20,544 research outputs found

    Real-time energy optimization of HEVs under-connected environment: a benchmark problem and receding horizon-based solution

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    [EN] In this paper, we propose a benchmark problem for the challengers aiming to energy efficiency control of hybrid electric vehicles (HEVs) on a road with slope. Moreover, it is assumed that the targeted HEVs are in the connected environment with the obtainment of real-time information of vehicle-to-everything (V2X), including geographic information, vehicle-to-infrastructure (V2I) information and vehicle-to-vehicle (V2V) information. The provided simulator consists of an industrial-level HEV model and a traffic scenario database obtained through a commercial traffic simulator, where the running route is generated based on real-world data with slope and intersection position. The benchmark problem to be solved is the HEVs powertrain control using traffic information to fulfill fuel economy improvement while satisfying the constraints of driving safety and travel time. To show the HEV powertrain characteristics, a case study is given with the speed planning and energy management strategy.Xu, F.; Tsunogawa, H.; Kako, J.; Hu, X.; Eben Li, S.; Shen, T.; Eriksson, L.... (2022). Real-time energy optimization of HEVs under-connected environment: a benchmark problem and receding horizon-based solution. Control Theory and Technology. 20:145-160. https://doi.org/10.1007/s11768-022-00086-y14516020Zhou, Q., Zhao, D., Shuai, B., Li, Y., Williams, H., & Xu, H. (2021). Knowledge implementation and transfer with an adaptive learning network for real-time power management of the plug-in hybrid vehicle. IEEE Transactions on Neural Networks and Learning Systems, 32(12), 5298–5308. https://doi.org/10.1109/TNNLS.2021.3093429Xu, F., & Shen, T. (2021). Decentralized optimal merging control with optimization of energy consumption for connected hybrid electric vehicles. IEEE Transactions on Intelligent Transportation Systems. https://doi.org/10.1109/TITS.2021.3054903Zhuang, W., Li, S., Zhang, X., et al. (2020). A survey of powertrain configuration studies on hybrid electric vehicles. Applied Energy, 262, 114553.Wang, S., Chen, K., Zhao, F., & Hao, H. (2019). Technology pathways for complying with corporate average fuel consumption regulations up to 2030: A case study of China. Applied Energy, 241, 257–277.Zhang, J., Shen, T., & Kako, J. (2020). Short-term optimal energy management of power-split hybrid electric vehicles under velocity tracking control. IEEE Transactions on Vehicular Technology, 69(1), 182–193.Asaei, B. (2010). A fuzzy-genetic algorithm approach for finding a new HEV control strategy idea. 1st Power Electronic and Drive Systems and Technologies Conference, pp. 224 – 229. Tehran, Iran.Wu, J., Zhang, C. H., & Cui, N. X. (2008). PSO algorithm-based parameter optimization for HEV powertrain and its control strategy. International Journal of Automotive Technology, 9(1), 53–59.Lin, C. C., Peng, H., Grizzle, J. W., & Kang, J.-M. (2003). Power management strategy for a parallel hybrid electric truck. IEEE Transactions on Control Systems Technology, 11(6), 839–849.Luján, J. M., Guardiola, C., Pla, B., & Reig, A. (2018). Analytical optimal solution to the energy management problem in series hybrid electric vehicles. IEEE Transactions on Vehicular Technology, 67(8): 6803 – 6813.Larsson, V., Johannesson, L., & Egardt, B. (2014). Analytic solutions to the dynamic programming subproblem in hybrid vehicle energy management. IEEE Transactions on Vehicular Technology, 64(4), 1458–1467.Serrao, L., Onori, S., & Rizzoni, G. (2009). ECMS as a realization of Pontryagin’s minimum principle for HEV control. American Control Conference, pp. 3964-3969. St. Louis, MO, USA.Kim, N., Cha, S., & Peng, H. (2011). Optimal equivalent fuel consumption for hybrid electric vehicles. IEEE Transactions on Control Systems Technology, 20(3), 817–825.Rezaei, A., Burl, J. B., Solouk, A., Zhou, B., et al. (2017). Catch energy saving opportunity (CESO), an instantaneous optimal energy management strategy for series hybrid electric vehicles. Applied Energy, 208, 655–665.Xie, S., Hu, X., Qi, S., & Lang, K. (2018). An artificial neural network-enhanced energy management strategy for plug-in hybrid electric vehicles. Energy, 163, 837–848.Zhang, J., & Shen, T. (2016). Real-time fuel economy optimization with nonlinear MPC for