A Power Battery SOC Estimation Method Based on Dimensionality Reduction Observer

A technology of dimensionality reduction observer and power battery, which is applied in the direction of measuring electricity, measuring electrical variables, instruments, etc., can solve the problems of large amount of calculation, rarely used, difficult measurement, etc., and achieve the effect of improving the accuracy of estimation

Active Publication Date: 2019-06-18
QUANZHOU INST OF EQUIP MFG
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Problems solved by technology

Among them, the method based on the internal resistance model is affected by the temperature of the AC impedance and the influence of the DC impedance by the calculation time. If the time is short, only the ohmic resistance can be measured, and if the time is long, the internal resistance becomes complicated, and it becomes difficult to accurately measure the internal resistance of the monomer. , so it is seldom used in real vehicles; the open circuit voltage method requires the battery to stand for a long time and return to a stable state from the working state, which makes the measurement difficult, so this method is only applicable to the parking state when used alone; the Coulomb measurement method can Provide accurate current measurement results to achieve high-precision estimation, but cannot estimate the initial SOC of the battery; the neural network method requires a large amount of reference data for training, and the estimation results are greatly affected by the training data and training methods; the Kalman filter method involves The algorithm is complex, the amount of calculation is large, and the hardware requirements are harsh
Therefore, any estimation method used alone cannot meet the actual requirements of accuracy and easy realization.

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  • A Power Battery SOC Estimation Method Based on Dimensionality Reduction Observer
  • A Power Battery SOC Estimation Method Based on Dimensionality Reduction Observer
  • A Power Battery SOC Estimation Method Based on Dimensionality Reduction Observer

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Embodiment Construction

[0042] A power battery SOC estimation method based on a dimensionality reduction observer disclosed in this embodiment includes the following steps:

[0043] 1. Establishment of battery model structure

[0044] Through the analysis of the performance characteristics of the battery, the present invention expresses the nonlinear relationship between the open circuit voltage and the SOC through a controllable voltage source, and the relaxation effect of the battery is reflected by connecting an RC parallel circuit in series in the circuit. Therefore, the equivalent of the battery effect circuit such as figure 1 As shown, among them, i L and v T represent the circuit port current and port voltage respectively, Q R Indicates the rated capacity of the battery, R 0 Indicates the internal resistance of the battery, the parallel circuit of R and C reflects the relaxation effect of the battery, V RC Indicates the voltage across the RC parallel circuit.

[0045]The nonlinear relati...

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Abstract

The invention discloses a power battery SOC (State of Charge) estimation method based on a dimensionality reduction observer. The method includes the following steps: firstly, establishment of a battery model structure; secondly, recognition of battery unknown parameters; and thirdly, estimation of battery state of charge (SOC). For a lithium ion battery, the dimensionality reduction observer is designed while internal resistance and a relaxation effect of the battery are taken into consideration, and the SOC of the battery is estimated in real time through an open-circuit voltage method and a coulombic metering method. The computation complexity is low, the estimation precision is high, and errors caused by SOC initial value selection and system uncertainty are effectively overcome.

Description

technical field [0001] The invention relates to the technical field of power batteries of new energy electric vehicles, in particular to a power battery SOC estimation method based on a dimensionality reduction observer. Background technique [0002] As one of the core technologies of energy-saving and new energy vehicles, battery technology has always been the key to hindering the development of the new energy vehicle industry. The current research directions for power batteries mainly include battery model establishment, battery fault diagnosis, battery life prediction, battery State of Health (SOH) estimation and battery State of Charge (SOC) estimation. Among them, the battery model mainly reflects the relationship between the internal state variables of the battery and the external characteristics of the battery, which is the prerequisite for battery fault diagnosis and state estimation; the SOC of the battery describes the current remaining power inside the battery, wh...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G01R31/36G06F17/50
CPCG01R31/382G06F30/20
Inventor 陈豪张丹张景欣蔡品隆王耀宗
Owner QUANZHOU INST OF EQUIP MFG
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