This application is generally related to state of charge estimation to determine battery capacity estimation using open-loop and closed-loop methods.
Hybrid-electric and pure electric vehicles rely on a traction battery to provide power for propulsion and may also provide power for some accessories. The traction battery typically includes a number of battery cells connected in various configurations. To ensure optimal operation of the vehicle, various properties of the traction battery may be monitored. One useful property is the battery state of charge (SOC) which indicates the amount of charge stored in the battery. The SOC may be calculated for the traction battery as a whole and for each of the cells. The SOC of the traction battery provides an indication of the charge remaining. The SOC for each individual cell provides information for balancing the SOC between the cells. In addition to the SOC, battery allowable charging and discharging power limits may be used to determine the range of battery operation and to prevent excessive battery operation.
A vehicle power system may include a controller programmed to output an electric only range indicator based on a change in capacity of a traction battery derived from open-loop and closed-loop estimates of change in state of charge of the traction battery. The change in capacity may be proportional to a ratio of the open-loop estimate to the closed-loop estimate. The closed-loop estimate may contain information indicative of the change in capacity. The open-loop estimate may contain information indicative of an initial capacity of the traction battery. The change in capacity may be an average of a plurality of changes in capacity each associated with a change in state of charge event.
Embodiments of the present disclosure are described herein. It is to be understood, however, that the disclosed embodiments are merely examples and other embodiments may take various and alternative forms. The figures are not necessarily to scale; some features could be exaggerated or minimized to show details of particular components. Therefore, specific structural and functional details disclosed herein are not to be interpreted as limiting, but merely as a representative basis for teaching one skilled in the art to variously employ the present invention. As those of ordinary skill in the art will understand, various features illustrated and described with reference to any one of the figures may be combined with features illustrated in one or more other figures to produce embodiments that are not explicitly illustrated or described. The combinations of features illustrated provide representative embodiments for typical applications. Various combinations and modifications of the features consistent with the teachings of this disclosure, however, could be desired for particular applications or implementations.
A traction battery or battery pack 124 stores energy that can be used by the electric machines 114. A vehicle battery pack 124 typically provides a high voltage DC output. The traction battery 124 is electrically connected to one or more power electronics modules. One or more contactors 142 may isolate the traction battery 124 from other components when opened and connect the traction battery 124 to other components when closed. The power electronics module 126 is also electrically connected to the electric machines 114 and provides the ability to bi-directionally transfer energy between the traction battery 124 and the electric machines 114. For example, a typical traction battery 124 may provide a DC voltage while the electric machines 114 may use a three-phase AC current to function. The power electronics module 126 may convert the DC voltage to a three-phase AC current used by the electric machines 114. In a regenerative mode, the power electronics module 126 may convert the three-phase AC current from the electric machines 114 acting as generators to the DC voltage used by the traction battery 124. The description herein is equally applicable to a pure electric vehicle. For a pure electric vehicle, the hybrid transmission 116 may be a gear box connected to an electric machine 114 and the engine 118 may not be present.
In addition to providing energy for propulsion, the traction battery 124 may provide energy for other vehicle electrical systems. A vehicle may include a DC/DC converter module 128 that converts the high voltage DC output of the traction battery 124 to a low voltage DC supply that is compatible with other vehicle loads. Other high-voltage electrical loads 146, such as compressors and electric heaters, may be connected directly to the high-voltage without the use of a DC/DC converter module 128. The electrical loads 146 may have an associated controller that operates the electrical load 146 when appropriate. The low-voltage systems may be electrically connected to an auxiliary battery 130 (e.g., 12V battery).
The vehicle 112 may be an electric vehicle or a plug-in hybrid vehicle in which the traction battery 124 may be recharged by an external power source 136. The external power source 136 may be a connection to an electrical outlet. The external power source 136 may be electrically connected to electric vehicle supply equipment (EVSE) 138. The EVSE 138 may provide circuitry and controls to regulate and manage the transfer of energy between the power source 136 and the vehicle 112. The external power source 136 may provide DC or AC electric power to the EVSE 138. The EVSE 138 may have a charge connector 140 for plugging into a charge port 134 of the vehicle 112. The charge port 134 may be any type of port configured to transfer power from the EVSE 138 to the vehicle 112. The charge port 134 may be electrically connected to a charger or on-board power conversion module 132. The power conversion module 132 may condition the power supplied from the EVSE 138 to provide the proper voltage and current levels to the traction battery 124. The power conversion module 132 may interface with the EVSE 138 to coordinate the delivery of power to the vehicle 112. The EVSE connector 140 may have pins that mate with corresponding recesses of the charge port 134. Alternatively, various components described as being electrically connected may transfer power using a wireless inductive coupling.
