Classification of Contact Forces in Human-Robot Collaborative Manufacturing Environments

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TitreClassification of Contact Forces in Human-Robot Collaborative Manufacturing Environments
Type de publicationJournal Article
Year of Publication2018
AuteursZhao R, Ratchev S, Drouot A
JournalSAE INTERNATIONAL JOURNAL OF MATERIALS AND MANUFACTURING
Volume11
Pagination5-10
Date PublishedMAR
Type of ArticleArticle
ISSN1946-3979
Mots-clésContact force classification, Human-robot collaborative manufacturing, Machine learning
Résumé

This paper presents a machine learning application of the force/torque sensor in a human-robot collaborative manufacturing scenario. The purpose is to simplify the programming for physical interactions between the human operators and industrial robots in a hybrid manufacturing cell which combines several robotic applications, such as parts manipulation, assembly, sealing and painting, etc. A multiclass classifier using Light Gradient Boosting Machine (LightGBM) is first introduced in a robotic application for discriminating five different contact states w.r.t. the force/torque data. A systematic approach to train machine-learning based classifiers is presented, thus opens a door for enabling LightGBM with robotic data process. The total task time is reduced largely because force transitions can be detected on-the-fly. Experiments on an ABB force sensor and an industrial robot demonstrate the feasibility of the proposed method.

DOI10.4271/05-11-01-0001