Battery state-of-charge estimation for hybrid and electric vehicles using extended kalman filter techniques
US-9575128-B2 · Feb 21, 2017 · US
US11034257B2 · US · B2
| Field | Value |
|---|---|
| Publication number | US-11034257-B2 |
| Application number | US-201916245507-A |
| Country | US |
| Kind code | B2 |
| Filing date | Jan 11, 2019 |
| Priority date | Jan 11, 2019 |
| Publication date | Jun 15, 2021 |
| Grant date | Jun 15, 2021 |
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A method for estimating remaining energy in a battery pack having series-connected cells/cell groups includes measuring battery parameters, including a battery voltage, current, and temperature. The controller estimates a static state of charge difference (ΔSOC) value and a current-dependent ΔSOC value in real-time using the parameters, including calculating the static ΔSOC value as a difference between an average SOC of the battery pack and an SOC of a weakest/lowest energy cell group. The current-dependent ΔSOC value is a percentage SOC per unit of the current. The static ΔSOC value and current-dependent ΔSOC values are filtered via a multi-parameter state estimator block. Using the filtered state values, the controller executes a control action responsive to the estimated remaining energy, including displaying the remaining energy and/or a quantity derived from the remaining energy via a display device. A powertrain system includes the controller, electric machine, and battery pack.
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What is claimed is: 1. A method for estimating remaining energy in a battery pack having a plurality of series-connected cells or cell groups, the method comprising: measuring a set of battery parameters using at least one electrical sensor, the set of battery parameters including a battery voltage, a battery current, and a battery temperature of the battery pack; determining, via a controller, a weakest/lowest energy one of the cells or cell groups of the battery pack; estimating, in real-time using the set of battery parameters, a static state of charge difference (ΔSOC) value and a current-dependent ΔSOC value, the static ΔSOC value including a difference between an average state of charge (SOC) of the battery pack and an SOC of the weakest/lowest energy one of the cells or cell groups, and the current-dependent ΔSOC value including a percentage SOC per unit of the battery current; filtering the static ΔSOC value and the current-dependent ΔSOC value via a multi-parameter state estimator block of the controller to thereby derive filtered state values; estimating the remaining energy in the battery pack by calculating a gain as a co-variance matrix and an observation matrix based on the filtered state values to derive an energy offset and estimated range; and executing a control action with respect to the battery pack responsive to the estimated remaining energy, the control action including controlling operation of an electric machine connected to the battery pack based on the remaining energy and displaying the remaining energy and/or a quantity derived from the remaining energy via a display device. 2. The method of claim 1 , wherein the control action includes allocating at least some of the remaining energy from the battery pack to the electric machine based on the remaining energy. 3. The method of claim 1 , wherein the electric machine is coupled to drive wheels of a motor vehicle, and wherein the control action includes: estimating a remaining electric operating range of the motor vehicle, and displaying the remaining electric operating range via the display device as the quantity derived from the remaining energy. 4. The method of claim 1 , wherein the control action includes modifying an output speed or an output torque of the electric machine based on the remaining energy. 5. The method of claim 1 , wherein the multi-parameter state estimator includes a Kalman filter minimizing a magnitude of an innovation value error calculated as a function of the static ΔSOC and the current-dependent ΔSOC as: E =rawΔSOC−((ΔSOC ID )( I B )+staticΔSOC) where E is the innovation value error, rawΔSOC is a raw ΔSOC value, ΔSOC ID is the current-dependent ΔSOC, staticΔSOC is the static ΔSOC, and I B is the battery current. 6. The method of claim 1 , further comprising: determining an average cell voltage of the battery pack by dividing the battery voltage by a total number of the cells or cell groups; and extracting the average SOC of the battery pack from a lookup table indexed by the average cell voltage. 7. The method of claim 1 , further comprising: subtracting a cell voltage spread from a pack-level open-circuit voltage (OCV) of the battery pack to derive a low-cell OCV; and extracting the SOC of the weakest/lowest energy one of the cells or cell groups from an OCV-to-SOC lookup table using the low-cell OCV. 8. The method of claim 1 , wherein executing a control action includes identifying a potentially defective cell from within the cells or cell groups of the battery pack as a low-capacity cell, a high-resistance cell, or a high self-discharge cell, and repairing or replacing the identified potentially defective cell and/or the battery pack responsive to identifying the potentially defective cell. 9. The method of claim 1 , wherein the control action includes dynamically changing charging or discharging targets of the battery pack responsive to the remaining energy. 10. A powertrain system comprising: a battery pack having a plurality of series-connected cells or cell groups; an electric machine connected to the battery pack; a driven load connected to the electric machine; at least one electrical sensor configured to measure a set of battery parameters, the set of battery parameters including a battery voltage, a battery current, and a battery temperature of the battery pack; a display device; and a controller in communication with the at least one electrical sensor and the display device, the controller being configured to: determine a weakest/lowest energy one of the cells or cell groups; estimate, in real-time using the set of battery parameters, a static state of charge difference (ΔSOC) value and a current-dependent ΔSOC value, the static ΔSOC value including a difference between an average state of charge (SOC) of the battery pack and an SOC of the weakest/lowest energy one of the cells or cell groups, and the current-dependent ΔSOC value including a percentage SOC per unit of the battery current; filter the static ΔSOC value and the current-dependent ΔSOC value using a multi-parameter state estimator block to thereby derive filtered state values; estimate a remaining energy in the battery pack using the filtered state values; and execute a control action with respect to the battery pack responsive to the estimated remaining energy, the control action including displaying the remaining energy and/or a quantity derived from the remaining energy via the display device. 11. The powertrain system of claim 10 , wherein the control action further includes allocating at least some of the remaining energy from the battery pack to the electric machine based on the remaining energy. 12. The powertrain system of claim 10 , wherein the driven load is a set of drive wheels of a motor vehicle, and wherein the control action includes: estimating a remaining electric operating range of the motor vehicle, and displaying the remaining electric operating range via the display device as the quantity derived from the remaining energy. 13. The powertrain system of claim 10 , wherein the control action includes modifying an output speed or an output torque of the electric machine based on the remaining energy. 14. The powertrain system of claim 10 , wherein the multi-parameter state estimator includes a Kalman filter. 15. The powertrain system of claim 10 , wherein the controller is further configured to: determine an average cell voltage of the battery pack by dividing the battery voltage by a total number of the cells or cell groups, and extract the average SOC of the battery pack from a lookup table indexed by the average cell voltage. 16. The powertrain system of claim 10 , wherein the controller is further configured to: subtract a cell voltage spread from a pack-level open-circuit voltage (OCV) of the battery pack to derive a low-cell OCV, and extract the SOC of the weakest/lowest energy one of the cells or cell groups from an OCV-to-SOC lookup table using the low-cell OCV. 17. The powertrain system of claim 10 , wherein the control action includes identifying a potentially defective cell from within the cells or cell groups of the battery pack as a low-capacity cell, a high-resistance cell, or a high self-discharge cell, and repairing or replacing the identified potentially defective cell and/or the battery pack responsive to identifying the potentially defective cell. 18. The powertrain system of claim 10 , wherein the control action includes dynamically changing charging or discharging targets of the battery pack responsive to the rem
Energy storage systems for electromobility, e.g. batteries · CPC title
responding to state of charge [SoC] · CPC title
combining voltage and current measurements · CPC title
Voltage · CPC title
Temperature · CPC title
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