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Maximum Error Modeling for Fault-Tolerant Computation using Maximum a posteriori (MAP) Hypothesis

Information Theory 2021-08-23 v3 math.IT

Abstract

The application of current generation computing machines in safety-centric applications like implantable biomedical chips and automobile safety has immensely increased the need for reviewing the worst-case error behavior of computing devices for fault-tolerant computation. In this work, we propose an exact probabilistic error model that can compute the maximum error over all possible input space in a circuit specific manner and can handle various types of structural dependencies in the circuit. We also provide the worst-case input vector, which has the highest probability to generate an erroneous output, for any given logic circuit. We also present a study of circuit-specific error bounds for fault-tolerant computation in heterogeneous circuits using the maximum error computed for each circuit. We model the error estimation problem as a maximum a posteriori (MAP) estimate, over the joint error probability function of the entire circuit, calculated efficiently through an intelligent search of the entire input space using probabilistic traversal of a binary join tree using Shenoy-Shafer algorithm. We demonstrate this model using MCNC and ISCAS benchmark circuits and validate it using an equivalent HSpice model. Both results yield the same worst-case input vectors and the highest % difference of our error model over HSpice is just 1.23%. We observe that the maximum error probabilities are significantly larger than the average error probabilities, and provides a much tighter error bounds for fault-tolerant computation. We also find that the error estimates depend on the specific circuit structure and the maximum error probabilities are sensitive to the individual gate failure probabilities.

Keywords

Cite

@article{arxiv.0906.3282,
  title  = {Maximum Error Modeling for Fault-Tolerant Computation using Maximum a posteriori (MAP) Hypothesis},
  author = {Karthikeyan Lingasubramanian and Syed M. Alam and Sanjukta Bhanja},
  journal= {arXiv preprint arXiv:0906.3282},
  year   = {2021}
}
R2 v1 2026-06-21T13:14:44.720Z