Show simple item record

contributor authorShao, Chenhui
contributor authorRen, Jie
contributor authorWang, Hui
contributor authorJin, Jionghua (Judy)
contributor authorHu, S. Jack
date accessioned2017-11-25T07:17:35Z
date available2017-11-25T07:17:35Z
date copyright2016/29/9
date issued2017
identifier issn1087-1357
identifier othermanu_139_01_011014.pdf
identifier urihttp://138.201.223.254:8080/yetl1/handle/yetl/4234662
description abstractThe shapes of machined surfaces play a critical role affecting powertrain performance, and therefore, it is necessary to characterize the shapes with high resolution. State-of-the-art approaches for surface shape characterization are mostly data-driven by interpolating and extrapolating the spatial data but its precision is limited by the density of measurements. This paper explores the new opportunity of improving surface shape prediction through considering the similarity of multiple similar manufacturing processes. It is a common scenario when the process of interest lacks sufficient data whereas rich data could be available from other similar-but-not-identical processes. It is reasonable to transfer the insights gained from other relevant processes into the surface shape prediction. This paper develops an engineering-guided multitask learning (EG-MTL) surface model by fusing surface cutting physics in engineering processes and the spatial data from a number of similar-but-not-identical processes. An iterative multitask Gaussian process learning algorithm is developed to learn the model parameters. Compared with the conventional multitask learning, the proposed method has the advantages in incorporating the insights on cutting force variation during machining and is potentially able to improve the prediction performance given limited measurement data. The methodology is demonstrated based on the data from real-world machining processes in an engine plant.
publisherThe American Society of Mechanical Engineers (ASME)
titleImproving Machined Surface Shape Prediction by Integrating Multi-Task Learning With Cutting Force Variation Modeling
typeJournal Paper
journal volume139
journal issue1
journal titleJournal of Manufacturing Science and Engineering
identifier doi10.1115/1.4034592
journal fristpage11014
journal lastpage011014-11
treeJournal of Manufacturing Science and Engineering:;2017:;volume( 139 ):;issue: 001
contenttypeFulltext


Files in this item

Thumbnail

This item appears in the following Collection(s)

Show simple item record