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Remembrance of things past: modelling the relationship between species abundances in living communities and death assemblages

机译:回忆过去的事物:模拟生活社区中物种的丰富度与死亡组合之间的关系

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摘要

Accumulations of dead skeletal material are a valuable archive of past ecological conditions. However, such assemblages are not equivalent to living communities because they mix the remains of multiple generations and are altered by post-mortem processes. The abundance of a species in a death assemblage can be quantitatively modelled by successively integrating the product of an influx time series and a post-mortem loss function (a decay function with a constant half-life). In such a model, temporal mixing increases expected absolute dead abundance relative to average influx as a linear function of half-life and increases variation in absolute dead abundance values as a square-root function of half-life. Because typical abundance distributions of ecological communities are logarithmically distributed, species' differences in preservational half-life would have to be very large to substantially alter species' abundance ranks (i.e. make rare species common or vice-versa). In addition, expected dead abundances increase at a faster rate than their range of variation with increased time averaging, predicting greater consistency in the relative abundance structure of death assemblages than their parent living community.
机译:死骨骼物质的积累是过去生态条件的宝贵档案。但是,这样的组合并不等同于居住社区,因为它们混合了多代人的遗骸,并被验尸程序所改变。可以通过依次整合流入时间序列与事后损失函数(具有恒定半衰期的衰减函数)的乘积,对死亡组合中物种的丰富度进行定量建模。在这样的模型中,时间混合增加了相对于平均流入量的预期绝对死水丰度,作为半衰期的线性函数,并增加了绝对死水丰度值的变化,作为半衰期的平方根函数。由于生态群落的典型丰度分布是对数分布的,因此物种在保存半衰期方面的差异必须很大,才能显着改变物种的丰度等级(即使稀有物种成为常见物种,反之亦然)。此外,预期的死亡人数比其变化范围随时间平均增加而增加的速度更快,这预示了死亡组合的相对死亡人数结构与其父系生活社区相比具有更大的一致性。

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