An Efficient Approach for Line-Following Automated Guided Vehicles Based on Fuzzy Inference Mechanism

Sy-Hung Bach, S. Yi
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引用次数: 1

Abstract

Recently, there has been increasing attention paid to AGV (Automated Guided Vehicle) in factories and warehouses to enhance the level of automation. In order to improve productivity, it is necessary to increase the efficiency of the AGV, including working speed and accuracy. This study presents a fuzzy-PID controller for improving the efficiency of a line-following AGV. A line-following AGV suffers from tracking errors, especially on curved paths, which causes a delay in the lap time. The fuzzy-PID controller in this study mimics the principle of human vehicle control as the situation-aware speed adjustment on curved paths. Consequently, it is possible to reduce the tracking error of AGV and improve its speed. Experimental results show that the Fuzzy-PID controller outperforms the PID controller in both accuracy and speed, especially the lap time of a line-following AGV is enhanced up to 28.6% with the proposed fuzzy-PID controller compared to that with the PID controller only.
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一种基于模糊推理机制的自动导引车循线的有效方法
近年来,为了提高工厂和仓库的自动化水平,AGV(自动导引车)越来越受到人们的关注。为了提高生产效率,必须提高AGV的工作效率,包括工作速度和精度。本文提出了一种模糊pid控制器,以提高随行AGV的控制效率。直线跟踪AGV存在跟踪误差,特别是在弯曲路径上,这会导致圈速延迟。本研究的模糊pid控制器模仿人类车辆控制的原理,在弯曲路径上进行态势感知速度调节。从而可以减小AGV的跟踪误差,提高AGV的速度。实验结果表明,模糊PID控制器在精度和速度上都优于PID控制器,特别是与单纯PID控制器相比,模糊PID控制器可使顺行AGV的单圈时间提高28.6%。
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