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首页> 外文期刊>Journal of arid environments >Prediction of desert locust breeding areas using machine learning methods and SMOS (MIR_SMNRT2) Near Real Time product
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Prediction of desert locust breeding areas using machine learning methods and SMOS (MIR_SMNRT2) Near Real Time product

机译:使用机器学习方法和SMOS(MIR_SMNRT2)在实时产品附近预测沙漠蝗虫繁殖区

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摘要

Despite satellite imagery is being used to identify suitable areas for desert locust, there is a lack of automatized and operational procedures in Near Real Time (NRT). The aim of this study was to assess the capacity of Soil Moisture Near Real Time Neural Network Level 2 product (MIR_SMNRT2) from the Soil Moisture and Ocean Salinity satellite (SMOS) to predict nymphs of desert locust. We used soil moisture time series (between 2016 and 2019) to build 6 machine learning models (logistic regression model "glm", eXtreme Gradient Boosting "xgbTree", Weighted k-Nearest Neighbors "kknn", Feed-Forward Neural Networks and Multinomial Log-Linear Models "nnet", support vector machine radial "svmRadial", and random forest "rf") over the entire recession area. Model results proved that spatial and/or temporal constraints in data sampling conditioned the predictive capacity of the selected machine learning algorithms. Furthermore, we used a forward selection procedure to evaluate the impact that time series data exert on modelling. Our results suggest that soil moisture data retrieved between 95 and 12 days (before the sighting) provided sufficient information to achieve acceptable predictive performances. This methodology can improve current preventive and control operations, it is site-specific, and could be used to other pests.
机译:尽管卫星图像正在用于确定沙漠蝗虫的合适区域,但近乎实时(NRT)缺乏自动化和操作程序。本研究的目的是评估来自土壤水分和海洋盐度卫星(SMOS)的实时神经网络级别2产品(MIR_SMNRT2)附近土壤水分的能力,以预测沙漠蝗虫的若虫。我们使用土壤湿度时间序列(2016年和2019年间)构建6机器学习模型(Logistic回归模型“GLM”,极端梯度升压“XGBTree”,加权K-Collect邻居“KKNN”,前馈神经网络和多项式日志-LineAR模型“NNET”,支持整个经济衰退区域的向量机径向“SVMRADIAL”,随机森林“RF”)。模型结果证明,数据采样中的空间和/或时间约束条件调节所选机器学习算法的预测容量。此外,我们使用了前向选择程序来评估时间序列数据在建模上的影响。我们的研究结果表明,在95至12天(瞄准之前)的土壤水分数据提供了足够的信息,以实现可接受的预测性能。这种方法可以改善电流预防和控制操作,它是特定于地的,并且可以用于其他害虫。

著录项

  • 来源
    《Journal of arid environments》 |2021年第11期|104599.1-104599.8|共8页
  • 作者单位

    Univ Valladolid Remote Sensing Lab LATUV Paseo Belen 11 Valladolid 47011 Spain;

    Univ Valladolid Remote Sensing Lab LATUV Paseo Belen 11 Valladolid 47011 Spain;

    Univ Valladolid Remote Sensing Lab LATUV Paseo Belen 11 Valladolid 47011 Spain;

    Univ Valladolid Remote Sensing Lab LATUV Paseo Belen 11 Valladolid 47011 Spain;

    Univ Valladolid Remote Sensing Lab LATUV Paseo Belen 11 Valladolid 47011 Spain;

    Univ Valladolid Remote Sensing Lab LATUV Paseo Belen 11 Valladolid 47011 Spain;

  • 收录信息 美国《科学引文索引》(SCI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Forecast tool; Pests; Remote sensing; Soil moisture;

    机译:预测工具;害虫;遥感;土壤水分;

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