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Deep Support Vector Data Description Based Physical Layer Authentication
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作者 Shao Yijie Pan Zhiwen +1 位作者 Liu Nan You Xiaohu 《China Communications》 2025年第10期214-222,共9页
In wireless communication,the problem of authenticating the transmitter’s identity is challeng-ing,especially for those terminal devices in which the security schemes based on cryptography are approxi-mately unfeasib... In wireless communication,the problem of authenticating the transmitter’s identity is challeng-ing,especially for those terminal devices in which the security schemes based on cryptography are approxi-mately unfeasible owing to limited resources.In this paper,a physical layer authentication scheme is pro-posed to detect whether there is anomalous access by the attackers disguised as legitimate users.Explicitly,channel state information(CSI)is used as a form of fingerprint to exploit spatial discrimination among de-vices in the wireless network and machine learning(ML)technology is employed to promote the improve-ment of authentication accuracy.Considering that the falsified messages are not accessible for authenticator during the training phase,deep support vector data de-scription(Deep SVDD)is selected to solve the one-class classification(OCC)problem.Simulation results show that Deep SVDD based scheme can tackle the challenges of physical layer authentication in wireless communication environments. 展开更多
关键词 deep support vector data description one-class classification physical layer authentication wireless security
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Multi-mode process monitoring based on a novel weighted local standardization strategy and support vector data description 被引量:9
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作者 赵付洲 宋冰 侍洪波 《Journal of Central South University》 SCIE EI CAS CSCD 2016年第11期2896-2905,共10页
There are multiple operating modes in the real industrial process, and the collected data follow the complex multimodal distribution, so most traditional process monitoring methods are no longer applicable because the... There are multiple operating modes in the real industrial process, and the collected data follow the complex multimodal distribution, so most traditional process monitoring methods are no longer applicable because their presumptions are that sampled-data should obey the single Gaussian distribution or non-Gaussian distribution. In order to solve these problems, a novel weighted local standardization(WLS) strategy is proposed to standardize the multimodal data, which can eliminate the multi-mode characteristics of the collected data, and normalize them into unimodal data distribution. After detailed analysis of the raised data preprocessing strategy, a new algorithm using WLS strategy with support vector data description(SVDD) is put forward to apply for multi-mode monitoring process. Unlike the strategy of building multiple local models, the developed method only contains a model without the prior knowledge of multi-mode process. To demonstrate the proposed method's validity, it is applied to a numerical example and a Tennessee Eastman(TE) process. Finally, the simulation results show that the WLS strategy is very effective to standardize multimodal data, and the WLS-SVDD monitoring method has great advantages over the traditional SVDD and PCA combined with a local standardization strategy(LNS-PCA) in multi-mode process monitoring. 展开更多
关键词 multiple operating modes weighted local standardization support vector data description multi-mode monitoring
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A Support Data-Based Core-Set Selection Method for Signal Recognition 被引量:1
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作者 Yang Ying Zhu Lidong Cao Changjie 《China Communications》 SCIE CSCD 2024年第4期151-162,共12页
