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Image super‐resolution via dynamic network 被引量:4
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作者 Chunwei Tian Xuanyu Zhang +2 位作者 Qi Zhang Mingming Yang Zhaojie Ju 《CAAI Transactions on Intelligence Technology》 SCIE EI 2024年第4期837-849,共13页
Convolutional neural networks depend on deep network architectures to extract accurate information for image super‐resolution.However,obtained information of these con-volutional neural networks cannot completely exp... Convolutional neural networks depend on deep network architectures to extract accurate information for image super‐resolution.However,obtained information of these con-volutional neural networks cannot completely express predicted high‐quality images for complex scenes.A dynamic network for image super‐resolution(DSRNet)is presented,which contains a residual enhancement block,wide enhancement block,feature refine-ment block and construction block.The residual enhancement block is composed of a residual enhanced architecture to facilitate hierarchical features for image super‐resolution.To enhance robustness of obtained super‐resolution model for complex scenes,a wide enhancement block achieves a dynamic architecture to learn more robust information to enhance applicability of an obtained super‐resolution model for varying scenes.To prevent interference of components in a wide enhancement block,a refine-ment block utilises a stacked architecture to accurately learn obtained features.Also,a residual learning operation is embedded in the refinement block to prevent long‐term dependency problem.Finally,a construction block is responsible for reconstructing high‐quality images.Designed heterogeneous architecture can not only facilitate richer structural information,but also be lightweight,which is suitable for mobile digital devices.Experimental results show that our method is more competitive in terms of performance,recovering time of image super‐resolution and complexity.The code of DSRNet can be obtained at https://github.com/hellloxiaotian/DSRNet. 展开更多
关键词 CNN dynamic network image super‐resolution lightweight network
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Optimisation of sparse deep autoencoders for dynamic network embedding
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作者 Huimei Tang Yutao Zhang +4 位作者 Lijia Ma Qiuzhen Lin Liping Huang Jianqiang Li Maoguo Gong 《CAAI Transactions on Intelligence Technology》 2024年第6期1361-1376,共16页
Network embedding(NE)tries to learn the potential properties of complex networks represented in a low-dimensional feature space.However,the existing deep learningbased NE methods are time-consuming as they need to tra... Network embedding(NE)tries to learn the potential properties of complex networks represented in a low-dimensional feature space.However,the existing deep learningbased NE methods are time-consuming as they need to train a dense architecture for deep neural networks with extensive unknown weight parameters.A sparse deep autoencoder(called SPDNE)for dynamic NE is proposed,aiming to learn the network structures while preserving the node evolution with a low computational complexity.SPDNE tries to use an optimal sparse architecture to replace the fully connected architecture in the deep autoencoder while maintaining the performance of these models in the dynamic NE.Then,an adaptive simulated algorithm to find the optimal sparse architecture for the deep autoencoder is proposed.The performance of SPDNE over three dynamical NE models(i.e.sparse architecture-based deep autoencoder method,DynGEM,and ElvDNE)is evaluated on three well-known benchmark networks and five real-world networks.The experimental results demonstrate that SPDNE can reduce about 70%of weight parameters of the architecture for the deep autoencoder during the training process while preserving the performance of these dynamical NE models.The results also show that SPDNE achieves the highest accuracy on 72 out of 96 edge prediction and network reconstruction tasks compared with the state-of-the-art dynamical NE algorithms. 展开更多
关键词 deep autoencoder dynamic networks low-dimensional feature space network embedding sparse structure
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Evaluating the resource management and profitability efficiencies of US commercial banks from a dynamic network perspective
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作者 Qian Long Kweh Wen-Min Lu +1 位作者 Kaoru Tone Hsian-Ming Liu 《Financial Innovation》 2024年第1期4081-4100,共20页
