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Machine learning-based design support system for the prediction of heterogeneous machine parameters in industry 4.0

机译:基于机器学习的设计支持系统,用于预测工业4.0中的异构机器参数

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摘要

In the engineering practice, it frequently occurs that designers, final or intermediate users have to roughly estimate some basic performance or specification data on the basis of input data available at the moment, which can be time-consuming. There is the need for a tool that will fill the missing gap in the optimization problems in engineering design processes, by making use of the advances in the artificial intelligence field. This paper aims to fill this gap by introducing an innovative Design Support System (DesSS), originated from the Decision Support System, for the prediction and estimation of machine specification data such as machine geometry and machine design on the basis of heterogeneous input parameters. As the main core of the developed DesSS, we introduced different machine learning (ML) approaches based on Decision/Regression Tree, k-Nearest Neighbors, and Neighborhood Component Features Selection. Experimental results obtained on a real use case and using two different real datasets demonstrated the reliability and the effectiveness of the proposed approach. The innovative machine learning-based DesSS meant for supporting the designing choice, can bring various benefits such as the easier decision-making, conservation of the company's knowledge, savings in man-hours, higher computational speed and accuracy. (C) 2019 Elsevier Ltd. All rights reserved.
机译:在工程实践中,经常发生这样的情况:设计人员,最终用户或中级用户必须根据当前可用的输入数据来粗略估计一些基本性能或规格数据,这可能很耗时。需要一种通过利用人工智能领域的进步来填补工程设计过程中优化问题中缺失的空白的工具。本文旨在通过引入创新的设计支持系统(DesSS)来填补这一空白,该系统源于决策支持系统,用于基于异构输入参数来预测和估算机器规格数据,例如机器几何和机器设计。作为已开发的DesSS的主要核心,我们基于决策/回归树,k最近邻和邻域组件特征选择引入了不同的机器学习(ML)方法。在实际用例上并使用两个不同的真实数据集获得的实验结果证明了该方法的可靠性和有效性。基于机器学习的创新DesSS旨在支持设计选择,可带来各种好处,例如更轻松的决策,保护公司知识,节省工时,更高的计算速度和准确性。 (C)2019 Elsevier Ltd.保留所有权利。

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