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Two-Stage Reinforcement Learning Based on Genetic Network Programming for Mobile Robot

机译:基于遗传网络编程的移动机器人的两级加固学习

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This paper studies the adaptability of Two-Stage Reinforcement Learning based on Genetic Network Programming for a mobile robot to cope with sudden changes in the environments, i.e., sensors break suddenly in the implementation. Two-Stage Reinforcement Learning (TSRL) uses two kinds of learning, that is, (1) sub node selection proposed in the conventional Genetic Network Programming with Reinforcement Learning and (2) branch connection selection. As a result, when the sudden changes occur in the environments, the proposed method can determine the actions more appropriately.
机译:本文研究了基于基于遗传网络编程的两级增强学习的适应性,以应对环境的突然变化,即传感器突然在实施中断。两级加固学习(TSRL)使用两种学习,即(1)副节点选择,在传统的遗传网络编程中提出,具有增强学习和(2)分支连接选择。结果,当环境中发生突然变化时,所提出的方法可以更适当地确定动作。

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