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Does hypoxia have population-level effects on coastal fish? Musings from the virtual world

机译:低氧对沿海鱼类有种群水平的影响吗?虚拟世界的沉思

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摘要

Hypoxia is often associated with increasing nutrient loadings and has clear mortality effects on sessile organisms, but its population effects on mobile organisms in coastal environments are uncertain. The evidence for hypoxia having population level effects is laboratory experiments, many examples of localized effects in nature, a few population-level examples, fish kills, and intuition. Despite the perception by many people, none of these provide conclusive evidence of widespread population responses to hypoxia. We synthesize the results from seven ecological simulation models that examined how low dissolved oxygen (DO) affected fish at the individual, population, and community levels. These models represent a variety of species, simulate the dynamics at a range of temporal scales and spatial scales, and impose a variety of subsets of possible DO effects. Several patterns emerged from the accumulated results. First, predicted responses were large in simpler models, and small to large in more complex models. Second, while the main effects of increased hypoxia were generally small to moderate, there were instances of relatively large indirect effects and interaction effects. Indirect effects involved growth and mortality responses due to altered spatial distribution (rather than due directly to DO) and food web interactions. Interaction effects were larger responses to hypoxia when other factors were at certain levels (e.g., responses at low versus high fish densities). Interactions also occurred when the predicted responses were larger than would be expected by the sum of the separate effects. Third, accurate information on exposure and degree of avoidance of low DO were critical unknowns. Our interpretations should be viewed as suggestive rather than definitive. The patterns described were based on a collection of modeling results that were not designed to be compared to each other. A quick look at other models seems to confirm our patterns, or at minimum, does not contradict our patterns. Quantifying the effects of hypoxia on fish populations, whether large or small, is critical for effective management of coastal ecosystems and for cost-effective and efficient design of remediation actions. The potential for interaction and indirect effects complicates field study and management. Improving our predictions of the effects of hypoxia on fish populations and communities has moved from a computational issue to a biological issue. We seem to be making progress on monitoring and modeling movement behavior, but progress is slower in food web theory and empirical research and in quantifying interspecific interactions and habitat quality in terms of process rates that relate to population dynamics.
机译:缺氧通常与养分含量的增加有关,并且对无柄生物具有明显的死亡率影响,但是其对沿海环境中的流动生物的种群影响尚不确定。缺氧对种群水平有影响的证据是实验室实验,自然界中许多局部影响的例子,一些种群水平的例子,杀鱼和直觉。尽管有很多人的看法,但这些都没有提供结论性的证据表明人群普遍对缺氧反应。我们综合了七个生态模拟模型的结果,这些模型检查了低溶解氧(DO)在个体,种群和社区水平上如何影响鱼类。这些模型代表了各种各样的物种,在一系列的时间尺度和空间尺度上模拟了动力学,并施加了各种可能的DO效应子集。累积结果显示出几种模式。首先,在较简单的模型中预测的响应较大,而在较复杂的模型中则从较小到较大。其次,虽然缺氧增加的主要影响通常很小至中等,但存在间接影响和相互作用影响相对较大的情况。间接影响包括由于空间分布变化(而不是直接由于溶解氧)和食物网相互作用而引起的生长和死亡率响应。当其他因素处于一定水平时,交互作用是对缺氧的较大响应(例如,低密度和高密度鱼的响应)。当预测的响应大于单独效应之和所期望的响应时,也会发生交互作用。第三,关于暴露和避免低溶解氧的程度的准确信息是关键的未知数。我们的解释应被视为提示性的而非确定性的。所描述的模式基于未设计成可以相互比较的建模结果集合。快速浏览其他模型似乎可以确认我们的模式,或者至少不与我们的模式相矛盾。量化缺氧对鱼类种群(无论大小)的影响,对于有效管理沿海生态系统以及经济有效地设计补救措施至关重要。相互作用和间接影响的潜力使实地研究和管理变得复杂。改善缺氧对鱼类种群和群落影响的预测已从计算问题转移到了生物学问题。我们似乎在监测和模拟运动行为方面取得了进展,但是在食物网理论和实证研究以及根据与种群动态相关的过程速率来量化种间相互作用和栖息地质量方面,进展较慢。

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  • 作者单位

    Department of Oceanography and Coastal Sciences, Louisiana State University, Energy, Coast, and Environment Building, Baton Rouge, LA 70803, USA;

    Cooperative Institute for Limnology and Ecosystem Research. University of Michigan, 4840 S. State Road, Ann Arbor, MI 48108, Ann Arbor, MI 48105-2945, USA;

    Department of Fisheries and Wildlife, Michigan State University, 13 Natural Resources Building, East Lansing, MI 48824-1221, USA;

    Department of Oceanography and Coastal Sciences, Louisiana State University, Energy, Coast, and Environment Building, Baton Rouge, LA 70803, USA;

    Department of Biology, St. Mary's College of Maryland, Schaefer Hall 235, St. Mary's City, MD 20686-3001, USA;

    Florida State University Coastal and Marine Laboratory. 3618 Highway 98, St Teresa, FL 32358-2702, USA;

    Smithsonian Environmental Research Center, PO Box 28, Edgewater, MD 21037, USA;

    Marine Science Institute, University of Texas, 750 Channel View Drive, Port Aransas, TX 78373-5015, USA;

    Gulf Coast Research Laboratory, University of Southern Mississippi, 703 East Beach Drive, Ocean Springs, MS 39564, USA;

    Environmental Laboratory, US. Army Engineer Research and Development Center, Vicksburg, MS 39180-6199, USA;

    Department of Biological Sciences, Texas Tech University, Lubbock, Texas 79409, USA University of Western Sydney, School of Natural Science. Locked Bag 1797, Penrith South DC, NSW 1797, Australia;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    avoidance; community; dissolved oxygen; fish; hypoxia; model; population;

    机译:回避社区;溶解氧鱼;缺氧模型;人口;

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