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Small universal simple spiking neural P systems with weights

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Abstract

Spiking neural P systems with weights (WSN P systems, for short) are a new variant of spiking neural P systems, where the rules of a neuron are enabled when the potential of that neuron equals a given value. It is known that WSN P systems are universal by simulating register machines. However, in these universal systems, no bound is considered on the number of neurons and rules. In this work, a restricted variant of WSN P systems is considered, called simple WSN P systems, where each neuron has only one rule. The complexity parameter, the number of neurons, to construct a universal simple WSN P system is investigated. It is proved that there is a universal simple WSN P system with 48 neurons for computing functions; as generator of sets of numbers, there is an almost simple (that is, each neuron has only one rule except that one neuron has two rules) and universal WSN P system with 45 neurons.

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Correspondence to LinQiang Pan.

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Zeng, X., Pan, L. & Pérez-Jiménez, M.J. Small universal simple spiking neural P systems with weights. Sci. China Inf. Sci. 57, 1–11 (2014). https://doi.org/10.1007/s11432-013-4848-z

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  • DOI: https://doi.org/10.1007/s11432-013-4848-z

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