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Technical Paper

Using Deep Reinforcement Learning for Hybrid Electric Vehicle Energy Management under Consideration of Dynamic Emission Models

2020-09-15
2020-01-2258
Hybrid electric vehicles (HEV) contribute to reduce emissions from transportation. The energy management controls the powertrain components in HEVs. In addition to minimizing fuel consumption, improving air quality is a major opportunity for hybrid vehicles. Pollutant emissions can only be mapped with sufficient accuracy using dynamic models. The introduced nitrogen oxide model is created using a supervised learning approach based on recorded measurement data. This dynamic model requires input data from previous time steps to ensure sufficient model quality. Classical algorithms such as Dynamic Programming are not able to find solutions for such high-dimensional problems in reasonable computing times. A promising approach to solve the resulting problem is Deep Reinforcement Learning (Deep RL), which has recently been introduced in the field of HEV energy management.
Journal Article

Generation of Replacement Vehicle Speed Cycles Based on Extensive Customer Data by Means of Markov Models and Threshold Accepting

2017-01-10
2017-26-0256
The reduction of fuel consumption as well as the rising demands of customers regarding a vehicle’s driving dynamic and the legislator’s continually rising demands are a current issue in vehicle development. Hybrid vehicles offer a possibility to rise to this challenge. Realistic driving cycles are of utmost importance for the calibration of a hybrid vehicle’s operational strategy. Deriving replacement speed cycles from extensive customer data sets seems to be an approach for solving these problems. The contribution at hand describes the derivation of replacement cycles by using stochastic models, probabilistic (weighted) drawings and a combinatorial optimisation. The novelty value is that the characteristic influences of all drivers are being considered in the generation due to the stochastic modelling.
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