Engineers Garage

  • Electronic Projects & Tutorials
    • Electronic Projects
      • Arduino Projects
      • AVR
      • Raspberry pi
      • ESP8266
      • BeagleBone
      • 8051 Microcontroller
      • ARM
      • PIC Microcontroller
      • STM32
    • Tutorials
      • Audio Electronics
      • Battery Management
      • Brainwave
      • Electric Vehicles
      • EMI/EMC/RFI
      • Hardware Filters
      • IoT tutorials
      • Power Tutorials
      • Python
      • Sensors
      • USB
      • VHDL
    • Circuit Design
    • Project Videos
    • Components
  • Articles
    • Tech Articles
    • Insight
    • Invention Stories
    • How to
    • What Is
  • News
    • Electronic Product News
    • Business News
    • Company/Start-up News
    • DIY Reviews
    • Guest Post
  • Forums
    • EDABoard.com
    • Electro-Tech-Online
    • EG Forum Archive
  • DigiKey Store
    • Cables, Wires
    • Connectors, Interconnect
    • Discrete
    • Electromechanical
    • Embedded Computers
    • Enclosures, Hardware, Office
    • Integrated Circuits (ICs)
    • Isolators
    • LED/Optoelectronics
    • Passive
    • Power, Circuit Protection
    • Programmers
    • RF, Wireless
    • Semiconductors
    • Sensors, Transducers
    • Test Products
    • Tools
  • Learn
    • eBooks/Tech Tips
    • Design Guides
    • Learning Center
    • Tech Toolboxes
    • Webinars & Digital Events
  • Resources
    • Digital Issues
    • EE Training Days
    • LEAP Awards
    • Podcasts
    • Webinars / Digital Events
    • White Papers
    • Engineering Diversity & Inclusion
    • DesignFast
  • Guest Post Guidelines
  • Advertise
  • Subscribe

Understanding battery management systems

By Eileen Singh February 27, 2020

Electric vehicles (EVs) have many benefits over internal combustion engine vehicles, including superior performance, a high energy density, less pollution, excellent acceleration, and more. But EVs are not perfect. One major drawback is the need for a costly battery system with specific maintenance requirements, including a long charge time.

One of the key components of EVs is the battery management system (BMS). To meet increased power and voltage requirements, EVs use battery packs with hundreds of battery cells connected in a series or parallel arrangement — this forms a complex battery system.

Any less than ideal battery conditions — such as over-current, over-voltage, over-charging, or over-discharging — leads to damage and aging. In the worst-case scenarios, there’s the risk of fire and explosion. For these reasons, a BMS is needed to provide a “safety catch” to ensure proper battery performance.

However, the BMS features (such as current and voltage protection during the charging and discharging processes) are reliant on the battery operation conditions (the load, life, temperature, etc.). This is partially done through battery modeling, which offers a mathematical model of a virtual cell that verifies the BMS will work appropriately for the corresponding battery pack.

Battery modeling includes the battery:

  • State monitoring
  • Design of the real-time controller
  • Fault analysis
  • Thermal management
  • Overall behavior interpretation

Monitoring
Battery state monitoring is necessary to optimize a battery’s safety and performance, as well as its lifetime forecasts and aging diagnostics. Fading batteries accrue a robust electrolyte interface at the negative electrode. Cell design, battery performance, and environmental circumstances are among the many factors affecting a battery’s lifespan.

State-of-charge (SoC) battery evaluation provides information about the battery’s remaining capacity as a percentage amount of its total capacity. SoC estimation has two generally used approaches: direct estimation and model-based evaluation.

Direct estimation is based on the primary measurement of electrical battery parameters (voltage and current). The two computation methods used are Ampere-hour (Ah) and open-circuit voltage (OCV)- based systems. However, planning the initial SoC and measurement accuracy can be a challenging process when adjusting the Ah method for the SOC estimation algorithm.

This approach is highly reliant on the measured current, where errors accumulated over time significantly influences the accuracy of the SoC estimation. It’s also challenging to determine the accurate initial SoC in real-world purposes (e.g., in the case where a battery is charged only within an insufficient range, say from 10 to 90 percent).

