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Modeling viscosity of methane,nitrogen,and hydrocarbon gas mixtures at ultra-high pressures and temperatures using group method of data handling and gene expression programming techniques 被引量:1
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作者 Farzaneh Rezaei Saeed Jafari +1 位作者 Abdolhossein Hemmati-Sarapardeh Amir H.Mohammadi 《Chinese Journal of Chemical Engineering》 SCIE EI CAS CSCD 2021年第4期431-445,共15页
Accurate gas viscosity determination is an important issue in the oil and gas industries.Experimental approaches for gas viscosity measurement are timeconsuming,expensive and hardly possible at high pressures and high... Accurate gas viscosity determination is an important issue in the oil and gas industries.Experimental approaches for gas viscosity measurement are timeconsuming,expensive and hardly possible at high pressures and high temperatures(HPHT).In this study,a number of correlations were developed to estimate gas viscosity by the use of group method of data handling(GMDH)type neural network and gene expression programming(GEP)techniques using a large data set containing more than 3000 experimental data points for methane,nitrogen,and hydrocarbon gas mixtures.It is worth mentioning that unlike many of viscosity correlations,the proposed ones in this study could compute gas viscosity at pressures ranging between 34 and 172 MPa and temperatures between 310 and 1300 K.Also,a comparison was performed between the results of these established models and the results of ten wellknown models reported in the literature.Average absolute relative errors of GMDH models were obtained 4.23%,0.64%,and 0.61%for hydrocarbon gas mixtures,methane,and nitrogen,respectively.In addition,graphical analyses indicate that the GMDH can predict gas viscosity with higher accuracy than GEP at HPHT conditions.Also,using leverage technique,valid,suspected and outlier data points were determined.Finally,trends of gas viscosity models at different conditions were evaluated. 展开更多
关键词 Gas Viscosity High pressure high temperature group method of data handling Gene expression programming
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STATISTICAL INFERENCE FOR A BIVARIATE EXPONENTIAL DISTRIBUTION BASED ON GROUPED DATA
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作者 YE CINAN(Department of Applied Mathematics, Naming University of Science & Tech.nology, Naming210014.) 《Applied Mathematics(A Journal of Chinese Universities)》 SCIE CSCD 1996年第3期285-294,共10页
Consider the bivariate exponential distribution due to Marshall and Olkin[2], whose survival function is F(x, g) = exp[-λ1x-λ2y-λ12 max(x, y)] (x 0,y 0)with unknown Parameters λ1 > 0, λ2 > 0 and λ12 0.Base... Consider the bivariate exponential distribution due to Marshall and Olkin[2], whose survival function is F(x, g) = exp[-λ1x-λ2y-λ12 max(x, y)] (x 0,y 0)with unknown Parameters λ1 > 0, λ2 > 0 and λ12 0.Based on grouped data, a newestimator for λ1, λ2 and λ12 is derived and its asymptotic properties are discussed.Besides, some test procedures of equal marginals and independence are given. Asimulation result is given, too. 展开更多
关键词 Bivariate exponential distribution parameter estimation grouped data asymptoticproperty.
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Location Data Fusion Based on Group Consensus
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作者 李国栋 陈维南 《Journal of Southeast University(English Edition)》 EI CAS 1997年第1期98-102,共5页
