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首页> 外文期刊>International journal of remote sensing >Statistical estimate of the hourly near-surface air humidity in eastern Canada in merging NOAA/AVHRR and GOES/IMAGER observations
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Statistical estimate of the hourly near-surface air humidity in eastern Canada in merging NOAA/AVHRR and GOES/IMAGER observations

机译:通过合并NOAA / AVHRR和GOES / IMAGER观测值,对加拿大东部每小时近地面空气湿度的统计估计

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摘要

Estimates of the relative humidity near the ground are frequently requested by scientific communities concerned about weather forecasting, disease prediction, and agriculture. To face the dearth of meteorological observations provided by synoptic networks, remote sensing measurements are particularly useful, specifically because they can provide coherent information at a regional representative scale. The present investigation gives an update on the potential for using satellite data to estimate the near-surface relative humidity. The IMAGER sensor on board the Geostationary Operational Environmental Satellite (GOES) is used to obtain the hourly infrared datasets. In addition, data from the Advanced Very High Resolution Radiometer (AVHRR) flown on the National Oceanic and Atmospheric Administration (NOAA) Sun-synchronous satellite series is used to calculate the daily normalized difference vegetation index (NDVI). Estimates of the relative humidity are assessed using various variables like the surface temperature, NDVI, the precipitable water, the digital elevation model, the date and local time. The study approach combines empirically these variables into third-order polynomial multiple regressions with stepwise functions. The data are split in two parts: the algorithm development dataset and the validation dataset. The estimation model is developed by a stepwise function, which selects independent variables and decides corresponding coefficients. The model validity is further assessed by employing a comparison with the results obtained from the model output using a validation dataset. The accuracy achieved using the validation dataset is in a good agreement with development dataset accuracies. The relative humidity accuracy derived from the present method is within 10% compared to field measurements. The largest discrepancies between model and measurements were observed over forested areas. One outcome from this study is that the difference in results between forested and non-forested targets is enhanced with the topography.
机译:关注天气预报,疾病预测和农业的科学界经常要求估算地面附近的相对湿度。面对天气天气网络提供的气象观测的不足,遥感测量特别有用,特别是因为它们可以提供区域代表性规模的连贯信息。本研究对使用卫星数据估算近地表相对湿度的潜力进行了更新。地球静止运行环境卫星(GOES)上的IMAGER传感器用于获取每小时的红外数据集。此外,来自美国国家海洋和大气管理局(NOAA)太阳同步卫星系列的超高分辨率高分辨率辐射计(AVHRR)的数据用于计算日归一化植被指数(NDVI)。使用各种变量来评估相对湿度,例如表面温度,NDVI,可沉淀的水,数字高程模型,日期和当地时间。该研究方法根据经验将这些变量组合为具有逐步函数的三阶多项式多元回归。数据分为两部分:算法开发数据集和验证数据集。估计模型由逐步函数开发,该函数选择自变量并确定相应的系数。通过与使用验证数据集从模型输出获得的结果进行比较,进一步评估模型的有效性。使用验证数据集获得的准确性与开发数据集的准确性非常一致。与现场测量相比,从本方法得出的相对湿度精度在10%以内。在森林区域观察到模型与测量值之间的最大差异。这项研究的一项结果是,地形会增强森林目标和非森林目标之间结果的差异。

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