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

SUBSCRIPTION MANAGEMENT

發(fā)行征訂

首頁 >> 發(fā)行征訂 >> 征訂方式

基于多模型仿真的變電站數(shù)據(jù)監(jiān)控與性能評估研究

來源:電工電氣發(fā)布時間:2025-04-27 12:27瀏覽次數(shù):209

基于多模型仿真的變電站數(shù)據(jù)監(jiān)控與性能評估研究

蔣亞坤,林旭,黃博
(云南電網(wǎng)有限責(zé)任公司,云南 昆明 650011)
 
    摘 要:各模型組合運用為變電站數(shù)據(jù)監(jiān)控提供了技術(shù)支持,在數(shù)據(jù)分析和故障預(yù)警方面具有重要應(yīng)用價值。采用卡爾曼濾波、自回歸積分滑動平均(ARIMA)模型、高斯混合模型(GMM)、移動平均模型和系統(tǒng)性能評估方法對變電站數(shù)據(jù)監(jiān)控的多種場景進行了仿真測試與分析。研究結(jié)果表明:卡爾曼濾波在噪聲較大的觀測數(shù)據(jù)中具備良好的平滑效果和狀態(tài)估計能力;ARIMA 模型能夠準確捕捉時間序列的長期趨勢和短期波動,適用于負荷預(yù)測;GMM 模型通過概率密度分析成功識別低概率的異常點,實現(xiàn)異常檢測;移動平均模型在不同窗口大小下能夠平滑數(shù)據(jù)并分析短期趨勢。通過系統(tǒng)性能評估實驗,驗證了系統(tǒng)在實時監(jiān)控中的處理能力,發(fā)現(xiàn)高吞吐量和低延遲是系統(tǒng)高效運行的關(guān)鍵指標(biāo)。
    關(guān)鍵詞: 變電站;數(shù)據(jù)監(jiān)控;卡爾曼濾波;自回歸積分滑動平均(ARIMA) 模型;高斯混合模型;移動平均模型;異常檢測;系統(tǒng)性能評估
    中圖分類號:TM63 ;TM743     文獻標(biāo)識碼:A     文章編號:1007-3175(2025)04-0053-06
 
Research on Substation Data Monitoring and Performance
Evaluation Based on Multi-Model Simulation
 
JIANG Ya-kun, LIN Xu, HUANG Bo
(Yunnan Power Grid Co., Ltd, Kunming 650011, China)
 
    Abstract: The integrated utilization of multiple models offers technical support for substation data monitoring, demonstrating significant applied value in data analysis and fault warning systems. In this study, simulation tests and comprehensive analysis were conducted on multiple scenarios of substation data monitoring by employing Kalman filter, auto-regressive integrated moving average(ARIMA)model, Gaussian mixture model (GMM), moving average (MA) model, and systematic performance evaluation methodologies. The results show that Kalman filtering has good smoothing effect and state estimation ability in noisy observation data; ARIMA model can accurately capture long-term trend and short-term fluctuation of time series, which is suitable for load forecasting; the GMM successfully identifies low-probability anomalies through probability density analysis and achieves anomaly detection; the moving average model is capable of smoothing the data under different window sizes and analyzing short-term trends. Ultimately, system performance evaluation experiments were conducted to verify the processing capabilities in real-time monitoring scenarios, with experimental results demonstrating that high throughput and low latency are critical indicators for efficient system operation.
    Key words: substation; data monitoring; Kalman filter; auto-regressive integrated moving average model; Gaussian mixture model; moving average model; anomaly detection; system performance evaluation
 
