Deep Learning Coal Inventory STIFM Based on Improved CEEMDAN
Accurate prediction of thermal coal inventory in coal-fired power plants is an important basis for opti-mizing energy storage and ensuring power supply.In view of the characteristics of short-term thermal coal inventory in real life,such as non-instability,randomness and local mutation,a short-term prediction method of thermal coal in-ventory based on TCN-BiGRU-Attention combination model based on improved CEEMDAN decomposition is pro-posed,the characteristics of thermal coal inventory are analyzed and the main influencing factors are selected.The in-fluencing factors are constructed into a new time sequence by the way of word vector,which is used in Complete EE-MD with Adaptive Noise.After decomposing the data,CEEMDAN classifies the components into high,medium and low frequencies by Zero Crossing Rate(ZCR)and superpositions them and sums them,and extracts the hidden fea-tures of the Temporal Convolutional Network(TCN)in different frequency bands.Input Bidirectional Gated Recurrent Unite(BiGRU)in the form of feature vectors,and combine with Attention Mechanism to give different weights to highlight key features and generate prediction results.The final prediction result is obtained by summing the prediction results of each frequency band sequence.The results show that the model is more accurate than the single and other combined models..