A typical rechargeable lithium-ion battery includes a negative electrode and a positive electrode separated by an electrolyte. Lithium ions move from the negative electrode through the electrolyte to the positive electrode during discharging and from the positive electrode through the electrolyte to the negative electrode during charging.
Cyclic charging/discharging degrades the electrodes and, in turn, can reduce the capacity of the battery. The mechanical and/or electrochemical mechanisms of degradation are not well understood and, as a result, models that have been developed for the estimation of battery health are based primarily on short-term empirical testing that is particular to a specific battery system. Although useful in some aspects, short-term empirical testing may be inaccurate and insufficient for mathematically modeling slow electrochemical processes over much longer periods.
A method according to an example of the present disclosure involves controlling operation of a vehicle in response to an estimation of a capacity loss and capacity of a lithium-ion battery module of the vehicle. The estimation of the capacity loss is a function that includes a state-of-lithiation swing and fracture of solid-electrolyte interphase of an electrode of the lithium-ion battery module.
In a further example of any of the examples herein, the capacity loss is proportional to the square of the state-of-lithiation swing.
In a further example of any of the examples herein, the capacity loss is proportional to the product of a constant and the square of the state-of-lithiation swing.
In a further example of any of the examples herein, the function also includes a ratio, in a given voltage range, of an initial negative electrode capacity of the lithium-ion battery module to a cell capacity of the lithium-ion battery module.
In a further example of any of the examples herein, the function also includes a number of charge-discharge cycles of the lithium-ion battery module.
In a further example of any of the examples herein, the capacity is represented by Qn, and the function is:
A further example of any of the examples herein further includes storing the capacity in a memory module of the vehicle in place of a prior capacity of the lithium-ion battery module.
In a further example of any of the examples herein, the electrode is a negative electrode of the lithium-ion battery module.
In a further example of any of the examples herein, the electrode includes a graphite core surrounded by a shell of the solid-electrolyte interphase.
In a further example of any of the examples herein, the methodology can be implemented in a vehicle that includes a lithium-ion battery module and a controller controlling operation of the vehicle in response to estimation of a capacity loss and capacity of the lithium-ion battery module as a function that includes a state-of-lithiation swing and fracture of solid-electrolyte interphase of an electrode of the lithium-ion battery module.
The various features and advantages of the present disclosure will become apparent to those skilled in the art from the following detailed description. The drawings that accompany the detailed description can be briefly described as follows.
One challenge in using lithium-ion batteries in vehicles is management of battery health. The electrodes of a lithium-ion battery degrade and cause capacity fade over time. Poor understanding of battery health in a vehicle can result in mismanagement of vehicle functions that are related to battery health.
Chemical degradation of the electrodes in lithium-ion batteries can occur from instability of the battery electrolyte and can cause reactions that irreversibly consume lithium. The reactions form a solid-electrolyte interphase (“SEI”) on the electrodes. For example, in particulate graphite electrodes, the SEI forms as a shell around a graphite core. Although SEI formation reduces the amount of active lithium in the battery (and thus the capacity), a limited amount of SEI formation is desired to passivate further reactions with the electrolyte and stabilize the battery.
Diffusion of lithium in the electrodes upon charging and discharging can cause diffusion-induced stresses. Such stresses can cause mechanical degradation in the electrode material. The mechanism of diffusion-induced stresses at relatively high charging/discharging cycle rates in electrode materials, such as graphite, is one area of focus for modeling capacity fade and thus battery health. However, at lower cycle rates, fracture of the SEI can be a mechanism of capacity fade. As will be discussed in greater detail herein, lithiation swing in the SEI, and the resulting stresses in the SEI, can be used for the estimation of battery capacity loss and thus also for enhanced management of battery health in vehicles. Capacity loss can be used to estimate capacity.
The controller 32 may be in communication with the battery 22 to receive status information there from in connection with controlling the one or more operations in the vehicle 20 in response to the capacity or capacity loss of the battery 22. In the illustrated example, the controller 32 is also in communication with a memory storage module 34 and display 36. The controller 32 utilizes the memory storage module 36 for storing data, such as the estimated capacity or capacity loss of the battery 22, which may be in the form of a voltage or capacity profile. For example, upon estimation of the capacity loss, the controller can store the capacity loss in the memory storage module 36 in place of a prior capacity loss of the battery 22.
In response to the estimation of the capacity loss, the controller 32 can display information related to or based on the capacity or capacity loss. Such information may relate to the battery and can include, for example only, a health indication. Additionally or alternatively, the estimation of capacity can also be used in connection with the operational events of vehicle components that draw current from the battery 22, such that the controller 32 can maintain a current estimated remaining power based on the estimation of capacity after an event or events of known electrical consumption. Control schemes of the controller 32 can also include participation of the controller 32 in event decisions that are based on capacity or remaining power estimated from the capacity.
