期刊文献+
共找到4,590篇文章
< 1 2 230 >
每页显示 20 50 100
Aspect-Level Sentiment Analysis of Bi-Graph Convolutional Networks Based on Enhanced Syntactic Structural Information
1
作者 Junpeng Hu Yegang Li 《Journal of Computer and Communications》 2025年第1期72-89,共18页
Aspect-oriented sentiment analysis is a meticulous sentiment analysis task that aims to analyse the sentiment polarity of specific aspects. Most of the current research builds graph convolutional networks based on dep... Aspect-oriented sentiment analysis is a meticulous sentiment analysis task that aims to analyse the sentiment polarity of specific aspects. Most of the current research builds graph convolutional networks based on dependent syntactic trees, which improves the classification performance of the models to some extent. However, the technical limitations of dependent syntactic trees can introduce considerable noise into the model. Meanwhile, it is difficult for a single graph convolutional network to aggregate both semantic and syntactic structural information of nodes, which affects the final sentence classification. To cope with the above problems, this paper proposes a bi-channel graph convolutional network model. The model introduces a phrase structure tree and transforms it into a hierarchical phrase matrix. The adjacency matrix of the dependent syntactic tree and the hierarchical phrase matrix are combined as the initial matrix of the graph convolutional network to enhance the syntactic information. The semantic information feature representations of the sentences are obtained by the graph convolutional network with a multi-head attention mechanism and fused to achieve complementary learning of dual-channel features. Experimental results show that the model performs well and improves the accuracy of sentiment classification on three public benchmark datasets, namely Rest14, Lap14 and Twitter. 展开更多
关键词 Aspect-level Sentiment Analysis Sentiment Knowledge Multi-Head Attention Mechanism Graph Convolutional networks
在线阅读 下载PDF
WPD-ResNeSt:Substation Station Level Network Anomaly Traffic Detection Based on Deep Transfer Learning
2
作者 Ting Yang Yucheng Hou +2 位作者 Yachuang Liu Feng Zhai Rongze Niu 《CSEE Journal of Power and Energy Systems》 SCIE EI CSCD 2024年第6期2610-2620,共11页
With the advancement of new infrastructures,the digitalization of the substation communication network has rapidly increased,and its information security risks have become increasingly prominent.Accurate and reliable ... With the advancement of new infrastructures,the digitalization of the substation communication network has rapidly increased,and its information security risks have become increasingly prominent.Accurate and reliable substation communication network flow models and flow anomaly detection methods have become an important means to prevent network security problems and identify network anomalies.The existing substation network analyzers and flow anomaly detection algorithms are usually based on threshold determination,which cannot reflect the inherent characteristics of substation automation flow based on IEC 61850 and have low detection accuracy.To effectively detect abnormal traffic,this paper fully explores the substation network traffic rules,extracts the frequency domain features of the station level network,and designs an abnormal traffic identification model based on the ResNeSt convolutional neural network.Transfer learning is used to solve the problem of insufficient abnormal traffic labeled samples in the substation.Finally,a new method of abnormal traffic detection in smart substation station level communication networks based on deep transfer learning is proposed.The T1-1 substation communication network is constructed on OPNET for abnormal simulations,and the actual network traffic in a 110kV substation is fused with CIC DDoS2019 and KDD99 data sets for the algorithm performance test,respectively.The accuracy reached is 98.73%and 98.95%,indicating that the detection model proposed in this paper has higher detection accuracy than existing algorithms. 展开更多