In recent years,deep learning-based signal recognition technology has gained attention and emerged as an important approach for safeguarding the electromagnetic environment.However,training deep learning-based classif... In recent years,deep learning-based signal recognition technology has gained attention and emerged as an important approach for safeguarding the electromagnetic environment.However,training deep learning-based classifiers on large signal datasets with redundant samples requires significant memory and high costs.This paper proposes a support databased core-set selection method(SD)for signal recognition,aiming to screen a representative subset that approximates the large signal dataset.Specifically,this subset can be identified by employing the labeled information during the early stages of model training,as some training samples are labeled as supporting data frequently.This support data is crucial for model training and can be found using a border sample selector.Simulation results demonstrate that the SD method minimizes the impact on model recognition performance while reducing the dataset size,and outperforms five other state-of-the-art core-set selection methods when the fraction of training sample kept is less than or equal to 0.3 on the RML2016.04C dataset or 0.5 on the RML22 dataset.The SD method is particularly helpful for signal recognition tasks with limited memory and computing resources. 展开更多
关键词 core-set selection deep learning model training signal recognition support data
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Data assimilation using support vector machines and ensemble Kalman filter for multi-layer soil moisture prediction 被引量:1
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作者 Di LIU Zhong-bo YU Hai-shen LV 《Water Science and Engineering》 EI CAS 2010年第4期361-377,共17页
Hybrid data assimilation (DA) is a method seeing more use in recent hydrology and water resources research. In this study, a DA method coupled with the support vector machines (SVMs) and the ensemble Kalman filter... Hybrid data assimilation (DA) is a method seeing more use in recent hydrology and water resources research. In this study, a DA method coupled with the support vector machines (SVMs) and the ensemble Kalman filter (EnKF) technology was used for the prediction of soil moisture in different soil layers: 0-5 cm, 30 cm, 50 cm, 100 cm, 200 cm, and 300 cm. The SVM methodology was first used to train the ground measurements of soil moisture and meteorological parameters from the Meilin study area, in East China, to construct soil moisture statistical prediction models. Subsequent observations and their statistics were used for predictions, with two approaches: the SVM predictor and the SVM-EnKF model made by coupling the SVM model with the EnKF technique using the DA method. Validation results showed that the proposed SVM-EnKF model can improve the prediction results of soil moisture in different layers, from the surface to the root zone. 展开更多
关键词 data assimilation support vector machines ensemble Kalman filter soil moisture
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Real-Time Data Transmission with Data Carrier Support Value in Neighbor Strategic Collection in WSN
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作者 S.Ponnarasi T.Rajendran 《Computers, Materials & Continua》 SCIE EI 2023年第6期6039-6057,共19页
An efficient trust-aware secure routing and network strategy-based data collection scheme is presented in this paper to enhance the performance and security of wireless sensor networks during data collection.The metho... An efficient trust-aware secure routing and network strategy-based data collection scheme is presented in this paper to enhance the performance and security of wireless sensor networks during data collection.The method first discovers the routes between the data sensors and the sink node.Several factors are considered for each sensor node along the route,including energy,number of neighbours,previous transmissions,and energy depletion