A Review of Modeling and Simulation Research on Steam Turbines of Supercritical Power Generation Units

Authors

  • Changlong Ma
  • Jing Chen
  • Geng Liang

DOI:

https://doi.org/10.62051/ijmee.v5n2.12

Keywords:

Supercritical Power Generation Unit, Steam Turbine, Building Simulation Technology

Abstract

Under the background of the increasing energy demand and the tightening environmental protection requirements, steam turbines, as one of the key operating devices in power plants, hold significant importance for the modern power system. This paper conducts research by retrieving international literature journals and applying the literature analysis method, focusing on the simulation technology of steam turbines in supercritical power generation units. It summarizes three types of methods: mechanism modeling, system identification modeling, and composite modeling, aiming to provide references for subsequent related research.

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Published

27-03-2025

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Section

Articles

How to Cite

Ma, C., Chen, J., & Liang, G. (2025). A Review of Modeling and Simulation Research on Steam Turbines of Supercritical Power Generation Units. International Journal of Mechanical and Electrical Engineering, 5(2), 105-110. https://doi.org/10.62051/ijmee.v5n2.12