Weitere Kapitel dieses Buchs durch Wischen aufrufen
In order to set an adequate lifetime target for each market, quantitative evaluation of variation of lifetime characteristics is required. In particular, the lifetime of vehicle unit depends heavily on customer’s usage (e.g., gross vehicle weight, road gradient, and acceleration operation). We thus have developed an online monitoring system that continually collects some information such as usage and environmental conditions. A method has been developed for predicting vehicle component lifetimes using data from an online monitoring system that collects an extensive amount of data during vehicle operation. The linear model used for prediction takes into account variations in usage conditions and models’ data as covariates. The prediction procedure was generalized to enable it to make predictions using a new data sample. The large amount of information on usage and environmental conditions obtained with the online monitoring system enabled the usage of each sample to be quantified and treated as a stratification factor. A stratified analysis produced fairly accurate results, meaning that using online monitoring data should be useful for lifetime prediction.
Bitte loggen Sie sich ein, um Zugang zu diesem Inhalt zu erhalten
Sie möchten Zugang zu diesem Inhalt erhalten? Dann informieren Sie sich jetzt über unsere Produkte:
JSME S 002 (1994): Standard Method of Statistical Fatigue Testing (Revised Edition), The Japan Society of Mechanical Engineers (in Japanese).
Koide, T. (2005): “Estimation of life and strength by fatigue test,” Hagurumasouchi Ni Kansuru Jitsuyogijyutukakushin No Tameno Chosakenkyu Bunkakai (RC205 Report of Research Subcommittee for Practical Innovation on Gearing), The Japan Society of Mechanical Engineers, pp. 21–29 (in Japanese).
Kumazaki, C., M. Yokoyama, W. Yamamoto, and K. Suzuki (2012): “Optimal sampling plan and lifetime prediction based on online information,” Shinraisei To Shisutemu Anzengaku (Proceeding of 16th Study of System Safety and Reliability), Graduate School of Information Systems, University of Electro-Communications, pp. 46–51 (in Japanese).
Meeker, W. Q. and Y. Hong (2014): “Reliability Meets Big Data: Opportunities and Challenges,” Quality Engineering, Vol. 26, No. 1, pp. 102–116.
Suzuki, K. and H. Tsubaki (2013): “Use of information of online monitoring and the entire scheme to prevent trouble,” Shinraisei To Shisutemu Anzengaku (Proceeding of 17th Study of System Safety and Reliability), Graduate School of Information Systems, University of Electro-Communications, pp. 38–45 (in Japanese).
- Lifetime Prediction of Vehicle Components Using Online Monitoring Data
- Springer Singapore
in-adhesives, MKVS, Neuer Inhalt/© Zühlke, Hellmich GmbH/© Hellmich GmbH, Neuer Inhalt/© momius | stock.adobe.com