On the other hand, the OCV-based method produces high estimation accuracy and has been accepted as an efficient and popular method for SoC calculation. There’s a non-linear relationship between a battery’s SoC and OCV. The procedure requires sufficient battery resting (the battery requires to be disconnected from chargers and loads). The main weakness of this method is the quiet time. It usually takes a long time to reach stability after disconnecting the battery from its charge (it can take more than two hours under low-temperature circumstances).

The OCV-SoC relationship also depends on the battery’s lifetime and temperature.

Temperature
Battery temperature is an imperative factor that affects battery performance, lifespan, performance, and safety. Thermal sensors are suitable for measuring a battery’s exterior temperature.

However, this information alone is not adequate because the internal temperature of the battery is a critical parameter for proper battery management. High internal temperature stimulates the battery’s aging and causes safety concerns (e.g., fire). The internal battery temperature is usually significantly altered than the surface temperature (up to 12° C in high-powered applications).

Producing a proper approach for internal battery temperature evaluation prevents accelerated aging of batteries and supports the BMS algorithm in optimizing battery energy discharging.

Classifications
In general, battery models can be classified into three main types:

1. Electric
2. Thermal
3. Coupled models (other models, such as kinetic models, are rarely used in BMS design).

The battery-electric model involves the electrochemical model, reduced-order model, commensurate circuit model, and the data-driven model. The electrochemical model presents information about battery electrochemical behaviors. This model can be extremely  precise but requires an advanced simulation and computation effort. As a result, it’s challenging to fully employ this model in a real-time application.

Consequently, the reduced-order electric model is produced as a simplified physics-based electrochemical model to determine the Li-ion battery state of charge (SoC). Uncomplicated reduced-order electric models provide less insight, but are convenient for real-time battery applications.

The key is to monitor battery temperature as a part of a successful BMS. A battery’s performance can deteriorate if operated in higher or lower temperatures. Separate cooling systems are typically used to maintain proper battery temperature. For instance, Tesla uses a patented battery pack configuration with a plate-based cooling system to dissipate the heat and monitor battery temperature.

The battery coupled electro-thermal model apprehends the battery’s electric (current, voltage, SoC) and thermal (surface and internal temperature) operations — simultaneously. Several coupled electro-thermal models have now been developed.

For example, a 3D electro-thermal model measures battery SoC and calculates heat generation and distribution under both continuous and dynamic currents. This model contains a 2D potential delivery model and a 3D temperature distribution model. Batteries have validated a reduced low-temperature electro-thermal model with three cathode materials. This model is ideal for developing fast heating, and optimal charging requests under low-temperature conditions.

You may also like:


  • What are the top technologies enabling M2M in 2023?

  • What is LoRa and LoRaWAN?

  • How does LoRa modulation enable long-range communication?

  • What battery chemistries are used in electric vehicles?

  • What are the different types of EV charging connectors?

  • What types of motors are used in electric vehicles?

Filed Under: Applications, Automotive, Battery Management, Blog entry, Electric Vehicles, Tech Articles, Tutorials
Tagged With: pic
 

Next Article

← Previous Article
Next Article →

Questions related to this article?
👉Ask and discuss on EDAboard.com and Electro-Tech-Online.com forums.



Tell Us What You Think!! Cancel reply

You must be logged in to post a comment.

EE TECH TOOLBOX

“ee
Tech Toolbox: Internet of Things
Explore practical strategies for minimizing attack surfaces, managing memory efficiently, and securing firmware. Download now to ensure your IoT implementations remain secure, efficient, and future-ready.

EE Learning Center

EE Learning Center
“engineers
EXPAND YOUR KNOWLEDGE AND STAY CONNECTED
Get the latest info on technologies, tools and strategies for EE professionals.

HAVE A QUESTION?

Have a technical question about an article or other engineering questions? Check out our engineering forums EDABoard.com and Electro-Tech-Online.com where you can get those questions asked and answered by your peers!


