Schwartz-Smith model using SSM

조회 수: 2 (최근 30일)
Todd
Todd 2024년 4월 18일
답변: Sanju 2024년 5월 8일
I am looking to use the Schwartz-Smith code here, but adapt the Kalman filter function to use SSM. I haven't been able to find anything to guide me, so I am hoping there might be some hints. Thank you

답변 (1개)

Sanju
Sanju 2024년 5월 8일
Adapting the Kalman filter to use the State Space Model (SSM) in the context of Schwartz-Smith code requires understanding both the Kalman filter algorithm and how it integrates with the SSM framework.
Here's a general approach,
  • Express the SSM in terms that fit with the Kalman filter algorithm. You'll need to define the state transition matrix, observation matrix, process noise covariance, observation noise covariance, initial state estimate, and initial error covariance matrix.
  • Modify the prediction step of the Kalman filter to incorporate the transition equation of the SSM. This involves predicting the next state and the error covariance matrix based on the dynamics of the system.
  • Modify the update step of the Kalman filter to incorporate the observation equation of the SSM. This involves updating the state estimate and error covariance matrix based on the new observation.
  • Iterate over each time step, performing prediction and update steps alternately.
  • Ensure proper initialization of the state estimate, error covariance matrix, and other parameters before starting the filtering process.
Note: representing the SSM in Kalman Filter terms involves translating the dynamics and uncertainties of the system into matrices and vectors that can be used within the Kalman Filter algorithm for state estimation
Hope this gives an outline to solve your issue!

카테고리

Help CenterFile Exchange에서 Portfolio Optimization and Asset Allocation에 대해 자세히 알아보기

제품


릴리스

R2024a

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by