TY - JOUR
T1 - Predicting the species abundance distribution using a model food web
AU - Powell, Craig R.
AU - McKane, Alan J.
N1 - Powell, Craig R. McKane, Alan J. EPSRC [GR/T11784] The authors thank Carlos A. Lugo for providing additional simulation data. This work was supported by EPSRC under Grant GR/T11784. 21 ACADEMIC PRESS LTD ELSEVIER SCIENCE LTD LONDON 381GZ
PY - 2008/12/21
Y1 - 2008/12/21
N2 - A large number of models of the species abundance distribution (SAD) have been proposed, many of which are generically similar to the log-normal distribution, from which they are often indistinguishable when describing a given data set. Ecological data sets are necessarily incomplete samples of an ecosystem, subject to statistical noise, and cannot readily be combined to yield a closer approximation to the underlying distribution. In this paper, we adopt the Webworld ecosystem model to study the predicted SAD in detail. The Webworld model is complex, and does not allow analytic examination of such features; rather, we use simulation data and an approach similar to that of ecologists analysing empirical data. By examining large sets of fully described data we are able to resolve features which can distinguish between models but which have not been investigated in detail in field data. We find that the power-law normal distribution is superior to both the log-normal and logit-normal distributions, and that the data can improve on even this at the high-population cut-off. © 2008 Elsevier Ltd. All rights reserved.
AB - A large number of models of the species abundance distribution (SAD) have been proposed, many of which are generically similar to the log-normal distribution, from which they are often indistinguishable when describing a given data set. Ecological data sets are necessarily incomplete samples of an ecosystem, subject to statistical noise, and cannot readily be combined to yield a closer approximation to the underlying distribution. In this paper, we adopt the Webworld ecosystem model to study the predicted SAD in detail. The Webworld model is complex, and does not allow analytic examination of such features; rather, we use simulation data and an approach similar to that of ecologists analysing empirical data. By examining large sets of fully described data we are able to resolve features which can distinguish between models but which have not been investigated in detail in field data. We find that the power-law normal distribution is superior to both the log-normal and logit-normal distributions, and that the data can improve on even this at the high-population cut-off. © 2008 Elsevier Ltd. All rights reserved.
KW - Ecological community model
KW - Ecological diversity
KW - Trophic distribution
U2 - 10.1016/j.jtbi.2008.09.005
DO - 10.1016/j.jtbi.2008.09.005
M3 - Article
SN - 0022-5193
VL - 255
SP - 387
EP - 395
JO - Journal of Theoretical Biology
JF - Journal of Theoretical Biology
IS - 4
ER -