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Application of single agent Q-learning for light exploration

机译:单代理Q学习在光探测中的应用

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Machine learning refers to systematic design and development of algorithms that allows computers to evolve behaviors based on some realistic data (online or offline). Q-learning, a sub-part of the reinforcement learning is being used world wide for easy learning of mobile robots. Light exploration is one of the important issues for developing green robots. This paper describes the work carried out for light exploration by a robot using single-agent based Q-learning. Here a single agent is taking care of all the tasks for learning. ARBIB III, an indigenous behaviour-based robot has been used to implement the Q-learning algorithm for light exploration. The system uses one light sensor and two touch (press) sensors for exploration. It has been found that the algorithm has good applicability for robot learning.
机译:机器学习是指系统的设计和算法开发,该算法允许计算机根据一些实际数据(在线或离线)发展行为。 Q学习是强化学习的一个子部分,在全世界范围内广泛使用,以便轻松学习移动机器人。光照探索是开发绿色机器人的重要问题之一。本文介绍了机器人使用基于单代理的Q学习进行光探测的工作。在这里,一个代理负责所有学习任务。 ARBIB III,这是一种基于行为的本地机器人,用于实现光探测的Q学习算法。该系统使用一个光传感器和两个触摸(压力)传感器进行探测。已经发现该算法对于机器人学习具有良好的适用性。

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