The take-off of an aircraft is one of the most dangerous flight
phases, as failures and adverse environmental conditions can
lead to a catastrophe. Should abnormal events occur during
the roll phase, the crew or the flight computer has to make the
decision if the take-off can be safely rejected and the aircraft
can brake and come to a standstill on the runway, or if the
take-off has to be attempted in any case.
This decision has to be made instantaneously upon the estimate
of the current state of the aircraft, using available sensor
data under noise and potential failure conditions. In order to
do so, at any time during the roll phase, a prediction has to
be made, if the aircraft can come to a safe stop within the
boundaries of the runway.
In this paper, we formulate this decision making task as an online
prognostics problem and develop a model-based architecture
that allows us to perform a probabilistic prediction of
the aircraft's braking distance given the current aircraft state.
We are using particle filter and Monte-Carlo based prediction
algorithms. Because this task has to be performed in real-time
on the on-board flight computer, computational resources are
very restricted. We therefore propose several models of increasing
fidelity, which have substantially different computational
footprints and exhibit different levels of accuracy that
can impose severe restrictions on the handling of uncertainties
and on the failures that can be modeled.
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The take-off of an aircraft is one of the most dangerous flight
phases, as failures and adverse environmental conditions can
lead to a catastrophe. Should abnormal events occur during
the roll phase, the crew or the flight computer has to make the
decision if the take-off can be safely rejected and the aircraft
can brake and come to a standstill on the runway, or if the
take-off has to be attempted in any case.
This decision has to be made instantaneously upon the estimate...
»