1 / 16

Sensitivity Analysis in GEM-SA

Sensitivity Analysis in GEM-SA. Jeremy Oakley. Example. ForestETP vegetation model 7 input parameters 120 model runs Objective: conduct a variance-based sensitivity analysis to identify which uncertain inputs are driving the output uncertainty. Exploratory scatter plots.

kaiyo
Download Presentation

Sensitivity Analysis in GEM-SA

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Sensitivity Analysis in GEM-SA Jeremy Oakley

  2. Example • ForestETP vegetation model • 7 input parameters • 120 model runs • Objective: conduct a variance-based sensitivity analysis to identify which uncertain inputs are driving the output uncertainty.

  3. Exploratory scatter plots

  4. Sensitivity Analysis Walkthrough •  Project  New • Select the Files tab. Click on Browse on the Inputs File row • GEM-SA Demo Data / Model1 / emulator7x120inputs.txt • Click on Browse on the Outputs File row • GEM-SA Demo Data / Model1 / out11.txt • Return to the Options tab

  5. Sensitivity Analysis Walkthrough • Change the Number of Inputs to 7. • Tick the calculate main effects and sum effects boxes only • Leave the other options unchanged • Input uncertainty options: All unknown, uniform • Prior mean options: Linear term for each input • Generate predictions as: function realisations (correlated points) • Click OK •  Project  Run

  6. Sensitivity Analysis Walkthrough

  7. Main effect plots

  8. Main effect plots Fixing X6 = 18, this point shows the expected value of the output (obtained by averaging over all other inputs). Simply fixing all the other inputs at their central values and comparing X6=10 with X6=40 would underestimate the influence of this input (The thickness of the band shows emulator uncertainty)

  9. Variance of main effects Main effects for each input. Input 6 has the greatest individual contribution to the variance Main effects sum to 66% of the total variance

  10. Interactions and total effects • Main effects explain 2/3 of the variance • Model must contain interactions • Any input can have small main effect, but large interaction effect, so overall still an ‘important’ input • Can ask GEM-SA to compute all pair-wise interaction effects • 435 in total for a 30 input model – can take some time! • Useful to know what to look for

  11. Interactions and total effects • For each input Xi Total effect = main effect for Xi + all interactions involving Xi • Total effect >> main effect implies interactions in the model • NB main effects normalised by variance, total effects normalised by sum of total effects • Look for large total effects relative to main effects

  12. Interactions and total effects Total effects for inputs 4 and 7 much larger than its main effect. Implies presence of interactions

  13. Interaction effects •  Project  Edit • Tick calculate joint effects • De-select all inputs under inputs to include in joint effects, select 4,5,6,7 • Click OK •  Project  Run

  14. Interaction effects

  15. Interaction effects Note interactions involving inputs 4 and 7 Main effects and selected interactions now sum to 91% of the total variance

  16. Exercise • Set up a new project using SAex1_inputs.txt for the inputs and SAex1_outputs.txt for the output • 8 input parameters (uniform on [0,1]) • 100 model runs • Estimate the main effects only for this model and identify the influential input variables • By comparing main effects with total effects, can you spot any interactions? • Estimate any suspected interactions to test your intuition!

More Related