Real-Time Monitoring and Intelligent Analysis Platform for Carbon Emission in Smart Power Plants

  • Jie Gao Guoteng Shanxi Hequ Power Generation Co., Ltd., Xinzhou 036500, Shanxi, China
  • Tiejun Lin Guoteng Shanxi Hequ Power Generation Co., Ltd., Xinzhou 036500, Shanxi, China
  • Zhannan Ma Guoteng Shanxi Hequ Power Generation Co., Ltd., Xinzhou 036500, Shanxi, China
Keywords: Smart power plant, Real-time carbon emission monitoring, Intelligent analysis platform, Internet of Things perception

Abstract

As global climate change intensifies, the power industry—a major source of carbon emissions—plays a pivotal role in achieving carbon peaking and neutrality goals through its low-carbon transition. Traditional power plants’ carbon management systems can no longer meet the demands of high-precision, real-time monitoring. Smart power plants now offer innovative solutions for carbon emission tracking and intelligent analysis by integrating IoT, big data, and AI technologies. Current research predominantly focuses on optimizing individual processes, lacking systematic exploration of comprehensive dynamic monitoring and intelligent decision-making across the entire workflow. To address this gap, we propose a smart carbon emission monitoring and analysis platform for power plants that integrates IoT sensing, multimodal data analytics, and AI-driven decision-making. The platform establishes a multi-source sensor network to collect emissions data throughout the fuel combustion, auxiliary equipment operation, and waste treatment processes. Combining carbon emission factor analysis with machine learning models enables real-time emission calculations and utilizes long short-term memory networks to predict future emission trends.

References

Liu K, Yang X, Tai W, et al., 2022, Research on Carbon Emission Characteristics of Coal-Fired Power Units Based on Real-Time Monitoring. Thermal Power Generation, 51(10): 47–53.

Liu S, 2024, Research on Low-Carbon Optimization Strategies for Virtual Power Plants Considering Demand Response and Multi-Energy Coupling Operations, dissertation, Shanxi University.

Li J, Chang R, Sun S, et al., 2023, Application of Carbon Balance-Based Intelligent Emission Monitoring System in Thermal Power Plants. Coal Quality Technology, 38(1): 72–78.

Kun L, Liu M, 2025, Application of Blockchain Technology in Carbon Emission Mechanism Design for Power Plants. Integrated Circuits Applications, 42(03): 202–203.

Ding Z, Yang G, Sun E, et al., 2025, Research on Precise Energy Saving and Carbon Reduction Optimization in Power Plants Based on Intelligent Energy Management System. Modern Engineering Science and Technology, 4(04): 149–152.

Yu D, Sun Q, Liu H, 2024, Study on Multi-Time-Scale Optimization Scheduling of Virtual Power Plants in Carbon Flow Computing. Journal of Nanchang University (Science Edition), 48(06): 604–611 + 620.

Yao S, Liu Z, Lu Z, et al., 2024, Research Progress on Carbon Emission Measurement in Coal-Fired Power Plants Empowered by Soft Measurement Technology. Clean Coal Technology, 30(08): 18–31.

Zhang N, Jia J, Li B, et al., 2024, Study on the Optimization of Operation Strategies for Electric-Gas Coupling Virtual Power Plants Considering Carbon Trading. Measurement and Instrumentation, 61(08): 20–28.

Yu D, Wang X, Sun Q, et al., 2024, Multi-Objective Multi-Time-Scale Optimization Scheduling Based on VPP Carbon Flow Calculation. Smart Power, 52(01): 30–38.

Fang B, 2023, Research and Application of Carbon Emission Accounting Technology System for Coal-Fired Power Plants. Energy and Energy Conservation, 2023(09): 94–97.

Published
2025-10-10