ratio.Considering all these variables,the Sink Reachable Support Measure and the Secure Communication Support Measure,the method evaluates two distinct measures.The method calculates the data carrier support value using these two metrics.A single route is chosen to collect data based on the value of data carrier support.It has contributed to the design of Secure Communication Support(SCS)Estimation.This has been measured according to the strategy of each hop of the route.The suggested method improves the security and efficacy of data collection in wireless sensor networks.The second stage uses the two-fish approach to build a trust model for secure data transfer.A sim-ulation exercise was conducted to evaluate the effectiveness of the suggested framework.Metrics,including PDR,end-to-end latency,and average residual energy,were assessed for the proposed model.The efficiency of the suggested route design serves as evidence for the average residual energy for the proposed framework. 展开更多
关键词 data carrier support data collection neighbor strategy secure routing wireless sensor network
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A Support Vector Regression Approach for Recursive Simultaneous Data Reconciliation and Gross Error Detection in Nonlinear Dynamical Systems 被引量:3
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作者 MIAO Yu SU Hong-Ye CHU Jian 《自动化学报》 EI CSCD 北大核心 2009年第6期707-716,共10页
关键词 数据分析 自动化系统 智能系统 质量数据
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Use of Data Mining to Support the Development of Knowledge Intensive CAD
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作者 K H Lau C Y Yip Alvin Wong 《厦门大学学报(自然科学版)》 CAS CSCD 北大核心 2002年第S1期201-,共1页
In order to compete in the global manufacturing mar ke t, agility is the only possible solution to response to the fragmented market se gments and frequently changed customer requirements. However, manufacturing agil ... In order to compete in the global manufacturing mar ke t, agility is the only possible solution to response to the fragmented market se gments and frequently changed customer requirements. However, manufacturing agil ity can only be attained through the deployment of knowledge. To embed knowledge into a CAD system to form a knowledge intensive CAD (KIC) system is one of way to enhance the design compatibility of a manufacturing company. The most difficu lt phase to develop a KIC system is to capitalize a huge amount of legacy data t o form a knowledge database. In the past, such capitalization process could only be done solely manually or semi-automatic. In this paper, a five step model fo r automatic design knowledge capitalization through the use of data mining is pr oposed whilst details of how to select, verify and performance benchmarking an a ppropriate data mining algorithm for a specific design task will also be discuss ed. A case study concerning the design of a plastic toaster casing was used as an illustration for the proposed methodology and it was found that the avera ge absolute error of the predictions for the most appropriate algorithm is withi n 17%. 展开更多
关键词 Use of data Mining to support the Development of Knowledge Intensive CAD In KIC
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Data Selection Using Support Vector Regression
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作者 Michael B.RICHMAN Lance M.LESLIE +1 位作者 Theodore B.TRAFALIS Hicham MANSOURI 《Advances in Atmospheric Sciences》 SCIE CAS CSCD 2015年第3期277-286,共10页
