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Modeling grassland spring onset across the Western United States using climate variables and MODIS-derived phenology metrics

机译:使用气候变量和MODIS衍生的物候指标对美国西部的草原春季发作进行建模

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Vegetation phenology strongly controls photosynthetic activity and ecosystem function and is essential for monitoring the response of vegetation to climate change and variability. Terrestrial ecosystem models require robust phenology models to understand and simulate the relationship between ecosystems and a changing climate. While current phenology models are able to capture inter-annual variation in the timing of vegetation spring onset, their spatiotemporal performances are not well understood. Using green-up dates derived from MODIS, we test 9 phenological models that predict the timing of grassland spring onset via commonly available climatological variables. Model evaluation using satellite observations suggests that Modified Growing-Degree Day (MGDD) models and Accumulated Growing Season Index (AGSI) models achieve reasonable accuracy (RMSE < 20 days) after model calibration. Inclusion of a photoperiod trigger and varied critical forcing thresholds in the temperature-based phenology model improves model applicability at a regional scale. In addition, we observe that AGSI models outperform MGDD models by capturing inter-annual phenology variation in large semi-arid areas, likely due to the explicit consideration of water availability. Further validation based on flux tower sites shows good agreement between the modeled timing of spring onset and references derived from satellite observations and in-situ measurements. Our results confirm recent studies and indicate that there is a need to calibrate current phenology models to predict grassland spring onsets accurately across space and time. We demonstrate the feasibility of combining satellite observations and climatic datasets to develop and refine phenology models for characterizing the spatiotemporal patterns of grassland green-up variations. (C) 2015 Elsevier Inc. All rights reserved.
机译:植被物候学强烈控制着光合作用和生态系统功能,对于监测植被对气候变化和多变性的反应至关重要。陆地生态系统模型需要强大的物候模型来理解和模拟生态系统与气候变化之间的关系。尽管当前的物候模型能够捕捉到植被春季发作时的年际变化,但人们对它们的时空表现却知之甚少。使用来自MODIS的绿色日期,我们测试了9种物候模型,这些模型通过常用的气候变量来预测草原春季发作的时间。使用卫星观测值进行的模型评估表明,修正的生长度日(MGDD)模型和累积的生长季节指数(AGSI)模型在模型校准后可达到合理的精度(RMSE <20天)。在基于温度的物候模型中包含光周期触发因素和变化的临界强迫阈值可改善模型在区域范围内的适用性。此外,我们观察到AGSI模型可以捕获大型半干旱地区的年际物候变化,从而胜过MGDD模型,这可能是由于明确考虑了水的可利用性。基于磁通量塔位置的进一步验证显示,模拟的弹簧开始时间与从卫星观测和现场测量获得的参考资料之间具有良好的一致性。我们的结果证实了最近的研究,并表明需要校准当前的物候模型以准确预测跨时空分布的草原春季发作。我们证明了结合卫星观测资料和气候数据集来开发和完善物候模型以表征草地绿化变化的时空模式的可行性。 (C)2015 Elsevier Inc.保留所有权利。

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