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Introducing an operational method to forecast long-term regional drought based on the application of artificial intelligence capabilities

机译:介绍一种基于人工智能功能的区域长期干旱预报方法

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An effective forecast of the drought definitely gives lots of advantages in regard to the management of water resources being used in agriculture, industry, and households consumption. To introduce such a model applying simple data inputs, in this study a regional drought forecast method on the basis of artificial intelligence capabilities (artificial neural networks) and Standardized Precipitation Index (SPI in 3, 6, 9, 12, 18, and 24 monthly series) has been presented in Fars Province of Iran. The precipitation data of 41 rain gauge stations were applied for computing SPI values. Besides, weather signals including Multivariate ENSO Index (MEI), North Atlantic Oscillation (NAO), Southern Oscillation Index (SOI), NINO1+2, anomaly NINO1+2, NINO3, anomaly NINO3, NINO4, anomaly NINO4, NINO3.4, and anomaly NINO3.4 were also used as the predictor variables for SPI time series forecast the next 12 months. Frequent testing and validating steps were considered to obtain the best artificial neural networks (ANNs) models. The forecasted values were mapped in verification sector then they were compared with the observed maps at the same dates. Results showed considerable spatial and temporal relationships even among the maps of different SPI time series. Also, the first 6 months forecasted maps showed an average of 73 % agreements with the observed ones. The most important finding and the strong point of this study was the fact that although drought forecast in each station and time series was completely independent, the relationships between spatial and temporal predictions remained. This strong point mainly referred to frequent testing and validating steps in order to explore the best drought forecast models from plenty of produced ANNs models. Finally, wherever the precipitation data are available, the practical application of the presented method is possible.
机译:关于干旱的有效预测在农业,工业和家庭消费中使用的水资源管理方面肯定具有很多优势。为了引入使用简单数据输入的这种模型,本研究基于人工智能能力(人工神经网络)和标准化降水指数(SPI分别在每月3、6、9、12、18和24的基础上,建立区域干旱预报方法)系列)已在伊朗法尔斯省展出。将41个雨量计站的降水数据用于计算SPI值。此外,天气信号包括多元ENSO指数(MEI),北大西洋涛动(NAO),南方涛动指数(SOI),NINO1 + 2,异常NINO1 + 2,NINO3,异常NINO3,NINO4,异常NINO4,NINO3.4和NINO3.4异常也用作未来12个月SPI时间序列预测的预测变量。考虑了频繁的测试和验证步骤,以获得最佳的人工神经网络(ANN)模型。将预测值映射到验证部门,然后将它们与相同日期的观测图进行比较。结果显示,即使在不同SPI时间序列的地图之间,时间和空间也具有相当大的关系。另外,前6个月的预测地图显示与观察到的地图平均达成73%的协议。这项研究的最重要发现和优势是,尽管每个站和每个时间序列的干旱预报是完全独立的,但时空预报之间的关系仍然存在。该优势主要是指频繁测试和验证步骤,以便从大量已生产的人工神经网络模型中探索最佳干旱预测模型。最后,只要有降水量数据,该方法的实际应用都是可能的。

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