Machine Learning-Based Energy System Model for Tissue Paper Machines
With the global energy crisis and environmental pollution intensifying, tissue papermaking enterprises urgently need to save energy. The energy consumption model is essential for the energy saving of tissue paper machines. The energy consumption of tissue paper machine is very complicated, and the w...
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doaj-800f73140f6343f3b24cbc0463a6d8962021-04-09T23:00:29ZengMDPI AGProcesses2227-97172021-04-01965565510.3390/pr9040655Machine Learning-Based Energy System Model for Tissue Paper MachinesHuanhuan Zhang0Jigeng Li1Mengna Hong2State Key Laboratory of Pulp and Paper Engineering, South China University of Technology, Guangzhou 510640, ChinaState Key Laboratory of Pulp and Paper Engineering, South China University of Technology, Guangzhou 510640, ChinaState Key Laboratory of Pulp and Paper Engineering, South China University of Technology, Guangzhou 510640, ChinaWith the global energy crisis and environmental pollution intensifying, tissue papermaking enterprises urgently need to save energy. The energy consumption model is essential for the energy saving of tissue paper machines. The energy consumption of tissue paper machine is very complicated, and the workload and difficulty of using the mechanism model to establish the energy consumption model of tissue paper machine are very large. Therefore, this article aims to build an empirical energy consumption model for tissue paper machines. The energy consumption of this model includes electricity consumption and steam consumption. Since the process parameters have a great influence on the energy consumption of the tissue paper machines, this study uses three methods: linear regression, artificial neural network and extreme gradient boosting tree to establish the relationship between process parameters and power consumption, and process parameters and steam consumption. Then, the best power consumption model and the best steam consumption model are selected from the models established by linear regression, artificial neural network and the extreme gradient boosting tree. Further, they are combined into the energy consumption model of the tissue paper machine. Finally, the models established by the three methods are evaluated. The experimental results show that using the empirical model for tissue paper machine energy consumption modeling is feasible. The result also indicates that the power consumption model and steam consumption model established by the extreme gradient boosting tree are better than the models established by linear regression and artificial neural network. The experimental results show that the power consumption model and steam consumption model established by the extreme gradient boosting tree are better than the models established by linear regression and artificial neural network. The mean absolute percentage error of the electricity consumption model and the steam consumption model built by the extreme gradient boosting tree is approximately 2.72 and 1.87, respectively. The root mean square errors of these two models are about 4.74 and 0.03, respectively. The result also indicates that using the empirical model for tissue paper machine energy consumption modeling is feasible, and the extreme gradient boosting tree is an efficient method for modeling energy consumption of tissue paper machines.https://www.mdpi.com/2227-9717/9/4/655energy consumptionenergy systempulp and papermodeling and simulation |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Huanhuan Zhang Jigeng Li Mengna Hong |
spellingShingle |
Huanhuan Zhang Jigeng Li Mengna Hong Machine Learning-Based Energy System Model for Tissue Paper Machines Processes energy consumption energy system pulp and paper modeling and simulation |
author_facet |
Huanhuan Zhang Jigeng Li Mengna Hong |
author_sort |
Huanhuan Zhang |
title |
Machine Learning-Based Energy System Model for Tissue Paper Machines |
title_short |
Machine Learning-Based Energy System Model for Tissue Paper Machines |
title_full |
Machine Learning-Based Energy System Model for Tissue Paper Machines |
title_fullStr |
Machine Learning-Based Energy System Model for Tissue Paper Machines |
title_full_unstemmed |
Machine Learning-Based Energy System Model for Tissue Paper Machines |
title_sort |
machine learning-based energy system model for tissue paper machines |
publisher |
MDPI AG |
series |
Processes |
issn |
2227-9717 |
publishDate |
2021-04-01 |
description |
With the global energy crisis and environmental pollution intensifying, tissue papermaking enterprises urgently need to save energy. The energy consumption model is essential for the energy saving of tissue paper machines. The energy consumption of tissue paper machine is very complicated, and the workload and difficulty of using the mechanism model to establish the energy consumption model of tissue paper machine are very large. Therefore, this article aims to build an empirical energy consumption model for tissue paper machines. The energy consumption of this model includes electricity consumption and steam consumption. Since the process parameters have a great influence on the energy consumption of the tissue paper machines, this study uses three methods: linear regression, artificial neural network and extreme gradient boosting tree to establish the relationship between process parameters and power consumption, and process parameters and steam consumption. Then, the best power consumption model and the best steam consumption model are selected from the models established by linear regression, artificial neural network and the extreme gradient boosting tree. Further, they are combined into the energy consumption model of the tissue paper machine. Finally, the models established by the three methods are evaluated. The experimental results show that using the empirical model for tissue paper machine energy consumption modeling is feasible. The result also indicates that the power consumption model and steam consumption model established by the extreme gradient boosting tree are better than the models established by linear regression and artificial neural network. The experimental results show that the power consumption model and steam consumption model established by the extreme gradient boosting tree are better than the models established by linear regression and artificial neural network. The mean absolute percentage error of the electricity consumption model and the steam consumption model built by the extreme gradient boosting tree is approximately 2.72 and 1.87, respectively. The root mean square errors of these two models are about 4.74 and 0.03, respectively. The result also indicates that using the empirical model for tissue paper machine energy consumption modeling is feasible, and the extreme gradient boosting tree is an efficient method for modeling energy consumption of tissue paper machines. |
topic |
energy consumption energy system pulp and paper modeling and simulation |
url |
https://www.mdpi.com/2227-9717/9/4/655 |
work_keys_str_mv |
AT huanhuanzhang machinelearningbasedenergysystemmodelfortissuepapermachines AT jigengli machinelearningbasedenergysystemmodelfortissuepapermachines AT mengnahong machinelearningbasedenergysystemmodelfortissuepapermachines |
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1721532311804051456 |