Affiliation:
1. University of Science and Technology of China
2. Anhui Institute of Optics and Fine Mechanics, Chinese Academ
3. Anhui Jianghuai Automobile Group Co., Ltd.
Abstract
<div class="section abstract"><div class="htmlview paragraph">The increasingly severe energy problems and environmental pollution have imposed
severe requirements on the fuel saving level of vehicles. The range extender
configuration is a tandem structure that has attracted more and more
researchers’ attention due to its architectural features and control methods. An
intelligent APU operating point adjustment model based on PMP-GWO-Bi-LSTM is
proposed in this paper to enhance adaptability to real driving conditions for
the traditional optimal strategy. Firstly, a PMP model has been applied into a
range extended electric vehicle model from which the optimized power
distribution data under several standard driving cycles was recorded as the
input to deep learning model. Secondly, a Bi-LSTM model fed by control
parameters and power distribution data was established and trained using
aforementioned datasets. The aim is to learning the nonlinear regression
relationship model between APU control variables and power distribution.
Furthermore, the GWO optimization algorithm is introduced to optimize the
hyperparameter of Bi-LSTM to speed up the running speed of the model and improve
accuracy. Finally, the experiment was conducted using real driving condition
data to predict the power distributions. The simulation results show APU overall
efficiency improvement by 15.87% whilst fuel consumption improved by 9.42%. The
number of hyper parameters such as the iterations and hidden layer units using
GWO optimization algorithm is 35.50% and 38.38% less and the training time
decreases by 4.61 s, which proves that the model proposed in this paper can
achieve good result in real driving conditions.</div></div>