PHEVs. IEEE Transactions on Control Systems Technology, 24(6), 2167–2175.Sciarretta, A., Serrao, L., Dewangan, P. C., et al. (2014). A control benchmark on the energy management of a plug-in hybrid electric vehicle. Control Engineering Practice, 29, 287–298.Lars, E. (2019). An overview of various control benchmarks with a focus on automotive control. Control Theory and Technology, 17(2), 121–130.Moura, S. J., Fathy, H. K., Callaway, D. S., & Stein, J. L. (2010). A stochastic optimal control approach for power management in plug-in hybrid electric vehicles. IEEE Transactions on Control Systems Technology, 19(3), 545–555.Sun, C., Hu, X., Moura, S. J., & Sun, F. (2014). Velocity predictors for predictive energy management in hybrid electric vehicles. IEEE Transactions on Control Systems Technology, 23(3), 1197–1204.Xiang, C., Ding, F., Wang, W., & He, W. (2017). Energy management of a dual-mode power-split hybrid electric vehicle based on velocity prediction and nonlinear model predictive control. Applied Energy, 189, 640–653.Sun, C., Sun, F., & He, H. (2017). Investigating adaptive-ECMS with velocity forecast ability for hybrid electric vehicles. Applied Energy, 185, 1644–1653.Zhang, F., Hu, X., Langari, R., & Cao, D. (2019). Energy management strategies of connected HEVs and PHEVs: Recent progress and outlook. Progress in Energy and Combustion Science, 73, 235–256.Yang, C., Zha, M., Wang, W., Liu, K., & Xiang, C. (2020). Efficient energy management strategy for hybrid electric vehicles/plug-in hybrid electric vehicles: Review and recent advances under intelligent transportation system. IET Intelligent Transport Systems, 14(7), 702–711. https://doi.org/10.1049/iet-its.2019.0606Zhang, J., Xu, F., Zhang, Y., & Shen, T. (2019). ELM-based driver torque demand prediction and real-time optimal energy management strategy for HEVs. Neural Computing and Applications, 32: 14411C14429.Zhang, B., Zhang, J., Xu, F., & Shen, T. (2020). Optimal control of power-split hybrid electric powertrains with minimization of energy consumption. Applied Energy, 266, 114873.Zhang, F., Xi, J., & Langari, R. (2016). Real-time energy management strategy based on velocity forecasts using V2V and V2I communications. IEEE Transactions on Intelligent Transportation Systems, 18(2), 416–430.Li, J., Zhou, Q., He, Y., et al. (2019). Dual-loop online intelligent programming for driver-oriented predict energy management of plug-in hybrid electric vehicles. Applied Energy, 253, 113617.Qi, X., Wu, G., Hao, P., Boriboonsomsin, K., & Barth, M. J. (2017). Integrated-connected eco-driving system for PHEVs with co-optimization of vehicle dynamics and powertrain operations. IEEE Transactions on Vehicular Technology, 2(1), 2–13.Uebel, S., Murgovski, N., Ba¨\ddot{\rm a}ker, B., & Sjo¨\ddot{\rm o}berg, J. (2019). A two-level mpc for energy management including velocity control of hybrid electric vehicles. IEEE Transactions on Vehicular Technology, 68(6): 5494–5505.Chen, B., Evangelou, S. A., & Lot, R. (2019). Hybrid electric vehicle two-step fuel efficiency optimization with decoupled energy management and speed control. IEEE Transactions on Vehicular Technology, 68(12), 11492–11504.Wang, S., & Lin, X. (2020). Eco-driving control of connected and automated hybrid vehicles in mixed driving scenarios. Applied Energy, 271, 115233.Zhang, J., & Xu, F. (2020). Real-time optimization of energy consumption under adaptive cruise control for connected HEVs. Control Theory and Technology, 18(2), 182–192.Fu, Q., Xu, F., Shen, T., & Takai, K. (2020). Distributed optimal energy consumption control of HEVs under MFG-based speed consensus. Control Theory and Technology, 18(2), 193–203.Chen, B., Evangelou, S. A., & Lot, R. (2019). Series hybrid electric vehicle simultaneous energy management and driving speed optimization. IEEE/ASME Transactions on Mechatronics, 24(6), 2756–2767.Hu, Q., Amini, M. R., Feng, Y., Yang, Z., Wang, H., Kolmanovsky, I., & Seeds, J. B. (2020). Engine and aftertreatment co-optimization of connected HEVs via multi-range vehicle speed planning and prediction. SAE Technical Paper, -01-0590.Xu, F., & Shen, T. (2020). Look-ahead prediction-based real-time optimal energy management for connected HEVs. IEEE Transactions on Vehicular Technology, 69(3), 2537–2551.Xu, F., & Shen, T. (2019). MPC-based optimal control for diesel engine coupled with lean NOx trap system. SICE Journal of Control, Measurement, and System Integration, 12(3), 94–101

