The decision on how to manage a forest under climate change is subject to deep and dynamic uncertainties. The classic approach to analyze this decision adopts a predefined strategy, tests its robustness to uncertainties, but neglects their dynamic nature (i.e., that decision-makers can learn and adjust the strategy). Accounting for learning through dynamic adaptive strategies (DAS) can drastically improve expected performance and robustness to deep uncertainties. The benefits of considering DAS hinge on identifying critical uncertainties and translating them to detectable signposts to signal when to change course. This study advances the DAS approach to forest management as a novel application domain by showcasing methods to identify potent...
We apply Bayesian updating theory to model how decision-makers may gradually learn about climate cha...
The main interest of our research project lies at the interface between ambiguous organizational dec...
International audience& Context We develop a modelling concept that updates knowledge and beliefs ab...
Adapting the management of forest resources to climate change involves addressing several crucial as...
Adapting the management of forest resources to climate change involves addressing several crucial as...
Adapting the management of forest resources to climate change involves addressing several crucial as...
Adapting the management of forest resources to climate change involves addressing several crucial as...
Adapting the management of forest resources to climate change involves addressing several crucial as...
Adapting the management of forest resources to climate change involves addressing several crucial as...
Adapting the management of forest resources to climate change involves addressing several crucial as...
Adapting the management of forest resources to climate change involves addressing several crucial as...
Background Forest management faces a climate induced shift in growth potential and increasing curre...
We apply Bayesian updating theory to model how decision-makers may gradually learn about climate cha...
We apply Bayesian updating theory to model how decision-makers may gradually learn about climate cha...
We apply Bayesian updating theory to model how decision-makers may gradually learn about climate cha...
We apply Bayesian updating theory to model how decision-makers may gradually learn about climate cha...
The main interest of our research project lies at the interface between ambiguous organizational dec...
International audience& Context We develop a modelling concept that updates knowledge and beliefs ab...
Adapting the management of forest resources to climate change involves addressing several crucial as...
Adapting the management of forest resources to climate change involves addressing several crucial as...
Adapting the management of forest resources to climate change involves addressing several crucial as...
Adapting the management of forest resources to climate change involves addressing several crucial as...
Adapting the management of forest resources to climate change involves addressing several crucial as...
Adapting the management of forest resources to climate change involves addressing several crucial as...
Adapting the management of forest resources to climate change involves addressing several crucial as...
Adapting the management of forest resources to climate change involves addressing several crucial as...
Background Forest management faces a climate induced shift in growth potential and increasing curre...
We apply Bayesian updating theory to model how decision-makers may gradually learn about climate cha...
We apply Bayesian updating theory to model how decision-makers may gradually learn about climate cha...
We apply Bayesian updating theory to model how decision-makers may gradually learn about climate cha...
We apply Bayesian updating theory to model how decision-makers may gradually learn about climate cha...
The main interest of our research project lies at the interface between ambiguous organizational dec...
International audience& Context We develop a modelling concept that updates knowledge and beliefs ab...