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Application of soft computing techniques in machining performance prediction and optimization: a literature review

机译:软计算技术在加工性能预测和优化中的应用:文献综述

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摘要

Machining is one of the most important and widely used manufacturing processes. Due to complexity and uncertainty of the machining processes, of late, soft computing techniques are being preferred to physics-based models for predicting the performance of the machining processes and optimizing them. Major soft computing tools applied for this purpose are neural networks, fuzzy sets, genetic algorithms, simulated annealing, ant colony optimization, and particle swarm optimization. The present paper reviews the application of these tools to four machining processes—turning, milling, drilling, and grinding. The paper highlights the progress made in this area and discusses the issues that need to be addressed. Keywords Machining - Optimization - Process models - Soft computing
机译:机加工是最重要且使用最广泛的制造工艺之一。由于加工过程的复杂性和不确定性,近来,软计算技术比基于物理的模型更可取,以预测加工过程的性能并对其进行优化。用于此目的的主要软计算工具是神经网络,模糊集,遗传算法,模拟退火,蚁群优化和粒子群优化。本文回顾了这些工具在四个加工过程中的应用-车削,铣削,钻孔和磨削。本文重点介绍了该领域取得的进展,并讨论了需要解决的问题。关键词机械加工-优化-过程模型-软计算

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