2009
DOI: 10.1243/13506501jet464
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Predicting the thermal behaviour of engine oils using artificial neural networks

Abstract: A multi-layer neural network (NN) was developed to analyse experimental boiling data obtained for five engine oils at bulk temperatures ranging from 40 to 150 °C and heat fluxes ranging from 30 to 400 kW/m2. The inputs to the NN were the oil chemical composition (nine elements) along with the wall superheats for different oil bulk temperatures and the NN output was the corresponding heat fluxes. The developed NN model predicted boiling curves that are in close agreement with experimental data ( R2 ≈ 1). The NN… Show more

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Cited by 2 publications
(1 citation statement)
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“…The artificial neural network [2][3] has been widely used in various fields, especially in the intelligent system of nonlinear modeling, design of the controller, mode classification and mode identification, optimization calculation and so on. Multilayer feed-forward neural network plays a important role in the practical application of all artificial neural network.…”
Section: Control Structure Designmentioning
confidence: 99%
“…The artificial neural network [2][3] has been widely used in various fields, especially in the intelligent system of nonlinear modeling, design of the controller, mode classification and mode identification, optimization calculation and so on. Multilayer feed-forward neural network plays a important role in the practical application of all artificial neural network.…”
Section: Control Structure Designmentioning
confidence: 99%