AGV fuzzy control optimized by genetic algorithms

Pub Date : 2024-03-24 DOI:10.1093/jigpal/jzae033
J Enrique Sierra-Garcia, Matilde Santos
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Abstract

Automated Guided Vehicles (AGV) are an essential element of transport in industry 4.0. Although they may seem simple systems in terms of their kinematics, their dynamics is very complex, and it requires robust and efficient controllers for their routes in the workspaces. In this paper, we present the design and implementation of an intelligent controller of a hybrid AGV based on fuzzy logic. In addition, genetic algorithms have been used to optimize the speed control strategy, aiming at improving efficiency and saving energy. The control architecture includes a fuzzy controller for trajectory tracking that has been enhanced with genetic algorithms. The cost function first maximizes the time in the circuit and then minimizes the guiding error. It has been validated on the mathematical model of a commercial hybrid AGV that merges tricycle and differential robot components. This model not only considers the kinematics and dynamics equations of the vehicle but also the impact of friction. The performance of the intelligent control strategy is compared with an optimized PID controller. Four paths were simulated to test the approach validity.
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利用遗传算法优化 AGV 模糊控制
自动导引车(AGV)是工业 4.0 中运输的基本要素。虽然就运动学而言,它们可能是看似简单的系统,但其动力学却非常复杂,需要稳健高效的控制器来控制它们在工作区中的路线。本文介绍了基于模糊逻辑的混合动力 AGV 智能控制器的设计与实现。此外,我们还利用遗传算法优化了速度控制策略,旨在提高效率和节约能源。控制架构包括一个用于轨迹跟踪的模糊控制器,该控制器通过遗传算法得到了增强。成本函数首先使电路中的时间最大化,然后使导向误差最小化。它已在融合了三轮车和差动机器人组件的商用混合 AGV 的数学模型上得到验证。该模型不仅考虑了车辆的运动学和动力学方程,还考虑了摩擦的影响。智能控制策略的性能与优化的 PID 控制器进行了比较。对四条路径进行了模拟,以测试该方法的有效性。
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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