Title of article :
Knowledge Based System for the Evaluation of Safety and the Prevention of Railway Accidents
Author/Authors :
Hadj Mabrouk, H French Institute of Science and Technology for Transport, Development and Networks
Abstract :
This paper describes a contribution to improving the usual safety analysis
methods used in the certification of railway transport systems. The
methodology is based on the complementary and simultaneous use of
knowledge acquisition and machine learning. The purpose is contributed to
the generation of new accident scenarios that could help experts to conclude
on the safe character of a new rail transport system. The method of analysis
and evaluation is centered on the summarized failures (SFs) which are
involved in accident scenarios capitalized. A summarized failure (SF) is a
generic failure produced by the combination of a set of basic failures which
has the same effect on the performance of the system. Each scenario brings
into play one or more SFs.
The purpose is to automatically generate a recognition function for each SF
associated with a scenario class. The SF recognition function is a production
rule which establishes a link between a set of facts (parameters which
describe a scenario or descriptors) and the SF fact. A base of evaluation
rules can be generated for each class of scenarios. The SF deduction stage
requires a preliminary phase during which the rules which have been
generated are transferred to an expert system in order to construct a scenario
evaluation knowledge base. The evaluation knowledge base is exploited by
forward chaining by an inference engine and generates the summarized
failures (SFs) which must enter into the description of the scenario which is
to be evaluated.
Keywords :
Risk , Safety , Railway , Machine learning , Knowledge acquisition
Journal title :
Astroparticle Physics