一种基于车队状态监测数据统计分析的数据驱动预测算法

S. Turrin, Subanatarajan Subbiah, G. Leone, L. Cristaldi
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引用次数: 9

摘要

大量同质产品(以下称为机群)的状态监测数据的可用性促使开发新的数据驱动的预测算法。本文提出了一种直观和创新的数据驱动算法来预测产品的健康状况,从而预测产品的剩余使用寿命(RUL)。该算法基于舰队级知识的提取和利用。通过统计分析车队所有产品的状态监测数据,提取车队特定的使用情况和退化概况。根据健康状况和采样时间的统计分布,提取的知识然后用于预测船队中产品的健康和RUL。本文所描述的算法能够以良好的可信度预测产品的RUL,即使观测窗口长度小于产品的寿命。
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An algorithm for data-driven prognostics based on statistical analysis of condition monitoring data on a fleet level
The availability of condition monitoring data for large sets of homogeneous products (in the following referred as a fleet) motivates the development of new data-driven prognostic algorithms. In this paper, an intuitive and an innovative data-driven algorithm to predict the health and, consequently, the Residual Useful Lifetime (RUL) of a product are proposed. The algorithm is based on the extraction and exploitation of knowledge at a fleet level. The fleet-specific usage and the degradation profile are extracted by statistically analyzing the condition monitoring data of all the products that's belongs to the fleet. The extracted knowledge, in terms of statistical distribution of health condition and sampling time, is then exploited to predict the health and RUL of a product in the fleet. The algorithm described in this paper is able to predict the RUL of a product with a good credibility even for observation window lengths that are smaller compared to the lifetime of the product.
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