4.3 Article

Neuro-fuzzy fatigue life assessment using the wavelet-based multifractality parameters

Journal

JOURNAL OF MECHANICAL SCIENCE AND TECHNOLOGY
Volume 35, Issue 2, Pages 439-447

Publisher

KOREAN SOC MECHANICAL ENGINEERS
DOI: 10.1007/s12206-021-0102-6

Keywords

Neuro-fuzzy; Fatigue life; Wavelet transform; Multifractal; Durability

Funding

  1. Ministry of Education Malaysia [FRGS/1/2019/TK03/UKM/01/3]
  2. Universiti Kebangsaan Malaysia (UKM) [DIP-2019-015]

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This study aimed to establish a fatigue life predictive model based on multifractality of road excitations using a neuro-fuzzy method to assess the durability of suspension spring. The neuro-fuzzy models provided accurate fatigue life predictions with a high percentage of data within the acceptance boundary, demonstrating the importance of multifractality in characterizing various road excitations for durability prediction. The Morrow-based fatigue life prediction model showed the most suitable result with three membership functions, highlighting the effectiveness of the adapted method in predicting fatigue life.
This study aims to establish a fatigue life predictive model based on multifractality of road excitations using neuro-fuzzy method to assess the durability of suspension spring. Traditional durability analysis in time domain is complicated and time-consuming due to the needs of large data amount. Thus, it is an idea to adopt an adaptive neuro-fuzzy inference system (ANFIS) for relating the performance of coil spring to the multifractal properties of road excitations, giving a meaningful fatigue life prediction. Different membership function numbers were tested to obtain the optimum membership function number. During the data training process, the checking data was used to test the trained model each Epoch of training for overfitting detection. As a result, the Morrow-based fatigue life prediction model was found to give the most suitable result with three membership functions. The SWT-based model needed five membership functions due to nonlinear properties in the SWT-based fatigue life data. Training process of Morrow-based-ANFIS was stopped at Epoch 8 given its lowest checking root-mean-square-error of 0.6953. SWT-based model recorded a higher error of 0.7940. The neuro-fuzzy models gave accurate fatigue life predictions with 96 % of the data distributed within the acceptance boundary, hence, contributing to an acceptable assessment of coil spring fatigue life based on load multifractality. This study had shown a nonlinear relationship between road multifractality and durability performance of coil spring. Multifractality had been proven an important feature to characterise various road excitations for durability prediction.

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