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Ecological Model Types

Theories and Applications

  • 2nd Edition - December 1, 2025
  • Latest edition
  • Editors: Young-Seuk Park, Sovan Lek
  • Language: English

Ecological Model Types: Theories and Applications, Second Edition presents an understanding of how to quantitatively analyze complex and dynamic ecosystems with the tools availa… Read more

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Description

Ecological Model Types: Theories and Applications, Second Edition presents an understanding of how to quantitatively analyze complex and dynamic ecosystems with the tools available today. Recently, besides process-based models, data driven models such as machine learning methods are popularly applied in ecological and environmental models. This second edition covers both process-based models and data-driven models which are fundamental and popular in ecological modeling studies with theories and applications. It also explains how ecological modeling can assist the implementation of sustainable development as well as how mathematical models and systems analysis can describe ecological processes, which can support sustainable management of resources.

Key features

  • Discusses modelling theory and application
  • Illustrates process-based models as well as machine learning models
  • Explains practical guides to apply models

Readership

Environmental scientists and engineers, ecologists, environmental modellers and scientists studying climate change

Table of contents

1. Introduction: An Overview

Section 1: Process-based models

2. Biogeochemical models

3. Dynamic Population Models

4. Ecotoxicological Models

5. Structurally Dynamic Models (SDMs)

6. Steady State Models

7. Spatially Explicit Models

8. Fugacity Models

9. Network model: Econet

10. Process-based Modelling in Ecology

Section 2: Data-driven models

11. Artificial Neural Networks (Multilayer Perceptron) in Ecology

12. Decision Tree Models

13. Ensemble Models

14. Support Vector Machines for Ecological Modelling

15. Deep learning: Long short-term memory networks

16. Automated Machine Learning

Product details

  • Edition: 2
  • Latest edition
  • Published: December 9, 2025
  • Language: English

About the editors

YP

Young-Seuk Park

Young-Seuk Park is a Professor at the Department of Biology, Kyung University, Seoul, Republic of Korea. After completing a PhD at Pusan National University, he undertook post-doctoral research at CNRS, Université Paul Sabatier, and Cemagraf in France, and he obtained an HDR (Habilitation à Diriger des Recherches / Accreditation to Supervise Research) from the Université Paul Sabatier in Toulouse, France, before returning Korea to establish his independent reseach group at Kyung Hee University. His laboratory studies the effects of environmental changes on biological systems at different hierarchical levels from molecules, individuals, populations, and communities through ecological modelling and ecological informatics approaches. In particular, his research is focused on the effects of global changes on ecosystems, and ecological monitoring and assessment for sustainable ecosystem management. He is interested in computational approaches such as machine learning techniques and advanced statistical methods. He is an associate editor of two scientific journals Annales de Limnologie – International Journal of Limnology and Journal of Ecology and Environment, and he is also on the editorial boards of several journals including Ecological Informatics and Animal Cells and Systems. He was a guest editor for several Special Issues in scientific journals including Ecological Modelling, Ecological Informatics, Annales de Limnologie – International Journal of Limnology, Inland Waters, and Water. He is the recipient of the 2014 Yeocheon Ecology Award.
Affiliations and expertise
Kyung Hee University, Seoul, Republic of Korea

SL

Sovan Lek

Sovan Lek is a Professor at the University of Toulouse. His research is mainly in Fish Community Ecology and Ecological Modelling.

In Fish Community Ecology, his research concerns the biodiversity and the spatial distribution of fish according to the environmental characteristics and the response of fish community to the human disturbances, especially land-use, hydromorphology, climate warming. The distribution of fish is considered according to the scale of variation, varying from local to regional and global scales, in relationship with the environmental variables.

In Ecological Modelling, he is mainly interested in the use of machine learning techniques. He is also familiar with the uses of classical modelling techniques like classical statistic methods (multiple linear regression, multi-variate analyses ) and modern statistical methods (CART, GAM, PLS ).

He has participated in several EU projects in the fields of Ecology and Global changes. He also participated in bilateral projects with several Asian countries. He is an editorial member of Ecological Modelling and associate editor of Ecological Informatics.

Affiliations and expertise
University of Toulouse, France

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