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Bringing diverse knowledge sources together:a meta-model for supporting integrated catchment management

Holzkaemper, Annelie and Kumar, Vikas and Surridge, Ben and Paetzold, Achim and Lerner, David (2012) Bringing diverse knowledge sources together:a meta-model for supporting integrated catchment management. Journal of Environmental Management, 96 (1). pp. 116-127. ISSN 0301-4797

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Abstract

Integrated catchment management (ICM), as promoted by recent legislation such as the European Water Framework Directive, presents difficult challenges to planners and decision-makers. To support decision-making in the face of high complexity and uncertainty, tools are required that can integrate the evidence base required to evaluate alternative management scenarios and promote communication and social learning. In this paper we present a pragmatic approach for developing an integrated decision-support tool, where the available sources of information are very diverse and a tight model coupling is not possible. In the first instance, a loosely coupled model is developed which includes numerical sub-models and knowledge-based sub-models. However, such a model is not easy for decision-makers and stakeholders to operate without modelling skills. Therefore, we derive from it a meta-model based on a Bayesian Network approach which is a decision-support tool tailored to the needs of the decision-makers and is fast and easy to operate. The meta-model can be derived at different levels of detail and complexity according to the requirements of the decision-makers. In our case, the meta-model was designed for high-level decisionmakers to explore conflicts and synergies between management actions at the catchment scale. As prediction uncertainties are propagated and explicitly represented in the model outcomes, important knowledge gaps can be identified and an evidence base for robust decision-making is provided. The framework seeks to promote the development of modelling tools that can support ICM both by providing an integrated scientific evidence base and by facilitating communication and learning processes.

Item Type: Article
Journal or Publication Title: Journal of Environmental Management
Uncontrolled Keywords: Integrated catchment management ; Water framework directive ; Decision-support ; Integrated modelling ; Bayesian network ; Meta-model
Subjects: G Geography. Anthropology. Recreation > GE Environmental Sciences
Departments: UNSPECIFIED
ID Code: 51609
Deposited By: ep_importer_pure
Deposited On: 28 Nov 2011 10:17
Refereed?: Yes
Published?: Published
Last Modified: 23 Jul 2014 14:56
Identification Number:
URI: http://eprints.lancs.ac.uk/id/eprint/51609

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