关键词 Anomaly traffic detection deep learning substation station level communication network traffic model
原文传递
Parameter Method Data Processing for CPⅢ Precise Trigonometric Leveling Network 被引量:1
3
作者 Jianzhang LI Haowen YAN 《Journal of Geodesy and Geoinformation Science》 2020年第3期67-75,共9页
In view of the limitation of the difference method,the adjustment model of CPⅢprecise trigonometric leveling control network based on the parameter method was proposed in the present paper.The experiment results show... In view of the limitation of the difference method,the adjustment model of CPⅢprecise trigonometric leveling control network based on the parameter method was proposed in the present paper.The experiment results show that this model has a simple algorithm and high data utilization,avoids the negative influences caused by the correlation among the data acquired from the difference method and its accuracy is improved compared with the difference method.In addition,the strict weight of CPⅢprecise trigonometric leveling control network was also discussed in this paper.The results demonstrate that the ranging error of trigonometric leveling can be neglected when the vertical angle is less than 3 degrees.The accuracy of CPⅢprecise trigonometric leveling control network has not changed significantly before and after strict weight. 展开更多
关键词 CPⅢleveling control network precise trigonometric leveling parameter method minimum norm quadratic unbiased estimate
在线阅读 下载PDF
Towards efficient deep neural network training by FPGA-based batch-level parallelism 被引量:4
4
作者 Cheng Luo Man-Kit Sit +3 位作者 Hongxiang Fan Shuanglong Liu Wayne Luk Ce Guo 《Journal of Semiconductors》 EI CAS CSCD 2020年第2期51-62,共12页
Training deep neural networks(DNNs)requires a significant amount of time and resources to obtain acceptable results,which severely limits its deployment in resource-limited platforms.This paper proposes DarkFPGA,a nov... Training deep neural networks(DNNs)requires a significant amount of time and resources to obtain acceptable results,which severely limits its deployment in resource-limited platforms.This paper proposes DarkFPGA,a novel customizable framework to efficiently accelerate the entire DNN training on a single FPGA platform.First,we explore batch-level parallelism to enable efficient FPGA-based DNN training.Second,we devise a novel hardware architecture optimised by a batch-oriented data pattern and tiling techniques to effectively exploit parallelism.Moreover,an analytical model is developed to determine the optimal design parameters for the DarkFPGA accelerator with respect to a specific network specification and FPGA resource constraints.Our results show that the accelerator is able to perform about 10 times faster than CPU training and about a third of the energy consumption than GPU training using 8-bit integers for training VGG-like networks on the CIFAR dataset for the Maxeler MAX5 platform. 展开更多
关键词 deep neural network TRAINING FPGA batch-level parallelism
在线阅读 下载PDF
Research on confirmation of basic technological parameters of tension levellers based on neural network and genetic algorithm
5
作者 彭晓晖 徐宏喆 +2 位作者 李盼 王社昌 任玉成 《Journal of Pharmaceutical Analysis》 SCIE CAS 2008年第3期160-163,177,共5页