    A Novel Learning Based Model Predictive Control Strategy for Plug-in Hybrid Electric Vehicle

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    The multi-source electromechanical coupling renders energy management of plug-in hybrid electric vehicles (PHEVs) highly nonlinear and complex. Furthermore, the complicated nonlinear management process highly depends on knowledge of driving conditions, and hinders the control strategies efficiently applied instantaneously, leading to massive challenges in energy saving improvement of PHEVs. To address these issues, a novel learning based model predictive control (LMPC) strategy is developed for a serial-parallel PHEV with the reinforced optimal control effect in real time application. Rather than employing the velocity-prediction based MPC methods favored in the literature, an original reference-tracking based MPC solution is proposed with strong instant application capacity. To guarantee the optimal control effect, an online learning process is implemented in MPC via the Gaussian process (GP) model to address the uncertainties during state estimation. The tracking reference in LMPC based control problem in PHEV is achieved by a microscopic traffic flow analysis (MTFA) method. The simulation results validate that the proposed method can optimally manage energy flow within vehicle power sources in real time, highlighting its anticipated preferable performance

    An investigation on the effect of driver style and driving events on energy demand of a PHEV

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    Environmental concerns, security of fuel supply and CO2 regulations are driving innovation in the automotive industry towards electric and hybrid electric vehicles. The fuel economy and emission performance of hybrid electric vehicles (HEVs) strongly depends on the energy management system (EMS). Prior knowledge of driving information could be used to enhance the performance of a HEV. However, how the necessary information can be obtained to use in EMS optimisation still remains a challenge. In this paper the effect of driver style and driving events like city and highway driving on plug in hybrid electric vehicle (PHEV) energy demand is studied. Using real world driving data from three drivers of very different driver style, a simulation has been exercised for a given route having city and highway driving. Driver style and driving events both affect vehicle energy demand. In both driving events considered, vehicle energy demand is different due to driver styles. The major part of city driving is reactive driving influenced by external factors and driver leading to variation in vehicle speed and hence energy demand. In free highway driving, the driver choice of cruise speed is the only factor affecting vehicle energy demand

    Optimization of Bi-Directional V2G Behavior With Active Battery Anti-Aging Scheduling

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    Fast Optimal Energy Management with Engine On/Off Decisions for Plug-in Hybrid Electric Vehicles

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    In this paper we demonstrate a novel alternating direction method of multipliers (ADMM) algorithm for the solution of the hybrid vehicle energy management problem considering both power split and engine on/off decisions. The solution of a convex relaxation of the problem is used to initialize the optimization, which is necessarily nonconvex, and whilst only local convergence can be guaranteed, it is demonstrated that the algorithm will terminate with the optimal power split for the given engine switching sequence. The algorithm is compared in simulation against a charge-depleting/charge-sustaining (CDCS) strategy and dynamic programming (DP) using real world driver behaviour data, and it is demonstrated that the algorithm achieves 90\% of the fuel savings obtained using DP with a 3000-fold reduction in computational time

    Urban and extra-urban hybrid vehicles: a technological review

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    Pollution derived from transportation systems is a worldwide, timelier issue than ever. The abatement actions of harmful substances in the air are on the agenda and they are necessary today to safeguard our welfare and that of the planet. Environmental pollution in large cities is approximately 20% due to the transportation system. In addition, private traffic contributes greatly to city pollution. Further, “vehicle operating life” is most often exceeded and vehicle emissions do not comply with European antipollution standards. It becomes mandatory to find a solution that respects the environment and, realize an appropriate transportation service to the customers. New technologies related to hybrid –electric engines are making great strides in reducing emissions, and the funds allocated by public authorities should be addressed. In addition, the use (implementation) of new technologies is also convenient from an economic point of view. In fact, by implementing the use of hybrid vehicles, fuel consumption can be reduced. The different hybrid configurations presented refer to such a series architecture, developed by the researchers and Research and Development groups. Regarding energy flows, different strategy logic or vehicle management units have been illustrated. Various configurations and vehicles were studied by simulating different driving cycles, both European approval and homologation and customer ones (typically municipal and university). The simulations have provided guidance on the optimal proposed configuration and information on the component to be used
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