Title :
Fuzzy qualitative simulation
Author :
Shen, Qiang ; Leitch, Roy
Author_Institution :
Intelligent Autom. Lab., Heriot-Watt Univ., Edinburgh, UK
Abstract :
An approach is described that utilizes fuzzy sets to develop a fuzzy qualitative simulation algorithm that allows a semiquantitative extension to qualitative simulation, providing three significant advantages over existing techniques. Firstly, it allows a more detailed description of physical variables, through an arbitrary, but finite, discretisation of the quantity space. The adoption of fuzzy sets also allows common-sense knowledge to be represented in defining values through the use of graded membership, enabling the subjective element in system modelling to be incorporated and reasoned with in a formal way. Secondly, the fuzzy quantity space allows more detailed description of functional relationships in that both strength and sign information can be represented by fuzzy relations holding against two or multivariables. Thirdly, the quantity space allows ordering information on rates of change to be used to compute temporal durations of the state and the possible transitions. Thus, an ordering of the evolution of the states and the associated temporal durations are obtained. This knowledge is used to develop an effective temporal filter that significantly reduces the number of spurious behaviors
Keywords :
common-sense reasoning; fuzzy set theory; knowledge representation; simulation; uncertainty handling; associated temporal durations; common-sense knowledge representation; functional relationships description; fuzzy qualitative simulation; fuzzy quantity space; fuzzy set theory; graded membership; physical variables description; reasoning; system modelling; temporal filter; Automatic control; Constraint theory; Electrical equipment industry; Filters; Fuzzy sets; Fuzzy systems; Heart; Helium; Industrial training; Inference mechanisms;
Journal_Title :
Systems, Man and Cybernetics, IEEE Transactions on