Advanced Spiking Neural P Systems

£159.99

Advanced Spiking Neural P Systems

Models and Applications

Electronics engineering Mathematical theory of computation Artificial intelligence Natural language and machine translation Machine learning Image processing

Authors: Hong Peng, Jun Wang

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Collection: Computational Intelligence Methods and Applications

Language: English

Published by: Springer

Published on: 22nd August 2024

Format: LCP-protected ePub

ISBN: 9789819752805


Membrane computing and spiking neural P systems

Membrane computing is a class of distributed and parallel computing models inspired by living cells. Spiking neural P systems are neural-like membrane computing models, representing an interdisciplinary field between membrane computing and artificial neural networks, and are considered one of the third-generation neural networks. Models and applications constitute two major research topics in spiking neural P systems. The entire book comprises two parts: models and applications.

In the model part, several variants of spiking neural P systems and fuzzy spiking neural P systems are introduced. Subsequently, their computational completeness is discussed, encompassing digital generation/accepting devices, function computing devices, and language generation devices. This discussion is advantageous for researchers in the fields of membrane computing, biologically inspired computing, and theoretical computer science, aiding in understanding the distributed computing model of spiking neural P systems.

In the application part, the application of spiking neural P systems in time series prediction, image processing, sentiment analysis, and fault diagnosis is examined. This offers a novel method and model for researchers in artificial intelligence, data mining, image processing, natural language processing, and power systems. Simultaneously, it furnishes engineering and technical personnel in these fields with a powerful, efficient, reliable, and user-friendly set of tools and methods.

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