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Modular Neural Network and Classical Reinforcement Learning for Autonomous Robot Navigation : Inhibiting Undesirable Behaviors

机译:模块化神经网络和自主机器人导航的经典强化学习:抑制不良行为

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摘要

Classical reinforcement learning mechanisms and a modular neural network are unified for conceiving an intelligent autonomous system for mobile robot navigation. The conception aims at inhibiting two common navigation deficiencies: generation of unsuitable cyclic trajectories and ineffectiveness in risky configurations. Distinct design apparatuses are considered for tackling these navigation difficulties, for instance: 1) neuron parameter for memorizing neuron activities (also functioning as a learning factor), 2) reinforcement learning mechanisms for adjusting neuron parameters (not only synapse weights), and 3) a inner-triggered reinforcement. Simulation results show that the proposed system circumvents difficulties caused by specific environment configurations, improving the relation between collisions and captures.
机译:经典的强化学习机制和模块化的神经网络被统一起来,以构想用于移动机器人导航的智能自主系统。该构想旨在抑制两个常见的导航缺陷:生成不合适的循环轨迹和在危险配置中无效。考虑使用不同的设计设备来解决这些导航难题,例如:1)用于记忆神经元活动的神经元参数(还用作学习因子),2)用于调整神经元参数的增强学习机制(不仅突触权重),以及3)内部触发的钢筋。仿真结果表明,提出的系统规避了特定环境配置带来的困难,改善了碰撞与捕获之间的关系。

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