Covariance matrix adapted grey wolf optimizer tuned eXtreme gradient boost for bi-directional modelling of direct metal deposition process

作者:

Highlights:

• Applies ML techniques for both forward and backward modelling of a DMD process.

• Leverages XGBoost first time in this field for building a regressor for prediction.

• Investigates hyperparameter tuning for improving XGBoost models using meta-heuristic optimizers.

• Introduces a novel covariance matrix adapted grey wolf optimization (cmaGWO) algorithm.

• Validates cmaGWO by exhaustive benchmarking and applies successfully in prediction.

摘要

•Applies ML techniques for both forward and backward modelling of a DMD process.•Leverages XGBoost first time in this field for building a regressor for prediction.•Investigates hyperparameter tuning for improving XGBoost models using meta-heuristic optimizers.•Introduces a novel covariance matrix adapted grey wolf optimization (cmaGWO) algorithm.•Validates cmaGWO by exhaustive benchmarking and applies successfully in prediction.

论文关键词:Additive manufacturing,Direct metal deposition,Extreme gradient boost,Grey wolf optimization,Covariance matrix adaptation,Predictive system

论文评审过程:Received 18 June 2021, Revised 30 January 2022, Accepted 22 March 2022, Available online 4 April 2022, Version of Record 13 April 2022.

论文官网地址:https://doi.org/10.1016/j.eswa.2022.116971