Characterizing The Impact Of Soft Errors Affecting Floating-Point Alus Using Rtl-Level Fault Injection

PROCEEDINGS OF THE 47TH INTERNATIONAL CONFERENCE ON PARALLEL PROCESSING(2018)

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摘要
Strategies to detect, correct, or mitigate the impact of soft errors rely on errors injection experiments. For efficient evaluation, these experiments typically inject errors in software by sampling errors from a candidate distribution. Most often, these strategies randomly select and flip one bit in the output of an instruction. While single-bit flips may constitute a meaningful model for errors affecting hardware, the appropriateness of this model for software-based errors has not been studied. In this paper, we examine the manifestation of errors in the output registers due to errors affecting candidate instructions executed by floating-point arithmetic logic units (ALUs). We inject single-bit flips into the register-transfer level descriptions of floating-point ALUs and analyze the differences between anticipated and observed outputs when executing floating-point addition, subtraction, multiplication, and division. We choose the operands for these instructions randomly and from operands observed in five benchmarks. We observe a rich distribution of errors in the output and analyze their implications for software-based fault injection campaigns.
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关键词
Fault injection experiments, RTL simulation
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