Abstract
Driving patterns exert an important influence on the fuel economy of vehicles, especially hybrid electric vehicles. This paper aims to build a method to identify driving patterns with enough accuracy and less sampling time compared than other driving pattern recognition algorithms. Firstly a driving pattern identifier based on a Learning Vector Quantization neural network is established to analyze six selected representative standard driving cycles. Micro-trip extraction and Principal Component Analysis methods are applied to ensure the magnitude and diversity of the training samples. Then via Matlab/Simulink, sample training simulation is conducted to determine the minimum neuron number of the Learning Vector Quantization neural network and, as a result, to help simplify the identifier model structure and reduce the data convergence time. Simulation results have proved the feasibility of this method, which decreases the sampling window length from about 250-300 s to 120 s with an acceptable accuracy. The driving pattern identifier is further used in an optimized co-simulation together with a parallel hybrid vehicle model and improves the fuel economy by about 8%.
| Original language | English |
|---|---|
| Pages (from-to) | 3363-3380 |
| Number of pages | 18 |
| Journal | Energies |
| Volume | 5 |
| Issue number | 9 |
| DOIs | |
| Publication status | Published - Sept 2012 |
Keywords
- Driving pattern recognition
- Fuel economy
- Hybrid electric vehicles
- LVQ
- Neural network
- Simulation