基于模糊-AHP 和地理信息系统的印度巽他班粮食作物适宜性模型

IF 4.8 2区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY Natural Resources Research Pub Date : 2024-07-11 DOI:10.1007/s11053-024-10373-x
Sabir Hossain Molla, Rukhsana
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引用次数: 0

摘要

土地适宜性分析对于做出明智的农业决策至关重要,它揭示了一个地区的自然潜力和局限性。本研究的主要目的是利用地质统计学、模糊-AHP(FAHP)算法和地理信息系统工具,确定印度巽他班地区种植主要粮食作物(如 Kharif 稻、Rabi 稻和 Green gram)的土地适宜性。利用当地专家的见解,确定了 19 个专题层的相对重要性,其中包括气候、土壤、环境和社会经济因素。利用地理信息系统中的 FAHP 模型将这些因素结合起来,绘制出耕地适宜性地图。使用球形和高斯半变异图模型对土壤参数进行了最佳拟合,显示出最佳性能。土地适宜性分析表明,高度适宜(S1)的地区主要种植 Rabi 稻(21.65%),其次是 Kharif 稻(16%)和青禾(11.8%)。中度适宜区(S2)占主导地位,其中花期水稻(68.70%)和狂热水稻(65.32%)的适宜区面积明显大于绿色禾本科植物(44.28%)的适宜区面积。有机质含量低、盐胁迫、pH 值偏酸、土壤质地为砂壤、土层深度浅、灌溉水质差等因素限制了这些地区的发展。基本适合(S3)种植哈里发水稻(14.97%)、拉比水稻(12.62%)和青禾(37.88%)的地区面积较小,而不适合(N)种植的地区面积很小(0.33-6.04%)。使用曲线下面积(AUC)验证了 FAHP 程序在适宜性评估中的可靠性,发现其对 Kharif 水稻(81.20%)、Rabi 水稻(83.30%)和 Green gram(79.41%)的适用性很高。研究认为,地理信息系统中的 FAHP 组合算法是准确评估土地是否适合生产特定作物的实用方法。
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Fuzzy-AHP and GIS-Based Modeling for Food Grain Cropping Suitability in Sundarban, India

Land suitability analysis is essential for informed farming decisions, revealing an area’s natural potential and limitations. The primary objective of this research is to determine the suitability of land for cultivating major food grain crops like Kharif rice, Rabi rice, and Green gram in the Sundarban region of India using geostatistics, the fuzzy-AHP (FAHP) algorithm, and GIS tools. Local experts’ insights were harnessed to ascertain the relative importance of 19 thematic layers encompassing climatic, soil, environmental, and socioeconomic factors. These were combined using the FAHP model in a GIS to produce a cropland suitability map. The soil parameters were best fitted using spherical and Gaussian semi-variogram models, which showed the best performance. Land suitability analysis revealed that highly suitable (S1) areas were most extensive for Rabi rice (21.65%), followed by those for Kharif rice (16%) and Green gram (11.8%). Moderately suitable (S2) areas dominated the landscape, with those for Kharif rice (68.70%) and Rabi rice (65.32%) exhibiting significantly larger extents than those for Green gram (44.28%). Minor limitations restricted these areas due to low organic content, salt stress, acidic pH, sandy-loamy soil texture, shallow soil depth, and poor-quality irrigation water. Marginally suitable (S3) areas for Kharif rice (14.97%), Rabi rice (12.62%), and Green gram (37.88%) were less extensive, while not suitable (N) areas were minimal (0.33–6.04%). The dependability of the FAHP procedure in suitability assessment was validated using the area under curve (AUC), which was found to be substantial for Kharif rice (81.20%), Rabi rice (83.30%), and Green gram (79.41%). The study concluded that the combined FAHP algorithm in GIS is a practical approach for assessing accurately land suitability for producing specific crops.

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来源期刊
Natural Resources Research
Natural Resources Research Environmental Science-General Environmental Science
CiteScore
11.90
自引率
11.10%
发文量
151
期刊介绍: This journal publishes quantitative studies of natural (mainly but not limited to mineral) resources exploration, evaluation and exploitation, including environmental and risk-related aspects. Typical articles use geoscientific data or analyses to assess, test, or compare resource-related aspects. NRR covers a wide variety of resources including minerals, coal, hydrocarbon, geothermal, water, and vegetation. Case studies are welcome.
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