Fuzzy logic for embedded systems applications
Fuzzy Logic for Embedded Systems Applications, by a recognized expert in the field, covers all the basic theory relevant to electronics design, with particular emphasis on embedded systems, and shows how the techniques can be applied to shorten design cycles and handle logic problems that are tough to solve using conventional linear techniques. All the latest advances in the field aree discussed and practical circuit design examples presented.
Fuzzy logic has been found to be particularly suitable for many embedded control applications. The intuitive nature of the fuzzy-based system design saves engineers time and reduces costs by shortening product development cycles and making system maintenance and adjustments easier. Yet despite its wide acceptance and perhaps because of its name it is still misunderstood and feared by many engineers. There is a need for embedded systems designers both hardware and software to get up to speed on the principles and applications of fuzzy logic in order to ascertain when and how to use them appropriately.
Fuzzy Logic for Embedded Systems Applications provides practical guidelines for designing electronic circuits and devices for embedded systems using fuzzy-based logic. It covers both theory and applications with design examples.
* Unified approach to fuzzy electronics from an engineering point of view
* Easy to follow with plenty of examples
* Review and evaluation of free resources
24 pages matching Electronics in this book
Results 1-3 of 24
What people are saying - Write a review
We haven't found any reviews in the usual places.
Analysis architecture artificial neural networks backpropagation basic Bibliography binary bounded difference CD-ROM Product Chapter chip cluster connectionism control system crisp set current mirror defined defuzzification demo DETERGENT DIRTINESS if DIRTINESS discussed downloading Electronics Elsevier Science embedded systems Engineering Example Let Fuzzy Control fuzzy control system fuzzy inference Fuzzy Logic Controller Fuzzy Neural Networks fuzzy relations fuzzy set Fuzzy Systems fuzzyTECH Genetic Algorithms hardware Hopfield network IEEE IEEE Trans IEEE Transactions Implementation of Fuzzy input patterns Integrated Circuits Introduction Java layer leads learning linguistic machine mathematical Matlab membership function membership values method microcontrollers microprocessors MOSFET Motorola multilayer perceptron Neuro-Fuzzy operation optimization output neurons paper PDF format PID controller problem processor provides links referred self-organizing Set Theory Sets and Systems shown in Figure signal simulation source code structure techniques Toolbox Topics transistors tutorial vector VLSI voltage weights Zadeh