基于gis的新疆蝗灾可能发生地多准则分析模型

Shudan Zheng, Jianghua Zheng, C. Mu, Y. Ni, Bahetiyaer Dawuti, Jianguo Wu
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引用次数: 1

摘要

蝗虫是新疆地区严重危害农业的主要害虫之一。早期预测蝗灾可能发生地点对牧场管理和农业保护具有重要意义。本研究提出了一种基于gis的模型,结合多准则分析来预测蝗灾可能发生的区域。模型采用月平均气温、月相对湿度、高程、坡度、NDVI和土壤PH值等因子。结果表明,蝗虫主要分布在新疆北部和西部,与实际蝗虫分布高度一致。平均准确率为84.37%,乌鲁木齐市最高准确率为97.25%。平均赋权法更适合于本研究,2011年和2012年准确率均高于90%。因此,该模型能够预测新疆蝗虫可能爆发的地点,为蝗虫防治部门提供有价值的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GIS-based multi-criteria analysis model for identifying probable sites of locust outbreak in Xinjiang, China
Locusts are a kind of primary pests that cause severe damage to the agriculture in Xinjiang, northwest of China. Early forecasting probable sites of locust outbreaks are very important for rangeland management and agricultural protection. This study promoted a GIS-based model combining with multi-criteria analysis to predict the possible area where locust might outbreak. Factors including monthly average temperature, monthly relative humidity, elevation, slope, NDVI and soil PH value were used in this model. The results showed that the locusts were mainly distributed in the north and west part of Xinjiang, which was highly consistent with the actual locust distribution. The average accuracy was 84.37%, and the highest accuracy that appeared in Urumqi reached 97.25%. The average empowering weight method is more suitable for this study as the accuracies are both higher than 90% in 2011 and 2012. Hence, this model was able to predict the probable sites of locust outbreak in Xinjiang, which would provide valuable information to locust control and prevention authorities.
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