首页> 外文期刊>Journal of hydrometeorology >Multi-Index Rain Detection: A New Approach for Regional Rain Area Detection from Remotely Sensed Data
【24h】

Multi-Index Rain Detection: A New Approach for Regional Rain Area Detection from Remotely Sensed Data

机译:多指标降雨检测:一种基于遥感数据的区域降雨区域检测的新方法

获取原文
获取原文并翻译 | 示例
       

摘要

In this article, a new approach called Multi-Index Rain Detection (MIRD) is suggested for regional rain area detection and was tested for India using Kalpana-1 satellite data. The approach was developed based on the following hypothesis: better results should be obtained for combined indices than an individual index. Different combinations (scenarios) were developed by combining six commonly used rain detection indices using AND and OR logical connectives. For the study region, an optimal rain area detection scenario and optimal threshold values of the indices were found through a statistical multi-decision-making technique called the Technique for Order Preference by Similarity Ideal Solution (TOPSIS). The TOPSIS analysis was carried out based on independent categorical statistics like probability of detection, probability of no detection, and Heidke skill score. It is noteworthy that for the first time in literature, an attempt has been made (through sensitivity analysis) to understand the influence of the proportion of raino-rain pixels in the calibration/validation dataset on a few commonly used statistics. Thus, the obtained results have been used to identify the above-mentioned independent categorical statistics. Based on the results obtained and the validation carried out with different independent datasets, scenario 8 (TIRt < 260 K and TIRt - WVt < 19 K, where TIRt and WVt are the brightness temperatures from thermal IR and water vapor, respectively) is found to be an optimal rain detection index. The obtained results also indicate that the texture-based indices [standard deviation and mean of 5 x 5 pixels at time t (mean(5))] did not perform well, perhaps because of the coarse resolution of Kalpana-1 data. It is also to be noted that scenario 8 performs much better than the Roca method used in the Indian National Satellite (INSAT) Multispectral Rainfall Algorithm (IMSRA) developed for India.
机译:在本文中,提出了一种称为多索引雨水检测(MIRD)的新方法用于区域雨水区域检测,并使用Kalpana-1卫星数据在印度进行了测试。该方法是基于以下假设而开发的:与单个索引相比,组合索引应获得更好的结果。通过使用AND和OR逻辑连接词组合六个常用的降雨检测指标来开发出不同的组合(方案)。对于研究区域,通过称为“基于相似理想解的顺序偏好技术”的统计多决策技术,找到了最佳的雨区检测方案和指标的最佳阈值。 TOPSIS分析是基于独立的分类统计数据进行的,例如检测到的概率,未检测到的概率和Heidke技能得分。值得注意的是,文献中首次尝试(通过敏感性分析)来了解校准/验证数据集中雨水/无雨像素的比例对一些常用统计数据的影响。因此,所获得的结果已被用于识别上述独立分类统计。根据获得的结果以及使用不同独立数据集进行的验证,发现情况8(TIRt <260 K和TIRt-WVt <19 K,其中TIRt和WVt分别是热红外和水蒸气的亮度温度)是最佳的雨水检测指标。获得的结果还表明,基于纹理的索引[在时间t处的标准偏差和5 x 5像素的平均值(平均值(5))]表现不佳,可能是因为Kalpana-1数据的分辨率较差。还应注意,方案8的性能比为印度开发的印度国家卫星(INSAT)多光谱降雨算法(IMSRA)中使用的Roca方法要好得多。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号