人工神经网络在船舶航道自主导航中的应用

M. Stamenkovich
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引用次数: 3

摘要

研究了一种基于强化学习的船舶自主航道导航神经网络模型。所使用的模型由两个类似神经元的元素组成。基本的学习计划包括与评论家一起学习。该网络由自适应批评元素(ACE)和自适应搜索元素(ASE)组成。ASE探索通道区域,而ACE批评ASE的行为,并试图预测ASE尝试导航的失败。通过图形反馈的软件仿真,证明了所建立的神经网络模型的有效性。类似的实现可以在许多利用矢量信息的电子制图系统中得到应用。研究了该系统的性能及其对新信道的适应性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An application of artificial neural networks for autonomous ship navigation through a channel
A neural network model based on reinforcement learning is investigated for use as a shipboard autonomous channel navigator. The model used consists of two neuron-like elements. The basic learning scheme involves learning with a critic. The network consists of an adaptive critic element (ACE) and an adaptive search element (ASE). The ASE explores the channel region while the ACE criticizes the actions of the ASE and tries to predict failures of the ASE's attempt to navigate. The neural network model developed has been shown to be useful through software simulation with graphical feedback. A similar implementation could have applications in many electronic mapping systems utilizing vector information. The performance of such a system and its adaptability to new channels are investigated.<>
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