1 / 37

Non-linear Regression Analysis with Fitter Software Application

Non-linear Regression Analysis with Fitter Software Application. Alexey Pomerantsev Semenov Institute of Chemical Physics Russian Chemometrics Society. Agenda. Introduction TGA Example NLR Basics Multicollinearity Prediction Testing Bayesian Estimation Conclusions. 1. Introduction.

dmendoza
Download Presentation

Non-linear Regression Analysis with Fitter Software Application

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. Non-linear Regression Analysiswith Fitter Software Application Alexey Pomerantsev Semenov Institute of Chemical PhysicsRussian Chemometrics Society

  2. Agenda • Introduction • TGA Example • NLR Basics • Multicollinearity • Prediction • Testing • Bayesian Estimation • Conclusions

  3. 1. Introduction

  4. Linear and Non-linear Regressions 2 Close relatives?

  5. 2. Thermo Gravimetric Analysis Example Let’s see it!

  6. This is Experiment! Not a Hell of Flame! TGA Experiment and Data TGA Experiment TGA Data

  7. TGA Example Variables Small sizeproblem!

  8. Plasticizer Evaporation Model Diffusion isnot relevant!

  9. Fitter Worksheet for TGA Example

  10. Service Life Prediction by TGA Data

  11. 3. NLR Basics

  12. Data and Errors Weight isan effectiveinstrument!

  13. Rathercomplexmodel! Model f(x,a) Presentation at worksheet

  14. Values Response Predictor Comment Weight Fitting Equation Parameters Data & Model Prepared for Fitter Apply Fitter!

  15. Objective Function Q(a) Objective function Qis a sum of squaresand may be more… Parameter estimates Weighted variance estimate

  16. Very Important Matrix A Matrix A is the cause of troubles..

  17. Quality of Estimation Matrix A is the measure of quality!

  18. Search by Gradient Method Matrix A is the key to search!

  19. 4. Multicollinearity

  20. Multicollinearity: View Multicollinearity is degradation of matrixA Objective function Q(a) N(A) = 1 2 4 5 6 7

  21. Multicollinearity: Source

  22. Data & Model Preprocessing ((a + b) + c) + da + (b + (c + d)) as1+10 –20 = 1

  23. Example: The Arrhenius Law

  24. 14+2=16 10 8 10+2=12 8+2=10 10+0=10 12+0=12 10+2=12 12+2=14 12+2=14 1) Numerical calculation of difference derivatives Derivative Calculation and Precision

  25. 5. Prediction

  26. Reliable Prediction Forecast shouldinclude uncertainties!

  27. Nonlinearity and Simulation Non-linear models callfor special methods ofreliable prediction!

  28. Prediction: Example Model ofrubber aging Accelerated aging tests Upper confidence limits

  29. 6. Testing

  30. Fromexperiment Fromtheory Hypotheses Testing Test statistics x is compared with critical value t(a) Test don’t prove a model! It just shows that the hypothesis is accepted or rejected!

  31. Variancesbyreplicas Replica 1 Replica 2 Lack-of-Fit and Variances Tests These hypotheses are based on variances and they can’t be tested without replicas! Lack-of-Fitis a wily test!

  32. Acceptabledeviation Positiveresidual Negativeresidual Outlier and Series Tests These hypotheses are based on residuals and they can be tested without replicas Series test isvery sensitive!

  33. 7. Bayesian Estimation

  34. Bayesian Estimation How to eat awayan elephant?Slice by slice!

  35. Posterior and Prior Information. Type I The same error ineach portion of data!

  36. Posterior and Prior Information. Type II Different errors in each portion of data!

  37. 8. Conclusions Mysterious Nature LR Model NLR Model Thankyou!

More Related