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Spatial-temporal evolution and predictive analysis of carbon effect efficiency in farmland in Jiangsu Province, China

中国江蘇省における農地炭素効果効率の空間的・時間的変遷と予測分析 (AI 翻訳)

Xiaowen Wang, Bowen Yu, Yì Wáng, Song Hao, Zhen Zheng

Carbon Balance and Management📚 査読済 / ジャーナル2026-05-08#炭素会計Origin: CN
DOI: 10.1186/s13021-026-00452-2
原典: https://doi.org/10.1186/s13021-026-00452-2

🤖 gxceed AI 要約

日本語

本研究は、中国江蘇省の農地を対象に、2011~2021年の炭素排出・吸収・純固定量の時空間変動をSBMモデル・エントロピー法・TOPSISで分析。GM(1,1)モデルで2033年までの予測を行い、純炭素固定量が観測期間中の最大値比15.55%減少する可能性を示した。地域別の農業排出削減政策への示唆を提供する。

English

This study analyzes the spatiotemporal evolution of farmland carbon effects (emissions, absorption, net sequestration) in Jiangsu, China from 2011-2021 using SBM, entropy-weighted TOPSIS, and GM(1,1) prediction. Results show an overall upward trend in carbon emission efficiency (average 0.76) but a projected 15.55% decline in net carbon sequestration by 2033, offering insights for region-specific low-carbon agriculture policies.

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

中国の農地炭素効率に関する実証研究であり、日本の農業分野における温室効果ガス算定や農地管理の低炭素化政策の参考となり得る。ただし、中国特有の地域事情に基づくため、直接適用には注意が必要。

In the global GX context

This paper provides empirical evidence on farmland carbon efficiency in a major Chinese agricultural region, relevant to global discussions on agricultural carbon accounting and low-carbon transition. The methods (SBM, GM(1,1)) are transferable, though findings are China-specific.

👥 読者別の含意

🔬研究者:Researchers in agricultural carbon accounting or land-use emissions can adopt the methodological framework for similar regional studies.

🏢実務担当者:Sustainability teams in agribusiness or regional planners may use the efficiency metrics to benchmark low-carbon farming practices.

🏛政策担当者:Policymakers in China or other regions can leverage the spatiotemporal analysis to design targeted agricultural emission reduction strategies.

📄 Abstract(原文)

Since the Industrial Revolution, the increasing emissions of greenhouse gases have posed unprecedented challenges to sustainable human development. As one of the most vital terrestrial ecosystems, farmland ecosystems play an irreplaceable role in balancing carbon emissions and absorption, attracting growing scholarly attention. Taking Jiangsu Province, one of China's major grain-producing regions, as the study area, this research integrates the Slacks-Based Measure (SBM) model, the entropy-weighted method, and the Technique for Order of Preference by Similarity to Ideal Solution (TOPSIS) to analyze the spatiotemporal evolution of farmland carbon effects-including carbon emissions, carbon absorption, and net carbon sequestration-during 2011-2021. Furthermore, a Grey Prediction Model was employed to forecast the carbon effects of 13 cities over the next 12 years. The results show that Jiangsu's farmland carbon emission efficiency exhibited an overall upward trend with fluctuations, with an average value of 0.76. The multi-year mean fitting degrees of resource input and agricultural output were relatively low, at 0.426 and 0.358, respectively, with substantial intercity differences. The average coupling coordination degree between resource input and agricultural output was 0.66, indicating a primary coordination state. The constructed GM (1,1) model achieved a qualification rate exceeding 73.80%, demonstrating its reliability for predicting farmland carbon effects. Forecasts suggest a potential weakening of the province's agricultural carbon sink effect, with the net carbon sequestration in 2033 expected to decline by 15.55% compared with the maximum value during the observation period. This study reveals the spatiotemporal characteristics and potential evolution patterns of farmland carbon effects, providing theoretical support for region-specific agricultural emission reduction policies and promoting the sustainable development of efficient, low-carbon agriculture.

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