首页> 外文期刊>Revista Brasileira de Meteorologia >STREAMFLOW FORECASTING FOR THE DAM ORóS/CE FROM HYDROMETEOROLOGICAL DATA USING PERCEPTRONS
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STREAMFLOW FORECASTING FOR THE DAM ORóS/CE FROM HYDROMETEOROLOGICAL DATA USING PERCEPTRONS

机译:使用感知器从水文气象数据中进行DAM OROS / CE的流预测

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The modeling of seasonal and interannual streamflow forecasting at northeastern Brazil represents a great relevance problem to the use and management of water resources; which demands greater prediction ability models. This is still a difficult task to solve due to the seasonal and interannual climate variability at the semi-arid region. This work presents the artificial neural networks (ANN) as an alternative for modeling the seasonal to interannual climate prediction,. For the development of this task the hydropraphic Oros weir Basin was chosen due to its importance as water resources in the State of Ceara. According to recent studies, the temperatures of the North Atlantic, South Atlantic and equatorial Pacific can be satisfactorily as predictors for the Northeast climate. The proposed model predicts, in July, the next rainy season (January to June) river flow regime. This time frame is of great relevance for the allocation of water resources. Among the studied models, those using the average temperature anomalies of April, May and June preceding the predicted year as input data showed the highest Nash-Suttcliffe efficiency (0.80).
机译:巴西东北部的季节和年际流量预报模型代表了与水资源利用和管理密切相关的问题。这需要更大的预测能力模型。由于半干旱地区的季节和年际气候变化,这仍然是一项艰巨的任务。这项工作提出了人工神经网络(ANN),作为模拟季节到年际气候预测的替代方法。为了开展这项任务,选择了水成因的奥罗斯堰塞盆地,因为它在塞阿拉州作为水资源十分重要。根据最近的研究,北大西洋,南大西洋和赤道太平洋的温度可以令人满意地预测东北气候。拟议的模型将在7月预测下一个雨季(1月至6月)的河流流量状态。这个时间范围与水资源分配有很大关系。在研究的模型中,那些使用预测年份之前的四月,五月和六月的平均温度异常作为输入数据的模型显示出最高的纳什-苏特克利夫效率(0.80)。

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