Fire Control System Fault Prediction Method Based on CAO-SVM

Yingshun Li, Na Li, Zhannan Guo, Haiyang Liu
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Abstract

With the development of science and technology, the technology of tank fire control system is also being iteratively updated. At this stage, the fire control system shows the characteristics of higher technical content, more complex structure, more advanced control system, and more difficult fault judgment. Aiming at the problems of small amount of signal data and complex composition collected by artillery control system, a model prediction method based on chaotic mapping improved aquila algorithm optimization support vector machine is proposed. The gray correlation degree analysis is carried out through the collected signal data, the original data parameters are screened, and the attributes with higher gray correlation degree are selected to construct the dataset. The improved aquila algorithm of chaos mapping is used to perform parameter optimization on the penalty factor c and kernel function g of the support vector machine, and after the model training is completed, the failure prediction is performed on the test set. The test shows that the improved prediction model has high prediction accuracy, stable performance, low dependence on the number of sample training sets, and strong advantages.
基于CAO-SVM的火控系统故障预测方法
随着科学技术的发展,坦克火控系统的技术也在不断更新。现阶段,火控系统呈现出技术含量更高、结构更复杂、控制系统更先进、故障判断更困难的特点。针对火炮控制系统采集的信号数据量少、组成复杂的问题,提出了一种基于混沌映射改进aquila算法优化支持向量机的模型预测方法。通过采集到的信号数据进行灰度关联度分析,筛选原始数据参数,选择灰度关联度较高的属性构建数据集。采用改进的混沌映射aquila算法对支持向量机的惩罚因子c和核函数g进行参数优化,并在模型训练完成后对测试集进行故障预测。测试表明,改进后的预测模型预测精度高,性能稳定,对样本训练集数量的依赖性低,具有较强的优势。
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