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首页> 外文期刊>Journal of hydrometeorology >Impacts of Satellite-Based Rainfall Products on Predicting Spatial Patterns of Rift Valley Fever Vectors
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Impacts of Satellite-Based Rainfall Products on Predicting Spatial Patterns of Rift Valley Fever Vectors

机译:基于卫星的降雨产品对裂谷热载体矢量空间格局预测的影响

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摘要

Spatiotemporal rainfall variability is a key parameter controlling the dynamics of mosquitoes/vector-borne diseases such as malaria, Rift Valley fever (RVF), or dengue. Impacts from rainfall heterogeneity at small scales (i.e., 1-10 km) on the risk of epidemics (i.e., host bite rate or number of bites per host and per night) must be thoroughly evaluated. A model with hydrological and entomological components for risk prediction of theRVFzoonosis is proposed. The model predicts the production of two mosquito species within a 45 km3 45km area in the Ferlo region, Senegal. The three necessary steps include 1) best rainfall estimation on a small scale, 2) adequate forcing of a simple hydrological model leading to pond dynamics (ponds are the primary larvae breeding grounds), and 3) best estimate of mosquito life cycles obtained from the coupled entomological model. The sensitivity of the model to the spatiotemporal heterogeneity of rainfall is first tested using high-resolution rain fields from a weather radar. The need for high-resolution rain data is thus demonstrated. Several high-resolution satellite rainfall products are evaluated in the region of interest using a dense rain gauge network. Tropical Rainfall Measuring Mission (TRMM) Multisatellite Precipitation Analysis 3B42, version 6 (TMPA-3B42V6), and 3B42 in real time (TMPA-3B42RT); Global Satellite Mapping of Precipitation (GSMaP) in near-real time (GSMaP-NRT) and Moving Vector with Kalman version (GSMaPMVK); African Rainfall Estimation Algorithm, version 2.0 (RFE 2.0); Climate Prediction Center (CPC) morphing technique (CMORPH); and Precipitation Estimation from Remotely Sensed Information Using Artificial Neural Networks (PERSIANN) are tested and finally corrected using a probability matching method. The corrected products are then used as forcing to the coupled model over the 2003-10 period. The predicted number and size of ponds and their dynamics are greatly improved compared to the model forced only by a single gauge.A more realistic spatiotemporal distribution of the host bite rate of the RVF vectors is thus expected.
机译:时空降雨变异性是控制蚊子/媒介传播疾病(例如疟疾,裂谷热(RVF)或登革热)动态的关键参数。必须全面评估小规模降雨异质性(即1-10公里)对流行病风险(即宿主叮咬率或每主机每晚叮咬次数)的影响。提出了一种具有水文和昆虫学成分的RVF动物疫病风险预测模型。该模型预测了塞内加尔费洛地区45 km3 45 km区域内两种蚊子的产生。这三个必要步骤包括:1)最佳的小规模降雨估计; 2)充分强迫建立导致池塘动力学的简单水文模型(池塘是幼虫的主要繁殖地),以及3)最佳的蚊子生命周期估计耦合昆虫模型。首先使用天气雷达的高分辨率雨场测试了模型对降雨时空非均质性的敏感性。因此证明了需要高分辨率的降雨数据。使用密集的雨量计网络评估了感兴趣区域中的几种高分辨率卫星降雨产品。热带降雨测量任务(TRMM)多卫星降水分析3B42,版本6(TMPA-3B42V6)和3B42实时(TMPA-3B42RT);全球近实时降水卫星图(GSMaP-NRT)和带卡尔曼版本的运动矢量(GSMaPMVK);非洲降雨估算算法,版本2.0(RF​​E 2.0);气候预测中心(CPC)变形技术(CMORPH);利用人工神经网络(PERSIANN)对来自遥感信息的降水和降水估计进行了测试,最后使用概率匹配方法进行了校正。然后,将校正后的乘积用作对2003-10期间耦合模型的强制。与仅由单个仪表强制的模型相比,预测的池塘数量和大小及其动态性得到了极大的改善,因此可以预期RVF向量宿主叮咬率的更现实的时空分布。

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