Comparison between fuzzy, neural and neuro-fuzzy controllers for mobile robot path tracking

Cherroun Lakhmissi
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引用次数: 7

Abstract

This paper describes the use of soft computing approaches to the robot behavior design. In many applications, the robot's environment changes with time in a way that is not predictable by the designer in advance. In addition, the knowledge about the environment is often imprecise and incomplete due to the limited perceptual quality of sensors. In order to equip the robot by capacity of autonomy and intelligence in its environment, the control system must perform much complex information and processing tasks in real time, and it is well suited to use the soft-computing techniques. The objective of this paper is to elaborate and compare simple intelligent control systems for the path following behavior by an autonomous mobile robot using the most known approaches of the artificial intelligence science: fuzzy, neuro and neuro-fuzzy controllers. The proposed controllers are used for pursuing a moving target. The obtained simulation results show the effectiveness of the designed controllers. The results are discussed and compared.
移动机器人路径跟踪的模糊控制器、神经控制器和神经模糊控制器的比较
本文介绍了软计算方法在机器人行为设计中的应用。在许多应用中,机器人的环境会随着时间的推移而变化,这是设计者无法提前预测的。此外,由于传感器的感知质量有限,对环境的了解往往是不精确和不完整的。为了使机器人在其所处的环境中具有自主和智能的能力,控制系统必须实时执行许多复杂的信息和处理任务,并且非常适合使用软计算技术。本文的目的是利用人工智能科学中最著名的方法:模糊、神经和神经模糊控制器,详细阐述和比较自主移动机器人路径跟随行为的简单智能控制系统。所提出的控制器用于跟踪运动目标。仿真结果表明了所设计控制器的有效性。对结果进行了讨论和比较。
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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