Research on Boiler Energy Saving Technology Based on Internet of Things Data

Author:

Jiang Ming1,Yu Haihan1ORCID,Jin Minghui1,Nakamoto Ichiro1,Tang Guo Tai2,Guo Yan1

Affiliation:

1. School of Internet Economics and Business, Fujian University of Technology, Fuzhou, Fujian 350118, China

2. Hanxin (Fujian) Energy Technology Development Co., Ltd., First Floor, Building D, Science and Technology Financial Services Center, High-tech Zone, Licheng District, Quanzhou 362005, China

Abstract

This paper proposes a heat demand prediction model that analyzes the heat behavior of heat users, and analyzes the heat behavior data of heat users through a clustering algorithm to predict their heat demand. This paper is based on the supply-demand balance strategy to reduce the heat loss during the transmission of heat medium, and then improve the energy-saving efficiency of the boiler. The traditional boiler energy-saving and consumption reduction method is to optimize the boiler combustion parameters, improve the fuel combustion efficiency and waste heat recovery technology through the Internet of Things and big data technology. The method of balancing the heat-using end with the load of the boiler at low usage frequency is seldom considered. Therefore, this paper predicts the heat demand of the heat-using end by analyzing its thermal behavior, and balances the heat demand and boiler heat supply under the condition of meeting the heat demand. Finally, through simulation experiments, the validity of the model is verified, and the trend and data can be well predicted in the short-term heat demand prediction.

Funder

Digitalisation of Marine Carbon Sink Management and Market Prospect Analysis

Fujian Provincial Department of Science and Technology

Publisher

Fuji Technology Press Ltd.

Reference21 articles.

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2. H. Ai, “Dynamic Fuzzy Self-Optimization Control of Boiler Efficiency,” J. Control Theory and Application, Vol.2, pp. 5-8, 2002.

3. C. Liu, “Research on Optimization and Upgrading of Industrial Boiler Performance Based on Big Data Mining Technology,” J. Industrial Heating, Vol.49, Issue 10, pp. 37-39+47, 2020 (in Chinese).

4. X. Wang, “Study on Energy Efficiency Monitoring and Analysis Technology of Industrial Boiler,” J. Intelligent Building, Issue 8, pp. 49-54, 2018.

5. C. Li, K. Yang, W. Wang, and S. Wang, “Big Data Thinking and Energy Efficiency Improvement of Heating Boilers,” J. Industrial Control Computer, Vol.30, Issue 2, pp. 105-106, 2017 (in Chinese).

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