The Role of Block Particles Swarm Optimization to Enhance The PID-WFR Algorithm

Heru Suwoyo, Abdurohman Abdurohman, Yifan Li, A. Adriansyah, Yingzhong Tian, Muhammad Hafizd Ibnu Hajar
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引用次数: 4

Abstract

In the conventional Proportional Integral Derivation (PID) controller, the parameters are often adjusted according to the formulas and actual application. However, this empirical method will bring two disadvantages. First, testing the program takes much time and usually needs help to reach the optimal solution. Second, the PID parameters will not adapt to the new environment when the situation changes. This paper proposed a method by employing a Block Particles Swarm Optimization (BPSO) to enhance the conventional Proportional Integral Derivation (PID) algorithm to overcome the mentioned disadvantages. The genetic algorithm (GA) first optimized the PID parameters. However, its optimization time is relatively long. Then, a Block Particle Swarm Optimization (BPSO) algorithm is designed to solve the problem of long optimization time. This method was then applied to the wall-following robot problem by realistically simulating it to confirm the performance. After Compared with conventional methods, the proposed method shows a relatively stable solution.
块粒子群优化在改进PID-WFR算法中的作用
在传统的比例积分导数(PID)控制器中,通常根据公式和实际应用来调整参数。然而,这种经验方法会带来两个缺点。首先,测试程序需要花费很多时间,并且通常需要帮助才能达到最佳解决方案。其次,当情况发生变化时,PID参数不能适应新的环境。本文提出了一种采用块粒子群优化(BPSO)对传统的比例积分导数(PID)算法进行改进的方法,以克服上述缺点。首先采用遗传算法对PID参数进行优化。但其优化时间较长。然后,设计了一种块粒子群优化算法(BPSO),解决了优化时间长的问题。将该方法应用于机器人走墙问题,并进行了仿真验证。与传统方法相比,该方法具有相对稳定的解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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