基于人工智能方法的模具钢机器人抛光工艺参数优化

IF 1.9 3区 工程技术 Q3 ENGINEERING, MANUFACTURING
Ri Pan, Xiaofang Cheng, Yinhui Xie, Jun Li, Weilong Huang
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引用次数: 0

摘要

为了实现机器人抛光后工件表面的定量控制,提高抛光效率,研究了一种涉及人工智能算法的两步加工优化方法。首先,基于 XGBoost 算法,提出了取决于关键参数的抛光工件表面预测模型,并通过实验验证了模型的准确性。之后,利用上述模型定量评估了各参数对粗糙度的影响。随后,根据各参数对粗糙度的影响,将粗糙度预测模型与 NSGA II-TOPSIS 算法相结合,提出了以粗糙度为导向的加工参数优化目标。为了验证所提出的加工优化方法,对模具钢样品进行了抛光实验。实验结果表明,预测粗糙度与实验粗糙度之间的最大绝对误差为 0.035 μm,最大相对误差小于 9%。同时,当优化目标设定为最小值时。在抛光路径长度不变的情况下,进给速度从 0.25 mm/s 提高到 0.37 mm/s,效率提高到 48%。NSGA II-TOPSIS 算法可实现机器人抛光后模具钢表面粗糙度的定量控制,提高抛光效率,并为合理选择加工参数提供依据,具有一定的实用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of robotic polishing process parameters for mold steel based on artificial intelligence method
Aimed to achieve quantitative control of workpiece surface after robotic polishing and improve polishing efficiency, a two-step processing optimization method involves artificial intelligence algorithms is investigated. Firstly, based on XGBoost algorithm, a prediction model for polished workpiece surface depending on key parameters is proposed, and the accuracy of the model is verified by experiments. After that, by using the above model, the influence of each parameter on the roughness was evaluated quantitatively. Subsequently, target roughness-driven optimization of processing parameters was presented by combining the roughness prediction model with NSGA II-TOPSIS algorithm based on the influence of each parameter on the roughness. To verify the proposed processing optimization method, polishing experiments of mold steel samples were conducted. The experimental results show that the maximum absolute error between the predicted and experimental roughness is 0.035 μm, and the maximum relative error is <9%. At the same time, when the minimum is set as the optimization objective. With the same length of polishing path, the feed rate is increased from 0.25 mm/s to 0.37 mm/s, and the efficiency is improved to 48%. The NSGA II-TOPSIS algorithm can achieve quantitative control of mold steel surface roughness after robotic polishing to improve polishing efficiency, and provide a basis for reasonable selection of processing parameters, which have certain practical value.
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来源期刊
CiteScore
5.10
自引率
30.80%
发文量
167
审稿时长
5.1 months
期刊介绍: Manufacturing industries throughout the world are changing very rapidly. New concepts and methods are being developed and exploited to enable efficient and effective manufacturing. Existing manufacturing processes are being improved to meet the requirements of lean and agile manufacturing. The aim of the Journal of Engineering Manufacture is to provide a focus for these developments in engineering manufacture by publishing original papers and review papers covering technological and scientific research, developments and management implementation in manufacturing. This journal is also peer reviewed. Contributions are welcomed in the broad areas of manufacturing processes, manufacturing technology and factory automation, digital manufacturing, design and manufacturing systems including management relevant to engineering manufacture. Of particular interest at the present time would be papers concerned with digital manufacturing, metrology enabled manufacturing, smart factory, additive manufacturing and composites as well as specialist manufacturing fields like nanotechnology, sustainable & clean manufacturing and bio-manufacturing. Articles may be Research Papers, Reviews, Technical Notes, or Short Communications.
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