环境科学
生态系统
微观世界
水生生态系统
湖泊生态系统
沉积物
有机质
生态学
环境化学
海洋学
地质学
化学
生物
古生物学
作者
Andrew J. Tanentzap,Erik J. S. Emilson,Cyndy M. Desjardins,Chloé Orland,Kurt M. Yakimovich,Randy W. Dirszowsky,Nadia Mykytczuk,Nathan Basiliko,John M. Gunn
标识
DOI:10.4081/jlimnol.2017.1588
摘要
<p>Nearshore sediments have a major influence over the functioning of aquatic ecosystems, but predicting their response to future environmental change has proven difficult. Previous manipulative experiments have faced challenges controlling environmental conditions, replicating sediment mixing dynamics, and extrapolating across spatial scales. Here we describe a new approach to manipulate lake sediments that overcomes previous concerns about reproducibility and environment controls, whilst also bridging the gap between smaller microcosm or litterbag experiments and whole-ecosystem manipulations. Our approach involves submerging moderate-sized (~15 L) artificial substrates that have been standardised to mimic natural sediments within the littoral zones of lakes. We show that this approach can accurately mirror the absolute dissolved organic carbon concentrations and pH of pore water, and to a lesser degree inorganic carbon concentrations, from natural lake sediments with similar organic matter profiles. On a relative basis, all measured variables had similar temporal dynamics between artificial and adjacent natural sediments. Late-summer zooplankton biomass also did not differ between natural and artificial sediments. By offering a more realistic way to manipulate freshwater sediments than previously possible, our approach can improve predictions of lake ecosystems in a changing world.<br /><br /><img src="/public/site/images/ttaccini/88x31.png" alt="" /> <br />This work is licensed under a <a href="https://creativecommons.org/licenses/by/4.0/" target="_blank">Creative Commons Attribution 4.0 International</a>.</p>
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