基于机器学习的坦克火控系统综合故障预测模型研究

Yingshun Li, Wei-Zhou Jia, X. Yi
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引用次数: 1

摘要

由于坦克火控系统故障信息不足,故障特征复杂,且故障信号具有高维数、小样本和非线性等特点,导致火控系统故障预测困难,可靠性低。为了解决这类问题,提出了两种火控系统的机器学习算法智能预测模型:基于粒子群改进支持向量回归机的火控系统性能趋势多步预测模型和基于支持向量分类器的故障状态预测模型,构建故障决策函数,结合横向预测和纵向预测进行智能预测,提高故障预测的可靠性。通过某型坦克火控系统火控计算机电源模块和传感器分系统对两种模型进行了验证。实验结果表明,所提出的火控系统故障预测模型具有较高的准确性和实用性。
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 Comprehensive Fault Prediction Model of Tank Fire Control System Based on Machine Learning
Due to the insufficient fault information of the tank fire control system and the complex fault characteristics, and the fault signal has the characteristics of high dimension, small sample and nonlinearity, the fault prediction of the fire control system is difficult and the reliability is low. In order to solve such problems, two intelligent predictive models for fire control systems for machine learning algorithms are proposed: multi-step prediction model of fire control system performance trend based on particle swarm improved support vector regression machine, and the fault state prediction model based on support vector classifier ,constructs a failure decision function and performs intelligent prediction combined with lateral prediction and longitudinal prediction to improve the reliability of fault prediction. The two models were verified by the power module of the fire control computer and sensor subsystem in a certain type of tank fire control system. The experimental results show that the proposed fire control system fault prediction model has high accuracy and practicability.
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