The central concept of strategic benchmarking is resource management efficiency,which ultimately results in profitability.However,little is known about performance measurement from resource-based perspectives.This stu... The central concept of strategic benchmarking is resource management efficiency,which ultimately results in profitability.However,little is known about performance measurement from resource-based perspectives.This study uses the data envelopment analysis(DEA)model with a dynamic network structure to measure the resource management and profitability efficiencies of 287 US commercial banks from 2010 to 2020.Furthermore,we provide frontier projections and incorporate five variables,namely capital adequacy,asset quality,management quality,earning ability,and liquidity(i.e.,the CAMEL ratings).The results revealed that the room for improvement in bank performance is 55.4%.In addition,we found that the CAMEL ratings of efficient banks are generally higher than those of inefficient banks,and management quality,earnings quality,and liquidity ratios positively contribute to bank performance.Moreover,big banks are generally more efficient than small banks.Overall,this study continues the current heated debate on performance measurement in the banking industry,with a particular focus on the DEA application to answer the fundamental question of why resource management efficiency reflects benchmark firms and provides insights into how efficient management of CAMEL ratings would help in improving their performance. 展开更多
关键词 Performance evaluation dynamic network data envelopment analysis CAMEL ratings Resource management efficiency Profitability efficiency
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Matrix expression and vaccination control for epidemic dynamics over dynamic networks 被引量:8
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作者 Peilian GUO Yuzhen WANG 《Control Theory and Technology》 EI CSCD 2016年第1期39-48,共10页
This paper investigates epidemic dynamics over dynamic networks via the approach of semi-tensor product of matrices. First, a formal susceptible-infected-susceptible epidemic dynamic model over dynamic networks (SISE... This paper investigates epidemic dynamics over dynamic networks via the approach of semi-tensor product of matrices. First, a formal susceptible-infected-susceptible epidemic dynamic model over dynamic networks (SISED-DN) is given. Second, based on a class of determinate co-evolutionary rule, the matrix expressions are established for the dynamics of individual states and network topologies, respectively. Then, all possible final spreading equilibria are obtained for any given initial epidemic state and network topology by the matrix expression. Third, a sufficient and necessary condition of the existence of state feedback vaccination control is presented to make every individual susceptible. The study of illustrative examples shows the effectiveness of our new results. 展开更多
关键词 Epidemic dynamics dynamic network vaccination control semi-tensor product of matrices
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Algebraic form and analysis of SIR epidemic dynamics over probabilistic dynamic networks
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作者 Hongxing Yuan Zengqiang Chen +2 位作者 Zhipeng Zhang Rui Zhu Zhongxin Liu 《Control Theory and Technology》 EI CSCD 2023年第4期602-611,共10页
The outbreak of corona virus disease 2019 has profoundly affected people’s way of life.It is increasingly necessary to investigate epidemics over social networks.This paper studies susceptible-infected-removed(SIR)ep... The outbreak of corona virus disease 2019 has profoundly affected people’s way of life.It is increasingly necessary to investigate epidemics over social networks.This paper studies susceptible-infected-removed(SIR)epidemics via the semi-tensor product.First,a formal susceptible-infected-removed epidemic dynamic model over probabilistic dynamic networks(SIRED-PDN)is given.Based on an evolutionary rule,the algebraic form for the dynamics of individual states and network topologies is given,respectively.Second,the SIRED-PDN can be described by a probabilistic mix-valued logical network.After providing an algorithm,all possible final spreading equilibria can be obtained for any given initial epidemic state and network topology by seeking attractors of the network.And the shortest time for all possible initial epidemic state and network topology profiles to evolve to the final spreading equilibria can be obtained by seeking the transient time of the network.Finally,an illustrative example is given to show the effectiveness of our model. 展开更多
关键词 SIR epidemic Probabilistic dynamic networks Final spreading equilibria Semi-tensor product of matrices Algebraic form
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Movement-assisted service composition optimization in dynamic networks
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作者 赵耀培 Yang Yang Mi Zhenqiang 《High Technology Letters》 EI CAS 2013年第2期176-181,共6页
