连接流域土壤侵蚀建模的过去、现在和未来场景

C. Loukrakpam, B. Oinam
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Using the projected layer as one of the spatial variables and applying the same model, Soil Erosion based on Revised Universal soil loss equation is projected for a corresponding years. FINDINGS: For both cases of projection, simulated layers of 2019 (land use land cover and soil erosion) are correlated with the estimated layer of 2019 using actual variables and validated. The agreement and accuracy of the model used in the case land use are 0.92 and 96.21% for the year 2019. The coefficient of determination of the model for both simulations is also observed to be 0.875 and 0.838. The simulated future soil erosion rate ranges from minimum of 0 t/ha/y to maximum of 524.271 t/ha/y, 1160.212 t/ha/y and 783.135 t/ha/y in the year 2021, 2023 and 2025, respectively. CONCLUSION: The study has emphasized the use of artificial neural network-based Cellular automata model for simulation of land use and land cover and subsequently estimation of soil erosion rate. 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引用次数: 5

摘要

背景与目的:土壤侵蚀被认为是环境中土壤退化的主要指标之一。广泛的土壤侵蚀过程导致表层土壤养分的侵蚀,导致肥力下降,从而导致生产力下降。此外,蠕变侵蚀导致研究区丘陵地区的山体滑坡,影响了居民的社会经济。目前的研究重点是估算2011年至2019年的土壤侵蚀速率,并预测2021年、2023年和2025年的土壤侵蚀速率。方法:采用修正的通用水土流失方程对研究区2011 - 2019年的土壤侵蚀进行估算。利用基于人工神经网络的元胞自动机模拟,对未来2021年、2023年和2025年的土地利用和土地覆盖进行了预测。以预估层为空间变量,采用同一模型,基于修正通用水土流失方程对相应年份的土壤侵蚀进行了预估。结果:对于这两种预测情况,2019年的模拟层(土地利用、土地覆盖和土壤侵蚀)与使用实际变量的2019年估计层相关,并经过验证。2019年土地利用模型的拟合度和准确率分别为0.92%和96.21%。两种模拟模式的决定系数分别为0.875和0.838。在2021年、2023年和2025年,模拟的未来土壤侵蚀速率最小为0 t/ha/y,最大为524.271 t/ha/y、1160.212 t/ha/y和783.135 t/ha/y。结论:本研究强调利用基于人工神经网络的元胞自动机模型模拟土地利用和土地覆盖,进而估算土壤侵蚀速率。通过对未来土壤侵蚀速率的模拟,通过当前情景,描述了从过去到未来土壤侵蚀速率的变化趋势。在数据匮乏的情况下,该方法对于所研究的区域是准确可靠的。========================================================================================== 版权©2021年作者(年代)。这是一篇根据知识共享署名协议(CC BY 4.0)发布的开放获取文章,该协议允许在任何媒体上不受限制地使用、分发和复制,只要引用原作者和来源。不需要许可从作者和出版商 .==========================================================================================
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Linking the past, present and future scenarios of soil erosion modeling in a river basin
BACKGROUND AND OBJECTIVE: Soil erosion is considered one of the major indicators of soil degradation in our environment. Extensive soil erosion process leads to erosion of nutrients in the topsoil and decreases in fertility and hence productivity. Moreover, creeping erosion leads to landslides in the hilly regions of the study area that affects the socio-economics of the inhabitants. The current study focuses on the estimation of soil erosion rate for the year 2011 to 2019 and projection for the years 2021, 2023 and 2025. METHODS: In this study, the Revised Universal Soil Loss Equation is used for estimation of soil erosion in the study area for the year 2011 to 2019. Using Artificial Neural Network-based Cellular Automata simulation, the Land Use Land Cover is projected for the future years 2021, 2023 and 2025. Using the projected layer as one of the spatial variables and applying the same model, Soil Erosion based on Revised Universal soil loss equation is projected for a corresponding years. FINDINGS: For both cases of projection, simulated layers of 2019 (land use land cover and soil erosion) are correlated with the estimated layer of 2019 using actual variables and validated. The agreement and accuracy of the model used in the case land use are 0.92 and 96.21% for the year 2019. The coefficient of determination of the model for both simulations is also observed to be 0.875 and 0.838. The simulated future soil erosion rate ranges from minimum of 0 t/ha/y to maximum of 524.271 t/ha/y, 1160.212 t/ha/y and 783.135 t/ha/y in the year 2021, 2023 and 2025, respectively. CONCLUSION: The study has emphasized the use of artificial neural network-based Cellular automata model for simulation of land use and land cover and subsequently estimation of soil erosion rate. With the simulation of future soil erosion rate, the study describes the trend in the erosion rate from past to future, passing through present scenario. With the scarcity of data, the methodology is found to be accurate and reliable for the region under study. ==========================================================================================COPYRIGHTS©2021 The author(s). This is an open access article distributed under the terms of the Creative Commons Attribution (CC BY 4.0), which permits unrestricted use, distribution, and reproduction in any medium, as long as the original authors and source are cited. No permission is required from the authors or the publishers.==========================================================================================
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来源期刊
CiteScore
7.90
自引率
2.90%
发文量
11
审稿时长
8 weeks
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