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首页> 外文期刊>Journal of Engineering for Gas Turbines and Power >Combustion Tuning for a Gas Turbine Power Plant Using Data-Driven and Machine Learning Approach
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Combustion Tuning for a Gas Turbine Power Plant Using Data-Driven and Machine Learning Approach

机译:利用数据驱动和机器学习方法燃烧燃气轮机发电厂的燃烧调整

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摘要

Conventional physics-based or experimental-based approaches for gas turbine combustion tuning are time consuming and cost intensive. Recent advances in data analytics provide an alternative method. In this paper, we present a cross-disciplinary study on the combustion tuning of an F-class gas turbine that combines machine learning with physics understanding. An artificial-neural-network-based (ANN) model is developed to predict the combustion performance (outputs), including NO_x emissions, combustion dynamics, combustor vibrational acceleration, and turbine exhaust temperature. The inputs of the ANN model are identified by analyzing the key operating variables that impact the combustion performance, such as the pilot and the premixed fuel flow, and the inlet guide vane angle. The ANN model is trained by field data from an F-class gas turbine power plant. The trained model is able to describe the combustion peiformance at an acceptable accuracy in a wide range of operating conditions. In combination with the genetic algorithm, the model is applied to optimize the combustion performance of the gas turbine. Results demonstrate that the data-driven method offers a promising alternative for combustion tuning at a low cost and fast turn-around.
机译:燃气涡轮机燃烧调谐的常规物理或基于实验的燃气涡轮机方法是耗时和成本密集的。数据分析的最新进展提供了一种替代方法。在本文中,我们对F级燃气轮机的燃烧调整呈跨学科研究,将机器学习与物理学理解相结合。开发了一种基于人工网络的(ANN)模型,以预测燃烧性能(输出),包括NO_X排放,燃烧动力学,燃烧器振动加速和涡轮机排气温度。通过分析冲击燃烧性能的关键操作变量,例如导频和预混燃料流动,以及入口导向叶片角度来识别ANN模型的输入。 ANN模型由来自F级燃气轮机发电厂的现场数据训练。训练的模型能够以可接受的精度在各种操作条件下以可接受的精度描述燃烧北方。结合遗传算法,应用模型以优化燃气轮机的燃烧性能。结果表明,数据驱动方法提供了一种有前途的替代方案,可以低成本和快速转向燃烧调谐。

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  • 来源
    《Journal of Engineering for Gas Turbines and Power》 |2021年第3期|031021.1-031021.7|共7页
  • 作者单位

    Key Laboratory for Thermal Science and Power Engineering of Ministry of Education Department of Energy and Power Engineering Tsinghua University Beijing 100084 China;

    Key Laboratory for Thermal Science and Power Engineering of Ministry of Education Department of Energy and Power Engineering Tsinghua University Beijing 100084 China;

    Key Laboratory for Thermal Science and Power Engineering of Ministry of Education Department of Energy and Power Engineering Tsinghua University Beijing 100084 China;

    SPIC Zhengzhou Gas Power Generation Company 100 Wutong Street Zhengzhou 450010 China;

    SPIC Zhengzhou Gas Power Generation Company 100 Wutong Street Zhengzhou 450010 China;

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  • 正文语种 eng
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