Land Suitability Evaluation for Cassava Production Using Integral Value Ranked Fuzzy AHP and GIS Techniques

Atijosan Abimbola, E. Ewang, Badru Rahmon, A. Taofeek
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引用次数: 1

Abstract

This study presents an improved integral value ranked Fuzzy Analytic Hierarchy Process (FAHP) and Geographic Information System (GIS) based Multi-Criteria Decision Making (MCDM) technique to help decision-makers/farmers evaluate and map suitable lands for optimum cassava production. Selected input/ suitability factors chosen from literature and experts’ opinion were: pH, organic carbon, cation exchange capacity, slope, aspect, elevation, temperature, relative humidity, rain, distance from river and road. The improved integral value ranked FAHP method was used in prioritizing and assigning weights to each causative factor in the MCDM process due to its effectiveness, consistency, and ease of implementation. Land suitability maps were created using GIS techniques based on the aggregation of the various input factors and their derived weights. The outcome of the aggregation was reclassified into four classes using the standard deviation classification method (this method shows how much a feature deviates from the mean). Results obtained showed that 40% of the total area was highly suitable (S1), 36% was moderate suitability (S2), 20% was marginally suitable (S3) and 4% was not suitable (N). Results also showed that pH and organic content of the soil were the major determinants of soil suitability for cassava cultivation in the study area. This study showed the effectiveness of the proposed approach in assessing and mapping suitable areas for optimum cassava production within the study area.
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基于积分值排序模糊层次分析法和GIS技术的木薯生产土地适宜性评价
本研究提出了一种改进的积分值排序模糊层次分析法(FAHP)和基于地理信息系统(GIS)的多准则决策(MCDM)技术,以帮助决策者/农民评估和绘制木薯最佳生产用地。从文献和专家意见中选择的输入/适宜性因素有:pH、有机碳、阳离子交换容量、坡度、坡向、海拔、温度、相对湿度、降雨、距离河流和道路的距离。由于其有效性、一致性和易于实施,改进的积分值排序FAHP方法用于对MCDM过程中的每个导致因素进行优先排序和分配权重。利用地理信息系统技术,基于各种输入因素及其衍生权重的聚合,创建了土地适宜性图。使用标准偏差分类方法(该方法显示特征偏离平均值的程度)将聚合结果重新分类为四类。结果表明,研究区高度适宜(S1)面积占40%,中等适宜(S2)面积占36%,勉强适宜(S3)面积占20%,不适宜(N)面积占4%。土壤pH和有机质含量是研究区土壤适宜性的主要决定因素。本研究表明,所提出的方法在研究区域内评估和绘制木薯最佳生产适宜区域方面是有效的。
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