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An automated feature extraction method with application to empirical model development from machining power data

机译:一种自动特征提取方法,应用于加工功率数据的经验模型开发

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Machining shop floor jobs are rarely optimised for minimisation of the energy consumption, as no clear guidelines exist in operating procedures and high production rates and finishing quality are requirements with higher priorities. However, there has been an increased interest recently in more energy-efficient process designs, due to new regulations and increases in energy charges. Response Surface Methodology (RSM) is a popular procedure using empirical models for optimising the energy consumption in cutting operations, but successful deployment requires good understanding of the methods employed and certain steps are time-consuming. In this work, a novel method that automates the feature extraction when applying RSM is presented. Central to the approach is a continuous Hidden Markov model, where the probability distribution of the observations at each state is represented by a mixture of Gaussian distributions. When applied to a case study, the automated extracted material cutting energies lay within 1.12% of measured values and the spindle acceleration energies within 3.33% of their actual values. (C) 2019 The Authors. Published by Elsevier Ltd.
机译:机加工车间的工作很少进行优化以最大程度地降低能耗,因为在操作程序中没有明确的准则,并且高生产率和精加工质量是优先考虑的要求。然而,由于新法规和能源费用的增加,最近人们对更节能的工艺设计越来越感兴趣。响应面方法学(RSM)是使用经验模型来优化切割操作能耗的一种流行过程,但是成功部署需要对所采用的方法有充分的了解,某些步骤非常耗时。在这项工作中,提出了一种新颖的方法,该方法在应用RSM时可以自动进行特征提取。该方法的核心是连续的隐马尔可夫模型,其中每个状态下观测值的概率分布由高斯分布的混合表示。当应用于案例研究时,自动提取的材料切削能量在测量值的1.12%之内,而主轴加速能量在其实际值的3.33%之内。 (C)2019作者。由Elsevier Ltd.发布

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