55 research outputs found
Embedding Logic and Non-volatile Devices in CMOS Digital Circuits for Improving Energy Efficiency
abstract: Static CMOS logic has remained the dominant design style of digital systems for
more than four decades due to its robustness and near zero standby current. Static
CMOS logic circuits consist of a network of combinational logic cells and clocked sequential
elements, such as latches and flip-flops that are used for sequencing computations
over time. The majority of the digital design techniques to reduce power, area, and
leakage over the past four decades have focused almost entirely on optimizing the
combinational logic. This work explores alternate architectures for the flip-flops for
improving the overall circuit performance, power and area. It consists of three main
sections.
First, is the design of a multi-input configurable flip-flop structure with embedded
logic. A conventional D-type flip-flop may be viewed as realizing an identity function,
in which the output is simply the value of the input sampled at the clock edge. In
contrast, the proposed multi-input flip-flop, named PNAND, can be configured to
realize one of a family of Boolean functions called threshold functions. In essence,
the PNAND is a circuit implementation of the well-known binary perceptron. Unlike
other reconfigurable circuits, a PNAND can be configured by simply changing the
assignment of signals to its inputs. Using a standard cell library of such gates, a technology
mapping algorithm can be applied to transform a given netlist into one with
an optimal mixture of conventional logic gates and threshold gates. This approach
was used to fabricate a 32-bit Wallace Tree multiplier and a 32-bit booth multiplier
in 65nm LP technology. Simulation and chip measurements show more than 30%
improvement in dynamic power and more than 20% reduction in core area.
The functional yield of the PNAND reduces with geometry and voltage scaling.
The second part of this research investigates the use of two mechanisms to improve
the robustness of the PNAND circuit architecture. One is the use of forward and reverse body biases to change the device threshold and the other is the use of RRAM
devices for low voltage operation.
The third part of this research focused on the design of flip-flops with non-volatile
storage. Spin-transfer torque magnetic tunnel junctions (STT-MTJ) are integrated
with both conventional D-flipflop and the PNAND circuits to implement non-volatile
logic (NVL). These non-volatile storage enhanced flip-flops are able to save the state of
system locally when a power interruption occurs. However, manufacturing variations
in the STT-MTJs and in the CMOS transistors significantly reduce the yield, leading
to an overly pessimistic design and consequently, higher energy consumption. A
detailed analysis of the design trade-offs in the driver circuitry for performing backup
and restore, and a novel method to design the energy optimal driver for a given yield is
presented. Efficient designs of two nonvolatile flip-flop (NVFF) circuits are presented,
in which the backup time is determined on a per-chip basis, resulting in minimizing
the energy wastage and satisfying the yield constraint. To achieve a yield of 98%,
the conventional approach would have to expend nearly 5X more energy than the
minimum required, whereas the proposed tunable approach expends only 26% more
energy than the minimum. A non-volatile threshold gate architecture NV-TLFF are
designed with the same backup and restore circuitry in 65nm technology. The embedded
logic in NV-TLFF compensates performance overhead of NVL. This leads to the
possibility of zero-overhead non-volatile datapath circuits. An 8-bit multiply-and-
accumulate (MAC) unit is designed to demonstrate the performance benefits of the
proposed architecture. Based on the results of HSPICE simulations, the MAC circuit
with the proposed NV-TLFF cells is shown to consume at least 20% less power and
area as compared to the circuit designed with conventional DFFs, without sacrificing
any performance.Dissertation/ThesisDoctoral Dissertation Electrical Engineering 201
Embracing the Unreliability of Memory Devices for Neuromorphic Computing
The emergence of resistive non-volatile memories opens the way to highly
energy-efficient computation near- or in-memory. However, this type of
computation is not compatible with conventional ECC, and has to deal with
device unreliability. Inspired by the architecture of animal brains, we present
a manufactured differential hybrid CMOS/RRAM memory architecture suitable for
neural network implementation that functions without formal ECC. We also show
that using low-energy but error-prone programming conditions only slightly
reduces network accuracy
Sensing Schemes for STT-MRAMs structured with high TMR in low RA MTJs
In this work, we investigated the sensing challenges of spin-transfer torque MRAMs structured with perpendicular
magnetic tunnel junctions with a high tunneling magnetoresistance ratio in a low resistance-area product. To overcome
the problems of reading this type of memory, we have proposed a voltage sensing amplifier topology and compared its
performance to that of the current sensing amplifier in terms of power, speed, and bit error rate performance. We have
verified that the proposed sensing scheme offers a substantial improvement in bit-error-rate performance. To enumerate
the read operations of the proposed sensing scheme with the proposed cross-coupled capacitive feedback technique on
the clamped circuity have successfully been performed a 2.5X reduction in average low power and a 13X increase in
average reading speed compared with the previous works due to its device structure and the proposed circuit technique.This work is part of a project that has received funding from the
European Union’s H2020 research and innovation programme under the
Marie Skłodowska-Curie grant agreement No 691178, and supported by the
TUBITAK-Career project #113E76
Towards Efficient In-memory Computing Hardware for Quantized Neural Networks: State-of-the-art, Open Challenges and Perspectives
The amount of data processed in the cloud, the development of
Internet-of-Things (IoT) applications, and growing data privacy concerns force
the transition from cloud-based to edge-based processing. Limited energy and
computational resources on edge push the transition from traditional von
Neumann architectures to In-memory Computing (IMC), especially for machine
learning and neural network applications. Network compression techniques are
applied to implement a neural network on limited hardware resources.
Quantization is one of the most efficient network compression techniques
allowing to reduce the memory footprint, latency, and energy consumption. This
paper provides a comprehensive review of IMC-based Quantized Neural Networks
(QNN) and links software-based quantization approaches to IMC hardware
implementation. Moreover, open challenges, QNN design requirements,
recommendations, and perspectives along with an IMC-based QNN hardware roadmap
are provided
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