A new method of multi sensor location data fusion is proposed.The method is based on group consensus approach, which constructs group utility function (or its density) based on uncertainty of each sensor, and the loc... A new method of multi sensor location data fusion is proposed.The method is based on group consensus approach, which constructs group utility function (or its density) based on uncertainty of each sensor, and the location estimation is obtained based on the group utility function (or its density). The simulation results show that the method is better than those of mean and median estimation, and outlier and sensor failure can not affect the location estimation. 展开更多
关键词 multi sensor data FUSION UTILITY function group CONSENSUS LOCATION data FUSION
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Energy-Efficient MTC Data Offloading in Wireless Networks Based on K-Means Grouping Technique
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作者 Juma Saidi Ally Muhammad Asif Qingli Ma 《Journal of Computer and Communications》 2019年第2期47-61,共15页
Machine-type communication (MTC) devices provide a broad range of data collection especially on the massive data generated environments such as urban, industrials and event-enabled areas. In dense deployments, the dat... Machine-type communication (MTC) devices provide a broad range of data collection especially on the massive data generated environments such as urban, industrials and event-enabled areas. In dense deployments, the data collected at the closest locations between the MTC devices are spatially correlated. In this paper, we propose a k-means grouping technique to combine all MTC devices based on spatially correlated. The MTC devices collect the data on the event-based area and then transmit to the centralized aggregator for processing and computing. With the limitation of computational resources at the centralized aggregator, some grouped MTC devices data offloaded to the nearby base station collocated with the mobile edge-computing server. As a sensing capability adopted on MTC devices, we use a power exponential function model to compute a correlation coefficient existing between the MTC devices. Based on this framework, we compare the energy consumption when all data processed locally at centralized aggregator or offloaded at mobile edge computing server with optimal solution obtained by the brute force method. Then, the simulation results revealed that the proposed k-means grouping technique reduce the energy consumption at centralized aggregator while satisfying the required completion time. 展开更多
关键词 Machine-Type Communication Correlation data OFFLOADING groupING TECHNIQUE Differential Entropy Power EXPONENTIAL Function
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Development of a 1200 fine group nuclear data library for advanced nuclear systems
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作者 Jun Zou Lei-Ming Shang +1 位作者 Fang Wang Li-Juan Hao 《Nuclear Science and Techniques》 SCIE CAS CSCD 2017年第5期48-52,共5页
Accurate and reliable nuclear data libraries are essential for calculation and design of advanced nuclea systems. A 1200 fine group nuclear data library Hybrid Evaluated Nuclear Data Library/Fine Group(HENDL/FG with n... Accurate and reliable nuclear data libraries are essential for calculation and design of advanced nuclea systems. A 1200 fine group nuclear data library Hybrid Evaluated Nuclear Data Library/Fine Group(HENDL/FG with neutrons of up to 150 Me V has been developed to improve the accuracy of neutronics calculations and anal ysis. Corrections of Doppler, resonance self-shielding, and thermal upscatter effects were done for HENDL/FG Shielding and critical safety benchmarks were performed to test the accuracy and reliability of the library. The dis crepancy between calculated and measured nuclea parameters fell into a reasonable range. 展开更多