The mobility of service providers brings new features into the research of dynamic network based service composition.From an optimistic perspective,the mobility of services could benefit the optimization of service co... The mobility of service providers brings new features into the research of dynamic network based service composition.From an optimistic perspective,the mobility of services could benefit the optimization of service composition,if properly handled.Therefore,the impacts of node mobility on the dynamic network based service composition are investigated.Then,a movement-assisted optimization method,namely MASCO,is proposed to improve the performance of the composited services by minimizing the length of data stream and the hop-counts of the service routes in the underlying networks.The correctness and efficiency of the proposed method are then verified through theoretical analysis and computer simulations. 展开更多
关键词 service composition dynamic networks motion control service optimization re-versed current
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Major impact of queue-rule choice on the performance of dynamic networks with limited buffer size
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作者 Xiang Ling Xiao-Kun Wang +3 位作者 Jun-Jie Chen Dong Liu Kong-Jin Zhu Ning Guo 《Chinese Physics B》 SCIE EI CAS CSCD 2020年第1期495-500,共6页
We investigate the similarities and differences among three queue rules,the first-in-first-out(FIFO)rule,last-in-firstout(LIFO)rule and random-in-random-out(RIRO)rule,on dynamical networks with limited buffer size.In ... We investigate the similarities and differences among three queue rules,the first-in-first-out(FIFO)rule,last-in-firstout(LIFO)rule and random-in-random-out(RIRO)rule,on dynamical networks with limited buffer size.In our network model,nodes move at each time step.Packets are transmitted by an adaptive routing strategy,combining Euclidean distance and node load by a tunable parameter.Because of this routing strategy,at the initial stage of increasing buffer size,the network density will increase,and the packet loss rate will decrease.Packet loss and traffic congestion occur by these three rules,but nodes keep unblocked and lose no packet in a larger buffer size range on the RIRO rule networks.If packets are lost and traffic congestion occurs,different dynamic characteristics are shown by these three queue rules.Moreover,a phenomenon similar to Braess’paradox is also found by the LIFO rule and the RIRO rule. 展开更多
关键词 dynamical network queue rule buffer size traffic congestion
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Estimation of peer pressure in dynamic homogeneous social networks
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作者 Jie Liu Pengyi Wang +1 位作者 Jiayang Zhao Yu Dong 《中国科学技术大学学报》 北大核心 2025年第5期36-49,35,I0001,I0002,共17页
Social interaction with peer pressure is widely studied in social network analysis.Game theory can be utilized to model dynamic social interaction,and one class of game network models assumes that people’s decision p... Social interaction with peer pressure is widely studied in social network analysis.Game theory can be utilized to model dynamic social interaction,and one class of game network models assumes that people’s decision payoff functions hinge on individual covariates and the choices of their friends.However,peer pressure would be misidentified and induce a non-negligible bias when incomplete covariates are involved in the game model.For this reason,we develop a generalized constant peer effects model based on homogeneity structure in dynamic social networks.The new model can effectively avoid bias through homogeneity pursuit and can be applied to a wider range of scenarios.To estimate peer pressure in the model,we first present two algorithms based on the initialize expand merge method and the polynomial-time twostage method to estimate homogeneity parameters.Then we apply the nested pseudo-likelihood method and obtain consistent estimators of peer pressure.Simulation evaluations show that our proposed methodology can achieve desirable and effective results in terms of the community misclassification rate and parameter estimation error.We also illustrate the advantages of our model in the empirical analysis when compared with a benchmark model. 展开更多
关键词 dynamic network game theory HOMOGENEITY peer pressure social interaction
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DyNDG:Identifying Leukemia-related Genes Based on Time-series Dynamic Network by Integrating Differential Genes
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作者 Jin A Ju Xiang +3 位作者 Xiangmao Meng Yue Sheng Hongling Peng Min Li 《Genomics, Proteomics & Bioinformatics》 2025年第2期179-195,共17页
