A Multiphysics System-to-Cell Framework to Assess the Impact of Operating Conditions of Standalone PV Systems on Lithium-Ion Battery Lifetime
Abstract
:1. Introduction
- (i)
- coupling Li-ion battery thermo-electrochemical and aging models;
- (ii)
- improving the state-of-the-art Li-ion aging model particularly developed for PV-battery system applications;
- (iii)
- performing the Li-ion aging model on a high temporal resolution;
- (iv)
- investigating the possible impacts of system-level induced charge strategies and discharge stresses on Li-ion battery cell lifetime;
- (v)
- application of the multiphysics model as a decision making framework to assess the influence of operating conditions of standalone PV systems on battery lifetime.
2. System Description
3. Materials and Methods
3.1. Electrochemical Model
3.2. Aging Model
3.3. Thermal Model
4. Multiphysics Solution Procedure
5. Results and Discussion
5.1. Model Verification
5.2. Case Studies
5.2.1. Mahabad (Low Solar Potential)
Residential House Electricity Load
Greenhouse Lighting Load
5.2.2. Yazd (High Solar Potential)
Residential House Electricity Load
6. Concluding Remarks
Author Contributions
Funding
Conflicts of Interest
Nomenclature
as | Active surface area per electrode unit volume, m2 m−3 |
A | Electrode plate area, m2 |
c | Concentration of Li in a phase, mol m−3 |
cs | Surface concentration of lithium in the solid phase, mol m−3 |
D | Diffusion coefficient, m2 s−1 |
Ea | Activation energy, J mol−1 |
F | Faraday’s constant, 96,487 C mol−1 |
I | Discharge current, A (I > 0 discharge; I < 0 charge) |
i0 | Exchange current density, A m−2 |
jl | Volumetric intercalation current density, A m−3 |
jLi | Total volumetric current density, A m−3 |
ls | Diffusion length ls = Rs/5 for spherical particles, m |
M | Molecular weight, kg mol−1 |
Q | Capacity (Ah) |
R | Universal gas constant, 8.314 J mol−1K−1 |
Rc | Contact resistance, Ωm2 |
Rf | Film resistance, Ωm2 |
Rs | Radius of active material particles, m |
SOC | State of charge |
T | Absolute temperature, K |
Tref | Reference temperature, 298 K |
t | Time, hours |
t+ | Transference number |
U | Open circuit or equilibrium potential, V |
V | Voltage, V |
x | Negative electrode solid-phase stoichiometry (anode lithiation state) |
y | Positive electrode solid-phase stoichiometry (cathode lithiation state) |
z | Spatial coordinate, m |
Greek symbols | |
Transfer coefficient for an electrode reaction | |
Thickness, m | |
Time interval, hours | |
Time, s | |
Volume fraction of a phase | |
Overpotential of an electrode reaction, V | |
Conductivity, S m−1 | |
ξ | |
ρ | Density, kg m−3 |
Phase potential, V | |
Transport parameters | |
Subscript | |
e | Electrolyte phase |
f | Film |
filler | Filler |
max | Maximum value |
n | Negative electrode |
p | Positive electrode |
r | Region (negative electrode (n), separator (sep) or positive electrode (p)) |
s | Solid phase |
s/e | Solid/electrolyte |
SEI | Solid electrolyte interphase |
sep | Separator |
0% | Corresponds to fully discharged battery |
100% | Corresponds to fully charged battery |
Superscript | |
avg | Average |
eff | Effective |
Li | Lithium species |
ref | Reference condition |
s | Side reaction |
0 | Initial value |
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Author | Aging Model Type | Model Application | Description |
---|---|---|---|
Wang and Srinivasan [19] | Computational battery dynamics (CBD) | Electric vehicles (EVs) and hybrid electric vehicles (HEVs) | Coupling simulation of the thermal and electrochemical behavior of cells |
Barré et al. [20] | Detailed electrochemical approach to statistical methods based on data | Automotive applications | Renewing a summary of techniques, models, and algorithms used for Li-ion battery aging estimation (SOH, RUL) |
Randall et al. [21] | Physics-based PDE model | Battery management systems (BMS) | Developing a comprehensive cell degradation model by deriving a model of the growth process of the solid-electrolyte interphase (SEI) layer |
Tanim et al. [22] | Nonlinear, electrolyte-enhanced, single particle model (NESPM) | Hybrid Electric Vehicle (HEV) | Deriving an electrolyte-enhanced, single particle model (NESPM) that includes aging caused by solid electrolyte interphase layer growth |
Prada et al. [23] | Simplified electrochemical and thermal model | Battery management systems (BMS) | Integrating the main design parameters of Li-ion and its partial differential equations mathematical structure and comprehensive aging investigations |
Ashwin et al. [24] | Pseudo two-dimensional (P2D) electrochemical lithium-ion battery model | Hybrid electric vehicles (HEV), plug-in electric vehicles (PEV) | Analyzing the capacity fade under cyclic charge/discharge conditions |
