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Industry 4.0 based process data analytics platform: A waste-to-energy plant case study

机译:基于工业4.0的过程数据分析平台:垃圾发电厂案例研究

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Industry 4.0 and Industrial Internet of Things (IIoT) technologies are rapidly fueling data and software solutions driven digitalization in many fields notably in industrial automation and manufacturing systems. Among the several benefits offered by these technologies, is the infrastructure for harnessing big-data, machine learning (ML) and cloud computing software tools, for instance in designing advanced data analytics platforms. Although, this is an area of increased interest, the information concerning the implementation of data analytics in the context of Industry 4.0 is scarcely available in scientific literature. Therefore, this work presents a process data analytics platform built around the concept of industry 4.0. The platform utilizes the state-of-the-art IIoT platforms, ML algorithms and big-data software tools. The platform emphasizes the use of ML methods for process data analytics while leveraging big-data processing tools and taking advantage of the currently available industrial grade cloud computing platforms. The industrial applicability of the platform was demonstrated by the development of soft sensors for use in a waste-to-energy (WTE) plant. In the case study, the work studied data-driven soft sensors to predict syngas heating value and hot flue gas temperature. Among the studied data-driven methods, the neural network-based NARX model demonstrated better performance in the prediction of both syngas heating value and flue gas temperature. The modeling results showed that, in cases where process knowledge about the process phenomena at hand is limited, data-driven soft sensors are useful tools for predictive data analytics.
机译:工业4.0和工业物联网(IIoT)技术正在迅速推动由数据和软件解决方案驱动的许多领域中的数字化,尤其是在工业自动化和制造系统中。这些技术提供的众多优势中,有一个基础设施可用于利用大数据,机器学习(ML)和云计算软件工具,例如在设计高级数据分析平台时。尽管这是一个越来越引起人们关注的领域,但是在科学文献中几乎没有关于工业4.0环境下数据分析实施的信息。因此,这项工作提出了一个围绕工业4.0概念构建的过程数据分析平台。该平台利用了最新的IIoT平台,机器学习算法和大数据软件工具。该平台强调使用ML方法进行过程数据分析,同时利用大数据处理工具并利用当前可用的工业级云计算平台。该平台的工业适用性通过开发用于垃圾发电(WTE)工厂的软传感器得以证明。在案例研究中,这项工作研究了数据驱动的软传感器,以预测合成气的热值和热烟气温度。在研究的数据驱动方法中,基于神经网络的NARX模型在预测合成气热值和烟气温度方面表现出更好的性能。建模结果表明,在有关手头过程现象的过程知识有限的情况下,数据驱动的软传感器是用于预测数据分析的有用工具。

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