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Compensating process and temperature variation in 32nm CMOS circuits with adaptive body biasTariq, Usman, 1982- 21 October 2010 (has links)
As we scale down each process generation the degree of control we have on device parameters decreases. We are left to contend with a great deal of variability in process and environmental parameters. Process variation impacts dopant concentration, channel length, oxide thickness and other device parameters. Temperature variation too affects several parameters, amongst them are the threshold voltage and carrier mobility. All of these variations can either be margined for during design or compensated for dynamically. In this paper the technique of adaptive body bias is successfully applied to compensate for the variation in design so that the circuit operates at no more than 10 percent of the optimal pvt (process voltage temperature) point while minimizing leakage. / text
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Design and implementation of a sub-threshold wireless BFSK transmitterPaul, Suganth 15 May 2009 (has links)
Power Consumption in VLSI (Very Large Scale Integrated) circuits is currently a
major issue in the semiconductor industry. Power is a first order design constraint in many
applications. Several of these applications need extreme low power but do not need high
speed. Sub-threshold circuit design can be used in these cases, but at such a low supply
voltage these circuits exhibit an exponential sensitivity to process, voltage and temperature
(PVT) variations. In this thesis we implement and test a robust sub-threshold design flow
which uses circuit level PVT compensation to stabilize circuit performance. This is done
by dynamic modulation of the delay of a representative signal in the circuit and then phase
locking it with an external reference signal.
We design and fabricate a sub-threshold wireless BFSK transmitter chip. The transmitter
is specified to transmit baseband signals up to a data rate of 32kbps over a distance
of 1000m. In addition to the sub-threshold implementation, we implement the BFSK transmitter
using a standard cell methodology on the same die operating at super-threshold voltages
on a different voltage domain. Experiments using the fabricated die show that the
sub-threshold circuit consumes 19.4x lower power than the traditional standard cell based
implementation.
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Design and implementation of a sub-threshold wireless BFSK transmitterPaul, Suganth 10 October 2008 (has links)
Power Consumption in VLSI (Very Large Scale Integrated) circuits is currently a
major issue in the semiconductor industry. Power is a first order design constraint in many
applications. Several of these applications need extreme low power but do not need high
speed. Sub-threshold circuit design can be used in these cases, but at such a low supply
voltage these circuits exhibit an exponential sensitivity to process, voltage and temperature
(PVT) variations. In this thesis we implement and test a robust sub-threshold design flow
which uses circuit level PVT compensation to stabilize circuit performance. This is done
by dynamic modulation of the delay of a representative signal in the circuit and then phase
locking it with an external reference signal.
We design and fabricate a sub-threshold wireless BFSK transmitter chip. The transmitter
is specified to transmit baseband signals up to a data rate of 32kbps over a distance
of 1000m. In addition to the sub-threshold implementation, we implement the BFSK transmitter
using a standard cell methodology on the same die operating at super-threshold voltages
on a different voltage domain. Experiments using the fabricated die show that the
sub-threshold circuit consumes 19.4x lower power than the traditional standard cell based
implementation.
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Robust Design of Variation-Sensitive Digital CircuitsMoustafa, Hassan January 2011 (has links)
The nano-age has already begun, where typical feature dimensions are smaller than 100nm. The operating frequency is expected to increase up to
12 GHz, and a single chip will contain over 12 billion transistors in 2020, as given by the International Technology Roadmap for Semiconductors
(ITRS) initiative. ITRS also predicts that the scaling of CMOS devices and process technology, as it is known today, will become much more
difficult as the industry advances towards the 16nm technology node and further. This aggressive scaling of CMOS technology has pushed the
devices to their physical limits. Design goals are governed by several factors other than power, performance and area such as process
variations, radiation induced soft errors, and aging degradation mechanisms. These new design challenges have a strong impact on the parametric
yield of nanometer digital circuits and also result in functional yield losses in variation-sensitive digital circuits such as Static Random
Access Memory (SRAM) and flip-flops. Moreover, sub-threshold SRAM and flip-flops circuits, which are aggravated by the strong demand for lower
power consumption, show larger sensitivity to these challenges which reduces their robustness and yield. Accordingly, it is not surprising that
the ITRS considers variability and reliability as the most challenging obstacles for nanometer digital circuits robust design.
Soft errors are considered one of the main reliability and robustness concerns in SRAM arrays in sub-100nm technologies due to low operating
voltage, small node capacitance, and high packing density. The SRAM arrays soft errors immunity is also affected by process variations. We
develop statistical design-oriented soft errors immunity variations models for super-threshold and sub-threshold SRAM cells accounting for
die-to-die variations and within-die variations. This work provides new design insights and highlights the important design knobs that can be
used to reduce the SRAM cells soft errors immunity variations. The developed models are scalable, bias dependent, and only require the
knowledge of easily measurable parameters. This makes them useful in early design exploration, circuit optimization as well as technology
prediction. The derived models are verified using Monte Carlo SPICE simulations, referring to an industrial hardware-calibrated 65nm CMOS
technology.
