One of the IT2FS (interval type-2 fuzzy system) defuzzification methods uses the iterative KM algorithm. Because of the iterative nature of KM-type reduction, it may be a computational bottleneck for the real-time applications of IT2FSs. There are several other interval type-2 defuzzification methods suffering from lack of meaningful relationship between membership function uncertainties and changing of system output due to lack of clearly defined variables related to uncertainty in their methods. In this paper, a new approach for IT2FS defuzzification is presented by reconfiguring interval type-2 fuzzy sets and how uncertainties are present in them. This closed-formula method provides meaningful relation between the presence of uncertainty...
One of the most popular interval type-2 defuzzification methods is the Karnik-Mendel (KM) algorithm....
Fuzzistics was introduced by Mendel in 2003. It is associated with the inverse problem of mapping wo...
Abstract—It is known that processing of data under general type-1 fuzzy uncertainty can be reduced t...
This paper studies uncertainty and its effect on system response displacement. The paper also descri...
Abstract—Capturing the uncertainty arising from system noise has been a core feature of fuzzy logic ...
FLSs) gained increased research attention due to their potential to outperform Type-1 FLSs in applic...
Capturing the uncertainty arising from system noise has been a core feature of fuzzy logic systems (...
Capturing the uncertainty arising from system noise has been a core feature of fuzzy logic systems (...
One of the most popular interval type–2 defuzzification methods is the Karnik–Mendel (KM) algorithm....
In modeling uncertainty complex data that consisted of uncertainty in uncertainty data problem need ...
Real world environments are characterized by high levels of linguistic and numerical uncertainties. ...
Most real world applications face high levels of uncertainties that can affect the operations of suc...
Type reduction is the major new computation in a type-2 fuzzy logic system (T2 FLS). We have obtaine...
Fuzzy logic systems (FLSs) are widely accepted for their ability to model and handle uncertainty. Ty...
An overview and a derivation of interval type-2 fussy logic system (IT2 FLS), which can handle rule'...
One of the most popular interval type-2 defuzzification methods is the Karnik-Mendel (KM) algorithm....
Fuzzistics was introduced by Mendel in 2003. It is associated with the inverse problem of mapping wo...
Abstract—It is known that processing of data under general type-1 fuzzy uncertainty can be reduced t...
This paper studies uncertainty and its effect on system response displacement. The paper also descri...
Abstract—Capturing the uncertainty arising from system noise has been a core feature of fuzzy logic ...
FLSs) gained increased research attention due to their potential to outperform Type-1 FLSs in applic...
Capturing the uncertainty arising from system noise has been a core feature of fuzzy logic systems (...
Capturing the uncertainty arising from system noise has been a core feature of fuzzy logic systems (...
One of the most popular interval type–2 defuzzification methods is the Karnik–Mendel (KM) algorithm....
In modeling uncertainty complex data that consisted of uncertainty in uncertainty data problem need ...
Real world environments are characterized by high levels of linguistic and numerical uncertainties. ...
Most real world applications face high levels of uncertainties that can affect the operations of suc...
Type reduction is the major new computation in a type-2 fuzzy logic system (T2 FLS). We have obtaine...
Fuzzy logic systems (FLSs) are widely accepted for their ability to model and handle uncertainty. Ty...
An overview and a derivation of interval type-2 fussy logic system (IT2 FLS), which can handle rule'...
One of the most popular interval type-2 defuzzification methods is the Karnik-Mendel (KM) algorithm....
Fuzzistics was introduced by Mendel in 2003. It is associated with the inverse problem of mapping wo...
Abstract—It is known that processing of data under general type-1 fuzzy uncertainty can be reduced t...