混沌BP神经网络在水下地形匹配导航中的应用

Zhang Tao, Xiaosu Xu
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引用次数: 1

摘要

针对传统的ICP算法容易出现局部最小化问题,在ICP算法中引入了混沌BP神经网络。该算法以参考导航系统的指示为中心,绘制真实位置的搜索区域,然后从参考地形图中提取地形高度数据。这些地形数据连同相应的位置坐标被定义为多个模式,并用于训练BP网络。该网络可以根据实测水深数据识别出一定的模式类别,从而确定车辆的位置。然而,BP网络存在局部极小化问题和收敛速度慢的缺点,因此提出了改进方法。改进包括用混沌激励函数代替普通激励函数,用混沌搜索确定神经网络权值。实验结果表明,该方法可以改善地形匹配结果,并在一定程度上克服了局部收敛导致的匹配失败。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The application of chaotic BP neural network in underwater terrain matching navigation
As the traditional ICP algorithm is liable to get local minimization problem, a chaotic BP neural network is presented in the ICP algorithm. In the algorithm, a searching area of real position was plotted centering on the indication of refer navigation system, then terrain altitude data was extracted from refer terrain map. These terrain data, along with corresponding position coordinates, were defined as several patterns and used to train BP network. The network can recognizes certain pattern class with measured water-depth data to determine vehicle's location. However, there are drawbacks of local minimization problem and slow rapidity of convergence in BP network, so improved ways were put forward. The improvement includes replacing common motivating function with chaotic motivating function for and determination of neural network's weights using chaotic search. The experimental results reveal that results of terrain matching can be improved, and matching failure caused by local convergence is overcome to a certain extent.
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