Weißhar and Bessler [25] | Multiscale multiphysics model of a Li-ion battery | Stationary photovoltaic battery system | Dynamically coupling a system-level model consisting of photovoltaic (PV), inverter, load, grid interaction, and energy management system, fed with historic weather data |
Redondo-Iglesias et al. [26] | Battery calendar ageing based on an Eyring acceleration model | electric vehicles (EV) and hybrid electric vehicles (HEV) | Taking into account the SOCdrift during calendar aging tests |
Leng et al. [27] | Electrochemical based electrical (ECBE) model | battery-powered hybrid/electric vehicles (HEV/EV) | Developing a Li-ion battery model link the model parameters to specific aging mechanisms |
Berrueta et al. [28] | Physical-based electrical model of a lithium-ion battery | E-mobility and renewable energy-based systems | Proposing an equivalent circuit model to keep a straight correlation between its parameters and the electrochemical battery principles |
Yang et al. [29] | Physics-based Li-ion battery (LIB) aging model | Electric vehicles (EVs) | Accounting for both lithium plating and solid electrolyte interphase (SEI) growth |
Yi et al. [30] | Physical-based model of a lithium-ion battery | Hybrid electric vehicles (HEV) | Reporting a two-dimensional modeling to predict the aging effect on the variation of the electrical and thermal behaviors of a lithium-ion battery |
Mu et al. [31] | Fractional order impedance model | Electric vehicles (EVs) | Improving the state of charge estimation accuracy |
Bottiger et al. [32] | Equivalent circuit based Li-ion battery model | General | Simulation model for the static and dynamic behavior of lithium-ion battery systems |
Ghalkhani et al. [33] | Three-dimensional layer structure of a pouch-type cell | Electric vehicles (EVs) | Investigating the distribution of temperature and current density across the pouch type lithium-ion battery |
Cui et al. [34] | Generic equivalent circuit model (ECM) | Electric vehicles (EVs) | Analyzing the reason for the EOL threshold of a LIB with shallow depth of discharge |
Chu et al. [35] | Control-oriented electrochemical model | Electric vehicles (EVs) | Proposing a novel, non-destructive model-based fast charging algorithm |
Bahiraei et al. [36] | Electrochemical-thermal model coupled to conjugate heat transfer and fluid dynamics | Hybrid electric and full electric vehicles (HEV and EV) | Investigating the effects of various operating and design parameters on the thermal performance of a battery module |
Explanation | Formulation | Equation Number | Ref. |
---|---|---|---|
Total local volumetric current density of the anode | (10) | [44] | |
Parasitic reaction’s current density | (11) | [21] | |
Capacity loss | (12) | [22] | |
Impedance rise | (13) | [22] | |
Electrochemical-aging voltage | (14) | This work | |
State of charge | (15) | [23] |
Explanation | Formulation | Equation Number | Ref. |
---|---|---|---|
Arrhenius’s law | (16) | [22] | |
Temperature effect on open circuit voltage | (17) | [48] | |
dU/dT | (18) | [49] | |
Thermo- electrochemical-aging voltage | (19) | This work |
Parameter | Value |
---|---|
PV panels in parallel | 22 |
PV panels in series | 4 |
PV nominal power (W) | 120 |
Parallel connected battery cells | 1352 |
Serially connected battery cells | 16 |
Cell initial energy (Wh) | 6.9 |
Design Parameter | Value |
---|---|
PV panels in parallel | 24 |
PV panels in series | 4 |
PV nominal power (W) | 120 |
Parallel connected battery cells | 1354 |
Serially connected battery cells | 16 |
Cell initial energy (Wh) | 6.9 |
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Golzar, F.; Astaneh, M.; Ghorbanzadeh, M. A Multiphysics System-to-Cell Framework to Assess the Impact of Operating Conditions of Standalone PV Systems on Lithium-Ion Battery Lifetime. Electronics 2021, 10, 2582. https://doi.org/10.3390/electronics10212582
Golzar F, Astaneh M, Ghorbanzadeh M. A Multiphysics System-to-Cell Framework to Assess the Impact of Operating Conditions of Standalone PV Systems on Lithium-Ion Battery Lifetime. Electronics. 2021; 10(21):2582. https://doi.org/10.3390/electronics10212582
Chicago/Turabian StyleGolzar, Farzin, Majid Astaneh, and Milad Ghorbanzadeh. 2021. "A Multiphysics System-to-Cell Framework to Assess the Impact of Operating Conditions of Standalone PV Systems on Lithium-Ion Battery Lifetime" Electronics 10, no. 21: 2582. https://doi.org/10.3390/electronics10212582
APA StyleGolzar, F., Astaneh, M., & Ghorbanzadeh, M. (2021). A Multiphysics System-to-Cell Framework to Assess the Impact of Operating Conditions of Standalone PV Systems on Lithium-Ion Battery Lifetime. Electronics, 10(21), 2582. https://doi.org/10.3390/electronics10212582