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Neural associative memory (AM) is one of the critical building blocks for cognitive workloads such as classification and recognition. It learns and retrieves memories as humans brain does, i.e., changing the strengths of plastic synapses (weights) based on inputs and retrieving information by information itself. One of the key challenges in designing AM is to extend memory capacity (i.e., memories...
We present the design and measurement of a continuous-time, accelerated, reconfigurable Leaky Integrate and Fire (LIF) neuron model emulated in 65-nm CMOS technology. The neuron circuit is designed as a sub-circuit of our highly integrated neuromorphic prototype chip, the “HICANN-DLS”. The design is geared towards testability and debug features, as well as area and power efficiency. Each neuron in...
We present the design and measurement of a continuous-time, accelerated, reconfigurable Leaky Integrate and Fire (LIF) neuron model emulated in 65-nm CMOS technology. The neuron circuit is designed as a sub-circuit of our highly integrated neuromorphic prototype chip, the “HICANN-DLS”. The design is geared towards testability and debug features, as well as area and power efficiency. Each neuron in...
Recent experimental evidence suggests that glial cells are more than just supporting cells to neurons — they play an active role in signal transmission in the brain. We herein propose to investigate the importance of these mechanisms and model neuron-glia interactions at synapses using three approaches: A parametric model that takes into account the underlying mechanisms of the physiological system,...
In this paper, different types of artificial intelligence networks were compared in order to simulate the nonlinear behavior of nanoscale MOSFETs. The accuracy of the approaches in determining the device drain current and the training time were discussed. The training data was generated in Hspice environment and imported in Matlab7.5 for simulation. Finally, optimized structures for accurate and fast...
Most neural networks have a basic competitive learning rule on top of a more involved processing algorithm. This work highlights three basic learning rules - winner-take-all (WTA), spike timing dependent plasticity (STDP), and inhibition of return (IOR). It also gives a design example implementing WTA combined with STDP in a position detector. A CMOS and an MMOST (Memristor-MOS Technology) design...
Dendritic computations play a major role in the processing that occurs within each cortical neuron. In particular, for many pyramidal neurons, dendritic spiking has a major effect on neural behavior and must be modeled in order to capture nonlinear response of a neuron to its presynaptic inputs. This paper presents electronic circuits for dendritic spiking that demonstrate the global and local reset...
Modeling neural tissue is an important tool to investigate biological neural networks. Until recently, most of this modeling has been done using numerical methods. In the European research project "FACETS" this computational approach is complemented by different kinds of neuromorphic systems. A special emphasis lies in the usability of these systems for neuroscience. To accomplish this goal...
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