» Articles » PMID: 30269185

Double-Loop Learning in Adaptive Management: The Need, the Challenge, and the Opportunity

Overview
Journal Environ Manage
Date 2018 Oct 1
PMID 30269185
Citations 3
Authors
Affiliations
Soon will be listed here.
Abstract

Adaptive management addresses uncertainty about the processes influencing resource dynamics, as well as the elements of decision making itself. The use of management to reduce both kinds of uncertainty is known as double-loop learning. Though much work has been done on the theory and procedures to address structural uncertainty, there has been less progress in developing an explicit approach for institutional learning about decision elements. Our objective is to describe evidence-based learning about the decision elements, as a complement to the formal "learning by doing" framework for reducing structural uncertainties. Adaptive management is described as a multi-phase approach to management and learning, with a set-up phase of identifying stakeholders, objectives, and other decision elements; an iterative phase that uses these elements in an ongoing cycle of technical learning about system structure and management impacts; and an institutional learning phase involving the periodic reconsideration of the decision elements. We describe a framework for institutional learning that is complementary to that of technical learning, including uncertainty metrics, propagation of change, and mechanisms and consequences of change over time. Operational issues include ways to recognize when the decision elements should be revisited, which elements should be adjusted, and how alternatives can be identified and incorporated based on experience and management performance. We discuss the application of this framework in decision making for renewable natural resources. As important as it is to learn about the processes driving resource dynamics, learning about the elements of the decision architecture is equally, if not more, important.

Citing Articles

Evolving pathways towards water security in the Vietnamese Mekong Delta: An adaptive management perspective.

Tran T, Tran D, Van Vo O, Pham V, Van Tran H, Yong M Ambio. 2024; 54(3):460-474.

PMID: 38951461 PMC: 11780020. DOI: 10.1007/s13280-024-02045-0.


Bridging adaptive management and reinforcement learning for more robust decisions.

Chapman M, Xu L, Lapeyrolerie M, Boettiger C Philos Trans R Soc Lond B Biol Sci. 2023; 378(1881):20220195.

PMID: 37246377 PMC: 10225849. DOI: 10.1098/rstb.2022.0195.


Adaptive Management of Flows in a Regulated River: Flow-ecology Relationships Revealed by a 26-year, Five-treatment Flow Experiment.

Bradford M, Korman J, Sneep J Environ Manage. 2022; 71(2):439-450.

PMID: 36449050 PMC: 9892159. DOI: 10.1007/s00267-022-01750-4.


A niche for null models in adaptive resource management.

Koons D, Riecke T, Boomer G, Sedinger B, Sedinger J, Williams P Ecol Evol. 2022; 12(1):e8541.

PMID: 35127044 PMC: 8794763. DOI: 10.1002/ece3.8541.

References
1.
Bischoff-Mattson Z, Lynch A . Integrative Governance of Environmental Water in Australia's Murray-Darling Basin: Evolving Challenges and Emerging Pathways. Environ Manage. 2017; 60(1):41-56. DOI: 10.1007/s00267-017-0864-x. View

2.
Fujitani M, McFall A, Randler C, Arlinghaus R . Participatory adaptive management leads to environmental learning outcomes extending beyond the sphere of science. Sci Adv. 2017; 3(6):e1602516. PMC: 5470829. DOI: 10.1126/sciadv.1602516. View

3.
Moore C, Lonsdorf E, Knutson M, Laskowski H, Lor S . Adaptive management in the U.S. National Wildlife Refuge System: science-management partnerships for conservation delivery. J Environ Manage. 2010; 92(5):1395-402. DOI: 10.1016/j.jenvman.2010.10.065. View

4.
Hauser C, Pople A, Possingham H . Should managed populations be monitored every year?. Ecol Appl. 2006; 16(2):807-19. DOI: 10.1890/1051-0761(2006)016[0807:smpbme]2.0.co;2. View

5.
Noon B, Blakesley J . Conservation of the northern spotted owl under the Northwest Forest Plan. Conserv Biol. 2006; 20(2):288-96. DOI: 10.1111/j.1523-1739.2006.00387.x. View