关键词 ADVANCED NUCLEAR system FINE group NUCLEAR data LIBRARY Effective MULTIPLICATION factor
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Novel Grouped Probability Data Association Algorithm for MIMO Detection
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作者 车文 赵慧 王文博 《Journal of Beijing Institute of Technology》 EI CAS 2008年第1期67-70,共4页
To bridge the performance gap between original probability data association (PDA) algorithm and the optimum maximum a posterior (MAP) algorithm for multi-input multi-output (MIMO) detection, a grouped PDA (GP-... To bridge the performance gap between original probability data association (PDA) algorithm and the optimum maximum a posterior (MAP) algorithm for multi-input multi-output (MIMO) detection, a grouped PDA (GP-PDA) detection algorithm is proposed. The proposed GP-PDA method divides all the transmit antennas into groups, and then updates the symbol probabilities group by group using PDA computations. In each group, joint a posterior probability (APP) is computed to obtain the APP of a single symbol in this group, like the MAP algorithm. Such new algorithm combines the characters of MAP and PDA. MAP and original PDA algorithm can be regarded as a special case of the proposed GP-PDA. Simulations show that the proposed GP-PDA provides a performance and complexity trade, off between original PDA and MAP algorithm. 展开更多
关键词 multi-input multi-output (MIMO) V-BLAST group probability data association (PDA)
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On the Power Performance of Test Statistics for the Generalized Rayleigh Interval Grouped Data
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作者 Hatim Solayman Migdadi 《Open Journal of Statistics》 2015年第5期474-482,共9页
In this paper, the weighted Kolmogrov-Smirnov, Cramer von-Miss and the Anderson Darling test statistics are considered as goodness of fit tests for the generalized Rayleigh interval grouped data. An extensive simulati... In this paper, the weighted Kolmogrov-Smirnov, Cramer von-Miss and the Anderson Darling test statistics are considered as goodness of fit tests for the generalized Rayleigh interval grouped data. An extensive simulation process is conducted to evaluate their controlling of type 1 error and their power functions. Generally, the weighted Kolmogrov-Smirnov test statistics show a relatively better performance than both, the Cramer von-Miss and the Anderson Darling test statistics. For large sample values, the Anderson Darling test statistics cannot control type 1 error but for relatively small sample values it indicates a better performance than the Cramer von-Miss test statistics. Best selection of the test statistics and highlights for future studies are also explored. 展开更多
关键词 GENERALIZED RAYLEIGH Distribution INTERVAL grouped data GOODNESS of FIT Tests Empirical Type 1 ERROR Power Function
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Group Method of Data Handling for Modeling Magnetorheological Dampers
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作者 Khaled Assaleh Tamer Shanableh Yasmin Abu Kheil 《Intelligent Control and Automation》 2013年第1期70-79,共10页
