The present invention relates to a method for estimating the state of health of an electrochemical cell for storing electrical energy. It is notably, but not exclusively, applicable to electric or hybrid automobile vehicles.
In the current context of consensus around climate change and global warming, the reduction in emissions of carbon dioxide (CO2) is a major challenge with which the automobile manufacturers are confronted, the standards being ever more demanding in this regard.
Aside from the continuous improvement in the efficiencies of conventional thermal engines, which is accompanied by a reduction in the emissions of CO2, electric vehicles (or EVs) and hybrid thermo-electric vehicles (or HEVs) are today considered as the most promising solution for reducing CO2 emissions.
Various technologies for the storage of electrical energy have been tested in recent years in order to meet the needs of EVs. It turns out today that the batteries using lithium-ion (Li-ion) cells are those that allow the best compromise to be obtained between power density, which favors the performance notably in terms of acceleration, and the energy density, which favors the autonomy.
Unfortunately, the power density and the energy density decrease throughout the lifetime of the battery, notably under the effect of variations in temperature. Thus, after a sufficiently long time of use, an EV may exhibit degraded performance characteristics in terms of autonomy and/or power. This degradation should be controlled in order to maintain sufficient levels of service and of safety.
In order to quantify this degradation, an indicator called “State of Health” (or SOH) has been defined, which is the ratio of the current capacity of a battery with respect to its initial capacity at the beginning of life. Estimating the SOH based on the estimation by impedance measurement of the internal resistance of the battery (or DCR for “Direct Current Resistance”) is known notably from the U.S. Pat. No. 6,653,817. Since the internal resistance of a battery characterizes the variation of the voltage U across the terminals of the battery for a certain variation in the intensity I of the current flowing through the battery, the idea of this patent is a precise control of the variation of the intensity I flowing through the battery and a measurement of the variation of the voltage U across the terminals of the battery. One major drawback of this solution is that, if the measurement of voltage is not precise, notably in the case of transient noise signals, the estimation of the resistance may be impacted and the estimation of the SOH may be inaccurate. This is one of the problems to which the present invention aims to provide a solution.
The aim of the invention is notably to solve the aforementioned drawbacks, notably to avoid the measurement problems, by linearizing the measurement of the internal resistance. For this purpose, the subject of the invention is a method for estimating the state of health of an electrochemical cell for storing electrical energy. It comprises a step for applying to the cell at least one current peak of intensity I1, the current peak flowing through the cell. It also comprises a step for measuring the variation, as a function of the time t that has passed after the application of the current peak, of the voltage U across the terminals of the cell. It also comprises a step for calculating at least one coefficient αI
In one embodiment, the coefficients αI
In another embodiment, tables or graphs of aging may be filled out beforehand. The method can then comprise a step for comparing the value currently calculated of αI
In one preferred embodiment, a plurality of current peaks of intensities (In)n≥2 can be applied to the cell (I1, I2, I3, I4, I5). The method can then comprise a step for calculating a coefficient β such that the function I→β×I is a linear approximation of the variation of ΔU/√{square root over (t)} as a function of I.
In another embodiment, the coefficient β may be calculated a first time at the beginning of life of the cell. The method may then comprise a step for calculating the ratio of the value currently calculated of β with respect to its value calculated at the beginning of life, where an increase in the coefficient β beyond a predetermined value can indicate an incapacity of the cell to deliver a current in its highest ranges of power.
In another preferred embodiment, tables or graphs of aging may be filled out beforehand. The method may then comprise a step for comparing the value currently calculated of β with values contained in a table or a graph of aging associating levels of aging with values of β, in such a manner as to deduce the level of aging of the cell.
In one preferred embodiment, the method may comprise a step for calculating a coefficient γ such that the function I→γ×I+OCV, where OCV is the open circuit voltage of the cell, is a linear approximation of the variation of U0,I as a function of I.
