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Combining literature-based and data-driven fuzzy models to predict brown trout ( Salmo trutta L.) spawning habitat degradation induced by climate change

机译:基于文学和数据驱动的模糊模型来预测气候变化引起的棕色鳟鱼( Salmo Trutta L.)产卵栖息地降解

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摘要

A fuzzy rule-based system combining empirical data on hydraulic preferences and literature information on temperature requirements was used to foresee the brown trout (Salmo truttaL.) spawning habitat degradation induced by climate change. The climatic scenarios for the Cabriel River (Eastern Iberian Peninsula) corresponded to two Representative Concentration Pathways (4.5 and 8.5) for the short (2011–2040) and mid (2041–2070) term horizons. The hydraulic and hydrologic modelling were undertaken with process-based numerical models (i.e., River2D?and HBV-light) while the water temperature was modelled by assembling the predictions of three machine learning techniques (M5, Multi-Adaptive Regression Splines and Support Vector Regression). The predicted rise in the water temperature will not be compensated by the more benign lower flows. Consequently, the suitable spawning habitat will be reduced between 15.4–48.7%. The entire population shall suffer the effects of climate change and will probably be extirpated from the downstream segments of the river.
机译:基于模糊的基于规则的系统与温度要求的液压偏好和文献信息相结合,用于预见气候变化引起的棕色鳟鱼(Salmo Truttal。)产卵栖息地降解。 CABRIEL河(东部伊比利亚半岛)的气候情景对应于短(2011-2040)和(2041-2070)期限视野的两种代表性浓度途径(4.5和8.5)。采用基于过程的数值模型(即River2D?和HBV-Light)进行液压和水文建模,而通过组装三种机器学习技术的预测(M5,多自适应回归曲线和支持向量回归来建模水温,而是模拟水温)。水温的预测上升将不会通过更良好的下部流量来补偿。因此,合适的产卵栖息地将减少15.4-48.7%。整个人口应遭受气候变化的影响,并可能从河流的下游部分灭绝。

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