• Title/Summary/Keyword: State of charge(SOC)

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SOC/SOH Estimation Method for AGM Battery by Combining ARX Model for Online Parameters Identification and DEKF Considering Hysteresis and Diffusion Effects (파라미터 식별을 위한 ARX 모델과 히스테리시스와 확산 효과를 고려한 이중 확장 칼만필터의 결합에 의한 AGM 배터리의 SOC/SOH 추정방법)

  • Tran, Ngoc-Tham;Choi, Woojin
    • Proceedings of the KIPE Conference
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    • 2014.07a
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    • pp.401-402
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    • 2014
  • State of Charge (SOC) and State of Health (SOH) are the key issues for the application of Absorbent Glass Mat (AGM) type battery in Idle Start Stop (ISS) system which is popularly integrated in Electric Vehicles (EVs). However, battery parameters strongly depend on SOC, current rate and temperature and significantly change over the battery life cycles. In this research, a novel method for SOC, SOH estimation which combines the Auto Regressive with external input (ARX) method using for online parameters prediction and Dual Extended Kalman Filter (DEKF) algorithm considering hysteresis is proposed. The validity of the proposed algorithm is verified by the simulation and experiments.

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Simultaneous Control of Frequency Fluctuation and Battery SOC in a Smart Grid using LFC and EV Controllers based on Optimal MIMO-MPC

  • Pahasa, Jonglak;Ngamroo, Issarachai
    • Journal of Electrical Engineering and Technology
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    • v.12 no.2
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    • pp.601-611
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    • 2017
  • This paper proposes a simultaneous control of frequency deviation and electric vehicles (EVs) battery state of charge (SOC) using load frequency control (LFC) and EV controllers. In order to provide both frequency stabilization and SOC schedule near optimal performance within the whole operating regions, a multiple-input multiple-output model predictive control (MIMO-MPC) is employed for the coordination of LFC and EV controllers. The MIMO-MPC is an effective model-based prediction which calculates future control signals by an optimization of quadratic programming based on the plant model, past manipulate, measured disturbance, and control signals. By optimizing the input and output weights of the MIMO-MPC using particle swarm optimization (PSO), the optimal MIMO-MPC for simultaneous control of the LFC and EVs, is able to stabilize the frequency fluctuation and maintain the desired battery SOC at the certain time, effectively. Simulation study in a two-area interconnected power system with wind farms shows the effectiveness of the proposed MIMO-MPC over the proportional integral (PI) controller and the decentralized vehicle to grid control (DVC) controller.

Estimation of State-of-charge and Sensor Fault Detection of a Lithium-ion Battery in Electric Vehicles (전기자동차용 리튬이온전지를 위한 SOC 추정 및 센서 고장검출)

  • Han, Man-You;Lee, Kee-Sang
    • The Transactions of The Korean Institute of Electrical Engineers
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    • v.63 no.8
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    • pp.1085-1091
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    • 2014
  • A model based SOC estimation scheme using parameter identification is described and applied to a Lithium-ion battery module that can be installed in electric vehicles. Simulation studies are performed to verify the effect of sensor faults on the SOC estimation results for terminal voltage sensor and load current sensor. The sensor faults should be detected and isolated as soon as possible because the SOC estimation error due to any sensor fault seriously affects the overall performance of the BMS. A new fault detection and isolation(FDI) scheme by which the fault of terminal voltage sensor and load current sensor can be detected and isolated is proposed to improve the reliability of the BMS. The proposed FDI scheme utilizes the parameter estimation of an input-output model and two fuzzy predictors for residual generation; one for terminal voltage and the other for load current. Recently developed dual polarization(DP) model is taken to develope and evaluate the performance of the proposed FDI scheme. Simulation results show the practical feasibility of the proposed FDI scheme.

SOC-based Control Strategy of Battery Energy Storage System for Power System Frequency Regulation (전력계통 주파수조정을 위한 SOC 기반의 배터리 에너지저장장치 제어전략)

  • Yun, Jun Yeong;Yu, Garam;Kook, Kyung Soo;Rho, Do Hwan;Chang, Byung Hoon
    • The Transactions of The Korean Institute of Electrical Engineers
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    • v.63 no.5
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    • pp.622-628
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    • 2014
  • This paper presents the SOC-based control strategy of BESS(Battery Energy Storage System) for providing power system frequency regulation in the bulk power systems. As the life cycle of BESS would be shortened by frequent changes of charge and discharge required for frequency regulation in a steady state, the proposed algorithm operates BESS within a range of SOC where its life cycle can be maximized. However, during a transient period of which occurrence frequency is low, BESS would be controlled to use its full capacity in a wider range of SOC. In addition, each output of multiple BESS is proportionally determined by its SOC so that the balance in SOC of multiple BESS can be managed. The effectiveness of the proposed control strategy is verified through various case studies employing a test system. Moreover, the control result of BESS with the measured frequency from a real system shows SOC of BESS can be maintained within a specific range although the frequency deviation is biased.

