Metamodeling methods that incorporate qualitative variables for improved design of vegetative filter strips.
- 1Inrae, RIVERLY,Lyon- Villeurbanne, France (claire.lauvernet@irstea.fr)
- 2Univ. Lyon, UMR CNRS 5208, Ecole Centrale de Lyon, ICJ, France (celine.helbert@ec-lyon.fr)
- 3ETH, Chair of Risk, Safety and Uncertainty Quantification, Zurich, Switzerland (sudret@ethz.ch)
Significant amounts of pollutant are measured in surface water, their presence due in part to the use of pesticides in agriculture. One solution to limit pesticide transfer by surface runoff is to implement vegetative filter strips (VFS) along rivers. The sizing of these strips is a major issue, with influencing factors that include local conditions (climate, soil, etc.). The BUVARD modeling toolkit was developed to design VFSs throughout France according to these properties. This toolkit includes the numerical model VFSMOD, which quantifies dynamic effects of VFS site-specific pesticide mitigation efficiency. In this study, a metamodeling (or model dimension reduction) approach is proposed to ease the use of BUVARD and to help users design VFSs that are adapted to specific contexts. Different reduced models, or surrogates, are compared: GAM, Polynomial Chaos Expansions, Kriging, and Mixed-kriging. Mixed-kriging is a kriging method that was implemented with a covariance kernel for a mixture of qualitative and quantitative inputs. Kriging and PCE are built by couple of modalities and Mixed-kriging and GAM are built considering mixed quantitative and qualitative variables. The metamodel is a simple way to provide a relevant first guess to help design the pollution reduction device. In addition, the surrogate model is a relevant tool to visualize the impact that lack of knowledge of some parameters of filter efficiency can have when performing risk analysis and management.
How to cite: Lauvernet, C., Helbert, C., and Sudret, B.: Metamodeling methods that incorporate qualitative variables for improved design of vegetative filter strips., EGU General Assembly 2020, Online, 4–8 May 2020, EGU2020-15234, https://doi.org/10.5194/egusphere-egu2020-15234, 2020