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Energy consumption modelling using deep learning embedded semi-supervised learning

机译:利用深度学习嵌入半监督学习能源消耗建模

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Reduction of energy consumption in the steel industry is a global issue where government is actively taking measures to pursue. A steel plant can manage its energy better if the consumption can be modelled and predicted. The existing methods used for energy consumption modelling rely on the quantity of labelled data. However, if the labelled energy consumption data is deficient, its underlying process of modelling and prediction tends to be difficult. The purpose of this study is to establish an energy value prediction model through a big data-driven approach. Owing to the fact that labelled energy data is often limited and expensive to obtain, while unlabelled data is abundant in the real-world industry, a semi-supervised learning approach, i.e., deep learning embedded semi-supervised learning (DLeSSL), is proposed to tackle the issue. Based on DLeSSL, unlabelled data can be labelled and compensated using a semi-supervised learning approach that has a deep learning technique embedded so to expand the labelled data set. An experimental study using a large amount of furnace energy consumption data shows the merits of the proposed approach. Results derived using the proposed method reveal that deep learning (DLeSSL based) outperforms the deep learning (supervised) and deep learning (label propagation based) when the labelled data is limited. In addition, the effect on performance due to the size of labelled data and unlabelled data is also reported.
机译:钢铁行业的能耗降低是一个全球问题,政府正在积极采取措施追求。如果可以建模和预测,钢铁厂可以更好地管理其能量。用于能耗建模的现有方法依赖于标记数据的数量。然而,如果标记的能量消耗数据缺陷,则其建模和预测的底层过程趋于困难。本研究的目的是通过大数据驱动方法建立能量值预测模型。由于标记的能量数据通常有限且获得昂贵,而在现实世界行业中丰富,则提出了一个半监督的学习方法,即深入学习半监督学习(DUSTL)。解决这个问题。基于DUSTL,可以使用具有嵌入的深度学习技术的半监控学习方法来标记和补偿未标记的数据,以便展开标记的数据集。使用大量炉能量消耗数据的实验研究显示了所提出的方法的优点。使用所提出的方法导出的结果表明,当标记数据有限时,深度学习(基于DUSTL基于DUSTL基于DUSTL的)优于深度学习(监督)和深度学习(基于标签传播)。此外,还报道了由于标记数据和未标记数据的大小而对性能的影响。

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