Non-Singleton Fuzzy Logic Systems (NSFLSs) have the potential to capture and handle input noise within the design of input fuzzy sets. In this paper, we propose an online learning method which utilises a sequence of observations to continuously update the input Fuzzy Sets (FSs) of an NSFLS, thus providing an improved capacity to deal with variations in the level of input-affecting noise, common in real-world applications. The method removes the requirement for both a priori knowledge of noise levels or relying on offline training procedures to define input FS parameters. To the best of our knowledge, the proposed ADaptive, ONline Non-Singleton (ADONiS) Fuzzy Logic System (FLS) framework represents the first end-to-end framework to adaptivel...
Non-singleton fuzzification is used to model uncertain (e.g. noisy) inputs within fuzzy logic system...
Uncertainty is a pervasive element of many real-world applications and very often existing sources o...
Real world environments face a wide range of sources of noise and uncertainty. Thus, the ability to ...
Real-world environments face a wide range of noise (uncertainty) sources and gaining insight into th...
In non-singleton fuzzy logic systems (NSFLSs), input uncertainties are modelled with input fuzzy set...
In non-singleton fuzzy logic systems (NSFLSs), input uncertainties are modelled with input fuzzy set...
A major asset of fuzzy logic systems is dealing with uncertainties arising in their various applicat...
© 2016 IEEE. In nonsingleton fuzzy logic systems (NSFLSs), input uncertainties are modeled with inpu...
Real-world environments face a wide range of noise (uncertainty) sources and gaining insight into th...
In non-singleton fuzzy logic systems (NSFLSs) input uncertainties are modelled with input fuzzy sets...
In non-singleton fuzzy logic systems (NSFLSs), input uncertainties are modelled with input fuzzy set...
Abstract—A major asset of fuzzy logic systems is dealing with uncertainties arising in their various...
Non-singleton fuzzification is used to model uncertain (e.g. noisy) inputs within fuzzy logic system...
Most applications of both type-1 and type-2 fuzzy logic systems are employing singleton fuzzificatio...
In non-singleton fuzzy logic systems (NSFLSs) input uncertainties are modelled with input fuzzy sets...
Non-singleton fuzzification is used to model uncertain (e.g. noisy) inputs within fuzzy logic system...
Uncertainty is a pervasive element of many real-world applications and very often existing sources o...
Real world environments face a wide range of sources of noise and uncertainty. Thus, the ability to ...
Real-world environments face a wide range of noise (uncertainty) sources and gaining insight into th...
In non-singleton fuzzy logic systems (NSFLSs), input uncertainties are modelled with input fuzzy set...
In non-singleton fuzzy logic systems (NSFLSs), input uncertainties are modelled with input fuzzy set...
A major asset of fuzzy logic systems is dealing with uncertainties arising in their various applicat...
© 2016 IEEE. In nonsingleton fuzzy logic systems (NSFLSs), input uncertainties are modeled with inpu...
Real-world environments face a wide range of noise (uncertainty) sources and gaining insight into th...
In non-singleton fuzzy logic systems (NSFLSs) input uncertainties are modelled with input fuzzy sets...
In non-singleton fuzzy logic systems (NSFLSs), input uncertainties are modelled with input fuzzy set...
Abstract—A major asset of fuzzy logic systems is dealing with uncertainties arising in their various...
Non-singleton fuzzification is used to model uncertain (e.g. noisy) inputs within fuzzy logic system...
Most applications of both type-1 and type-2 fuzzy logic systems are employing singleton fuzzificatio...
In non-singleton fuzzy logic systems (NSFLSs) input uncertainties are modelled with input fuzzy sets...
Non-singleton fuzzification is used to model uncertain (e.g. noisy) inputs within fuzzy logic system...
Uncertainty is a pervasive element of many real-world applications and very often existing sources o...
Real world environments face a wide range of sources of noise and uncertainty. Thus, the ability to ...