This patent application is a U.S. National Stage filing of, and claims priority to and all advantages of, PCT Patent Publication Number PCT/JP2020/046938 filed on Dec. 16, 2021 and Japanese Patent Application No. 2019-238569 filed on Dec. 27, 2019, the contents of both of which are incorporated herein by reference in their entireties.
The present invention relates to a technique for simulating the performance of rechargeable batteries such as lithium-ion batteries.
Changes in current-voltage behavior waveform of a rechargeable battery are discussed by defining the internal resistance of the rechargeable battery as an equivalent circuit constructed by connecting parallel circuits of resistor R and capacitor C in multiple stages. However, in order to explain the transient response waveform of the voltage for a few or more seconds, a capacitor capacitance value of several 100 F to several 1000 F would have to be used as the time constant element. Such values are not compatible with the AC impedance and its equivalent circuit model used for evaluating the AC characteristics of a battery, and cannot be said to reproduce the battery properties.
The internal resistance is one of the characteristic items of a rechargeable battery. For example, in a lithium-ion rechargeable battery, complicated chemical reactions such as electrode reactions, SEI reactions, ion diffusion reactions, etc. inside the battery occur in an intertwined manner, and the behavior of the battery voltage is not of the kind where Ohm's law can be applied by regarding the internal resistance as a mere DC resistance.
Conventionally, as a method for evaluating the internal resistance of a battery, an AC impedance analysis method based on frequency response analysis (FRA) is well known. A method has been established to interpret various internal reactions by decomposing them into a number of time constant elements by applying an equivalent circuit model. The behavior of a battery on the order of seconds is dominated by the diffusion phenomenon as Warburg resistance, and how well this Warburg resistance is incorporated into an operating model determines the performance as the model. In order to measure the AC impedance, a dedicated device such as a frequency response analyzer (FRA) is required.
However, in practical use, the rechargeable battery is connected to a load and is repeatedly charged and discharged. In that case, only voltage, current, and temperature are measured as basic information to know the state of the rechargeable battery. Under these circumstances, the output voltage of the battery is affected by the internal resistance, and the internal resistance itself varies depending on the temperature conditions or the degree of degradation of the battery. There has been a need for a means that can reproduce with accuracy the characteristics of a battery in its actual operating state.
In view of the foregoing, it is an object of the present invention to provide a device or the like that can improve the accuracy in reproduction of the characteristics of a rechargeable battery by a simulation battery under various conditions.
A simulation battery construction device according to the present invention includes:
In the simulation battery construction device of the present invention, it is preferable that
In the simulation battery construction device of the present invention, it is preferable that
In the simulation battery construction device of the present invention, it is preferable that
In the simulation battery construction device of the present invention, it is preferable that
In the simulation battery construction device of the present invention, it is preferable that
(Configuration of Simulation Battery Construction Device)
The simulation battery construction device 100 as an embodiment of the present invention shown in
The simulation battery construction device 100 includes a first recognition element 111, a second recognition element 112, a first calculation element 121, a second calculation element 122, and a simulation battery control element 140. The first recognition element 111, the second recognition element 112, the first calculation element 121, the second calculation element 122, and the simulation battery control element 140 are each composed of a processor (arithmetic processing unit), a memory (storage device), an I/O circuit, and others.
The memory or a separate storage device stores and retains various data such as measurement results of voltage response characteristics of a rechargeable battery 220 with respect to an impulse current, as well as programs (software). For example, a plurality of identifiers each identifying the type (as specified by standards and specifications) of a rechargeable battery 220 or a designated apparatus 200 having the rechargeable battery 220 mounted thereon and a plurality of rechargeable battery models are associated respectively, and stored and retained in the memory. The processor reads the necessary program and data from the memory and executes arithmetic processing in accordance with the program based on the data, thereby executing the arithmetic processing or tasks (described below) assigned to the respective elements 111, 112, 121, 122, and 140 constituting the simulation battery construction device 100.
As shown in
The calculator (second calculation element 122) corresponding to the rechargeable battery model includes a calculator 1221, an output unit 1222, and an adder 1224. The calculator 1221, when receiving a current command value Icmd(t), computes an output voltage derived from a virtual internal resistance of the simulation battery 20. The current command value Icmd(t) may be provided from the designated apparatus 200. The values of parameters defining a transfer function H of the calculator 1221 are adjusted by a model parameter adjustment element 1220 based on a degradation degree D(m2) of a virtual rechargeable battery simulated by the simulation battery 20. The output unit 1222 outputs a virtual open-circuit voltage OCV(t) of the simulation battery 20. The adder 1224 adds up the outputs of the calculator 1221 and the output unit 1222.
The simulation battery 20 may be configured with an external power supply such as a commercial power supply to which the designated apparatus 200 is connected. The simulation battery 20 may be mounted on the designated apparatus 200 in place of the rechargeable battery 220. The simulation battery 20 may include the second calculation element 122. In this case, the second calculation element 122 may be configured with a control device 210 constituting the designated apparatus 200.
