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MERGING SUBJECT MATTER EXPERTISE AND DEEP CONVOLUTIONAL NEURAL NETWORK FOR STATE-BASED ONLINE MACHINE-PART INTERACTION CLASSIFICATION

机译:融合主基在线机器零件交互分类的主题专业知识和深度卷积神经网络

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Machine-part interaction classification is a key capability required by Cyber-Physical Systems (CPS), a pivotal enabler of Smart Manufacturing (SM). While previous relevant studies on the subject have primarily focused on time series classification, change point detection is equally important because it provides temporal information on changes in behavior of the machine. In this work, we address point detection and time series classification for machine-part interactions with a deep Convo-lutional Neural Network (CNN) based framework. The CNN in this framework utilizes a two-stage encoder-classifier structure for efficient feature representation and convenient deployment customization for CPS. Though data-driven, the design and optimization of the framework are Subject Matter Expertise (SME) guided. An SME defined Finite State Machine (FSM) is incorporated into the framework to prohibit intermittent misclassifica-tions. In the case study, we implement the framework to perform machine-part interaction classification on a milling machine, and the performance is evaluated using a testing dataset and deployment simulations. The implementation achieved an average F1-Score of 0.946 across classes on the testing dataset and an average delay of 0.24 seconds on the deployment simulations.
机译:机器零件交互分类是网络物理系统(CPS)所需的关键能力,智能制造的关键推动器(SM)。虽然对该主题的先前相关研究主要集中在时间序列分类上,但是更改点检测同样重要,因为它提供了有关机器行为变化的时间信息。在这项工作中,我们解决了与基于深追溯神经网络(CNN)的框架的机器部分交互的点检测和时间序列分类。该框架中的CNN利用了两阶段编码器 - 分类器结构,用于有效的特征表示以及CPS的方便部署自定义。虽然数据驱动,框架的设计和优化是主题专业知识(中小企业)。中小企业定义的有限状态机(FSM)被纳入框架,以禁止间歇性错误分类。在案例研究中,我们实现了在铣床上执行机器部件交互分类的框架,并且使用测试数据集和部署模拟来评估性能。在测试数据集中,该实现在类上的平均f1分数为0.946,并且在部署模拟上平均延迟0.24秒。

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