Real-time immune-inspired optimum state-of-charge trajectory estimation using upcoming route information preview and neural networks for plug-in hybrid electric vehicles fuel economy

Ahmad Mozaffari1, Mahyar Vajedi2, Nasser L. Azad2
1University of Waterloo
2Systems Design Engineering Department, University of Waterloo, Waterloo, Canada

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