Decision Support System for Adaptive Regional Scale Forest Management by Multiple Decision-Makers
Date
Authors
Yamada, Yusuke
Yamaura, Yuichi
Journal Title
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Volume Title
Publisher
MDPI Publishing
Abstract
Various kinds of decision support approaches (DSAs) are used in adaptive management of
forests. Existing DSAs are aimed at coping with uncertainties in ecosystems but not controllability of
outcomes, which is important for regional management. We designed a DSA for forest zoning
to simulate the changes in indicators of forest functions while reducing uncertainties in both
controllability and ecosystems. The DSA uses a Bayesian network model based on iterative learning
of observed behavior (decision-making) by foresters, which simulates when and where zoned forestry
activities are implemented. The DSA was applied to a study area to evaluate wood production,
protection against soil erosion, preservation of biodiversity, and carbon retention under three zoning
alternatives: current zoning, zoning to enhance biodiversity, and zoning to enhance wood production.
The DSA predicted that alternative zoning could enhance wood production by 3–11% and increase
preservation of biodiversity by 0.4%, but decrease carbon stock by 1.2%. This DSA would enable to
draw up regional forest plans while considering trade-offs and build consensus more efficiently
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Source
Forests
Type
Book Title
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Access Statement
Open Access
License Rights
Creative Commons Attribution licence
DOI
Restricted until
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