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首页> 外文期刊>Hydrobiologia >Long-term temporal and spatial variation of macrobenthos in the intertidal soft-bottom flats of two small bights (Chupa Inlet, Kandalaksha Bay, White Sea)
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Long-term temporal and spatial variation of macrobenthos in the intertidal soft-bottom flats of two small bights (Chupa Inlet, Kandalaksha Bay, White Sea)

机译:两条小海湾(Chupa Inlet,Kandalaksha Bay,White Sea)潮间带软底滩涂大型底栖动物的长期时空变化

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摘要

Despite the dynamic nature of spatial pattern, the temporal variation of spatial structure of marine benthic assemblages is rarely assessed using several temporal scales. We quantified the variability of density and biomass of main benthic species in the intertidal soft-bottom flats at two bights in Chupa Inlet (Kandalaksha Bay, the White Sea). The data cover the 21-year period (1987-2008) of a long-term monitoring survey (1987-present) using a hierarchical sampling design with two temporal (year, season within a year) and three spatial scales (bights-7 km, stations within a bight-10-100 m, and replicate samples-10 s cm apart). We used nested ANOVA to test significance and variance components to compare the relative contribution of different scales of variability of density and biomass of 18 most occurring macrobenthic species. Some species demonstrated high large-scale variability, however, the majority showed high small-scale variability and residual variance. The interactive variability was at least as important as the temporal effects, indicating that the spatial pattern changes through time. The assemblages were more variable at small scales and more stable at larger scales. Potential implications for sampling design are discussed.
机译:尽管空间格局具有动态性质,但很少使用几种时间尺度来评估海洋底栖组合的空间结构的时间变化。我们在Chupa入口(Kandalaksha湾,白海)的两个海岸线处的潮间带软底平地中,对主要底栖生物的密度和生物量进行了量化。数据涵盖了长期监测调查(1987年至今)的21年时间段(1987年至2008年),采用分层抽样设计,具有两个时间(年,一年中的季节)和三个空间尺度(7公里间隔) ,在距离10-100 m之内的站点,并复制相距10 s cm的样本)。我们使用嵌套的方差分析来检验显着性和方差成分,以比较18种最常见的大型底栖动物物种的密度和生物量的不同尺度的相对贡献。一些物种表现出高的大规模变异性,但是大多数物种表现出高的小规模变异性和残留变异性。交互可变性至少与时间效应同等重要,表明空间模式随时间变化。组合在小规模时变化更大,在大尺度时更稳定。讨论了对采样设计的潜在影响。

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