不同润滑条件下弹性体车削特性优化的软计算方法

IF 2.1 Q2 ENGINEERING, MULTIDISCIPLINARY
Malikasab Bagawan, Suresh T. Dundur, Rajesh Gurani, Raviraj Shetty, Rajesh Nayak, S. V. Udaya Kumar Shetty, Madhukara Nayak, Adithya Hegde
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引用次数: 0

摘要

弹性体是一类广泛应用于各种工业,商业和消费应用的材料,由于其独特的机械性能,包括高弹性,高柔韧性和高弹性。然而,在弹性体的加工中存在许多挑战,如表面光洁度差、热量积累、弹性体降解等。为了克服这些挑战,低温冷却辅助已经被引入作为提高弹性体可加工性的一种手段。提出了一种软计算方法来优化弹性体在不同润滑条件下车削时的表面粗糙度和切削力。对丁腈橡胶(NBR)、聚氨酯橡胶(PU)和氯丁橡胶(CR)三种弹性体进行了研究,并采用低温流体输送系统改进了加工工艺。利用田口L27阵列改变输入参数,建立了反向传播人工神经网络(BPANN)模型来预测切削力和表面粗糙度。分析了各种弹性体在不同冷却条件、切削速度、进给量和切削深度下的切削力和表面粗糙度。结果表明,切削条件的变化对切削力有显著影响,所使用的润滑类型通过改变材料的物理性质来影响切削力。切削力受切削条件影响较大,NBR对切削力的要求高于PU和CR,且在切削速度为55 m/min、进给量为0.11 mm/rev、切削深度为0.25 mm时,NBR的切削力为85.1 N, PU为75.1 N, CR为80.3 N。最后,在LN2润滑条件下,切削力降低了45%,表面粗糙度降低了16.9%。研究结果揭示了弹性体加工过程的影响因素,为优化加工工艺参数,提高加工效率提供了依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Soft computing approach for optimization of turning characteristics of elastomers under different lubrication conditions
Elastomers are the class of materials that are widely used in a variety of industrial, commercial, and consumer applications due to their unique mechanical properties, including high elasticity, high flexibility, and high resilience. However, there are many challenges in machining of elastomers such as poor surface finish, build up of heat, degradation of elastomers, etc. To overcome these challenges, cryogenic cooling assistance has been introduced as a means of improving the machinability of elastomers. This paper presents a soft computing approach for optimizing the surface roughness and cutting force during turning of elastomers under different lubrication conditions. Three types of elastomers, namely Nitrile Rubber (NBR), Polyurethane Rubber (PU), and Neoprene Rubber (CR), are studied, and a cryogenic fluid delivery system is employed to improve the machining process. Taguchi’s L27 array is used to vary the input parameters, and a Back-Propagation Artificial Neural Network (BPANN) model is developed to predict the cutting force and surface roughness. The cutting force and surface roughness are analyzed under different cooling conditions, cutting speeds, feeds, and depths of cut for various elastomers. The results show that changes in cutting conditions significantly affect the cutting force and that the type of lubrication used affects the cutting force by altering the material’s physical properties. Cutting force is significantly influenced by cutting conditions, and NBR requires the highest cutting force compared to PU and CR. Further, at a cutting speed of 55 m/min, a feed of 0.11 mm/rev, and a depth of cut of 0.25 mm, the cutting force for NBR (85.1 N), while for PU (75.1 N) and CR (80.3 N), respectively. Finally, with LN2 lubrication conditions, the Cutting Force decreased by 45% and Surface Roughness decreased by 16.9%. This study provides insights into the factors affecting the elastomer machining process, which can be useful for optimizing the machining process parameters and improving machining efficiency.
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来源期刊
Cogent Engineering
Cogent Engineering ENGINEERING, MULTIDISCIPLINARY-
CiteScore
4.00
自引率
5.30%
发文量
213
审稿时长
13 weeks
期刊介绍: One of the largest, multidisciplinary open access engineering journals of peer-reviewed research, Cogent Engineering, part of the Taylor & Francis Group, covers all areas of engineering and technology, from chemical engineering to computer science, and mechanical to materials engineering. Cogent Engineering encourages interdisciplinary research and also accepts negative results, software article, replication studies and reviews.
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