Geophysical data sets are growing at an ever-increasing rate,requiring computationally efficient data selection (thinning) methods to preserve essential information.Satellites,such as WindSat,provide large data sets... Geophysical data sets are growing at an ever-increasing rate,requiring computationally efficient data selection (thinning) methods to preserve essential information.Satellites,such as WindSat,provide large data sets for assessing the accuracy and computational efficiency of data selection techniques.A new data thinning technique,based on support vector regression (SVR),is developed and tested.To manage large on-line satellite data streams,observations from WindSat are formed into subsets by Voronoi tessellation and then each is thinned by SVR (TSVR).Three experiments are performed.The first confirms the viability of TSVR for a relatively small sample,comparing it to several commonly used data thinning methods (random selection,averaging and Barnes filtering),producing a 10% thinning rate (90% data reduction),low mean absolute errors (MAE) and large correlations with the original data.A second experiment,using a larger dataset,shows TSVR retrievals with MAE < 1 m s-1 and correlations ≥ 0.98.TSVR was an order of magnitude faster than the commonly used thinning methods.A third experiment applies a two-stage pipeline to TSVR,to accommodate online data.The pipeline subsets reconstruct the wind field with the same accuracy as the second experiment,is an order of magnitude faster than the nonpipeline TSVR.Therefore,pipeline TSVR is two orders of magnitude faster than commonly used thinning methods that ingest the entire data set.This study demonstrates that TSVR pipeline thinning is an accurate and computationally efficient alternative to commonly used data selection techniques. 展开更多
关键词 data selection data thinning machine learning support vector regression Voronoi tessellation pipeline methods
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Multimode Process Monitoring Based on the Density-Based Support Vector Data Description
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作者 郭红杰 王帆 +2 位作者 宋冰 侍洪波 谭帅 《Journal of Donghua University(English Edition)》 EI CAS 2017年第3期342-348,共7页
Complex industry processes often need multiple operation modes to meet the change of production conditions. In the same mode,there are discrete samples belonging to this mode. Therefore,it is important to consider the... Complex industry processes often need multiple operation modes to meet the change of production conditions. In the same mode,there are discrete samples belonging to this mode. Therefore,it is important to consider the samples which are sparse in the mode.To solve this issue,a new approach called density-based support vector data description( DBSVDD) is proposed. In this article,an algorithm using Gaussian mixture model( GMM) with the DBSVDD technique is proposed for process monitoring. The GMM method is used to obtain the center of each mode and determine the number of the modes. Considering the complexity of the data distribution and discrete samples in monitoring process,the DBSVDD is utilized for process monitoring. Finally,the validity and effectiveness of the DBSVDD method are illustrated through the Tennessee Eastman( TE) process. 展开更多
关键词 Eastman Tennessee sparse utilized illustrated kernel Bayesian charts validity false
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Linked Data Based Framework for Tourism Decision Support System: Case Study of Chinese Tourists in Switzerland
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作者 Zhan Liu Anne Le Calvé +3 位作者 Fabian Cretton Nicole Glassey Balet Maria Sokhn Nicolas Délétroz 《Journal of Computer and Communications》 2015年第5期118-126,共9页
Switzerland is one of the most desirable European destinations for Chinese tourists;therefore, a better understanding of Chinese tourists is essential for successful business practices. In China, the largest and leadi... Switzerland is one of the most desirable European destinations for Chinese tourists;therefore, a better understanding of Chinese tourists is essential for successful business practices. In China, the largest and leading social media platform—Sina Weibo, a hybrid of Twitter and Facebook—has more than 600 million users. Weibo’s great market penetration suggests that tourism operators and markets need to understand how to build effective and sustainable communications on Chinese social media platforms. In order to offer a better decision support platform to tourism destination managers as well as Chinese tourists, we proposed a framework using linked data on Sina Weibo. Linked Data is a term referring to using the Internet to connect related data. We will show how it can be used and how ontology can be designed to include the users’ context (e.g., GPS locations). Our framework will provide a good theoretical foundation for further understand Chinese tourists’ expectation, experiences, behaviors and new trends in Switzerland. 展开更多
