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Keywords: LSTM
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Journal Articles
Composite denoising-based LSTM prediction method of supercapacitor performance degradation law and remaining useful life
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Journal:
Circuit World
Circuit World (2025) 51 (1): 13–27.
Published: 16 January 2025
... of supercapacitor and chemical reaction of the supercapacitor. Its parameters are optimized by using marine predators algorithm (MPA), and the capacity sequence after denoising is reconstructed. Finally, long short term memory neural networks (LSTM) is used to predict the performance degradation law (PDL...
