Predicting electrical power consumption of end milling using a virtual machining energy toolkit (V_MET)

Understanding electrical energy consumption of machines and processes is of increasing importance to (i) minimise costs and environmental impact of production activities and (ii) provide an additional information stream to inform condition monitoring systems (i.e. digital twins) about a machine’s st...

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Veröffentlicht in:Computers in industry 2023-09, Vol.150, p.103943, Article 103943
Hauptverfasser: Pantazis, Dimitrios, Goodall, Paul, Pease, Sarogini Grace, Conway, Paul, West, Andrew
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Sprache:eng
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Zusammenfassung:Understanding electrical energy consumption of machines and processes is of increasing importance to (i) minimise costs and environmental impact of production activities and (ii) provide an additional information stream to inform condition monitoring systems (i.e. digital twins) about a machine’s status and health. The research outlined in this paper develops a Virtual Machining Energy Toolkit (V_MET) to predict the electrical power consumption of a Computer Numeric Control (CNC) milling machine cutting a particular part program from preparatory codes (i.e. G code). In this way the evaluation of the energy impact of manufacturing part programs prior to implementation and real-time monitoring of the process can become a routine activity at part of a total manufacturing system optimisation. The novelty of this work lies in the inclusion of a virtual CNC process model to determine cutting geometry (i.e. width and depth of cut) to enable the prediction of relatively complex part program geometry. V_MET consists of three components: (i) the NC interpreter to extract key parameters (e.g. spindle speed, feed rate, tool path) from G-code instructions, (ii) a virtual CNC process model to determine instantaneous cutting geometry (i.e. width and depth of cut) and the material removal from the resulting machining by simulating the motion of the tool path to predict the interaction between the tool tip and workpiece and (iii) an energy model to predict the electrical power consumption for a given set of conditions, developed using regression analysis of data collected under real manufacturing conditions. Validation of V_MET has been conducted by physical machining of different product features to evaluate the validity over a range of different cutting parameters, NC operations (i.e. linear, clockwise interpolations) and repasses over previously cut regions. Overall good accuracy has been observed for the predicted energy requirements as a function of the cutting regimes, with 4.3% error in total energy and Mean Average Percentage Error (MAPE) of 5.6% when compared with measurements taken during physical cutting trials. •Tool to predict electrical power consumption of CNC operations.•Models for material cutting, air-cutting and spindle acceleration outlined.•G-Code and unprocessed geometry model used as inputs.•Validation performed using 5 unique geometries.•95.7% accuracy in total energy and Mean Average Percentage Error (MAPE) of 5.6%.
ISSN:0166-3615
1872-6194
DOI:10.1016/j.compind.2023.103943