Exploring New Parameters to Advance Surface Roughness Prediction in Grinding Processes for the Enhancement of Automated Machining

IF 4.7 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC ACS Applied Electronic Materials Pub Date : 2024-02-14 DOI:10.3390/jmmp8010041
M. Hadad, Samareh Attarsharghi, Mohsen Dehghanpour Abyaneh, Parviz Narimani, Javad Makarian, Alireza Saberi, Amir Alinaghizadeh
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Abstract

Extensive research in smart manufacturing and industrial grinding has targeted the enhancement of surface roughness for diverse materials including Inconel alloy. Recent studies have concentrated on the development of neural networks, as a subcategory of machine learning techniques, to predict non-linear roughness behavior in relation to various parameters. Nonetheless, this study introduces a novel set of parameters that have previously been unexplored, contributing to the advancement of surface roughness prediction for the grinding of Inconel 738 superalloy considering the effects of dressing and grinding parameters. Hence, the current study encompasses the utilization of a deep artificial neural network to forecast roughness. This implementation leverages an extensive dataset generated in a recent experimental study by the authors. The dataset comprises a multitude of process parameters across diverse conditions, including dressing techniques such as four-edge and single-edge diamond dresser, alongside cooling approaches like minimum quantity lubrication and conventional wet techniques. To evaluate a robust algorithm, a method is devised that involves different networks utilizing various activation functions and neuron sizes to distinguish and select the best architecture for this study. To gauge the accuracy of the methods, mean squared error and absolute accuracy metrics are applied, yielding predictions that fall within acceptable ranges for real-world industrial roughness standards. The model developed in this work has the potential to be integrated with the Industrial Internet of Things to further enhance automated machining.
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探索新参数,推进磨削工艺中的表面粗糙度预测,提高自动化加工水平
智能制造和工业磨削领域的广泛研究以提高包括铬镍铁合金在内的各种材料的表面粗糙度为目标。最近的研究主要集中在神经网络的开发上,作为机器学习技术的一个子类别,神经网络可以预测与各种参数相关的非线性粗糙度行为。然而,本研究引入了一组以前未曾探索过的新参数,考虑到修整和磨削参数的影响,有助于推进 Inconel 738 超合金磨削的表面粗糙度预测。因此,当前的研究包括利用深度人工神经网络预测粗糙度。该方法利用了作者最近一项实验研究中生成的大量数据集。该数据集包含不同条件下的多种工艺参数,包括四边和单边金刚石修整器等修整技术,以及最小量润滑和传统湿法等冷却方法。为了评估鲁棒性算法,我们设计了一种方法,利用各种激活函数和神经元大小的不同网络来区分和选择本研究的最佳架构。为了衡量方法的准确性,采用了均方误差和绝对准确度指标,得出的预测结果在实际工业粗糙度标准的可接受范围内。这项工作中开发的模型有可能与工业物联网相结合,进一步提高自动化加工的水平。
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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
期刊介绍: ACS Applied Electronic Materials is an interdisciplinary journal publishing original research covering all aspects of electronic materials. The journal is devoted to reports of new and original experimental and theoretical research of an applied nature that integrate knowledge in the areas of materials science, engineering, optics, physics, and chemistry into important applications of electronic materials. Sample research topics that span the journal's scope are inorganic, organic, ionic and polymeric materials with properties that include conducting, semiconducting, superconducting, insulating, dielectric, magnetic, optoelectronic, piezoelectric, ferroelectric and thermoelectric. Indexed/​Abstracted: Web of Science SCIE Scopus CAS INSPEC Portico
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