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Implementation of Cyber-Physical Production Systems for Quality Prediction and Operation Control in Metal Casting

机译:实现用于金属铸造质量预测和操作控制的网络物理生产系统

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摘要

The prediction of internal defects of metal casting immediately after the casting process saves unnecessary time and money by reducing the amount of inputs into the next stage, such as the machining process, and enables flexible scheduling. Cyber-physical production systems (CPPS) perfectly fulfill the aforementioned requirements. This study deals with the implementation of CPPS in a real factory to predict the quality of metal casting and operation control. First, a CPPS architecture framework for quality prediction and operation control in metal-casting production was designed. The framework describes collaboration among internet of things (IoT), artificial intelligence, simulations, manufacturing execution systems, and advanced planning and scheduling systems. Subsequently, the implementation of the CPPS in actual plants is described. Temperature is a major factor that affects casting quality, and thus, temperature sensors and IoT communication devices were attached to casting machines. The well-known NoSQL database, HBase and the high-speed processing/analysis tool, Spark, are used for IoT repository and data pre-processing, respectively. Many machine learning algorithms such as decision tree, random forest, artificial neural network, and support vector machine were used for quality prediction and compared with R software. Finally, the operation of the entire system is demonstrated through a CPPS dashboard. In an era in which most CPPS-related studies are conducted on high-level abstract models, this study describes more specific architectural frameworks, use cases, usable software, and analytical methodologies. In addition, this study verifies the usefulness of CPPS by estimating quantitative effects. This is expected to contribute to the proliferation of CPPS in the industry.
机译:通过在铸造过程之后立即预测金属铸造的内部缺陷,可以减少诸如加工过程之类的下一阶段的输入量,从而节省了不必要的时间和金钱,并且可以进行灵活的调度。网络物理生产系统(CPPS)完全满足上述要求。这项研究涉及在实际工厂中实施CPPS,以预测金属铸件的质量和操作控制。首先,设计了用于金属铸造产品质量预测和操作控制的CPPS体系结构框架。该框架描述了物联网(IoT),人工智能,模拟,制造执行系统以及高级计划和调度系统之间的协作。随后,将描述CPPS在实际工厂中的实施。温度是影响铸造质量的主要因素,因此温度传感器和IoT通信设备已连接到铸造机上。众所周知的NoSQL数据库HBase和高速处理/分析工具Spark分别用于物联网存储库和数据预处理。许多机器学习算法(例如决策树,随机森林,人工神经网络和支持向量机)用于质量预测,并与R软件进行比较。最后,通过CPPS仪表板演示了整个系统的操作。在这个时代,大多数与CPPS相关的研究都是基于高层抽象模型进行的,该研究描述了更具体的体系结构框架,用例,可用软件和分析方法。此外,本研究通过估计定量效应验证了CPPS的有效性。预计这将促进CPPS在行业中的扩散。

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