用于刀具状态预测的人工神经网络族的发展

IF 2.8 3区 工程技术 Q2 ENGINEERING, MANUFACTURING Advances in Production Engineering & Management Pub Date : 2020-06-30 DOI:10.14743/apem2020.2.356
O. Spaić, Z. Krivokapic, D. Kramar
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引用次数: 9

摘要

近年来,除回归分析外,人工神经网络(ann)越来越多地用于预测工具的状态。然而,以麻花钻(TD)的切削方式、材料类型和锐化方法以及从锐到钝的钻削长度作为输入参数,轴向钻削力和扭矩作为输出人工神经网络参数训练的仿真并没有达到预期的结果。因此,本文开发了一组人工神经网络(FANN)来预测轴向力和钻井扭矩作为一系列影响因素的函数。FANN的形成分三个阶段进行,在每个阶段,形成的神经网络通过钻削长度直到钻头磨损和一个变量参数进行训练,而其他影响参数的组合取恒定值。并在实验结果点处与回归分析结果进行了比较。结果表明,该方法可以作为一种可靠的工具状态预测方法。©2020 CPE,马里博尔大学。版权所有。
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Development of family of artificial neural networks for the prediction of cutting tool condition
Recently, besides regression analysis, artificial neural networks (ANNs) are increasingly used to predict the state of tools. Nevertheless, simulations trained by cutting modes, material type and the method of sharpening twist drills (TD) and the drilling length from sharp to blunt as input parameters and axial drilling force and torque as output ANN parameters did not achieve the expected results. Therefore, in this paper a family of artificial neural networks (FANN) was developed to predict the axial force and drilling torque as a function of a number of influencing factors. The formation of the FANN took place in three phases, in each phase the neural networks formed were trained by drilling lengths until the drill bit was worn out and by a variable parameter, while the combinations of the other influencing parameters were taken as constant values. The results of the prediction obtained by applying the FANN were compared with the results obtained by regression analysis at the points of experimental results. The comparison confirmed that the FANN can be used as a very reliable method for predicting tool condition. © 2020 CPE, University of Maribor. All rights reserved.
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来源期刊
Advances in Production Engineering & Management
Advances in Production Engineering & Management ENGINEERING, MANUFACTURINGMATERIALS SCIENC-MATERIALS SCIENCE, MULTIDISCIPLINARY
CiteScore
5.90
自引率
22.20%
发文量
19
期刊介绍: Advances in Production Engineering & Management (APEM journal) is an interdisciplinary international academic journal published quarterly. The main goal of the APEM journal is to present original, high quality, theoretical and application-oriented research developments in all areas of production engineering and production management to a broad audience of academics and practitioners. In order to bridge the gap between theory and practice, applications based on advanced theory and case studies are particularly welcome. For theoretical papers, their originality and research contributions are the main factors in the evaluation process. General approaches, formalisms, algorithms or techniques should be illustrated with significant applications that demonstrate their applicability to real-world problems. Please note the APEM journal is not intended especially for studying problems in the finance, economics, business, and bank sectors even though the methodology in the paper is quality/project management oriented. Therefore, the papers should include a substantial level of engineering issues in the field of manufacturing engineering.
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