The demand for higher performance leads to very deep pipelining which means that hundreds of thousands of flip-flops are required to control
the data flow under strict timing constraints. A violation of the timing constraints at a flip-flop can result in latching incorrect data
causing the overall system to malfunction. In addition, the flip-flops power dissipation represents a considerable fraction of the total power
dissipation. Sub-threshold flip-flops are considered the most energy efficient solution for low power applications in which, performance is of
secondary importance. Accordingly, statistical gate sizing is conducted to different flip-flops topologies for timing yield improvement of
super-threshold flip-flops and power yield improvement of sub-threshold flip-flops. Following that, a comparative analysis between these
flip-flops topologies considering the required overhead for yield improvement is performed. This comparative analysis provides useful
recommendations that help flip-flops designers on selecting the best flip-flops topology that satisfies their system specifications while
taking the process variations impact and robustness requirements into account.
Adaptive Body Bias (ABB) allows the tuning of the transistor threshold voltage, Vt, by controlling the transistor body voltage. A forward
body bias reduces Vt, increasing the device speed at the expense of increased leakage power. Alternatively, a reverse body bias increases
Vt, reducing the leakage power but slowing the device. Therefore, the impact of process variations is mitigated by speeding up slow and
less leaky devices or slowing down devices that are fast and highly leaky. Practically, the implementation of the ABB is desirable to bias each
device in a design independently, to mitigate within-die variations. However, supplying so many separate voltages inside a die results in a
large area overhead. On the other hand, using the same body bias for all devices on the same die limits its capability to compensate for
within-die variations. Thus, the granularity level of the ABB scheme is a trade-off between the within-die variations compensation capability
and the associated area overhead. This work introduces new ABB circuits that exhibit lower area overhead by a factor of 143X than that of
previous ABB circuits. In addition, these ABB circuits are resolution free since no digital-to-analog converters or analog-to-digital
converters are required on their implementations. These ABB circuits are adopted to high performance critical paths, emulating a real
microprocessor architecture, for process variations compensation and also adopted to SRAM arrays, for Negative Bias Temperature Instability
(NBTI) aging and process variations compensation. The effectiveness of the new ABB circuits is verified by post layout simulation results and
test chip measurements using triple-well 65nm CMOS technology.
The highly capacitive nodes of wide fan-in dynamic circuits and SRAM bitlines limit the performance of these circuits. In addition, process
variations mitigation by statistical gate sizing increases this capacitance further and fails in achieving the target yield improvement. We
propose new negative capacitance circuits that reduce the overall parasitic capacitance of these highly capacitive nodes. These negative
capacitance circuits are adopted to wide fan-in dynamic circuits for timing yield improvement up to 99.87% and to SRAM arrays for read access
yield improvement up to 100%. The area and power overheads of these new negative capacitance circuits are amortized over the large die area of
the microprocessor and the SRAM array. The effectiveness of the new negative capacitance circuits is verified by post layout simulation results
and test chip measurements using 65nm CMOS technology.
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Robust Design of Variation-Sensitive Digital CircuitsMoustafa, Hassan January 2011 (has links)
The nano-age has already begun, where typical feature dimensions are smaller than 100nm. The operating frequency is expected to increase up to
12 GHz, and a single chip will contain over 12 billion transistors in 2020, as given by the International Technology Roadmap for Semiconductors
(ITRS) initiative. ITRS also predicts that the scaling of CMOS devices and process technology, as it is known today, will become much more
difficult as the industry advances towards the 16nm technology node and further. This aggressive scaling of CMOS technology has pushed the
devices to their physical limits. Design goals are governed by several factors other than power, performance and area such as process
variations, radiation induced soft errors, and aging degradation mechanisms. These new design challenges have a strong impact on the parametric
yield of nanometer digital circuits and also result in functional yield losses in variation-sensitive digital circuits such as Static Random
Access Memory (SRAM) and flip-flops. Moreover, sub-threshold SRAM and flip-flops circuits, which are aggravated by the strong demand for lower
power consumption, show larger sensitivity to these challenges which reduces their robustness and yield. Accordingly, it is not surprising that
the ITRS considers variability and reliability as the most challenging obstacles for nanometer digital circuits robust design.
