A pre-warning system of abnormal energy consumption in lead smelting based on LSSVR-RP-CI

Hong-cai Wang , Hong-ru Fang , Lei Meng , Feng-xiang Xu

Journal of Central South University ›› 2019, Vol. 26 ›› Issue (8) : 2175 -2184.

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Journal of Central South University ›› 2019, Vol. 26 ›› Issue (8) : 2175 -2184. DOI: 10.1007/s11771-019-4164-x
Article

A pre-warning system of abnormal energy consumption in lead smelting based on LSSVR-RP-CI

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Abstract

The pre-warning of abnormal energy consumption is important for energy conservation of industrial engineering. However, related studies on the lead smelting industries which usually have a huge energy consumption are rarely reported. Therefore, a pre-warning system was established in this study based on the intelligent prediction of energy consumption and the identification of abnormal energy consumption. A least square support vector regression (LSSVR) model optimized by the adaptive genetic algorithm was developed to predict the energy consumption in the process of lead smelting. A recurrence plots (RP) analysis and a confidence intervals (CI) analysis were conducted to quantitatively confirm the stationary degree of energy consumption and the normal range of energy consumption, respectively, to realize the identification of abnormal energy consumption. It is found the prediction accuracy of LSSVR model can exceed 90% based on the comparison between the actual and predicted data. The energy consumption is considered to be non-stationary if the correlation coefficient between the time series of periodicity and energy consumption is larger than that between the time series of periodicity and Lorenz. Additionally, the lower limit and upper limit of normal energy consumption are obtained.

Keywords

lead smelting / energy consumption / least square support vector regression (LSSVR) / recurrence plots (RP) / confidence intervals (CI)

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Hong-cai Wang, Hong-ru Fang, Lei Meng, Feng-xiang Xu. A pre-warning system of abnormal energy consumption in lead smelting based on LSSVR-RP-CI. Journal of Central South University, 2019, 26(8): 2175-2184 DOI:10.1007/s11771-019-4164-x

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