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The Plumbing of Land Surface Models: Is Poor Performance a Result of Methodology or Data Quality?

机译:大量的地面模型:性能低下是方法论还是数据质量的结果?

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摘要

The PALS Land sUrface Model Benchmarking Evaluation pRoject (PLUMBER) illustrated the value of prescribing a priori performance targets in model intercomparisons. It showed that the performance of turbulent energy flux predictions from different land surface models, at a broad range of flux tower sites using common evaluation metrics, was on average worse than relatively simple empirical models. For sensible heat fluxes, all land surface models were outperformed by a linear regression against downward shortwave radiation. For latent heat flux, all land surface models were outperformed by a regression against downward shortwave, surface air temperature and relative humidity. These results are explored here in greater detail and possible causes are investigated. We examine whether particular metrics or sites unduly influence the collated results, whether results change according to time-scale aggregation and whether a lack of energy conservation in fluxtower data gives the empirical models an unfair advantage in the intercomparison. We demonstrate that energy conservation in the observational data is not responsible for these results. We also show that the partitioning between sensible and latent heat fluxes in LSMs, rather than the calculation of available energy, is the cause of the original findings. Finally, we present evidence suggesting that the nature of this partitioning problem is likely shared among all contributing LSMs. While we do not find a single candidate explanation forwhy land surface models perform poorly relative to empirical benchmarks in PLUMBER, we do exclude multiple possible explanations and provide guidance on where future research should focus.
机译:PALS土地表面模型基准评估项目(PLUMBER)说明了在模型比较中规定先验绩效目标的价值。结果表明,在不同的地表模型中,使用通用的评估指标在各种流量塔站点进行湍流能量通量预测的性能,平均而言要比相对简单的经验模型差。对于显热通量,通过对向下的短波辐射进行线性回归,所有陆地表面模型的性能均优于。对于潜热通量,通过对向下的短波,地表空气温度和相对湿度进行回归分析,所有陆地表面模型的性能均优于。这些结果将在这里进行更详细的探讨,并研究可能的原因。我们检查特定的度量标准或站点是否会不适当地影响整理的结果,结果是否会随时间尺度的聚合而变化,以及通量塔数据中缺乏节能效果是否会给经验模型在比较中带来不公平的优势。我们证明,观测数据中的节能不对这些结果负责。我们还表明,LSM中感热通量和潜热通量之间的划分,而不是可用能量的计算,是最初发现的原因。最后,我们提供证据表明该分区问题的性质很可能在所有贡献LSM之间共享。虽然我们没有找到关于为什么地表模型相对于PLUMBER中的经验基准而言效果较差的单一候选解释,但我们确实排除了多种可能的解释,并为将来的研究重点提供了指导。

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