Title :
Ensemble of data-driven prognostic algorithms for robust prediction of remaining useful life
Author :
Chao Hu ; Youn, Byeng D. ; Pingfeng Wang
Author_Institution :
Dept. of Mech. Eng., Univ. of Maryland, Coll. Park, College Park, MD, USA
Abstract :
The traditional data-driven prognostic approach is to construct multiple candidate algorithms using a training data set, evaluate their respective performance using a testing data set, and select the one with the best performance while discarding all the others. This approach has three shortcomings: (i) the selected standalone algorithm may not be robust, i.e., it may be less accurate when the real data acquired after the deployment differs from the testing data; (ii) it wastes the resources for constructing the algorithms that are discarded in the deployment; (iii) it requires the testing data in addition to the training data, which increases the overall expenses for the algorithm selection. To overcome these drawbacks, this paper proposes an ensemble data-driven prognostic approach which combines multiple member algorithms with a weighted-sum formulation. Three weighting schemes, namely, the accuracy-based weighting, diversity-based weighting and optimization-based weighting, are proposed to determine the weights of member algorithms for data-driven prognostics. The k-fold cross validation (CV) is employed to estimate the prediction error required by the weighting schemes. The results obtained from three case studies suggest that the ensemble approach with any weighting scheme gives more accurate RUL predictions compared to any sole algorithm when member algorithms producing diverse RUL predictions have comparable prediction accuracy and that the optimization-based weighting scheme gives the best overall performance among the three weighting schemes.
Keywords :
fault diagnosis; life testing; optimisation; accuracy-based weighting; algorithm selection; data-driven prognostic algorithm; diversity-based weighting; k-fold cross validation; multiple candidate algorithm; optimization-based weighting; robust prediction; testing data set; training data set; weighted-sum formulation; Accuracy; Algorithm design and analysis; Degradation; Prediction algorithms; Robustness; Testing; Training; K-fold cross validation; RUL prediction; data-driven prognostics; ensemble; weighting schemes;
Conference_Titel :
Prognostics and Health Management (PHM), 2011 IEEE Conference on
Conference_Location :
Montreal, QC
Print_ISBN :
978-1-4244-9828-4
DOI :
10.1109/ICPHM.2011.6024361