Condition Monitoring of Machine Tool Feed Drives: A Review

Author:

Butler Quade1,Ziada Youssef2,Stephenson David2,Andrew Gadsden S.1

Affiliation:

1. McMaster University Department of Mechanical Engineering, , Hamilton, ON L8S 4L8 , Canada ,

2. Ford Motor Company Global Manufacturing Engineering, , Livonia, MI 48150

Abstract

Abstract The innovations propelling the manufacturing industry towards Industry 4.0 have begun to maneuver into machine tools. Machine tool maintenance primarily concerns the feed drives used for workpiece and tool positioning. Condition monitoring of feed drives is the intermediate step between smart data acquisition and evaluating machine health through diagnostics and prognostics. This review outlines the techniques and methods that recent research presents for feed drive condition monitoring, diagnostics and prognostics. The methods are distinguished between being sensorless and sensor-based, as well as between signal-, model-, and machine learning-based techniques. Close attention is given to the components of feed drives (ball screws, linear guideways, and rotary axes) and the most notable parameters used for monitoring. Commercial and industry solutions to Industry 4.0 condition monitoring are described and detailed. The review is concluded with a brief summary and the observed research gaps.

Funder

Natural Sciences and Engineering Research Council of Canada

Publisher

ASME International

Subject

Industrial and Manufacturing Engineering,Computer Science Applications,Mechanical Engineering,Control and Systems Engineering

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