posted on 2009-01-01, 00:00authored byBrian Ricks, Ole J Mengshoel
Health management systems that more accurately
and quickly diagnose faults that may occur in
different technical systems on-board a vehicle will
play a key role in the success of future NASA
missions. We discuss in this paper the diagnosis of
abrupt continuous (or parametric) faults within the
context of probabilistic graphical models, more
specifically Bayesian networks that are compiled
to arithmetic circuits. This paper extends our
previous research, within the same probabilistic
setting, on diagnosis of abrupt discrete faults. Our
approach and diagnostic algorithm ProDiagnose
are domain-independent; however we use an
electrical power system testbed called ADAPT as a
case study. In one set of ADAPT experiments,
performed as part of the 2009 Diagnostic
Challenge, our system turned out to have the best
performance among all competitors. In a second
set of experiments, we show how we have recently
further significantly improved the performance of
the probabilistic model of ADAPT. While these
experiments are obtained for an electrical power
system testbed, we believe they can easily be
transitioned to real-world systems, thus promising
to increase the success of future NASA missions.