A comparison of four process-based models and a statistical regression model to predict growth of Eucalyptus globulus plantations |
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Authors: | Peter Miehle Michael Battaglia Peter J. Sands David I. Forrester Paul M. Feikema Stephen J. Livesley Jim D. Morris Stefan K. Arndt |
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Affiliation: | 1. School of Forest and Ecosystem Science, The University of Melbourne, 500 Yarra Boulevard, Richmond, Victoria 3121, Australia;2. Ensis, Hobart, Tasmania, Australia;3. School of Forest and Ecosystem Science, The University of Melbourne, Parkville, Australia;4. CRC Forestry, Australia |
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Abstract: | In forest management and ecological research, consideration of the impacts and risks of climate change or management optimisation is complex. Computer models have long been applied as tools for these tasks. Process-based forest growth models claim to overcome the limitations of empirical statistical models, but the capacity of different process-based models and modelling approaches have rarely been compared directly. This study evaluates stepwise multiple regression models in comparison to four process-based modelling approaches (3-PG, 3-PG+, CABALA and Forest-DNDC) for greenfield predictions of Eucalyptus globulus plantation growth from 2 to 8 years after planting throughout southern Australia. |
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Keywords: | Model comparison Forest growth model 3-PG CABALA Forest-DNDC Eucalyptus globulus |
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