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首页> 外文期刊>Journal of hydrometeorology >Short-Term Basin-Scale Streamflow Forecasting Using Large-Scale Coupled Atmospheric-Oceanic Circulation and Local Outgoing Longwave Radiation
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Short-Term Basin-Scale Streamflow Forecasting Using Large-Scale Coupled Atmospheric-Oceanic Circulation and Local Outgoing Longwave Radiation

机译:利用大尺度大气-海洋环流和局部外发长波辐射的流域短期流预报

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摘要

This paper investigates the use of large-scale circulation patterns (El Nino-Southern Oscillation and the equatorial Indian Ocean Oscillation), local outgoing longwave radiation (OLR), and previous streamflow information for short-term (weekly) basin-scale streamflow forecasting. To model the complex relationship between these inputs and basin-scale streamflow, an artificial intelligence approach-genetic programming (GP)-has been employed. Research findings of this study indicate that the use of large-scale atmospheric circulation information and streamflow at previous time steps, along with OLR as a local meteorological input, potentially improves the performance of weekly basin-scale streamflow prediction. The genetic programming approach is found to capture the complex relationship between the weekly streamflow and various inputs. Different input variable combinations were explored to come up with the best one. The observed and predicted streamflows were found to correspond well with each other with a coefficient of determination of 0.653 (correlation coefficient r = 0.808), which may appear attractive for such a complex system.
机译:本文研究了大型环流模式(厄尔尼诺-南方涛动和赤道印度洋涛动),局部外向长波辐射(OLR)和以前的流量信息在短期(每周)流域规模流量预报中的用途。为了模拟这些输入和流域规模流之间的复杂关系,已采用了一种人工智能方法-遗传规划(GP)。这项研究的研究结果表明,在以前的时间步骤中使用大规模大气环流信息和流量,以及将OLR用作本地气象输入,可能会提高每周流域规模流量预测的性能。发现了遗传程序设计方法来捕获每周流量与各种输入之间的复杂关系。探索了不同的输入变量组合以得出最佳组合。发现观测和预测的流量相互之间具有很好的对应关系,确定系数为0.653(相关系数r = 0.808),这对于这样一个复杂的系统可能很有吸引力。

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