This paper proposes the use of Group Method of Data Handling (GMDH) technique for modeling Magneto-Rheological (MR) dampers in the context of system identification. GMDH is a multilayer network of quadratic neurons th... This paper proposes the use of Group Method of Data Handling (GMDH) technique for modeling Magneto-Rheological (MR) dampers in the context of system identification. GMDH is a multilayer network of quadratic neurons that offers an effective solution to modeling non-linear systems. As such, we propose the use of GMDH to approximate the forward and inverse dynamic behaviors of MR dampers. We also introduce two enhanced GMDH-based solutions. Firstly, a two-tier architecture is proposed whereby an enhanced GMD model is generated by the aid of a feedback scheme. Secondly, stepwise regression is used as a feature selection method prior to GMDH modeling. The proposed enhancements to GMDH are found to offer improved prediction results in terms of reducing the root-mean-squared error by around 40%. 展开更多
关键词 System IDENTIFICATION Magneto-Rheological DAMPERS group Method of data HANDLING POLYNOMIAL CLASSIFIER
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The Group Method of Data Handling (GMDH) and Artificial Neural Networks (ANN)in Time-Series Forecasting of Rice Yield
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作者 Nadira Mohamed Isa Shabri Ani Samsudin Ruhaidah 《材料科学与工程(中英文B版)》 2011年第3期378-387,共10页
关键词 时间序列预测模型 人工神经网络 GMDH 水稻产量 数据处理 ANN 多项式函数 双曲线
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大数据分析与智能检测技术在广式特色食品感官风味分析实践课程群中的应用
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作者 黄桂颖 汪薇 +7 位作者 董浩 赵晓娟 曾晓房 白卫东 陈海光 肖更生 曲桂燕 李炜正 《农产品加工》 2026年第2期134-136,共3页
广东省农产品种类繁多,为食品研发提供了丰富的资源和广阔空间。然而,传统的广式特色食品研发模式,已难以满足现代食品研发对于快速、精准及低成本的要求。通过智能感官检测技术将消费者对食品的感知数字化,利用大数据分析技术处理广式... 广东省农产品种类繁多,为食品研发提供了丰富的资源和广阔空间。然而,传统的广式特色食品研发模式,已难以满足现代食品研发对于快速、精准及低成本的要求。通过智能感官检测技术将消费者对食品的感知数字化,利用大数据分析技术处理广式食品的风味理化与感官分析数据,揭示加工过程中广式食品风味的变化规律,从而指导产品研发,可显著提高研发的精度、缩短研发周期及降低研发成本。为此,在新农科背景下,广式特色食品风味分析人才的培养方式亦需做出调整。深入分析现代广式特色食品研发的需求与挑战,并提出在广式特色食品感官风味分析实践课程群中应用大数据分析与智能感官检测技术的具体方案。 展开更多
关键词 广式特色 感官 风味 实践课程群 大数据分析 智能感官检测
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二手数据中的道与术——如何撰写案例论文
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作者 步丹璐 《云南财经大学学报》 北大核心 2026年第2期1-14,共14页
二手数据是企业经营活动分析与决策的宝贵资源。然而,一个值得注意的现象是,二手数据,尤其是二手会计数据作为潜力巨大的数据资源,其价值尚未被充分发掘。本文旨在系统阐述基于二手数据撰写高水平案例论文的完整方法论路径。可行的案例... 二手数据是企业经营活动分析与决策的宝贵资源。然而,一个值得注意的现象是,二手数据,尤其是二手会计数据作为潜力巨大的数据资源,其价值尚未被充分发掘。本文旨在系统阐述基于二手数据撰写高水平案例论文的完整方法论路径。可行的案例研究,必然是“以术通道,道术相济”的智慧实践。研究者首先需精通“术”,即掌握从标准化数据库(如CSMAR、Wind)或公开披露文件(如年报、公告)中高效、严谨地提取、整理与验证数据的技术能力,确保经验材料的真实、完整与可靠。通过精心设计的分析性比较、过程追踪或机制检验,逐步“还原”复杂商业现象背后的关键事实链条与互动关系。当然,“还原真相”并非研究的终点,真正的学术贡献在于“解释真相”,即从还原分析的具体现象出发,通过与企业理论、制度理论、战略管理等相关“道”的持续对话与反思,洞察数据表象之下稳定的因果机制、动态演化规律或新颖的理论模式,从而实现从特殊个案到一般性知识的升华。本文以恒大集团为例,具体展示如何将数据挖掘之“术”与理论构建之“道”有机融合,构建从问题提出、数据证据组织、分析展开到理论提炼的严谨研究闭环,为人们,尤其是青年研究者提供一份兼具操作性与思想性的研究指南。 展开更多
关键词 二手数据 案例研究 会计要素 股权结构 恒大集团
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基于Group Lasso的多源电信数据离网用户分析 被引量:2
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作者 孙良君 范剑锋 +3 位作者 杨琬琪 史颖欢 高阳 周新民 《南京师范大学学报(工程技术版)》 CAS 2014年第4期77-83,共7页
随着行业竞争愈演愈烈,电信企业的客户流失情况越来越严重,给电信企业造成了巨大损失.通过电信企业的数据来做离网用户的预测,从而进一步作出挽留客户的正确决策,成为电信企业日益关注的问题.面对电信后台汇总的多源数据,经分析发现其... 随着行业竞争愈演愈烈,电信企业的客户流失情况越来越严重,给电信企业造成了巨大损失.通过电信企业的数据来做离网用户的预测,从而进一步作出挽留客户的正确决策,成为电信企业日益关注的问题.面对电信后台汇总的多源数据,经分析发现其呈现天然的组结构.为了选择对于离网类别最具判别性的特征,本文使用了一种基于Group Lasso的组特征选择方法,在此基础上用交叉验证法选择适当的特征组,最终将选择出的少量组特征用于预测离网和停机的宽带用户.实验表明,在江苏某地级市电信离网用户分析数据中取得了比其他特征选择方法的精度平均高至少10%的预测性能. 展开更多
关键词 电信企业 客户流失 多源数据 特征选择 group Lasso
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铁路列车群运行多智能体感知模型与仿真
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作者 骆晖 《铁道运输与经济》 北大核心 2026年第1期141-150,共10页
