744
Views
29
CrossRef citations to date
0
Altmetric
Reliability Engineering

Remaining useful life prediction for lithium-ion batteries using a quantum particle swarm optimization-based particle filter

, , ORCID Icon, &

References

  • Arulampalam, M. S., S. Maskell, N. Gordon, et al. 2002. A tutorial on particle filters for online nonlinear/non-Gaussian Bayesian tracking. IEEE Transactions on Signal Processing 50 (2):174–188.
  • Cai, Y. J., J. Sun, J. Wang, et al. 2008. Optimizing the codon usage of synthetic gene with QPSO algorithm. Journal of Theoretical Biology 254 (254):123–7.
  • Carpenter, J., P. Clifford, and P. Fearnhead. 1999. Improved particle filter for nonlinear problems. Radar, Sonar and Navigation 146 (1):2–7.
  • Chen, X. Z., J. S. Yu, D. Y. Tang, et al. 2012. A novel PF-LSSVR-based framework for failure prognosis of nonlinear systems with time-varying parameters. Chinese Journal of Aeronautics 25 (5):715–724.
  • Daigle, M., and C. S. Kulkarni. 2015. End-of-discharge and end-of-life prediction in lithium-ion batteries with electrochemistry-based aging models. Paper presented at the 2015 AIAA Infotech@Aerospace Conference, Jan 5–9, Kissimmee, USA. AIAA.
  • Eddahech, A., O. Briat, N. Bertrand, et al. 2012. Behavior and state-of-health monitoring of li-ion batteries using impedance spectroscopy and recurrent neural networks. International Journal of Electrical Power & Energy Systems 42 (1):487–494.
  • Feng, J., P. H. Kvam, and Y. Z. Tang. 2016. Remaining useful lifetime prediction based on the damage-marker bivariate degradation model: A case study on lithium-ion batteries used in electric vehicles. Engineering Failure Analysis 70:323–342.
  • Hu, C., B. D. Youn, and J. Chung. 2012. A multiscale framework with extended Kalman filter for lithium-ion battery SOC and capacity estimation. Applied Energy 92 (4):694–704.
  • Li, C., and X. L. Jiang. 2011. Kalman filter based on SVM innovation update for predicting state-of health of VRLA batteries. Communications in Computer & Information Science 225:455–463.
  • Liu, D. T., Y. Luo, L. M. Guo, et al. 2013. Uncertainty quantification of fusion prognostics for lithium-ion battery remaining useful life estimation. Paper presented at the 2013 IEEE International Conference on Prognostics and Health Management, June 24–27, Gaithersburg, Maryland. IEEE.
  • Liu, D. T., Y. Luo, J. Liu, et al. 2014. Lithium-ion battery remaining useful life estimation based on fusion nonlinear degradation AR model and RPF algorithm. Neural Computing and Application 25 (3):557–572.
  • Liu, X., D. Liu, Y. Zhang, et al. 2014. Least squares support vector machine based lithium battery capacity prediction. Paper presented at the 2014 International Conference on Mechatronics and Control, Nov 15–17. IEEE, Jinzhou, China. 61(5):1589–1600.
  • Long, B., W. M. Xian, L. Jiang, et al. 2013. An improved autoregressive model by particle swarm optimization for prognostics of lithium-ion batteries. Microelectronics Reliability 53(5):821–831
  • Mo, B. H., J. S. Yu, D. Y. Tang, et al. 2016. A remaining useful life prediction approach for lithium-ion batteries using Kalman filter and an improved particle filter. Paper presented at the 2016 IEEE International Conference on Prognostics and Health Management, Oct 12–14, Ottawa, Canada. IEEE.
  • Nishi, Y. 2001. Lithium ion secondary batteries; Past 10 years and the future. Journal of Power Sources 100 (1–2):101–06.
  • Ouyang, M. G., X. N. Feng, X. B. Han, et al. 2016. A dynamic capacity degradation model and its applications considering varying load for a large format li-ion battery. Applied Energy 165:48–59.
  • Saha, B., and K. Goebel. 2007. “Battery Data Set”, NASA Ames Prognosticsk Data Repository. Moffett Field, CA: NASA Ames Research Center. http://ti.arc.nasa.gov/project/prognostic-data-repository
  • Saha, B., and K. Goebel. 2009. Modeling li-ion battery capacity depletion in a particle filtering framework. Paper presented at the proceeding of annual conference of the prognostics and health management society, Sep 27-Oct 1, San Diego, Canada. IEEE..
  • Saha, B., K. Goebel, S. Poll, et al. 2009. Prognostics methods for battery health monitoring using a Bayesian framework. IEEE Transactions on Instrumentation & Measurement 58 (2):291–96.
  • Si, X. S., W. Wang, C. H. Hu, et al. 2011. Remaining useful life estimation - A review on the statistical data driven approaches. European Journal of Operational Research 213 (1):1–14.
  • Sun, J., B. Feng, and W. Xu. 2004. Particle swarm optimization with particles having quantum behavior. Paper presented at the 2004 Congress on Evolutionary Computation, Jun 19–23, Portland, Oregon, USA. IEEE.
  • Sun, J., W. B. Xu, and B. Feng. 2005. A global search strategy of quantum-behaved particle swarm optimization. Paper presented at the 2004 IEEE Conference on Cybernetics and Intelligent Systems, Dec 1–3, Singapore. IEEE.
  • Wang, D., Q. Miao, and M. Pecht. 2013. Prognostics of lithium-ion batteries based on relevance vectors and a conditional three-parameter capacity degradation model. Journal of Power Sources 239 (10):253–264.
  • Xu, X. Z., D. Shan, G. Y. Wang, et al. 2016. Multimodal medical image fusion using PCNN optimized by the QPSO algorithm. Applied Soft Computing 46:588–595.
  • Zhang, G. Y., Y. M. Cheng, F. Yang, et al. 2008. Particle filter based on PSO. Paper presented at the 2008 International Conference on Intelligent Computation Technology and Automation, Oct 20–22, Hunan, China. IEEE.
  • Zhou, Y. P., and M. H. Huang. 2016. Lithium-ion batteries remaining useful life prediction based on a mixture of empirical mode decomposition and ARIMA model. Microelectronics Reliability 65:265–273.

Reprints and Corporate Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

To request a reprint or corporate permissions for this article, please click on the relevant link below:

Academic Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

Obtain permissions instantly via Rightslink by clicking on the button below:

If you are unable to obtain permissions via Rightslink, please complete and submit this Permissions form. For more information, please visit our Permissions help page.