Predicting the slow death of lithium-ion batteries by Staff Writers Stanford CA (SPX) Sep 15, 2020
Batteries fade as they age, slowly losing power and storage capacity. As in people, aging plays out differently from one battery to another, and it's next to impossible to measure or model all of the interacting mechanisms that contribute to decline. As a result, most of the systems used to manage charge levels wisely and to estimate driving range in electric cars are nearly blind to changes in the battery's internal workings. Instead, they operate more like a doctor prescribing treatment without knowing the state of a patient's heart and lungs, and the particular ways that environment, lifestyle, stress and luck have ravaged or spared them. If you've kept a laptop or phone for enough years, you may have seen where this leads firsthand: Estimates of remaining battery life tend to diverge further from reality over time. Now, a model developed by scientists at Stanford University offers a way to predict the true condition of a rechargeable battery in real-time. The new algorithm combines sensor data with computer modeling of the physical processes that degrade lithium-ion battery cells to predict the battery's remaining storage capacity and charge level. "We have exploited electrochemical parameters that have never been used before for estimation purposes," said Simona Onori, assistant professor of energy resources engineering in Stanford's School of Earth, Energy and Environmental Sciences (Stanford Earth). The research appears Sept. 11 in the journal IEEE Transactions on Control Systems Technology. The new approach could help pave the way for smaller battery packs and greater driving range in electric vehicles. Automakers today build in spare capacity in anticipation of some unknown amount of fading, which adds extra cost and materials, including some that are scarce or toxic. Better estimates of a battery's actual capacity will enable a smaller buffer. "With our model, it's still important to be careful about how we are using the battery system," Onori explained. "But if you have more certainty around how much energy your battery can hold throughout its entire lifecycle, then you can use more of that capacity. Our system reveals where the edges are, so batteries can be operated with more precision." The accuracy of the predictions in this model - within 2 percent of actual battery life as gathered from experiments, according to the paper - could also make it easier and cheaper to put old electric car batteries to work storing energy for the power grid. "As it is now, batteries retired from electric cars will vary widely in their quality and performance," Onori said. "There has been no reliable and efficient method to standardize, test or certify them in a way that makes them competitive with new batteries custom-built for stationary storage."
Dropping old assumptions Traditional battery management systems typically rely on models that assume the amount of lithium in each electrode never changes, said lead study author Anirudh Allam, a PhD student in energy resources engineering. "In reality, however, lithium is lost to side reactions as the battery degrades," he said, "so these assumptions result in inaccurate models." Onori and Allam designed their system with continuously updated estimates of lithium concentrations and a dedicated algorithm for each electrode, which adjusts based on sensor measurements as the system operates. They validated their algorithm in realistic scenarios using standard industry hardware.
On the road The team focused their experiments on a type of lithium-ion battery commonly used in electric vehicles (lithium nickel manganese cobalt oxide) to estimate key internal variables such as lithium concentration and cell capacity. But the framework is general enough that it should be applicable to other kinds of lithium-ion batteries and to account for other mechanisms of battery degradation. "We showed that our algorithm is not just a nice theoretical work that can run on a computer," she said. "Rather, it is a practical, implementable algorithm which, if adopted and used in cars tomorrow, can result in the ability to have longer-lasting batteries, more reliable vehicles and smaller battery packs."
Lightweight green supercapacitors could charge devices in a jiffy College Station TX (SPX) Sep 09, 2020 In a new study, researchers at Texas A and M University have described their novel plant-based energy storage device that could charge even electric cars within a few minutes in the near future. Furthermore, they said their devices are flexible, lightweight and cost-effective. "Integrating biomaterials into energy storage devices has been tricky because it is difficult to control their resulting electrical properties, which then gravely affects the devices' life cycle and performance. Also, the pr ... read more
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