One or more wheel brakes 144 may be provided for decelerating the vehicle 112 and preventing motion of the vehicle 112. The wheel brakes 144 may be hydraulically actuated, electrically actuated, or some combination thereof. The wheel brakes 144 may be a part of a brake system 150. The brake system 150 may include other components that work cooperatively to operate the wheel brakes 144. For simplicity, the figure depicts one connection between the brake system 150 and one of the wheel brakes 144. A connection between the brake system 150 and the other wheel brakes 144 is implied. The brake system 150 may include a controller to monitor and coordinate the brake system 150. The brake system 150 may monitor the brake components and control the wheel brakes 144 to decelerate or control the vehicle. The brake system 150 may respond to driver commands and may also operate autonomously to implement features such as stability control. The controller of the brake system 150 may implement a method of applying a requested brake force when requested by another controller or sub-function.
The various components discussed may have one or more associated controllers to control and monitor the operation of the components. The controllers may communicate via a serial bus (e.g., Controller Area Network (CAN)) or via discrete conductors. In addition, a system controller 148 may be present to coordinate the operation of the various components. A traction battery 124 may be constructed from a variety of chemical formulations. Typical battery pack chemistries may be lead acid, nickel-metal hydride (NIMH) or Lithium-Ion.
In addition to the pack level characteristics, there may be battery cell 220 level characteristics that are measured and monitored. For example, the voltage, current, and temperature of each cell 220 may be measured. A system may use a sensor module 216 to measure the characteristics of individual battery cells 220. Depending on the capabilities, the sensor module 216 may measure the characteristics of one or multiple of the battery cells 220. The battery pack 200 may utilize up to Nc sensor modules 216 to measure the characteristics of each of the battery cells 220. Each sensor module 216 may transfer the measurements to the BECM 204 for further processing and coordination. The sensor module 216 may transfer signals in analog or digital form to the BECM 204. In some embodiments, the functionality of the sensor module 216 may be incorporated internally to the BECM 204. That is, the sensor module 216 hardware may be integrated as part of the circuitry in the BECM 204 wherein the BECM 204 may handle the processing of raw signals.
The battery cell 200 and pack voltages 210 may be measured using a circuit in the pack voltage measurement module 212. The voltage sensor circuit within the sensor module 216 and pack voltage measurement circuitry 212 may contain various electrical components to scale and sample the voltage signal. The measurement signals may be routed to inputs of an analog-to-digital (A/D) converter within the sensor module 216, the sensor module 216 and BECM 204 for conversion to a digital value. These components may become shorted or opened causing the voltage to be measured improperly. Additionally, these problems may occur intermittently over time and appear in the measured voltage data. The sensor module 216, pack voltage sensor 212 and BECM 204 may contain circuitry to ascertain the status of the voltage measurement components. In addition, a controller within the sensor module 216 or the BECM 204 may perform signal boundary checks based on expected signal operating levels.
A battery cell may be modeled in a variety of ways. For example, a battery cell may be modeled as an equivalent circuit.
Because of the battery cell impedance, the terminal voltage, Vt 320, may not be the same as the open-circuit voltage, Voc 304. As typically only the terminal voltage 320 of the battery cell is accessible for measurement, the open-circuit voltage, Voc 304, may not be readily measurable while the battery operates. When no current 314 is flowing for a sufficiently long period of time, the terminal voltage 320 may be the same as the open-circuit voltage 304, however typically a sufficiently long period of time may be needed to allow the internal dynamics of the battery to reach a steady state. The dynamic properties or dynamics may be characterized by a frequency response, which is the quantitative measure of the output spectrum of a system or device (battery, cell, electrode or sub-component) in response to a stimulus (change in current, current profile, or other historical data on battery current). The frequency response may be decomposed into frequency components such as fast responses to a given input and slow responses to the given input. To use the battery hardware more effectively, a model that captures both fast and slow battery cell dynamics is needed. A battery cell model that is compact enough to be executed on a microcontroller, microprocessor, ASIC, or other control system and captures both fast and slow dynamics of the battery cell is used to design a closed-loop battery SOC estimator. Equivalent circuits provide one method to capture battery characteristics and reduced-order electrochemical battery models may be an alternative. As more RC elements are added to an ECM, more model parameters and state variables are required. For example, an ECM with three RC components requires seven model parameters.
