用时间序列模型分析失效趋势

Yu Zhou
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引用次数: 3

摘要

失效趋势分析必须基于观察到的运行故障数据。假设可以将故障数据视为一系列随时间变化的数据。得到一组时间序列。因此,用时间序列模型来检验失效趋势是非常自然的。然后考虑按时间顺序排列的故障数作为一个变量。由于季节和周期的影响,我们发现结构时间序列模型是公共交通车辆故障数据建模的合适模型。本文采用的结构时间序列模型增加了趋势、周期、季节和不规则四个分量。给出了故障数的预测和修正方法。为了说明结构时间序列模型的有效性,将给出一个现实世界的例子。
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Failure trend analysis using time series model
Failure trend analysis has to be based on observed operational failure data. Assume the failure data can be viewed as a series of data over time. And a set of time series will be obtained. So it is perfectly natural to use the time series model to test the failure trend. Then we consider the failure number arranged by time order as a variable. As a result of the effects of seasons and cycles, we found the structural time series model is the appropriate model for modeling the public transport vehicles failure data. The structural time series model used in this paper is added with four components, namely trend, cyclic, seasonal and irregular. The failure number forecasting and correcting are also be given. In order to illustrate the efficiency of the structural time series model, a real-world example will be presented.
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