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Effects of bias in solar radiation inputs on ecosystem model performance

机译:太阳辐射输入偏差对生态系统模型性能的影响

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Solar radiation inputs drive many processes in terrestrial ecosystem models. The processes (e.g. photosynthesis) account for most of the fluxes of carbon and water cycling in the models. It is thus clear that errors in solar radiation inputs cause key model outputs to deviate from observations, parameters to become suboptimal, and model predictions to loose confidence. However, errors in solar radiation inputs are unavoidable for most model predictions since models are often run with observations with spatial or / and temporal gaps. As modeled processes are non-linear and interacting with each other, it is unclear how much confidence most model predictions merits without examining the effects of those errors on the model performance. In this study, we examined the effects using a terrestrial ecosystem model, DayCent. DayCent was parameterized for annual grassland in California with six years of daily eddy covariance data totaling 15,337 data points. Using observed solar radiation values, we introduced bias at four different levels. We then simultaneously calibrated 48 DayCent parameters through inverse modeling using the PEST parameter estimation software. The bias in solar radiation inputs affected the calibration only slightly and preserved model performance. Bias slightly worsened simulations of water flux, but did not affect simulations of CO_2 fluxes. This arose from distinct parameter set for each bias level, and the parameter sets were surprisingly unconstrained by the extensive observations. We conclude that ecosystem models perform relatively well even with substantial bias in solar radiation inputs. However, model parameters and predictions warrant skepticism because model parameters can accommodate biases in input data despite extensive observations.
机译:太阳辐射输入驱动了陆地生态系统模型中的许多过程。在模型中,过程(例如光合作用)占了碳和水循环的大部分通量。因此很明显,太阳辐射输入中的错误会导致关键模型输出偏离观测值,参数变得次优,而模型预测则失去可信度。但是,对于大多数模型预测而言,太阳辐射输入中的误差是不可避免的,因为模型通常是在具有空间或/和时间间隙的观察下运行的。由于建模过程是非线性的并且相互影响,因此在不检查那些误差对模型性能的影响的情况下,尚不清楚大多数模型预测应具有多少置信度。在这项研究中,我们使用陆地生态系统模型DayCent检验了影响。将DayCent的参数设置为加利福尼亚州的一年生草地,它具有六年的每日涡度协方差数据,总计15337个数据点。利用观测到的太阳辐射值,我们引入了四个不同级别的偏差。然后,我们使用PEST参数估算软件通过逆向建模同时校准了48个DayCent参数。太阳辐射输入的偏差仅轻微影响校准,并保持了模型性能。偏差使水通量的模拟略有恶化,但并未影响CO_2通量的模拟。这是由于每个偏置水平都有不同的参数集而引起的,并且令人惊讶的是,这些参数集并未受到广泛观察的约束。我们得出的结论是,即使在太阳辐射输入有很大偏差的情况下,生态系统模型也表现相对较好。但是,模型参数和预测值得怀疑,因为尽管进行了广泛的观察,模型参数仍可以容纳输入数据中的偏差。

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