Load State Identification Method for Wet Ball Mills Based on the MEEMD Singular Value Entropy and PNN Classification Mining, Metallurgy and Exploration

- Organization:
- Society for Mining, Metallurgy & Exploration
- Pages:
- 11
- File Size:
- 5086 KB
- Publication Date:
Abstract
To overcome the difficulty of accurately judging the load state of a wet ball mill during the grinding process, a method of mill load
identification based on the singular value entropy of the modified ensemble empirical mode decomposition (MEEMD) and a
probabilistic neural network (PNN) classifier is proposed. First, the MEEMD algorithm is used to decompose the vibration
signals recorded under different load states to obtain the intrinsic mode components, and a correlation coefficient threshold is
used to select the sensitive mode components that characterize the state of the original signal. Second, singular value decomposition is used to obtain the singular value entropy. Finally, the load state of the wet ball mill is judged based on the magnitude of
the singular value entropy. A characteristic mill load vector is constructed from the singular value entropies of the cylinder
vibration signals recorded under different load conditions and is used as the input to a PNN, which then outputs the predicted ball
mill load state; in this way, a load state identification model is established. Grinding experiments are presented to verify the
effectiveness of the proposed method, showing that the method can accurately identify the load state of a wet ball mill. ()
Citation
APA:
Load State Identification Method for Wet Ball Mills Based on the MEEMD Singular Value Entropy and PNN Classification Mining, Metallurgy and ExplorationMLA: Load State Identification Method for Wet Ball Mills Based on the MEEMD Singular Value Entropy and PNN Classification Mining, Metallurgy and Exploration. Society for Mining, Metallurgy & Exploration,