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BENEFICIATION PROCESSES
Название Copper-pyrite ores flotation cleaning cycle mathematical model
Автор Mashevskiy G. N., Romanenko S. A.
Информация об авторе

Outotec (St. Petersburg) (Russia):

Mashevskiy G. N., Doctor of Engineering Sciences, Chief Process Adviser, gennady.mashevsky@outotec.com
Romanenko S. A., Leading Process Engineer, Sergey.Romanenko@outotec.com

Реферат

The article considers a new approach to flotation process modeling. It is proved, that modeling on the basis of multiple regression equations, practiced for several decades of the last century, is unpromising. It is shown, that modeling and control of flotation process on the basis of intelligent systems also does not bring positive results. Neural network modeling was put to test in cleaning flotation cycle treating copper-pyrite ores from the Named after the 50th October anniversary deposit. Specialties of flotation process are considered as those of an automation object, permitting to simplify the task to be solved through introduction of electrochemical control in slurry preparation, providing for process optimization regardless of treated ore type. Such special parameters include maintaining of optimal load in the cycle under consideration, which is a priori determined by design of flotation cells. By the example of copper-pyrite ores cleaning flotation cycle, multi-factor features
and nonlinearity of the automation object are shown, and, in principle, the automation object may be described only by neural networks. The mathematical model adequacy to the described object in accordance with the three years observations data package is estimated with respect to metal losses in tailings loop as R = 0.905, and with respect to concentrate loop as R = 0.82. A neural network model was developed for the automation object in question. A comparative analysis of the process control results is performed for intuitive and subjective manual actions of operator, as well as with regard to recommended actions in accord with the neural network model. Copper recovery with manual control is estimated to be 91.6 %, while with neural network model application it may be increased to 95.3 %.

Ключевые слова Flotation, copper-pyrite ores, neural network modeling, optimal process control, automation
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