As shown in
The stresses in the shell 42 are proportional to a state of lithiation swing of the negative electrode 30. State of lithiation swing during charging or discharging is related to the state of charge swing of the battery 22 during operation. For relatively low charging currents, the stress and fracture tendency in the shell 42 is higher than the fracture tendency of the underlying core 40.
An estimation of the instant capacity loss of the battery 22 can be determined as a function that includes a state-of-lithiation swing on the SEI of the negative electrode 30. For example, in such an estimation it can be assumed that the negative electrode 30 includes a large number of the electrode particles 38. Under the operating conditions of the battery 22 all the freshly exposed surfaces of the graphite form SEI. For example, ethylene carbonate solvent can be reduced in the presence of lithiated carbon per the equation below.
The lithium guest species corresponds to [Li—S] and S is a vacant site within the host carbon. The lithium carbonate product leads to SEI formation, stabilization of the exposed electrode surface, and a loss of active lithium. The SEI may be a complex mixture of many solid phases.
In the following examples, the bulk active phase of the core 40 is referred to as the α phase (alpha phase) and the shell 42, or SEI layer, as SEI. The following definitions of symbols and parameters may be useful in understanding this disclosure:
List of Parameters
Using an analogy between thermal stress and diffusion-induced stress, the stress-strain relationships expressed in a spherical coordinate system for the radial and tangential components are:
where Young's modulus is Ei, Poisson's ratio is νi, the partial molar volume of the solute is Ωi for the respective α phase and SEI phase, molar concentration is C and the radial and tangential stresses are represented by σr and σθ. It is also assumed that the elastic properties of any of the phases do not vary with the lithium composition variation in it.
Due to the spherical symmetry, the radial and tangential strains, in the infinitesimal formulation of deformation, can be expressed as functions of radial displacement, u, as:
Since atomic diffusion in solids is a much slower process than elastic deformation, the mechanical equilibrium is established much faster than that of diffusion. The mechanical equilibrium is, therefore, treated as a static equilibrium problem.
In the absence of any body-force, the equation for static mechanical equilibrium in the bulk of a sphere is given by following equation,
Without considering the effects of surface energy and surface stresses, the normal stress at the free surface of the spherical particle is σr(R)=0. Since the normal component of stresses and displacements are continuous at the interface between the α phase and SEI layer, σr(riα)=σr(riSEI) and u(riα)=u(riSEI).
The solutions of this differential equation for the case with constant E, ν and Ω, are given by:
and the displacement u(r,t) is given by,
The constants I1 and I2 can be obtained from the appropriate boundary conditions for both the α phase and the SEI layer. Because stress and displacement are finite at r=0, for the α phase within 0≦r<ri,
Here, Cavgα(r)=(3/r3)∫0rC(r′)r′2dr′ is the average concentration in the α phase (0≦r≦ri).
Here, t is the thickness of the SEI layer. It is also assumed that t<<R and thus the higher order terms of (t/R) are neglected.
For the SEI layer in the region of ri≦r≦R, ΩSEI=0 i.e. there is no expansion in the SEI layer due to ionic conduction:
At any radial position, location, r=r1 (>ri),
σr(r1),σθ(r1)∝(Cavgα(ri)−cini_avg(ri)) (7)
Change in State of lithiation
hence σr(r1),σθ(r1)∝ΔSOL (9)
Here Cmaxα is the solute concentration when the active material is fully lithiated.
The term “state of charge swing” (ΔSOC) can be loosely used to indicate “change in state of lithiation (SOL)” of the negative electrode 30. In a full cell configuration, the “state of lithiation” of the negative electrode 30 is related to the state of charge of the cell and the capacity ratio of the positive electrode 28 to the negative electrode 30. State of lithiation of the negative electrode 30 in an aged cell would be less than that of a new cell even if the cell is charged to the same voltage limit.
Also assuming that constant current charging and discharging is equivalent to constant surface flux condition at the active material interface, the SEI acts as an ionic conductor and all the current carries through the SEI is due to migration of ions.
Fickian diffusion of a solute in active α-phase core, 0≦r<ri
where Cα(r,t) is the concentration of solute at a time t at a radial position r.
At the interface (r=ri) between the shell and the core, the flux is constant
where I is current density on the surface of the electrode, F is the Faraday Constant
For lithiation, it is assumed, initially, T=0, and both phases are equilibrated
Cα(r, 0)=Cini(r, 0) (10b)
The solution is well behaved at the center of the particle r=0
Such an equation system is solved by
where
and λn (n=1, 2, 3, . . . ) is a solution of tan(λn)=λn.
