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Firmstone et al., 1995 - Google Patents

A comparison of neural network and partial least squares approaches in correlating base oil composition to lubricant performance in gasoline engine tests and …

Firmstone et al., 1995

Document ID
17658751398149524618
Author
Firmstone G
Smith M
Stipanovic A
Publication year
Publication venue
SAE transactions

External Links

Snippet

Since the base oil component of engine oils, driveline fluids and industrial lubricants typically exceeds 80 wt.% of the formulation, the complex chemical composition of base oils is a critical parameter in defining the ultimate performance of the finished products into …
Continue reading at www.jstor.org (other versions)

Classifications

    • CCHEMISTRY; METALLURGY
    • C10PETROLEUM, GAS OR COKE INDUSTRIES; TECHNICAL GASES CONTAINING CARBON MONOXIDE; FUELS; LUBRICANTS; PEAT
    • C10MLUBRICATING COMPOSITIONS; USE OF CHEMICAL SUBSTANCES EITHER ALONE OR AS LUBRICATING INGREDIENTS IN A LUBRICATING COMPOSITION
    • C10M2203/00Organic non-macromolecular hydrocarbon compounds and hydrocarbon fractions as ingredients in lubricant compositions
    • C10M2203/10Petroleum or coal fractions, e.g. tars, solvents, bitumen
    • C10M2203/106Naphthenic fractions

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