1.

Record Nr.

UNINA9910917784903321

Autore

Zhang Gexiang

Titolo

Spiking Neural P Systems : Theory, Applications and Implementations / / by Gexiang Zhang, Sergey Verlan, Tingfang Wu, Francis George C. Cabarle, Jie Xue, David Orellana-Martín, Jianping Dong, Luis Valencia-Cabrera, Mario J. Pérez-Jiménez

Pubbl/distr/stampa

Singapore : , : Springer Nature Singapore : , : Imprint : Springer, , 2024

ISBN

9789819792825

9819792827

Edizione

[1st ed. 2024.]

Descrizione fisica

1 online resource (435 pages)

Collana

Intelligent Technologies and Robotics Series

Altri autori (Persone)

VerlanSergey

WuTingfang

CabarleFrancis George C

XueJie

Orellana-MartínDavid

DongJianping

Valencia-CabreraLuis

Pérez-JiménezMario J

Disciplina

006.32

Soggetti

Computational intelligence

Computational complexity

Artificial intelligence

Machine learning

Computer science

Computational Intelligence

Computational Complexity

Artificial Intelligence

Machine Learning

Theory and Algorithms for Application Domains

Models of Computation

Lingua di pubblicazione

Inglese

Formato

Materiale a stampa

Livello bibliografico

Monografia

Nota di contenuto

Part I. Theoretical Aspects of Spiking Neural P Systems -- Chapter 1.



Fundamentals of Spiking Neural P Systems -- Chapter 2. Computational Power of Spiking Neural P Systems -- Chapter 3. Computational Complexity of Spiking Neural P Systems -- Chapter 4. Variants of Spiking Neural P Systems -- Chapter 5. Automatic Design of Spiking Neural P Systems -- Part II. Real-world Applications of Spiking Neural P Systems -- Chapter 6. Complex Optimization with Spiking Neural P Systems -- Chapter 7. Classification with Spiking Neural P Systems -- Chapter 8. Fault Diagnosis with Spiking Neural P Systems -- Chapter 9. Medical Image Processing with Spiking Neural P Systems -- Chapter 10. More Applications of Spiking Neural P Systems -- Part III. Implementations of Spiking Neural P Systems -- Chapter 11. Software Simulations of Spiking Neural P Systems -- Chapter 12. Hardware Simulations of Spiking Neural P Systems.

Sommario/riassunto

Spiking neural P systems represent a significant advancement in the field of membrane computing, drawing inspiration from the communication patterns observed in neurons. Since their inception in 2006, these distributed and parallel neural-like computing models have gained popularity and emerged as important tools within the membrane computing area. As a key branch of the third generation of artificial neural networks, a fascinating research area of artificial intelligence, spiking neural P systems offer a captivating blend of theoretical elegance and practical utility. Their efficiency, Turing completeness, and real-life application characteristics, including interpretability and suitability for large-scale problems, have positioned them at the forefront of contemporary research in membrane computing and artificial intelligence. This state-of-the-art reference work is organized into three parts comprising twelve chapters. It thoroughly investigates the theoretical foundations, real-life applications, and implementations of spiking neural P systems. From fundamental principles to computational power and complexity, the theoretical aspects are explored, laying the groundwork for understanding their practical applications. Real-life applications span a diverse range of domains, including complex optimization, classification, fault diagnosis, medical image processing, information fusion, cryptography, and robot control. Additionally, the book discusses several software and hardware implementations that provide valuable insights into the practical deployment of spiking neural P systems. As the rapid development of spiking neural P systems continues to unfold, there is an increasing demand for a systematic and comprehensive summary of their capabilities and applications. This work serves as an invaluable resource for researchers, scholars, and practitioners interested in the theoretical underpinnings, algorithms, and practical implementation of artificial intelligence and membrane computing.