Confirmation of basic technological parameters of tension levellers is the most important factor of leveling strip. Up to now, most factories have used experts’ experience to decide these parameters, without any esta... Confirmation of basic technological parameters of tension levellers is the most important factor of leveling strip. Up to now, most factories have used experts’ experience to decide these parameters, without any established rule to follow. For better quality of strip, a valid method is needed to decide technological parameters precisely and reasonably. In this paper, a method is used based on neural network and genetic algorithm. Neural network has a good ability to extract rules from work process of tension levellers. Then using neural network, which has learned from a lot of working samples, to be the evaluation of fitness, genetic algorithm could easily find the best or better technological parameters. At the end of this paper, examinations are given to show the effect of this method. 展开更多
关键词 tension levellers neural network genetic algorithm strip flatness
在线阅读 下载PDF
Groundwater Level Prediction Using Artificial Neural Networks: A Case Study in Tra Noc Industrial Zone, Can Tho City, Vietnam 被引量:2
6
作者 Tran Van Ty Le Van Phat Huynh Van Hiep 《Journal of Water Resource and Protection》 2018年第9期870-883,共14页
The objective of this study is to predict groundwater levels (GWLs) under different impact factors using Artificial Neural Network (ANN) for a case study in Tra Noc Industrial Zone, Can Tho City, Vietnam. This can be ... The objective of this study is to predict groundwater levels (GWLs) under different impact factors using Artificial Neural Network (ANN) for a case study in Tra Noc Industrial Zone, Can Tho City, Vietnam. This can be achieved by evaluating the current state of groundwater resources (GWR) exploitation, use and dynamics;setting-up, calibrating and validating the ANN;and then predicting GWLs at different lead times. The results show that GWLs in the study area have been found to reduce rapidly from 2000 to 2015, especially in the Middle-upper Pleistocene (qp2-3) and upper Pleistocene (qp3) due to the over-withdrawals from the enterprises for production purposes. Concerning this problem, an Official Letter of the People’s Committee of Can Tho City was issued and taken into enforcement in 2012 resulting in the reduction of exploitation. The calibrated ANN structures have successfully demonstrated that the GWLs can be predicted considering different impact factors. The predicted results will help to raise awareness and to draw an attention of the local/central government for a clear GWR management policy for the Mekong delta, especially the industrial zones in the urban areas such as Can Tho city. 展开更多
关键词 GROUNDWATER Resources (GWR) GROUNDWATER levels (GWLs) Artificial Neural network (ANN) Prediction TRA NOC Industrial Zone
暂未订购
Artificial Neural Network Modeling of Healthy Risk Level Induced by Aircraft Pollutant Impacts around Soekarno Hatta International Airport 被引量:1
7
作者 Salah Khardi Jermanto Setia Kurniawan +1 位作者 Irwan Katili Setyo Moersidik 《Journal of Environmental Protection》 2013年第8期28-39,共12页
Aircraft pollutant emissions are an important part of sources of pollution that directly or indirectly affect human health and ecosystems. This research suggests an Artificial Neural Network model to determine the hea... Aircraft pollutant emissions are an important part of sources of pollution that directly or indirectly affect human health and ecosystems. This research suggests an Artificial Neural Network model to determine the healthy risk level around Soekarno Hatta International Airport-Cengkareng Indonesia. This ANN modeling is a flexible method, which enables to recognize highly complex non-linear correlations. The network was trained with real measurement data and updated with new measurements, enhancing its quality and making it the ideal method for this research. Measurements of aircraft pollutant emissions are carried out with the aim to be used as input data and to validate the developed model. The obtained results concerned the improved ANN architecture model based on pollutant emissions as input variables. ANN model processes variables—hidden layers—and gives an output variable corresponding to a healthy risk level. This model is characterized by a 4-10-1 scheme. Based on ANN