Life prediction of lithium battery based on particle filter and BP neural network
Journal of Physics: Conference Series, ISSN: 1742-6596, Vol: 2814, Issue: 1
2024
- 1Citations
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Metrics Details
- Citations1
- Citation Indexes1
Conference Paper Description
This paper focuses on using Particle Filter (PF) and Back Propagation (BP) neural networks for RUL prediction. This fusion strategy uses particle filtering (PF) for battery system state estimation and prediction while considering various types of noise and uncertainties to assess the system state comprehensively. Furthermore, the strategy employs a BP neural network to learn and combine historical data patterns with particle filtering estimation, improving prediction accuracy and reliability. This study validates the proposed fusion method by comparing it with the original PF and BP prediction methods using Toyota Motor Corporation and Stanford University datasets. The experimental results demonstrate its superior performance and higher prediction accuracy.
Bibliographic Details
http://www.scopus.com/inward/record.url?partnerID=HzOxMe3b&scp=85201367395&origin=inward; http://dx.doi.org/10.1088/1742-6596/2814/1/012047; https://iopscience.iop.org/article/10.1088/1742-6596/2814/1/012047; https://dx.doi.org/10.1088/1742-6596/2814/1/012047; https://validate.perfdrive.com/9730847aceed30627ebd520e46ee70b2/?ssa=d2807b1f-4c00-45e8-97db-9744d2368a78&ssb=57680203285&ssc=https%3A%2F%2Fiopscience.iop.org%2Farticle%2F10.1088%2F1742-6596%2F2814%2F1%2F012047&ssi=05d73912-cnvj-4cec-b04e-c8343fc39c55&ssk=botmanager_support@radware.com&ssm=78138054622967522231167383999407493&ssn=00fa31e700bd5c91dd85222b2255c81191ff6db1c10c-a37a-41b2-bdf7f6&sso=05594205-c45fe023bb49015b4ab1460c0355a56de0471586b4639ed2&ssp=52309052251723797103172432253082028&ssq=21482312502750369453431741274171711825010&ssr=MzQuMjM2LjI2LjMx&sst=com.plumanalytics&ssu=&ssv=&ssw=&ssx=eyJfX3V6bWYiOiI3ZjYwMDA1NjQyMDdlYy1iZmUwLTQzM2UtYjQ1OC1hYjM1MTQ0YzcxMDcxNzIzNzMxNzQxMjU1NTkzMjg2MTk0LTVkMmU3YzJmYzNkYTE0ZTUyMzExNiIsInJkIjoiaW9wLm9yZyIsInV6bXgiOiI3ZjkwMDBhMjUzOGQ5ZS1lNDA0LTQ0NTItODE2NC1jNGY3MWM0YTg5NGY4LTE3MjM3MzE3NDEyNTU1OTMyODYxOTQtOWVkNzY0NzlkZWRmNGRhYTIzMTE2In0=
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