The designated apparatus 200 includes an input interface 202, an output interface 204, the control device 210, the rechargeable battery 220, and a sensor group 230. The designated apparatus 200 includes any apparatus that uses the rechargeable battery 220 as a power supply, such as a personal computer, cellular phone (smartphone), home appliance, or mobile body such as an electric bicycle.
The control device 210 is composed of a processor (arithmetic processing unit), a memory (storage device), an I/O circuit, and others. The memory or a separate storage device stores and retains various data such as the measurement results of the voltage response characteristics of the rechargeable battery 220. The control device 210 operates in response to the power supplied from the rechargeable battery 220 and controls the operation of the designated apparatus 200 in the energized state. The operation of the designated apparatus 200 includes the operation of an actuator (such as an electric actuator) that constitutes the designated apparatus 200. The processor constituting the control device 210 reads the necessary program and data from the memory, and executes the arithmetic processing assigned in accordance with the program based on the data.
The rechargeable battery 220 is, for example, a lithium-ion battery, and may be any other rechargeable battery such as a nickel-cadmium battery. In the case where power is supplied from the simulation battery 20 to the designated apparatus 200, the rechargeable battery 220 may be removed from the designated apparatus 200. The sensor group 230 measures the voltage response characteristics and temperature of the rechargeable battery 220, as well as the values of parameters necessary for controlling the designated apparatus 200. The sensor group 230 includes, for example, a voltage sensor, a current sensor, and a temperature sensor that output signals corresponding respectively to the voltage, current, and temperature of the rechargeable battery 220.
The simulation battery construction device 100 may be installed in the designated apparatus 200. In this case, a software server (not shown) may transmit degradation determining software to the arithmetic processing unit constituting the control device 210 included in the designated apparatus 200, thereby imparting the functions as the simulation battery construction device 100 to the arithmetic processing unit.
(Simulation Battery Construction Method)
A description will now be made of a simulation battery construction method which is performed by the simulation battery construction device 100 of the above configuration.
Parameters P(n0,n1,n2) of a rechargeable battery model at each of different temperatures T(n1) at each of different degradation degrees D(n2) are determined for various types of rechargeable batteries 220 having their types identified by the identifier id(n0).
Specifically, firstly, in the simulation battery construction device 100, a first index n1 and a second index n2 are each set to “0” (STEP 102 in
The temperature T of the rechargeable battery 220 is controlled to a temperature T(n1) (STEP 104 in
The first recognition element 111 recognizes a measurement result of a complex impedance Z(n0,n1,n2) of the rechargeable battery 220 (STEP 106 in
According to the AC impedance method, a combination of a frequency response analyzer (FRA) 212 and a potentio-galvanostat (PGS) 232 is used, as shown in
For example, the complex impedance Z(n0,n1,n2) of the rechargeable battery 220 in the state of not being mounted on the designated apparatus 200, such as immediately before shipment of the rechargeable battery 220, is measured. Alternatively, the complex impedance Z(n0,n1,n2) of the rechargeable battery 220 in the state of being mounted on the designated apparatus 200 may be measured. In this case, the FRA 212 may be configured with the control device 210, and the sensor group 230 may be configured with the PGS 232. For example, the designated apparatus 200 may be connected to an external power supply such as a commercial power supply for the purpose of charging the rechargeable battery 220, and a sinusoidal signal may be output with the power supplied from the external power supply.
(Establishment of Rechargeable Battery Model)
In the simulation battery construction device 100, values of parameters P(n0,n1,n2) of a rechargeable battery model are identified by the first calculation element 121 based on the measurement result of the complex impedance Z of the rechargeable battery 220 recognized by the first recognition element 111 (STEP 108 in
The rechargeable battery model is a model that expresses a voltage V(t) output from a rechargeable battery 220 when a current I(t) is input to the rechargeable battery 220. It is defined using an open-circuit voltage OCV and a transfer function H(t) of the internal resistance of the rechargeable battery 220 by the relational expression (01).
V(t)=OCV(t)+H(t)·I(t) (01)
Here, OCV(t) indicates that the open-circuit voltage increases or decreases as the current I(t) is charged and/or discharged.
A transfer function H(z) of an equivalent circuit model of the internal resistance of a rechargeable battery is defined by the following relational expression (02).
H(z)=H0(z)+Σi=1−mHi(z)+HW(z)+HL(z) (02)
Here, “H0(z)”, “Hi(z)”, “HW(z)”, and “HL(z)” are defined by parameters that represent the characteristics of the internal resistance of the rechargeable battery.
The transfer function H0(z) of the resistor R0 is defined by the relational expression (031).
H0(z)=R0 (031)
The transfer function Hi(z) of the i-th RC parallel circuit is defined as a transfer function of an infinite impulse response (IIR) system by the relational expression (032).