Analysis of Stresses
Combining equation set 5 and 6 with equation 10, stresses can be estimated in a core-shell configuration of an electrode particle where active electrode particle core is encapsulated by a SEI layer shell. The SEI is assumed to be ionic conductor and there is no concentration gradient in the SEI layer. It is also assumed the electrode particle is made up of 10 micron diameter spherical graphite particle, that the SEI thickness is 1% of the particle radius (t/R=0.01), and that the SEI includes lithium carbonate (Li2CO3) as its major element and is 50 nm thick. Stresses are transformed to dimensionless form as follows
Here, ‘i’ represents direction r, θ, or φ.
In
Strain Energy Calculations for SEI Cracking
The bulk strain energy per unit volume, or the bulk strain energy density, e(r), accumulated as a result of the elastic deformation for the isotropically deformed sphere is:
The total strain energy can be obtained by integrating the strain energy density over the entire volume. In a core-shell model, the total energy is the sum of strain energies in both the phases. The total strain energy of such an electrode particle in dimensionless form is
If the SEI cracks, only a part of this total strain energy will be released. Cracking of SEI will result in only a partial stress release in the core region. In other words, if the SEI cracks, the active particle core will still be in stressed state due to the concentration gradients of the solute present. When SEI cracks, the stresses developed in the core as an effect of SEI confinement will be released along with the stresses developed in the SEI region. Hence the final stress state of particle just after cracking of SEI will be same as if there was no SEI present. The stain energy released due to SEI cracking would be the difference of total strain energy and the strain energy in the particle after SEI cracks. The excess strain energy (Πexcess) is the difference of strain energy with SEI and strain energy of a particle after SEI cracks. The strain energy of the particle with a cracked SEI (Πcracked_SEI) can be calculated with the assumption that no SEI present, i.e., by assuming thickness t=0 in equation set 5.
Πexcess=Πtotal−Πcracked_SEI (14)
Once the SEI cracks, partial stresses in SEI layer are relieved. Though, there is finite strain energy (Πcracked_SEI) in the particle after SEI cracking, low magnitude of stresses in SEI layer avoids further cracking of SEI.
Πexcess∝(ΔSOL)2 (15)
The strain energy released is utilized for new surface formation.
Πexcess=2γ(Area of cracked SEI surface)=2γ×t×lcrack (16)
where A is the new area created, t is the thickness of SEI and lcrack is the length of crack in SEI.
It is assumed that the SEI thickness t does not change significantly once initial SEI is formed, the length of crack is proportional to the energy released.
lcrack∝Πexcess i.e. lcrack∝(ΔSOL)2 (17)
Cracked SEI exposes new electrode particle 38 surface to the electrolyte and new SEI is formed in the exposed area (see
Electrode area exposed to the electrolyte on SEI cracking=Aelectrodenew=lcrack×w (18)
If the distance between the cracked surfaced of SEI is approximately constant, i.e., width ‘w’ is constant
Aelectrodenew∝lcrack Aelectrodenew∝(ΔSOL)2
Qloss∝(ΔSOL)2
Qloss=a′(ΔSOL)2 (19)
Where a′ (<1) is a constant which includes rate of reaction (thus temperature), number of lithium molecules related to rate of reaction, and initial ratio of cell capacity to anode capacity, the mechanical properties of SEI material.
Cycle Life Predictions
If a battery is continuously cycled between two voltage limits, capacity of the battery fades over life. Capacity fade also implies that there is less lithium available to lithiate the negative electrode 30 on charging of the battery. Hence, the battery cycles between two voltages limits, and the state of lithiation of a graphite particle at the higher voltage limits decreases. The SOLn is defined as a possible state of lithiation of the negative electrode 30 based on the available active lithium inventory after “n” cycles. Less lithiation of graphite leads to less expansion of the electrode particles 38 over cycling. If RAC is the initial ratio of anode capacity to initial cell capacity (Q0) between given voltage limits, the initial state of lithiation (SOL0) can be written as
where, SOLmin is the lithiation state of the electrode at the end charge of first cycle. Since there is no loss of electrode material during slow cycling, state of lithiation at the end of lithiation would remain constant SOLn_min=SOLmin.
