Wave Power Prediction Based on Seasonal and Trend Decomposition Using Locally Weighted Scatterplot Smoothing and Dual-Channel Seq2Seq Model
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Keywords
wave power prediction; seasonal and trend decomposition; temporal pattern attention; dual-channel sequence to sequence; multi-head self-attention;All these keywords.
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