Rubio-Loyola Javier, Paul-Fils Wolph Ronald Shwagger
Centre for Research and Advanced Studies (Cinvestav), Ciudad Victoria 87130, Mexico.
Sensors (Basel). 2022 May 23;22(10):3947. doi: 10.3390/s22103947.
Industry 4.0 constitutes a major application domain for sensor data analytics. Industrial furnaces (IFs) are complex machines made with special thermodynamic materials and technologies used in industrial production applications that require special heat treatment cycles. One of the most critical issues while operating IFs is the emission of black carbon (EoBC), which is due to a large number of factors such as the quality and amount of fuel, furnace efficiency, technology used for the process, operation practices, type of loads and other aspects related to the process conditions or mechanical properties of fluids at furnace operation. This paper presents a methodological approach to predict EoBC during the operation of IFs with the use of predictive models of machine learning (ML). We make use of a real data set with historical operation to train ML models, and through evaluation with real data we identify the most suitable approach that best fits the characteristics of the data set and implementation constraints in real production environments. The evaluation results confirm that it is possible to predict the undesirable EoBC well in advance, by means of a predictive model. To the best of our knowledge, this paper is the first approach to detail machine-learning concepts for predicting EoBC in the IF industry.
工业4.0构成了传感器数据分析的一个主要应用领域。工业炉是由特殊的热力学材料和技术制成的复杂机器,用于需要特殊热处理周期的工业生产应用中。操作工业炉时最关键的问题之一是黑碳排放(EoBC),这是由大量因素导致的,如燃料的质量和数量、炉效率、工艺所使用的技术、操作实践、负载类型以及与工艺条件或炉操作时流体机械性能相关的其他方面。本文提出了一种方法,利用机器学习(ML)预测模型来预测工业炉运行期间的黑碳排放。我们使用具有历史运行数据的真实数据集来训练ML模型,并通过实际数据评估,确定最适合该数据集特征和实际生产环境中实施约束的方法。评估结果证实,借助预测模型可以提前很好地预测不良的黑碳排放。据我们所知,本文是第一篇详细阐述用于预测工业炉行业黑碳排放的机器学习概念的方法。