criteria, the best validation performance is achieved at epoch 28 from 34 epochs with the Mean Squared Error (MSE) of 9 × 10-3. The correlation between targets and outputs is confirmed. It validated a close relationship between targets and outputs. The network output errors value approaches zero. Further research is needed with the aim to enlarge the scheme of the ANN model by increasing its input variables. This is one of the major key defining environmental capacities of an airport that should be applied by Indonesian airport authorities. These would institute policies to manage or reduce pollutant emissions considering population and income growth to be socially positive. 展开更多
关键词 AIRCRAFT POLLUTANT Emissions Artificial Neural network HEALTHY Risk level
暂未订购
Network Traffic Generation Based on Statistical Packet-Level Characteristics
8
作者 WANG Dongbin ZHUO Weihan +2 位作者 ZHANG Junhui WU Kexin OUYANG Wen 《China Communications》 SCIE CSCD 2015年第S2期144-148,共5页
Network traffic is very important for testing network equipment, network services, and security products. A new method of generating traffic based on statistical packet-level characteristics is proposed. In every time... Network traffic is very important for testing network equipment, network services, and security products. A new method of generating traffic based on statistical packet-level characteristics is proposed. In every time unit, the generator determines the sent packets number, the type and size of every sent packet according to the statistical characteristics of the original traffic. Then every packet, in which the protocol headers of transport layer, network layer and ethernet layer are encapsulated, is sent via the responding network interface card in the time unit. The results in the experiment show that the correlation coefficients between the bandwidth, the packet number, packet size distribution, the fragment number of the generated network traffic and those of the original traffic are all more than 0.96. The generated traffic and original traffic are very highly related and similar. 展开更多
关键词 network TRAFFIC GENERATION packet-level TRAFFIC CHARACTERISTICS
在线阅读 下载PDF
CMLP: Exploiting Caches at Multiple Levels of Proxies to Enhance Seamless Mobility Support in Information-Centric Networks
9
作者 Haoqiu Huang Lanlan Rui +2 位作者 Weiwei Zheng Danmei Niu Xuesong Qiu 《China Communications》 SCIE CSCD 2016年第10期86-107,共22页
The recent evolution of the Internet towards "Information-centric" transfer modes has renewed the interest in exploiting proxies to enhance seamless mobility. In this work, we focus on the case of multiple l... The recent evolution of the Internet towards "Information-centric" transfer modes has renewed the interest in exploiting proxies to enhance seamless mobility. In this work, we focus on the case of multiple levels of proxies in ICN architectures, in which content requests from mobile subscribers and the corresponding items are proactively cached to these proxies at different levels. Specifically, we present a multiple-level proactive caching model that selects the appropriate subset of proxies at different levels and supports distributed online decision procedures in terms of the tradeoff between delay and cache cost. We show via extensive simulations the reduction of up to 31.63% in the total cost relative to Full Caching, in which caching in all 1-level neighbor proxies is performed, and up to 84.21% relative to No Caching, in which no caching is used. Moreover, the proposed model outperforms other approaches with a flat cache structure in terms of the total cost. 展开更多
关键词 Information-centric networking mobility multiple levels of proxies PUBLISH-SUBSCRIBE
在线阅读 下载PDF
High-Level Portable Programming Language for Optimized Memory Use of Network Processors
10
作者 Yasusi Kanada 《Communications and Network》 2015年第1期55-69,共15页
