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Application of Multiacoustic Data in Feature Extraction of Anemometer

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  • Dawei Chen
  • Xu Guo
  • Muhammad Javaid

Abstract

The acoustic characteristics of wind instruments are a major feature in the field of vocal music. This paper studies the application effect of wind power instrument feature extraction based on multiacoustic data. Combined with the acoustic data training model, the classification algorithm based on deep trust network is used to process multiple acoustic data. Using multiple acoustic data for feature extraction, the recognition and matching between multiple acoustic data and wind measuring instrument are realized. The experiment not only evaluates the error of the network classification algorithm but also describes the evaluation function of the deep belief network classification algorithm in the system. The traditional SNR evaluation method is used to improve the deficiency of evaluation function. Through the deep belief network classification algorithm for self-learning, the instrument recognition method with strong applicability is established. Finally, the effectiveness of multiacoustic data in wind power instrument feature extraction is verified.

Suggested Citation

  • Dawei Chen & Xu Guo & Muhammad Javaid, 2021. "Application of Multiacoustic Data in Feature Extraction of Anemometer," Complexity, Hindawi, vol. 2021, pages 1-10, July.
  • Handle: RePEc:hin:complx:7955909
    DOI: 10.1155/2021/7955909
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