Authors:
            
                    Funa Zhou
                    
                        
                                1
                            
                    
                     and
                
                    Tianhao Tang
                    
                        
                                2
                            
                    
                    
                
        
        
            Affiliations:
            
                    
                        
                                1
                            
                    
                    Shanghai Marintime University; Computer&Information Engineering School, Henan University, China
                
                    ; 
                
                    
                        
                                2
                            
                    
                    Shanghai Marintime University, China
                
        
        
        
        
        
             Keyword(s):
            Hybrid wavelet-Kalman filter, Sequential fusion, Non- 2n sampling.
        
        
            
                Related
                    Ontology
                    Subjects/Areas/Topics:
                
                        Adaptive Signal Processing and Control
                    ; 
                        Biomedical Engineering
                    ; 
                        Biomedical Signal Processing
                    ; 
                        Informatics in Control, Automation and Robotics
                    ; 
                        Signal Processing, Sensors, Systems Modeling and Control
                    ; 
                        Time and Frequency Response
                    ; 
                        Time-Frequency Analysis
                    
            
        
        
            
                Abstract: 
                With the development of automation, multi-scale data fusion has become a hot research topic, however, limited by the constraint that signal to implement wavelet transform must have the length of 2q, multi-scale data fusion problem involved with non- 2n sampled observation data still hasn’t been efficiently solved. In this paper, we develop a hybrid wavelet-Kalman filter multiscale sequential fusion method. First, we develop the hybrid wavelet-Kalman filter multiscale estimation method which combines the advantage of wavelet and Kalman filter to obtain the real time, recursive, multiscale estimation of the dynamic system. Then, a multiscale sequential fusion method is presented. Under the hybrid wavelet-Kalman filter multiscale estimation frame, we can easily fuse information from multiple sensors sequentially without designing other complex fusion algorithm. The multiscale sequential fusion method can fuse non- 2n sampled data just by analyzing the possible observation structure to d
                esign the observation model of the stacked dynamic system. Simulation result of three sensors with sampling interval 1, 2 and 3 shows the efficiency of this method.
                (More)