Rashid Ali Laghari, Vahid Pourmostaghimi, Asif Ali Laghari, Mohammad Reza Chalak Qazani, Ahmed A. D. Sarhan
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To improve the machining process quality and to avoid unnecessary experiments in a cost-effective manner, this article aims to develop an artificial intelligence model, using the genetic programming (GP) method to predict the cutting force, surface roughness, and tool life during the machining process of SiCp/Al at different cutting parameters including cutting speed, feed rate, and depth of cut. The developed genetic programming-based prediction model is designed and developed using MATLAB software. Meanwhile, the GP parameters including mean square error, root means square error, normalized mean square error, mean error, variation of error, correlation coefficient, and R-square are used for the validating of the proposed model. The GP model results are compared with our previous response surface methodology (RSM) model results that were employed to estimate the machining characteristics of the SiC particle-reinforced metal matrix composites (45% SiCp) with different cutting parameters. The GP results prove the higher efficiency with the prediction of the cutting force, surface roughness, and tool life, 43.07%, 37.82%, and 115.64%, respectively, compared with the previous RSM method.</p>","PeriodicalId":8109,"journal":{"name":"Arabian Journal for Science and Engineering","volume":"43 1","pages":""},"PeriodicalIF":2.9000,"publicationDate":"2024-07-27","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Genetic Modeling for Enhancing Machining Performance of High-Volume Fraction 45% SiCp/Al Particle Reinforcement Metal Matrix Composite\",\"authors\":\"Rashid Ali Laghari, Vahid Pourmostaghimi, Asif Ali Laghari, Mohammad Reza Chalak Qazani, Ahmed A. D. 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引用次数: 0
摘要
近几十年来,金属基复合材料(MMC)在航空航天、汽车、发动机气缸和其他领域的广泛应用中获得了极大认可。金属基复合材料具有重量轻、耐腐蚀性强、刚度和强度高等优异性能。然而,它们被归类为难切削材料,加工这些材料仍是一项具有挑战性的任务。为了以经济有效的方式提高加工工艺质量并避免不必要的实验,本文旨在利用遗传编程(GP)方法开发一种人工智能模型,以预测在不同切削参数(包括切削速度、进给量和切削深度)下加工 SiCp/Al 过程中的切削力、表面粗糙度和刀具寿命。使用 MATLAB 软件设计并开发了基于遗传编程的预测模型。同时,GP 参数包括均方误差、均方根误差、归一化均方误差、平均误差、误差变化、相关系数和 R 方,用于验证所提出的模型。GP 模型结果与我们之前采用的响应面方法 (RSM) 模型结果进行了比较,后者用于估算不同切削参数下 SiC 颗粒增强金属基复合材料(45% SiCp)的加工特性。GP 结果表明,与之前的 RSM 方法相比,对切削力、表面粗糙度和刀具寿命的预测效率更高,分别为 43.07%、37.82% 和 115.64%。
Genetic Modeling for Enhancing Machining Performance of High-Volume Fraction 45% SiCp/Al Particle Reinforcement Metal Matrix Composite
Metal matrix composites (MMCs) have gained great recognition in recent decades in a wide range of applications, including aerospace, automobiles, engine cylinders, and other sectors. MMCs possess excellent properties including being light in weight, high corrosion resistance, stiffness, and strength. However, they are categorized as difficult-to-cut materials where machining of these materials remains a challenging task. To improve the machining process quality and to avoid unnecessary experiments in a cost-effective manner, this article aims to develop an artificial intelligence model, using the genetic programming (GP) method to predict the cutting force, surface roughness, and tool life during the machining process of SiCp/Al at different cutting parameters including cutting speed, feed rate, and depth of cut. The developed genetic programming-based prediction model is designed and developed using MATLAB software. Meanwhile, the GP parameters including mean square error, root means square error, normalized mean square error, mean error, variation of error, correlation coefficient, and R-square are used for the validating of the proposed model. The GP model results are compared with our previous response surface methodology (RSM) model results that were employed to estimate the machining characteristics of the SiC particle-reinforced metal matrix composites (45% SiCp) with different cutting parameters. The GP results prove the higher efficiency with the prediction of the cutting force, surface roughness, and tool life, 43.07%, 37.82%, and 115.64%, respectively, compared with the previous RSM method.
期刊介绍:
King Fahd University of Petroleum & Minerals (KFUPM) partnered with Springer to publish the Arabian Journal for Science and Engineering (AJSE).
AJSE, which has been published by KFUPM since 1975, is a recognized national, regional and international journal that provides a great opportunity for the dissemination of research advances from the Kingdom of Saudi Arabia, MENA and the world.