均方误差
人工神经网络
温室气体
主成分分析
预测建模
选型
计算机科学
元启发式
人工智能
机器学习
统计
数学
生态学
生物
作者
Yukai Jin,Ayyoob Sharifi,Zhisheng Li,Sirui Chen,Suzhen Zeng,Shanlun Zhao
标识
DOI:10.1016/j.scitotenv.2024.172319
摘要
Amidst growing concerns over the greenhouse effect, especially its consequential impacts, establishing effective Carbon Emission Prediction Models (CEPMs) to comprehend and predict CO2 emission trends is imperative. A review of 147 Carbon Emission Prediction Model (CEPM) studies revealed three predominant functions—prediction, optimization, and prediction factor selection. Statistical models, comprising 75 instances, were the most prevalent among prediction models, followed by neural network models at 21.8 %. The consistent rise in neural network model usage, particularly feedforward architectures, was observed from 2019 to 2022. A majority of CEPMs incorporated optimized approaches, with 94.4 % utilizing metaheuristic models. Parameter optimization was the primary focus, followed by structure optimization. Prediction factor selection models, employing Grey Relational Analysis (GRA) and Principal Component Analysis (PCA) for statistical and machine learning models, respectively, filtered factors effectively. Scrutinizing accuracy, pre-optimized CEPMs exhibited varied performance, Root Mean Square Error (RMSE) values spanned from 0.112 to 1635 Mt, while post-optimization led to a notable improvement, the minimum RMSE reached 0.0003 Mt, and the maximum was 95.14 Mt. Finally, we summarized the pros and cons of existing models, classified and counted the factors that influence carbon emissions, clarified the research objectives in CEPM and assessed the applied model evaluation methods and the spatial and temporal scales of existing research.
科研通智能强力驱动
Strongly Powered by AbleSci AI