AGGREGATING FINE-SCALE ECOLOGICAL KNOWLEDGE TO MODEL COARSER-SCALE ATTRIBUTES OF ECOSYSTEMS

被引:313
作者
RASTETTER, EB
KING, AW
COSBY, BJ
HORNBERGER, GM
ONEILL, RV
HOBBIE, JE
机构
[1] OAK RIDGE NATL LAB, DIV ENVIRONM SCI, OAK RIDGE, TN 37831 USA
[2] DUKE UNIV, SCH FORESTRY & ENVIRONM STUDIES, DURHAM, NC 27706 USA
[3] UNIV VIRGINIA, DEPT ENVIRONM SCI, CHARLOTTESVILLE, VA 22903 USA
关键词
AGGREGATION; AGGREGATION ERROR; CALIBRATION; COARSE-SCALE MODELING; ECOLOGICAL MODELING; ERROR PROPAGATION; LUMPED MODELS; MODEL AGGREGATION; SCALE CORRECTIONS; SCALING; SCALING ERROR; TRANSMUTATION;
D O I
10.2307/1941889
中图分类号
Q14 [生态学(生物生态学)];
学科分类号
071012 ; 0713 ;
摘要
As regional and global scales become more important to ecologists, methods must be developed for the application of existing fine-scale knowledge to predict coarser-scale ecosystem properties. This generally involves some form of model in which fine-scale components are aggregated. This aggregation is necessary to avoid the cumulative error associated with the estimation of a large number of parameters. However, aggregation can itself produce errors that arise because of the variation among the aggregated components. The statistical expectation operator can be used as a rigorous method for translating fine-scale relationships to coarser scales without aggregation errors. Unfortunately this method is too cumbersome to be applied in most cases, and alternative methods must be used. These alternative methods are typically partial corrections for the variation in only a few of the fine-scale attributes. Therefore, for these methods to be effective, the attributes that are the most severe sources of error must be identified a priori. We present a procedure for making these identifications based on a Monte Carlo sampling of the fine-scale attributes. We then present four methods of translating fine-scale knowledge so it can be applied at coarser scales: (1) partial transformations using the expectation operator, (2) moment expansions, (3) partitioning, and (4) calibration. These methods should make it possible to apply the vast store of fine-scale ecological knowledge to model coarser-scale attributes of ecosystems.
引用
收藏
页码:55 / 70
页数:16
相关论文
共 40 条
[1]  
[Anonymous], 1986, NUMERICAL RECIPES
[2]   AGGREGATION ERROR - RESEARCH OBJECTIVES AND RELEVANT MODEL STRUCTURE [J].
BARTELL, SM ;
CALE, WG ;
ONEILL, RV ;
GARDNER, RH .
ECOLOGICAL MODELLING, 1988, 41 (3-4) :157-168
[3]   CHANGING IDEAS IN HYDROLOGY - THE CASE OF PHYSICALLY-BASED MODELS [J].
BEVEN, K .
JOURNAL OF HYDROLOGY, 1989, 105 (1-2) :157-172
[4]  
Box G.E.P., 1976, TIME SERIES ANAL
[5]  
BRUNK HD, 1975, INTRO MATH STATISTIC
[6]   AGGREGATION AND CONSISTENCY PROBLEMS IN THEORETICAL-MODELS OF EXPLOITATIVE RESOURCE COMPETITION [J].
CALE, WG ;
ONEILL, RV .
ECOLOGICAL MODELLING, 1988, 40 (02) :97-109
[8]   AGGREGATION ERROR IN NON-LINEAR ECOLOGICAL MODELS [J].
CALE, WG ;
ONEILL, RV ;
GARDNER, RH .
JOURNAL OF THEORETICAL BIOLOGY, 1983, 100 (03) :539-550
[9]   BEHAVIOR OF AGGREGATE STATE VARIABLES IN ECOSYSTEM MODELS [J].
CALE, WG ;
ODELL, PL .
MATHEMATICAL BIOSCIENCES, 1980, 49 (1-2) :121-137
[10]   VEGETATION COMPLEXITY AND THE DYNAMICS OF MODELED GRAZING SYSTEMS [J].
CAUGHLEY, G .
OECOLOGIA, 1982, 54 (03) :309-312