Nowadays, understanding the topology of biological neural networks and sampling their activity is possible thanks to various laboratory protocols that provide a large amount of experimental data, thus paving the way to accurate modeling and simulation. Neuromorphic systems were developed to simulate the dynamics of biological neural networks by means of electronic circuits, offering an efficient alternative to classic simulations based on systems of differential equations, from both the points of view of the energy consumed and the overall computational effort. Spikey is a configurable neuromorphic chip based on the Leaky Integrate-And-Fire model, which gives the user the possibility to model an arbitrary neural topology and simulate the te...
Modeling networks of spiking neurons is a common scientific method that helps to understand how biol...
eISSN 1648-9144Background and Aim: Simulations of computational models of brain activity are computa...
Recent developments in neuromorphic hardware engineering make mixed-signal VLSI neural network model...
Nowadays, understanding the topology of biological neural networks and sampling their activity is po...
An increasing number of research groups are developing custom hybrid analog/digital very large scale...
Neuromorphic hardware is based on emulating the natural biological structure of the brain. Since its...
Neftci E, Chicca E, Indiveri G, Douglas RJ. A systematic method for configuring VLSI networks of spi...
These works, which were conducted in a research group designing neuromimetic analog integrated circu...
Analog implementations of neural networks have several advantages over computer simulations: they ar...
Spiking neural networks can solve complex tasks in an event-based processing strategy, inspired by t...
Cortical circuits in the brain have long been recognised for their information processing capabiliti...
Abstract—We demonstrate neuron spiking dynamics in a small network of analog silicon neurons with dy...
Mixed-signal accelerated neuromorphic hardware is a class of devices that implements physical models...
Abstract. We describe an improved spiking silicon neuron (SN) [6] that approximates the dynamics of ...
Cortical circuits in the brain have long been recognised for their information processing capabiliti...
Modeling networks of spiking neurons is a common scientific method that helps to understand how biol...
eISSN 1648-9144Background and Aim: Simulations of computational models of brain activity are computa...
Recent developments in neuromorphic hardware engineering make mixed-signal VLSI neural network model...
Nowadays, understanding the topology of biological neural networks and sampling their activity is po...
An increasing number of research groups are developing custom hybrid analog/digital very large scale...
Neuromorphic hardware is based on emulating the natural biological structure of the brain. Since its...
Neftci E, Chicca E, Indiveri G, Douglas RJ. A systematic method for configuring VLSI networks of spi...
These works, which were conducted in a research group designing neuromimetic analog integrated circu...
Analog implementations of neural networks have several advantages over computer simulations: they ar...
Spiking neural networks can solve complex tasks in an event-based processing strategy, inspired by t...
Cortical circuits in the brain have long been recognised for their information processing capabiliti...
Abstract—We demonstrate neuron spiking dynamics in a small network of analog silicon neurons with dy...
Mixed-signal accelerated neuromorphic hardware is a class of devices that implements physical models...
Abstract. We describe an improved spiking silicon neuron (SN) [6] that approximates the dynamics of ...
Cortical circuits in the brain have long been recognised for their information processing capabiliti...
Modeling networks of spiking neurons is a common scientific method that helps to understand how biol...
eISSN 1648-9144Background and Aim: Simulations of computational models of brain activity are computa...
Recent developments in neuromorphic hardware engineering make mixed-signal VLSI neural network model...