关键词 Linked data SEMANTIC Web DECISION support System Natural Language Processing BEHAVIORS Analysis Social Networks Chinese TOURIST Switzerland New Trends SINA Weibo
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基于SVM和归一化熵模型的隐患文本分类与类型特征分析
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作者 乔剑锋 刘萱 +2 位作者 艾莉莎 张丽玮 王汀 《重庆大学学报》 北大核心 2026年第2期105-115,共11页
为了提高隐患信息数据组织和检索的效率,支持更复杂的信息处理任务,需要采用有效技术手段对数据进行自动分类和类型分析。支持向量机(support vector machine,SVM)可以对自由文本进行自动分类,但是算法的工作原理是在训练集中寻找最优... 为了提高隐患信息数据组织和检索的效率,支持更复杂的信息处理任务,需要采用有效技术手段对数据进行自动分类和类型分析。支持向量机(support vector machine,SVM)可以对自由文本进行自动分类,但是算法的工作原理是在训练集中寻找最优分类边界,不能发现类型典型特征。为了分析类型样本的共同特征,提出采用归一化熵模型寻找类型典型特征,改进当前词频-逆文档频率(term frequency-inverse document frequency,TF-IDF)类型特征识别方法。以政府某应急管理局的2 534条执法检查记录为例,采用SVM进行自动分类,准确率高达97%。同时通过归一化熵模型给出各类型的典型特征,为制定隐患排查专项整治策略提供决策支持。实验结果表明,采用SVM和归一化熵模型的组合技术可以高效解决文本分类和类型特征识别的综合问题。 展开更多
关键词 文本挖掘 数据挖掘 隐患排查 支持向量机
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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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区域经济发展Data Farming决策支持技术及其应用 被引量:1
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作者 彭敏晶 林健 《系统管理学报》 北大核心 2008年第5期514-519,共6页
为解决现有的决策支持技术不能解决的区域经济历史数据稀少的问题,提出了区域经济发展Data Farming决策支持技术。所提出的技术采用基于智能体仿真的Data Farming技术,对参数空间进行遍历搜索,以利用各个参数值对应的仿真结果来获取大... 为解决现有的决策支持技术不能解决的区域经济历史数据稀少的问题,提出了区域经济发展Data Farming决策支持技术。所提出的技术采用基于智能体仿真的Data Farming技术,对参数空间进行遍历搜索,以利用各个参数值对应的仿真结果来获取大量的数据,使决策者可以有效地识别到系统的最优控制值,并了解在控制值下的系统风险性。最后,以江门市社会消费品零售总额的控制优化为例,说明了该技术的有效性。 展开更多
关键词 区域经济 决策支持 data FARMING 智能体仿真 社会消费品零售总额
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基于移动车辆荷载作用下锚固点振动响应结合机器学习的斜拉索损伤识别研究
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作者 曾有艺 杜家锐 +2 位作者 张家滨 王金昊 樊继荣 《中外公路》 2026年第1期177-187,共11页
移动车辆荷载作用下采集的桥面振动响应数据,包含了很多桥梁的几何参数信息,能有效地对结构损伤进行识别。机器学习算法能够挖掘响应数据中的关键信息,捕捉其中线性关系。该文以韶州大桥为背景,建立斜拉桥有限元模型,将多种不同车辆参... 移动车辆荷载作用下采集的桥面振动响应数据,包含了很多桥梁的几何参数信息,能有效地对结构损伤进行识别。机器学习算法能够挖掘响应数据中的关键信息,捕捉其中线性关系。该文以韶州大桥为背景,建立斜拉桥有限元模型,将多种不同车辆参数的两轴货车荷载作用在不同斜拉索小损伤工况下的斜拉桥模型上,模拟计算移动荷载作用下斜拉桥模型的振动响应。采用主成分分析(PCA)技术对加速度数据降维压缩,并结合贝叶斯优化后的最小二乘法支持向量机模型(BO-LSSVM),开展不同荷载组合下斜拉索的损伤定位与定量分析。针对多根拉索损伤预测不准确的情况,提出了将定位标签整合到损伤数据中的方法。结果表明:基于大量的损伤响应数据,BO-LSSVM模型能寻找到最佳的超参数组合,有效分析复杂响应数据,利用移动车辆荷载实现拉索损伤程度的监测分析。利用PCA对加速度响应数据进行降维压缩,在保证预测精准度的同时,提高了机器学习的计算效率,节约了计算资源。且在多损伤数据特征数据中添加定位标签方法有效提高了损伤识别的准确性。该研究为实际工程中的损伤实时监测提供了模型参考与技术理论基础。 展开更多
关键词 斜拉桥 车桥耦合 振动响应 数据压缩 贝叶斯优化 最小二乘法支持向量机 损伤识别
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汽油道路运输罐式车辆停驻点类型识别方法
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作者 周锦婷 袁梦 李帅杰 《公路交通科技》 北大核心 2026年第1期25-32,共8页
【目标】通过对油品运输车辆轨迹停驻点的信息分类和数据处理,以加强其运输途中的安全管控。【方法】本研究基于油品运输车辆轨迹数据,提出了车辆停驻点阈值确定方法,在对停驻点类型标定基础上构建包含停驻点特征、兴趣点特征、停驻类... 【目标】通过对油品运输车辆轨迹停驻点的信息分类和数据处理,以加强其运输途中的安全管控。【方法】本研究基于油品运输车辆轨迹数据,提出了车辆停驻点阈值确定方法,在对停驻点类型标定基础上构建包含停驻点特征、兴趣点特征、停驻类簇特征3个特征子集的停驻行为特征集,分别建立支持向量机模型和随机森林模型,运用网格搜索算法确定最优参数组合,将停驻行为特征集作为自变量,将停驻类型作为因变量,区分车辆归场点、装货点、卸货点和其他点,通过比较4种分类评估指标,对比模型预测性能确定最优分类模型。【结果】包含3个子集的停驻行为特征集能够有效识别停驻点类型;随机森林模型分类性能优于支持向量机模型,分类准确率超过90%;停驻点特征、兴趣点特征、停驻类簇特征3个特征子集中对分类结果影响最大的特征分别是停驻时长、距加油站距离、簇内总计停驻时长;全部特征中对分类结果影响最大的是停驻时长;“是否首末点”与“簇内车辆熵”特征的引入对分类同样有较大贡献。【结论】研究结果可用于确定车辆在途装载状态,分析车辆出行特征,为危险货物运输安全监管提供支持。 展开更多
关键词 智能交通 停驻点类型识别 随机森林模型 轨迹数据 支持向量机模型
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Geostatistical approaches to refinement of digital elevation data
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作者 Jingxiong ZHANG Tao ZHU +1 位作者 Yunwei TANG Wangle ZHANG 《Geo-Spatial Information Science》 SCIE EI 2014年第4期181-189,共9页
