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A Mixed Model Approach to Vegetation Condition Prediction Using Artificial Neural Networks (ANN): Case of Kenya’s Operational Drought Monitoring

机译:人工神经网络植被状况预测的混合模型方法(ANN):肯尼亚运营干旱监测的情况

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摘要

Droughts, with their increasing frequency of occurrence, especially in the Greater Horn of Africa (GHA), continue to negatively affect lives and livelihoods. For example, the 2011 drought in East Africa caused massive losses, documented to have cost the Kenyan economy over 12 billion US dollars. Consequently, the demand is ever-increasing for ex-ante drought early warning systems with the ability to offer drought forecasts with sufficient lead times The study uses 10 precipitation and vegetation condition indices that are lagged over 1, 2 and 3-month time-steps to predict future values of vegetation condition index aggregated over a 3-month time period (VCI3M) that is a proxy variable for drought monitoring. The study used data covering the period 2001−2015 at a monthly frequency for four arid northern Kenya counties for model training, with data for 2016−2017 used as out-of-sample data for model testing. The study adopted a model space search approach to obtain the most predictive artificial neural network (ANN) model as opposed to the traditional greedy search approach that is based on optimal variable selection at each model building step. The initial large model-space was reduced using the general additive model (GAM) technique together with a set of assumptions. Even though we built a total of 102 GAM models, only 20 had R2 ≥ 0.7, and together with the model with lag of the predicted variable, were subjected to the ANN modelling process. The ANN process itself uses the brute-force approach that automatically partitions the training data into 10 sub-samples, builds the ANN models in these samples and evaluates their performance using multiple metrics. The results show the superiority of 1-month lag of the variables as compared to longer time lags of 2 and 3 months. The best ANN model recorded an R2 of 0.78 between actual and predicted vegetation conditions 1-month ahead using the out-of-sample data. Investigated as a classifier distinguishing five vegetation deficit classes, the best ANN model had a modest accuracy of 67% and a multi-class area under the receiver operating characteristic curve (AUROC) of 89.99%.
机译:干旱,随着它们的频率越来越多,特别是在非洲的大角(GHA)中,继续对生命和生计产生负面影响。例如,2011年在东非造成了巨大的损失,记录了肯尼亚经济超过120亿美元的损失。因此,对于具有足够的交流时间的ex-ante干旱的早期预警系统,这项需求越来越多地增加了足够的交货时间,研究使用10个降水和植被条件指数,滞留超过1,2和3个月的时间步骤预测在3个月的时间段(VCI3M)上汇总植被状况指数的未来价值,这是用于干旱监测的代理变量。该研究使用数据涵盖2001 - 2015年期间的数据,每月频率为肯尼亚的四个干旱北部肯尼亚县的模型训练,2016-2017的数据用作模型测试的样本数据。该研究采用了模型空间搜索方法,以获得最预测的人工神经网络(ANN)模型,而不是传统的贪婪搜索方法,该方法是基于每个模型构建步骤的最佳变量选择。使用一般添加剂模型(GAM)技术与一组假设一起减少了初始大型模型空间。即使我们建立了总共102种GAM模型,只有20个R2≥0.7,并且与预测变量的滞后模型一起进行了ANN建模过程。 ANN过程本身使用自动将训练数据分为10个子示例的Brute-Force方法,在这些样本中构建ANN模型,并使用多个度量来评估其性能。结果表明,与较长的时间滞后为2和3个月,变量为1个月滞后的优越性。最好的ANN模型在使用除样本数据外,在实际和预测的植被条件下记录了0.78的R2。作为分类器的分类器,最好的ANN模型具有67%的适度精度,接收器操作特性曲线(AUROC)为89.99%。

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