Statistical Validation Framework for Automotive Vehicle Simulations Using Uncertainty Learning
The modelling and simulation process in the automotive domain is transforming. Increasing system complexity and variant diversity, especially in new electric powertrain systems, lead to complex, modular simulations that depend on virtual vehicle development, testing and approval. Consequently, the e...
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doaj-50c33091b57f4cb8b3e430a9745c6d8c2021-02-25T00:01:22ZengMDPI AGApplied Sciences2076-34172021-02-01111983198310.3390/app11051983Statistical Validation Framework for Automotive Vehicle Simulations Using Uncertainty LearningBenedikt Danquah0Stefan Riedmaier1Yasin Meral2Markus Lienkamp3Insitute of Automotive Technology , Technical Universiy of Munich, Boltzmannstr. 15, 85748 Garching, GermanyInsitute of Automotive Technology , Technical Universiy of Munich, Boltzmannstr. 15, 85748 Garching, GermanyInsitute of Automotive Technology , Technical Universiy of Munich, Boltzmannstr. 15, 85748 Garching, GermanyInsitute of Automotive Technology , Technical Universiy of Munich, Boltzmannstr. 15, 85748 Garching, GermanyThe modelling and simulation process in the automotive domain is transforming. Increasing system complexity and variant diversity, especially in new electric powertrain systems, lead to complex, modular simulations that depend on virtual vehicle development, testing and approval. Consequently, the emerging key requirements for automotive validation involve a precise reliability quantification across a large application domain. Validation is unable to meet these requirements because its results provide little information, uncertainties are neglected, the model reliability cannot be easily extrapolated and the resulting application domain is small. In order to address these insufficiencies, this paper develops a statistical validation framework for dynamic systems with changing parameter configurations, thus enabling a flexible validation of complex total vehicle simulations including powertrain modelling. It uses non-deterministic models to consider input uncertainties, applies uncertainty learning to predict inherent model uncertainties and enables precise reliability quantification of arbitrary system parameter configurations to form a large application domain. The paper explains the framework with real-world data from a prototype electric vehicle on a dynamometer, validates it with additional tests and compares it to conventional validation methods. It is published as an open-source document. With the validation information from the framework and the knowledge deduced from the real-world problem, the paper solves its key requirements and offers recommendations on how to efficiently revise models with the framework’s validation results.https://www.mdpi.com/2076-3417/11/5/1983modelling and simulationelectric powertrainautomotive vehiclevalidationverificationuncertainty quantification |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Benedikt Danquah Stefan Riedmaier Yasin Meral Markus Lienkamp |
spellingShingle |
Benedikt Danquah Stefan Riedmaier Yasin Meral Markus Lienkamp Statistical Validation Framework for Automotive Vehicle Simulations Using Uncertainty Learning Applied Sciences modelling and simulation electric powertrain automotive vehicle validation verification uncertainty quantification |
author_facet |
Benedikt Danquah Stefan Riedmaier Yasin Meral Markus Lienkamp |
author_sort |
Benedikt Danquah |
title |
Statistical Validation Framework for Automotive Vehicle Simulations Using Uncertainty Learning |
title_short |
Statistical Validation Framework for Automotive Vehicle Simulations Using Uncertainty Learning |
title_full |
Statistical Validation Framework for Automotive Vehicle Simulations Using Uncertainty Learning |
title_fullStr |
Statistical Validation Framework for Automotive Vehicle Simulations Using Uncertainty Learning |
title_full_unstemmed |
Statistical Validation Framework for Automotive Vehicle Simulations Using Uncertainty Learning |
title_sort |
statistical validation framework for automotive vehicle simulations using uncertainty learning |
publisher |
MDPI AG |
series |
Applied Sciences |
issn |
2076-3417 |
publishDate |
2021-02-01 |
description |
The modelling and simulation process in the automotive domain is transforming. Increasing system complexity and variant diversity, especially in new electric powertrain systems, lead to complex, modular simulations that depend on virtual vehicle development, testing and approval. Consequently, the emerging key requirements for automotive validation involve a precise reliability quantification across a large application domain. Validation is unable to meet these requirements because its results provide little information, uncertainties are neglected, the model reliability cannot be easily extrapolated and the resulting application domain is small. In order to address these insufficiencies, this paper develops a statistical validation framework for dynamic systems with changing parameter configurations, thus enabling a flexible validation of complex total vehicle simulations including powertrain modelling. It uses non-deterministic models to consider input uncertainties, applies uncertainty learning to predict inherent model uncertainties and enables precise reliability quantification of arbitrary system parameter configurations to form a large application domain. The paper explains the framework with real-world data from a prototype electric vehicle on a dynamometer, validates it with additional tests and compares it to conventional validation methods. It is published as an open-source document. With the validation information from the framework and the knowledge deduced from the real-world problem, the paper solves its key requirements and offers recommendations on how to efficiently revise models with the framework’s validation results. |
topic |
modelling and simulation electric powertrain automotive vehicle validation verification uncertainty quantification |
url |
https://www.mdpi.com/2076-3417/11/5/1983 |
work_keys_str_mv |
AT benediktdanquah statisticalvalidationframeworkforautomotivevehiclesimulationsusinguncertaintylearning AT stefanriedmaier statisticalvalidationframeworkforautomotivevehiclesimulationsusinguncertaintylearning AT yasinmeral statisticalvalidationframeworkforautomotivevehiclesimulationsusinguncertaintylearning AT markuslienkamp statisticalvalidationframeworkforautomotivevehiclesimulationsusinguncertaintylearning |
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