This course can also be taken for academic credit as ECEA 5733, part of CU Boulder’s Master of Science in Electrical Engineering degree.
Battery State-of-Health (SOH) Estimation
This course is part of Algorithms for Battery Management Systems Specialization
Instructor: Gregory Plett
Sponsored by PTT Global Chemical
14,781 already enrolled
(157 reviews)
What you'll learn
How to implement state-of-health (SOH) estimators for lithium-ion battery cells
Skills you'll gain
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There are 6 modules in this course
As battery cells age, their total capacities generally decrease and their resistances generally increase. This week, you will learn WHY this happens. You will learn about the specific physical and chemical mechanisms that cause degradation to lithium-ion battery cells. You will also learn why it is relatively simple to estimate and track changes to resistance, but why it is difficult to track changes to total capacity accurately.
What's included
8 videos13 readings7 assignments1 discussion prompt1 ungraded lab
Total capacity is often estimated using ordinary-least-squares (OLS) methods. This week, you will learn that this is a fundamentally incorrect approach, and will learn that a total-least-squares (TLS) method should be used instead. You will learn how to derive a weighted OLS solution, to use as a benchmark, and how to derive a weighted TLS solution also.
What's included
7 videos7 readings7 assignments4 ungraded labs
Unfortunately, the weighted TLS solution you learned in week 2 is not well suited for efficient computation on an embedded system like a BMS. As an intermediate step toward finding an efficient weighted TLS method, you will first learn a proportionally weighted TLS method this week. You will then learn how to generalize this to an "approximate weighted TLS" (AWTLS) method, which gives good estimates, and is feasible to implement on a BMS.
What's included
7 videos7 readings7 assignments4 ungraded labs
So far this course, you have learned a number of methods for estimating total capacity. This week, you will learn how to implement those methods in Octave code. You will also explore different simulation scenarios to benchmark how well each method works, in comparison with the others. The scenarios are representative of hybrid-electric-vehicle (HEV) and battery-electric-vehicle (BEV) applications, but the principles learned can be extrapolated to other similar application domains.
What's included
6 videos6 readings6 assignments5 ungraded labs
In the third course of the specialization, you learned how to use extended Kalman filters (EKFs) and sigma-point Kalman filters (SPKFs) to estimate the state of a battery cell. In this honors week, you will learn how to extend those concepts to apply EKF and SPKF to estimating the parameters of a battery-cell model if the state is known, and also how to simultaneously estimate both the state and parameters of a cell model.
What's included
6 videos6 readings4 assignments2 ungraded labs
You have learned several different total-capacity estimation methods. Some of these methods work better than others in general, but any method is only as good as the data you give it. In this project, you will explore a different way to determine the "x" and "y" data you use as input to the total-capacity estimation methods.
What's included
1 programming assignment1 ungraded lab
Instructor
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Reviewed on Jul 17, 2021
The course is going very deep in to mathematical models. I like the offered code samples as they allow to understand the functions in more detail
Reviewed on Aug 23, 2020
Gave brief overview of SOH and helps in understanding the basic concepts.
Reviewed on May 23, 2022
Great course with a an emphasis on using the previous courses to create useful programs
Recommended if you're interested in Physical Science and Engineering
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