基于机器学习方法的复杂无线电电子设备可靠性功能评估控制系统

I. Kalinov, A. Kochkarov, V. Antoshina
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引用次数: 3

摘要

我们提出了一种新的应用机器学习方法来预测复杂结构无线电电子系统的状态。提出了一种基于组件状态综合监测系统的无线电电子系统功能数据采集模型,并对其进行了验证。所提出的模型可以适应最广泛的机器学习方法之一,梯度增强,从通用设计站和嵌入式控制系统的历史数据样本,以解决预测整个系统状态的问题。操作经验表明,部件故障极为罕见。因此,根据泊松定律考虑过去闯入元素的失效统计分布,根据威布尔定律首次引入的元素具有不同的系数,基于历史数据对这些系数的预测只是机器学习算法的结果
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Control System for Assessing Reliability Functioning of the Complex Radio Electronic Equipment Using Machine Learning Methods
We propose a novel application of machine learning methods to predict the state of complex structured radio electronic systems. The model for collecting data about the functioning of a radio electronic system based on an integrated monitoring system of its components states is proposed and justified. The proposed model made possible to adapt one of the most widespread methods of machine learning, gradient boosting, on a sample of historical data, from the General Designer stand and embedded control system, to solve the problem of forecasting the state of the whole system. Operating experience showed that component failures are extremely rare. Therefore, the distribution of statistics of failures of the past break-in elements was considered according to Poisson’s law, and the elements introduced for the first time according to Weibull’s law with different coefficients, the prediction of such coefficients based on historic data is just the result of the machine learning algorithm
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