基于深度BP神经网络的地空导弹拟合算法研究

Wei Peng, Zhigang Lv, Chuchao He
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引用次数: 1

摘要

地空导弹发射区域的工作方程是地面作战指挥系统的重要参数之一。然而,目前大多数地空导弹发射区域拟合算法还停留在多项式拟合和传统的BP神经网络拟合阶段。多项式拟合在面对地空导弹发射区域这样复杂的问题时存在很大的局限性,拟合精度较差,而传统的BP神经网络可以达到较高的精度,但难以进一步提高。针对这些问题,本文提出了一种基于BP神经网络的深度拟合方法,通过增加隐藏层数和隐藏层中的节点数来进一步提高拟合精度。仿真实验表明,该方法对地空导弹发射区域的拟合效果优于传统的BP神经网络,不仅拟合误差更小,而且拟合精度的提高非常明显。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Ground-to-Air Missile Fitting Algorithm Based on Deep BP Neural Network
As one of the important parameters of the ground combat command system, it is necessary to determine the working equation of the surface-to-air missile launch area. However, at present, most of the fitting algorithms for surface-to-air missile launch area are still at the stage of polynomial fitting and traditional BP neural network fitting. Polynomial fitting has great limitations when facing such a complex problem as surface-to-air missile launch area, with poor fitting accuracy, while the traditional BP neural network can achieve high accuracy but it is difficult to further improve it. To address these problems, a depth fitting method based on BP neural network is proposed in this paper to further improve the fitting accuracy by increasing the number of hidden layers and the number of nodes in the hidden layers. Simulation experiments show that the method fits the surface-to-air missile launch area better than the traditional BP neural network, and not only the fitting error is lower, but also the improvement of fitting accuracy is very obvious.
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