Network processors (NPs) are widely used for programmable and high-performance networks;however, the programs for NPs are less portable, the number of NP program developers is small, and the development cost is high. ... Network processors (NPs) are widely used for programmable and high-performance networks;however, the programs for NPs are less portable, the number of NP program developers is small, and the development cost is high. To solve these problems, this paper proposes an open, high-level, and portable programming language called “Phonepl”, which is independent from vendor-specific proprietary hardware and software but can be translated into an NP program with high performance especially in the memory use. A common NP hardware feature is that a whole packet is stored in DRAM, but the header is cached in SRAM. Phonepl has a hardware-independent abstraction of this feature so that it allows programmers mostly unconscious of this hardware feature. To implement the abstraction, four representations of packet data type that cover all the packet operations (including substring, concatenation, input, and output) are introduced. Phonepl have been implemented on Octeon NPs used in plug-ins for a network-virtualization environment called the VNode Infrastructure, and several packet-handling programs were evaluated. As for the evaluation result, the conversion throughput is close to the wire rate, i.e., 10 Gbps, and no packet loss (by cache miss) occurs when the packet size is 256 bytes or larger. 展开更多
关键词 network Processors PORTABILITY HIGH-level Language Hardware INDEPENDENCE MEMORY Usage DRAM SRAM network Virtualization
在线阅读 下载PDF
Robust Synchronization in an E/I Network with Medium Synaptic Delay and High Level of Heterogeneity
11
作者 韩芳 王直杰 +1 位作者 范宏 龚涛 《Chinese Physics Letters》 SCIE CAS CSCD 2015年第4期25-28,共4页
It is known that both excitatory and inhibitory neuronal networks can achieve robust synchronization only under certain conditions, such as long synaptic delay or low level of heterogeneity. In this work, robust synch... It is known that both excitatory and inhibitory neuronal networks can achieve robust synchronization only under certain conditions, such as long synaptic delay or low level of heterogeneity. In this work, robust synchronization can be found in an excitatory/inhibitory (E/I) neuronal network with medium synaptie delay and high level of heterogeneity, which often occurs in real neuronal networks. Two effects of post-synaptic potentials (PSP) to network synchronization are presented, and the synaptic contribution of excitatory and inhibitory neurons to robust synchronization in this E/I network is investigated. It is found that both excitatory and inhibitory neurons may contribute to robust synchronization in E/I networks, especially the excitatory PSP has a more positive effect on synchronization in E/I networks than that in excitatory networks. This may explain the strong robustness of synchronization in Eli neuronal networks. 展开更多
关键词 PSP Robust Synchronization in an E/I network with Medium Synaptic Delay and High level of Heterogeneity
暂未订购
Analysis of Lifetime of Large Wireless Sensor Networks Based on Multiple Battery Levels
12
作者 Ruihua ZHANG Zhiping JIA Dongfeng YUAN 《International Journal of Communications, Network and System Sciences》 2008年第2期136-143,共8页
Due to the limited transmission range, data sensed by each sensor has to be forwarded in a multi-hop fashion before being delivered to the sink. The sensors closer to the sink have to forward comparatively more messag... Due to the limited transmission range, data sensed by each sensor has to be forwarded in a multi-hop fashion before being delivered to the sink. The sensors closer to the sink have to forward comparatively more messages than sensors at the periphery of the network,and will deplete their batteries earlier. Besides the loss of the sensing capabilities of the nodes close to the sink, a