免费看大片a-亚洲精品中文字幕乱码三区91-久久久在线视频-中文字幕免费高清在线观看-狼人狠狠干-www婷婷-欧美第一视频-国产中文字字幕乱码无限-色呦呦在线播放-男女羞羞无遮挡-成人男女视频-久久传媒-久久草精品-久久久精品综合-国产免费二区-四虎影院一区二区-国产操人-操操操爽爽爽-色就是色网站-久久77777-神马伦理影视-91手机在线看片-黄视频国产-中文字幕第100页-视频免费1区二区三区

Suzhou Electric Appliance Research Institute
期刊號: CN32-1800/TM| ISSN1007-3175

Article retrieval

文章檢索

首頁 >> 文章檢索 >> 欄目索引

基于改進高斯過程回歸的變電站直流蓄電池SOH估算

來源:電工電氣發(fā)布時間:2025-11-25 12:25 瀏覽次數(shù):10
基于改進高斯過程回歸的變電站直流蓄電池SOH估算
 
丁芃,謝昊含,司威,楊茹楠,劉明陽
(國網(wǎng)天津市電力公司濱海供電分公司,天津 300450)
 
    摘 要 :為了準確估算變電站直流蓄電池的健康狀態(tài)(SOH),輔助直流系統(tǒng)的運行決策,提出了一種基于改進高斯過程回歸的蓄電池SOH估算方法,通過建立變電站蓄電池組在實際不同運行工況下的蓄電池健康特征指標(HF),對高斯過程回歸算法進行適應(yīng)性改進,將變電站蓄電池實際歷史運行數(shù)據(jù)與離線測試數(shù)據(jù)按比例混合制作訓(xùn)練集,實現(xiàn)變電站蓄電池HFSOH之間的映射關(guān)系。實驗結(jié)果表明,該方法針對于變電站這一特殊場景下的蓄電池具有良好的估算效果,可為直流系統(tǒng)運行維護提供理論依據(jù)。
    關(guān)鍵詞 : 變電站 ;直流蓄電池 ;蓄電池健康狀態(tài) ;蓄電池運行工況 ;高斯過程回歸 ;訓(xùn)練集
    中圖分類號 :TM63 ;TM912     文獻標識碼 :A     文章編號 :1007-3175(2025)11-0014-07
 
SOH Estimation for DC Batteries in Substations Based on Improved Gaussian Process Regression
 
DING Peng, XIE Hao-han, SI Wei, YANG Ru-nan, LIU Ming-yang
(State Grid Tianjin Electric Power Company Binhai Power Supply Branch, Tianjin 300450, China)
 
    Abstract: In order to accurately estimate the state of health (SOH) of DC batteries in substations and assist in the operation decision-making of DC systems, this paper proposes a battery SOH estimation method based on improved Gaussian process regression. By establishing the health of feature (HF) of battery packs in substations under different operating conditions, the Gaussian process regression algorithm is adaptively improved. The actual historical operating data of substation batteries is mixed with offline test data in proportion to create a training set, achieving the mapping relationship between HF and SOH of substation batteries. The experimental results show that this method has good estimation effect on batteries in this special scenario of substations and can provide theoretical basis for the operation and maintenance of DC systems.
    Key words: substation; DC battery; state of health of battery; operating condition of battery; Gaussian process regression; training set
 
