<div class="csl-bib-body">
<div class="csl-entry">Kimmig, N., Schlomann, J. P., Goerke, D., Schmiedler, S., Geringer, B., & Hofmann, P. (2025). <i>Supervised Machine Learning Approach to Predict the Optimal Equivalence Factor for Predictive Energy Management Strategies of Plug-In Hybrid Electric Vehicles</i> (No. 2025-24–0119). SAE International. https://doi.org/10.4271/2025-24-0119</div>
</div>
-
dc.identifier.uri
http://hdl.handle.net/20.500.12708/225858
-
dc.description.abstract
Achieving minimal fuel consumption in map-based energy management strategies or equivalent consumption minimization strategies (ECMS) for Plug-in Hybrid Electric Vehicles (PHEVs) requires prior knowledge of the optimal equivalence factor (EF). This factor, which weights the fuel consumption of the internal combustion engine (ICE) and electric energy consumption, can be calculated if the exact driving profile is known. However, in real-world scenarios, the exact driving profile and consequently the optimal EF is unknown. This uncertainty motivates the use of predictive information to estimate this factor, aiming to enable fuel optimal control in real-world driving. This paper presents a methodology to predict the optimal EF across various initial battery states of energy and real-world driving profiles using a regression model for a given powertrain configuration. Initially, the optimal EF is determined, and a range of possible input features based on driving profiles are calculated and evaluated through correlation studies. To further assess the importance of these input features, a wrapper-type feature selection is conducted. For this purpose, commonly used supervised machine learning algorithms are used, such as decision trees, support vector machines, neural networks, and Gaussian processes. The study identifies the necessary features and the most suitable machine learning algorithm, followed by a scenario-based sensitivity analysis to understand the impact of incorrect input data, and thus evaluate the robustness of the prediction. The findings provide essential predictive information to forecast the optimal EF for a given powertrain configuration, considering data availability, quality, and granularity. Additionally, the study addresses limitations in prediction accuracy due to incorrect or missing data and proposes suitable handling methods. Thus, this research lays the basis for a predictive energy management strategy for PHEVs, utilizing supervised machine learning to predict the optimal EF.
en
dc.language.iso
en
-
dc.publisher
SAE International
-
dc.relation.ispartofseries
SAE Technical Papers
-
dc.subject
energy management strategy
en
dc.subject
plug-in hybrid electrical vehicle
en
dc.subject
equivalent consumption minimization strategies
en
dc.title
Supervised Machine Learning Approach to Predict the Optimal Equivalence Factor for Predictive Energy Management Strategies of Plug-In Hybrid Electric Vehicles
en
dc.type
Report
en
dc.type
Bericht
de
dc.contributor.affiliation
Mercedes-Benz AG, Germany
-
dc.relation.issn
0148-7191
-
dc.type.category
Research Report
-
tuw.relation.ispartofseries
SAE Technical Papers
-
tuw.researchTopic.id
E2
-
tuw.researchTopic.name
Sustainable and Low Emission Mobility
-
tuw.researchTopic.value
100
-
tuw.publication.orgunit
E315-01-1 - Forschungsgruppe Auto, Energie und Umwelt
-
tuw.publisher.doi
10.4271/2025-24-0119
-
dc.description.numberOfPages
12
-
dc.identifier.reportid
2025-24-0119
-
wb.sciencebranch
Maschinenbau
-
wb.sciencebranch
Elektrotechnik, Elektronik, Informationstechnik
-
wb.sciencebranch.oefos
2030
-
wb.sciencebranch.oefos
2020
-
wb.sciencebranch.value
50
-
wb.sciencebranch.value
50
-
item.openairecristype
http://purl.org/coar/resource_type/c_18ws
-
item.fulltext
no Fulltext
-
item.languageiso639-1
en
-
item.grantfulltext
restricted
-
item.openairetype
research report
-
item.cerifentitytype
Publications
-
crisitem.author.dept
Mercedes-Benz AG, Germany
-
crisitem.author.dept
E315 - Institut für Fahrzeugantriebe und Automobiltechnik
-
crisitem.author.dept
E315-01 - Forschungsbereich Fahrzeugantriebe und Automobiltechnik
-
crisitem.author.parentorg
E300 - Fakultät für Maschinenwesen und Betriebswissenschaften
-
crisitem.author.parentorg
E315 - Institut für Fahrzeugantriebe und Automobiltechnik