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首页> 外文期刊>Sustainability >Prediction of CO 2 Emission in China?¢????s Power Generation Industry with Gauss Optimized Cuckoo Search Algorithm and Wavelet Neural Network Based on STIRPAT model with Ridge Regression
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Prediction of CO 2 Emission in China?¢????s Power Generation Industry with Gauss Optimized Cuckoo Search Algorithm and Wavelet Neural Network Based on STIRPAT model with Ridge Regression

机译:基于带岭回归的STIRPAT模型的高斯优化布谷鸟搜索算法和小波神经网络预测中国发电行业的CO 2排放

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摘要

Power generation industry is the key industry of carbon dioxide (CO 2 ) emission in China. Assessing its future CO 2 emissions is of great significance to the formulation and implementation of energy saving and emission reduction policies. Based on the Stochastic Impacts by Regression on Population, Affluence and Technology model (STIRPAT), the influencing factors analysis model of CO 2 emission of power generation industry is established. The ridge regression (RR) method is used to estimate the historical data. In addition, a wavelet neural network (WNN) prediction model based on Cuckoo Search algorithm optimized by Gauss (GCS) is put forward to predict the factors in the STIRPAT model. Then, the predicted values are substituted into the regression model, and the CO 2 emission estimation values of the power generation industry in China are obtained. It?¢????s concluded that population, per capita Gross Domestic Product (GDP), standard coal consumption and thermal power specific gravity are the key factors affecting the CO 2 emission from the power generation industry. Besides, the GCS-WNN prediction model has higher prediction accuracy, comparing with other models. Moreover, with the development of science and technology in the future, the CO 2 emission growth in the power generation industry will gradually slow down according to the prediction results.
机译:发电行业是中国二氧化碳排放的关键行业。评估其未来的CO 2排放量对于制定和实施节能减排政策具有重要意义。基于回归对人口的随机影响,富裕程度和技术模型(STIRPAT),建立了发电行业CO 2排放影响因素分析模型。岭回归(RR)方法用于估计历史数据。此外,提出了一种基于高斯优化的布谷鸟搜索算法的小波神经网络预测模型,以预测STIRPAT模型中的影响因素。然后,将预测值代入回归模型,获得中国发电行业的CO 2排放估算值。结论是人口,人均国内生产总值(GDP),标准煤消耗量和火电比重是影响发电行业CO 2排放的关键因素。此外,与其他模型相比,GCS-WNN预测模型具有更高的预测精度。而且,随着未来科学技术的发展,根据预测结果,发电行业的CO 2排放量增长将逐渐放缓。

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