This content is not included in
your SAE MOBILUS subscription, or you are not logged in.
Streamlined Process for Cloud Based Diagnostics Using Amazon Web Services
Technical Paper
2021-01-0159
ISSN: 0148-7191, e-ISSN: 2688-3627
Annotation ability available
Sector:
Event:
SAE WCX Digital Summit
Language:
English
Abstract
In the age of 5G, the cloud constitutes a massive computational resource. Such capability is greatly underutilized, especially for the purpose of vehicle diagnostics and prognostics. Diagnostics and prognostics run mostly in the limited and cost sensitive electronic module of the vehicle. Utilizing vehicle connectivity, along with the massive capability of the cloud would allow the deployment of smarter algorithms that provide improved vehicle performance and operation management. In this paper, a streamlined process to develop and deploy off-board diagnostics is presented. The process included developing multiphysics digital twins and running the diagnostics off-board. It was demonstrated on a fleet of virtual Hybrid Electric Vehicles (HEV). The Digital Twin replica was created using Simulink® and Simscape®. The microcontroller used to demonstrate the diagnostic is a Raspberry Pi hardware running in real time. Furthermore, a Digital Twin of the same HEV model was developed and deployed into the Amazon Cloud Services (AWS). A total of 1000 vehicles were simulated to prove the effectiveness of the proposed process. The diagnostic data of these 1000 vehicles were sent in real time to AWS Digital Twin. The Digital Twin ran a diagnostic algorithm based on vehicle speed, motor, generator, engine speeds and battery SOC data received from the hardware. Failures were randomly introduced in the 1000 vehicles. The Digital Twin Diagnostics effectively detected the introduced failures and notified the drivers via Email and Text messages.
Topic
Citation
Khaled, N., "Streamlined Process for Cloud Based Diagnostics Using Amazon Web Services," SAE Technical Paper 2021-01-0159, 2021, https://doi.org/10.4271/2021-01-0159.Also In
References
- Khaled , N. 2019
- Khaled , N. , Larson , B. , Sonawane , S. , and Sharma , T.S. 2019
- Khaled , N. , Mandavkar , V. , and Chandy , D. 2018
- Li , X. , Da , K. , Wang , Z. , and Han , W. Lithium-ion Batteries Fault Diagnostic for Electric Vehicles Using Sample Entropy Analysis Method Journal of Energy Storage 27 2020 10.1016/j.est.2019.101121
- Khaled , N. , Haas , H. , Lei , Y. , and Ancimer , R. 2019
- Jentz , R. , Lenzen , T. , Dadam , S. , Meissner , H. , and Hancock , K. 2018
- Dadam , S. , Jentz , R. , and Meissner , H. Diagnostic Evaluation of Exhaust Gas Recirculation (EGR) System on Gasoline Electric Hybrid Vehicle SAE Technical Paper 2020-01-0902 2020 https://doi.org/10.4271/2020-01-0902
- Van Nieuwstadt , M. , Lehmen , A. , Douglas , M.R. , Rollinger , J. et al. 2019
- Zheng , C. , Chen , Z. , and Huang , D. Fault Diagnosis of Voltage Sensor and Current Sensor for Lithium-Ion Battery Pack Using Hybrid System Modeling and Unscented Particle Filter Energy 191 15 2020 10.1016/j.energy.2019.116504
- Khaled , N. Oct. 29, 2020
- Forrai , A. , Seykens , X. , and Willems , F. Experimental Validation of a Virtual Engine-out NOx Sensor for Diesel Emission Control International Journal of Engine Research 20 10 2019 10.1177/1468087419857584
- Figura , J. , Kihas , D. , Pekar , J. , Uchanski , M. , et al. 2016 Automotive Selective Catalytic Reduction System Model-based Estimators for on-ECU Implementation: A Brief Overview SAE World Congress Detroit 10.4271/2016-01-0972
- Khaled , N. Pekar , J. Fuxman , A. Cunningham , M. , and Santin , O. 2014 Multivariable Control of Dual Loop EGR Diesel Engine with a Variable Geometry Turbo SAE World Congress Conference Detroit 10.4271/2014-01-1357
- Alfieri , V. and Pachner , D. Enabling Powertrain Variants through Efficient Controls Development SAE Technical Paper 2014-01-1160 2014 10.4271/2014-01-1160
- https://www.bbc.com/news/business-34324772
- https://www.justice.gov/opa/pr/civil-settlements-united-states-and-california-fiat-chrysler-will-resolve-allegations
- Jhou , J.-S. , Chen , S.-H. , Tsay , W.-D. , and Lai , M. The Implementation of OBD-II Vehicle Diagnosis System Integrated with Cloud Computation Technology 2013 Second International Conference on Robot, Vision and Signal Processing
- Khaled , N. , Pattel , B. , and Siddiqui , A. Digital Twins Development and Deployment of on the Cloud Elsevier 2020 9780128216316
- https://www.wired.com/2015/07/hackers-remotely-kill-jeep-highway/
- Elliott , D. , Keen , W. , and Miao , L. Recent Advances in Connected and Automated Vehicles Journal of Traffic and Transportation Engineering 6 2 109 131 April 2019
- Miller , S. Hybrid-Electric Vehicle Model in Simulink GitHub 2021 https://github.com/mathworks/Simscape-HEV-Series-Parallel/releases/tag/20.2.4.2