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Hybrid virtual metering points - a low-cost, near real-time energy and resource flow monitoring approach for production machines without PLC data connection

机译:混合虚拟计量点 - 低成本,近实时能源和资源流量监控生产机器,无需PLC数据连接

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Transparent energy flows within a factory are the prerequisite for energetic improvements of the involved production machines. With the ongoing digitalization of industrial production, innovative ways of creating energy transparency on the shop floor are emerging. Virtual energy metering points predict the power consumption of a regarded entity and can therefore enable a cost-effective increase in energy transparency on machine level. However, many machines, especially in small and medium-sized enterprises (SMEs), have no external data connection, which prevents the use of data-based energy prediction models. In this paper, a near real-time deployable approach to predict the current energy consumption of production machines without a programmable logic controller (PLC) data connection is presented. By using a Raspberry Pi as low-cost edge analytics device, its integrated camera films the optical signals from light-emitting diodes (LEDs) of different PLC modules, which display the switching state signals of various machine sub-units. In a next step, the filmed PLC information is translated into state signals, which are correlated with temporarily measured electric energy data of the production machine as well as its principal sub-units. After an automated model training and hyperparameter optimization process, the empirical black box model is deployed in a near real-time environment on the Raspberry Pi. Thus, a hybrid virtual energy and resource flow metering point of the production machine as well as its sub-units is generated. In addition, challenges like model training for predicting different production processes as well as the necessary data set size for VMP model generation are addressed. The approach is tested and validated for a metal cutting machine tool and a cleaning machine of the ETA Research Factory at the Technical University of Darmstadt.
机译:工厂内的透明能量流动是所涉及生产机器的能量改进的先决条件。随着工业生产的正在进行的数字化,创造在车间的能源透明度的创新方式正在出现。虚拟能量计量点预测所经历的实体的功耗,因此可以实现机器电平的能量透明度的成本有效地增加。然而,许多机器,特别是在中小型企业(中小企业),没有外部数据连接,这可以防止使用基于数据的能量预测模型。在本文中,提出了一种近实时可部署方法来预测没有可编程逻辑控制器(PLC)数据连接的生产机器的当前能量消耗。通过使用覆盆子PI作为低成本边缘分析装置,其集成的相机胶片来自不同PLC模块的发光二极管(LED)的光信号,其显示各种机器子单元的开关状态信号。在下一步骤中,拍摄的PLC信息被翻译成状态信号,其与生产机器的临时测量的电能数据以及其主要子单元相关。在自动模型培训和超级计量过程之后,经验黑匣子型号部署在覆盆子PI的近实时环境中。因此,产生生产机器的混合虚拟能量和资源流量计量点以及其子单元。此外,解决了用于预测不同生产过程的模型培训等挑战以及VMP模型生成的必要数据集大小。该方法是测试和验证的金属切割机床和Darmstadt技术大学ETA研究工厂的清洁机。

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