Leukemia is a malignant disease characterized by progressive accumulation with high morbidity and mortality rates,and investigating its disease genes is crucial for understanding its etiology and pathogenesis.Network ... Leukemia is a malignant disease characterized by progressive accumulation with high morbidity and mortality rates,and investigating its disease genes is crucial for understanding its etiology and pathogenesis.Network propagation methods have emerged and been widely employed in disease gene prediction,but most of them focus on static biological networks,which hinders their applicability and effectiveness in the study of progressive diseases.Moreover,there is currently a lack of special algorithms for the identification of leukemia disease genes.Here,we proposed a novel Dynamic Network-based model integrating Differentially expressed Genes(DyNDG)to identify leukemia-related genes.Initially,we constructed a time-series dynamic network to model the development trajectory of leukemia.Then,we built a background-temporal multilayer network by integrating both the dynamic network and the static background network,which was initialized with differentially expressed genes at each stage.To quantify the associations between genes and leukemia,we extended a random walk process to the background-temporal multilayer network.The results demonstrate that DyNDG achieves superior accuracy compared to several state-of-the-art methods.Moreover,after excluding housekeeping genes,DyNDG yields a set of promising candidate genes associated with leukemia progression or potential biomarkers,indicating the value of dynamic network information in identifying leukemia-related genes.The implementation of DyNDG is available at both https://ngdc.cncb.ac.cn/biocode/tool/BT7617 and https://github.com/CSUBioGroup/DyNDG. 展开更多
关键词 LEUKEMIA dynamic network Random walk Differentially expressed gene Disease gene prediction
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Analysis of the SEIR mean-field model in dynamic networks under intervention
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作者 Jiangmin Li Zhen Jin Ming Tang 《Infectious Disease Modelling》 2025年第3期850-874,共25页
For emerging respiratory infectious diseases like COVID-19,non-pharmaceutical interventions such as isolation are crucial for controlling the spread.From the perspective of network transmission,non-pharmaceutical inte... For emerging respiratory infectious diseases like COVID-19,non-pharmaceutical interventions such as isolation are crucial for controlling the spread.From the perspective of network transmission,non-pharmaceutical interventions like isolation alter the degree distribution and other topological structures of the network,thereby controlling the spread of the infectious disease.In this paper,we establish a SEIR mean-field propagation dynamics model for the synchronous evolution of dynamic networks caused by propagation and tracing isolation.We employ the reducing-dimension method to convert the mean-field model in networks into an equivalent and simpler low-dimension model,and then calculate the exact expression of the final size.In addition,we get the differential equations of the degree distribution over time in dynamic networks under tracing isolation and the relationships between the first and second moment of the dynamic network.While the degree of a node remains constant regardless of its state in many previous studies,this paper takes into account that the degree of each node changes over time whatever its state under the disease spread and intervention measures. 展开更多
关键词 Tracing isolation dynamic network The final size Degree distribution
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In the flow of connectivity:A dynamic network analysis of Europe’s air transportation system
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作者 Katrin Kolker Emily Stoebke Klaus Lütjens 《Journal of the Air Transport Research Society》 2025年第1期268-283,共16页
The topological structure of the air transport network is complex and can be analyzed with different approaches,measures and perspectives.In this study a dynamic network analysis is utilized and an additional function... The topological structure of the air transport network is complex and can be analyzed with different approaches,measures and perspectives.In this study a dynamic network analysis is utilized and an additional functional layer,passenger flows,is defined to analyze the flow of connectivity.Therefore,the approach provides additional and differentiated results to assess the European air transport network.The study is based on a time series of monthly European demand and schedule data for the years 2010-2023.This makes the study relevant for the recent evaluation of the European air transport network.The study aims to measure the connectivity of the intra-European network and how this connectivity changes over time.The view on connectivity is extended from accessibility and connectivity to two additional perspectives,competition and robustness.The flow of connec-tivity is assessed using dynamic network analysis,which identifies trends,standard deviation and mean absolute change.This allows comparison of the entire network over time as well as comparisons between airports.This paper introduces a framework that integrates and categorizes a broad range of network analysis measures.It provides