汽轮机
火力发电站
蒸汽发电站
涡轮机
热的
功率(物理)
核工程
工程类
工艺工程
联合循环
机械工程
环境科学
废物管理
热力学
物理
作者
Chen Chen,Ming Liu,Mengjie Li,Yu Wang,Chaoyang Wang,Junjie Yan
出处
期刊:Energy
[Elsevier]
日期:2024-03-01
卷期号:290: 129969-129969
被引量:2
标识
DOI:10.1016/j.energy.2023.129969
摘要
The increasing deployment of renewable energy sources necessitates peak regulation services from thermal power plants, impacting their energy efficiency. Central to these plants, the steam turbine system significantly influences their operational efficiency. A digital twin model of this system was developed, integrating mechanism-driven and data-driven modeling methods. The neural network data-driven approach was specifically utilized for parameters such as feedwater pump speed and steam flow rate to the pump turbine. Other parameters were modeled with mechanism data hybrid driven modeling method. This model computes vital metrics such as low-pressure turbine exhaust steam enthalpy, work done and heat absorption per unit mass of steam, system efficiency, feedwater mass flow rate, and water-coal ratio—key for evaluating and enhancing the system's energy efficiency. An investigation into a reference case showed a decline in efficiency below design levels due to aging. By optimizing the live steam pressure and the cold-end system, relative improvements in energy efficiency of 0.35 % and 0.14 %, respectively, were achievable.
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