摘要

Density forecasting is a subfield of multivariate regression aimed at accurate prediction of full conditional distributions. This article presents methods for improving product quality by deploying density forecast-based failure probability predictors that predict the risk of failure to meet the requirements of qualification tests and specification limits. Algorithms that efficiently deploy failure probability predictors in target optimisation problems and in process monitoring, planning and control operations are provided. In one of the three case applications, density forecast methods decreased production costs more efficiently than the reference method, i.e., point prediction for mean. In two case applications, density forecast methods did not provide additional value. To promote exploitation of density forecasting, the article presents ideas and prototype implementations for integrating density forecast-based failure probability predictors into software applications employed to improve the production efficiency of manufacturing processes.

  • 出版日期2015

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