Title
A neural-fuzzy modelling framework based on granular computing: Concepts and applications
Abstract
Fuzzy and neural-fuzzy systems have successfully and extensively applied to solve problems in many research areas such as those associated with industrial, medical and academic applications. However, recent trends reveal a demand for a workflow with a particular emphasis on transparency, simplicity, system interpretability as well as on a strong link with human cognition. Such requirement is mainly driven by research areas where expert knowledge is of very high importance and any new proposed modelling system falls under the interpretability scrutiny of experts in order to confirm the system's validity. The relatively recent paradigm of granular computing (GrC) offers an ideal opportunity for a transparent knowledge discovery methodology to be combined with fuzzy logic thereby towards a systematic modelling framework with a focus on the overall transparency of the system. Such transparency in the workflow allows for better interaction between the expert process knowledge and the system design which translates into a better performing system. In this paper a systematic modelling approach using granular computing (GrC) and neural-fuzzy modelling is presented. In this research study a GrC algorithm is used to extract relational information and data characteristics out of an initial database. The extracted knowledge and granular features are then translated into a linguistic rule-base of a fuzzy system. This rule-base is finally elicited and optimised via a neural-fuzzy modelling structure. During the various steps of this methodology the transparency features are highlighted and it is shown here how the system designer can take advantage of such features to enhance the system. The proposed modelling framework is applied to a multi-dimensional and complex data set consisting of measurements of mechanical properties of heat treated steel. The data set is collected from a real industrial process and the measurements are dictated by customer production demands and the data set is very sparse with many discontinuities. The proposed framework successfully models the mechanical properties of heat treated steel and it further improves upon the performance of previously established modelling structures.
Year
DOI
Venue
2010
10.1016/j.fss.2010.06.004
Fuzzy Sets and Systems
Keywords
Field
DocType
new proposed modelling system,neural-fuzzy system,neural-fuzzy modelling framework,fuzzy system,system interpretability,mechanical property,research area,granular computing,system design,system designer,complex data,knowledge discovery,fuzzy logic,heat treatment,human cognition,rule based
Interpretability,Data mining,Fuzzy logic,Expert system,Fuzzy set,Granular computing,Knowledge extraction,Artificial intelligence,Fuzzy control system,Workflow,Machine learning,Mathematics
Journal
Volume
Issue
ISSN
161
21
Fuzzy Sets and Systems
Citations 
PageRank 
References 
20
0.78
18
Authors
2
Name
Order
Citations
PageRank
George Panoutsos1577.59
Mahdi Mahfouf223533.17