Abstract

Real-time drive cycles and driving trends have a vital impact on fuel consumption and emissions in a vehicle. To address this issue, an original and alternative approach which incorporates the knowledge about real-time drive cycles and driving trends into fuzzy logic control strategy was proposed. A machine learning framework called MC_FRAME was established, which includes two neural networks for self-learning and making predictions. An intelligent fuzzy logic control strategy based on the MC_FRAME was then developed in a hybrid electric vehicle system, which is called FLCS_MODEL. Simulations were conducted to evaluate the FLCS_MODEL using ADVISOR. The simulation results indicated that comparing with the default controller on the drive cycle NEDC, the FLCS_MODEL saves 12.25% fuel per hundred kilometers, with the HC emissions increasing by 22.7%, the CO emissions reducing by 16.5%, the NOx emissions reducing by 37.5% and with the PM emissions reducing by 12.9%. A conclusion can be drawn that the proposed approach realizes fewer fuel consumption and less emissions.

Highlights

  • Speaking globally, emission regulations and fuel consumption limits are becoming stricter, energy saving and environment protecting are the common direction for the whole wide world industry

  • Studies show that real-time drive cycles and driving trends has a vital impact on fuel consumption and exhaust emissions of a vehicle [2] [3]

  • We focus on implementing an intelligent fuzzy logic control strategy that incorporates the knowledge about real-time drive cycles and driving trends to improve the intelligent level of the control strategy and to get lower fuel consumption and fewer emissions

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Summary

Introduction

Emission regulations and fuel consumption limits are becoming stricter, energy saving and environment protecting are the common direction for the whole wide world industry. (2015) Intelligent HEV Fuzzy Logic Control Strategy Based on Identification and Prediction of Drive Cycle and Driving Trend. Et al proposed an intelligent energy management agent called IEMA for parallel hybrid vehicles which incorporates a driving situation component This identical driving information is subsequently used to determine the power split strategy, which is shown to lead to enhanced fuel economy and reduced emissions [5] [6]. An energy management strategy for the plug-in hybrid electric vehicles based on the recognition of driving intention and working condition was proposed. We focus on implementing an intelligent fuzzy logic control strategy that incorporates the knowledge about real-time drive cycles and driving trends to improve the intelligent level of the control strategy and to get lower fuel consumption and fewer emissions.

A Neural Network for the Prediction of Drive Cycles
A Neural Network for the Prediction of Driving Trends
Intelligent Fuzzy Logic Controller
The Fuzzy Control Rules
Simulation and Results
Conclusion
Full Text
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