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A VLSI Recurrent Network of Integrate-and-Fire Neurons Connected by Plastic Synapses with Long-Term Memory
- IEEE Trans. Neural Net
, 2003
"... Electronic neuromorphic devices with on-chip, on-line learning should be able to modify quickly the synaptic couplings to acquire information about new patterns to be stored (synaptic plasticity) and, at the same time, preserve this information on very long time scales (synaptic stability). Here, we ..."
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Cited by 16 (6 self)
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Electronic neuromorphic devices with on-chip, on-line learning should be able to modify quickly the synaptic couplings to acquire information about new patterns to be stored (synaptic plasticity) and, at the same time, preserve this information on very long time scales (synaptic stability). Here, we illustrate the electronic implementation of a simple solution to this stability-plasticity problem, recently proposed and studied in various contexts. It is based on the observation that reducing the analog depth of the synapses to the extreme (bistable synapses) does not necessarily disrupt the performance of the device as an associative memory, provided that 1) the number of neurons is large enough; 2) the transitions between stable synaptic states are stochastic; and 3) learning is slow. The drastic reduction of the analog depth of the synaptic variable also makes this solution appealing from the point of view of electronic implementation and offers a simple methodological alternative to the technological solution based on floating gates. We describe the full custom analog very large-scale integration (VLSI) realization of a small network of integrate-and-fire neurons connected by bistable deterministic plastic synapses which can implement the idea of stochastic learning. In the absence of stimuli, the memory is preserved indefinitely. During the stimulation the synapse undergoes quick temporary changes through the activities of the pre- and postsynaptic neurons; those changes stochastically result in a long-term modification of the synaptic efficacy. The intentionally disordered pattern of connectivity allows the system to generate a randomness suited to drive the stochastic selection mechanism. We check by a suitable stimulation protocol that the stochastic synaptic pla...
Field-programmable learning arrays
- In Advances in Neural Information Processing Systems 15
, 2003
"... This paper introduces the Field-Programmable Learning Array, a new paradigm for rapid prototyping of learning primitives and machinelearning algorithms in silicon. The FPLA is a mixed-signal counterpart to the all-digital Field-Programmable Gate Array in that it enables rapid prototyping of algorith ..."
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Cited by 4 (0 self)
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This paper introduces the Field-Programmable Learning Array, a new paradigm for rapid prototyping of learning primitives and machinelearning algorithms in silicon. The FPLA is a mixed-signal counterpart to the all-digital Field-Programmable Gate Array in that it enables rapid prototyping of algorithms in hardware. Unlike the FPGA, the FPLA is targeted directly for machine learning by providing local, parallel, online analog learning using floating-gate MOS synapse transistors. We present a prototype FPLA chip comprising an array of reconfigurable computational blocks and local interconnect. We demonstrate the viability of this architecture by mapping several learning circuits onto the prototype chip. 1
On-chip compensation of device-mismatch effects in analog VLSI neural networks
- in Advances in Neural Information Processing Systems 17
, 2005
"... Device mismatch in VLSI degrades the accuracy of analog arithmetic circuits and lowers the learning performance of large-scale neural networks implemented in this technology. We show compact, low-power on-chip calibration techniques that compensate for device mismatch. Our techniques enable large-sc ..."
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Cited by 4 (1 self)
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Device mismatch in VLSI degrades the accuracy of analog arithmetic circuits and lowers the learning performance of large-scale neural networks implemented in this technology. We show compact, low-power on-chip calibration techniques that compensate for device mismatch. Our techniques enable large-scale analog VLSI neural networks with learning performance on the order of 10 bits. We demonstrate our techniques on a 64-synapse linear perceptron learning with the Least-Mean-Squares (LMS) algorithm, and fabricated in a 0.35µm CMOS process. 1
Neuromimetic ICs and System for Parameters Extraction in Biological Neuron Models
- Proceedings ISCAS 2006, pp.4207-4210, Island of
, 2006
"... Abstract—This paper presents an analog neuromimetic integrated circuit and an associated system dedicated for experiments of parameters extraction in biological neuron models. The IC based on Hodgkin-Huxley (HH) formalism computes in real-time and continuous mode. The dedicated system is a PCI board ..."
