Multi-step carbon emissions forecasting using an interpretable framework of new data preprocessing techniques and improved grey multivariable convolution model

IF 12.9 1区 管理学 Q1 BUSINESS Technological Forecasting and Social Change Pub Date : 2024-09-03 DOI:10.1016/j.techfore.2024.123720
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Abstract

As China stands at a critical juncture in its transition towards a low-carbon future, the precise prediction and analysis of provincial carbon emissions have emerged as paramount tasks. Focusing on forecasting in this intricate and vital domain, an updated grey multivariable convolution model is designed by employing the unified new-information-oriented accumulating generation operator (UNAGO) technique to process raw sequences. Equipped with UNAGO's hyper-parameters that enable the independent scaling effects and prioritize new information, the newly-designed model offers high flexibility and adaptability for handling complex provincial carbon emissions. Subsequently, four different restricted carbon emission sequences are utilized as case studies for validation purposes, and the new model's performance is scrutinized against five contrasting methods across three prediction forecasting horizons. Comparative experimental results reveal the new model's superior level of accuracy in predicting carbon emissions across four different provinces, with MAPE values of <4 % and 10 % in the in-sample and out-of-sample periods, respectively. Furthermore, rigorous evaluations with Diebold-Mariano (DM) and Probability Density Analysis (PDA) tests confirm the model's robust and general forecasting capabilities.

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利用新数据预处理技术的可解释框架和改进的灰色多变量卷积模型进行多步骤碳排放预测
中国正处于向低碳未来转型的关键时刻,精确预测和分析各省的碳排放量已成为首要任务。针对这一错综复杂的重要领域的预测问题,我们采用统一的面向新信息的累加生成算子(UNAGO)技术处理原始序列,设计了一种最新的灰色多变量卷积模型。UNAGO 的超参数可实现独立的缩放效应并对新信息进行优先排序,因此新设计的模型在处理复杂的省级碳排放时具有很高的灵活性和适应性。随后,以四个不同的限制性碳排放序列作为案例研究进行验证,并在三个预测范围内与五种对比方法仔细研究了新模型的性能。对比实验结果表明,新模型在预测四个不同省份的碳排放量方面具有极高的准确性,样本内和样本外的 MAPE 值分别为 4 % 和 10 %。此外,迪波尔德-马里亚诺(DM)和概率密度分析(PDA)测试的严格评估也证实了该模型稳健而全面的预测能力。
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来源期刊
CiteScore
21.30
自引率
10.80%
发文量
813
期刊介绍: Technological Forecasting and Social Change is a prominent platform for individuals engaged in the methodology and application of technological forecasting and future studies as planning tools, exploring the interconnectedness of social, environmental, and technological factors. In addition to serving as a key forum for these discussions, we offer numerous benefits for authors, including complimentary PDFs, a generous copyright policy, exclusive discounts on Elsevier publications, and more.
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