4.3 Article

Driving cycle recognition neural network algorithm based on the sliding time window for hybrid electric vehicles

Journal

INTERNATIONAL JOURNAL OF AUTOMOTIVE TECHNOLOGY
Volume 16, Issue 4, Pages 685-695

Publisher

KOREAN SOC AUTOMOTIVE ENGINEERS-KSAE
DOI: 10.1007/s12239-015-0069-3

Keywords

Driving cycles; Sampling time; Micro-trip; Learning vector quantization

Funding

  1. School of Automotive Engineering, Changchun, Jilin, P.R.China
  2. National Natural Science Foundation of China [51075179]
  3. National High Technology Research and Development Program of China (863 Program) [W65-BK-2012-0007]
  4. research projects of provincial and ministerial departments [09ZDZH001]

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Driving cycles greatly influence the fuel economy and exhaust of the vehicle, especially in hybrid electric vehicles. The purpose of this study is to develop a method to identify the type of driving cycle with better accuracy and less sampling time than other driving cycle recognition algorithms. A driving cycle recognition algorithm based on Learning Vector Quantization neural network is first created to analyze four selected representative standard driving cycles. Micro-trip extraction and box-and-whisker plots are then applied to ensure the diversity and magnitude of training samples. Finally, a sample training simulation is conducted to determine the minimum neuron number of learning vector quantization network, using the simulation platform of Matlab/Simulink. Afterwards, we simplify the structure of the recognition model to reduce data convergence time. Simulation results show the feasibility and efficiency of the proposed algorithm, which decreases the time window length from 120 s to 60 s with acceptable accuracy. Furthermore, the driving cycle recognition algorithm is used in a series-parallel hybrid vehicle model to improve the fuel economy by about 6.29%.

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