A Formal Analysis of Fault Diagnosis with D-matrices

@article{Sheppard2007AFA,
  title={A Formal Analysis of Fault Diagnosis with D-matrices},
  author={John W. Sheppard and Stephyn G. W. Butcher},
  journal={Journal of Electronic Testing},
  year={2007},
  volume={23},
  pages={309-322}
}
As new approaches and algorithms are developed for system diagnosis, it is important to reflect on existing approaches to determine their strengths and weaknesses. Of concern is identifying potential reasons for false pulls during maintenance. Within the aerospace community, one approach to system diagnosis—based on the D-matrix derived from test dependency modeling—is used widely, yet little has been done to perform any theoretical assessment of the merits of the approach. Past assessments… CONTINUE READING

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