Article ID Journal Published Year Pages File Type
1697779 Journal of Manufacturing Systems 2006 14 Pages PDF
Abstract

Because thermally induced errors account for a large percentage of machine tool errors, in-line monitoring of machine thermal stability is a very important issue for part quality. Although system identification (SI) theory has been used in modeling machine tool thermal errors for improving accuracy and robustness, there are several unsolved issues-for example, how to determine the number of thermal sensors that is sufficient for building an SI model, especially when sensor readings are highly correlated; and how to effectively monitor the machine thermal status and predict machine performance when the sensing resource is limited. This paper presents a new concept-in addition to the widely recognized error avoidance and error compensation approaches-of controlling machining thermal effects by monitoring of machine thermal status. Based on an experimental study, an in-line monitoring method based on Latent Variable Modeling (LVM) is proposed to overcome the aforementioned difficulties. The results have shown that the LVM method based in-line monitoring provides a powerful tool for variable selection and is effective in monitoring variations of thermal status when the values of thermal deformation and temperature are highly correlated.

Related Topics
Physical Sciences and Engineering Engineering Control and Systems Engineering