An Expert Neural Network to Control a Mineral Flotation Process
    
    - Organization:
 - The Australasian Institute of Mining and Metallurgy
 - Pages:
 - 6
 - File Size:
 - 335 KB
 - Publication Date:
 - Jan 1, 1995
 
Abstract
A multi-layer feed-forward neural network was trained (using the error  back-propagation algorithm) to learn a subset of rules designed to  stabilise the performances of the copper flotation section of a complex  sulphide processing plant and then tested in order to evaluate its expert  performances. Two types of neural networks were compared: the classical  ones, fully connected between one layer and the adjacents (with different  architectures), and entropy networks, partially connected and generated  according to a methodology that simplifies its building up. The  advantages and drawbacks of both were analysed and compared with  classic (rule based) expert systems.
Citation
APA: (1995) An Expert Neural Network to Control a Mineral Flotation Process
MLA: An Expert Neural Network to Control a Mineral Flotation Process. The Australasian Institute of Mining and Metallurgy, 1995.