An example electrochemical battery model is disclosed as another way to model a Metal-ion battery.
There are multiple ranges of time scales existent in electrochemical dynamic responses of a Metal-ion battery 400. For example with a Li-ion battery, factors which impact the dynamics include but are not limited to the electrochemical reaction in active solid particles 412 in the electrodes and the mass transport of Lithium-ion across the electrodes 416. When considering these aspects, the basic reaction in the electrodes may be expressed as
Θ+Li++e−⇄Θ−Li (1)
In which Θ is the available site for intercalation, Li+ is the Li-ion, e− is the electron, and Θ−Li is the intercalated Lithium in the solid solution.
This fundamental reaction expressed by equation (1) is governed by multiple time scale processes. This is shown in
The anode 406 and cathode 410 may be modeled as a spherical material (i.e. spherical electrode material model) as illustrated by the anode spherical material 430 and the cathode spherical material 432. However other model structures may be used. The anode spherical material 430 has a metal-ion concentration 434 which is shown in relation to the radius of the sphere 436. The concentration of the Metal-ion 438 changes as a function of the radius 436 with a metal-ion concentration at the surface to electrolyte interface of 440. Similarly, the cathode spherical material 432 has a metal-ion concentration 442 which is shown in relation to the radius of the sphere 444. The concentration of the Metal-ion 446 changes as a function of the radius 444 with a metal-ion concentration at the surface to electrolyte interface of 448.
An electrochemical battery model may be expressed in a state-space from as
=Acseff+Bu, (2)
where cseff is the effective Li-ion concentration n-by-1 vector accounting for the slow-to-medium dynamics terms, A is the n-by-n system matrix that characterize the slow-to-medium dynamics of the battery, B is the n-by-1 input matrix that directly relates the input to the rate of state variables, and u is the input to the system, i.e., the battery current. A is also the function of the parameters related to battery capacity and dynamics.
An output, y, of the system may be the terminal voltage and may be expressed as:
y=Hc
s
eff
+Du (3)
The closed-loop estimation may determine an SOCCL estimation of the battery from the battery model expressed in, but not limited to, eqns. (2) and (3). The closed-loop estimation, unless previously specified, may reflect the change of the battery capacity because the closed-loop estimation is based on the battery current input and the battery voltage response, which is directly affected by the battery capacity. For this reason, the SOCCL estimation may be used to extract the battery capacity information, if other SOC measurement is available in the system.
Battery state of charge may be estimated using a book-keeping, Coulomb counting, i.e., current integration method. Other open-loop (or feed-forward) SOC estimation methods may also be used to determine SOCOL(t). The rate of SOCOL(t) with respect to the time t may be equal to the current, i(t), divided by the battery capacity Qbatt. SOC(tf) may be calculated by the sum of the initial SOC and the integral of the rate of SOCOL(t), as shown in
The open-loop SOC estimation may indicate the SOC at tf in relation to the original capacity of the battery, Qbatt. SOCOL may not detect sensor error or drift associated with the current indication or battery capacity change.
SOCOL and SOCCL may be Used to Estimate Battery Capacity
Having the subscript k represent time, a relationship may exist between the system input u(k), which is current i(k) in a battery system, and the system responses, which include the battery terminal voltage, SOC, and other measurable values. The system may be modeled in a state-space form around a reference point. For simplicity, let the system have one input and one output, i.e., SISO (single input single output) system.
x(k+1)=Ax(k)+Bu(k) (5)
y(k)=Cx(k)+Du(k) (6)
where A is the n-by-n system matrix, B is the n-by-1 input matrix, C is the 1-by-n output matrix, and D is the 1-by-1 matrix. Equations (2) and (3) may be expressed in a form of eqns. (5) and (6).
If the system is changing over time and the state-space model in eqns. (5) and (6) does not match to the changed system, a closed-loop estimator may be required to compensate the model mismatch, which is the difference between a physical plant and a system model. Therefore, the closed-loop estimator may produce the different system responses from the open-loop estimator. The difference in estimations between the closed-loop estimator and the open-loop estimator contains the system change information, and the system change information may be extracted from the difference in estimations.
Closed loop state estimator can be expressed as
where L is the observer gain matrix.
Eqn. (7) can be manipulated as
This expression shows that control inputs to the observer are adjusted to minimize the measurement error between the model and the plant, i.e.,
u′(k)=B−1L{tilde over (y)}(k)+u(k)=a(k)u(k) (9)
In this system, u(k)=i(k), hence
i′(k)=a(k)i(k) (10)
where a(k) is a correction factor determined by model mismatch.
