Modeling the biogeochemical cycle of dimethylsulfide in the upper ocean: a review

Albert Gabric , Watson Gregg , Ray Najjar , David Erickson , Patricia Matrai
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引用次数: 50

Abstract

An important focus of climate-change research is the understanding of the role of ecosystems in shaping climate. Central to this aim is the identification of any feedbacks by which ecosystems may moderate anthropogenic forcing of climate. One possible ecosystem feedback involves the marine food-web and the biogenic sulfur compound dimethylsulfide (DMS). DMS is produced by algae containing the precursor compound dimethylsulfoniopropionate (DMSP), and once ventilated to the atmosphere can be transformed to sulfate aerosols and global climate. It was hypothesized that an increase in biogenically produced sulfate aerosols leading to formation of more cloud condensation nuclei (CCN), and brighter clouds, could stabilize the climate against perturbations due to greenhouse warming.

Although a large database of DMS seawater measurements exist, attempts to statistically correlate DMS concentrations with other biological parameters, such as chlorophyll a or nutrients, have failed. This underscores the complex and dynamic nature of the DMS cycle, and means that simple regression-type predictive models are unlikely to be useful, except at local scales. Regional-scale simulations of the DMS cycle have involved multi-parameter, deterministic formulations based on ecological food-web approaches but with the added challenge of properly simulating the behavior of coupled sulfur and nitrogen (or carbon) cycles.

Here we review the current DMS modeling approaches, outline the parameterization of key processes, and identify areas where our knowledge is poor and improvements should be made. Model skill can only be assessed against detailed regional and global data sets, however data have not always been collected in a form suitable for model parameter estimation or model calibration/validation. DMS time series, which are essential for calibration of seasonal or multi-annual simulations, are rare. We discuss the minimum requirements for a successful future integration of observational and theoretical efforts.

模拟海洋上层二甲基硫化物的生物地球化学循环:综述
气候变化研究的一个重要焦点是理解生态系统在塑造气候中的作用。这一目标的核心是确定生态系统可能通过何种反馈来调节气候的人为强迫。一种可能的生态系统反馈涉及海洋食物网和生物硫化合物二甲基硫化物(DMS)。DMS是由含有前体化合物二甲基磺酰丙酸(DMSP)的藻类产生的,一旦通风到大气中,就可以转化为硫酸盐气溶胶和全球气候。据推测,生物产生的硫酸盐气溶胶的增加导致形成更多的云凝结核(CCN)和更亮的云,可以稳定气候,免受温室效应变暖造成的扰动。尽管存在一个DMS海水测量的大型数据库,但试图将DMS浓度与其他生物参数(如叶绿素a或营养物质)进行统计关联的尝试都失败了。这强调了DMS周期的复杂性和动态性,并意味着简单的回归型预测模型不太可能有用,除非在局部尺度上。DMS循环的区域尺度模拟涉及基于生态食物网方法的多参数、确定性公式,但还面临着适当模拟硫和氮(或碳)耦合循环行为的额外挑战。在这里,我们回顾了当前的DMS建模方法,概述了关键过程的参数化,并确定了我们的知识不足和应该改进的领域。模型技能只能根据详细的区域和全球数据集进行评估,然而数据并不总是以适合模型参数估计或模型校准/验证的形式收集。DMS时间序列对季节性或多年模拟的校准至关重要,但很少。我们讨论了未来成功整合观测和理论工作的最低要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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