Need help: Understanding Kalman Filter (measurement data)

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K
K el 2 de Mayo de 2013
Hello, I'm trying to understand the Kalman Filter through this example: http://www.mathworks.com/matlabcentral/fileexchange/31977-kalman-filter-example/content/myKalman.html
My question is, why if I change zHat_t = C*x_t + Ez; into zHat_t = 0; there is no effect into the results of the estimation. Is it mean that the measurement data don't effect the estimation results?

Respuestas (1)

Youssef  Khmou
Youssef Khmou el 2 de Mayo de 2013
Editada: Youssef Khmou el 2 de Mayo de 2013
hi,
NO that equation depends on the system on which you are applying Kalman filter . you can start first by looking at this famous tutorial which explains the theory first before trying to apply the example .
take a look at pages 13-16
  2 comentarios
K
K el 2 de Mayo de 2013
Thanks for your reply. So regardless of any measurement data (in this case the measured position), the estimation results will only depends on the system? So the measurement data is not important?
Youssef  Khmou
Youssef Khmou el 2 de Mayo de 2013
no it is important, suppose you are estimating the velocity of vehicule but what you are measuring is instantaneous position in discrete time so : V(n)= H *x(n) +W(n) W~N(m,var) so H would be the derivation operator to obtain the velocity, however when the data is measured directly like a temperature for example, and the system is noiseless then the second equation is not important, its then the same as : X(n+1)=AX(n)+V(n) ,

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