Multi-mode neural morphological network core

A neuromorphic, multi-modal technology, applied in the field of neuromorphic network cores, can solve problems such as limited calculation scale and accuracy, difficulty in description, and discontinuity of neuron model, and achieve the effect of spatiotemporal signal calculation guarantee

Active Publication Date: 2015-11-25
LYNXI TECH CO LTD
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  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

However, the discontinuity of the neuron model of the spiking neural network, the complexity of space-time coding, and the uncertainty of the network structure make it difficult to describe the overall network mathematically, so it is difficult to construct an effective and general supervised learning algorithm. Limits its computational scale and accuracy

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  • Multi-mode neural morphological network core
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Embodiment Construction

[0037] The multimodal neuromorphic network core provided by the present invention will be further described in detail below with reference to the drawings and specific embodiments.

[0038] The first embodiment of the present invention provides a hybrid computing system 100 of artificial neural network and spiking neural network, including at least two basic computing units 110, at least one of which is an artificial neural network computing unit, In charge of artificial neural network calculations, at least one is a spiking neural network computing unit, responsible for spiking neural network computing, the at least two basic computing units 110 are connected to each other according to the topology, and jointly realize the neural network computing function.

[0039] See figure 1 , the at least one artificial neural network computing unit and the at least one impulse neural network computing unit can be regarded as an independent neural network, which includes a plurality of n...

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Abstract

Provided in the invention is a multi-mode neural morphological network core comprising a mode register, an axon input unit, a synaptic weight storage unit, a dendrite unit and a neuron computing unit. According to the multi-mode neural morphological network core, both artificial neural network computing and impulsive neural network computing can be carried out; and switching between an artificial neural network operation mode and an impulsive neural network operation mode can be realized according to demands.

Description

technical field [0001] The present invention relates to a neuromorphic network kernel. Background technique [0002] A neural network is a computing system that imitates the synapse-neuron structure of a biological brain for data processing. It consists of multi-layered computing nodes and connections between layers. Each node simulates a neuron and performs a specific operation, such as an activation function. The connection between nodes simulates a synapse, and the weighted value of the connection to the input from the upper layer node represents the synaptic weight. Neural networks have powerful nonlinear and adaptive information processing capabilities. [0003] The neuron in the artificial neural network processes the accumulated value from the connection input with the activation function as its own output. Corresponding to different network topologies, neuron models and learning rules, artificial neural networks include dozens of network models such as perceptrons,...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06N3/06
Inventor 裴京施路平王栋邓磊徐海峥李国齐马骋
Owner LYNXI TECH CO LTD
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