Deep Learning-Based Comparative Modeling of Carbon Emissions Projections

Dacheng Hou, Haoyu Zhang, Lili Li, Xiaojun Wang, Yifan Lin, Huandi Du
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Abstract

Scientific statistics of carbon emission data and reasonable prediction of its development trend can help stabilize carbon emission to ensure that China can achieve the carbon peak by 2030. In this paper, we use Pearson correlation analysis to select the main factors that optimally affect carbon emissions and predict them through the back propagation neural network model optimized by whale algorithm, the BP neural network model optimized by genetic algorithm and the back propagation neural network model, so as to provide an effective prediction method for scientists to study the growth rate of carbon emissions production in China The back propagation neural network model is used to predict the carbon peak and the time of carbon neutralization in China by the optimal model. The Pearson correlation coefficient screening was performed with 85 groups of factors affecting carbon emissions collected in China from 1998–2019 under carbon emissions and (energy, agriculture, industry, integrated, etc.) resource environment, and eight optimal groups of data were used for prediction. The data were compared between R Square, MSE, RMSE and MAPE data by back propagation neural network, optimization using whale algorithm and optimization using genetic algorithm, and the optimal model was used to predict carbon emissions for three years from 2020 to 2069. The results of this study show that the four groups of data, R Square, MSE, RMSE and MAPE, predicted by the BP neural network model optimized based on the whale algorithm are the best among the three models, and the data from 2016 to 2069 can be accurately predicted by the whale algorithm optimized BP network to determine the time of reaching carbon peak and carbon neutrality in China. Compared with other prediction models, the BP neural network model optimized by the whale algorithm can effectively predict carbon emissions and provide an optimal method for carbon emissions prediction.
基于深度学习的碳排放预测比较模型
科学统计碳排放数据,合理预测其发展趋势,有助于稳定碳排放,确保中国在2030年达到碳峰值。本文采用Pearson相关分析,选取影响碳排放最优的主要因素,通过whale算法优化的反向传播神经网络模型、遗传算法优化的BP神经网络模型和反向传播神经网络模型进行预测。为科学家研究中国碳排放产量的增长速度提供有效的预测方法。采用反向传播神经网络模型,通过最优模型预测中国的碳峰值和碳中和时间。对收集的1998-2019年中国碳排放与(能源、农业、工业、综合等)资源环境下影响碳排放的85组因素进行Pearson相关系数筛选,并利用8组最优数据进行预测。通过反向传播神经网络、鲸鱼算法优化和遗传算法优化对R平方、MSE、RMSE和MAPE数据进行比较,并利用最优模型对2020 - 2069年3年的碳排放进行预测。本研究结果表明,基于鲸鱼算法优化的BP神经网络模型预测的R平方、MSE、RMSE和MAPE四组数据在三种模型中效果最好,鲸鱼算法优化的BP网络可以准确预测2016 - 2069年的数据,以确定中国碳峰值和碳中和时间。与其他预测模型相比,鲸鱼算法优化后的BP神经网络模型能够有效预测碳排放,为碳排放预测提供了一种最优方法。
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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