FIELD: physics.
SUBSTANCE: invention relates to the computer equipment. Device for simulating faults in software and hardware systems comprises an external device for simulating faults, wherein device further includes a set of test microcontrollers, a database workstation unit which stores system reaction signatures, a workstation unit for simulating faults, which contains an expert algorithm designed to search for the most vulnerable points of the program and to correct the zone of application of the machine learning algorithm, machine learning algorithm for generating data for a microcontroller system, a JTAG interface debugging device, a microcontroller system feedback unit and a database workstation unit.
EFFECT: technical result is broader functional capabilities of simulating faults in software and hardware systems.
1 cl, 1 dwg
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Authors
Dates
2019-08-15—Published
2018-02-13—Filed