A primer for data assimilation with ecological models using Markov Chain Monte Carlo (MCMC)

被引:0
作者
J. M. Zobitz
A. R. Desai
D. J. P. Moore
M. A. Chadwick
机构
[1] Augsburg College,Department of Mathematics
[2] University of Wisconsin-Madison,Department of Atmospheric and Oceanic Sciences
[3] King’s College London,Department of Geography
[4] University of Arizona,School of Natural Resources and Environment
来源
Oecologia | 2011年 / 167卷
关键词
Data assimilation; Markov Chain Monte Carlo; NEE; Aquatic insects; Ecological models;
D O I
暂无
中图分类号
学科分类号
摘要
Data assimilation, or the fusion of a mathematical model with ecological data, is rapidly expanding knowledge of ecological systems across multiple spatial and temporal scales. As the amount of ecological data available to a broader audience increases, quantitative proficiency with data assimilation tools and techniques will be an essential skill for ecological analysis in this data-rich era. We provide a data assimilation primer for the novice user by (1) reviewing data assimilation terminology and methodology, (2) showcasing a variety of data assimilation studies across the ecological, environmental, and atmospheric sciences with the aim of gaining an understanding of potential applications of data assimilation, and (3) applying data assimilation in specific ecological examples to determine the components of net ecosystem carbon uptake in a forest and also the population dynamics of the mayfly (Hexagenia limbata, Serville). The review and examples are then used to provide guiding principles to newly proficient data assimilation practitioners.
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页码:599 / 611
页数:12
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共 325 条
[11]  
Cable JM(2006)On the variability of respiration in terrestrial ecosystems: moving beyond Q10 Glob Change Biol 12 154-164
[12]  
Ogle K(2008)Cross-site evaluation of eddy covariance GPP and RE decomposition techniques Agric For Meteorol 148 821-838
[13]  
Lucas RW(2006)A decade of synthesis and modeling in the US Joint Global Ocean Flux Study Deep Sea Res (2 Top Stud Oceanogr) 53 451-458
[14]  
Huxman TE(2010)Paths to statistical fluency for ecologists Front Ecol Environ 8 362-370
[15]  
Loik ME(2007)FLUXNET and modelling the global carbon cycle Glob Change Biol 13 610-633
[16]  
Smith SD(2006)Evaluation of remote sensing based terrestrial productivity from MODIS using regional tower eddy flux network observations IEEE Trans Geosci Remote Sens 44 1908-1925
[17]  
Tissue DT(1996)A pelagic ecosystem model calibrated with BATS data Deep Sea Res (2 Top Stud Oceanogr) 43 653-683
[18]  
Ewers BE(2001)Productivity overshadows temperature in determining soil and ecosystem respiration across European forests Glob Change Biol 7 269-278
[19]  
Pendall E(2004)Model selection in ecology and evolution Trends Ecol Evol 19 101-108
[20]  
Welker JM(2008)A continental strategy for the National Ecological Observatory Network Front Ecol Environ 6 282-284