This paper focus on the design of adaptive mixed-signal fuzzy chips. These chips have parallel architecture and feature electrically-controlable surface maps. The design methodology is based on the use of composite transistors - modular and well suited for design automation. This methodology is supported by dedicated, hardware-compatible learning algorithms that combine weight-perturbation and outstar
A fuzzy processor is programmed to provide anoptimum output for solving a given problem. It could th...
We present a highly modular fuzzy inference analog CMOS chip architecture with on-chip digital progr...
We have developed a collection of tools for the design, modeling, and test of analog circuits. Shari...
Analog circuits are natural candidates to design fuzzy chips with optimum speed/power figures for pr...
Analog circuits are natural candidates to design fuzzy chips with optimum speed/power figures for pr...
Outlines a systematic approach to design fuzzy inference systems using analog integrated circuits in...
The required building blocks of CMOS fuzzy chips capable of performing as adaptive fuzzy systems are...
The low/medium precision required for many fuzzy applications makes analog circuits natural candidat...
We present a fuzzy inference chip capable to evaluate 16 programmable rules at a speed of 2.5Mflips ...
Fuzzy controllers are able to incorporate knowledge expressed in if-then rules. These rules are giv...
This paper presents a mixed-signal neuro-fuzzy controller chip which, in terms of power consumption,...
Fuzzy controllers are able to incorporate knowledge expressed in if-then rules. These rules are give...
Neuro-fuzzy systems can theoretically solve any problem since they are universal approximators. Besi...
The authors present a novel architecture for implementing general-purpose fuzzy chips which allows f...
This paper deals with analog VLSI architectures addressed to the implementation of smart adaptive sy...
A fuzzy processor is programmed to provide anoptimum output for solving a given problem. It could th...
We present a highly modular fuzzy inference analog CMOS chip architecture with on-chip digital progr...
We have developed a collection of tools for the design, modeling, and test of analog circuits. Shari...
Analog circuits are natural candidates to design fuzzy chips with optimum speed/power figures for pr...
Analog circuits are natural candidates to design fuzzy chips with optimum speed/power figures for pr...
Outlines a systematic approach to design fuzzy inference systems using analog integrated circuits in...
The required building blocks of CMOS fuzzy chips capable of performing as adaptive fuzzy systems are...
The low/medium precision required for many fuzzy applications makes analog circuits natural candidat...
We present a fuzzy inference chip capable to evaluate 16 programmable rules at a speed of 2.5Mflips ...
Fuzzy controllers are able to incorporate knowledge expressed in if-then rules. These rules are giv...
This paper presents a mixed-signal neuro-fuzzy controller chip which, in terms of power consumption,...
Fuzzy controllers are able to incorporate knowledge expressed in if-then rules. These rules are give...
Neuro-fuzzy systems can theoretically solve any problem since they are universal approximators. Besi...
The authors present a novel architecture for implementing general-purpose fuzzy chips which allows f...
This paper deals with analog VLSI architectures addressed to the implementation of smart adaptive sy...
A fuzzy processor is programmed to provide anoptimum output for solving a given problem. It could th...
We present a highly modular fuzzy inference analog CMOS chip architecture with on-chip digital progr...
We have developed a collection of tools for the design, modeling, and test of analog circuits. Shari...