1 / 32

High Resolution Models using Monte Carlo

High Resolution Models using Monte Carlo. Measurement Uncertainty Research Group Marco Wolf, ETH Zürich Martin Müller, ETH Zürich Dr. Matthias Rösslein, Empa St. Gallen Prof. Walter Gander, ETH Zürich PTB-BIPM Workshop Impact of Information Technology in Metrology June 4 th 2007.

bernie
Download Presentation

High Resolution Models using Monte Carlo

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. High Resolution Models using Monte Carlo Measurement Uncertainty Research Group Marco Wolf, ETH Zürich Martin Müller, ETH Zürich Dr. Matthias Rösslein, Empa St. Gallen Prof. Walter Gander, ETH Zürich PTB-BIPM Workshop Impact of Information Technology in Metrology June 4th 2007

  2. Outline • Introduction • Describing models with MUSE • Selected examples • Summary

  3. Outline • Introduction • Describing models with MUSE • Selected examples • Summary

  4. MUSE – Measurement Uncertainty Simulation and Evaluation • Software package for evaluation of measurement uncertainty • Currently developed at ETH Zürich in cooperation with Empa St. Gallen • Based on first supplement of GUM • Available from project page http://www.mu.ethz.ch for • Linux/Unix • Windows

  5. Uncertainty Measurement Evaluation • Analytical Solution • Only applicable in simple cases • Even then it gets too complicated

  6. Uncertainty Measurement Evaluation • Analytical Solution • Only applicable in simple cases • Even then it gets too complicated • GUM Uncertainty Framework • Applicable in many cases • Does not use all information • Needs linearized model • Ambiguous calculation of degrees of freedom

  7. Uncertainty Measurement Evaluation • Analytical Solution • Only applicable in simple cases • Even then it gets too complicated • GUM Uncertainty Framework • Applicable in many cases • Does not use all information • Needs linearized model • Ambiguous calculation of degrees of freedom • Monte Carlo Method • Always applicable • Arbitrary accuracy • Uses all information provided for input quantities

  8. Outline • Introduction • Describing models with MUSE • Selected examples • Summary

  9. Modeling Measurement Equipment • Models of measurement equipment • Basic Models can be instantiated abritrary often • Using different sets of parameters • Database of Basic Models • Equivalent models allow global and direct comparison of results

  10. Describing Measurement Procedure using Processes • Using instances of Basic Models together with other processes • Processes encapsulate their own settings for each instance or other processes • Splitting of description of devices and measurement scenario • Dependencies can be modeled by connecting processes

  11. Definition of Calculation Parameters Random number genenerator Adaptive MC Number of simulations Variation • Random number generator • Options for adaptive Monte Carlo • Settings for self-validation • Settings for analyzing data files • Global variables and variation settings • Equation(s) of the measurand(s) Validation Variables Analyzing

  12. Adaptive MC Numberofsimulations Variation Variables Validation Analysation Combination for Measurement Scenario Instances of Basic Models Process definition Calculation Section

  13. Outline • Introduction • Describing models with MUSE • Selected examples • Summary

  14. Example: Gauge Block Calibration • From GUM Supplement 1, section 9.5 • Shows difference of results of MC and GUM uncertainty framework • Model equation with following distributions: • Normal • Arc sine (U-shaped) • Curvelinear trapezoidal • Rectangular • Student-t

  15. Example: Gauge Block Calibration

  16. Example: Gauge Block Calibration

  17. Example: Gauge Block Calibration

  18. Example: Gauge Block Calibration * in 1/nm

  19. Example: Chemical experiment • More complex scenariousing processes • Splitting the model equation into three parts: • Creating stock solution sols • Creating first solution sol1 • Creating second solution sol2 sols sol1 sol2

  20. Example: Chemical experiment What is the difference if we use the same pipette?

  21. Example: Chemical experiment

  22. Example: Chemical experiment

  23. Example: Chemical experiment

  24. Example: Chemical experiment

  25. Example: Measurement series • More than one formula for measurement uncertainty • More complex evaluation of the overall measurement uncertainty in a measurement series • Simulation of different measurement scenarious and strategies for analysing

  26. Example: Measurement series

  27. Example: Measurement series

  28. Example: Measurement series

  29. Example: Measurement series

  30. Outline • Introduction • Describing models with MUSE • Selected examples • Summary

  31. Summary • The examples show some features of the software and that the software is capable of handling high resoluted models • MUSE is under continuous development. It is thought for advanced users who want to analyze their uncertainty budget in detail • Current work: • Calibration • Module to analyze results • Simplification of definition of measurement series • Parallel computing

  32. Thank you! Contact us directly or writeto: muse@inf.ethz.ch Homepage: www.mu.ethz.ch

More Related