Determining the Climatologically Suitable Areas for Wheat Production Using MODIS-NDVI in Mashhad, Iran

S. H. Sanaeinejad, S. Hasheminiya, S. Khojasteh
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Abstract

One of the most important factors in sustainable irrigation is the adaptability of crops to climate. Vegetative vigor or "greenness" of wheat could be considered as an appropriate index to measure water availability and deficiency stress and also plant health, plant density and quality. The index is called Normalized Difference Vegetation Index (NDVI). In this study MODIS-NDVI values were compared with climatological parameters to assess the relations between vegetative vigor and climatological parameters. The NDVI values for three selected wheat farms in Mashhad area were calculated using MODIS images for 2003 and 2004 growing seasons. The data of four climatological parameters including air temperature, precipitation, relative humidity and sunshine hours were also collected from the nearest weather stations. Then a multi-regression statistical analysis was performed to find the relation between wheat NDVI and climatological parameters in the study area. Pertaining statistical methods including Mixed, and Stepwise (Forward and Backward) were used in the analysis. Scattering matrix was used to determine the data scattering of the models and NDVI values for comparison. The results showed that backward method was more appropriate than the other two methods for predicting NDVI values of the study area. After finalizing this model the results were statistically tested using 20% of the samples for the test purpose and the remaining 80% for running the model. The results showed that there was no significant difference between Backward, Testing Backward and Training Backward models. The results from the latter method showed that the NDVI of the pixels could be estimated for 79% of the cases. It can be stated that the rest of NDVI values could be affected by other environmental parameters such as soil type and characteristics, topographical conditions, agronomical practices, plant diseases and other unknown factors. Finally, some maps were developed showing the potential wheat farming in the area according to the model results.
利用MODIS-NDVI确定伊朗马什哈德小麦生产的气候适宜区
农作物对气候的适应性是影响可持续灌溉的一个重要因素。小麦的营养活力或“绿度”可作为衡量水分有效性和水分胁迫以及植物健康、密度和品质的适宜指标。该指数被称为归一化植被指数(NDVI)。本研究将MODIS-NDVI值与气候参数进行比较,以评估植被活力与气候参数的关系。利用MODIS影像计算了马什哈德地区3个小麦农场2003年和2004年生长季的NDVI值。气温、降水、相对湿度和日照时数等4个气候参数的数据也由最近的气象站采集。对研究区小麦NDVI与气候参数的关系进行多元回归统计分析。在分析中使用了相关的统计方法,包括Mixed和Stepwise (Forward and Backward)。利用散射矩阵确定模型的数据散射和NDVI值进行比较。结果表明,反演法比其他两种方法更适合预测研究区NDVI值。在最终确定该模型后,对结果进行统计测试,使用20%的样本用于测试目的,其余80%用于运行模型。结果表明,Backward、Testing Backward和Training Backward模型之间没有显著差异。后一种方法的结果表明,在79%的情况下,可以估计出像素的NDVI。可以说,其余的NDVI值可能受到其他环境参数的影响,如土壤类型和特征、地形条件、农艺做法、植物病害和其他未知因素。最后,根据模型结果绘制了一些地图,显示了该地区潜在的小麦种植。
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