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ASEN 5070 Statistical Orbit Determination I Fall 2012 Professor Jeffrey S. Parker

ASEN 5070 Statistical Orbit Determination I Fall 2012 Professor Jeffrey S. Parker Professor George H. Born Lecture 20: Exam 2 Review. Announcements. Homework 8 due this week. Make sure you spend time studying for the exam

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ASEN 5070 Statistical Orbit Determination I Fall 2012 Professor Jeffrey S. Parker

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  1. ASEN 5070 Statistical Orbit Determination I Fall 2012 Professor Jeffrey S. Parker Professor George H. Born Lecture 20: Exam 2 Review

  2. Announcements • Homework 8 due this week. • Make sure you spend time studying for the exam • Homework 9 out today. You’re not busy, are you? This one is easy and will push you toward the completion of the final project. • Exam 2 on Thursday. • A-H in this classroom • I-Z in ECEE 265 • Exam 2 will cover: • Batch vs. CKF vs. EKF • Probability and statistics (good to keep this up!) • Haven’t settled on a question yet, but it will probably be a conditional probability question. I.e., what’s the probability of X given that Y occurs? • Observability • Numerical compensation techniques, such as the Joseph and Potter formulation. • No calculators should be necessary • Open Book, Open Notes

  3. Quiz 16 Review

  4. Quiz 16 Review

  5. Quiz 16 Review

  6. Quiz 16 Review

  7. HW#9 • Due a week from Thursday

  8. Review • Lots of questions of CKF vs. EKF • Lots of questions on observability • Some questions on clarifications of parameters (bar, hat, P vs R, etc.), n / m / p

  9. Parameters • First off, conceptual parameters • If you have n parameters to estimate, you require at least n pieces of information to uniquely estimate those parameters. • If you don’t have that you can use the min-norm estimate

  10. Parameters • First off, conceptual parameters • If you have n parameters to estimate, you require at least n pieces of information to uniquely estimate those parameters. • If you don’t have that you can use the min-norm estimate • The sum of all observations = m pieces of information • Range = 1 piece • Doppler = 1 piece • An optical observation may involve 2 pieces (RA and Dec)

  11. Parameters • First off, conceptual parameters • If you have n parameters to estimate, you require at least n pieces of information to uniquely estimate those parameters. • If you don’t have that you can use the min-norm estimate • The sum of all observations = m pieces of information • Range = 1 piece • Doppler = 1 piece • An optical observation may involve 2 pieces (RA and Dec) • Number of observation data types = p • Number of observations = l • l x p = m

  12. Parameters • So, say you have n parameters and m total observations. • If m<n, min-norm • If m = n, deterministic • If m > n, least squares • Each observation has an error associated with it, which introduces more unknowns. You end up with n+m unknowns and m pieces of information  least squares to minimize the errors.

  13. Stat OD Conceptualization • Least Squares (Batch)

  14. Least Squares Options • Least Squares • Weighted Least Squares • Least Squares with a priori • Min Variance • Min Variance with a priori

  15. Batch • The Batch processor is just a wrapper around Least Squares. • Accumulate information from all observations and simultaneously process them all (in a batch). Note the sizes of each matrix

  16. Batch • Any numerical issues with the Batch?

  17. Batch • What if the a priori covariance is huge? Tiny?

  18. Batch • What if we have poorly-modeled dynamics?

  19. Stat OD Conceptualization Batch fits a line to this data. (CONCEPTUAL)

  20. Stat OD Conceptualization

  21. Algorithm Options • Batch • Process all observations at once • Sequential • Process one observation at a time

  22. Algorithm Options • Sequential • Process one observation at a time • Reformulation

  23. Stat OD Conceptualization • Full, nonlinear system:

  24. Stat OD Conceptualization • Linearization

  25. Stat OD Conceptualization • Observations

  26. Stat OD Conceptualization • Observation Uncertainties

  27. Stat OD Conceptualization • Least Squares (Batch)

  28. Stat OD Conceptualization • Least Squares (Batch)

  29. Stat OD Conceptualization • Least Squares (Batch)

  30. Stat OD Conceptualization • Least Squares (Batch)

  31. Stat OD Conceptualization • Least Squares (Batch)

  32. Stat OD Conceptualization • Least Squares (Batch) • Replace reference trajectory with best-estimate • Update a priori state • Generate new computed observations Iterate a few times.

  33. Conceptualization of the Conventional Kalman Filter (Sequential Filter)

  34. Stat OD Conceptualization • Conventional Kalman

  35. Stat OD Conceptualization • Conventional Kalman

  36. Stat OD Conceptualization • Conventional Kalman

  37. Stat OD Conceptualization • Conventional Kalman

  38. Stat OD Conceptualization • Conventional Kalman

  39. Stat OD Conceptualization • Conventional Kalman

  40. Stat OD Conceptualization • Conventional Kalman

  41. Stat OD Conceptualization • Conventional Kalman

  42. Stat OD Conceptualization • Conventional Kalman

  43. Stat OD Conceptualization • Conventional Kalman

  44. Stat OD Conceptualization • Conventional Kalman

  45. Stat OD Conceptualization • Conventional Kalman

  46. Stat OD Conceptualization • Conventional Kalman

  47. Stat OD Conceptualization • Conventional Kalman

  48. Stat OD Conceptualization • Conventional Kalman

  49. Stat OD Conceptualization • Conventional Kalman

  50. Stat OD Conceptualization • Conventional Kalman

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