As the integrated circuit (IC) technology advances into smaller nanometre feature sizes, a fixed-error noise known as device mismatch is introduced owing to the dissimilarity between transistors, and this degrades the accuracy of analog circuits. In this paper, we present an analog co-processor that uses this fixed-pattern noise to its advantage to perform complex computation. This circuit is an extension of our previously published trainable analogue block (TAB) framework and uses multiple inputs that substantially increase functionality. We present measurement results of our two-input analogue co-processor built using a 130-nm process technology and show its learning capabilities for regression and classification tasks. We also show that ...
The neural computation field had finally delivered on its promises in 2013 when the University of To...
Neuromorphic processing systems implementing spiking neural networks with mixed signal analog/digita...
As the demand for energy-efficient cognitive computing keeps increasing, the conventional von Neuman...
As the integrated circuit (IC) technology advances into smaller nanometre feature sizes, a fixed-err...
Random device mismatch that arises as a result of scaling of the CMOS (complementary metal-oxide sem...
In the biological nervous system, large neuronal populations work collaboratively to encode sensory ...
Stochastic computing has shown promising results for low-power area-efficient hardware implementatio...
Random device mate that arises as a result of scaling of the CMOS (complementary metal-oxide semicon...
Advances in integrated circuit (IC) fabrication technology have reduced feature sizes to the order o...
In this thesis, we describe a methodical approach for reducing errors due to mismatch in neuron circ...
Optimization of analogue neural circuit designs is one of the most challenging, complicated, time-co...
This work addresses neural and analog computation on reconfigurable mixed-signal platforms. Many eng...
Recent developments in artificial intelligence (AI) have been possible due to the increased computin...
In this paper we will extend the transconductance-mode (T-mode) approach [1] to implement analog con...
Memristive devices represent a promising technology for building neuromorphic electronic systems. In...
The neural computation field had finally delivered on its promises in 2013 when the University of To...
Neuromorphic processing systems implementing spiking neural networks with mixed signal analog/digita...
As the demand for energy-efficient cognitive computing keeps increasing, the conventional von Neuman...
As the integrated circuit (IC) technology advances into smaller nanometre feature sizes, a fixed-err...
Random device mismatch that arises as a result of scaling of the CMOS (complementary metal-oxide sem...
In the biological nervous system, large neuronal populations work collaboratively to encode sensory ...
Stochastic computing has shown promising results for low-power area-efficient hardware implementatio...
Random device mate that arises as a result of scaling of the CMOS (complementary metal-oxide semicon...
Advances in integrated circuit (IC) fabrication technology have reduced feature sizes to the order o...
In this thesis, we describe a methodical approach for reducing errors due to mismatch in neuron circ...
Optimization of analogue neural circuit designs is one of the most challenging, complicated, time-co...
This work addresses neural and analog computation on reconfigurable mixed-signal platforms. Many eng...
Recent developments in artificial intelligence (AI) have been possible due to the increased computin...
In this paper we will extend the transconductance-mode (T-mode) approach [1] to implement analog con...
Memristive devices represent a promising technology for building neuromorphic electronic systems. In...
The neural computation field had finally delivered on its promises in 2013 when the University of To...
Neuromorphic processing systems implementing spiking neural networks with mixed signal analog/digita...
As the demand for energy-efficient cognitive computing keeps increasing, the conventional von Neuman...