为探讨铁路高精度与智能化运行仿真,研究铁路工程数据驱动建模与列车群多智能体自主感知仿真理论与方法。首先以工程勘察设计数据驱动生成线路等矢量数据模型,构建轨道区段、信号机、道岔、列车等智能体模型;其次研究单列车自主感知控... 为探讨铁路高精度与智能化运行仿真,研究铁路工程数据驱动建模与列车群多智能体自主感知仿真理论与方法。首先以工程勘察设计数据驱动生成线路等矢量数据模型,构建轨道区段、信号机、道岔、列车等智能体模型;其次研究单列车自主感知控制模型的构建与运行;最后通过构建CTC智能体实现数据感知与处理分析、列车群运行状态的动态监控与调度,完成列车群自主仿真运行。仿真实验结果表明,在CTC智能体的智能监测和决策下,单列车及列车群模型可实现安全、高效地仿真运行。研究通过数据驱动建模,解决传统仿真系统模型精度不足、建模效率低下的问题,通过CTC智能体集中控制,实现列车群的协同仿真与自主决策,为构建自主化、智能化的铁路运输仿真系统提供了理论支撑和技术路径,为铁路线路及车站设计、能力评估提供高可信度仿真工具。 展开更多
关键词 数据驱动建模 铁路运行仿真 列车群多智能体 CTC智能体 自主感知控制
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深部复杂工作面围岩-支架动态耦合关系及智能调控策略
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作者 任怀伟 巩师鑫 +2 位作者 刘凯 韩哲 张帅 《采矿与岩层控制工程学报》 北大核心 2026年第1期187-201,共15页
深部复杂条件煤层开采地应力高,围岩变形破坏严重,走向和倾向倾角起伏变化大。工作面不同位置的围岩压力、空间形态差异显著,支护技术条件复杂。现有工作面支护装备多为单一、固定功能参数设计,对围岩动态变化的适应能力不足,难以满足... 深部复杂条件煤层开采地应力高,围岩变形破坏严重,走向和倾向倾角起伏变化大。工作面不同位置的围岩压力、空间形态差异显著,支护技术条件复杂。现有工作面支护装备多为单一、固定功能参数设计,对围岩动态变化的适应能力不足,难以满足复杂条件煤层智能化开采需求。以淮南矿区某示范煤矿千米深井厚煤层超长工作面为例,提出了工作面围岩-支架力耦合(大小、方向和作用点)分析和空间态势、位移耦合分析方法,揭示深部超长工作面覆岩分区破断、压力动态迁移时空演化特征及规律,构建了基于深度学习神经网络的“压力-位姿”融合预测模型,提前预测和判断工作面围岩和装备的力位状态;基于非参数聚类算法提出了液压支架工作阻力和位姿分区准则,建立了不同分区的支护和位姿控制方法;研发了复杂条件工作面“三测两控一平台”智能分析决策系统,实现围岩状态、装备压力和空间信息的综合感知及决策控制,大幅提升装备适应煤层条件渐变或突变扰动的能力。示范工作面应用结果表明:系统有效提升复杂条件工作面支护装备的适应性和灵活性。在采用超长工作面布置,采高范围5.0~6.2 m、倾向平均倾角14°、走向最大倾角17°条件下,平均每天割煤5刀,开采速度提升38.29%。示范应用3个月,推进210.2 m,采煤总量近60万t,实现了淮南地区深部“三软”煤层大采高安全高效开采。本研究提出了适应深部复杂煤层特征的智能化开采方法,为深部煤炭资源的安全高效开采提供了技术支撑。 展开更多
关键词 千米深井 智能开采 液压支架群组 数据分析 分区协同
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大数据产业园多类型楼宇群电能共享优化运行策略
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作者 杨志豪 尤浏辉 +2 位作者 朱少杰 刘皓明 王健 《电力自动化设备》 北大核心 2026年第2期215-224,共10页
为了兼顾大数据产业园内、外的生产生活等多元化需求和用电经济性,亟需挖掘园区内不同类型楼宇群之间的互补潜力。为此,提出大数据产业园内多类型楼宇群的电能共享优化运行策略。给出大数据产业园内多类型楼宇群的电能共享架构;构建不... 为了兼顾大数据产业园内、外的生产生活等多元化需求和用电经济性,亟需挖掘园区内不同类型楼宇群之间的互补潜力。为此,提出大数据产业园内多类型楼宇群的电能共享优化运行策略。给出大数据产业园内多类型楼宇群的电能共享架构;构建不同类型楼宇群的自趋优响应优化模型;建立基于非对称Nash谈判的多类型楼宇群电能共享优化运行策略,并将其转化为易于求解的两阶段序贯优化子问题;采用基于增强型自适应预测-校正的交替方向乘子法对两阶段序贯优化子问题进行分布式求解。算例结果表明,所提大数据产业园多类型楼宇群电能共享优化运行策略能够充分发挥不同楼宇群的资源互补优势,有效降低园区的总运行成本;高效的分布式求解算法能在保护楼宇群隐私的同时,保证电能共享交易的公平性。 展开更多
关键词 大数据产业园 楼宇群 电能共享 数据中心 非对称Nash谈判 优化运行 交替方向乘子法
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用迭代自组织数据分析技术A(ISODATA)对零件进行模糊分类 被引量:2
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作者 吴庄胜 支灿 《西南交通大学学报》 EI CSCD 北大核心 1991年第3期103-108,共6页
本文将机械零件的 GT 分类编码视为模糊样品集,进行分类成组。给出了模糊数学模型,用 ISODATA 模糊聚类方法进行求解,程序运行的结果表明:比普通聚类法运行速度快;结果更切合客观实际。
关键词 成组技术 机械零件 ISOdata
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分布式云存储系统中多节点高效纠删码更新方法
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作者 解则翠 《办公自动化》 2026年第5期4-7,共4页
为保证分布式云存储系统中数据的可靠性和可用性,提出一种多节点分组的纠删码更新策略。该策略有两个设计要点:一是数据块采取节点分组就地更新策略,二是纠删码更新采用基于时间节点数据增量日志的方式;分布式存储系统数据更新时,对集... 为保证分布式云存储系统中数据的可靠性和可用性,提出一种多节点分组的纠删码更新策略。该策略有两个设计要点:一是数据块采取节点分组就地更新策略,二是纠删码更新采用基于时间节点数据增量日志的方式;分布式存储系统数据更新时,对集群的节点进行分组,同组的节点共同计算纠删码,以减少网络延迟所带来的时间消耗,提高纠删码编码效率;纠删码数据更新采用基于时间节点数据增量日志的方法,可以减少数据频繁写入导致重复计算纠删码的频率,从而减少读后写操作。实验结果证明,该策略相比传统方法,分布式存储系统中的数据修改量越大其优势越明显,存储空间利用率至少提高1.2%,编码效率至少提升9.88%。 展开更多
关键词 纠删码 存储集群 多节点分组 数据更新
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Fuzzy k-Means Clustering-Based Machine Learning Models for LFO Damping in Electric Power System Networks
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作者 Md Shafiullah 《Computer Modeling in Engineering & Sciences》 2026年第2期803-830,共28页
