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Hybrid neural network bushing model for vehicle dynamics simulation Jeong-Hyun Sohn
The Journal of Mechanical Science and Technology, vol. 22, no. 12, pp.2365-2374, 2008
Abstract : Although the linear model was widely used for the bushing model in vehicle suspension systems, it could not express
the nonlinear characteristics of bushing in terms of the amplitude and the frequency. An artificial neural network
model was suggested to consider the hysteretic responses of bushings. This model, however, often diverges due to the
uncertainties of the neural network under the unexpected excitation inputs. In this paper, a hybrid neural network bushing
model combining linear and neural network is suggested. A linear model was employed to represent linear stiffness
and damping effects, and the artificial neural network algorithm was adopted to take into account the hysteretic responses.
A rubber test was performed to capture bushing characteristics, where sine excitation with different frequencies
and amplitudes is applied. Random test results were used to update the weighting factors of the neural network
model. It is proven that the proposed model has more robust characteristics than a simple neural network model under
step excitation input. A full car simulation was carried out to verify the proposed bushing models. It was shown that the
hybrid model results are almost identical to the linear model under several maneuvers.
Keyword :
Bushing; linear model; Neural network; Vehicle dynamics simulation; Hysteresis
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