Publication | Open Access
Minimising the machining energy consumption of a machine tool by sequencing the features of a part
105
Citations
39
References
2017
Year
Search OptimizationEngineeringIndustrial EngineeringEnergy EfficiencyMechanical EngineeringSmart ManufacturingOperations ResearchMachine ToolSystems EngineeringProcess OptimizationLinear OptimizationEnergy PriceMachining CentreTool WearComputer EngineeringIndustrial DesignMaterial MachiningMechanic Manufacturing SystemProduction EngineeringMachining Energy Consumption
Increasing energy price and emission reduction requirements are new challenges faced by modern manufacturers. A considerable amount of their energy consumption is attributed to the machining energy consumption of machine tools (MTE), including cutting and non-cutting energy consumption (CE and NCE). The value of MTE is affected by the processing sequence of the features within a specific part because both the cutting and non-cutting plans vary based on different feature sequences. This article aims to understand and characterise the MTE while machining a part. A CE model is developed to bridge the knowledge gap, and two sub-models for specific energy consumption and actual cutting volume are developed. Then, a single objective optimisation problem, minimising the MTE, is introduced. Two optimisation approaches, Depth-First Search (DFS) and Genetic Algorithm (GA), are employed to generate the optimal processing sequence. A case study is conducted, where five parts with 11–15 features are processed on a machining centre. By comparing the experiment results of the two algorithms, GA is recommended for the MTE model. The accuracy of our model achieved 96.25%. 14.13% and 14.00% MTE can be saved using DFS and GA, respectively. Moreover, the case study demonstrated a 20.69% machining time reduction.
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