Hi(z)=(b0+biz−1)/(1+aiz−1) (032)
The transfer function HW(z) of the resistor W0 corresponding to the Warburg impedance is defined as a transfer function of a finite impulse response (FIR) system by the relational expression (04).
HW(z)=Σk=0−nhkz−k (04)
The transfer function HL(z) of the coil L is defined by the relational expression (05).
HL(z)=(2L0/T)(1−z−1)/(1+z−1) (05)
An approximate curve of the complex impedance Z of the rechargeable battery represented by the Nyquist plot, shown with a solid line in
It is determined whether the first index n1 is a predetermined number N1 or larger (STEP 110 in
(Determination of Degradation Degree)
If the determination result is positive (YES in STEP 110 in
During the measurement, the impulse current I(t) (— I(z)) is input to the rechargeable battery 220. For example, the impulse current I(t) as shown in
Then, on the basis of the output signal of the voltage sensor, the control device 210 measures the voltage response characteristic V(n0,n2)(t) of the rechargeable battery 220. In the case where the rechargeable battery 220 is mounted on the designated apparatus 200, the voltage response characteristic V(n0,n2)(t) of the rechargeable battery 220 may be measured by the control device 210 on the basis of the output signal of the voltage sensor constituting the sensor group 230 mounted on the designated apparatus 200. In this manner, the voltage response characteristic V(n0,n2)(t) of the rechargeable battery 220, which varies as shown by the broken line in
Subsequently, the second calculation element 122 evaluates the degradation degree D(n0,n2) of the rechargeable battery 220 having its type identified by the identifier id(n0), on the basis of the result of contrast between the voltage response characteristics V(n0,n2)(t) and V(n0,0)(t) of the rechargeable battery 220 (STEP 116 in
It is determined whether the second index n2 is a predetermined number N2 or larger (STEP 118 in
(Construction of Simulation Battery)
The second recognition element 112 recognizes an identifier id(m0) that identifies the type of a virtual rechargeable battery to be simulated by the simulation battery 20 (STEP 140 in
The second recognition element 112 recognizes the temperature T(m1) of the virtual rechargeable battery simulated by the simulation battery 20 (STEP 142 in
The second recognition element 112 recognizes the degradation degree D(m2) of the virtual rechargeable battery simulated by the simulation battery 20 (STEP 144 in
The second calculation element 122 selects, from among a large number of rechargeable battery models registered in the database 10, one rechargeable battery model that is specified by the parameters P(m0, m1, m2) on the basis of the recognition results by the second recognition element 112 of the identifier id(m0) identifying the type, the temperature T(m1), and the degradation degree D(m2) of the virtual rechargeable battery simulated by the simulation battery 20 (STEP 146 in
In addition, the second recognition element 112 recognizes a current command value Icmd(t) (STEP 148 in
The second calculation element 122 inputs the current command value Icmd(t) to the selected rechargeable battery model, and calculates a voltage command value Vcmd(t) as the output of the rechargeable battery model (STEP 150 in
Subsequently, the simulation battery control element 140 performs control such that a voltage V(t) obtained by multiplying the voltage command value Vcmd(t) by a gain by the amplifier 22 in the simulation battery 20 is applied to the designated apparatus 200 or a designated load constituting the designated apparatus 200 (STEP 152 in
In the above embodiment, the values of the parameters P(n0,n1,n2) of the rechargeable battery models were individually determined according to the differences in the degradation degree D(n2) of the rechargeable batteries 220 having their types identified by the identifier id(n0) (see STEPS 108, 114, and 116 in
In the above embodiment, the values of the parameters P(n0,n1,n2) of the rechargeable battery models were individually determined according to the differences in the temperature T(n1) of the rechargeable batteries 220 having their types identified by the identifier id(n0) (see STEPS 104, 114, and 116 in
According to the simulation battery construction device 100 and the simulation battery construction method performed by the same according to the present invention, the parameters P(n0,n1,n2) of a rechargeable battery model at each of different temperatures T(n1) at each of different degradation degrees D(n2) are determined for a rechargeable battery 220 having its type identified by the identifier id(n0). On the basis of the measurement result of the complex impedance Z of the rechargeable battery 220, the values of the parameters P(n0,n1,n2) of the rechargeable battery model are identified (see STEPS 104→106→108 in
Further, on the basis of the identifier id(m0), temperature T(m1), and degradation degree D(m2) of the virtual rechargeable battery to be simulated by the simulation battery 20, a rechargeable battery model having the parameters P(m0,m1,m2) is selected (see
Number | Date | Country | Kind |
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2019-238569 | Dec 2019 | JP | national |
Filing Document | Filing Date | Country | Kind |
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PCT/JP2020/046938 | 12/16/2020 | WO |
Publishing Document | Publishing Date | Country | Kind |
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WO2021/131958 | 7/1/2021 | WO | A |
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Number | Date | Country | |
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20220317193 A1 | Oct 2022 | US |