Press Release
APL鈥揝tanford Team Uncovers Internal Temperature Maximum and Offers Path Toward Safer Fast-Charging of Lithium-Ion Batteries
Applications for APL Internships Are Currently Open and Administered on a Rolling Basis
A team from the 秘密直播 University Applied Physics Laboratory (APL) and Stanford University took an important step toward safer and faster charging of lithium-ion batteries by advancing the capability for dynamic, noninvasive internal temperature measurement.
Knowing a battery鈥檚 internal temperature is critical; temperatures warmer than 80鈩 (176鈩) can initiate cascading exothermic reactions that lead to venting of toxic and flammable gases, combustion and explosion. But estimating internal temperature has been difficult for conventional surface-temperature sensors because of thermal inertia and noise.
Now, new research is prompting researchers to rethink battery charging, now with stronger guarantees on cell safety and faster charging times. A study published by the APL鈥揝tanford team in the Journal of Power Sources shows that dynamic internal temperature measurements actually peak when a charging battery reaches around 61% of its full capacity, a safety consideration that is entirely obscured at the cell surface.
This work builds on the noninvasive battery internal temperature sensor (NIBITS) recently developed by APL鈥檚 Rengaswamy Srinivasan, the lead author of 鈥,鈥 along with colleagues at APL.
The technique works by first calibrating the cell鈥檚 internal resistance (more precisely impedance) measurements across the cell terminals against premeasured internal temperatures obtained under static conditions with a thermal chamber. Subsequently, internal temperature measurements are dynamically generated during charging by combining impedance measurements with the calibration data. Experiments detailed in the paper suggest these internal temperatures are less noisy and more responsive than temperatures measured at the cell surface.
While the NIBITS technique obtains calibration data under static conditions, there are no gold-standard comparisons to directly validate the resulting dynamic temperature measurements. To better establish the validity of the technique under dynamic conditions, the team showed that NIBITS measurements related to known phase transitions in the lithium-intercalated graphite anode of the battery.
Employing unsupervised machine learning, Dr. Lakshminarayan Srinivasan, MD, Ph.D., principal investigator of Stanford鈥檚 Neural Signal Processing Laboratory 鈥 as well as coauthor and son of APL鈥檚 Srinivasan 鈥 was able to identify these physical state transitions from the internal temperature measurements alone. 鈥淭hese transitions were entirely obscured in cell-surface temperature measurements during fast charging,鈥 he notes, adding that the technique is still presently limited to measurements below 80鈩 (176鈩).
Before the technology can reach consumers, the researchers say, challenges remain in scaling the technique to multi-cell batteries and designing the manufacturing process to integrate NIBITS into the battery form factor. The APL team has already begun exploring these scaling challenges.
鈥淓xtending these solutions to larger batteries would open the possibility for sensor-enabled closed-loop charging strategies that could simultaneously increase safety and drop charging times for electric cars, consumer electronics, and many other applications in today鈥檚 lithium-ion battery-powered world,鈥 says Rengaswamy Srinivasan. 鈥淢eeting scaling challenges to unlock the potential of NIBITS鈥hat鈥檚 part of the fun.鈥