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Research on UUV Obstacle Avoiding Method Based on Recurrent Neural Networks

机译:基于经常性神经网络的UUV障碍避免方法研究

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摘要

In this paper, we present an online obstacle avoidance planning method for unmanned underwater vehicle (UUV) based on clockwork recurrent neural network (CW-RNN) and long short-term memory (LSTM), respectively. In essence, UUV online obstacle avoidance planning is a spatiotemporal sequence planning problem with the spatiotemporal data sequence of sensors as input and control instruction to motion controller of UUV as output. And recurrent neural networks (RNNs) have proven to give state-of-the-art performance onmany sequence labeling and sequence prediction tasks. In order to train the networks, a UUV obstacle avoidance dataset is generated and an offline training and testing is adopted in this paper. Finally, the proposed two types of RNN based online obstacle avoidance planners are compared in path cost, obstacle avoidance planning success rate, training time, time-consumption, learning, and generalization, respectively. And the good performance of the proposed methods is demonstrated with a series of simulation experiments in different environments.
机译:在本文中,我们在发条经常性神经网络(CW-RNN)和长短短期存储器(LSTM)上,提供了一种用于无人水下车辆(UUV)的在线障碍避免计划方法。从本质上讲,UUV在线障碍避免计划是一种时空序列规划问题,其传感器的时空数据序列作为UUV运动控制器作为输出的输入和控制指令。经常性的神经网络(RNNS)已被证明是为了提供最先进的性能,onmyy序列标记和序列预测任务。为了培训网络,生成UUV障碍避免数据集,本文采用了离线训练和测试。最后,提出的两种类型的基于RNN的在线障碍避免规划者分别比较了路径成本,障碍避免计划成功率,培训时间,时间消耗,学习和泛化。并且,所提出的方法的良好性能是在不同环境中的一系列仿真实验中进行了证明。

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