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Modeling Dengue vector population using remotely sensed data and machine learning

机译:使用远程感测数据和机器学习建模登革索人口

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Mosquitoes are vectors of many human diseases. In particular, Aedes cegypti (Linnaeus) is the main vector for Chikungunya, Dengue, and Zika viruses in Latin America and it represents a global threat. Public health policies that aim at combating this vector require dependable and timely information, which is usually expensive to obtain with field campaigns. For this reason, several efforts have been done to use remote sensing due to its reduced cost. The present work includes the temporal modeling of the oviposition activity (measured weekly on 50 ovitraps in a north Argentinean city) of Aedes cegypti (Linnaeus), based on time series of data extracted from operational earth observation satellite images. We use are NDVI, NDWI, LST night, LST day and TRMM-GPM rain from 2012 to 2016 as predictive variables. In contrast to previous works which use linear models, we employ Machine Learning techniques using completely accessible open source toolkits. These models have the advantages of being non-parametric and capable of describing nonlinear relationships between variables. Specifically, in addition to two linear approaches, we assess a support vector machine, an artificial neural networks, a K-nearest neighbors and a decision tree regressor. Considerations are made on parameter tuning and the validation and training approach. The results are compared to linear models used in previous works with similar data sets for generating temporal predictive models. These new tools perform better than linear approaches, in particular nearest neighbor regression (KNNR) performs the best. These results provide better alternatives to be implemented operatively on the Argentine geospatial risk system that is running since 2012.
机译:蚊子是许多人类疾病的载体。特别是,AEDES CEGYPTI(LINNAEUS)是拉丁美洲的Chikungunya,登革热和Zika病毒的主要载体,它代表了全球威胁。旨在打击这一载体的公共卫生政策需要可靠和及时的信息,这通常是昂贵的,以获得现场运动。因此,已经完成了几项努力来使用遥感,因为它的成本降低。本工作包括基于从运营地球观察卫星图像提取的时间序列的数据序列的数据序列,包括从OEDES CEGYPTI(LINNEEUS)的产卵活性(每周测量的50个Ovitaps)的时间建模。我们使用的是NDVI,NDWI,LST之夜,LST日和2012年至2016年的TRMM-GPM下雨作为预测变量。与使用线性模型的先前作品相比,我们使用完全可访问的开源工具包使用机器学习技术。这些模型具有非参数的优点,并且能够描述变量之间的非线性关系。具体地,除了两个线性方法之外,我们还评估支持向量机,人工神经网络,K到最近邻居和决策树回归。对参数调整和验证和培训方法进行了考虑因素。将结果与先前用于生成时间预测模型的类似数据集的线性模型进行比较。这些新工具比线性方法更好,特别是最接近的邻居回归(KNNR)执行最佳。这些结果提供了在自2012年以来运行的阿根廷地理空间风险系统上可操作地实施的更好的替代方案。

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