A melhor ferramenta para a sua pesquisa, trabalho e TCC!
- Biblioteca Digitais de Teses e Dissertações da USP
- Universidade Federal do Rio Grande do Sul
- Universidade Estadual Paulista
- Biblioteca Digital da Unicamp
- Associação Brasileira de Engenharia e Ciências Mecânicas - ABCM
- Brazilian Symposium on Neural Networks; Curitiba
- Monterey, California. Naval Postgraduate School
- Universidade Cornell
- Universidade Duke
- Rochester Instituto de Tecnologia
- Sociedad Mexicana de Física
- Mais Publicadores...
‣ Reconhecimento automático do locutor com redes neurais pulsadas. ; Automatic speaker recognition using pulse coupled neural networks.
‣ Redes neurais artificiais aplicadas à otimização de processos de deposição de filmes finos poliméricos. ; Artificial neural networks applied to the optimization of polymeric thin-films deposition processes.
‣ Propriedades de recuperação de memória em redes neurais atratoras.; Recovery of memory properties of Neural Networks in attractors.
‣ O uso de redes neurais artificiais como ferramenta para auxiliar na determinação da vida útil de pavimentos flexíveis; Using artificial neural networks as a tool to assist in the evaluation of the remaining life of flexible pavements
‣ Redes neurais artificiais na predição de respostas e estimação de derivadas aerodinâmicas de aeronaves; Artificial neural networks for prediction of responses and estimation of aerodynamic derivatives of aircraft
‣ Proposta de implementação em hardware dedicado de redes neurais competitivas com técnicas de circuitos integrados analógicos; Proposal for implementation in dedicate hardware of competitive neural networks with analog integrated circuits techniques"
‣ A fast electric load forecasting using adaptive neural networks
‣ Modelos de redes neurais recorrentes para previsão de series temporais de memorias curta e longa; Recurrent neural networks for prediction of short and long memory time series
‣ Modelos modificados de redes neurais morfológicas; Modified models of morphological neural networks
‣ Controle ativo de vibrações usando redes neurais artificiais : Active vibration control using artificial neural networks; Active vibration control using artificial neural networks
‣ Redes neurais evolutivas com aprendizado extremo recursivo; Evolving neural networks with recursive extreme learning
‣ Application of time-delay neural and recurrent neural networks for the identification of a hingeless helicopter blade flapping and torsion motions
‣ Fingerprint classification with neural networks
‣ Forecasting financial markets using neural networks: an analysis of methods and accuracy
‣ Classificação de imagens digitais por textura usando redes neurais; Classification of di gital images through texture with the aid of neural networks
‣ Redes neurais não-supervisionadas temporais para identificação e controle de sistemas dinâmicos; Temporal unsupervised neural networks for identification and control of dynamical systems
‣ A measure for the complexity of Boolean functions related to their implementation in neural networks
‣ Indirect Training Algorithms for Spiking Neural Networks Controlled Virtual Insect Navigation
Even though Articial Neural Networks have been shown capable of solving many problems such as pattern recognition, classication, function approximation, clinics, robotics, they suers intrinsic limitations, mainly for processing large amounts of data or for fast adaptation to a changing environment. Several characteristics, such as iterative learning algorithms or articially designed neuron model and network architecture, are strongly restrictive compared with biological processing in natural neural networks. Spiking neural networks as the newest generation of neural models can overcome the weaknesses of ANNs. Because of the biologically realistic properties, the electrophysiological recordings of neural circuits can be compared to the outputs of the corresponding spiking neural network simulated on the computer, determining the plausibility of the starting hypothesis. Comparing with ANN, it is known that any function that can be computed by a sigmoidal neural network can also be computed by a small network of spiking neurons. In addition, for processing a large amount of data, SNNs can transmit and receive a large amount of data through the timing of the spikes and remarkably decrease the interactions load between neurons. This makes possible for very ecient parallel implementations.
Many training algorithms have been proposed for SNN training mainly based on the direct update of the synaptic plasticities or weights. However...