scholarly journals USING A SPIKE NEURAL NETWORK FOR MODELING SPACE MEMORY OF A NEUROBOT

Author(s):  
Alexey Zharinov ◽  
Sergey Lobov
IEEE Access ◽  
2020 ◽  
Vol 8 ◽  
pp. 61246-61254 ◽  
Author(s):  
Nadia Adnan Shiltagh Al-Jamali ◽  
Hamed S. Al-Raweshidy

2021 ◽  
Vol 2094 (3) ◽  
pp. 032032
Author(s):  
L A Astapova ◽  
A M Korsakov ◽  
A V Bakhshiev ◽  
E A Eremenko ◽  
E Yu Smirnova

Abstract One of the directions of development within the framework of the neuromorphic approach is the development of anatomically similar models of brain networks, taking into account the structurally complex structure of neurons and the adaptation of connections between them, as well as the development of learning algorithms for such models. In this work, we use the previously presented compartmental spike model of a neuron, which describes the structure (dendritic tree, soma, synapses) and behaviour (temporal and spatial signal summation, generation of action potential, stimulation and suppression of electrical activity) of a biological neuron. An algorithm for the structural organization of neuron models into a spike neural network is proposed for recognizing an arbitrary impulse pattern by introducing inhibitory synapses between trained neuron models. The dynamically adapting neuron models used are trained according to a previously proposed algorithm that automatically selects parameters such as soma size, dendrite length, and the number of synapses on each of the dendrites in order to induce a temporal response at the output depending on the input pattern encoded using a time window and temporal delays in the vector of single spikes arriving at a separate dendrite of a neuron. The developed algorithms are evaluated on the Iris dataset classification problem with four training examples from each class. As a result of the classification, separate disjoint clusters are formed, which demonstrates the applicability of the proposed spike neural network with a dynamically changing structure of elements in the problem of pattern recognition and classification.


Author(s):  
Shuai Shao ◽  
◽  
Naoyuki Kubota

In recent years, population aging has become an important social issue. We hope to achieve an elderly health care system through technical means. In this study, we developed an elderly health care system. We chose to use environmental sensors to estimate the behavior of older adults. We found that traditional methods have difficulty solving the problem of excessive indoor environmental differences in different households. Therefore, we provide a fuzzy spike neural network. By modifying the sensitivity of input using a fuzzy inference system, we can solve the problem without additional training. In the experiment, we used temperature and humidity data to make an estimation of behavior in the bathroom. The results show that the system can estimate behavior with 97% accuracy and 78% sensitivity.


2019 ◽  
Vol 32 (2) ◽  
pp. 427-446 ◽  
Author(s):  
Joseph Constantin ◽  
Andre Bigand ◽  
Ibtissam Constantin

IEEE Access ◽  
2021 ◽  
Vol 9 ◽  
pp. 17071-17082
Author(s):  
Chuang Liu ◽  
Wanghui Shen ◽  
Le Zhang ◽  
Yingkui Du ◽  
Zhonghu Yuan

2020 ◽  
Vol 96 (3s) ◽  
pp. 570-579
Author(s):  
И.А. Суражевский ◽  
К.Э. Никируй ◽  
А.В. Емельянов ◽  
В.В. Рыльков ◽  
В.А. Демин

Разработаны Verilog-A-модели тормозного и возбуждающего нейронов с бипрямоугольной и битреугольной формами импульсов (спайков) и мемристивными синаптическими весами. Показана возможность сходимости весов в численном моделировании обучения по Хеббу нейрона на основе локальных правил модификации весов. Предложена схема нейросинаптического ядра для аппаратной реализации формальных и спайковых нейронных сетей на их основе. The paper presents Verilog-A models of excitatory and inhibitory neurons with birectangular and bitriangular shapes of spikes. Besides, it highlights the possibility of convergence of weights in the numerical simulation of a neuron Hebbian learning based on local weight updates rules, as well as offers schemes for the neurosynaptic core for the hardware implementation of formal and spike neural network algorithms.


2021 ◽  
Author(s):  
Md. Sarwar Kamal ◽  
Linkon Chowdhury ◽  
Nilanjan Dey ◽  
Simon James Fong ◽  
Kc Santosh

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