Publication | Closed Access
A meta-modeling approach for spatio-temporal uncertainty and sensitivity analysis: an application for a cellular automata-based Urban growth and land-use change model
36
Citations
68
References
2017
Year
EngineeringUrban ModellingSpatial UncertaintySpatio-temporal UncertaintyUrban ScienceSocial SciencesUrban Land UseUrban GrowthEcological SimulationUncertainty QuantificationMeta-modeling ApproachSensitivity AnalysisModeling And SimulationSpatial Statistical AnalysisGeographyUrban PlanningQuantitative Spatial ModelCellular AutomataSpatio-temporal Model
The paper presents a computationally efficient meta-modeling approach to spatially explicit uncertainty and sensitivity analysis in a cellular automata (CA) urban growth and land-use simulation model. The uncertainty and sensitivity of the model parameters are approximated using a meta-modeling method called polynomial chaos expansion (PCE). The parameter uncertainty and sensitivity measures obtained with PCE are compared with traditional Monte Carlo simulation results. The meta-modeling approach was found to reduce the number of model simulations necessary to arrive at stable sensitivity estimates. The quality of the results is comparable to the full-order modeling approach, which is computationally costly. The study shows that the meta-modeling approach can significantly reduce the computational effort of carrying out spatially explicit uncertainty and sensitivity analysis in the application of spatio-temporal models.
| Year | Citations | |
|---|---|---|
Page 1
Page 1