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Underwater Acoustic Signal Prediction Based on MVMD and Optimized Kernel Extreme Learning Machine

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  • Hong Yang
  • Lipeng Gao
  • Guohui Li

Abstract

Aiming at the chaotic characteristics of underwater acoustic signal, a prediction model of grey wolf-optimized kernel extreme learning machine (OKELM) based on MVMD is proposed in this paper for short-term prediction of underwater acoustic signals. To solve the problem of K value selection in variational mode decomposition, a new K value selection method MVMD is proposed from the perspective of mutual information, which avoids the blindness of variational mode decomposition (VMD) in the preset modal number. Based on the prediction model of kernel extreme learning machine (KELM), this paper uses grey wolf optimization (GWO) algorithm to optimize and select its regularization parameters and kernel parameters and proposes an optimized kernel extreme learning machine OKELM. To further improve the prediction performance of the model, combined with MVMD, an underwater acoustic signal prediction model based on MVMD-OKELM is established. MVMD-OKELM prediction model is applied to Mackey–Glass chaotic time series prediction and underwater acoustic signal prediction and is compared with ARIMA, EMD-OKELM, and other prediction models. The experimental results show that the proposed MVMD-OKELM prediction model has a higher prediction accuracy and can be effectively applied to the prediction of underwater acoustic signal series.

Suggested Citation

  • Hong Yang & Lipeng Gao & Guohui Li, 2020. "Underwater Acoustic Signal Prediction Based on MVMD and Optimized Kernel Extreme Learning Machine," Complexity, Hindawi, vol. 2020, pages 1-17, April.
  • Handle: RePEc:hin:complx:6947059
    DOI: 10.1155/2020/6947059
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    Cited by:

    1. Li, Guohui & Ning, Zhiyuan & Yang, Hong & Gao, Lipeng, 2022. "A new carbon price prediction model," Energy, Elsevier, vol. 239(PD).

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