Treffer: Spiking Neural Membrane Systems with Multiplexed Neurons for Enhanced Parallel Computing.

Title:
Spiking Neural Membrane Systems with Multiplexed Neurons for Enhanced Parallel Computing.
Authors:
Wang, Liping1 (AUTHOR) lpwang@stu.sdnu.edu.cn, Liu, Xiyu2 (AUTHOR) xyliu@sdnu.edu.cn, Zhao, Yuzhen2 (AUTHOR) zhaoyuzhen@sdnu.edu.cn
Source:
International Journal of Neural Systems. Jan2026, p1. 27p. 16 Illustrations.
Database:
Academic Search Index

Weitere Informationen

Spiking neural membrane systems (SNP systems) are distributed parallel computing models inspired by neuronal spike mechanisms. Traditional SNP systems execute rules serially within each neuron, limiting their efficiency. This paper introduces MNSNP systems, a novel variant where neurons can distinguish spike sources and execute multiple rules in parallel at one time step. MNSNP systems maintain global distributed parallelism while integrating local parallelism, significantly enhancing information processing capabilities. Computational completeness is demonstrated, proving MNSNP systems as Turing universal devices for number generation, acceptance, and function computation. Compared to existing models, MNSNP systems require fewer neurons (only 60 for universal computation), showcasing resource efficiency. An application in smoke detection achieves an AUC value of 0.9840, demonstrating practical utility. This work advances SNP systems by introducing multiplexing, paving the way for applications in robotics, feature recognition, and real-time processing. [ABSTRACT FROM AUTHOR]