The adjusted amount of the current input, iadj, to the battery can be expressed as
By comparing eqns. (10) and (11),
The adjusted current input i′adj(t) is equal to the product of the control input i(t) and the ratio between the initial battery capacity Qinit over the new battery capacity Qnew. Equation (12) will be valid in a sense of average when the time is sufficiently long and the feedback algorithm effectively rejects the external disturbance including model parameter mismatch.
The SOC estimation from the closed-loop may be related to the SOC estimation from open-loop estimator. The battery capacity change may be estimated from the relation between the SOC estimations by closed-loop and open-loop estimators.
From eqn. (11), eqn. (13) can be converted to
From eqn. (4),
From eqns. (14) and (15), the identified changed battery capacity is computed by
An estimation of the change in battery capacity may be proportional to a ratio of the open-loop estimate, ΔSOCOL, to the closed-loop estimate, ΔSOCCL. The ratio between ΔSOCOL and ΔSOCCL may indicate the change ratio of the battery capacity with respect to the initial battery capacity.
For example, an open-loop estimation of SOC may indicate a 80% SOC at ti and a 70% SOC at tf, which does not take into consideration the change in battery capacity. The closed-loop estimation of SOC may indicate a 70% SOC at ti and a 55% SOC at tf, which is evaluated with the changed battery capacity. The ΔSOCOL being 10% and the ΔSOCCL being 15% results in {circumflex over (Q)}new−2/3Qinit.
To reduce noise factors, such as measurement and process noises, the controller may be configured to recognize events, such as initial charge and discharge, and average the {circumflex over (Q)}new over time, as shown in equation (9).
Updating {circumflex over (Q)}new during events, such as initial charge and discharge, may erroneously skew the estimated battery capacity due to temporary fluctuations in the measurement signal.
Now referring to
Graph 1010 depicts battery state of charge change over time. As indicated in Equation (16), an estimated battery capacity change over time may be determined by the ratio between changes in the open-loop and closed-loop states of charge. The y-axis 1013 of graph 1010 represents the SOC over time, as depicted by the x-axis 1011. Curve 1012 is an indication of the SOCOL. Curve 1012 may be based on an initial determination of the battery capacity, SOC(t0) 1016. ΔSOCOL may be determined between time intervals t1 1004 and t2 1006, or between time intervals t0 and t1 1004, or between time intervals t0 and t2 1006. Curve 1014 is an indication of the SOCCL. Curve 1014 may be based on the lithium-ion concentration as discussed above, or based on other model based SOC estimation approaches. ΔSOCCL may be determined between time intervals t1 1004 and t2 1006, or between time intervals t0 and t1 1004, or between time intervals t0 and t2 1006. Equation (16) may be used to estimate a new battery capacity, {circumflex over (Q)}new. Now referring to
Graph 1110 depicts battery state of charge change over time. As indicated in Equation (37), an estimated battery capacity change over time may be averaged at particular times with limited estimation drift or errors. The y-axis 1113 of graph 1110 represents the SOC over time, as depicted by the x-axis 1111. Curve 1112 is an indication of the SOCOL. Curve 1112 may be based on an initial determination of the battery capacity, SOC(t0) 1016. ΔSOCOL may be determined between time intervals t1 1004 and t2 1006. Curve 1014 is an indication of the SOCCL. Curve 1014 may be based on the lithium-ion concentration as discussed above. ΔSOCCL may be determined between time intervals t1 1004 and t2 1006. Equation (36) may be used to estimate a new battery capacity, {circumflex over (Q)}new at time t1 1104, tk 1106, and tn 1108. Estimations of {circumflex over (Q)}new may be averaged to remove noise or other signal errors, as show in Equation (37).
The words used in the specification are words of description rather than limitation, and it is understood that various changes may be made without departing from the spirit and scope of the disclosure. As previously described, the features of various embodiments may be combined to form further embodiments of the invention that may not be explicitly described or illustrated. While various embodiments could have been described as providing advantages or being preferred over other embodiments or prior art implementations with respect to one or more desired characteristics, those of ordinary skill in the art recognize that one or more features or characteristics may be compromised to achieve desired overall system attributes, which depend on the specific application and implementation. These attributes may include, but are not limited to cost, strength, durability, life cycle cost, marketability, appearance, packaging, size, serviceability, weight, manufacturability, ease of assembly, etc. As such, embodiments described as less desirable than other embodiments or prior art implementations with respect to one or more characteristics are not outside the scope of the disclosure and may be desirable for particular applications.