基于卫星评价的农田绿化潜力利用:GIS建模视角

Firoz Ahmad, Nazimur Rahman Talukdar, Chandrashekhar M. Biradar, Shiv Kumar Dhyani, Javed Rizvi
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引用次数: 3

摘要

增加农林面积是适应气候变化、提高粮食安全的重要一步,具有许多生态和社会经济效益。需要适当的规划和战略来评估土地潜力,并为农林业的多功能效益选择合适的土地。遥感和地理信息系统工具被广泛用于确定农林业和决策的优先领域。谷歌专业马赛克图像的多高分辨率被用作精确、详细分析和有效解释的基础地图。为了确定奥迪沙Belangiri区Belpada区块的农场景观适宜性区域,使用了基于卫星数据测量的GIS建模方法。利用季风后多数据月无云Landsat-8数据和数字高程模型产品,了解农林业的农田景观特征。利用土壤湿度、坡度、排水量和归一化植被指数(NDVI)进行景观适宜性分析。总体而言,27.8%(134.16平方公里)的土地高度适合,50.0%(241.85平方公里)土地中度适合,19.7%(94.98平方公里)勉强适合,其余2.5%(12.01平方公里)不适合农林。在116个村庄中,有14个村庄的农田潜力较高(超过70%),其中贾利亚村的农田潜力最高。在各种农林业安排中,适度和高度适宜的土地/村庄应优先选择以树木为基础的农业。首次制作了高分辨率农场景观潜力网格图,这是过去的一个研究空白,将支持微观农林规划。当与潜在合适的农林农田中的原生和多功能树木相结合时,需要一种强有力的协同方法,该方法具有充分的流域管理和富含本土知识的保护实践,这将大大支持实现最小单位(村庄)级别的许多可持续发展目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Harnessing the Potentiality of Farm Landscape for Trees Based on Satellite Evaluation: A GIS Modeling Perspective

Increasing agroforestry areas is an important step to adapt to climate change, increase food security, and have many ecological and socio-economical benefits. Proper planning and strategies are required for the assessment of land potential and selection of suitable land for the multifunctional benefits of agroforestry. Remote sensing (RS) and geographical information system (GIS) tools are widely used to identify the priority areas for agroforestry and policy-making. The multi-high resolutions of Google pro mosaicked images were used as a base map for precision, detailed analysis, and valid interpretation. To identify the farm landscape suitability areas in the Belpada block of Belangiri district, Odisha, a GIS modeling approach was used based on satellite data measurement. The post-monsoon multi-date monthly cloud-free Landsat-8 data and products of the Digital Elevation Model were used to understand the farm landscape characteristics of agroforestry. Soil wetness, slope, drainage, and Normalized Difference Vegetation Index (NDVI) were used in the preparation of landscape suitability analysis. Overall 27.8% (134.16 sq. km) of land was highly suitable, 50.0% (241.85 sq. km) of land was moderately suitable and 19.7% (94.98 sq. km) was marginally suitable and the remaining 2.5% (12.01 sq. km) of land was found unsuitable for agroforestry. Out of 116 villages, 14 villages are found with high (greater than 70%) farmland potentiality, the highest is found in the Jalia village. The moderate and highly suitable land/villages should be given preference for tree-based farming in various agroforestry arrangements. The high-resolution farm landscape potential grid maps were produced for the first time which was earlier a research gap in the past that will support micro-level agroforestry planning. There is a need for a robust synergic approach when integrated with native and multifunctional trees in potentially suitable agroforestry farmland with adequate watershed management and conservation practices enriched with indigenous knowledge that will significantly support achieving the many sustainable development goals (SDGs) up to the smallest unit (village) level.

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