more serious consequence of the death of the first tier of sensor nodes is the loss of connectivity between the nodes at the periphery of the network and the sink;it makes the wireless networks expire. To alleviate this undesired effect and maximize the useful lifetime of the network, we investigate the energy consumption of different tiers and the effect of multiple battery levels, and demonstrate an attractively simple scheme to redistribute the total energy budget in multiple battery levels by data traffic load. We show by theoretical analysis, as well as simulation, that this substantially improves the network lifetime. 展开更多
关键词 WIRELESS SENSOR networks Energy Efficient network LIFETIME BATTERY level
在线阅读 下载PDF
Water level updating model for flow calculation of river networks
13
作者 Xiao-ling WU Xiao-hua XIANG +1 位作者 Li LI Chuan-hai WANG 《Water Science and Engineering》 EI CAS CSCD 2014年第1期60-69,共10页
Complex water movement and insufficient observation stations are the unfavorable factors in improving the accuracy of flow calculation of river networks. A water level updating model for river networks was set up base... Complex water movement and insufficient observation stations are the unfavorable factors in improving the accuracy of flow calculation of river networks. A water level updating model for river networks was set up based on a three-step method at key nodes, and model correction values were collected from gauge stations. To improve the accuracy of water level and discharge forecasts for the entire network, the discrete coefficients of the Saint-Venant equations for river sections were regarded as the media carrying the correction values from observation locations to other cross-sections of the river network system. To examine the applicability, the updating model was applied to flow calculation of an ideal river network and the Chengtong section of the Yangtze River. Comparison of the forecast results with the observed data demonstrates that this updating model can improve the forecast accuracy in both ideal and real river networks. 展开更多
关键词 plain river network cyclic looped channel network water level updating model hydrodynamic model error correction
在线阅读 下载PDF
三级网络管理模式应用于综合医院院内感染防控的效果评价 被引量:1
14
作者 叶俊 宋昱晨 关志伟 《中国公共卫生管理》 2025年第2期305-308,共4页
目的评估三级网络管理模式在综合医院院内感染(以下简称院感)防控中的应用效果,并探讨院感的影响因素。方法选取2022年1月—2023年12月于金华市人民医院住院的3000例患者作为研究对象,采用区组随机化的方式将患者分为干预组和对照组,每... 目的评估三级网络管理模式在综合医院院内感染(以下简称院感)防控中的应用效果,并探讨院感的影响因素。方法选取2022年1月—2023年12月于金华市人民医院住院的3000例患者作为研究对象,采用区组随机化的方式将患者分为干预组和对照组,每组各1500例。对照组采用常规院感防控措施,干预组在此基础上实施三级网络管理模式。比较两组患者院感发生率、抗生素使用率、医护人员手卫生合格率及患者满意度。采用二元logistic回归分析院感发生的影响因素。结果干预组院感发生率、抗生素使用率及抗菌药物使用强度均明显低于对照组,差异有统计学意义(P<0.05)。年龄≥60岁、糖尿病、住院时间≥14天、抗生素使用率高及手卫生依从性低为院感的独立危险因素(P<0.05)。结论三级网络管理模式可有效降低院感发生率,提升患者满意度。基础疾病、住院时间、抗生素使用率等因素是院感发生的影响因素。今后需针对高危人群制定个性化防控策略,以优化院感防控效果。 展开更多
关键词 三级网络管理模式 院内感染 效果评价
原文传递
Neural Network Based Multi-level Fuzzy Evaluation Model for Mechanical Kinematic Scheme
15
作者 BO Ruifeng,LI Ruiqin (Department of Mechanical Engineering,North University of China,Taiyuan 030051,China) 《武汉理工大学学报》 CAS CSCD 北大核心 2006年第S1期301-306,共6页
To implement a quantificational evaluation for mechanical kinematic scheme more effectively,a multi-level and multi-objective evaluation model is presented using neural network and fuzzy theory. Firstly,the structure ... To implement a quantificational evaluation for mechanical kinematic scheme more effectively,a multi-level and multi-objective evaluation model is presented using neural network and fuzzy theory. Firstly,the structure of evaluation model is constructed according to evaluation indicator system. Then evaluation samples are generated and provided to train this model. Thus it can reflect the relation between attributive value and evaluation result,as well as the weight of evaluation indicator. Once evaluation indicators of each candidate are fuzzily quantified and fed into the trained network model,the corresponding evaluation result is outputted and the best alternative can be selected. Under this model,expert knowledge can be effectively acquired and expressed,and the quantificational evaluation can be implemented for kinematic scheme with multi-level evaluation indicator system. Several key problems on this model are discussed and an illustration has demonstrated that this model is feasible and can be regarded as a new idea for solving kinematic scheme evaluation. 展开更多
