车用动力电池组云边智控与高精度SOC估计
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1.郑州科技学院机械工程学院 郑州 450064;2.郑州市智能装备工业设计中心 郑州 450064; 3.华北水利水电大学材料学院 郑州 450045

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TN98;TP273

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河南省重点研发与推广专项(科技攻关)计划(242102240005)、河南省高等学校青年骨干教师培养计划(2023GGJS186)、河南省高等学校重点科研项目计划(25B460017,23B480003)资助


Cloud-edge intelligent control and high-precision SOC estimation for vehicle power battery pack
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1.School of Mechanical Engineering, Zhengzhou University of Science and Technology,Zhengzhou 450064, China;2.Zhengzhou Industrial Design Center of Intelligent Equipment,Zhengzhou 450064, China;3.School of Materials Science and Engineering, North China University of Water Resources and Electric Power,Zhengzhou 450045, China

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    摘要:

    为提高车用动力电池组监控系统的实时性、状态估计精度及智能化程度,提出一种基于云边协同的车用动力电池组监控系统架构,通过深度融合边缘计算实时响应与云端大数据分析能力,构建多层级协同监控体系。系统采用STM32系列芯片搭建高精度硬件架构,集成数据采集、均衡控制、绝缘检测及5G联网定位等模块;创新性提出动态补偿型开路电压安时积分算法,融合温度、循环次数等多参数修正机制,实现SOC估计误差≤±1.2%。实验表明:系统电压、电流采集的动态精度分别为±0.11%和±0.4%,均衡后电芯电压方差降低99.1%,关键指标优于国标要求。研究成果为车用电池安全管控提供了高精度、低时延、可扩展的云边协同解决方案,具备一定的工程应用价值。

    Abstract:

    In order to improve the real-time performance, state estimation accuracy and intelligence degree of vehicle power battery pack monitoring system, a monitoring system architecture of vehicle power battery pack based on cloud-edge collaboration is proposed. By deeply integrating edge computing real-time response with cloud big data analysis capabilities, a multi-level collaborative monitoring system is built. The system utilizes STM32 series chips to build a high-precision hardware architecture, integrating data acquisition, equalization control, insulation detection, and 5G networking location modules. An innovative dynamic compensation open circuit voltage-ampere hour integration algorithm is proposed, incorporating multi-parameter correction mechanisms including temperature and cycle count, achieving SOC estimation error ≤±1.2%. The experimental results demonstrate that the system achieves dynamic accuracies of ±0.11% for voltage acquisition and ±0.4% for current acquisition, with cell voltage variance reduced by 99.1% after equalization. The key indicators are superior to the national standard requirements. This research provides a cloud-edge collaborative solution with high-precision, low latency, and scalability for vehicle batteries safety management. The system has certain engineering application value.

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郝振兴,李伟,杨瑞,徐要伟,郝用兴.车用动力电池组云边智控与高精度SOC估计[J].电子测量技术,2026,49(2):79-88

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  • 在线发布日期: 2026-02-26
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