a foundation for future developments and practical applications across diverse use cases and other networks.The study demonstrates that the connectivity of the network undergoes changes over time,both in terms of trend and in terms of similarity between airports,with differences evident in the four different perspectives.The accessibility among airports is becoming more uniform,indicating a convergence in connectivity measures.At the same time,airports are becoming increasingly interconnected with less relative importance of hubs.How-ever,the passenger utilization becomes more diverse.Competition among airports has been steadily increasing.Additionally,there is a correlation between demand,competition,and the network’s structure.In less competitive markets,there are fewer travelers and reduced capacity,and airports often exhibit weaker centrality within the network. 展开更多
关键词 dynamic network analysis Structure and function of airline networks Connectivity of European air transport network
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DIGNN-A:Real-Time Network Intrusion Detection with Integrated Neural Networks Based on Dynamic Graph
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作者 Jizhao Liu Minghao Guo 《Computers, Materials & Continua》 SCIE EI 2025年第1期817-842,共26页
The increasing popularity of the Internet and the widespread use of information technology have led to a rise in the number and sophistication of network attacks and security threats.Intrusion detection systems are cr... The increasing popularity of the Internet and the widespread use of information technology have led to a rise in the number and sophistication of network attacks and security threats.Intrusion detection systems are crucial to network security,playing a pivotal role in safeguarding networks from potential threats.However,in the context of an evolving landscape of sophisticated and elusive attacks,existing intrusion detection methodologies often overlook critical aspects such as changes in network topology over time and interactions between hosts.To address these issues,this paper proposes a real-time network intrusion detection method based on graph neural networks.The proposedmethod leverages the advantages of graph neural networks and employs a straightforward graph construction method to represent network traffic as dynamic graph-structured data.Additionally,a graph convolution operation with a multi-head attention mechanism is utilized to enhance the model’s ability to capture the intricate relationships within the graph structure comprehensively.Furthermore,it uses an integrated graph neural network to address dynamic graphs’structural and topological changes at different time points and the challenges of edge embedding in intrusion detection data.The edge classification problem is effectively transformed into node classification by employing a line graph data representation,which facilitates fine-grained intrusion detection tasks on dynamic graph node feature representations.The efficacy of the proposed method is evaluated using two commonly used intrusion detection datasets,UNSW-NB15 and NF-ToN-IoT-v2,and results are compared with previous studies in this field.The experimental results demonstrate that our proposed method achieves 99.3%and 99.96%accuracy on the two datasets,respectively,and outperforms the benchmark model in several evaluation metrics. 展开更多
关键词 Intrusion detection graph neural networks attention mechanisms line graphs dynamic graph neural networks
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Delay bounded routing with the maximum belief degree for dynamic uncertain networks
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作者 MA Ji KANG Rui +3 位作者 LI Ruiying ZHANG Qingyuan LIU Liang WANG Xuewang 《Journal of Systems Engineering and Electronics》 2025年第1期127-138,共12页
Delay aware routing is now widely used to provide efficient network transmission. However, for newly developing or developed mobile communication networks(MCN), only limited delay data can be obtained. In such a netwo... Delay aware routing is now widely used to provide efficient network transmission. However, for newly developing or developed mobile communication networks(MCN), only limited delay data can be obtained. In such a network, the delay is with epistemic uncertainty, which makes the traditional routing scheme based on deterministic theory or probability theory not applicable. Motivated by this problem, the MCN with epistemic uncertainty is first summarized as a dynamic uncertain network based on uncertainty theory, which is widely applied to model epistemic uncertainties. Then by modeling the uncertain end-toend delay, a new delay bounded routing scheme is proposed to find the path with the maximum belief degree that satisfies the delay threshold for the dynamic uncertain network. Finally, a lowEarth-orbit satellite communication network(LEO-SCN) is used as a case to verify the effectiveness of our routing scheme. It is first modeled as a dynamic uncertain network, and then the delay bounded paths with the maximum belief degree are computed and compared under different delay thresholds. 展开更多
