旧金山河口X2等盐经验模型调查

Q3 Agricultural and Biological Sciences
J. Rath, P. Hutton, E. Ateljevich, Sujoy B. Roy
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引用次数: 3

摘要

这项工作调查了几个经验模型的性能,所有这些模型都重新校准为一个共同的数据集,这些模型是在过去25年中开发的,用于联系旧金山河口(河口)的淡水流量和盐度。为了满足城市、农业和生态系统的有益用途,河口的盐度状况在春季和某些秋季进行管理,通过控制千分之二的底部盐度等盐值位置(称为X2)来实现生态系统目标。我们测试了五个经验模型的准确性、平均值和瞬态行为。在本次调查中,我们包括了第六个模型,使用机器学习框架和除流出以外的变量来比较拟合技能,但没有对其进行适用于其他五个经验模型的全套测试。模型的性能随水文、年份和季节而变化,并且在某些情况下由于数学公式而表现出独特的局限性。然而,没有发现单一的模型配方在广泛的测试和应用中始终如一地优越。一项测试表明,当重新校准到均匀扰动输入时间序列时,模型表现同样良好。因此,虽然这些模型可用于识别异常或季节性偏差(后者是伴随论文的主题),但它们作为逆模型从盐度观测推断河口淡水流出量,预计不会提高现有流出量估计的绝对准确性。这项调查表明,对于跨越长期水文记录的分析,综合方法——而不是单独使用任何单个模型——可能更适合利用单个模型的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Survey of X2 Isohaline Empirical Models for the San Francisco Estuary
This work surveys the performance of several empirical models, all recalibrated to a common data set, that were developed over the past 25 years to relate freshwater flow and salinity in the San Francisco Estuary (estuary). The estuary’s salinity regime—broadly regulated to meet urban, agricultural, and ecosystem beneficial uses—is managed in spring and certain fall months to meet ecosystem objectives by controlling the 2 parts per thousand bottom salinity isohaline position (referred to as X2). We tested five empirical models for accuracy, mean, and transient behavior. We included a sixth model, employing a machine learning framework and variables other than outflow, in this survey to compare fitting skill, but did not subject it to the full suite of tests applied to the other five empirical models. Model performance was observed to vary with hydrology, year, and season, and in some cases exhibited unique limitations as a result of mathematical formulation. However, no single model formulation was found to be consistently superior across a wide range of tests and applications. One test revealed that the models performed equally well when recalibrated to a uniformly perturbed input time-series. Thus, while the models may be used to identify anomalies or seasonal biases (the latter being the subject of a companion paper), their use as inverse models to infer freshwater outflow to the estuary from salinity observations is not expected to improve upon the absolute accuracy of existing outflow estimates. This survey suggests that, for analyses that span a long hydrologic record, an ensemble approach—rather than the use of any individual model on its own—may be preferable to exploit the strengths of individual models.
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来源期刊
San Francisco Estuary and Watershed Science
San Francisco Estuary and Watershed Science Environmental Science-Water Science and Technology
CiteScore
2.90
自引率
0.00%
发文量
24
审稿时长
24 weeks
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