RSS EDABOARD.com Discussions

  • Reducing "shoot-through" in offline Full Bridge SMPS?
  • High Side current sensing
  • How to simulate power electronics converter in PSpice?
  • Voltage mode pushpull is a nonsense SMPS?
  • Layout IRN reduction in Comparator

RSS Electro-Tech-Online.com Discussions

  • Back to the old BASIC days
  • Parts required for a personal project
  • PIC KIT 3 not able to program dsPIC
  • Failure of polypropylene motor-run capacitors
  • Siemens large industrial PLC parts

Featured – RPi Python Programming (27 Part)

  • RPi Python Programming 21: The SIM900A AT commands
  • RPi Python Programming 22: Calls & SMS using a SIM900A GSM-GPRS modem
  • RPi Python Programming 23: Interfacing a NEO-6MV2 GPS module with Raspberry Pi
  • RPi Python Programming 24: I2C explained
  • RPi Python Programming 25 – Synchronous serial communication in Raspberry Pi using I2C protocol
  • RPi Python Programming 26 – Interfacing ADXL345 accelerometer sensor with Raspberry Pi

Recent Articles

  • What is AWS IoT Core and when should you use it?
  • AC-DC power supply extends voltage range to 800 V DC
  • Infineon’s inductive sensor integrates coil system driver, signal conditioning circuits and DSP
  • Arm Cortex-M23 MCU delivers 87.5 µA/MHz active mode
  • STMicroelectronics releases automotive amplifiers with in-play open-load detection

EE ENGINEERING TRAINING DAYS

engineering

Submit a Guest Post

submit a guest post
Engineers Garage
  • Analog IC TIps
  • Connector Tips
  • Battery Power Tips
  • DesignFast
  • EDABoard Forums
  • EE World Online
  • Electro-Tech-Online Forums
  • EV Engineering
  • Microcontroller Tips
  • Power Electronic Tips
  • Sensor Tips
  • Test and Measurement Tips
  • 5G Technology World
  • Subscribe to our newsletter
  • About Us
  • Contact Us
  • Advertise

Copyright © 2025 WTWH Media LLC. All Rights Reserved. The material on this site may not be reproduced, distributed, transmitted, cached or otherwise used, except with the prior written permission of WTWH Media
Privacy Policy

Search Engineers Garage

  • Electronic Projects & Tutorials
    • Electronic Projects
      • Arduino Projects
      • AVR
      • Raspberry pi
      • ESP8266
      • BeagleBone
      • 8051 Microcontroller
      • ARM
      • PIC Microcontroller
      • STM32
    • Tutorials
      • Audio Electronics
      • Battery Management
      • Brainwave
      • Electric Vehicles
      • EMI/EMC/RFI
      • Hardware Filters
      • IoT tutorials
      • Power Tutorials
      • Python
      • Sensors
      • USB
      • VHDL
    • Circuit Design
    • Project Videos
    • Components
  • Articles
    • Tech Articles
    • Insight
    • Invention Stories
    • How to
    • What Is
  • News
    • Electronic Product News
    • Business News
    • Company/Start-up News
    • DIY Reviews
    • Guest Post
  • Forums
    • EDABoard.com
    • Electro-Tech-Online
    • EG Forum Archive
  • DigiKey Store
    • Cables, Wires
    • Connectors, Interconnect
    • Discrete
    • Electromechanical
    • Embedded Computers
    • Enclosures, Hardware, Office
    • Integrated Circuits (ICs)
    • Isolators
    • LED/Optoelectronics
    • Passive
    • Power, Circuit Protection
    • Programmers
    • RF, Wireless
    • Semiconductors
    • Sensors, Transducers
    • Test Products
    • Tools
  • Learn
    • eBooks/Tech Tips
    • Design Guides
    • Learning Center
    • Tech Toolboxes
    • Webinars & Digital Events
  • Resources
    • Digital Issues
    • EE Training Days
    • LEAP Awards
    • Podcasts
    • Webinars / Digital Events
    • White Papers
    • Engineering Diversity & Inclusion
    • DesignFast
  • Guest Post Guidelines
  • Advertise
  • Subscribe