关键词 dynamic uncertain network uncertainty theory epistemic uncertainty delay bounded routing maximum belief degree
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A Dynamic Social Network Graph Anonymity Scheme with Community Structure Protection
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作者 Yuanjing Hao Xuemin Wang +2 位作者 Liang Chang Long Li Mingmeng Zhang 《Computers, Materials & Continua》 2025年第2期3131-3159,共29页
Dynamic publishing of social network graphs offers insights into user behavior but brings privacy risks, notably re-identification attacks on evolving data snapshots. Existing methods based on -anonymity can mitigate ... Dynamic publishing of social network graphs offers insights into user behavior but brings privacy risks, notably re-identification attacks on evolving data snapshots. Existing methods based on -anonymity can mitigate these attacks but are cumbersome, neglect dynamic protection of community structure, and lack precise utility measures. To address these challenges, we present a dynamic social network graph anonymity scheme with community structure protection (DSNGA-CSP), which achieves the dynamic anonymization process by incorporating community detection. First, DSNGA-CSP categorizes communities of the original graph into three types at each timestamp, and only partitions community subgraphs for a specific category at each updated timestamp. Then, DSNGA-CSP achieves intra-community and inter-community anonymization separately to retain more of the community structure of the original graph at each timestamp. It anonymizes community subgraphs by the proposed novel -composition method and anonymizes inter-community edges by edge isomorphism. Finally, a novel information loss metric is introduced in DSNGA-CSP to precisely capture the utility of the anonymized graph through original information preservation and anonymous information changes. Extensive experiments conducted on five real-world datasets demonstrate that DSNGA-CSP consistently outperforms existing methods, providing a more effective balance between privacy and utility. Specifically, DSNGA-CSP shows an average utility improvement of approximately 30% compared to TAKG and CTKGA for three dynamic graph datasets, according to the proposed information loss metric IL. 展开更多
关键词 dynamic social network graph k-composition anonymity community structure protection graph publishing security and privacy
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Accelerated proton transport modulates dynamic hydrogen bonding networks in eutectic gel electrolytes for low-temperature aqueous Zn-metal batteries
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作者 Baonian Zhu Yuefeng Yan +8 位作者 Jingzhe Hong Yuhao Xia Meixiu Song Xiaoshuang Wang Yanan Liu Bo Zhong Dongdong Liu Tao Zhang Xiaoxiao Huang 《Journal of Energy Chemistry》 2025年第10期325-336,共12页
Aqueous Zn-metal batteries(AZMBs)performance is hampered by freezing water at low temperatures,which hampers their multi-scenario application.Hydrogen bonds(HBs)play a pivotal role in water freezing,and proton transpo... Aqueous Zn-metal batteries(AZMBs)performance is hampered by freezing water at low temperatures,which hampers their multi-scenario application.Hydrogen bonds(HBs)play a pivotal role in water freezing,and proton transport is indispensable for the establishment of HBs.Here,the accelerated proton transport modulates the dynamic hydrogen bonding network of a Zn(BF4)2/EMIMBF4impregnated polyacrylamide/poly(vinyl alcohol)/xanthan gum dual network eutectic gel electrolyte(PPX-ILZSE)for lowtemperature AZMBs.The PPX-ILZSE forms more HBs,shorter HBs lifetimes,higher tetrahedral entropy,and faster desolvation processes,as demonstrated by experimental and theoretical calculations.This enhanced dynamic proton transport promotes rapid cycling of HBs formation-failure,and for polyaniline cathode(PANI)abundant redox sites of proton,confers excellent low temperature electrochemical performance to the Zn//PANI full cell.Specific capacities for 1000 and 5000 cycles at 1 and 5 A g^(-1)were149.8 and 128.4 m A h g^(-1)at room temperature,respectively.Furthermore,specific capacities of 131.1 mA hg^(-1)(92.4%capacity retention)and 0.0066%capacity decay per lap were achieved for 3000and 3500 laps at-30 and 40℃,respectively,at 0.5 A g^(-1).Furthermore,in-situ protective layer of ZnOHF nano-arrays on the Zn anode surface to eliminate dendrite growth and accelerate Zn-ions adsorption and charge transfer. 展开更多
关键词 Aqueous Zn-metal battery Anti-freezing eutectic gel electrolyte Proton transport dynamic hydrogen bonding network Polyaniline cathode
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Identifying infection origins in evolving networks: a comprehensive review
