Chang Sheng, Wu Bingfang, Yan Nana, Zhu Jianjun, Wen Qi, Xu Feng
School of Geosciences and Info-Physics, Central South University, Changsha 410083, China.
Key Laboratory of Digital Earth Science, Institute of Remote Sensing and Digital Earth, Chinese Academy of Sciences, Olympic Village Science Park, W. Beichen Road, Beijing 100101, China.
Sensors (Basel). 2018 Apr 23;18(4):1297. doi: 10.3390/s18041297.
In this study, modified perpendicular drought index (MPDI) models based on the red-near infrared spectral space are established for the first time through the analysis of the spectral characteristics of GF-1 wide field view (WFV) data, with a high spatial resolution of 16 m and the highest frequency as high as once every 4 days. GF-1 data was from the Chinese-made, new-generation high-resolution GF-1 remote sensing satellites. Soil-type spatial data are introduced for simulating soil lines in different soil types for reducing errors of using same soil line. Multiple vegetation indices are employed to analyze the response to the MPDI models. Relative soil moisture content (RSMC) and precipitation data acquired at selected stations are used to optimize the drought models, and the best one is the Two-band enhanced vegetation index (EVI2)-based MPDI model. The crop area that was statistically significantly affected by drought from a local governmental department, and used for validation. High correlations and small differences in drought-affected crop area was detected between the field observation data from the local governmental department and the EVI2-based MPDI results. The percentage of bias is between −21.8% and 14.7% in five sub-areas, with an accuracy above 95% when evaluating the performance via the data for the whole study region. Generally the proposed EVI2-based MPDI for GF-1 WFV data has great potential for reliably monitoring crop drought at a relatively high frequency and spatial scale. Currently there is almost no drought model based on GF-1 data, a full exploitation of the advantages of GF-1 satellite data and further improvement of the capacity to observe ground surface objects can provide high temporal and spatial resolution data source for refined monitoring of crop droughts.
本研究通过对高分一号宽幅相机(WFV)数据的光谱特征进行分析,首次建立了基于红-近红外光谱空间的改进垂直干旱指数(MPDI)模型。高分一号数据来自中国国产的新一代高分辨率高分一号遥感卫星,其空间分辨率高达16米,最高重访周期为4天。引入土壤类型空间数据来模拟不同土壤类型中的土壤线,以减少使用相同土壤线带来的误差。采用多种植被指数分析其对MPDI模型的响应。利用选定站点获取的相对土壤湿度含量(RSMC)和降水数据对干旱模型进行优化,最佳模型是基于双波段增强植被指数(EVI2)的MPDI模型。使用当地政府部门统计的受干旱影响显著的作物面积进行验证。在当地政府部门的实地观测数据与基于EVI2的MPDI结果之间,检测到受干旱影响作物面积的高相关性和小差异。在五个子区域中,偏差百分比在−21.8%至14.7%之间,通过整个研究区域的数据评估性能时,准确率高于95%。总体而言,所提出的基于高分一号WFV数据的EVI2-MPDI在相对较高的频率和空间尺度上可靠监测作物干旱方面具有巨大潜力。目前基于高分一号数据的干旱模型几乎没有,充分利用高分一号卫星数据的优势并进一步提高对地物的观测能力,可为作物干旱的精细化监测提供高时空分辨率的数据源。