The latest Industrial revolution has helped industries in achieving very high rates of productivity and efficiency. It has introduced data aggregation and cyber-physical systems to optimize planning and scheduling. Although, uncertainty in the environment and the imprecise nature of human operators are not accurately considered for into the decision making process. This leads to delays in consignments and imprecise budget estimations. This widespread practice in the industrial models is flawed and requires rectification. Various other articles have approached to solve this problem through stochastic or fuzzy set model methods. This paper presents a comprehensive method to logically and realistically quantify the non-deterministic uncertainty through probabilistic uncertainty modelling. This method is applicable on virtually all Industrial data sets, as the model is self adjusting and uses epsilon-contamination to cater to limited or incomplete data sets. The results are numerically validated through an Industrial data set in Flanders, Belgium. The data driven results achieved through this robust scheduling method illustrate the improvement in performance.
翻译:最近的工业革命帮助各行业实现了很高的生产率和效率,引进了数据汇总和网络物理系统,以优化规划和时间安排。虽然在决策过程中并没有准确考虑环境的不确定性和人类操作者的不精确性,这导致货物的延误和预算估计不准确。工业模型中的这种普遍做法存在缺陷,需要纠正。其他各种条款通过随机或模糊的模型方法解决这一问题。本文件提供了一个全面的方法,通过概率性不确定性建模,从逻辑上和现实上量化非决定性不确定性。这种方法适用于几乎所有工业数据集,因为模型是自我调整,并且使用环硅电解,以适应有限或不完整的数据集。结果通过比利时佛兰德斯的工业数据集进行数字验证。通过这种强有力的列表方法获得的数据驱动结果说明了绩效的改善。