture of evolutionary computation. Based on CCA, the paper proposes a new method for reactive power optimization problem in power system, which is non-convex, non-linear, discrete, and usually with a large number of control variables. According to the decomposition-coordination principle, the reactive power optimization problem is decomposed into a number of sub-problems, which is optimized by a single evolutionary algorithm population. The populations interact with each other through a common system model and co-evolve and result in the continuous evolution of the whole system. The reactive power optimization problem is solved when the co-evolutionary process ends. Simulation results show that compared with conventional Genetic Algorithm (GA), CCA not only can obtain better optimal results, but also has better convergence property. CCA reduce the over-long computational time of GA and is more suitable for solving large-scale optimization problems.
机译:合作协同进化方法(CCA)是一种进化计算的新架构。基于CCA,提出了一种解决电力系统无功优化问题的新方法,该方法是非凸的,非线性的,离散的,通常具有大量的控制变量。根据分解协调原理,将无功优化问题分解为多个子问题,这些子问题由单个演化算法总体进行优化。种群通过一个共同的系统模型相互交互并共同进化,从而导致整个系统的不断发展。当协同进化过程结束时,无功优化问题得到解决。仿真结果表明,与常规遗传算法相比,CCA不仅可以获得更好的最优结果,而且具有更好的收敛性。 CCA减少了GA的过长计算时间,更适合解决大规模优化问题。

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