关键词 NEURAL network mechanical KINEMATIC SCHEME MULTI-level evaluation model FUZZY
在线阅读 下载PDF
Coseismic responses of groundwater levels in the Three Gorges well-network to the Wenchuan M_S8.0 earthquake
16
作者 Chenglong Liu Guangcai Wang +1 位作者 Weihua Zhang Jiangchang Mei 《Earthquake Science》 CSCD 2009年第2期143-148,共6页
We systematically analyze coseismic responses and post-seismic characteristics of groundwater levels in the Three Gorges well-network to the Ms8.0 Wenchuan earthquake on 12 May 2008. The results indicate that these ch... We systematically analyze coseismic responses and post-seismic characteristics of groundwater levels in the Three Gorges well-network to the Ms8.0 Wenchuan earthquake on 12 May 2008. The results indicate that these characteristics differ among wells. On the conditions of similar borehole configurations, the differences are associated with geological structural sites of wells, burial types of aquifers monitored, and transmissivities of aquifer systems. We explored coseismic and post-seismic step-rise and step-drop mechanical mechanisms and their implication to earthquake prediction. We validated the inference that the residual step-rise zone is a possible earthquake risk zone based on recent seismic activity on the Xiannüshan fault in the area. 展开更多
关键词 well level coseismic response Three Gorges well-network Wenchuan earthquake post-seismic step
在线阅读 下载PDF
多通道句法门控图神经网络用于句子级情感分析 被引量:1
17
作者 张吴波 邹旺 +2 位作者 熊黎 戴顺鄂 吴文欢 《计算机工程与应用》 北大核心 2025年第8期135-144,共10页
情感分析技术是自然语言处理领域的一项重要任务。然而,现阶段文档级图神经网络的图构建复杂且需要占用大量的内存资源。在线评论文本一般由短句组成,文档级图神经网络进行情感分析的效率较低。此外,现有工作中句子级图神经网络未能充... 情感分析技术是自然语言处理领域的一项重要任务。然而,现阶段文档级图神经网络的图构建复杂且需要占用大量的内存资源。在线评论文本一般由短句组成,文档级图神经网络进行情感分析的效率较低。此外,现有工作中句子级图神经网络未能充分结合文本的单词特征、依存特征和词性特征。针对以上问题,提出一种多通道句法门控图神经网络的句子级情感分析方法(MSGNN)。该模型以句子的依存句法关系图为骨架,词性特征、单词特征和依存特征作为节点特征信息;利用三通道的门控图神经网络分别学习三种特征;采用图卷积神经网络聚合节点的特征信息。在SST-1、SST-2、MR三种基准数据集上的实验结果表明该模型相比基线模型的性能有所提升。 展开更多
关键词 情感分析 句子级图神经网络 依存特征 门控图神经网络
在线阅读 下载PDF
飞机总装的现场级工业网络系统:架构、关键技术及应用
18
作者 关新平 温晓婧 +2 位作者 金天恺 王淑玲 陈彩莲 《自动化学报》 北大核心 2025年第10期2147-2162,共16页
面对复杂系统装配对高精度、高时效协同的迫切需求,飞机总装制造亟需构建具备感知−传输−控制一体化能力的现场级工业网络系统.为此,本文率先建立现场级网络控制系统容量模型,提出双向融合−协同管控的工业互联网新型架构.围绕感知、传输... 面对复杂系统装配对高精度、高时效协同的迫切需求,飞机总装制造亟需构建具备感知−传输−控制一体化能力的现场级工业网络系统.为此,本文率先建立现场级网络控制系统容量模型,提出双向融合−协同管控的工业互联网新型架构.围绕感知、传输、计算与控制的全链条任务闭环,系统构建多维时效性综合评价指标体系,深入探索多域异构资源的联合调度与协同优化机制.最后,面向飞机总装过程中活动面动态测量与多工序协同优化,设计并实现高保真数字孪生验证平台,有效支撑了理论模型、控制策略与实际部署之间的闭环映射. 展开更多
关键词 现场级工业网络系统 感知−传输−控制一体化 系统容量 综合指标 联合设计
在线阅读 下载PDF
基于多层次深度神经网络的相对论返波管优化技术 被引量:1
19
作者 陈再高 史雪婷 +4 位作者 王建国 梁闪闪 唐泽华 陈柯 杨超 《现代应用物理》 2025年第1期158-164,共7页
针对相对论返波管优化问题,提出并建立了一种基于数据驱动的深度神经网络模型的相对论返波管优化方法。选取相对论返波管的结构或电参数作为待优化参数,通过全电磁粒子模拟软件生成不同待优化参数下对应的工作特性参数,生成低维度训练... 针对相对论返波管优化问题,提出并建立了一种基于数据驱动的深度神经网络模型的相对论返波管优化方法。选取相对论返波管的结构或电参数作为待优化参数,通过全电磁粒子模拟软件生成不同待优化参数下对应的工作特性参数,生成低维度训练数据集和高维度训练数据集;构建多层次深度神经网络,将低层深度神经网络的输出作为高层深度神经网络的输入,实现神经网络之间的互连。数值计算结果表明,多层次深度神经网络的预测结果与全电磁粒子模拟结果的相对偏差小于2%,二者计算结果吻合较好。该方法克服了深度神经网络在样本数据较少时预测结果精度不高的难题,得到较高精度的优化结果,可为相对论返波管设计提供参考。 展开更多
关键词 数据驱动 相对论返波管 全电磁粒子模拟算法 多层次深度神经网络
在线阅读 下载PDF
国家高等级水准网观测成果质量分析与提升
20
作者 杨绪峰 陈宇恒 田宗彪 《工程勘察》 2025年第8期75-79,共5页
高程基准是基础性测绘工作的基础,也是国民经济、社会发展、国家安全等建设的重要基础。本文阐述了国家高等级水准网观测成果的检验内容与方法,总结国家高等级水准网的特点及检查重点,分析近几年国家一、二等水准观测成果中的典型质量问... 高程基准是基础性测绘工作的基础,也是国民经济、社会发展、国家安全等建设的重要基础。本文阐述了国家高等级水准网观测成果的检验内容与方法,总结国家高等级水准网的特点及检查重点,分析近几年国家一、二等水准观测成果中的典型质量问题,并对成果质量提升给出思路和建议。 展开更多
关键词 一、二等级水准 水准网观测 质量检验 检验方法 国产电子水准仪 质量提升
原文传递
上一页 1 2 230 下一页 到第
使用帮助 返回顶部