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Offline data driving based storage battery combined state estimation method

A data-driven, state estimation technology, applied in the measurement of electricity, measurement of electrical variables, measurement devices, etc., can solve problems such as inability, low accuracy, and standard measurement

Active Publication Date: 2018-06-08
NO 719 RES INST CHINA SHIPBUILDING IND
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  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

[0002] In the application field of domestic electric vehicle power lithium-ion batteries, lithium iron phosphate accounts for about 50%. In actual use, the battery management system has a large error in estimating the capacity and SOC of lithium iron phosphate batteries, resulting in the expected battery life of electric vehicles. Inaccurate estimation, poor driving experience, SOC estimation error will lead to misoperation of battery management and affect battery life
[0003] Lithium iron phosphate batteries have a wide voltage platform, and the voltage platform in the SOC range of 20% to 85% is very flat. When the SOC changes by 1%, the terminal voltage changes even less than 1mV, so it is very difficult to estimate the SOC based on the terminal voltage
[0004] The capacity of lithium iron phosphate batteries gradually decays with the increase in the number of cycles, but the standard measurement of capacity cannot be performed during use, so it needs to be passed during use to identify the battery capacity online. The current online capacity estimation algorithm in the industry has low accuracy

Method used

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  • Offline data driving based storage battery combined state estimation method
  • Offline data driving based storage battery combined state estimation method
  • Offline data driving based storage battery combined state estimation method

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Embodiment Construction

[0050] The present invention will be further described below in conjunction with the accompanying drawings and specific embodiments.

[0051] figure 1 It is a flow chart of the battery off-line test applied by the method of the present invention. Such as figure 1 As shown, first determine n test temperature points T1~Tn, at each temperature, carry out capacity test cycle charge and discharge test and open circuit voltage test respectively, and record and process the corresponding data. The specific test steps are as follows: (a) at constant temperature In the box environment, at a certain constant temperature T, carry out constant current and constant voltage charging with Ia current, the cut-off voltage is Ua, record the charging capacity, let it stand for 2 hours, carry out constant current discharge with Ib current, the cut-off voltage is Ub, record the discharge capacity, static Set it for 2 hours, cycle charge and discharge until the difference between the two adjacent ...

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Abstract

The invention discloses an offline data driving based storage battery combined state estimation method. The method is based on offline test data driving, characteristic points extracted from offline data serve as an online identification knowledge base, and the battery SOC and capacity are estimated in a combined way online; and stored voltage change data after charging and discharging is used tocalculate an equivalent OCV value, and SOC of the battery is obtained according to the obtained offline data SOC=s(OCV, T). The SOC of a characteristic point is obtained by carrying out characteristicidentification on the battery voltage data during current-constant charging. The method is low in computational complexity, high in estimation precision, and suitable for state estimation of each battery among a lot of batteries in serial connection.

Description

technical field [0001] The present invention designs a battery joint state estimation method driven by offline data, which is applicable to but not limited to lithium iron phosphate batteries. The state estimation specifically involves battery capacity estimation and battery state of charge (SOC) estimation. The present invention tests the battery offline, Calculate and extract feature data, and combine online feature identification method for state estimation. Background technique [0002] In the application field of domestic electric vehicle power lithium-ion batteries, lithium iron phosphate accounts for about 50%. In actual use, the battery management system has a large error in estimating the capacity and SOC of lithium iron phosphate batteries, resulting in the expected battery life of electric vehicles. SOC estimation error will lead to misoperation of battery management and affect battery life. [0003] Lithium iron phosphate batteries have a wide voltage platform, ...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G01R31/36
CPCG01R31/3648
Inventor 邓磊吴浩伟李小谦李鹏汪文涛蔡久青金翔孔祥伟姜波蔡凯欧阳晖李锐李可维金惠峰周樑邢贺鹏陈涛徐正喜魏华罗伟耿攀汪永茂雷秉霖张辉睿
Owner NO 719 RES INST CHINA SHIPBUILDING IND
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