Various factors,including weak tie-lines into the electric power system(EPS)networks,can lead to low-frequency oscillations(LFOs),which are considered an instant,non-threatening situation,but slow-acting and poisonous... Various factors,including weak tie-lines into the electric power system(EPS)networks,can lead to low-frequency oscillations(LFOs),which are considered an instant,non-threatening situation,but slow-acting and poisonous.Considering the challenge mentioned,this article proposes a clustering-based machine learning(ML)framework to enhance the stability of EPS networks by suppressing LFOs through real-time tuning of key power system stabilizer(PSS)parameters.To validate the proposed strategy,two distinct EPS networks are selected:the single-machine infinite-bus(SMIB)with a single-stage PSS and the unified power flow controller(UPFC)coordinated SMIB with a double-stage PSS.To generate data under various loading conditions for both networks,an efficient but offline meta-heuristic algorithm,namely the grey wolf optimizer(GWO),is used,with the loading conditions as inputs and the key PSS parameters as outputs.The generated loading conditions are then clustered using the fuzzy k-means(FKM)clustering method.Finally,the group method of data handling(GMDH)and long short-term memory(LSTM)ML models are developed for clustered data to predict PSS key parameters in real time for any loading condition.A few well-known statistical performance indices(SPI)are considered for validation and robustness of the training and testing procedure of the developed FKM-GMDH and FKM-LSTM models based on the prediction of PSS parameters.The performance of the ML models is also evaluated using three stability indices(i.e.,minimum damping ratio,eigenvalues,and time-domain simulations)after optimally tuned PSS with real-time estimated parameters under changing operating conditions.Besides,the outputs of the offline(GWO-based)metaheuristic model,proposed real-time(FKM-GMDH and FKM-LSTM)machine learning models,and previously reported literature models are compared.According to the results,the proposed methodology outperforms the others in enhancing the stability of the selected EPS networks by damping out the observed unwanted LFOs under various loading conditions. 展开更多
关键词 Fuzzy k-means clustering grey wolf optimizer group method of data handling long short-term memory low-frequency oscillation power system stabilizer single machine infinite bus STABILITY unified power flow controller
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基于集团管理视角的铁路工程造价数据标准研究
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作者 缪睿 李建群 +1 位作者 朱松建 葛玉丹 《铁路工程技术与经济》 2026年第1期57-63,共7页
本文以江苏省铁路集团铁路建设项目实施阶段的造价数据为实证,基于集团管理视角,探索并建立一套体系完整、结构明晰、逻辑科学的工程实施阶段造价数据标准,满足集团多项目造价管理要求。本文重点研究集团和项目两级实施阶段造价数据的... 本文以江苏省铁路集团铁路建设项目实施阶段的造价数据为实证,基于集团管理视角,探索并建立一套体系完整、结构明晰、逻辑科学的工程实施阶段造价数据标准,满足集团多项目造价管理要求。本文重点研究集团和项目两级实施阶段造价数据的分类分级、数据编码规则以及数据间关联关系,旨在构建实施阶段的造价数据标准体系,实现从单个项目造价数据管理到集团多项目统一标准的提升,为强化造价管理、达成投资控制目标提供坚实的数据标准支撑。 展开更多
关键词 铁路工程 实施阶段造价 数据标准 投资控制 集团管理
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Variational Bayesian data analysis on manifold 被引量:2
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作者 Yang MING 《Control Theory and Technology》 EI CSCD 2018年第3期212-220,共9页
In this paper, variational inference is studied on manifolds with certain metrics. To solve the problem, the analysis is first proposed for the variational Bayesian on Lie group, and then extended to the manifold that... In this paper, variational inference is studied on manifolds with certain metrics. To solve the problem, the analysis is first proposed for the variational Bayesian on Lie group, and then extended to the manifold that is approximated by Lie groups. Then the convergence of the proposed algorithm with respect to the manifold metric is proved in two iterative processes: variational Bayesian expectation (VB-F) step and variational Bayesian maximum (VB-M) step. Moreover, the effective of different metrics for Bayesian analysis is discussed. 展开更多
关键词 Variational Bayesian Lie group data analysis
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