利用GIS和AHP技术绘制津巴布韦玉米生产土地适宜性图

IF 0.3 Q4 REMOTE SENSING South African Journal of Geomatics Pub Date : 2019-10-09 DOI:10.4314/sajg.v8i2.11
W. Chivasa, O. Mutanga, Ç. Biradar
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引用次数: 11

摘要

该研究将地理信息系统(GIS)和层次分析法(AHP)结合起来,利用多标准评价(MCE)方法对津巴布韦玉米生产的土地适宜性进行了评价。在GIS环境下,通过覆盖技术将基于降雨、温带、土壤类型和坡度的4个专题图进行整合,生成玉米生产适宜性图。将得到的玉米适宜性图与约束图叠加,以“掩盖”所有非农业用地。最终的玉米适宜性图显示,目前玉米适宜性占总用地的3.20%,适宜性占16.56%,适宜性占25.34%,适宜性占32.33%,不适宜性占9.57%。利用代表5个不同成熟度组的5个重点玉米品种的实测玉米产量,通过回归分析验证了玉米适宜性分类。对各土地类别的适宜性指数(SI)进行了粮食产量回归。玉米产量与土地适宜性等级呈显著正相关(R2 = 0.63 ~ 0.85)。将GIS和AHP与MCE相结合,可以有效地评估针对特定地点的玉米生产干预措施的土地适宜性,结果是津巴布韦的综合适宜性图,其中包含影响玉米适应的几个关键环境因素。我们建议在土地利用规划和政策制定过程中,将此适宜性图作为决策支持工具。
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Mapping land suitability for maize (Zea mays L.) production using GIS and AHP technique in Zimbabwe
The study integrates geographic information system (GIS) and analytic hierarchy process (AHP) to evaluate land suitability for maize production in Zimbabwe using multi-criteria evaluation (MCE) process. Four thematic maps based on rainfall, temperate, soil type and slope were integrated through overlay technique in a GIS environment to produce maize production suitability map. The resultant maize suitability map was overlaid with constraints map to ‘mask out’ all non-agricultural land. The final maize suitability map shows that 3.20% of the total land is highly suitable, 16.56% is suitable, 25.34% is moderately suitable, 32.33% is marginally suitable and 9.57% is not suitable for maize production in its current form. The maize suitability classification was validated by regression analyses using measured maize grain yield of 5 key maize varieties representing 5 different maturity groups. Grain yield was regressed against suitability index (SI) of each land class. There were significant positive correlations between maize grain yield and land suitability classes (R2 = 0.63 - 0.85). Integrating GIS and AHP with MCE is effective in assessing land suitability for targeting location specific interventions for maize production and the result is a comprehensive suitability map for Zimbabwe, incorporating several critical environmental factors affecting maize adaptation. We recommend the use of this suitability map as a decision support tool in land use planning and policy making.
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