基于地表和地下参数的澳大利亚昆士兰热带地区即将来临的干旱情景预测

B. Datta, D. Roy, J. Kelley, B. Stevens
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引用次数: 0

摘要

干旱发生在世界各地的气候区域,给全球经济造成了巨大损失。对干旱事件的合理准确预测有助于水资源管理者正确规划有限水资源的利用和向不同部门分配可用水,避免灾难性后果。因此,创建一种简单的方法来预测干旱条件,并使用易于获取的参数是非常可取的。本研究提出并评估了新开发的准确预测模型,该模型利用了各种水文、气象和地质水文参数,并使用了具有各种预测提前期的人工神经网络(ANN)模型。本研究开发了多种预测模型来预测干旱指数,如提前6个月的标准降水指数和提前3个月的土壤湿度指数。此外,已经开发了具有近似地表和地下水蓄水位(包括罗斯河大坝水位)能力的预测模型,预测精度相对较高,提前时间为3个月。将从这些模型中获得的结果与当前值进行了比较,表明基于人工神经网络的方法可以作为一种简单有效的预测模型,用于预测典型研究地区的干旱情景的不同方面,如北昆士兰的汤斯维尔,澳大利亚最近近六年(2014年至2019年初)遭受了严重的干旱。
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Prediction of Impending Drought Scenarios Based on Surface and Subsurface Parameters in a Selected Region of Tropical Queensland, Australia
Droughts occur in all climatic regions around the world costing a large expense to global economies. Reasonably accurate prediction of drought events helps water managers proper planning for utilization of limited water resources and distribution of available waters to different sectors and avoid catastrophic consequences. Therefore, a means to create a simplistic approach for forecasting drought conditions with easily accessible parameters is highly desirable. This study proposes and evaluates newly developed accurate prediction models utilizing various hydrologic, meteorological, and geohydrology parameters along with the use of Artificial Neural Network (ANN) models with various forecast lead times. The present study develops a multitude of forecasting models to predict drought indices such as the Standard Precipitation Index with a lead-time of up to 6 months, and the Soil Moisture Index with a lead-time of 3 months. Furthermore, prediction models with the capability of approximating surface and groundwater storage levels including the Ross River Dam level have been developed with relatively high accuracy with a lead-time of 3 months. The results obtained from these models were compared to current values, revealing that ANN based approach can be used as a simple and effective predictive model that can be utilized for prediction of different aspects of drought scenarios in a typical study area like Townsville, North Queensland, Australia which had suffered severe recent drought conditions for almost six recent years (2014 to early 2019).
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