A novel SCNN-LSTM model for predicting the SNR confidence interval in wearable wireless sensor network

Accurate real-time prediction of link quality is crucial for enhancing the reliable responsiveness of wearable devices within Wireless Wearable Sensor Networks (WWSNs). Specifically, the Signal-to-Noise Ratio (SNR), a pivotal parameter for predicting link quality, exhibits complex temporal character...

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Veröffentlicht in:Intelligent systems with applications 2024-06, Vol.22, p.200363, Article 200363
Hauptverfasser: Zha, Minghu, Zhu, Li, Zhu, Yunyun, Li, Jun, Hu, Tao
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Sprache:eng
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Zusammenfassung:Accurate real-time prediction of link quality is crucial for enhancing the reliable responsiveness of wearable devices within Wireless Wearable Sensor Networks (WWSNs). Specifically, the Signal-to-Noise Ratio (SNR), a pivotal parameter for predicting link quality, exhibits complex temporal characteristics influenced by stochastic and non-stochastic factors. To improve the accuracy of link quality prediction in WWSNs, we aim to explore a novel predictive model, introducing a filtering layer that seeks to enhance the precision of predicting upper and lower boundaries of link reliability confidence intervals. First, we adopt the SNR time series as the evaluation metric and decompose the SNR sequences into time-varying and stochastic standard deviation sequences by wavelet decomposition. Subsequently, we propose an innovative SCNN-LSTM model, incorporating the SincNet filtering layer to extract specific frequency components from the input SNR sequences. Afterward, integrating standard deviation sequences, the model predicts upper and lower boundaries of link reliability confidence intervals. Finally, we conduct the validation experiments on the public dataset LightGBM-LQP and our WWSN dataset Basketball shot. Compared to BPNN, ARIMA, and WNN, the evaluation matrices of MAE, RMSE, R2 in SCNN-LSTM have been improved, and the deviation between the predicted standard deviation and the actual standard deviation has reached the minimum of 0.1. The results demonstrate that SCNN-LSTM outperforms classical prediction models in predicting upper and lower limits of link reliability confidence intervals in WWSNs. •Proposing a novel SCNN-LSTM model to predict the SNR value of WWSNs with high accuracy.•SCNN-LSTM combines SincNet filter layer with CNN-LSTM to extract specific frequency components from input SNR sequences.•SCNN-LSTM decompose the SNR time series into time-varying and stochastic sequences by wavelet transform.•We validate our model on the public and Inertial Motion Capture system in the real world.
ISSN:2667-3053
2667-3053
DOI:10.1016/j.iswa.2024.200363