4.5 Article Proceedings Paper

Analysis of pattern-process interactions based on landscape models -: Overview, general concepts, and methodological issues

Journal

ECOLOGICAL MODELLING
Volume 199, Issue 4, Pages 505-516

Publisher

ELSEVIER
DOI: 10.1016/j.ecolmodel.2006.05.036

Keywords

pattern-process interrelationship; landscape analysis; landscape modelling; simulation; inverse modelling; pattern description; wavelet analysis

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Pattern-process analysis is one of the main threads in landscape ecological research. It aims at understanding the complex relationships between ecological processes and landscape patterns, identifying the underlying mechanisms and deriving valid predictions for scenarios of landscape change and its consequences. Today, various studies cope with these tasks through so called landscape modelling approaches. They integrate different aspects of heterogeneous and dynamic landscapes and model different driving forces, often using both statistical and process-oriented techniques. We identify two main approaches to deal with the analysis of pattern-process interactions: the first starts with pattern detection, pattern description and pattern analysis, the second with process description, simulation and pattern generation. Focussing on the interplay between these two approaches, landscape analysis and landscape modelling will improve our understanding of pattern-process interactions. The comparison of simulated and observed pattern is a prerequisite for both approaches. Therefore, we identify a set of quantitative, robust, and reproducible methods for the analysis of spatiotemporal patterns that is a starting point for a standard toolbox for ecologists as major future challenge and suggest necessary further methodological developments. (c) 2006 Elsevier B.V. All rights reserved.

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