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Stream hydrological and ecological responses to climate change assessed with an artificial neural network

机译:用人工神经网络评估河流对气候变化的水文和生态响应

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An artificial neural network (ANN) was used to evaluate the hydrological responses of two streams in the northeastern U.S. having different hydroclimatologies (rainfall and snow+rain) to hypothetical changes in precipitation and thermal regimes associated with climate change. For each stream, historic precipitation and temperature data were used as input to an ANN, which generated a synthetic daily hydrograph with high goodness-of-fit (r~2 > 0.80). Four scenarios of climate change were used to evaluate stream responses to climate change: +25% precipitation, -25% precipitation, 2 x the coefficient of variation in precipitation regime, and + 3℃ average temperature. Responses were expressed in hydrological terms of ecological relevance, including flow variability, baseflow conditions, and frequency and predictability of floods. Increased average precipitation induced elevated runoff and more frequent high flow events, while decreased precipitation had the opposite effect. Elevated temperature reduced average runoff. Doubled precipitation variability had a large effect on many variables, including average runoff, variability of flow, flooding frequency, and baseflow stability. In general, the rainfall-dominated stream exhibited greater relative response to climate change scenarios than did the snowmelt stream.
机译:人工神经网络(ANN)用于评估美国东北部具有不同水文气候(降雨和降雪+雨水)的两条溪流对与气候变化有关的降水和热态假设变化的水文响应。对于每条河流,将历史降水和温度数据用作ANN的输入,从而生成具有高拟合优度(r〜2> 0.80)的合成每日水位图。使用四种气候变化情景来评估河流对气候变化的响应:+ 25%的降水,-25%的降水,2倍降水制度的变化系数和+ 3℃的平均温度。响应以与生态相关的水文术语表达,包括流量可变性,基本流量条件以及洪水的频率和可预测性。平均降水增加引起径流增加,高流量事件更为频繁,而降水减少则产生相反的作用。升高温度降低了平均径流量。降水变异性加倍对许多变量有很大影响,包括平均径流量,流量变异性,洪水频率和基流稳定性。通常,与融雪流相比,降雨为主的流对气候变化情景的相对响应更大。

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