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State of product detection method applicable to Industry 4.0 manufacturing models with small quantities and great variety: An example with springs

机译:产品检测方法适用于工业4.0制造模型,少量和繁多:具有弹簧的示例

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A major feature of the manufacturing models in Industry 4.0 is smaller quantities and greater variety. In other words, each machine tool will produce multiple types of products, but each type in small numbers. This is just the opposite of the manufacturing models with large quantities and small variety in Industry 3.0. As a result, the conventional means of detecting the health of machines in Industry 3.0 models may not be applicable to Industry 4.0 models. This is because the conventional means involves collecting and analyzing data from numerous products and then using the results to determine the state of products in the future. However, in new manufacturing models, a production process may end before the data can even be collected, let alone the checking of machine health. For this reason, this study proposed a novel concept based on artificial recurrent neural networks to assist in the determination of machine health in Industry 4.0 manufacturing models with small quantities and increased variety. Experiments demonstrated the feasibility of the proposed approach.
机译:工业4.0中制造业模型的主要特点是较小的数量和更大的品种。换句话说,每个机床都会产生多种类型的产品,但每种类型的少数。这与工业3.0的大量和小品种的制造模型相反。结果,检测工业3.0型号机器健康的传统方法可能不适用于工业4.0型号。这是因为传统方式涉及从许多产品中收集和分析数据,然后使用结果来确定未来产品的状态。然而,在新的制造模型中,生产过程可能会在甚至可以收集数据之前结束,更不用说检查机器健康。因此,本研究提出了一种基于人工复发性神经网络的新颖概念,以协助少量和增加各种各样的制造模型的工业4.0制造模型的机器健康。实验表明了所提出的方法的可行性。

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