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Genetic Optimization for the Design of a Machine Tool Slide Table for Reduced Energy Consumption

Matthew J. Triebe, Fu Zhao, John W. Sutherland

2021Journal of Manufacturing Science and Engineering26 citationsDOI

Abstract

Abstract Reducing the energy consumption of machine tools is important from a sustainable manufacturing perspective. Much of a machine tool’s environmental impact comes from the energy it consumes during its use phase. To move elements of a machine tool requires energy, and if the mass of those elements can be reduced, then the required energy would be reduced. Therefore, this paper proposes a genetic algorithm to design lightweight machine tools to reduce their energy consumption. This is specifically applied to optimize the structure of a machine tool slide table, which moves throughout the use of the machine tool, with the goal of reducing its mass without sacrificing its stiffness. The table is envisioned as a sandwich panel, and the proposed genetic algorithm optimizes the core of the sandwich structure while considering both mass and stiffness. A finite element model is used to assess the strength of the proposed designs. Finite element results indicate that the strength of the lightweight tables is comparable with a traditional table design.

Topics & Concepts

Table (database)Machine toolFinite element methodGenetic algorithmEnergy consumptionComputer scienceStiffnessEnergy (signal processing)Mechanical engineeringEngineeringData miningStructural engineeringMachine learningMathematicsStatisticsElectrical engineeringEnergy Efficiency and ManagementManufacturing Process and OptimizationBuilding Energy and Comfort Optimization
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