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PREDICTIVE USAGE MINING FOR SUSTAINABILITY OF COMPLEX SYSTEMS DESIGN

机译:预测性使用挖掘可确保复杂系统设计的可持续性

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摘要

A new perspective of dynamic LCA (life cycle assessment) is proposed with the predictive usage mining for sustainability (PUMS) algorithm. By defining usage patterns as trend, season-ality, and level from a time series of usage information, predictive LCA can be conducted in a real time horizon. Large-scale sensor data of product operation is analyzed in order to mine usage patterns and build a usage model for LCA. The PUMS algorithm consists of handling missing and abnormal values, seasonal period analysis, segmentation analysis, time series analysis, and predictive LCA. A newly developed segmentation algorithm can distinguish low activity periods and help to capture patterns more clearly. Furthermore, a predictive LCA method is formulated using a time series usage model. Finally, generated data is used to do predictive LCA of agricultural machinery as a case study.
机译:提出了一种动态LCA(生命周期评估)的新视角,以及可持续性的预测使用挖掘(PUMS)算法。通过根据使用信息的时间序列将使用模式定义为趋势,季节和级别,可以在实时范围内进行预测性LCA。分析产品操作的大规模传感器数据,以挖掘使用模式并建立LCA的使用模型。 PUMS算法包括处理缺失值和异常值,季节性分析,分段分析,时间序列分析和预测性LCA。新开发的分割算法可以区分低活动时间段,并有助于更清晰地捕获模式。此外,使用时间序列使用模型制定了预测性LCA方法。最后,作为案例研究,使用生成的数据对农业机械进行LCA预测。

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