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作者 Narjis Fatima Syed Afzal Murtaza Rizvi 《Medical Data Mining》 2025年第2期63-76,共14页
This study focuses on the detection of infection sources in dynamic networks,which is very important for network analysis,cybersecurity,and public health.We aim to improve source detection in complex networks using da... This study focuses on the detection of infection sources in dynamic networks,which is very important for network analysis,cybersecurity,and public health.We aim to improve source detection in complex networks using data,computational advances,and machine learning to improve epidemic response and public health protection.We explore dynamic network analysis and recent algorithms for infection source detection,emphasizing data integration and machine learning.Our approach involves reviewing existing research,identifying gaps,and proposing dynamic network-based infectious disease source detection strategies.Our study highlights evolving infection source detection methods and underscores the potential of machine learning and artificial intelligence.We acknowledge ongoing challenges due to network complexity and outline promising research directions.Detecting infection sources in dynamic networks is vital.This study emphasizes the need for improved techniques and technology integration to address complexities effectively.Advancements will empower us to identify and mitigate epidemics,reducing their societal and public health impacts. 展开更多
关键词 source detection INFECTION dynamic network machine learning deep learning disease infection network
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A Lightweight Super-Resolution Network for Infrared Images Based on an Adaptive Attention Mechanism
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作者 Mengke Tang Yong Gan +1 位作者 Yifan Zhang Xinxin Gan 《Computers, Materials & Continua》 2025年第8期2699-2716,共18页
Infrared imaging technology has been widely adopted in various fields,such as military reconnaissance,medical diagnosis,and security monitoring,due to its excellent ability to penetrate smoke and fog.However,the preva... Infrared imaging technology has been widely adopted in various fields,such as military reconnaissance,medical diagnosis,and security monitoring,due to its excellent ability to penetrate smoke and fog.However,the prevalent low resolution of infrared images severely limits the accurate interpretation of their contents.In addition,deploying super-resolution models on resource-constrained devices faces significant challenges.To address these issues,this study proposes a lightweight super-resolution network for infrared images based on an adaptive attention mechanism.The network’s dynamic weighting module automatically adjusts the weights of the attention and nonattention branch outputs based on the network’s characteristics at different levels.Among them,the attention branch is further subdivided into pixel attention and brightness-texture attention,which are specialized for extracting the most informative features in infrared images.Meanwhile,the non-attention branch supplements the extraction of those neglected features to enhance the comprehensiveness of the features.Through ablation experiments,we verify the effectiveness of the proposed module.Finally,through experiments on two datasets,FLIR and Thermal101,qualitative and quantitative results demonstrate that the model can effectively recover high-frequency details of infrared images and significantly improve image resolution.In detail,compared with the suboptimal method,we have reduced the number of parameters by 30%and improved the model performance.When the scale factor is 2,the peak signal-tonoise ratio of the test datasets FLIR and Thermal101 is improved by 0.09 and 0.15 dB,respectively.When the scale factor is 4,it is improved by 0.05 and 0.09 dB,respectively.In addition,due to the lightweight design of the network structure,it has a low computational cost.It is suitable for deployment on edge devices,thus effectively enhancing the sensing performance of infrared imaging devices. 展开更多
关键词 Infrared image SUPER-RESOLUTION convolutional neural network attention mechanism dynamic network
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Reconfiguration and Optimal Positioning of Multiple-Point Capacitors in a High-Voltage Distribution Network Using the NSGAII
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作者 Arouna Oloulade Richard Gilles Agbokpanzo +6 位作者 Maurel Richy Aza-Gnandji Hassane Ousseyni Ibrahim Moussa Gonda Eméric Tokoudagba Juliano Sétondji François-Xavier Fifatin Adolphe Moukengue Imano 《Open Journal of Applied Sciences》 2025年第2期501-516,共16页
