Drought Estimation-and-Projection Using Standardized Supply-Demand-Water Index and Artificial Neural Networks for Upper Tana River Basin in Kenya

IF 0.4 Q4 GEOGRAPHY
R. Wambua
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引用次数: 4

Abstract

Drought occurrence, frequency and severity in the Upper Tana River basin (UTaRB) have critically affected water resource systems. To minimize the undesirable effects of drought, there is a need to quantify and project the drought trend. In this research, the drought was estimated and projected using Standardized Supply-Demand-Water Index (SSDI) and an Artificial Neural Network (ANN). Field meteorological data was used in which interpolated was conducted using kriging interpolation technique within ArcGIS environment. The results indicate those moderate, severe and extreme droughts at varying magnitudes as detected by the SSDI during 1972-2010 at different meteorological stations, with SSDI values equal or less than -2.0. In a spatial domain, the areas in south-eastern parts of the UTaRB exhibit the highest drought severity. Time-series forecasts and projection show that the best networks for SSDI exhibit respective ANNs architecture. The projected extreme droughts (values less than -2.00) and abundant water availability (SSDI values ≥ 2.00) were estimated using Recursive Multi-Step Neural Networks (RMSNN). The findings can be integrated into planning the drought-mitigation-adaptation and early-warning systems in the UTaRB.
基于标准化供需水指数和人工神经网络的肯尼亚塔纳河上游流域干旱估算与预测
上塔纳河流域(UTaRB)干旱的发生、频率和严重程度严重影响了水资源系统。为了尽量减少干旱的不良影响,有必要对干旱趋势进行量化和预测。本研究采用标准化供需水指数(SSDI)和人工神经网络(ANN)对干旱进行了估计和预测。利用野外气象资料,在ArcGIS环境下采用克里格插值技术进行插值。结果表明:1972—2010年,不同气象站的SSDI探测到的不同量级的中度、重度和极端干旱,SSDI值均小于-2.0;在空间域上,UTaRB东南部地区干旱严重程度最高。时间序列预测和预测表明,最适合SSDI的网络具有各自的ann结构。利用递归多步神经网络(RMSNN)预测极端干旱(小于-2.00)和丰水利用率(SSDI值≥2.00)。研究结果可以纳入规划UTaRB的干旱缓解-适应和预警系统。
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来源期刊
CiteScore
1.20
自引率
0.00%
发文量
22
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