Broad‐scale climate patterns combined with local flow and turbidity disturbances structure the seasonality of gross primary production in an aridland river

IF 3.7 1区 地球科学 Q1 LIMNOLOGY
Betsy M. Summers, Robert O. Hall, Justin K. Reale, Eric Joseph, Mark C. Stone, David J. Van Horn
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Abstract

Both local and global climate phenomena shape the hydrologic regimes of watersheds. For aridland rivers in the southwestern United States, peak flows occur during two distinct periods: spring snowmelt and summer monsoons. Although discharge (Q) is a primary driver of variation in the production and consumption of instream organic matter, or stream metabolism, few connection have been made regarding how climate impacts ecosystem processes through changes in flow and related disturbances. We considered how variation in disturbance variables, specifically Q and associated changes in turbidity, affected gross primary production during spring snowmelt and summer monsoons in the Rio Grande. Nine years of continuous environmental data (Q, turbidity, light) and climate indices (i.e., El Niño‐Southern Oscillation and Monsoon Index) were used to explain the variation in gross primary production estimates. We found that relationships were sensitive to the timescale of disturbance: at the seasonal scale, high snowmelt Q decreased spring mean gross primary production, while at the daily scale, high turbidity, and to a lesser extent Q, reduced gross primary production during summer. Also, mean Q and turbidity disturbances were uncoupled in spring and inversely related in summer. We conclude that long‐term datasets are essential to uncover emergent relationships between broad‐scale climate patterns and ecosystem processes and are necessary to better understand how hydroclimatic variability drives ecosystem processes at varying time scales in rivers across Earth.
大尺度气候模式与局部流量和浊度扰动相结合,构成了干旱区河流总初级生产的季节性
当地和全球气候现象都影响着流域的水文状况。对于美国西南部的旱地河流来说,流量高峰出现在两个不同的时期:春季融雪期和夏季季风期。虽然流量(Q)是河流有机物生产和消耗或河流代谢变化的主要驱动因素,但关于气候如何通过流量变化和相关干扰影响生态系统过程的联系很少。我们考虑了扰动变量的变化,特别是Q和相关的浊度变化,如何影响里约热内卢Grande春季融雪和夏季季风期间的总初级生产。9年的连续环境数据(Q、浊度、光照)和气候指数(即El Niño‐南方涛动和季风指数)被用来解释总初级生产估算的变化。在季节尺度上,高融雪量Q降低了春季平均初级生产总值,而在日尺度上,高浊度和Q在较小程度上降低了夏季初级生产总值。平均Q值与浊度扰动在春季不耦合,在夏季呈负相关。我们得出的结论是,长期数据集对于揭示大尺度气候模式和生态系统过程之间的新兴关系至关重要,并且对于更好地理解水文气候变率如何在不同时间尺度上驱动地球河流的生态系统过程是必要的。
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来源期刊
Limnology and Oceanography
Limnology and Oceanography 地学-海洋学
CiteScore
8.80
自引率
6.70%
发文量
254
审稿时长
3 months
期刊介绍: Limnology and Oceanography (L&O; print ISSN 0024-3590, online ISSN 1939-5590) publishes original articles, including scholarly reviews, about all aspects of limnology and oceanography. The journal''s unifying theme is the understanding of aquatic systems. Submissions are judged on the originality of their data, interpretations, and ideas, and on the degree to which they can be generalized beyond the particular aquatic system examined. Laboratory and modeling studies must demonstrate relevance to field environments; typically this means that they are bolstered by substantial "real-world" data. Few purely theoretical or purely empirical papers are accepted for review.
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