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A comparative study on data-driven prognostic approaches using fleet knowledge

机译:利用车队知识进行数据驱动的预后方法的比较研究

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Recently, Prognostics and Heath Management techniques have been deeply investigated with the aim to reduce life-cycle cost of products and systems. The increasing availability of condition monitoring data in substantial quantities for multitudes of homogeneous products and the need for generic algorithms that are applicable to complex systems motivates the development of new data-driven prognostic approaches. In this paper, two data-driven algorithms, one based on a statistical approach and another based on Neural Network, are discussed and tested for an application case. The analysis of the results has shown that both the considered approaches are characterized by reliable prediction performances on Remaining Useful Life calculation, thus resulting as potential tools for the application of a Condition-Based Maintenance strategy.
机译:最近,为了降低产品和系统的生命周期成本,已经对Prognostics和Heath Management技术进行了深入研究。对于大量同类产品而言,大量状态监视数据的可用性不断提高,以及对适用于复杂系统的通用算法的需求,推动了新的数据驱动的预测方法的发展。本文讨论了两种数据驱动算法,一种基于统计方法,另一种基于神经网络,并针对一个应用案例进行了测试。对结果的分析表明,两种考虑的方法都具有在“剩余使用寿命”计算上可靠的预测性能,从而成为了基于条件的维护策略应用的潜在工具。

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