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Spiking neural network-based multi-task autonomous learning for mobile robots

机译:用于移动机器人的基于神经网络的基于神经网络的多任务自主学习

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Spiking Neural Networks (SNNs) are the new generation of artificial neural networks that closely mimic the time encoding and information processing aspects of the human brain. In this work, a multi-task autonomous learning paradigm is proposed for the mobile robot application, which employs a SNN to construct the controlling system of the mobile robot. The Reward-modulated Spiking-time-dependent Plasticity learning rule is developed for the SNN-based controller, which aims to achieve the capability of autonomous learning under multiple tasks. Reward signals are generated based on the instantaneous frequencies of pre- and post-synaptic spikes, which adapts to the sensory stimuli and environmental feedback. Meanwhile, inspired by lateral inhibition connections, a task switch mechanism is designed to enable the controller to switch the operations between multiple tasks. Two tasks of obstacle avoidance and target tracking are used for performance evaluation and results demonstrate that the mobile robot with the proposed paradigm is able to autonomously learn, switch and complete the tasks.
机译:尖峰神经网络(SNNS)是新一代人工神经网络,密切模仿人脑的时间编码和信息处理方面。在这项工作中,提出了一种多任务自主学习范例,用于移动机器人应用,其采用SNN来构造移动机器人的控制系统。为基于SNN的控制器开发了奖励调制的尖峰时间依赖性塑性学习规则,旨在在多个任务下实现自主学习的能力。基于突触后尖峰的瞬时频率产生奖励信号,其适应感官刺激和环境反馈。同时,受到横向抑制连接的启发,任务开关机构旨在使控制器能够在多个任务之间切换操作。避免障碍和目标跟踪的两项任务用于性能评估,结果表明,具有提出范例的移动机器人能够自主学习,交换和完成任务。

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