Carbon Emission Prediction of Thermal Power Plants Based on Machine Learning Techniques

Chao Zhu, Peng Shi, Zhuang Li, Mingle Li, Hongji Zhang, Tao Ding
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引用次数: 1

Abstract

Since the magnificent goal of Peak Carbon Dioxide Emissions and Carbon Neutrality was put forward in 2020, carbon emission reduction has attracted unprecedented attention. The power industry must fulfill its carbon emission reduction obligations as soon as possible. Thermal power plants are the main source of carbon emissions in the power industry, so finding out the key influencing factors of thermal-power-plant carbon emission and making accurate predictions are important measures to promote the low-carbon development of the power industry. Although some precise models have been proposed, most power plants cannot obtain all the parameters required by the precise models in the actual production practice, which limits their application. Machine learning technology accepts numerical data as input and establishes the mapping relationship between variables automatically, which results in loose requirements on data. This paper summarizes several key influencing factors of carbon dioxide emissions of thermal power plants that are easy to observe and establishes a prediction model of carbon dioxide emissions of thermal power plants based on eXtreme Gradient Boosting. In addition, we compare our method with two machine learning methods proposed in previous research and obtain a satisfactory result.
基于机器学习技术的火电厂碳排放预测
自2020年二氧化碳排放峰值和碳中和的宏伟目标提出以来,碳减排受到了前所未有的关注。电力行业必须尽快履行碳减排义务。火电厂是电力行业碳排放的主要来源,找出火电厂碳排放的关键影响因素并进行准确预测是推动电力行业低碳发展的重要措施。虽然提出了一些精确的模型,但大多数电厂在实际生产实践中无法获得精确模型所需的全部参数,限制了其应用。机器学习技术接受数值数据作为输入,自动建立变量之间的映射关系,导致对数据的要求松散。总结了影响火电厂二氧化碳排放的几个易于观察的关键因素,建立了基于极限梯度增压的火电厂二氧化碳排放预测模型。此外,我们还将该方法与前人提出的两种机器学习方法进行了比较,得到了满意的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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