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Challenges of modeling depth-integrated marine primary productivity over multiple decades: A case study at BATS and HOT

机译:数十年来模拟深度综合海洋初级生产力的挑战:BATS和HOT的案例研究

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The performance of 36 models (22 ocean color models and 14 biogeochemical ocean circulation models (BOGCMs)) that estimate depth-integrated marine net primary productivity (NPP) was assessed by comparing their output to in situ ~(14)C data at the Bermuda Atlantic Time series Study (BATS) and the Hawaii Ocean Time series (HOT) over nearly two decades. Specifically, skill was assessed based on the models' ability to estimate the observed mean, variability, and trends of NPP. At both sites, more than 90% of the models underestimated mean NPP, with the average bias of the BOGCMs being nearly twice that of the ocean color models. However, the difference in overall skill between the best BOGCM and the best ocean color model at each site was not significant. Between 1989 and 2007, in situ NPP at BATS and HOT increased by an average of nearly 2% per year and was positively correlated to the North Pacific Gyre Oscillation index. The majority of ocean color models produced in situ NPP trends that were closer to the observed trends when chlorophyll-a was derived from high-performance liquid chromatography (HPLC), rather than fluorometric or SeaWiFS data. However, this was a function of time such that average trend magnitude was more accurately estimated over longer time periods. Among BOGCMs, only two individual models successfully produced an increasing NPP trend (one model at each site). We caution against the use of models to assess multiannual changes in NPP over short time periods. Ocean color model estimates of NPP trends could improve if more high quality HPLC chlorophyll-a time series were available.
机译:通过将其输出与百慕大的原位〜(14)C数据进行比较,评估了估计深度综合海洋净初级生产力(NPP)的36个模型(22个海洋颜色模型和14个生物地球化学海洋环流模型(BOGCM))的性能。近二十年来的大西洋时间序列研究(BATS)和夏威夷海洋时间序列(HOT)。具体而言,根据模型评估观测到的均值,变异性和NPP趋势的能力评估技能。在这两个地点,超过90%的模型低估了平均NPP,BOGCM的平均偏差几乎是海洋颜色模型的两倍。但是,每个站点上最佳BOGCM和最佳海洋颜色模型之间的总体技能差异并不显着。在1989年至2007年之间,BATS和HOT的原位NPP平均每年增长近2%,并且与北太平洋回旋振荡指数呈正相关。大多数海洋颜色模型产生的原位NPP趋势与从高效液相色谱法(HPLC)而非荧光或SeaWiFS数据推导出的叶绿素-a时更接近观察到的趋势。但是,这是时间的函数,因此可以在更长的时间段内更准确地估计平均趋势量。在BOGCM中,只有两个单独的模型成功地产生了上升的NPP趋势(每个站点一个模型)。我们告诫不要使用模型来评估短期内NPP的多年变化。如果可以使用更多高质量的HPLC叶绿素-a时间序列,则海洋颜色模型对NPP趋势的估计可能会改善。

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