Evaluation of RothC model for predicting soil organic carbon stock in north-west Ethiopia

Q2 Environmental Science Environmental Challenges Pub Date : 2024-04-01 DOI:10.1016/j.envc.2024.100909
Bethel Geremew , Tsegaye Tadesse , Bobe Bedadi , Hero T. Gollany , Kindie Tesfaye , Abebe Aschalew , Amsalu Tilaye , Wuletawu Abera
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Abstract

Assessing soil organic carbon (SOC) is vital for water retention, soil health, nutrient cycling, greenhouse gas emissions, and pollutant reduction and thereby contributes to sustainable agricultural production and food security. Thus, using long-term climate, soil, and land management inputs, the Rothamsted Carbon (RothC) model was applied to assess the current and future SOC stocks in the Anjeni watershed using long term climate, soil and land management data. RothC was calibrated with long-term SOC, land management, and climatic data from the Anjeni watershed in north-west Ethiopia. The correlation coefficient between simulated and observed SOC in 1997 and 2021 were 0.77 and 0.86, respectively, suggesting that the model could characterize the SOC of the Anjeni watershed. Then, the RothC was used to estimate SOC in the watershed for 30 years, from 2022 to 2052, under three slope gradients and four land use type and carbon storage scenarios (business as usual (BAU), low, medium and high carbon inputs). The result indicated that in the lower slope gradient, the current SOC simulation is less than all future scenarios considered under all land use types. Grass/fallow land showed higher current and projected SOC than cultivated land and plantation forest. Moreover, grass/fallow land with a gentle slope gradient had higher SOC than the watershed's middle and high-elevation parts. Overall, the model projected an increase of SOC under different future scenarios that could be due to climate and land use cover changes, the long-term soil-water conservation camping works and better soil and land managements in the watershed. This future assists for water retention, soil health, nutrient cycling, soil aeration, and greenhouse gas emission reduction, which in turn could enhance agricultural productivity, food security, and sustainable development.

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评估用于预测埃塞俄比亚西北部土壤有机碳储量的 RothC 模型
评估土壤有机碳(SOC)对水源涵养、土壤健康、养分循环、温室气体排放和污染物减排至关重要,从而有助于可持续农业生产和粮食安全。因此,利用长期气候、土壤和土地管理数据,采用 Rothamsted Carbon(RothC)模型来评估安杰尼流域当前和未来的 SOC 储量。利用埃塞俄比亚西北部安杰尼流域的长期 SOC、土地管理和气候数据对 RothC 进行了校准。1997 年和 2021 年模拟 SOC 与观测 SOC 的相关系数分别为 0.77 和 0.86,表明该模型可以描述安杰尼流域的 SOC 特征。然后,利用 RothC 估算了该流域 2022 年至 2052 年 30 年间在三种坡度、四种土地利用类型和碳储存情景("一切照旧"、低碳输入、中碳输入和高碳输入)下的 SOC。结果表明,在较低的坡度梯度下,当前的 SOC 模拟值低于所有土地利用类型下的所有未来情景。与耕地和人工林相比,草地/耕地的当前和预测 SOC 均较高。此外,坡度较缓的草地/休耕地的 SOC 要高于流域的中高海拔地区。总体而言,模型预测在不同的未来情景下,SOC 都会增加,这可能是由于气候和土地利用覆盖面的变化、长期的水土保持营建工程以及流域内更好的土壤和土地管理所致。这种未来有助于水源涵养、土壤健康、养分循环、土壤通气和温室气体减排,进而提高农业生产力、粮食安全和可持续发展。
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来源期刊
Environmental Challenges
Environmental Challenges Environmental Science-Environmental Engineering
CiteScore
8.00
自引率
0.00%
发文量
249
审稿时长
8 weeks
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