D. Imaev, M. L. Nemudruk, M. S. Fedorov, I. I. Shpakovskaya
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Diagnostics of the Cavitation Modes in the Heavy Petroleum Products Pumping Systems
The article formalizes the problem of registering the cavitation’s modes of screw pumps. Possible approaches to solving the problem are given. The "averaged operator" algorithm is proposed according to the operator in the form of production rules of the type "IF-THEN". In this article propose using of a neural network and cluster analysis to determine cavitation modes.