residual
Return measurement residual and residual covariance when using extended or unscented Kalman filter
Syntax
Description
The residual command returns the difference between the
            actual and predicted measurements for extendedKalmanFilter and unscentedKalmanFilter objects. Viewing the residual provides a way for
            you to validate the performance of the filter. Residuals, also known as
                innovations, quantify the prediction error and drive the
            correction step in the extended and unscented Kalman filter update sequence. When using
                correct and predict to update the estimated Kalman filter state, use the
                residual command immediately before using the
                correct command.
[ returns the
                residual Residual,ResidualCovariance]
= residual(obj,y)Residual between a measurement y
                and a predicted measurement produced by the Kalman filter obj.
                The function also returns the covariance of the residual
                    ResidualCovariance.
You create obj using the extendedKalmanFilter or unscentedKalmanFilter commands. You
                specify the state transition function f and measurement function
                    h of your nonlinear system in obj. The
                    State property of the object stores the latest estimated
                state value. At each time step, you use 
                correct and
                    predict together to update the state
                    x. The residual s is the difference
                between the actual and predicted measurements for the time step, and is expressed as
                    s = y -
                    h(x). The covariance of the residual
                    S is the sum R +
                        RP, where R is
                the measurement noise matrix set by the MeasurementNoise
                property of the filter and RP is the state
                covariance matrix projected onto the measurement space.
Use this syntax if the measurement function h that you
                specified in obj.MeasurementFcn has one of the following forms:
- y(k) = h(x(k))for additive measurement noise
- y(k) = h(x(k),v(k))for nonadditive measurement noise
Here, y(k), x(k), and
                    v(k) are the measured output, states, and measurement noise
                of the system at time step k. The only inputs to
                    h are the states and measurement noise.
[
                specifies additional input arguments if the measurement function of the system
                requires these inputs. You can specify multiple arguments.Residual,ResidualCovariance]
= residual(obj,y,Um1,...,Umn)
Use this syntax if the measurement function h has one of the following forms:
- y(k) = h(x(k),Um1,...,Umn)for additive measurement noise
- y(k) = h(x(k),v(k),Um1,...,Umn)for nonadditive measurement noise
Examples
Input Arguments
Output Arguments
Version History
Introduced in R2019b
See Also
correct | predict | extendedKalmanFilter | unscentedKalmanFilter

