APPLICATION OF FUZZY HESITATION MODEL IN THE OPTIMISATION OF MECHANICAL PROCESS PARAMETERS

Main Article Content

Xiaoqing Zhou
Zhimin Wan
Ting Wang

Abstract

In recent years, with the rise of Industry 4.0 and intelligent manufacturing, the optimisation of mechanical process parameters has become a hot issue in the industry and academia. Therefore, the application and value of fuzzy hesitation model in the optimisation of mechanical process parameters are discussed in this paper. First, the relevant data are collected, preprocessed and analysed, and then a preliminary model is constructed for prediction. Based on the verification results of the preliminary model, several strategies are proposed to improve and optimise the model. To improve the efficiency and quality of machining, a series of optimisation strategies for practical applications are also proposed. Overall, this study provides an effective method for the optimisation of mechanical process parameters, and lays a solid foundation for future research and application.

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APPLICATION OF FUZZY HESITATION MODEL IN THE OPTIMISATION OF MECHANICAL PROCESS PARAMETERS. (2025). Mechatronic Systems and Control, 53(7). https://doi.org/10.2316/

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