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Cited by 3 (3 self)
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Abstract—This paper presents an analog neuromimetic integrated circuit and an associated system dedicated for experiments of parameters extraction in biological neuron models. The IC based on Hodgkin-Huxley (HH) formalism computes in real-time and continuous mode. The dedicated system is a PCI board that is able to program dynamically the neuron model parameters in the IC. The full system, which includes the IC and the PCI board, is used to build a new hardware/software technique to extract biophysics parameters from biological neuron. This technique could be helpful for the neuroscientists proposing an alternative to voltage-clamp technique. For that, the new technique will use optimization algorithms to be efficient. I.
Field RF Power Extraction Circuits and Systems
, 2004
"... In this thesis, I describe efficient methods for extracting DC power from electromagnetic radiation. This will become an important necessity for a number of applications involving remotely powered devices, such as Radio Frequency Identification (RFID) tags and bionic implants. I first investigate th ..."
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Cited by 1 (0 self)
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In this thesis, I describe efficient methods for extracting DC power from electromagnetic radiation. This will become an important necessity for a number of applications involving remotely powered devices, such as Radio Frequency Identification (RFID) tags and bionic implants. I first investigate the problem abstractly, allowing theoretical bounds on system performance to be derived. Next I devise circuit, antenna and impedance matching network design strategies to efficiently approach these theoretical bounds. Finally, I use these strategies to create an experimental power extraction system that collects RF power at low electromagnetic field strengths. This system enables a substantial increase in the operating range of remotely powered devices.
A 19.2GOPS, 20mW Adaptive FIR Filter
"... We implemented a 48-tap, mixed-signal adaptive FIR filter with 8-bit input and 10-bit output resolution. The filter stores its tap weights in nonvolatile analog memory cells and adapts using the Least-Mean-Square (LMS) algorithm. We run the input through a digital tapped delay line, multiply the dig ..."
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We implemented a 48-tap, mixed-signal adaptive FIR filter with 8-bit input and 10-bit output resolution. The filter stores its tap weights in nonvolatile analog memory cells and adapts using the Least-Mean-Square (LMS) algorithm. We run the input through a digital tapped delay line, multiply the digital words with the analog tap weights using mixed-signal multipliers, and adapt the tap coefficients using pulse-based feedback. The accuracy of the weight updates exceeds 13 bits. The total die area is 2.6mm 2 in a 0.35µm CMOS process. The filter delivers a performance of 19.2GOPS at 200MHz, and consumes 20mW providing a 6mA differential output current. 1.
A Random Projection Imager for Visual Pattern Classification in Analog VLSI
"... Abstract — In this paper, we present a novel CMOS imager architecture that implements the random projection dimensionality reduction algorithm in the focal plane. We employ analog signal processing techniques to achieve low-power operation and our imager can readily integrate with known low-power VL ..."
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Abstract — In this paper, we present a novel CMOS imager architecture that implements the random projection dimensionality reduction algorithm in the focal plane. We employ analog signal processing techniques to achieve low-power operation and our imager can readily integrate with known low-power VLSI classifiers. We fabricated a 20x20 pixel prototype of our 4.2mm 2 imager in 0.35µm CMOS that performs 1GOPS while consuming 1.25mW of power from a 5V supply. I.
Temporally learning floating-gate VLSI synapses
, 2008
"... We present a floating-gate synaptic circuit that updates its weight according to the Spike-Timing-Dependent Plasticity (STDP) rule. The weight (or floating-gate voltage) is updated only if the time difference between the pre- and post-synaptic spikes falls within a learning window. The update is imp ..."
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We present a floating-gate synaptic circuit that updates its weight according to the Spike-Timing-Dependent Plasticity (STDP) rule. The weight (or floating-gate voltage) is updated only if the time difference between the pre- and post-synaptic spikes falls within a learning window. The update is implemented through tunneling and injection mechanisms which can be tuned for very long time constants up to seconds. The novelty of this circuit is that the tunneling and injection mechanisms are turned on only when the correlation of the pre and postsynaptic activity is significant. The additional benefit of this non-volatile technology is that synaptic weights can be stored locally on chip. We present experimental results that show the learning and normalization effects from the fabricated circuits.

