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Conditional Q-learning algorithm for path-planning of a mobile robot

机译:用于移动机器人路径规划的条件Q学习算法

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In classical Q-learning, the Q-table is updated after each state-transition of the agent. This is not always economic. This paper provides an alternative approach to Q-learning, where the Q-value of a grid is updated until a Boolean variable Lock associated with the cell is set. Thus the proposed algorithm saves unnecessary updating in the Q-table. Complexity analysis reveals that there is a significant saving in time- and space-complexity of the proposed algorithm with respect to the classical Q-learning.
机译:在经典的Q学习中,Q表在代理的每次状态转换后都会更新。这并不总是经济的。本文提供了另一种Q学习方法,其中更新网格的Q值,直到设置了与单元格关联的布尔变量Lock。因此,所提出的算法将不必要的更新保存在Q表中。复杂度分析表明,相对于经典的Q学习,所提算法的时间和空间复杂度显着节省。

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