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Approaches to modelling forest growth and yield. Compatible taper and volume functions. Difference equations. Modelling distributions and fitting functions. Estate simulation. Linear programming applications.
Modelling for management is designed for either managers who wish to understand how forest modelling systems are constructed, or for post-graduate students who wish to prepare themselves for research in growth and yield modelling or forest estate modelling. It covers the theoretical basis for forest modelling, construction of common forms of forest models, and applications of models. The course can be taken on-line, remotely from anywhere in the world.
KnowledgeStudents will gain advanced technical knowledge in:Forest growth and yield measurement techniquesGrowth & yield modellingModelling using hybrid physiological/mensurational modelsForest estate simulationStudents will gain a critical understanding of key principles forest modelling at the tree, stand and forest level.SkillsStudents will :Be able to evaluate different approaches to collecting data to support forest growth and yield modelling.Be able to create models for projecting growth and yield of trees and standsBe able to conduct estate simulations to support forest estate planningRequired to use the acquired knowledge to address complex resource assessment problems.ApplicationStudents will:Be able to integrate measurement techniques, concepts and modelling techniques for growth and yield projection.Be able to simulate the future states of forest estates given varying management strategies.Be able to effectively communicate methods, results and conclusions of these analyses.
Subject to approval by the Head of School
For further information see School of Forestry Head of Department
Domestic fee $1,080.00
International Postgraduate fees
* All fees are inclusive of NZ GST or any equivalent overseas tax, and do not include any programme level discount or additional course-related expenses.
For further information see School of Forestry .