Continuously operated (bio-)chemical processes increasingly suffer from external disturbances, such as feed fluctuations or changes in market conditions. Product quality often hinges on control of rarely measured concentrations, which are expensive to measure. Semi-supervised regression is a possible building block and method from machine learning to construct soft-sensors for such infrequently measured states. Using two case studies, i.e., the Williams-Otto process and a bioethanol production process, semi-supervised regression is compared against standard regression to evaluate its merits and its possible scope of application for process control in the (bio-)chemical industry.
翻译:连续操作(生物)化学过程日益受到外部干扰,如饲料波动或市场条件变化等,产品质量往往取决于对很少测量的浓度的控制,而这种浓度的测量费用昂贵。半监督回归是一种可能的构件和方法,从机器学习到为这种不经常测量的状态建造软传感器。利用两个案例研究,即威廉姆斯-奥托工艺和生物乙醇生产工艺,将半监督回归与标准回归进行比较,以评估其优点及其在(生物)化学工业中应用过程控制的可能性范围。