Connected Vehicle Diagnostics and Prognostics

This chapter describes a general framework, called an automatic field data analyzer (AFDA), as well as the related data analytic algorithms for connected vehicle diagnostics and prognostics (CVDP). The fault analysis results are provided to product development engineers with actionable design enhanc...

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Published inPrognostics and Health Management of Electronics pp. 479 - 501
Main Authors Zhang, Yilu, Du, Xinyu
Format Book Chapter
LanguageEnglish
Published Chichester, UK Wiley 2018
John Wiley and Sons Ltd
Edition1
SeriesWiley - IEEE
Subjects
Online AccessGet full text
ISBN1119515335
9781119515333
DOI10.1002/9781119515326.ch17

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Abstract This chapter describes a general framework, called an automatic field data analyzer (AFDA), as well as the related data analytic algorithms for connected vehicle diagnostics and prognostics (CVDP). The fault analysis results are provided to product development engineers with actionable design enhancement suggestions. A vehicle battery failure analysis on two years of data from 24 vehicles is performed to demonstrate the effectiveness of the proposed framework. An AFDA framework is developed that analyzes large volumes of on‐road vehicle data, automatically identifies root causes of faults, and eventually provides actionable design enhancement suggestions. The framework and algorithms for the proposed AFDA have been applied to the data collected through a General Motors (GM) internal project. The chapter explains a high‐level diagram of an AFDA. It consists of three parts, namely, the data collection subsystem, the information abstraction subsystem, and the root cause analysis subsystem.
AbstractList This chapter describes a general framework, called an automatic field data analyzer (AFDA), as well as the related data analytic algorithms for connected vehicle diagnostics and prognostics (CVDP). The fault analysis results are provided to product development engineers with actionable design enhancement suggestions. A vehicle battery failure analysis on two years of data from 24 vehicles is performed to demonstrate the effectiveness of the proposed framework. An AFDA framework is developed that analyzes large volumes of on‐road vehicle data, automatically identifies root causes of faults, and eventually provides actionable design enhancement suggestions. The framework and algorithms for the proposed AFDA have been applied to the data collected through a General Motors (GM) internal project. The chapter explains a high‐level diagram of an AFDA. It consists of three parts, namely, the data collection subsystem, the information abstraction subsystem, and the root cause analysis subsystem.
This chapter describes a general framework, called an automatic field data analyzer (AFDA), as well as the related data analytic algorithms for connected vehicle diagnostics and prognostics (CVDP). The fault analysis results are provided to product development engineers with actionable design enhancement suggestions. A vehicle battery failure analysis on two years of data from 24 vehicles is performed to demonstrate the effectiveness of the proposed framework. An AFDA framework is developed that analyzes large volumes of on‐road vehicle data, automatically identifies root causes of faults, and eventually provides actionable design enhancement suggestions. The framework and algorithms for the proposed AFDA have been applied to the data collected through a General Motors (GM) internal project. The chapter explains a high‐level diagram of an AFDA. It consists of three parts, namely, the data collection subsystem, the information abstraction subsystem, and the root cause analysis subsystem.
Author Zhang, Yilu
Du, Xinyu
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Copyright 2019 John Wiley and Sons Ltd
2018 John Wiley and Sons Ltd
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Keywords Warranties
Support vector machines
Data analysis
Data collection
Batteries
Testing
Vehicles
Language English
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Snippet This chapter describes a general framework, called an automatic field data analyzer (AFDA), as well as the related data analytic algorithms for connected...
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StartPage 479
SubjectTerms automatic field data analyzer
connected vehicle diagnostics and prognostics
data collection subsystem
design enhancement suggestions
fault analysis
General Motors internal project
information abstraction subsystem
root cause analysis subsystem
vehicle batteries
Title Connected Vehicle Diagnostics and Prognostics
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