參考文獻
[1] MOGHBELI M, REZVANI M M, MEHRAEEN S, et al.Dynamic transmission and distribution analysis for asymmetrical networks in the presence of distribution-connected DER units[C]//2023 IEEE Texas Power and Energy Conference(TPEC),2023.
[2] FU Sheng, ZHANG Yabin, SONG Haiqiang.Development of the remote monitoring and warning system for operation condition of the main drainage pump in mine[C]//2011 IEEE International Conference
on Mechatronics and Automation,2011.
[3] TANG Chao, CHANG Zhengwei, LIANG Huihui, et al.Automatic identification method of HPLC platform topology based on characteristic data extraction[J].Electric Power Components and Systems,2023,51(12) :1197-1206.
[4] DAN M, ZHANG Y, GAO F.Extended Kalman filtering for enhancing a cyclic pattern-updating scheme of single-pixel dynamic fluorescence spatial frequency domain imaging publisher's note[J].Optics Letters,2024,49(4) :955.
[5] DOU Zhiwu, JI Mingxin, WANG Man, et al.Price prediction of pu'er tea based on ARIMA and BP models[J].Neural Computing & Applications,2022,34(5) :3495-3511.
[6] YUAN H, ZHANG X P.Multiscale fragile watermarking based on the Gaussian mixture model[J].IEEE Transactions on Image Processing,2006,15(10) :3189-3200.
[7] MOON U C, LEE K Y.A boiler-turbine system control using a fuzzy auto-regressive moving average(FARMA) model[J].IEEE Transactions Energy Conversion,2003,18(1) :142-148.
[8] MURPHY-CHUTORIAN E, TRIVEDI M M.Head Pose Estimation and Augmented Reality Tracking:An Integrated System and Evaluation for Monitoring Driver Awareness[J].IEEE Transactions on Intelligent Transportation Systems,2010,11(2) :300-311.

 

主站蜘蛛池模板: 精品人妻午夜一区二区三区四区 | 操操日 | 男女免费视频 | 黄色www| 日韩在线免费视频 | 99re在线视频 | 免费做a爰片77777 | 欧美不卡 | 国产白丝精品91爽爽久久 | 91中文字幕在线观看 | 欧美在线一区二区三区 | 欧美日韩在线一区 | 精品久久久久久 | 欧美伊人 | 欧美精产国品一二三区 | 91一区 | 成人福利视频 | 日韩黄色网址 | 亚洲啪啪| 欧洲做受高潮免费看 | 成人在线网站 | 91porny九色 | 三级视频在线播放 | 91国产精品 | 日韩精品第一页 | 国产乡下妇女做爰 | 少妇毛片 | 成人激情在线 | 91在线精品视频 | 国产又粗又猛又爽又黄 | 丰满少妇一区二区三区 | 麻豆专区 | 毛片一级片 | 搞中出| 亚洲国产精品久久 | 久久综合久色欧美综合狠狠 | 亚洲同性gay激情无套 | 欧美日韩在线免费观看 | 99视频精品 | 黑人精品xxx一区一二区 | 天天想你在线观看完整版电影高清 | 91亚色视频| 中文字幕免费 | 国产视频在线播放 | 两性囗交做爰视频 | 婷婷导航| av网站免费观看 | 欧美综合网 | 五月天中文字幕 | 999国产精品 | 超碰在线观看97 | 欧美黑人猛交 | 福利小视频 | av网站免费在线观看 | 91久久爽久久爽爽久久片 | 美女被草 | 日韩电影一区 | 久久久www| 大尺度做爰呻吟舌吻情头 | www毛片| 18深夜在线观看免费视频 | 日韩在线精品 | 五月婷婷丁香 | 免费午夜视频 | 久久在线视频 | 日本69视频 | 日本五十肥熟交尾 | 天天干夜夜撸 | 丁香激情五月 | 亚洲成人免费电影 | 午夜精品视频 | 在线视频亚洲 | 中文在线字幕免费观看 | 永久免费看片 | 免费h漫禁漫天天堂 | 秘密基地免费观看完整版中文 | 毛片一区 | 污污污www精品国产网站 | 乱码一区二区三区 | 四虎av| 在线不卡视频 | 婷婷国产 | 亚洲激情综合网 | 精品免费 | 国产色av| 特黄aaaaaaaaa毛片免费视频 | 与子敌伦刺激对白播放的优点 | 精品人妻二区中文字幕 | 欧美做受喷浆在线观看 | 黄色三级小说 | 91视频免费看 | 午夜精品视频在线观看 | 国产一级黄色大片 | 美女一级片 | 丁香六月婷婷 | 国产欧美在线 | 国产不卡一区 | 香蕉视频网站 | 国产免费高清 |