Abstract:
Recent data-driven approaches have shown great potential in early prediction of battery cycle life by utilizing features from the discharge voltage curve. However, these ...Show MoreMetadata
Abstract:
Recent data-driven approaches have shown great potential in early prediction of battery cycle life by utilizing features from the discharge voltage curve. However, these studies caution that data-driven approaches must be combined with specific design of experiments in order to limit the range of aging conditions, since the expected life of Li-ion batteries is a complex function of various aging factors. In this work, we investigate the performance of the data-driven approach for battery lifetime prognostics with Li-ion batteries cycled under a variety of aging conditions, in order to determine when the data-driven approach can successfully be applied. Results show a correlation between the variance of the discharge capacity difference and the end-of-life for cells aged under a wide range of charge/discharge C-rates and operating temperatures. This holds despite the different conditions being used not only to cycle the batteries but also to obtain the features: the features are calculated directly from cycling data without separate slow characterization cycles at a controlled temperature. However, the correlation weakens considerably when the voltage data window for feature extraction is reduced, or when features from the charge voltage curve instead of discharge are used. As deep constant-current discharges rarely happen in practice, this imposes new challenges for applying this method in a realworld system.
Published in: 2021 American Control Conference (ACC)
Date of Conference: 25-28 May 2021
Date Added to IEEE Xplore: 28 July 2021
ISBN Information:
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- IEEE Keywords
- Index Terms
- Battery Lifetime ,
- Remaining Useful Life ,
- Cycling ,
- Range Of Conditions ,
- Discharge Capacity ,
- Voltage Curves ,
- Data Window ,
- Discharge Voltage ,
- Charging Voltage ,
- Voltage Data ,
- Battery Cycling ,
- Diagnostic Accuracy ,
- Predictive Power ,
- Weak Correlation ,
- Electric Vehicles ,
- Cold Temperatures ,
- Partial Data ,
- Partial Differential Equations ,
- Loss Of Capacity ,
- Advanced Algorithms ,
- Depth Of Discharge ,
- Exponential Growth Model ,
- Charge Curves ,
- Early Cycle ,
- Hot Temperature ,
- Internal Resistance ,
- Forms Of Degradation ,
- Partial Discharge ,
- Real-life Systems ,
- Average Root Mean Square Error
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Battery Lifetime ,
- Remaining Useful Life ,
- Cycling ,
- Range Of Conditions ,
- Discharge Capacity ,
- Voltage Curves ,
- Data Window ,
- Discharge Voltage ,
- Charging Voltage ,
- Voltage Data ,
- Battery Cycling ,
- Diagnostic Accuracy ,
- Predictive Power ,
- Weak Correlation ,
- Electric Vehicles ,
- Cold Temperatures ,
- Partial Data ,
- Partial Differential Equations ,
- Loss Of Capacity ,
- Advanced Algorithms ,
- Depth Of Discharge ,
- Exponential Growth Model ,
- Charge Curves ,
- Early Cycle ,
- Hot Temperature ,
- Internal Resistance ,
- Forms Of Degradation ,
- Partial Discharge ,
- Real-life Systems ,
- Average Root Mean Square Error