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Reinforcement learning-hierarchical neuro-fuzzy politree model for autonomous agents - evaluation in a multi-obstacle environment

机译:加强学习 - 分层神经模糊PLITLEAL模型 - 一种多障碍环境中的评价

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This work presents an extension of the hybrid reinforcement learning-hierarchical neuro-fuzzy politree model (RL-HNFP) and presents its performance in a multi-obstacle environment. The main objective of the RL-HNFP model is to provide an agent with intelligence, making it capable, by interacting with its environment, to acquire and retain knowledge for reasoning (infer an action). The original RL-HNFP applies hierarchical partitioning methods, together with the reinforcement learning (RL) methodology, which permits the autonomous agent to automatically learn its structure and its necessary action in each position in the environment. The improved version of the RL-HNFP model implements a better defuzzification method, improving the agent's behaviour. The extended RL-HNFP model was evaluated in a multi-obstacle environment, providing good performance and demonstrating the agent's autonomy.
机译:这项工作介绍了混合强化学习 - 分层神经模糊Politree模型(RL-HNFP)的扩展,并在多障碍环境中呈现其性能。 RL-HNFP模型的主要目标是提供一种具有智能的代理,使其能够通过与其环境进行互动来获取和保留推理知识(推断出行动)。原始RL-HNFP将分层分区方法应用于加强学习(RL)方法,这允许自主代理自动学习其结构及其在环境中每个位置的必要行动。 RL-HNFP模型的改进版本实现了更好的Defuzzzification方法,提高了代理的行为。扩展的RL-HNFP模型在多障碍环境中进行了评估,提供了良好的性能并展示了代理人的自主权。

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