机器人自主神经动力学研究进展

Dechao Chen, Shuai Li, Qing Wu
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摘要

利用神经网络来解决机器人的控制问题在学术界和工程界已经越来越普遍和有效。由于神经网络解决方案具有分布式存储、并行性、易于硬件实现、自适应自学习能力和无需离线训练等显著特点,打破了串行处理策略和方法的瓶颈,成为机器人工程师和研究人员的重要替代方案。特别是,自Hopfield和Tank的开创性工作以来,各种类型和分支的递归神经网络(RNNs)相继发展。相继提出、研究、发展了原始对偶神经网络(PDNNs)、归零神经网络(ZNNs)和梯度神经网络(GNNs)等rnn的许多类别和分支,并将其应用于机器人自治。本文的目的是对神经网络(特别是RNNs)在解决不同类型机器人控制问题方面的研究进行全面的综述。具体而言,详细回顾和报告了rnn、PDNNs、znn和GNNs在不同机器人控制问题解决中的最新研究进展。读者可以在本文中找到许多有效的、有价值的基于神经网络的机器人自治解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Review on Neural Dynamics for Robot Autonomy
Exploiting neural networks to solve control problems of robots is becoming commonly and effectively in academia and engineering. Due to the remarkable features like distributed storage, parallelism, easy implementation by hardware, adaptive self-learning capability, and free of off-line training, the solutions of neural networks break the bottlenecks of serial-processing strategies and methods, and serve as significant alternatives for robotic engineers and researchers. Especially, various types and branches of recurrent neural networks (RNNs) have been sequentially developed since the seminal works by Hopfield and Tank. Successively, many classes and branches of RNNs such as primal-dual neural networks (PDNNs), zeroing neural networks (ZNNs) and gradient neural networks (GNNs) are proposed, investigated, developed and applied to the robot autonomy. The objective of this paper is to present a comprehensive review of the research on neural networks (especially RNNs) for control problems solving of different kinds of robots. Specifically, the state-of-the-art research of RNNs, PDNNs, ZNNs and GNNs in different robot control problems solving are detailedly revisited and reported. The readers can readily find many effective and valuable solutions on the basis of neural networks for the robot autonomy in this paper.
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