汽车零件镀膜织构刀AA6061数控钻削人工神经网络模型的建立

Q3 Engineering
Lakshmi Narasimhamu Katta, Thejasree Pasupuleti, Manikandan Natarajan, Narapureddy Siva Rami Reddy, Lakshmi Narayana Somsole
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引用次数: 0

摘要

<div class="section abstract"><div class="htmlview段落">随着制造业的进步对经济发展至关重要,探索和研究先进材料,特别是合金材料,以促进现代技术的有效利用是一个重要的要求。轻质和高强度材料,如铝合金,被广泛建议用于各种需要强度和耐腐蚀性的应用,包括但不限于汽车,船舶和高温应用。因此,有必要检查和评价这些材料,以促进它们在制造部门的有效利用。本文提出了一种应用于涂层织构刀具加工AA6061铝合金的人工神经网络模型。研究的主要目的是优化钻孔工艺,提高材料的可加工性。人工神经网络模型以主轴转速、进给速率和冷却剂类型为输入参数,表面粗糙度、材料去除率和温度为输出参数。选择涂层纹理工具是因为其优于传统钻井工具的性能。纹理表面有助于有效的排屑,减少加工过程中的摩擦和热量产生,而刀具上的涂层提高了其耐磨性并延长了其使用寿命。利用涂层织构刀具数控钻削AA6061的实验数据对人工神经网络模型进行训练和测试。结果表明,该人工神经网络模型可以准确预测不同钻孔条件下加工孔的输出性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of Artificial Neural Network Model for CNC Drilling of AA6061 with Coated Textured Tool for Auto Parts
With the progress of manufacturing industries being critical for economic development, there is a significant requirement to explore and scrutinize advanced materials, particularly alloy materials, to facilitate the efficient utilization of modern technologies. Lightweight and high-strength materials, such as aluminium alloys, are extensively suggested for various applications requiring strength and corrosion resistance, including but not limited to automotive, marine, and high-temperature applications. As a result, there is a significant necessity to examine and evaluate these materials to promote their effective use in the manufacturing sectors. This research paper presents the development of an Artificial Neural Network (ANN) model for Computer Numerical Control (CNC) drilling of AA6061 aluminium alloy with a coated textured tool. The primary aim of the study is to optimize the drilling process and enhance the machinability of the material. The ANN model utilizes spindle speed, feed rate and Coolant type as input parameters, while the surface roughness, Material removal rate and temperature are the output parameters. A coated textured tool is chosen due to its exceptional performance over conventional drilling tools drilling. The textured surface helps in efficient chip evacuation, which reduces friction and heat generation during machining, while the coating on the tool improves its wear resistance and prolongs its lifespan. Experimental data obtained from CNC drilling of AA6061 with the coated textured tool is used to train and test the ANN model. The results demonstrate that the ANN model provides accurate predictions of the output performance of the machined hole under different drilling conditions.
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来源期刊
SAE Technical Papers
SAE Technical Papers Engineering-Industrial and Manufacturing Engineering
CiteScore
1.00
自引率
0.00%
发文量
1487
期刊介绍: SAE Technical Papers are written and peer-reviewed by experts in the automotive, aerospace, and commercial vehicle industries. Browse the more than 102,000 technical papers and journal articles on the latest advances in technical research and applied technical engineering information below.
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