Applications of Fractional Order Logistic Grey Models for Carbon Emission Forecasting

Xiaoqiang He, Yuxin Song, Fengmin Yu, Huiming Duan
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Abstract

In recent years, global attention to carbon emissions has increased, becoming one of the main drivers of global climate change. Accurate prediction of carbon emission trends in small and medium-sized countries and scientific regulation of carbon emissions can provide theoretical support and policy references for the effective and rational use of energy and the promotion of the coordinated development of energy, environment, and economy. This paper establishes a grey prediction model using the classical Logistic mathematical model in a determined environment to investigate the carbon emission system. At the same time, we use the basic principle of fractional-order accumulation to establish a grey prediction model with fractional-order Logistic and obtain the parameter estimation and time-response equation of the new model by solving the model through the theory related to fractional-order operators. The particle swarm optimization algorithm is used to complete the optimization process of the order of the fractional order grey prediction model and obtain the optimal model order. Then, the new model is applied to predict carbon emissions in five medium-emission countries: Ethiopia, Djibouti, Ghana, Belgium, and Austria. The new model shows better advantages in the validity analysis process, and the simulation results indicate that the new model proposed in this paper has stronger stability and better simulation and prediction accuracy than other comparative models, proving the model’s validity. Finally, the model is used to forecast the carbon emissions of these five countries for the five years of 2021–2025, and the results are analyzed, and relevant policy recommendations are made.
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分数阶逻辑灰色模型在碳排放预测中的应用
近年来,全球对碳排放的关注度不断提高,成为全球气候变化的主要驱动因素之一。准确预测中小国家碳排放趋势,科学调控碳排放,可为有效合理利用能源,促进能源、环境、经济协调发展提供理论支持和政策参考。本文利用经典的 Logistic 数学模型,在确定的环境下建立灰色预测模型,对碳排放系统进行研究。同时,利用分数阶累加的基本原理,建立了分数阶 Logistic 灰色预测模型,并通过分数阶算子相关理论对模型进行求解,得到了新模型的参数估计和时间响应方程。利用粒子群优化算法完成分数阶灰色预测模型阶次的优化过程,得到最优模型阶次。然后,将新模型应用于五个中等排放国家的碳排放预测:埃塞俄比亚、吉布提、加纳、比利时和奥地利。新模型在有效性分析过程中表现出较好的优势,仿真结果表明,本文提出的新模型与其他比较模型相比,具有更强的稳定性和更好的仿真预测精度,证明了模型的有效性。最后,利用该模型对这五个国家 2021-2025 年五年的碳排放量进行了预测,并对预测结果进行了分析,提出了相关的政策建议。
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