Study on Evaluation Method of Drivability of Hybrid Electric Vehicle
Based on Ensemble Empirical Mode Decomposition Noise Reduction
Method 2023-01-5083
During the drivability test process, a large amount of noise generated by a
series of internal and external factors of the vehicle reduces the accuracy of
the drivability evaluation. To solve this problem, this paper introduces the
EEMD denoising method and compares the denoising effects of the EMD denoising
method and EEMD denoising method on the original signal using the entropy weight
evaluation index. In addition, the optimal parameter setting is obtained by
comparing the denoising results of different parameter settings in the EEMD
denoising method. The results show that when the white noise is integrated 3000
times and the standard deviation of white noise is 0.1, the EEMD noise reduction
method is the best, and the comprehensive score of noise reduction is 0.732
points higher than that of EMD. The research results indicate that the EEMD
noise reduction method has a good noise reduction effect, which can ensure the
accuracy of subsequent calculation of subsequent drivability indexes. It can be
applied to the processing process of driving acceleration signals in hybrid
vehicle acceleration conditions.