基于机器学习的设备故障预测分析方法

数据准备(Data preparation数据处理(Mergingdata sources——特征工程(Featureengineering:lagfeature,static feature——建模(Modeling:Bin-class, regression,multi-class)——训练、仿真(Training,Simulation——决策(Decision

++Binaryclassificationfor predictivemaintenance:to predict theprobabilitythatanequipmentwill failwithin a futuretime period.

++Regressionforpredictivemaintenance:tocompute theremaining

useful life(RUL) ofanasset

++Multi-classclassificationforpredictivemaintenance:to assignanasset to one of themultiplepossibleperiodsof timetogivearangeoftime to failureforeach asset,and toidentifythe likelihoodoffailureina futureperiod due tooneofthemultiplerootcauses.