Evaluating the required scenario set size for stochastic programming in forest management planning: incorporating inventory and growth model uncertainty
Author(s) -
Kyle Eyvindson,
Annika Kangas
Publication year - 2015
Publication title -
canadian journal of forest research
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.677
H-Index - 121
eISSN - 1208-6037
pISSN - 0045-5067
DOI - 10.1139/cjfr-2014-0513
Subject(s) - stochastic programming , computer science , set (abstract data type) , representation (politics) , forest management , selection (genetic algorithm) , process (computing) , forest inventory , quality (philosophy) , plan (archaeology) , operations research , mathematical optimization , mathematics , environmental science , agroforestry , philosophy , archaeology , epistemology , politics , political science , law , history , programming language , operating system , artificial intelligence
Developing a plan of action for the future use of forest resources requires a way to predict the development of the forest through time. These predictions require the use of inventory data and growth models that contain a large number of uncertainties. These uncertainties impact the quality of the predictions, and if not accounted for, they can lead to the selection of a suboptimal management plan. To account for and manage the uncertainties and associated risk, we have explored the use of stochastic programming. Stochastic programming can integrate uncertainty into the optimization process by solving the problem for a large number of potential scenarios of the forests future development. The selection of an appropriately sized set of scenarios involves a trade-off between tractability issues and problem representation issues. In this paper, an analysis of the trade-offs is conducted. Two cases are studied, one in which only the uncertainty of the inventory data is included and a second in which both grow...
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