首页> 外文会议>ASME international manufacturing science and engineering conference >AUDIO-BASED CONDITION MONITORING IN MILLING OF THE WORKPIECE MATERIAL WITH THE HARDNESS VARIATION USING SUPPORT VECTOR MACHINES AND CONVOLUTIONAL NEURAL NETWORKS
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AUDIO-BASED CONDITION MONITORING IN MILLING OF THE WORKPIECE MATERIAL WITH THE HARDNESS VARIATION USING SUPPORT VECTOR MACHINES AND CONVOLUTIONAL NEURAL NETWORKS

机译:基于支持向量机和卷积神经网络的硬度变化对工件材料铣削中基于音频的状态监测

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Machining industry has been evolving towards implementation of automation into the process for higher productivity and efficiency. Although many studies have been conducted in the past to develop intelligent monitoring systems in various application scenarios of machining processes, most of them just focused on cutting tools without considering the influence due to the non-uniform hardness of workpiece material. This study develops a compact, reliable, and cost-effective intelligent Tool Condition Monitoring (TCM) model to detect the cutting tool wear in machining of the workpiece material with hardness variation. The generated audible sound signals during the machining process will be analyzed by state of the art artificial intelligent techniques, Support Vector Machines (SVMs) and Convolutional Neural Networks (CNNs), to predict the tool condition and the hardness variation of the workpiece. A four-level classification model is developed for the system to detect the tool wear condition based on the width of the flank wear land and hardness variation of the workpiece. The study also involves comparative analysis between two employed artificial intelligent techniques to evaluate the performance of models in predicting the tool wear level condition and workpiece hardness variation. The proposed intelligent models have shown a significant prediction accuracy in detecting the tool wear and from the audible sound into the proposed multi-classification wear class in the end-milling process of non-uniform hardened workpiece.
机译:机械加工行业一直在朝着在过程中实施自动化的方向发展,以提高生产率和效率。尽管过去进行了许多研究来开发智能监控系统,以用于各种加工过程的应用场景,但其中大多数只是专注于切削刀具,而没有考虑由于工件材料的硬度不均匀而造成的影响。这项研究开发了一种紧凑,可靠且具有成本效益的智能刀具状态监测(TCM)模型,以检测在加工具有硬度变化的工件材料时切削刀具的磨损。加工过程中产生的声音信号将通过最先进的人工智能技术,支持向量机(SVM)和卷积神经网络(CNN)进行分析,以预测刀具状况和工件的硬度变化。为系统开发了一个四级分类模型,用于基于侧面磨损区域的宽度和工件的硬度变化来检测工具的磨损情况。该研究还涉及两种采用的人工智能技术之间的比较分析,以评估模型在预测刀具磨损程度条件和工件硬度变化方面的性能。所提出的智能模型在检测刀具磨损方面具有显着的预测精度,并且在非均匀淬硬工件的端铣削过程中,从听得见的声音进入所提出的多分类磨损类别。

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