Prediction of Production Performance in Smart Manufacturing Using Multivariate Adaptive Regression Spline

P. C. Chua, S. K. Moon, Y. Ng, H. Ng
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引用次数: 1

Abstract

With the dynamic arrival of production orders and ever-changing shop-floor conditions within a production system, production scheduling presents a challenge for manufacturing firms to ensure production demands that are met with high productivity and low operating cost. Before a production schedule is generated to process the incoming production orders, the production planning stage must take place. Given the large number of input parameters involved in production planning, it is important to understand the interactions of input parameters between production planning and scheduling. This is to ensure that production planning and scheduling could be determined effectively and efficiently in achieving the best or optimal production performance with minimizing cost. In this study, by utilizing the capabilities of data pervasiveness in smart manufacturing setting, we propose an approach to develop a surrogate model to predict the production performance using the input parameters from a production plan. Based on three categories of input parameters, namely current production system load, machine-based and product-based parameters, the prediction is performed by developing a surrogate model using multivariate adaptive regression spline (MARS). The effectiveness of the proposed MARS model is demonstrated using an industrial case study of a wafer fabrication production through the random sampling of varying numbers of training data set.
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基于多元自适应回归样条的智能制造生产绩效预测
随着生产订单的动态到达和生产系统中不断变化的车间条件,生产调度对制造企业提出了挑战,以确保高生产率和低运营成本满足生产需求。在生成生产计划以处理传入的生产订单之前,必须进行生产计划阶段。考虑到生产计划中涉及的大量输入参数,了解生产计划和调度之间输入参数的相互作用是很重要的。这是为了确保生产计划和调度可以有效和高效地确定,以实现最佳或最优的生产性能,并将成本降至最低。在本研究中,通过利用智能制造环境中数据的普遍性,我们提出了一种方法来开发代理模型,利用生产计划的输入参数来预测生产绩效。基于三类输入参数,即当前生产系统负载、基于机器和基于产品的参数,通过使用多变量自适应回归样条(MARS)开发代理模型进行预测。通过对不同数量的训练数据集的随机抽样,利用晶圆制造生产的工业案例研究证明了所提出的MARS模型的有效性。
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