A Study on the Configuration of BOP and Implementation of BMS Function for VRFB (VRFB를 위한 BOP 구성 및 BMS 기능구현에 관한 연구)

  • Choi, Jung-Sik;Oh, Seung-Yeol;Chung, Dong-Hwa;Park, Byung-Chul
    • Journal of the Korean Institute of Illuminating and Electrical Installation Engineers
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    • v.28 no.12
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    • pp.74-83
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    • 2014
  • This paper proposes a study on the configuration of balancing of plant(BOP) and implementation of battery management system(BMS) functions for vanadium redox flow battery(VRFB) and propose a method consists of sensor and required design specifications BOP system configuration. And it proposes an method of the functions implementation and control algorithm of the BMS for flow battery. Functions of BMS include temperature control, the charge and discharge control, flow control, level control, state of charge(SOC) estimation and a battery protection through the sensor signal of BOP. Functions of BMS is implemented by the sensor signal, so it is recognized as a very important factor measurement accuracy of the data. Therefore, measuring a mechanical signal(flow rate, temperature, level) through the BOP test model, and the measuring an electrical signal(cell voltage, stack voltage and stack current) through the VRFB charge-discharge system and analyzes the precision of data in this paper. Also it shows a good charge-discharge test results by the SOC estimation algorithm of VRFB. Proposed BOP configuration and BMS functions implementation can be used as a reference indicator for VRFB system design.

Circuit Implementation for LiFePO4 Battery SOC Estimation based on the Coulomb Counting Method (전류 적산법 기반의 LiFePO4 배터리 SOC 추정 회로 구현)

  • Chun, C.Y.;Kim, J.H.;Hur, I.N.;Cho, B.H.;Han, S.H.
    • Proceedings of the KIPE Conference
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    • 2011.11a
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    • pp.51-52
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    • 2011
  • 전류 적산법(Coulomb counting, Ampere counting)을 이용한 배터리 SOC(State of Charge) 추정 방식은 초기 SOC 값에 존재하는 오차와 SOC를 추정하는 시간동안 누적되는 전류값의 오차로 인해 추정이 실패할 수 있는 단점이 존재한다. 하지만 알고리즘이 직관적이며 단시간 내에서는 그 오차가 크지않고, 상용화된 배터리 SOC 추정 IC가 존재하여 구현이 간단하다는 장점 또한 있다. 본 논문에서는 전류 적산법 기반의 배터리 SOC 추정 IC를 사용하여 $LiFePO_4$ 리튬 폴리머 배터리의 SOC 추정 회로를 구현하는 과정을 제안한다. 또한 실험을 통해 제안된 배터리 SOC 추정 회로의 성능을 확인해본다.

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OCV Hysteresis Effect-based SOC Estimation in EKF Algorithm for a LiFePO4/C Cell (OCV 히스테리시스 특성을 이용한 확장 칼만 필터 기반 리튬 폴리머 배터리 SOC 추정)

  • Kim, J.H;Chun, C.Y.;Hur, I.N.;Cho, B.H.;Kim, B.J.
    • Proceedings of the KIPE Conference
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    • 2011.11a
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    • pp.301-302
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    • 2011
  • 본 논문에서는 리튬 폴리머 배터리($LiFePO_4/C$)의 개방전압(OCV;open-circuit voltage) 히스테리시스 특성을 이용한 확장 칼만 필터(EKF;extended Kalman filter) 기반 state-of-charge(SOC) 추정방법을 소개한다. 배터리 등가회로의 중요 요소인 OCV 모델링을 위해 충전 및 방전 각각의 OCV 히스테리시스 특성을 고려하였고 더불어 OCV-SOC 관계의 SOC 간격을 10%에서 5%로 조정하여 EKF 기반 SOC 추정알고리즘의 성능이 향상되었다. 축소된 하이브리드 자동차용 전류프로파일을 적용했을 때 SOC 추정이 잘 이루어지지 않는 영역은 EKF의 측정방정식에 노이즈 모델 및 데이터 리젝션(data rejection)을 구축하였다. 제안된 방법을 이용하여 SOC 추정결과 전류적산법 대비 5%이내의 SOC 추정에러를 만족하였다.