Soft errors are considered one of the main reliability and robustness concerns in SRAM arrays in sub-100nm technologies due to low operating
voltage, small node capacitance, and high packing density. The SRAM arrays soft errors immunity is also affected by process variations. We
develop statistical design-oriented soft errors immunity variations models for super-threshold and sub-threshold SRAM cells accounting for
die-to-die variations and within-die variations. This work provides new design insights and highlights the important design knobs that can be
used to reduce the SRAM cells soft errors immunity variations. The developed models are scalable, bias dependent, and only require the
knowledge of easily measurable parameters. This makes them useful in early design exploration, circuit optimization as well as technology
prediction. The derived models are verified using Monte Carlo SPICE simulations, referring to an industrial hardware-calibrated 65nm CMOS
technology.
The demand for higher performance leads to very deep pipelining which means that hundreds of thousands of flip-flops are required to control
the data flow under strict timing constraints. A violation of the timing constraints at a flip-flop can result in latching incorrect data
causing the overall system to malfunction. In addition, the flip-flops power dissipation represents a considerable fraction of the total power
dissipation. Sub-threshold flip-flops are considered the most energy efficient solution for low power applications in which, performance is of
secondary importance. Accordingly, statistical gate sizing is conducted to different flip-flops topologies for timing yield improvement of
super-threshold flip-flops and power yield improvement of sub-threshold flip-flops. Following that, a comparative analysis between these
flip-flops topologies considering the required overhead for yield improvement is performed. This comparative analysis provides useful
recommendations that help flip-flops designers on selecting the best flip-flops topology that satisfies their system specifications while
taking the process variations impact and robustness requirements into account.
Adaptive Body Bias (ABB) allows the tuning of the transistor threshold voltage, Vt, by controlling the transistor body voltage. A forward
body bias reduces Vt, increasing the device speed at the expense of increased leakage power. Alternatively, a reverse body bias increases
Vt, reducing the leakage power but slowing the device. Therefore, the impact of process variations is mitigated by speeding up slow and
less leaky devices or slowing down devices that are fast and highly leaky. Practically, the implementation of the ABB is desirable to bias each
device in a design independently, to mitigate within-die variations. However, supplying so many separate voltages inside a die results in a
large area overhead. On the other hand, using the same body bias for all devices on the same die limits its capability to compensate for
within-die variations. Thus, the granularity level of the ABB scheme is a trade-off between the within-die variations compensation capability
and the associated area overhead. This work introduces new ABB circuits that exhibit lower area overhead by a factor of 143X than that of
previous ABB circuits. In addition, these ABB circuits are resolution free since no digital-to-analog converters or analog-to-digital
converters are required on their implementations. These ABB circuits are adopted to high performance critical paths, emulating a real
microprocessor architecture, for process variations compensation and also adopted to SRAM arrays, for Negative Bias Temperature Instability
(NBTI) aging and process variations compensation. The effectiveness of the new ABB circuits is verified by post layout simulation results and
test chip measurements using triple-well 65nm CMOS technology.
The highly capacitive nodes of wide fan-in dynamic circuits and SRAM bitlines limit the performance of these circuits. In addition, process
variations mitigation by statistical gate sizing increases this capacitance further and fails in achieving the target yield improvement. We
propose new negative capacitance circuits that reduce the overall parasitic capacitance of these highly capacitive nodes. These negative
capacitance circuits are adopted to wide fan-in dynamic circuits for timing yield improvement up to 99.87% and to SRAM arrays for read access
yield improvement up to 100%. The area and power overheads of these new negative capacitance circuits are amortized over the large die area of
the microprocessor and the SRAM array. The effectiveness of the new negative capacitance circuits is verified by post layout simulation results
and test chip measurements using 65nm CMOS technology.
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A Workload Based Lookup Table For Minimal Power Operation Under Supply And Body Bias ControlSreejith, K 08 1900 (has links)
Dynamic Voltage Scaling (DVS) and Adaptive body bias (ABB) techniques respectively try to reduce the dynamic and static power components of an integrated circuit. Ideally, the two techniques can be combined to find the optimal operating voltages (VDD and VBB) to minimize power consumption. A combination of the DVS and ABB may warrant the circuit to operate at voltages (supply and body bias) different from the values specified by the two methods working independently. Also, this VDD and VBB values for minimal power consumption varies with the workload of the circuit. The workload can be used as an index to select the optimal VDD/VBB values to minimize the total power consumption. This paper examines the optimal voltages for minimal power operation for typical data path circuits like adders and multiply-accumulate (MAC) units across various process, voltage, and temperature conditions and under different workloads. In addition, a workload based look up table to minimize the power consumption is also proposed. Simulation results for an adder and a multiply-accumulate circuit block indicate a power saving of 12-30% over standard DVS scheme.
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