Most industrial processes in real-world manufacturing applications are characterized by the scalability property, which requires an automated strategy to self-adapt machine learning (ML) software systems to the new conditions. In this paper, we investigate an Electroslag Remelting (ESR) use case process from the Uddeholms AB steel company. The use case involves predicting the minimum pressure value for a vacuum pumping event. Taking into account the long time required to collect new records and efficiently integrate the new machines with the built ML software system. Additionally, to accommodate the changes and satisfy the non-functional requirement of the software system, namely adaptability, we propose an automated and adaptive approach based on a drift handling technique called importance weighting. The aim is to address the problem of adding a new furnace to production and enable the adaptability attribute of the ML software. The overall results demonstrate the improvements in ML software performance achieved by implementing the proposed approach over the classical non-adaptive approach.
翻译:实际世界制造应用中的大多数工业流程的特点是可缩放性,这要求采用自动战略,使机器学习软件系统自动适应新的条件;在本文中,我们调查Uddeholms AB钢铁公司的电渣再熔(ESR)使用案例程序;使用案例涉及对真空泵事件的最低压力值作出预测;考虑到收集新记录和将新机器与已建ML软件系统有效结合所需的时间较长;此外,为了适应软件系统的改变并满足其不起作用的要求,即适应性,我们提议基于称为重要权重的漂移处理技术的自动和适应性办法;目的是解决在生产中添加新的炉子的问题,并使ML软件的适应性属性成为可能;总体结果表明,通过采用拟议的超越经典非适应方法的方法,使ML软件的性能得到改善。