EngSci-ET-374: Robust and Predictive Energy Management of Hybrid Electric Vehicles

All UK vacanciesPhDEngSci-ET-374: Robust and Predictive Energy Management of Hybrid Electric Vehicles

Engineering and Technology,Mechanical Engineering,Electrical and Electronic Engineering

Short info about job

Company: University of Southampton

Department: Energy Technology Group

Hours: Full Time

Type / Role: PhD

Phone: +44-1361 4603240

Fax: +44-1495 5228088

E-mail: N\A

Site:

Detail information about job EngSci-ET-374: Robust and Predictive Energy Management of Hybrid Electric Vehicles. Terms and conditions vacancy

Transportation is responsible for the 20% of greenhouse gas emission in Europe and 14% worldwide. Electric and hybrid electric vehicles (HEVs) are essential for satisfying the long term ambitions of emission reductions in the UK and worldwide.

The efficiency of an HEV is largely determined by the energy management (EM) strategy, which is designed to optimally split the power demand between the electric motor and combustion engine. The baseline is represented by conventional EM systems, which:

  • are based on the instantaneous power demand; and
  • are calibrated for specific vehicle configurations.
  • By contrast, this research aims at reducing by 5% the fuel consumption of HEVs by developing EM systems which:

  • PREDICT the power demand (according to route characteristics, driver style, and environmental conditions) for an improved optimisation of the powertrain usage; and
  • are ROBUST to the actual operating conditions, such as for example component tolerances, component degradation over time, vehicle payload, external environment, and other factors.
  • This studentship is linked to a major EPSRC project Green Adaptive Control for Future Interconnected Vehicles (www.g-active.uk).

    Requirements: we seek self-motivated candidates holding a first or second class honours degree (or equivalent) in engineering and related disciplines, such as physics or mathematics. The ideal candidate should have a good background in control systems, both from the theoretical and practical point of view, and a good understanding of road vehicles.

    The studentship is for three years. It fully covers University tuition fees £4,195 (EU/UK level) and provides an annual tax-free stipend of 14,553 (2017-18 rate). Overseas students may apply if the difference between the EU and overseas fees is funded by other sources.

    If you wish to discuss any details of the project informally, please contact Professor Roberto Lot, Energy Technology research group (email: [email protected], tel: +44 (0) 2380 59 8520).

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