SOC estimation method and system based on BP neural network, terminal equipment and readable storage medium

A technology of BP neural network and temperature setting, which is applied in the direction of measuring devices, instruments, measuring electronics, etc., can solve the problems of SOC detection deviation from the actual situation, BMS system reliability reduction, and large SOC error, so as to avoid large power failure, The effects of highlighting differences and improving accuracy

Active Publication Date: 2021-06-11
CENT SOUTH UNIV
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AI Technical Summary

Problems solved by technology

At the same time, due to the obvious attenuation of battery capacity at low temperatures, the SOC detection deviates from the actual situation, and there is currently a lack of a reliable technical means to determine the SOC value at low temperatures
In different temperature environments, the SOC error is large, resulting in a decrease in the reliability of the BMS system

Method used

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  • SOC estimation method and system based on BP neural network, terminal equipment and readable storage medium
  • SOC estimation method and system based on BP neural network, terminal equipment and readable storage medium
  • SOC estimation method and system based on BP neural network, terminal equipment and readable storage medium

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Embodiment 1

[0051] A kind of SOC estimation method based on BP neural network that the present embodiment provides, comprises the following steps:

[0052] S1: Set the temperature gradient, perform discharge operation at each temperature to collect sample data of the battery at each temperature. The specific collection process is as follows:

[0053] S1.1: Place the battery in a rated temperature environment and charge it to the working voltage. For example, the working voltage of the battery is 2.4v-5.5v, and it is preferable to sample separately for each working voltage.

[0054] S1.2: Place the battery in a certain temperature environment in the temperature gradient for N hours, where N is a positive integer. In this embodiment, the temperature gradient is set to -50°C to 80°C, and sampling is performed at a temperature interval of 1°C; and the storage time N is set to 0h to 24h, and sampling is performed at an interval of 2s.

[0055] S1.3: Under the temperature environment in step...

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Abstract

The invention discloses an SOC estimation method and system based on a BP neural network, terminal equipment and a readable storage medium. The estimation method comprises the steps: S1, setting a temperature gradient, and carrying out the discharge operation at each temperature so as to collect the sample data of a battery at each temperature, wherein the battery characteristic quantity in the sample data at least comprises a temperature, a temperature change rate and a residual electric quantity at the previous moment; and S2, training a BP neural network based on the sample data collected in the step S1 to obtain an SOC prediction model, wherein the battery characteristic quantity of the to-be-detected battery is input into the SOC prediction model to obtain an SOC value. According to the invention, the relevance between the low-temperature environment and the SOC and the relevance between the SOC and the temperature environment change are introduced into the model by utilizing the temperature change rate and the characteristic quantity of the temperature so that the accuracy of the constructed SOC prediction model is greatly improved, and the situation that the SOC generates a relatively large error due to the change of the actual residual electric quantity under the temperature change is greatly improved.

Description

technical field [0001] The invention belongs to the field of battery management systems (BMS), and in particular relates to an SOC estimation method, system, terminal equipment and readable storage medium based on a BP neural network. Background technique [0002] The BMS system has important functions such as real-time monitoring of battery status information, analysis of battery safety performance, optimization of battery energy control, and prolongation of battery life. It is an important system for ensuring battery safety and regulating battery performance. Among them, the core of battery state of charge monitoring lies in the estimation of SOC. The difficulty of SOC monitoring is that it is impossible to directly measure the state of charge of the battery accurately. The commonly used estimation methods include ampere-hour integral method, open circuit voltage method, Kalman filter method, Extended Kalman filter method and neural network method, etc. At the same time, ...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G01R31/367G01R31/382
CPCG01R31/367G01R31/382Y02E60/10
Inventor 陈立宝黄绍祯张凯哲青飘谢诗逸
Owner CENT SOUTH UNIV
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