Hui Zou , Lucy Marshall , Ashish Sharma , Jie Jian , Clare Stephens , Philippa Higgins
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引用次数: 0
摘要
动态模拟叶面积指数有助于模拟生态-水文和气候过程之间的反馈。澳大利亚面临的特殊挑战是干旱和半干旱生态系统的普遍存在,在这些生态系统中,水的供应对植被生产力起着至关重要的作用。为了了解现有的 LAI 模型能否捕捉到气候不断变化下的植物动态,我们在澳大利亚的不同气候区测试了两种相互竞争的模型:一种是概念性生态水文模型,该模型应用水分利用效率术语将 LAI 与水分吸收联系起来;另一种是深度学习方法。深度学习的初始虚拟集水区实验表明,它只使用了潜在蒸散量的信息。对于未来气候,概念模型捕捉到了 LAI 的负趋势和不断增加的差异,考虑到预测的降雨量变化,这是合理的,而深度学习却捕捉不到。我们的研究展示了一个 "错误原因的正确答案 "的例子,以及将水碳耦合知识纳入适当情景的重要性。
Modelling vegetation dynamics for future climates in Australian catchments: Comparison of a conceptual eco-hydrological modelling approach with a deep learning alternative
Dynamically simulating leaf area index assists in modelling the feedbacks between eco-hydrologic and climatic processes. The particular challenge for Australia is the prevalence of arid and semi-arid ecosystems where water availability plays a crucial role in vegetation productivity. To understand whether existing LAI models can capture plant dynamics under changing climates, we tested two competing models across Australia's different climate zones: a conceptual eco-hydrologic model that applies water use efficiency term to relate LAI to water uptake, and a deep learning approach. An initial virtual catchment experiment with deep learning showed that it only uses information from potential evapotranspiration. For future climates, the conceptual model captured a negative trend and increasing variance in LAI, which is plausible given projected rainfall changes, while deep learning did not. Our study demonstrated an example of ‘right answer for the wrong reasons’, and the importance of incorporating knowledge of water-carbon coupling for appropriate scenarios.
期刊介绍:
Environmental Modelling & Software publishes contributions, in the form of research articles, reviews and short communications, on recent advances in environmental modelling and/or software. The aim is to improve our capacity to represent, understand, predict or manage the behaviour of environmental systems at all practical scales, and to communicate those improvements to a wide scientific and professional audience.