Adaptive economic and ecological forest management under risk

Background Forest managers must deal with inherently stochastic ecological and economic processes. The future growth of trees is uncertain, and so is their value. The randomness of low-impact, high frequency or rare catastrophic shocks in forest growth has significant implications in shaping the mi...

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Main Authors: Joseph Buongiorno, Mo Zhou
Format: Article
Language:English
Published: SpringerOpen 2015-02-01
Series:Forest Ecosystems
Online Access:http://www.forestecosyst.com/content/2/1/4
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spelling doaj-2e60c0620c134365b0db31a08092e9c72020-11-25T01:30:19ZengSpringerOpenForest Ecosystems2095-63552197-56202015-02-01210.1186/s40663-015-0030-yAdaptive economic and ecological forest management under riskJoseph Buongiorno0Mo Zhou1University of Wisconsin-Madison, Madison, USA West Virginia University, Morgantown, USA Background Forest managers must deal with inherently stochastic ecological and economic processes. The future growth of trees is uncertain, and so is their value. The randomness of low-impact, high frequency or rare catastrophic shocks in forest growth has significant implications in shaping the mix of tree species and the forest landscape. In addition, the fluctuations of wood prices influence greatly forest revenues. Methods Markov decision process models (MDPs) offer a rigorous and practical way of developing optimum management strategies, given these multiple sources of risk. Results Examples illustrate how such management guidelines are obtained with MDPs for combined ecological and economic objectives, including diversity of tree species and size, landscape diversity, old growth preservation, and carbon sequestration. Conclusions The findings illustrate the power of the MDP approach to deal with risk in forest resource management. They recognize that the future is best viewed in terms of probabilities. Given these probabilities, MDPs tie optimum adaptive actions strictly to the state of the forest and timber prices at decision time. The methods are theoretically rigorous, numerically efficient, and practical for field implementation.http://www.forestecosyst.com/content/2/1/4
collection DOAJ
language English
format Article
sources DOAJ
author Joseph Buongiorno
Mo Zhou
spellingShingle Joseph Buongiorno
Mo Zhou
Adaptive economic and ecological forest management under risk
Forest Ecosystems
author_facet Joseph Buongiorno
Mo Zhou
author_sort Joseph Buongiorno
title Adaptive economic and ecological forest management under risk
title_short Adaptive economic and ecological forest management under risk
title_full Adaptive economic and ecological forest management under risk
title_fullStr Adaptive economic and ecological forest management under risk
title_full_unstemmed Adaptive economic and ecological forest management under risk
title_sort adaptive economic and ecological forest management under risk
publisher SpringerOpen
series Forest Ecosystems
issn 2095-6355
2197-5620
publishDate 2015-02-01
description Background Forest managers must deal with inherently stochastic ecological and economic processes. The future growth of trees is uncertain, and so is their value. The randomness of low-impact, high frequency or rare catastrophic shocks in forest growth has significant implications in shaping the mix of tree species and the forest landscape. In addition, the fluctuations of wood prices influence greatly forest revenues. Methods Markov decision process models (MDPs) offer a rigorous and practical way of developing optimum management strategies, given these multiple sources of risk. Results Examples illustrate how such management guidelines are obtained with MDPs for combined ecological and economic objectives, including diversity of tree species and size, landscape diversity, old growth preservation, and carbon sequestration. Conclusions The findings illustrate the power of the MDP approach to deal with risk in forest resource management. They recognize that the future is best viewed in terms of probabilities. Given these probabilities, MDPs tie optimum adaptive actions strictly to the state of the forest and timber prices at decision time. The methods are theoretically rigorous, numerically efficient, and practical for field implementation.
url http://www.forestecosyst.com/content/2/1/4
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