Development of neuro-fuzzy expert system for serviceability assessment of concrete bridges
        Technology reports of the Yamaguchi University Volume 5 Issue 5
        Page 335-353
        
    published_at 1996-12
            Title
        
        Development of neuro-fuzzy expert system for serviceability assessment of concrete bridges
        
        
    
                
                    Creators
                
                    Kushida Moriyoshi
                
                
            
    
        
            Source Identifiers
        
    
    
            Creator Keywords
        
            concrete bridge
            serviceability assessment
            expert system
            fuzzy rule
            neural network
            machine learning
    Efforts to develop practical expert systems have been mostly concentrated on how to implement experience-based machine learning successfully. Recently several active researches on machine learning have been undertaken from the viewpoints of knowledge base management. The aim of this study is to develop the Concrete Bridge Rating (Diagnosis) Expert System with machine learning employing the combination of neural networks and bidirectional associative memories (BAM). Introduction of machine learning into this system facilitates knowledge base refinement. By applying the system to an actual in-service bridge, it has been verified that the employed machine learning method using results of questionnaire surveys on bridge experts is effective for the system.
        
        
            Languages
        
            eng
    
    
        
            Resource Type
        
        departmental bulletin paper
    
    
        
            Publishers
        
            山口大学工学部
    
    
        
            Date Issued
        
        1996-12
    
    
        
            File Version
        
        Version of Record
    
    
        
            Access Rights
        
        open access
    
    
            Relations
        
            
                
                
                [ISSN]0386-3433
            
            
                
                
                [NCID]AA0086073X
            
    
        
            Schools
        
            工学部
    
                
