Automated Classification of Power Quality Events Using Speech Recognition Techniques
نویسندگان
چکیده
Power quality monitoring has advanced to an important tool for system evaluation. The increased amount of recorded data requires more sophisticated analysis methods. The paper describes the development and operation of a system for automated classification of power quality events. Different to existing approaches the proposed system introduces a new frame-based event model similar to speech models of speech recognition systems.
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