Data refinement refers to the processes by which a dataset’s resolution,in particular,the spatial one,is refined,and is thus synonymous to spatial downscaling.Spatial resolution indicates measurement scale and can be... Data refinement refers to the processes by which a dataset’s resolution,in particular,the spatial one,is refined,and is thus synonymous to spatial downscaling.Spatial resolution indicates measurement scale and can be seen as an index for regular data support.As a type of change of scale,data refinement is useful for many scenarios where spatial scales of existing data,desired analyses,or specific applications need to be made commensurate and refined.As spatial data are related to certain data support,they can be conceived of as support-specific realizations of random fields,suggesting that multivariate geostatistics should be explored for refining datasets from their coarser-resolution versions to the finerresolution ones.In this paper,geostatistical methods for downscaling are described,and were implemented using GTOPO30 data and sampled Shuttle Radar Topography Mission data at a site in northwest China,with the latter’s majority grid cells used as surrogate reference data.It was found that proper structural modeling is important for achieving increased accuracy in data refinement;here,structural modeling can be done through proper decomposition of elevation fields into trends and residuals and thereafter.It was confirmed that effects of semantic differences on data refinement can be reduced through properly estimating and incorporating biases in local means. 展开更多
关键词 REFINEMENT elevation data data support variogram deconvolution semantic differences
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某水库溃坝洪水计算分析探讨
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作者 洪文浩 周清勇 +2 位作者 黎佛林 陈结文 万玲 《黑龙江水利科技》 2026年第1期111-115,共5页
溃坝洪水作为引起水库下游灾难性后果的载体,一直是水利科技工作的重点研究对象。为最大限度地减少溃坝导致的人员伤亡和财产损失,文章借助二维浅水方程建立相关模型,对某水库进行了溃坝洪水演进计算分析,对溃坝洪水采用了一、二维耦合... 溃坝洪水作为引起水库下游灾难性后果的载体,一直是水利科技工作的重点研究对象。为最大限度地减少溃坝导致的人员伤亡和财产损失,文章借助二维浅水方程建立相关模型,对某水库进行了溃坝洪水演进计算分析,对溃坝洪水采用了一、二维耦合模拟,以此提高计算成果的精确度和可信度。计算成果与实际地形及变化规律吻合性较好,为该水库制定洪水避险转移方案和应急抢险预案提供了数据支撑。 展开更多
关键词 水库 溃坝 洪水计算 模型 数据支撑
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基于模糊支持向量机的网络多模态数据自适应分类
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作者 王豫欣 曾繁慧 《现代电子技术》 北大核心 2026年第4期52-56,共5页
针对多模态数据结构差异大、数据分布不平衡等问题,提出一种基于模糊支持向量机的网络多模态数据自适应分类方法,从而有效捕捉和利用不同模态数据之间的内在联系,提升分类性能。通过构建双通道特征提取网络,将预处理后的网络多模态数据... 针对多模态数据结构差异大、数据分布不平衡等问题,提出一种基于模糊支持向量机的网络多模态数据自适应分类方法,从而有效捕捉和利用不同模态数据之间的内在联系,提升分类性能。通过构建双通道特征提取网络,将预处理后的网络多模态数据作为输入,上层通道利用CNN捕捉视频图像的深层次特征,下层通道利用TextCNN-GRU学习网络文本数据的上下文语义特征,再对上下层通道提取的特征进行拼接处理,完成多模态数据特征的提取。之后将特征样本作为模糊支持向量机的输入,引入特征样本至类簇中心的距离信息以及特征样本的紧密度信息,计算每个特征样本的模糊隶属度。最后利用带有模糊信息的特征样本训练模糊支持向量机,实现网络多模态数据的分类。实验结果表明:所提方法可实现网络多模态数据的精准分类,各类型数据的分类准确率不低于93.6%;且多模态特征提取能够提供更丰富的数据表征,有利于分类效果的提升。 展开更多
关键词 网络多模态数据 自适应分类 模糊支持向量机 CNN TextCNN-GRU 模糊隶属度
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钢结构地标塔顶部莫比乌斯环关键施工技术
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作者 张钊 《山西建筑》 2026年第1期83-86,共4页
某地标塔高度139.21 m,顶部莫比乌斯环施工存在定位难度大、吊装风险高、临时支撑措施困难等特点。文中以确保莫比乌斯环临时支撑系统的结构安全为出发点,结合MIDAS/Gen 2021有限元软件对临时支撑系统进行结构分析,探明最优的构件设计参... 某地标塔高度139.21 m,顶部莫比乌斯环施工存在定位难度大、吊装风险高、临时支撑措施困难等特点。文中以确保莫比乌斯环临时支撑系统的结构安全为出发点,结合MIDAS/Gen 2021有限元软件对临时支撑系统进行结构分析,探明最优的构件设计参数,确保支撑架系统结构可靠性;由监测结果可知,构件应力比均小于0.9;相对变形均满足刚度要求,挠跨比均小于规范规定的容许值;一系列技术措施确保了结构的顺利施工。 展开更多
关键词 钢结构 莫比乌斯环 有限元模拟 监测数据 支撑结构
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梁家坝水文站水文巡测方案优化探索
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作者 田鸣 《陕西水利》 2026年第1期13-16,共4页
巡测是水文专业人员以巡回流动的方式定期或不定期地对一个地区或流域内水文测站或断面的水文要素所进行的观测作业。目前,全国各地水文部门基本都开展了水文巡测。以无为市梁家坝水文站为例,通过对该站历年降水、最大洪峰流量等水文特... 巡测是水文专业人员以巡回流动的方式定期或不定期地对一个地区或流域内水文测站或断面的水文要素所进行的观测作业。目前,全国各地水文部门基本都开展了水文巡测。以无为市梁家坝水文站为例,通过对该站历年降水、最大洪峰流量等水文特征的深入分析,探索最适合该站的巡测方案。旨在提高水文服务能力和水平,为无为市的水资源管理、防洪减灾以及生态环境保护等工作提供更为精准有效的数据支撑。 展开更多
关键词 水文巡测 水文特征 数据支撑
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