Abstract

In order to further increase the efficiency of electrified vehicle drives, various predictive energy management strategies (driving strategies) have been developed. Therefore, a generic prediction approach is worked out in this paper, which enables a robust prediction of all traction torque-relevant variables for such strategies. It is intended to be useful for various types of electrification; however, the focus of this work is to the application in hybrid electric vehicles. In contrast to other approaches, no additional information (e.g., telemetry data) is required and thus a reliable prediction is guaranteed at all times. In particular, approaches from the fields of stochastics and artificial intelligence have proven to be effective for such purposes. Within the scope of this work, both so-called Markov Chains and Neural Networks are applied to predict real driving profiles within a required time horizon. Therefore, at first, a detailed analysis of the driver-specific ride characteristics is performed to ensure that real-world operation is represented appropriately. Next, the two models are implemented and the calibration is further discussed. The subsequent direct comparison of the two approaches is performed based on the described methodology, which includes both quantitative and qualitative analyses. Hereby, the quality of the predictions is evaluated using Root Mean Squared Error (RMSE) calculations as well as analyses in time domain. Based on the presented results, an appropriate approach is finally recommended.

Highlights

  • Stringent emission limits and the overall rise in environmental awareness have led to the development of a wide range of alternative drive systems

  • In the case of a hybrid electric vehicle this includes the optimal interaction between the Electric Motor (EM) and the Internal Combustion Engine (ICE)

  • RMSEv of driver 2 with a high standstill percentage and the highest accelerations is slightly higher with an RMSEv of 4.62 km/h

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Summary

Introduction

Stringent emission limits and the overall rise in environmental awareness have led to the development of a wide range of alternative drive systems. This includes purely electric vehicles as well as hybrid electric vehicles. Electrified drives are characterised by component dimensioning, topology, and driving strategy [1] The latter must ensure the optimal use of the system functions in various driving scenarios, whereby [2–6] offer a wide overview of the current state of research in this field. Multiple sources exist, which can be considered to predict future torque demand.

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