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A Study on the Methodology of Determining Proper SOC Operation Range Considering the Economic Characteristics and the Charge and Discharge Voltage Characteristics of BESS (BESS의 경제성과 충방전 전압 특성을 고려한 적정 SOC 운영 영역 설정 기법에 관한 연구)

  • Yoon, Dae-Sik;Choo, Dae-Hyeok;Ki, Byung-Kook;Kim, Joohn-Sheok;Lee, Byung Ha;Chae, Woo-Ku
    • The Transactions of The Korean Institute of Electrical Engineers
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    • v.64 no.4
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    • pp.529-536
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    • 2015
  • With the growing interest of microgrid all over the world, many studies on microgrid operation are being carried out. The battery energy storage system(BESS) is a key equipment for effective operation of the microgrid. In this paper, we analyze the characteristics of the charge and discharge output voltage of the battery and the characteristics of the life-span variation and the investment cost when the state-of-charge (SOC) changes. The formulas to represent the quality of the charge and discharge output voltage of the battery and the economics due to the life-span variation and the investment cost according to DOD(Depth of Discharge) are derived. The methodology of determining the proper operation ranges of the battery SOC with varying the weighting of the quality of its charge and discharge output voltage of the battery and the economics due to its life-span variation and the investment cost is presented using these formulas.

A Novel SOC Estimation Method for Multiple Number of Lithium Batteries Using Deep Neural Network (딥 뉴럴 네트워크를 이용한 새로운 리튬이온 배터리의 SOC 추정법)

  • Khan, Asad;Ko, Young-hwi;Choi, Woojin
    • Proceedings of the KIPE Conference
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    • 2019.11a
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    • pp.70-72
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    • 2019
  • For the safe and reliable operation of Lithium-ion batteries in Electric Vehicles (EVs) or Energy Storage Systems (ESSs), it is essential to have accurate information of the battery such as State of Charge (SOC). Many kinds of different techniques to estimate the SOC of the batteries have been developed so far such as the Kalman Filter. However, when it is applied to the multiple number of batteries it is difficult to maintain the accuracy of the estimation over all cells due to the difference in parameter value of each cell. Moreover the difference in the parameter of each cell may become larger as the operation time accumulates due to aging. In this paper a novel Deep Neural Network (DNN) based SOC estimation method for multi cell application is proposed. In the proposed method DNN is implemented to learn non-linear relationship of the voltage and current of the lithium-ion battery at different SOCs and different temperatures. In the training the voltage and current data of the Lithium battery at charge and discharge cycles obtained at different temperatures are used. After the comprehensive training with the data obtained with a cell resulting estimation algorithm is applied to the other cells. The experimental results show that the Mean Absolute Error (MAE) of the estimation is 0.56% at 25℃, and 3.16% at 60℃ with the proposed SOC estimation algorithm.

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LiPB Battery SOC Estimation Using Extended Kalman Filter Improved with Variation of Single Dominant Parameter

  • Windarko, Novie Ayub;Choi, Jae-Ho
    • Journal of Power Electronics
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    • v.12 no.1
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    • pp.40-48
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    • 2012
  • This paper proposes the State-of-charge (SOC) estimator of a LiPB Battery using the Extended Kalman Filter (EKF). EKF can work properly only with an accurate model. Therefore, the high accuracy electrical battery model for EKF state is discussed in this paper, which is focused on high-capacity LiPB batteries. The battery model is extracted from a single cell of LiPB 40Ah, 3.7V. The dynamic behavior of single cell battery is modeled using a bulk capacitance, two series RC networks, and a series resistance. The bulk capacitance voltage represents the Open Circuit Voltage (OCV) of battery and other components represent the transient response of battery voltage. The experimental results show the strong relationship between OCV and SOC without any dependency on the current rates. Therefore, EKF is proposed to work by estimating OCV, and then is converted it to SOC. EKF is tested with the experimental data. To increase the estimation accuracy, EKF is improved with a single dominant varying parameter of bulk capacitance which follows the SOC value. Full region of SOC test is done to verify the effectiveness of EKF algorithm. The test results show the error of estimation can be reduced up to max 5%SOC.