The distribution networks sometimes suffer from excessive losses and voltage violations in densely populated areas. The aim of the present study is to improve the performance of a distribution network by successively ... The distribution networks sometimes suffer from excessive losses and voltage violations in densely populated areas. The aim of the present study is to improve the performance of a distribution network by successively applying mono-capacitor positioning, multiple positioning and reconfiguration processes using GA-based algorithms implemented in a Matlab environment. From the diagnostic study of this network, it was observed that a minimum voltage of 0.90 pu induces a voltage deviation of 5.26%, followed by active and reactive losses of 425.08 kW and 435.09 kVAR, respectively. Single placement with the NSGAII resulted in the placement of a 3000 kVAR capacitor at node 128, which proved to be the invariably neuralgic point. Multiple placements resulted in a 21.55% reduction in losses and a 0.74% regression in voltage profile performance. After topology optimization, the loss profile improved by 65.08% and the voltage profile improved by 1.05%. Genetic algorithms are efficient and effective tools for improving the performance of distribution networks, whose degradation is often dynamic due to the natural variability of loads. 展开更多
关键词 RECONFIGURATION Capacitor Bank NSGA II dynamic network Degradation Distribution network Reliability
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Influencer identification of dynamical networks based on an information entropy dimension reduction method
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作者 段东立 纪思源 袁紫薇 《Chinese Physics B》 SCIE EI CAS CSCD 2024年第4期375-384,共10页
Identifying critical nodes or sets in large-scale networks is a fundamental scientific problem and one of the key research directions in the fields of data mining and network science when implementing network attacks,... Identifying critical nodes or sets in large-scale networks is a fundamental scientific problem and one of the key research directions in the fields of data mining and network science when implementing network attacks, defense, repair and control.Traditional methods usually begin from the centrality, node location or the impact on the largest connected component after node destruction, mainly based on the network structure.However, these algorithms do not consider network state changes.We applied a model that combines a random connectivity matrix and minimal low-dimensional structures to represent network connectivity.By using mean field theory and information entropy to calculate node activity,we calculated the overlap between the random parts and fixed low-dimensional parts to quantify the influence of node impact on network state changes and ranked them by importance.We applied this algorithm and the proposed importance algorithm to the overall analysis and stratified analysis of the C.elegans neural network.We observed a change in the critical entropy of the network state and by utilizing the proposed method we can calculate the nodes that indirectly affect muscle cells through neural layers. 展开更多
关键词 dynamical networks network influencer low-dimensional dynamics network disintegration
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Target layer state estimation in multi-layer complex dynamical networks considering nonlinear node dynamics
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作者 吴亚勇 王欣伟 蒋国平 《Chinese Physics B》 SCIE EI CAS CSCD 2024年第4期245-252,共8页
In many engineering networks, only a part of target state variables are required to be estimated.On the other hand,multi-layer complex network exists widely in practical situations.In this paper, the state estimation ... In many engineering networks, only a part of target state variables are required to be estimated.On the other hand,multi-layer complex network exists widely in practical situations.In this paper, the state estimation of target state variables in multi-layer complex dynamical networks with nonlinear node dynamics is studied.A suitable functional state observer is constructed with the limited measurement.The parameters of the designed functional observer are obtained from the algebraic method and the stability of the functional observer is proven by the Lyapunov theorem.Some necessary conditions that need to be satisfied for the design of the functional state observer are obtained.Different from previous studies, in the multi-layer complex dynamical network with nonlinear node dynamics, the proposed method can estimate the state of target variables on some layers directly instead of estimating all the individual states.Thus, it can greatly reduce the placement of observers and computational cost.Numerical simulations with the three-layer complex dynamical network composed of three-dimensional nonlinear dynamical nodes are developed to verify the effectiveness of the method. 展开更多
关键词 multi-layer complex dynamical network nonlinear node dynamics target state estimation functional state observer
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