Rheological Characteristics and Behavior Prediction of Lubricating
Grease for an RV Reducer Across a Wide Temperature Range
Abstract
Grease in the normal operation of the RV reducer has a role that can not
be ignored, for the variable working conditions of the RV reducer, the
performance of the lubricant changes directly affect its reliable
operation. Therefore, the study of the rheological properties of the
grease has become the focus of the study of RV reducer performance.In
this paper, SK-1A grease is taken as the research object, and its
rheological characteristics under wide temperature range working
conditions (-20℃~40℃) are investigated through
rheological experiments, to analyze the potential influence of SK-1A
grease on the performance of RV reducer.In addition, to better study the
rheological properties of grease under different working conditions, the
Elman neural network model was used to predict the rheological
properties of grease based on the rheological experiments of grease, and
the results were compared with those of the BP neural network and the
RBF neural network.The prediction accuracy of the Elman neural network
model was assessed using Mean Absolute Error (MAE) and Mean Absolute
Percentage Error (MAPE) in a cross-validation approach.The results show
that the viscoelastic properties of SK-1A grease generally show a
decreasing trend as the temperature rises in a wide temperature range,
and the degree of entanglement of soap fibers decreases more obviously,
but its fluidity is more stable.The results of the three neural network
prediction models show that the Elman neural network model used for the
prediction of grease rheological properties shows high prediction
accuracy, and the model can provide a valuable theoretical reference for
the accurate prediction of the rheological properties of grease affected
by complex multifactor.