參考文獻
[1] 孫冬,許爽 . 梯次利用鋰電池健康狀態(tài)預(yù)測 [J]. 電工 技術(shù)學(xué)報,2018,33(9):2121-2129.
[2] GONG Qingrui, WANG Ping, CHENG Ze.An encoderdecoder model based on deep learning for state of health estimation of lithium-ion battery[J].Journal of Energy Storage,2022,46:103804.
[3] TIAN Jinpeng, XIONG Rui, SHEN Weixiang, et al. State-of-charge estimation of LiFePO4 batteries in electric vehicles:A deep-learning enabled approach[J].Applied Energy,2021,291:116812.
[4] HAN Xuebing, OUYANG Minggao, LU Languang, et al. Simplification of physics-based electrochemical model for lithium ion battery on electric vehicle. Part Ⅱ :Pseudo-twodimensional model simplification and state of charge estimation[J].Journal of Power Sources, 2015,278 :814-825.
[5] PLETT G L.Extended Kalman filtering for battery management systems of LiPB-based HEV battery packs: Part3. State and parameter estimation[J]. Journal of Power Sources,2004,134(2):277-292.
[6] WANG Yujie, ZHANG Chenbin, CHEN Zonghai.A method for state-of-charge estimation of LiFePO4 batteries at dynamic currents and temperatures using particle filter[J].Journal of Power Sources,2015,279:306-311.
[7] CHANG Chun, WANG Qiyue, JIANG Jiuchun, et al. Lithium-ion battery state of health estimation using the incremental capacity and wavelet neural networks with genetic algorithm[J]. Journal of Energy Storage,2021,38:102570.
[8] LIU Datong, ZHOU Jianbao, LIAO Haitao, et al.A health indicator extraction and optimization framework for lithium-ion battery degradation modeling and prognostics[J].IEEE Transactions on Systems, Man, and Cybernetics:Systems,2015, 45(6):915-928.
[9] TIAN Jinpeng, XIONG Rui, SHEN Weixiang.Stateof-health estimation based on differential temperature for lithium ion batteries[J]. IEEE Transactions on Power Electronics,2020, 35(10):10363-10373. [10] ZHANG Li, LI Kang, DU Dajun, et al.A sparse least squares support vector machine used for SOC estimation of Li-ion Batteries[J].IFACPapersOnLine,2019,52(11):256-261.
[11] LI Xiaoyu, YUAN Changgui, WANG Zhenpo.Multitime-scale framework for prognostic health condition of lithium battery using modified Gaussian process regression and nonlinear regression[J].Journal of Power Sources,2020, 467:228358.
[12] GOEBEL K, SAHA B, SAXENA A, et al.Prognostics in battery health management[J].IEEE Instrumentation & Measurement Magazine,2008,11(4):33-40.
[13] HE Jianghe, WEI Zhongbao, BIAN Xiaolei, et al. State-of-health estimation of lithium-ion batteries using incremental capacity analysis based on voltage-capacity model[J].IEEE Transactions on Transportation Electrification, 2020,6(2):417-426.
[14] XUE Jiankai, SHEN Bo.A novel swarm intelligence optimization approach: Sparrow search algorithm[J]. Systems Science & Control Engineering an Open Access Journal,2020,8(1):22-34.
[15] CHUNG J, GULCEHRE C, CHO K H, et al.Empirical evaluation of gated recurrent neural networks on sequence modeling[J/OL].(2014-12-11)[2025- 08-14].https//arxiv.org/abs/1412.3555.
主站蜘蛛池模板: 波多野结衣视频在线播放 | 国产真实乱人偷精品视频 | 中文字幕人妻一区二区 | 卡一卡二卡三 | 亚洲视频免费观看 | 日韩人妻精品中文字幕 | 黄网站在线观看 | 日韩视频免费在线观看 | 国产日韩欧美视频 | 人物动物互动39集免费观看 | 91综合网| 欧美a√ | 我想看毛片 | 精品久久一区二区三区 | 国产男男gay体育生白袜 | 成人午夜精品 | 午夜福利视频 | 私密spa按摩按到高潮 | 精品一区二区三区三区 | 91美女精品网站 | 久久久在线 | 久久精品一区二区 | 精品乱码一区内射人妻无码 | 性xxxx| 成人动漫在线观看 | 91网站免费看 | 91久久国产| 免费看黄色的网站 | 亚洲综合五月天婷婷丁香 | 亚洲综合在线视频 | 成人a级片 | 18在线观看免费入口 | 在线观看免费 | 日韩av电影网 | 黄色www | 国产午夜麻豆影院在线观看 | 日韩黄色网址 | 熟妇女人妻丰满少妇中文字幕 | 国产白丝精品91爽爽久久 | 欧美大浪妇猛交饥渴大叫 | 爱爱免费视频 | www.中文字幕 | 波多野结衣在线看 | 欧美精品区 | 午夜操一操 | 97在线免费视频 | 天天色天天 | 天堂视频在线 | 麻豆短视频 | 欧亚av | 伊人久久影院 | 一边摸一边抽搐一进一出视频 | 91免费在线 | 欧美伊人 | 91吃瓜在线| 欧美一二区 | 国产欧美一区二区三区在线看蜜臀 | 国产在线一区二区三区 | 欧美性网站 | 都市激情校园春色 | 黄色成人av| 香蕉久久a毛片 | 好男人www | 国产一区二区三区18 | a在线视频 | 国产精品视频免费观看 | 欧美a视频| 无套内谢少妇高潮免费 | 高清一区二区三区 | 亚洲视频二区 | 日本欧美在线 | 久操免费视频 | www.毛片| 婷婷综合在线 | 久久久精品一区二区涩爱 | 一级免费视频 | 视频一区在线观看 | av在线播放网站 | 日韩成人在线视频 | 亚洲成人免费 | 午夜影院| 久久久www | 在线观看特色大片免费网站 | 成年人在线视频 | 黄色精品 | 久久免费精品视频 | 欧美日韩在线免费观看 | 99在线视频观看 | 成人午夜免费视频 | 五月婷婷av| 欧美高清性xxxxhdvideosex | 无码人妻精品一区二区三 | 91精品又粗又猛又爽 | 欧美一区二区在线 | 国产97视频| 国产福利小视频 | 日韩中文字幕在线视频 | 99免费视频 | a点w片|