A Novel Gene Expression Programming Algorithm for Forecasting Carbon Dioxide Emissions in G7 Countries
G7諸国の二酸化炭素排出量予測のための新しい遺伝子発現プログラミングアルゴリズム (AI 翻訳)
Kasım Zor, Ali Can Ozdemir, Iclal Cetin Tas
🤖 gxceed AI 要約
日本語
G7諸国のCO2排出量を予測するため、遺伝子発現プログラミング(GEP)を改良した新しい機械学習アルゴリズムを提案。従来のGEPと比較して、nMAEで26%、nRMSEで24%、MAPEで27%の改善を達成し、計算効率はほぼ同等(0.2%の差)。2035年の推定モデル式も提示。
English
This study proposes a novel gene expression programming (GEP) algorithm for forecasting CO2 emissions in G7 countries. The enhanced GEP outperforms standard GEP with 26% improvement in nMAE, 24% in nRMSE, and 27% in MAPE, while maintaining computational efficiency (0.2% difference). Estimated equations for 2035 are provided for reproducibility.
Unofficial AI-generated summary based on the public title and abstract. Not an official translation.
📝 gxceed 編集解説 — Why this matters
日本のGX文脈において
日本はG7加盟国であり、本手法を日本の排出量予測に応用可能。透明性の高いモデル式を提供する点は、日本のGX政策における根拠ある目標設定に貢献し得る。
In the global GX context
As G7 includes major economies, this transparent forecasting method supports global carbon neutrality tracking. Its reproducibility and accuracy aid policymakers and practitioners in setting evidence-based emission reduction targets.
👥 読者別の含意
🔬研究者:Provides a transparent and reproducible machine learning method for CO2 emissions forecasting.
🏢実務担当者:Could be used for internal carbon footprint projections and scenario analysis.
🏛政策担当者:Useful for validating emission reduction targets and informing climate policy decisions.
📄 Abstract(原文)
The increase in the carbon dioxide (CO2) emissions, nearly a quarter of those originating from the G7 countries, threatens not only the sustainability of the Earth but also the lives of future generations of humanity. Shedding light on future projections of the CO2 emissions is vital in achieving the target of carbon neutrality, and machine learning-based algorithms are frequently applied to forecast the CO2 emissions in the literature. However, the majority of these algorithms create model equations that are abstruse and irreproducible. In the current study, a novel gene expression programming (GEP) algorithm is proposed to produce genuine and easily understandable mathematical models for forecasting the CO2 emissions of the G7 countries. The proposed algorithm is comprehensively compared with both the simple GEP and the previous studies in terms of several error metrics and computational time. Consequently, the obtained results unveiled that the proposed algorithm surpassed the simple GEP by the improvements of 26% in nMAE, 24% in nRMSE, and 27% in MAPE, respectively. Notably, the proposed algorithm maintains essentially the same computational efficiency as the simple GEP (a 0.2% difference in duration) despite its richer function set. In addition to those, the estimated model equations belonging to the year of 2035 were meticulously presented to guide the researchers in the field for the sake of applicability and reproducibility.
🔗 Provenance — このレコードを発見したソース
- crossref https://doi.org/10.3390/app16104676first seen 2026-05-14 23:12:24
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