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Applying Bayesian modelling to assess climate change effects on biofuel production

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dc.contributor.author Peter, C
dc.contributor.author De Lange, Willem J
dc.contributor.author Musango, JK
dc.contributor.author April, K
dc.contributor.author Potgieter, A
dc.date.accessioned 2010-07-23T14:31:25Z
dc.date.available 2010-07-23T14:31:25Z
dc.date.issued 2009-12
dc.identifier.citation Peter, C,De Lange ,W,Musango, JK et al. 2009. Applying Bayesian modelling to assess climate change effects on biofuel production. Climate Research, Vol. 40, pp 249–260 en
dc.identifier.uri http://www.int-res.com/articles/cr_oa/c040p249.pdf
dc.identifier.uri http://hdl.handle.net/10204/4127
dc.description Copyright: 2009 Inter-Research. This article is available on Open Access en
dc.description.abstract Socioeconomic and ecological systems exhibit complex, interdependent behaviour which is often difficult to model and understand. This is due to the complex reorganisation of key sub-system processes involving nonlinear, cross-scale and cross-sector interactions in real time. Hence, predictive models of complex social–ecological systems are often subject to large uncertainties. We propose an approach for evaluating land-use adaptations for biofuel production, using Bayesian networks and integrating research on the food, water and energy sectors. The approach is intended to facilitate interdisciplinary consideration of cross-scale and intersector dependencies. The authors applied this approach to 2 examples of land-use strategies and show how the resilience of a strategy that meets the new South African national biofuel production target can be assessed in relation to climate change. Cross-disciplinary consideration of variables may be enhanced through the sensitivity analysis enabled by Bayesian networks, which is used to conceptualise the conditional causal dependencies between subsystem variables. The authors formulate and run a national scale South African model which links the impacts of projected climate change effects in southern Africa to irrigated agriculture, water storage planning and biofuel production. The demonstrate how the approach can be used to evaluate land-use changes in different projected climate change scenarios and land-use combinations, and how conflicting demands between water, food and biofuel energy sources may be preliminarily identified and assessed in an integrated probabilistic framework. Evaluating this problem in the context of climate change and water-related limits to growth enables research to support integrated analysis and planning for biofuel production and development. en
dc.language.iso en en
dc.publisher Inter-Research en
dc.subject Biofuel production en
dc.subject Bayesian networks en
dc.subject Climate change en
dc.subject Resilience en
dc.subject Land-use change en
dc.subject Socioeconomic en
dc.subject Ecological systems en
dc.title Applying Bayesian modelling to assess climate change effects on biofuel production en
dc.type Article en
dc.identifier.apacitation Peter, C., De Lange, W. J., Musango, J., April, K., & Potgieter, A. (2009). Applying Bayesian modelling to assess climate change effects on biofuel production. http://hdl.handle.net/10204/4127 en_ZA
dc.identifier.chicagocitation Peter, C, Willem J De Lange, JK Musango, K April, and A Potgieter "Applying Bayesian modelling to assess climate change effects on biofuel production." (2009) http://hdl.handle.net/10204/4127 en_ZA
dc.identifier.vancouvercitation Peter C, De Lange WJ, Musango J, April K, Potgieter A. Applying Bayesian modelling to assess climate change effects on biofuel production. 2009; http://hdl.handle.net/10204/4127. en_ZA
dc.identifier.ris TY - Article AU - Peter, C AU - De Lange, Willem J AU - Musango, JK AU - April, K AU - Potgieter, A AB - Socioeconomic and ecological systems exhibit complex, interdependent behaviour which is often difficult to model and understand. This is due to the complex reorganisation of key sub-system processes involving nonlinear, cross-scale and cross-sector interactions in real time. Hence, predictive models of complex social–ecological systems are often subject to large uncertainties. We propose an approach for evaluating land-use adaptations for biofuel production, using Bayesian networks and integrating research on the food, water and energy sectors. The approach is intended to facilitate interdisciplinary consideration of cross-scale and intersector dependencies. The authors applied this approach to 2 examples of land-use strategies and show how the resilience of a strategy that meets the new South African national biofuel production target can be assessed in relation to climate change. Cross-disciplinary consideration of variables may be enhanced through the sensitivity analysis enabled by Bayesian networks, which is used to conceptualise the conditional causal dependencies between subsystem variables. The authors formulate and run a national scale South African model which links the impacts of projected climate change effects in southern Africa to irrigated agriculture, water storage planning and biofuel production. The demonstrate how the approach can be used to evaluate land-use changes in different projected climate change scenarios and land-use combinations, and how conflicting demands between water, food and biofuel energy sources may be preliminarily identified and assessed in an integrated probabilistic framework. Evaluating this problem in the context of climate change and water-related limits to growth enables research to support integrated analysis and planning for biofuel production and development. DA - 2009-12 DB - ResearchSpace DP - CSIR KW - Biofuel production KW - Bayesian networks KW - Climate change KW - Resilience KW - Land-use change KW - Socioeconomic KW - Ecological systems LK - https://researchspace.csir.co.za PY - 2009 T1 - Applying Bayesian modelling to assess climate change effects on biofuel production TI - Applying Bayesian modelling to assess climate change effects on biofuel production UR - http://hdl.handle.net/10204/4127 ER - en_ZA


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