Advanced SearchSearch Tips
Development of Load Profile Monitoring System Based on Cloud Computing in Automotive
facebook(new window)  Pirnt(new window) E-mail(new window) Excel Download
 Title & Authors
Development of Load Profile Monitoring System Based on Cloud Computing in Automotive
Cho, Hwee; Kim, Ki-Tae; Jang, Yun-Hee; Kim, Seung-Hwan; Kim, Jun-Su; Park, Keoun-Young; Jang, Joong-Soon; Kim, Jong-Man;
  PDF(new window)
Purpose: For improving result of estimated remaining useful life in Prognostics and Health Management (PHM), a system which is able to consider a lot of environment and load data is required. Method: A load profile monitoring system was presented based on cloud computing for gathering and processing raw data which is included environment and load data. Result: Users can access results of load profile information on the Internet. The developed system provides information which consists of distribution of load data, basic statistics, etc. Conclusion: We developed the load profile monitoring system for considering much environment and load data. This system has advantages such as improving accessibility through smart device, reducing cost, and covering various conditions.
Prognostics and Health Management;Load Profile Monitoring;Cloud Computing;Big Data;Automotive;
 Cited by
Ahn, Yungbae. 2013. "Public institution evaluation system based on cloud." Master Dissertation, University of Korea.

Antory, David. 2007. "Application of a Data-Driven Monitoring Technique to Diagnose Air Leaks in an Automotive Diesel Engine: A Case Study." Mechanical Systems and Signal Processing 21(2):795-808. crossref(new window)

Camci, Fatih. et al. 2013. "Feature Evaluation for Effective Bearing Prognostics." Quality and Reliability Engineering International 29(4):477-486. crossref(new window)

Cheng, Shunfeng, Azarian, Michael. H., and Pecht, Michael. G. 2010. "Sensor Systems for Prognostics and Health Management." Sensors 10(6):5774-5797. crossref(new window)

Choi, Kwangdoo et al. 2013. "An Empirical Study on the Influence Factors of the Mobile Cloud Storage Service Satisfaction."Journal of the Korean Society for Quality Management 41(3):381-394. crossref(new window)

Han, Chang-un. 2013. "Automobile evolution and the need for evolution of diagnostic techniques of electrical components." Journal of the KSME 53(7):40-43.

IBM Corporation. Software Group. 2013. "IBM big data for the automotive industry."Accessed Nov. 30.

IEEE. 2014. "IEEE PHM 2014 Data Challenge." Accessed Dec 4.

Jang, Jung-sun, and Kim, Ki-tae. 2013. "Case studies of PHM technology in the field of hybrid/electric vehicles." Journal of the KSME 53(7):35-39.

Jiang, Dongxiang, and Liu, Chao. 2011. "Machine Condition Classification Using Deterioration Feature Extraction and Anomaly Determination." IEEE Transactions on Reliability 60(1):41-48. crossref(new window)

Kohonen, Teuvo et al. 1995. "The Self-Organizing Map." Berlin: Springer.

Kwan, C. et al. 2003. "A Novel Approach to Fault Diagnostics and Prognostics." In ICRA:604-609.

Lee, Jay et al. 2013. "Methodology and Framework of a Cloud-Based Prognostics and Health Management System for Manufacturing Industry." Chemical engineering transactions 33:205-210.

Lee, Jong-Beom, and Cho, Jai-Rip. 2000. "The Study on the High Acceleration Life Method for the Automotive Electric and Electronic Parts."Journal of the Korean Society for Quality Management 28(4):16-28.

Lee, Jongmin, Yoo, Changkyoo, and Lee, Inbeum. 2003. "On-Line Batch Process Monitoring Using a Consecutively Updated Multiway Principal Component Analysis Model." Computers and chemical engineering 27(12):1903-1912. crossref(new window)

Li, Ruoyu, Sopon, Ponrit, and He, David. 2012. "Fault Features Extraction for Bearing Prognostics." Journal of Intelligent Manufacturing 23(2):313-321. crossref(new window)

Makoto, Shirota. 2009. The Impact of Cloud Computing. Tokyo: Jpub.

Mathew, Sony et al. 2006. "Prognostics Assessment of Aluminum Support Structure on a Printed Circuit Board." Journal of Electronic Packaging 128(4):339-345. crossref(new window)

Medjaher, Kamal, Camci, Fatih, and Zerhouni, Noureddine. 2012. "Feature Extraction and Evaluation for Health Assessment and Failure Prognostics." In Proceedings of First European Conference of the Prognostics and Health Management Society:111-116.

Peng, Ying, Dong, Ming, and Zuo, Ming, J. 2010. "Current Status of Machine Prognostics in Condition-Based Maintenance: A Review." The International Journal of Advanced Manufacturing Technology 50(1-4):297-313. crossref(new window)

Ramakrishnan, Arun, and Pecht, Michael, G. 2003. "A Life Consumption Monitoring Methodology for Electronic Systems." IEEE Transactions on Components and Packaging Technologies 26(3):625-634. crossref(new window)

Scott, David, W. 1979. "On Optimal and Data-Based Histograms." Biometrika 66(3):605-610. crossref(new window)

Shetty, Vidyasagar et al. 2002. "Remaining Life Assessment of Shuttle Remote Manipulator System End Effector Electronics Unit." IEEE 8:2987-2991.

Song, Jongwoo. 2008. "A Comparison of Classification Methods for Credit Card Approval Using R."Journal of the Korean Society for Quality Management 36(1):72-79

Vichare, Nikhil et al. 2007. "Environment and Usage Monitoring of Electronic Products for Health Assessment and Product Design." Quality Technology and Quantitative Management 4(2):235-250. crossref(new window)

Vichare, Nikhil, M., and Pecht, Michael, G. 2006. "Prognostics and Health Management of Electronics." IEEE Transactions on Components and Packaging Technologies 29(1):222-229. crossref(new window)

Vichare, Nikhil, M. 2006. "Prognostics and Health Management of Electronics By Utilizing Environmental And Usage Loads." Ph.D Dissertation, University of Maryland.

Wand, M. P. 1997. "Data-Based Choice of Histogram Bin Width." The American Statistician 51(1):59-64.

Zhang, Xiaodong et al. 2005. "An Integrated Approach to Bearing Fault Diagnostics and Prognostics." In American Control Conference: 2750-2755.