Monitoring and Control of Hydrocyclones by Use of Convolutional Neural Networks and Deep Reinforcement Learning
Access Status
Open access
Date
2022Supervisor
Chris Aldrich
Xiu Liu
Type
Thesis
Award
PhD
Metadata
Show full item recordFaculty
Science and Engineering
School
Western Australian School of Mines
Collection
Abstract
The use of convolutional neural networks for monitoring hydrocyclones from underflow images was investigated. Proof-of-concept and applied industrial considerations for hydrocyclone state detection and underflow particle size inference sensors were demonstrated. The behaviour and practical considerations of model-free reinforcement learning, incorporating the additional information provided by the sensors developed, was also discussed in a mineral processing context.