Repository logo
 

The Impact of Single Event Effect Reliability of Convolution Neural Network Architectures and Hardening Approaches Implemented on SRAM FPGA

Date

2021-08-06

Journal Title

Journal ISSN

Volume Title

Publisher

ORCID

Type

Thesis

Degree Level

Masters

Abstract

Convolution neural networks (CNNs) have powerful data processing and learning capabilities, which have been widely applied to image processing related applications, especially in autonomous driving, medical image classification, space exploration and military applications. Due to the low power consumption, high flexibility, and parallel characteristics of modern field-programmable gate arrays (FPGAs), they are frequently used in CNN implementation as a hardware acceleration platform. Two architectures are mainly used to implement CNNs on FPGAs: the streaming architecture and single computation engines (SCEs) architecture. In the streaming architecture of a CNN, each layer is implemented with one distinct hardware block and each block can be optimized separately. On the other hand, the single computation engine architecture uses a systolic array of processing elements or a matrix multiplication unit as a computation engine to execute the CNN layers sequentially. The control of the hardware and the scheduling of operations is performed by a control unit and associated software. The advantage of this design paradigm is that it consists of a fixed architectural template that can be scaled based on the input of CNNs and the available FPGA resources. Therefore, it is suitable to implement modern complex CNNs that may not fit into the streaming architecture. SRAM-based FPGAs are sensitive to radiation effects, which can generate single event effects (SEEs) in the system. Designs are required to reduce the radiation effects in FPGA-based CNNs for many applications. Previous radiation effects studies mainly focused on streaming architecture and explored triple-modular redundancy (TMR) or selective hardening techniques. As far as the authors know, there are very few radiation effects studies on the CNNs implemented with SCEs architecture on FPGAs and no radiation effects evaluation between the two architectures with proton irradiation. In this thesis, we implement a Modified National Institute of Standards and Technology (MNIST) CNN with two mainstream architectures, both streaming architecture and SCEs architecture, on a Xilinx Zynq UltraScale+ multiprocessor system on a chip (MPSoC) ZCU-102 evaluation kit. Then we evaluate their error, hang, and total failure rate with proton irradiation test at Tri-University Meson Facility (TRIUMF). The cross-section results for different architectures showed that the SCEs design has higher error cross-sections and total failure cross-sections than that of the streaming architecture, even though SCEs architecture uses much fewer hardware resources in FPGA. In addition, two resilience techniques for SCEs architecture named spatial TMR and temporal TMR are designed and adopted for the SCEs architecture with the same hardware structure and utilization by reusing process elements (PEs) or using multiple PEs to carry out each calculation. As a result, the cross-sections of the spatial TMR and temporal TMR SCEs architecture designs are reduced by 34.9% and 59.2%, with an execution time overhead of 14.2% and 21.4% compared with non-harden one, respectively. Thus, the study shows that SCEs architecture for FPGA acceleration has excellent potential for applications in a radiation environment with minimal overhead due to its scalability and flexibility, and spatial TMR and temporal TMR could effectively reduce the error rate and total failure rate with no extra hardware resources. This suggests that spatial TMR and temporal TMR propose in my project seems to be generic for SCEs architecture, and it could be a better redundancy choice for complex CNNs implement with not enough hardware resources.

Description

Keywords

Convolution neural networks (CNNs), Field- programmable gate arrays (FPGAs), accelerator architecture, streaming, single computation engine, temporal, spatial, triple modular redundancy (TMR).

Citation

Degree

Master of Science (M.Sc.)

Department

Electrical and Computer Engineering

Program

Electrical Engineering

Advisor

Citation

Part Of

item.page.relation.ispartofseries

DOI

item.page.identifier.pmid

item.page.identifier.pmcid