In one embodiment, the coefficient γ may be calculated a first time at the beginning of life of the cell. The method may then comprise a step for calculating the ratio of the value currently calculated of γ with respect to its value calculated at the beginning of life, where an increase in the coefficient γ beyond a predetermined value can indicate an incapacity of the cell to deliver a current in its highest ranges of power.
In one preferred embodiment, tables or graphs of aging may be filled out beforehand. The method may then comprise a step for comparing the value currently calculated of γ with values contained in a table or a graph of aging associating levels of aging with values of γ, in such a manner as to deduce the level of aging of the cell.
One of the main advantages of the present invention is also that it only requires the software updating of the current devices for estimation of the state of health of a battery.
Other features and advantages of the invention will become apparent with the aid of the description that follows presented with regard to the appended drawings which show:
The present invention will calculate various coefficients characteristic of the state of health of a Li-ion cell.
As illustrated in the example of
In the example in
For a given current I, the slope αI gives information on the SOHP of the cell, notably on its capacity to operate over long periods of time greater than 1 second at a given current.
For a given current I, the ordinate at the origin U0,I also gives information on the SOHP of the cell, in particular:
Optionally, it is possible to implement a strategy for diagnosing the state of health at several currents according to the present invention, as illustrated in
Indeed,
On the one hand,
The slope β reveals the sensitivity of the cell to the current over long time constants, in other words diffusion phenomena. The slope β indicates the capacity of the cell to operate at high currents: the higher the absolute value of the slope β, the more the cell is sensitive to the use of high currents.
On the other hand,
Since it corresponds to the internal resistance of the cell, the slope γ therefore also provides information on the SOHP of the cell: the steeper the slope γ, the more the SOHP of the cell is degraded. In a more precise manner than the ordinate at the origin U0,I as a function of the intensity I, the slope γ estimated using the U0,I values provides information on the capacity of the cell to operate over short times, in other words at high frequencies. It provides information on the resistance of the cell at high frequencies which, if it is high, may be explained by a problem of connection hardware or of significant aging of the cell.
In the latter case, the coefficients α1 and β should indicate aging. Hence, if the coefficients α1 and β are acceptable and if the coefficient γ is not, it may be deduced that the problem at high frequencies is due to a problem of connection hardware.
Once the coefficients α1, β, U0,I and γ have been calculated according to the present invention, they may be used in various ways.
As previously described, a first way is to use them for the purposes of diagnosing the cell, in order to notably estimate its capacity to operate at high power, in other words to estimate its SOHP, or even to diagnose a fault in connection hardware. For example, for α1, β and γ, a ratio may be calculated between the value calculated at the current time and the value initially calculated, namely αI,BOL, βBOL and γBOL respectively, where the abbreviation “BOL” denotes “Beginning Of Life”. The relative variation of the ratios α1/αI,BOL, β/βBOL et γ/γBOL over time may thus be observed: if a coefficient at a given moment is increasing too much with respect to its initial value, whereas the other coefficients show the expected variation over time, then the cell most probably has a connection hardware fault. It is also possible to observe ratios of the type γ/β or γ/αI. In the example illustrated in the figures, during the life of the cell, the ratio γ/β varies between 4.59 and 5.78. However, a connection hardware fault of 0.2 mΩ makes this variation go between 5.78 and 6.814, whereas a fault of 1 mΩ makes this variation go between 10.56 and 11.17. By making a prior estimation of these various values, it is possible to detect connection hardware problems at the beginning of life and during the life of the cell.
Another way of using them is to estimate the SOHE of the cell using tables or graphs of aging, such as the graphs illustrated in
Another way of using the coefficients αI, β, U0,I and γ calculated according to the present invention is to compare one cell with another in a module or a pack comprising several cells, or else in such a manner as to compare the variation over time of various types of cells in the case of cells based on different chemistries or not coming from the same supplier.
The invention described hereinabove has the further main advantage that, since it only requires a software updating of the current devices for estimating the state of health, its cost of implementation is very low.
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