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One of the most notable features of nanometer scale CMOS technology
is the increasing magnitude of variability of the key device
parameters affecting performance of integrated circuits. The growth
of variability can be attributed to multiple factors, including the
difficulty of manufacturing control, the emergence of new
systematic variation-generating mechanisms, and most importantly,
the increase in atomic-scale randomness, where device operation
must be described as a stochastic process. In addition to
wide-sense stationary stochastic device variability and temperature
variation, existence of non-stationary stochastic electrical noise
associated with fundamental processes in integrated-circuit devices
represents an elementary limit on the performance of electronic
circuits. In an attempt to address these issues, Stochastic Process
Variation in Deep-Submicron CMOS: Circuits and Algorithms offers
unique combination of mathematical treatment of random process
variation, electrical noise and temperature and necessary circuit
realizations for on-chip monitoring and performance calibration.
The associated problems are addressed at various abstraction
levels, i.e. circuit level, architecture level and system level. It
therefore provides a broad view on the various solutions that have
to be used and their possible combination in very effective
complementary techniques for both analog/mixed-signal and digital
circuits. The feasibility of the described algorithms and built-in
circuitry has been verified by measurements from the silicon
prototypes fabricated in standard 90 nm and 65 nm CMOS technology.
This book provides a complete overview of significant design
challenges in respect to circuit miniaturization and power
reduction of the neural recording system, along with circuit
topologies, architecture trends, and (post-silicon) circuit
optimization algorithms. The introduced novel circuits for signal
conditioning, quantization, and classification, as well as system
configurations focus on optimized power-per-area performance, from
the spatial resolution (i.e. number of channels), feasible wireless
data bandwidth and information quality to the delivered power of
implantable system.
Simulation of brain neurons in real-time using
biophysically-meaningful models is a pre-requisite for
comprehensive understanding of how neurons process information and
communicate with each other, in effect efficiently complementing
in-vivo experiments. In spiking neural networks (SNNs), propagated
information is not just encoded by the firing rate of each neuron
in the network, as in artificial neural networks (ANNs), but, in
addition, by amplitude, spike-train patterns, and the transfer
rate. The high level of realism of SNNs and more significant
computational and analytic capabilities in comparison with ANNs,
however, limit the size of the realized networks. Consequently, the
main challenge in building complex and biophysically-accurate SNNs
is largely posed by the high computational and data transfer
demands. Real-Time Multi-Chip Neural Network for Cognitive Systems
presents novel real-time, reconfigurable, multi-chip SNN system
architecture based on localized communication, which effectively
reduces the communication cost to a linear growth. The system use
double floating-point arithmetic for the most biologically accurate
cell behavior simulation, and is flexible enough to offer an easy
implementation of various neuron network topologies, cell
communication schemes, as well as models and kinds of cells. The
system offers a high run-time configurability, which reduces the
need for resynthesizing the system. In addition, the simulator
features configurable on- and off-chip communication latencies as
well as neuron calculation latencies. All parts of the system are
generated automatically based on the neuron interconnection scheme
in use. The simulator allows exploration of different system
configurations, e.g. the interconnection scheme between the
neurons, the intracellular concentration of different chemical
compounds (ions), which affect how action potentials are initiated
and propagate.
With the fast advancement of CMOS fabrication technology, more and
more signal-processing functions are implemented in the digital
domain for a lower cost, lower power consumption, higher yield, and
higher re-configurability. This has recently generated a great
demand for low-power, low-voltage A/D converters that can be
realized in a mainstream deep-submicron CMOS technology. However,
the discrepancies between lithography wavelengths and circuit
feature sizes are increasing. Lower power supply voltages
significantly reduce noise margins and increase variations in
process, device and design parameters. Consequently, it is steadily
more difficult to control the fabrication process precisely enough
to maintain uniformity. The inherent randomness of materials used
in fabrication at nanoscopic scales means that performance will be
increasingly variable, not only from die-to-die but also within
each individual die. Parametric variability will be compounded by
degradation in nanoscale integrated circuits resulting in
instability of parameters over time, eventually leading to the
development of faults. Process variation cannot be solved by
improving manufacturing tolerances; variability must be reduced by
new device technology or managed by design in order for scaling to
continue. Similarly, within-die performance variation also imposes
new challenges for test methods. In an attempt to address these
issues, Low-Power High-Resolution Analog-to-Digital Converters
specifically focus on: i) improving the power efficiency for the
high-speed, and low spurious spectral A/D conversion performance by
exploring the potential of low-voltage analog design and
calibration techniques, respectively, and ii) development of
circuit techniques and algorithms to enhance testing and debugging
potential to detect errors dynamically, to isolate and confine
faults, and to recover errors continuously. The feasibility of the
described methods has been verified by measurements from the
silicon prototypes fabricated in standard 180nm, 90nm and 65nm CMOS
technology.
