Predictive Energy Management for Hybrid Powertrains
Satish Vedula, Olugbenga Anubi

TL;DR
This paper introduces an adaptive energy management strategy for hybrid powertrains that considers battery degradation, using heuristics and model predictive control to optimize efficiency and reliability across various vehicle types.
Contribution
It develops a distributed model predictive control approach incorporating battery degradation heuristics for real-time energy management in hybrid powertrains.
Findings
Effective battery degradation mitigation demonstrated in simulations.
Improved energy efficiency across different hybrid vehicle types.
Strategy balances power demand with battery health considerations.
Abstract
Hybrid power trains (HPT) run on multiple energy sources, often involving energy storage systems/batteries (ESS). As a result, the risk of battery degradation and the reliability of energy storage elements pose a major challenge in designing an energy-efficient hybrid power train. This paper presents an energy management strategy that adaptively splits power demand between the engine and the battery pack in a hybrid power train taking into account the battery degradation. Incorporating the battery degradation model directly into the underlying optimization problem is challenging on multiple fronts: 1) Any reasonable degradation model will, due to its complexity, result in a complicated optimization problem that is impractical for real-time implementation 2) the models contain a lot of time-varying parameters that can only be determined through destructive experimental procedures. As a…
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Taxonomy
TopicsElectric and Hybrid Vehicle Technologies · Advanced Battery Technologies Research · Railway Systems and Energy Efficiency
