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Evaluation of Remotely Sensed and Interpolated Environmental Datasets for Vector-Borne Disease Monitoring Using In Situ Observations over the Amhara Region Ethiopia

机译:利用埃塞俄比亚阿姆哈拉地区的原位观测对遥感和插值环境数据集进行媒介传染病监测评估

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摘要

Despite the sparse distribution of meteorological stations and issues with missing data, vector-borne disease studies in Ethiopia have been commonly conducted based on the relationships between these diseases and ground-based in situ measurements of climate variation. High temporal and spatial resolution satellite-based remote-sensing data is a potential alternative to address this problem. In this study, we evaluated the accuracy of daily gridded temperature and rainfall datasets obtained from satellite remote sensing or spatial interpolation of ground-based observations in relation to data from 22 meteorological stations in Amhara Region, Ethiopia, for 2003–2016. Famine Early Warning Systems Network (FEWS-Net) Land Data Assimilation System (FLDAS) interpolated temperature showed the lowest bias (mean error (ME) ≈ 1–3 °C), and error (mean absolute error (MAE) ≈ 1–3 °C), and the highest correlation with day-to-day variability of station temperature (COR ≈ 0.7–0.8). In contrast, temperature retrievals from the blended Advanced Microwave Scanning Radiometer on Earth Observing Satellite (AMSR-E) and Advanced Microwave Scanning Radiometer 2 (AMSR2) passive microwave and Moderate-resolution Imaging Spectroradiometer (MODIS) land-surface temperature data had higher bias and error. Climate Hazards group InfraRed Precipitation with Stations (CHIRPS) rainfall showed the least bias and error (ME ≈ −0.2–0.2 mm, MAE ≈ 0.5–2 mm), and the best agreement (COR ≈ 0.8), with station rainfall data. In contrast FLDAS had the higher bias and error and the lowest agreement and Global Precipitation Mission/Tropical Rainfall Measurement Mission (GPM/TRMM) data were intermediate. This information can inform the selection of geospatial data products for use in climate and disease research and applications.
机译:尽管气象站分布稀疏并且缺少数据问题,但埃塞俄比亚的媒介传播疾病研究通常是基于这些疾病与地面气候变化原位测量之间的关系进行的。高时空分辨率的基于卫星的遥感数据是解决此问题的潜在选择。在这项研究中,我们评估了2003-2016年从卫星遥感或地面观测值的空间插值获得的每日网格温度和降雨数据集与埃塞俄比亚阿姆哈拉地区22个气象站的数据相关的准确性。饥荒预警系统网络(FEWS-Net)内陆数据同化系统(FLDAS)内插温度显示出最低偏差(平均误差(ME)≈1-3°C)和误差(平均绝对误差(MAE)≈1-3) °C),并且与站点温度的日常变化具有最高的相关性(COR≈0.7–0.8)。相比之下,从地球观测卫星上的混合高级微波扫描辐射仪(AMSR-E)和高级微波扫描辐射仪2(AMSR2)被动微波和中分辨率成像光谱仪(MODIS)混合的地表温度数据获得的温度偏差更大,并且错误。气候危害组与车站的红外降水(CHIRPS)降雨与车站降雨数据显示出最小的偏差和误差(ME≈-0.2-0.2 mm,MAE≈0.5-2 mm),以及最佳的一致性(COR≈0.8)。相比之下,FLDAS具有较高的偏差和误差,一致性最低,而全球降水任务/热带雨量测量任务(GPM / TRMM)数据处于中间。该信息可为选择用于气候和疾病研究与应用的地理空间数据产品提供信息。

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