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Genetic algorithms based dynamic search spaces for global power system stabilizer optimization

机译:用于全球电力系统稳定器优化的基于遗传算法的动态搜索空间

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Genetic algorithms (GAs) are powerful optimization techniques. The optimization performance depends highly on the determination of optimized parameter search spaces, which remain unchanged during GA running. Hence, the objective function evolution may decelerate or even stabilize well before attaining the optimal solution. This article proposes an approach of GAs based dynamic search spaces. It focuses on improving the search space boundaries and allowing GAs to discover new search spaces which are not accessible initially. A GA using this approach is developed and validated to the optimization of power system stabilizer parameters within a multimachine system (16-generator and 68-bus). The obtained results are evaluated and compared with those of ordinary GAs and literature. They show significant improvement in terms of optimization performance and convergence rate.
机译:遗传算法(GA)是强大的优化技术。优化性能高度取决于优化参数搜索空间的确定,这些参数搜索空间在GA运行期间保持不变。因此,在获得最佳解之前,目标函数的演化可能会减速甚至稳定下来。本文提出了一种基于GA的动态搜索空间的方法。它着重于改善搜索空间的边界并允许GA发现最初无法访问的新搜索空间。开发并验证了使用这种方法的遗传算法,以优化多机系统(16发电机和68总线)中的电力系统稳定器参数。对获得的结果进行评估,并与普通GA和文献进行比较。它们在优化性能和收敛速度方面显示出显着的改进。

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