The filtering technique and the multi-innovation identification theory are combined.
A filtering based maximum likelihood multi-innovation gradient method is given.
The proposed algorithm can improve the parameter estimation accuracy.
The proposed method requires lower computational load because of lower dimensions.
The proposed algorithm can be extended to study problems of other systems.