Replies: 1 comment
-
Hi @caxelrud! Yes we do, you can check out the mountain car example in our docs. The code there is a bit complicated, so for clarity I would recommend checking out the Kalman filtering example. The model specification in this notebook can easily be adapted to include controls, as shown below @model function rotate_ssm(nr_samples, x0, A, B, C, Q, P)
x = randomvar(nr_samples) # hidden states
u = randomvar(nr_samples) # latent controls
y = datavar(Vector{Float64}, nr_samples) # observations
# prior on latent state
x_prior ~ MvNormalMeanCovariance(mean(x0), cov(x0))
x_prev = x_prior
for n in 1 : nr_samples
# prior on controls
u[n] ~ MvNormalMeanCovariance(zeros(2), I)
# state transition with inputs
x[n] ~ MvNormalMeanCovariance(A * x_prev + B * u[n], Q)
# observation model
y[n] ~ MvNormalMeanCovariance(C * x[i], P)
x_prev = x[n]
end
end I hope this helps :) |
Beta Was this translation helpful? Give feedback.
0 replies
Sign up for free
to join this conversation on GitHub.
Already have an account?
Sign in to comment
-
Hi, do you have a Kalman filtering example that includes a State-Space system with inputs (u)?
Generally described as:
x(n+1)=A.x(n)+B.u(n)
y(n)=C.x(n)+D.u(n)
Thanks,
Beta Was this translation helpful? Give feedback.
All reactions