In this paper, we describe a methodical approach for reducing errors due to mismatch in neuron circuits. We chose the neuron's current-frequency (f-i) curve as the desired output and use a sensitivity analysis to determine which transistors contribute most significantly to its variation. This allows us to identify the most critical transistors that need to be matched. For the special case in which floating-gate (FG) transistors are used to reduce this mismatch, we propose a method to further reduce the number of FG devices to be used in the circuit resulting in a corresponding reduction in “calibration” time. In addition to reducing mismatch between neurons, the usage of FG devices allows the user to independently set the parameters of each...
Hardware implementations of spiking neurons can be extremely useful for a large variety of applicati...
Analogue VLSI can be used to implement spike timing dependent neuromorphic training algorithms. This...
We propose an energy-efficient analog implementation of binarized neural network with a novel techni...
In this paper, we describe a methodical approach for reducing errors due to mismatch in neuron circu...
In this thesis, we describe a methodical approach for reducing errors due to mismatch in neuron circ...
As the integrated circuit (IC) technology advances into smaller nanometre feature sizes, a fixed-err...
As the integrated circuit (IC) technology advances into smaller nanometre feature sizes, a fixed-err...
Nease S, Chicca E. Power-Efficient Estimation of Silicon Neuron Firing Rates with Floating-Gate Tran...
In the biological nervous system, large neuronal populations work collaboratively to encode sensory ...
Abstract. We describe an improved spiking silicon neuron (SN) [6] that approximates the dynamics of ...
Random device mismatch that arises as a result of scaling of the CMOS (complementary metal-oxide sem...
Hardware implementations of spiking neurons can be extremely useful for a large variety of applicati...
An increasing number of research groups are developing custom hybrid analog/digital very large scale...
Neftci E, Chicca E, Indiveri G, Douglas RJ. A systematic method for configuring VLSI networks of spi...
This research looks at an ultra-low power subthreshold-operated silicon neuron circuit designed with...
Hardware implementations of spiking neurons can be extremely useful for a large variety of applicati...
Analogue VLSI can be used to implement spike timing dependent neuromorphic training algorithms. This...
We propose an energy-efficient analog implementation of binarized neural network with a novel techni...
In this paper, we describe a methodical approach for reducing errors due to mismatch in neuron circu...
In this thesis, we describe a methodical approach for reducing errors due to mismatch in neuron circ...
As the integrated circuit (IC) technology advances into smaller nanometre feature sizes, a fixed-err...
As the integrated circuit (IC) technology advances into smaller nanometre feature sizes, a fixed-err...
Nease S, Chicca E. Power-Efficient Estimation of Silicon Neuron Firing Rates with Floating-Gate Tran...
In the biological nervous system, large neuronal populations work collaboratively to encode sensory ...
Abstract. We describe an improved spiking silicon neuron (SN) [6] that approximates the dynamics of ...
Random device mismatch that arises as a result of scaling of the CMOS (complementary metal-oxide sem...
Hardware implementations of spiking neurons can be extremely useful for a large variety of applicati...
An increasing number of research groups are developing custom hybrid analog/digital very large scale...
Neftci E, Chicca E, Indiveri G, Douglas RJ. A systematic method for configuring VLSI networks of spi...
This research looks at an ultra-low power subthreshold-operated silicon neuron circuit designed with...
Hardware implementations of spiking neurons can be extremely useful for a large variety of applicati...
Analogue VLSI can be used to implement spike timing dependent neuromorphic training algorithms. This...
We propose an energy-efficient analog implementation of binarized neural network with a novel techni...