This book provides a complete overview of significant design
challenges in respect to circuit miniaturization and power
reduction of the neural recording system, along with circuit
topologies, architecture trends, and (post-silicon) circuit
optimization algorithms. The introduced novel circuits for signal
conditioning, quantization, and classification, as well as system
configurations focus on optimized power-per-area performance, from
the spatial resolution (i.e. number of channels), feasible wireless
data bandwidth and information quality to the delivered power of
implantable system.
One of the most notable features of nanometer scale CMOS technology
is the increasing magnitude of variability of the key device
parameters affecting performance of integrated circuits. The growth
of variability can be attributed to multiple factors, including the
difficulty of manufacturing control, the emergence of new
systematic variation-generating mechanisms, and most importantly,
the increase in atomic-scale randomness, where device operation
must be described as a stochastic process. In addition to
wide-sense stationary stochastic device variability and temperature
variation, existence of non-stationary stochastic electrical noise
associated with fundamental processes in integrated-circuit devices
represents an elementary limit on the performance of electronic
circuits. In an attempt to address these issues, Stochastic Process
Variation in Deep-Submicron CMOS: Circuits and Algorithms offers
unique combination of mathematical treatment of random process
variation, electrical noise and temperature and necessary circuit
realizations for on-chip monitoring and performance calibration.
The associated problems are addressed at various abstraction
levels, i.e. circuit level, architecture level and system level. It
therefore provides a broad view on the various solutions that have
to be used and their possible combination in very effective
complementary techniques for both analog/mixed-signal and digital
circuits. The feasibility of the described algorithms and built-in
circuitry has been verified by measurements from the silicon
prototypes fabricated in standard 90 nm and 65 nm CMOS technology.
With the fast advancement of CMOS fabrication technology, more and
more signal-processing functions are implemented in the digital
domain for a lower cost, lower power consumption, higher yield, and
higher re-configurability. This has recently generated a great
demand for low-power, low-voltage A/D converters that can be
realized in a mainstream deep-submicron CMOS technology. However,
the discrepancies between lithography wavelengths and circuit
feature sizes are increasing. Lower power supply voltages
significantly reduce noise margins and increase variations in
process, device and design parameters. Consequently, it is steadily
more difficult to control the fabrication process precisely enough
to maintain uniformity. The inherent randomness of materials used
in fabrication at nanoscopic scales means that performance will be
increasingly variable, not only from die-to-die but also within
each individual die. Parametric variability will be compounded by
degradation in nanoscale integrated circuits resulting in
instability of parameters over time, eventually leading to the
development of faults. Process variation cannot be solved by
improving manufacturing tolerances; variability must be reduced by
new device technology or managed by design in order for scaling to
continue. Similarly, within-die performance variation also imposes
new challenges for test methods. In an attempt to address these
issues, Low-Power High-Resolution Analog-to-Digital Converters
specifically focus on: i) improving the power efficiency for the
high-speed, and low spurious spectral A/D conversion performance by
exploring the potential of low-voltage analog design and
calibration techniques, respectively, and ii) development of
circuit techniques and algorithms to enhance testing and debugging
potential to detect errors dynamically, to isolate and confine
faults, and to recover errors continuously. The feasibility of the
described methods has been verified by measurements from the
silicon prototypes fabricated in standard 180nm, 90nm and 65nm CMOS
technology.
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