基于遗传算法和人工神经网络的移动机器人自适应行为获取

Nicolás Navarro-Guerrero, C. Muñoz, W. Freund, V. T. Arredondo
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引用次数: 6

摘要

本文描述了在移动机器人探索中使用软计算技术获取自适应行为。在未知环境中采用基于动作的环境建模(AEM)方法进行导航,并采用无监督自适应学习方法获取动态行为。本研究表明,这种无监督自适应方法能够训练一个简单的低成本机器人,使其在多种复杂环境中发展出高度适合的行为。支持这些结论的实验是在Khepera机器人模拟器上进行的。机器人利用神经网络来解释来自机器人传感器的测量结果,以确定其下一步的行为。该网络采用遗传算法(GA)进行训练,其中每个机器人由一个神经网络组成。适应度评估提供了机器人在其环境中的探索能力方面的行为质量
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Acquiring Adaptive Behaviors of Mobile Robots Using Genetic Algorithms and Artificial Neural Networks
This paper describes the use of soft computing techniques for acquiring adaptive behaviors to be used in mobile robot exploration. Action-based environment modeling (AEM) based navigation is used within unknown environments and unsupervised adaptive learning is used for obtaining of the dynamic behaviors. In this investigation it is shown that this unsupervised adaptive method is capable of training a simple low cost robot towards developing highly fit behaviors within a diverse set of complex environments. The experiments that endorse these affirmations were made in Khepera robot simulator. The robot makes use of a neural network to interpret the measurements from the robot sensors in order to determine its next behavior. The training of this network was made using a genetic algorithm (GA), where each individual robot is constituted by a neural network. Fitness evaluation provides the quality of robot behavior with respect to his exploration capability within his environment
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