Development of an Educational Simulator for Particle Swarm Optimization and Economic Dispatch Applications

Woo-Nam Lee, Yun-Won Jeong, Jong-Bae Park, Joong-Rin Shin, K.Y. Lee
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引用次数: 6

Abstract

This paper presents a windows-based educational simulator with user-friendly graphical user interface (GUI) for the education and training of particle swarm optimization (PSO) technique for mathematical optimization problems and economic dispatch (ED) applications. The main objective for developing the simulator is to provide information with the electrical engineering undergraduate students that the up-to-date artificial intelligent (AI) techniques including PSO are actively used in power system optimization problems. The simulator can be used as a lecturing tool to stimulate an interest in the power system engineering of the undergraduate students. The students can be more familiar with the optimization problems including power system ED problem through the iterative uses of the simulator. Also, they can increase understandings on PSO mechanism by the homework on the optimal design of several control parameters such as inertia weight, acceleration coefficients, and the number of population, etc. In the developed simulator, instructors and students can select the optimization functions and set the parameters that have an influence on PSO performance. The simulator is applied not only to mathematical optimization functions but also to economic dispatch (ED) problems with non-smooth cost functions, which is designed so that users can solve other mathematical functions through simple additional MATLAB coding.
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面向粒子群优化和经济调度应用的教育模拟器的研制
本文提出了一个基于窗口的教育模拟器,具有用户友好的图形用户界面(GUI),用于粒子群优化(PSO)技术在数学优化问题和经济调度(ED)应用中的教育和培训。开发仿真器的主要目的是向电气工程专业的本科生提供包括粒子群算法在内的最新人工智能技术在电力系统优化问题中的积极应用信息。该仿真器可以作为一种教学工具来激发大学生对电力系统工程的兴趣。通过模拟器的迭代使用,学生可以更加熟悉包括电力系统ED问题在内的优化问题。通过对惯量权重、加速度系数、种群数等控制参数的优化设计,增加了对粒子群运动机理的理解。在开发的模拟器中,教师和学生可以选择优化函数并设置影响PSO性能的参数。该模拟器不仅适用于数学优化函数,还适用于具有非光滑代价函数的经济调度问题,使用户可以通过简单的附加MATLAB编码来求解其他数学函数。
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