FIELD: electrical engineering.
SUBSTANCE: invention is used for detection of anomalies in a shape of an electrical signal. Signals are analyzed, which have a periodically repeated part, as well as one and only one ascending transition from a conventionally designated area of low amplitudes to a conventionally designated area of high amplitudes within each separate period. Most signals found in nature relate to this type, including signals of a sinusoidal, triangular, and rectangular shape.
EFFECT: acceleration of detection of anomalies in a shape of periods of an electrical signal.
1 cl, 13 dwg
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Authors
Dates
2022-12-19—Published
2021-10-05—Filed