8,574 research outputs found
Real-time state of charge estimation of electrochemical model for lithium-ion battery
This paper proposes the real-time Kalman filter based observer for Lithium-ion concentration estimation for the electrochemical battery model. Since the computation limitation of real-time battery management system (BMS) micro-processor, the battery model which is utilized in observer has been further simplified. In this paper, the Kalman filter based observer is applied on a reduced order model of single particle model to reduce computational burden for real-time applications. Both solid phase surface lithium concentration and battery state of charge (SoC) can be estimated with real-time capability. Software simulation results and the availability comparison of observers in different Hardware-in- the-loop simulation setups demonstrate the performance of the proposed method in state estimation and real-time application
Low-cost programmable battery dischargers and application in battery model identification
This paper describes a study where a low-cost programmable battery discharger was built from basic electronic components, the popular MATLAB programming environment, and an low-cost Arduino microcontroller board. After its components and their function are explained in detail, a case study is performed to evaluate the discharger's performance. The setup is principally suitable for any type of battery cell or small packs. Here a 7.2 V NiMH battery pack including six cells is used. Consecutive discharge current pulses are applied and the terminal voltage is measured as the output. With the measured data, battery model identification is performed using a simple equivalent circuit model containing the open circuit voltage and the internal resistance. The identification results are then tested by repeating similar tests. Consistent results demonstrate accuracy of the identified battery parameters, which also confirms the quality of the measurement. Furthermore, it is demonstrated that the identification method is fast enough to be used in real-time applications
Recent Advances in Model-Based Fault Diagnosis for Lithium-Ion Batteries: A Comprehensive Review
Lithium-ion batteries (LIBs) have found wide applications in a variety of
fields such as electrified transportation, stationary storage and portable
electronics devices. A battery management system (BMS) is critical to ensure
the reliability, efficiency and longevity of LIBs. Recent research has
witnessed the emergence of model-based fault diagnosis methods in advanced
BMSs. This paper provides a comprehensive review on the model-based fault
diagnosis methods for LIBs. First, the widely explored battery models in the
existing literature are classified into physics-based electrochemical models
and electrical equivalent circuit models. Second, a general state-space
representation that describes electrical dynamics of a faulty battery is
presented. The formulation of the state vectors and the identification of the
parameter matrices are then elaborated. Third, the fault mechanisms of both
battery faults (incl. overcharege/overdischarge faults, connection faults,
short circuit faults) and sensor faults (incl. voltage sensor faults and
current sensor faults) are discussed. Furthermore, different types of modeling
uncertainties, such as modeling errors and measurement noises, aging effects,
measurement outliers, are elaborated. An emphasis is then placed on the
observer design (incl. online state observers and offline state observers). The
algorithm implementation of typical state observers for battery fault diagnosis
is also put forward. Finally, discussion and outlook are offered to envision
some possible future research directions.Comment: Submitted to Renewable and Sustainable Energy Reviews on 09-Jan-202
Combined battery SOC/SOH estimation using a nonlinear adaptive observer
International audience— This work presents a modeling and estimation techniques for State of Charge and State of Health estimation for Li-ion batteries. The analysis is done using an adaptive estimation approach for joint state and parameter estimation and by simplifying an existing nonlinear model previously obtained from experiments tests. A switching mechanism between two observers, one for the charging phase and one for the discharging phase, is done to avoid transients due to the discontinuity of model's parameters. Simulations on experimental data show that the approach is feasible and enhance the interest of the proposed estimation technique
Modelling and estimation in lithium-ion batteries: a literature review
Lithium-ion batteries are widely recognised as the leading technology for electrochemical energy storage. Their applications in the automotive industry and integration with renewable energy grids highlight their current significance and anticipate their substantial future impact. However, battery management systems, which are in charge of the monitoring and control of batteries, need to consider several states, like the state of charge and the state of health, which cannot be directly measured. To estimate these indicators, algorithms utilising mathematical models of the battery and basic measurements like voltage, current or temperature are employed. This review focuses on a comprehensive examination of various models, from complex but close to the physicochemical phenomena to computationally simpler but ignorant of the physics; the estimation problem and a formal basis for the development of algorithms; and algorithms used in Li-ion battery monitoring. The objective is to provide a practical guide that elucidates the different models and helps to navigate the different existing estimation techniques, simplifying the process for the development of new Li-ion battery applications.This research received support from the Spanish Ministry of Science and Innovation under projects MAFALDA (PID2021-126001OB-C31 funded by MCIN/AEI/10.13039/501100011033/ ERDF,EU) and MASHED (TED2021-129927B-I00), and by FI Joan Oró grant (code 2023 FI-1 00827), cofinanced by the European Union.Peer ReviewedPostprint (published version
A Lithium Battery Current Estimation Technique Using an Unknown Input Observer
Current consumption measurements are useful in a wide variety of applications, including power monitoring and fault detection within a lithium battery management system (BMS). This measurement is typically taken using either a shunt resistor or a Hall-effect current transducer. Although both methods have achieved accurate current measurements, shunt resistors have inherent power loss and often require isolation circuitry, and Hall-effect sensors are generally expensive. This work explores a novel alternative to sensing battery current by measuring terminal voltages and cell temperatures and using an unknown input observer (UIO) to estimate the battery current. An accurate model of a LiFePO4 cell is created and is then used to characterize a model of the proposed current estimation technique. Finally, the current estimation technique is implemented in hardware and tested in an online BMS environment. Results show that the current estimation technique is sufficiently accurate for a variety of applications including fault detection and power profiling
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