The state of lithiation (SOL0) of the negative electrode 30 is when the cell 24 is charged to upper voltage limit before any capacity fade. The possible state of lithiation of the negative electrode after “n” cycles is (SOLn)
A mathematical formulation of capacity loss can be estimated for a full cell continuously cycled between two voltage limits;
Capacity loss on 1st cycle (after formation)
Q1=Q0−Qloss1 (23)
SOL1=SOL0−a(ΔSOL02)=SOLmin+ΔSOL0−a(ΔSOL0)2
SOL1=SOLmin+(1−aΔSOL0)ΔSOL0 (24)
ΔSOL1=(1−aΔSOL0)ΔSOL0 (24a)
here Qloss1 is the capacity lost in the 1st cycle, SOL1 is the state of lithiation of the negative electrode 30 after 1st cycle
Similarly, the state of lithiation after second cycle,
SOL2=SOL1−a(ΔSOL1)2=SOLmin+ΔSOL1−a(ΔSOL1)2 (25)
ΔSOL2=(1−aΔSOL1)ΔSOL1=(1−a((1−aΔSOL0)ΔSOL0))(1−aΔSOL0)ΔSOL0=ΔSOL0−2a(ΔSOL0)2+2a2(ΔSOL0)3−a3(ΔSOL0)4 (26)
Since ΔSOL0<1 and a<1 the higher order 0 (aΔSOL0)>7 can be neglected.
A generalized equation for state of lithiation after nth cycle (n≧3) can be represented as
ΔSOLn=ΔSOL0−(n−1)a(ΔSOL0)2+(n−1)(n−2)a2(ΔSOL0)3−Σi=3n(i−2)(3i−8)a3(ΔSOL0)4 (27)
Qn=RAC×SOLn=RAC×(SOLmin+ΔSOLn)=RAC×(SOLmin+ΔSOL0−(n−1)a(ΔSOL0)2+(n−1)(n−2)a2(ΔSOL0)3−Σi=3n(i−2)(3i−8)a3(ΔSOL0)4) (28)
where Qn is the cell capacity after n cycles with additional calendar aging.
If discharging the battery completely to minimum recommended battery voltage (e.g., 2.0V), then SOLmin=0, hence capacity after n cycles is
Qn=RAC×(ΔSOL0−(n−1)a(ΔSOL0)2+(n−1)(n−2)a2(ΔSOL0)3−Σi=3n(i−2)(3i−8)a3(ΔSOL0)4) (29)
Thus battery capacity on cycling can be described with “state of lithiation swing” of the negative electrode 30 and only one constant, “a.” Further, capacity fade is also a function of initial ratio of theoretical anode capacity to the cell capacity (at 100% SOC), i.e., RAC. The value of “a” is a function on the material properties of SEI layer, material properties of electrode, rate of lithiation, i.e., applied current density, radius of particles, diffusion coefficient of the electrodes, temperature of operation, etc. At high charge discharge rate or at low operating temperatures other mechanisms such as electrode particle cracking, binder degradation might have additional effect to the described mechanism of degradation.
Cells were cycled at C/2 charge discharge rate with voltage limits of 4.2V-2.0V. The theoretical capacity ratio of anode to the cell in this voltage range RAC is 1.45. A cycling rate of C/2 was chosen as it is relatively low cycling rate and any degradation due to particle cracking and material loss can be minimized. After every 40 cycles at C/2 rate, couple of C/10 cycles within the same voltage limits were used to measure the cell capacity avoiding the effects of impedance rise over cycling.
The example methods herein for the estimation of battery capacity after a number of charging/discharging cycles can be used to enhance controls that are related to battery health and remaining instantaneous battery life. The disclosed methods provide an estimation of capacity as a function that includes a state-of-lithiation swing with respect to a solid-electrolyte interphase of an electrode of the lithium-ion battery module. The estimation is relatively simple in comparison to other models that rely mostly on experimental data. For example, the estimation can be made based on limited information, including the ratio of the negative electrode capacity to the cell capacity in a given voltage range, data from only a few tens of slow charge/discharge cycles for a given battery chemistry in a known voltage range, and the state of charge swing during battery charge in operation. This information can be obtained from the battery supplier, measured with a reference electrode, and obtained using “am-hour” integration of charging current during usage with vehicle on-board data or test data. Thus, once in a vehicle, the methodology herein can provide estimations of capacity using only on-board information, without the need for external data input or additional external data collection.
Although a combination of features is shown in the illustrated examples, not all of them need to be combined to realize the benefits of various embodiments of this disclosure. In other words, a system designed according to an embodiment of this disclosure will not necessarily include all of the features shown in any one of the Figures or all of the portions schematically shown in the Figures. Moreover, selected features of one example embodiment may be combined with selected features of other example embodiments.
The preceding description is exemplary rather than limiting in nature. Variations and modifications to the disclosed examples may become apparent to those skilled in the art that do not necessarily depart from the essence of this disclosure. The scope of legal protection given to this disclosure can only be determined by studying the following claims.
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Number | Date | Country | |
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20160107590 A1 | Apr 2016 | US |