Entropy-Based Voltage Fault Diagnosis of Battery Systems for Electric Vehicles
Abstract
:1. Introduction
2. Data Acquisition
3. Entropy Method
- (1)
- Monotonicity, that is, the event brings less entropy, with its possibility raising. From the point of view of information theory, there is no uncertainty about certain event;
- (2)
- Non-negativity, that is, entropy can’t be negative;
- (3)
- Summative, that is, the total uncertainty measurement of the multiple simultaneous random events can be expressed as the sum of the each.
3.1. Entropy Weight Method
3.2. Fault Diagnosis Model
4. Discussion
4.1. Data Distribution
4.2. Validation Verification
4.3. Comparison with Traditional Methods
5. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
Abbreviations
Nomenclature | |
Abbreviation | Description |
EVs | Electric vehicles |
HEVs | Hybrid electric vehicles |
PHEVs | Plug-in hybrid electric vehicles |
BEVs | Battery electric vehicles |
NMMC | National Monitoring and Management Center |
OSMC-EVs | Operation Service and Management Center Electric Vehicles |
SOH | State of health |
SOC | State-of-charge |
FDI | Fault detection and isolation |
BMS | Battery management systems |
HIF | H infinity filters |
SampEn | Sample Entropy |
AEKF | Adaptive extended Kalman filter |
LOs | Learning observers |
ESC | External short circuit |
SOC | State-of-charge |
CV | Coefficient of variation |
UFK | Unscented Kalman filter |
DPCA | Dynamic principal component analysis |
SVM | Support vector machine |
PSO | Particle swarm optimization |
DE | Differential evolution |
SVM | Support vector machine |
LMO | LiMn2O4 |
DC | Direct Current |
Symbol | Description |
m | mode |
w | The contribution rate of the evaluation system. |
p | Probability |
H/h | Shannon entropy value |
n | The total number of cells |
s | Comprehensive score |
q | The 95th percentile |
σ | Standard deviation |
Subscript | Description |
i | The cell number |
j | The index number |
n | The total number of cell |
t | The total number of index |
K | The interval number |
Superscript | Description |
j | The index number |
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Data Type | Data Item | Specific Items |
---|---|---|
Static data | Registration information | registration date, license plate, vehicle power type, the total number of power battery packs, vehicle terminal number, and so on |
Dynamic real-time data | Cell voltage data | cell voltage, total voltage |
Cell temperature data | temperature probe number, cell temperature | |
Vehicle state data | vehicle speed, mileage, gears, running mode, DC-DC state, SOC, and so on | |
Electric part data | driving motor number, driving motor state, driving motor serial number, motor voltage, motor temperature, and so on | |
Extremum data | maximum cell voltage, minimum cell voltage, maximum temperature probe serial number, maximum temperature, minimum temperature probe serial number,minimum temperature, and so on |
Cell Number | |
---|---|
47 | 0.00030 |
56 | 0.00022 |
37 | 0.00022 |
52 | 0.00017 |
18 | 0.00016 |
Date | Cell Number | |
---|---|---|
30 December 2016 | 47 | 0.00030 |
12 October 2016 | 47 | 0.00007 |
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Liu, P.; Sun, Z.; Wang, Z.; Zhang, J. Entropy-Based Voltage Fault Diagnosis of Battery Systems for Electric Vehicles. Energies 2018, 11, 136. https://doi.org/10.3390/en11010136
Liu P, Sun Z, Wang Z, Zhang J. Entropy-Based Voltage Fault Diagnosis of Battery Systems for Electric Vehicles. Energies. 2018; 11(1):136. https://doi.org/10.3390/en11010136
Chicago/Turabian StyleLiu, Peng, Zhenyu Sun, Zhenpo Wang, and Jin Zhang. 2018. "Entropy-Based Voltage Fault Diagnosis of Battery Systems for Electric Vehicles" Energies 11, no. 1: 136. https://doi.org/10.3390/en11010136
APA StyleLiu, P., Sun, Z., Wang, Z., & Zhang, J. (2018). Entropy-Based Voltage Fault Diagnosis of Battery Systems for Electric Vehicles. Energies, 11(1), 136. https://doi.org/10.3390/en11010136