» Articles » PMID: 39959775

Sustainable Machining of Inconel 718 Using Minimum Quantity Lubrication: Artificial Intelligence-based Process Modelling

Overview
Journal Heliyon
Specialty Social Sciences
Date 2025 Feb 17
PMID 39959775
Authors
Affiliations
Soon will be listed here.
Abstract

Governments and industries are developing aggressive policies to reduce carbon emissions and shift from fossil fuels to renewable energy. On the other hand, industries struggle to reduce energy consumption and depend on production lot sizes to control energy requirements. In this regard, energy-efficient processing through CNC machine tools can potentially influence energy demand and requires energy-aware power consumption strategies for machining processes. For manufacturing a single product, predicting energy demand can be decisive in determining parametric control and other factors. Previously analytical models have been largely used to model machining requirements and energy demand. However, these models largely depend on parameterization and do not facilitate the integration of external sub-systems. Therefore, in this paper, an artificial intelligence-based power reduction strategy is developed and implemented on single material (Inconel 718), four control parameters (cutting speed, feed rate, depth of cut and flow rate) and two sub-systems (minimum quantity lubrication (MQL) and nanofluids-based minimum quantity lubrication (NF-MQL)). The paper employs four machine learning algorithms,' K-Nearest Neighbor', 'Gaussian Regression', 'Decision Tree', and 'Logistic Regression', to evaluate their functionality in predicting power consumption (Pc) of CNC machining systems using a real experimental data set. As per evaluation based on five performance metrics (, , , , and ), 'Decision Tree' has achieved the most accurate power consumption predictions. The comparative results highlight 'Decision Tree' as the most better predictor with the optimal max_depth of 2 showing Pc MQL R of 0.915 and Pc NF-MQL R of 0.931.

References
1.
Mughal K, Mughal M, Farooq M, Saleem M, Haber Guerra R . Helical Milling of CFRP/Ti6Al4V Stacks Using Nano Fluid Based Minimum Quantity Lubrication (NF-MQL): Investigations on Process Performance and Hole Integrity. Materials (Basel). 2023; 16(2). PMC: 9866190. DOI: 10.3390/ma16020566. View

2.
Farooq M, Anwar S, Bhatti H, Kumar M, Ali M, Ammarullah M . Electric Discharge Machining of Ti6Al4V ELI in Biomedical Industry: Parametric Analysis of Surface Functionalization and Tribological Characterization. Materials (Basel). 2023; 16(12). PMC: 10301990. DOI: 10.3390/ma16124458. View

3.
Sana M, Farooq M, Anwar S, Haber R . Predictive modelling framework on the basis of artificial neural network: A case of nano-powder mixed electric discharge machining. Heliyon. 2023; 9(12):e22508. PMC: 10716511. DOI: 10.1016/j.heliyon.2023.e22508. View