多标准决策分析和机器学习方法对印度东部Gangarampur细分地区农业用地能力的有效性评估

Sunil Saha, Prolay Mondal
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引用次数: 4

摘要

土地适宜性分析(LSA)是衡量土地适合某种土地利用程度的一种评价方法。本研究的主要目的是使用多标准决策(MCDM)和机器学习程序确定Gangarampur分区(西孟加拉邦)潜在可行的农业用地,并评估所采用方法的有效性。采用层次分析法(AHP)模型为适用性分析中的15个不同标准分配相对权重,然后使用AHP的归一化两两比较矩阵应用模糊复比例评价(FCOPRAS)模型,而使用Waikato环境知识分析(Weka)软件将机器学习算法应用于现场数据。另一方面,随机森林模型更适合土壤势的定位研究。根据射频调查结果,14.67%(15368.46公顷)的区域适合种植作物,约22.30%(23367.9公顷)的区域非常适合种植(IV区),23.63%(24762.12公顷)的区域中等适合种植(III区)。FCOPRAS的数字大致为15.39% (16130.52 ha), 22.54% (23620.65 ha)和19.79% (20733.26 ha)。受试者工作特征(ROC)曲线和结果的精度测量表明,所应用的模型具有较高的精度,其中随机森林和FCOPRAS是最流行和最有效的技术。该研究将为土壤肥力评价和立地适宜性评价做出重要贡献。这将有助于地方政府官员、学者和农民科学地使用土地。
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Estimation of the effectiveness of multi-criteria decision analysis and machine learning approaches for agricultural land capability in Gangarampur Subdivision, Eastern India

Land suitability analysis (LSA) is an evaluation method that measures the degree to which land is suitable for certain land use. The primary aims of this study are to identify potentially viable agricultural land in the Gangarampur subdivision (West Bengal) using Multiple Criteria Decision Making (MCDM) and machine learning procedures and to evaluate the efficacy of the employed methodologies. The Analytic Hierarchy Process (AHP) model was used to assign relative weights to the fifteen various criteria in this suitability analysis, and then the Fuzzy Complex Proportional Assessment (FCOPRAS) model was applied using the AHP's normalised pairwise comparison matrix, whereas the Waikato Environment for Knowledge Analysis (Weka) Software was used to apply machine learning algorithms to the field data. The Random Forest (RF) model, on the other hand, is a better fit for the locational study of soil potential. According to the RF findings, areas of 14.67 per cent (15368.46 ha) are excellent (ZONE V) for growing crops, approximately 22.30 per cent (23367.9 ha) are highly suitable (ZONE IV), and 23.63 per cent (24762.12 ha) are moderately suitable (ZONE III) for cultivation, respectively. The numbers for FCOPRAS are roughly 15.39% (16130.52 ha), 22.54% (23620.65 ha), and 19.79% (20733.26 ha). The Receiver Operating Characteristic (ROC) curve and accuracy measurements of the results indicate the high accuracy of the applied models, with Random Forest and FCOPRAS being the most popular and effective techniques. This study will make an important contribution to evaluations of soil fertility and site suitability. This will help local government officials, academics, and farmers scientifically use the land.

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