期刊文献+
共找到244篇文章
< 1 2 13 >
每页显示 20 50 100
Converters’Loading Balance and Stability Verification for Doubly-fed Induction Generators
1
作者 Shenghu Li 《CSEE Journal of Power and Energy Systems》 2025年第3期1131-1140,共10页
Back-to-back converters are the main components of a doubly-fed induction generator(DFIG).If the loadings of the rotor-side converter(RSC)and the grid-side converter(GSC)are balanced,the capacity and the cost of the D... Back-to-back converters are the main components of a doubly-fed induction generator(DFIG).If the loadings of the rotor-side converter(RSC)and the grid-side converter(GSC)are balanced,the capacity and the cost of the DFIG will be reduced.This paper balances the converters'loadings by adjusting reactive power of the GSC(Q_(g*)).The steady-state constraints of the DFIG are solved to quantify the imbalance degree.A sensitivity model of the unbalanced loading with respect to Q_(g*)is proposed to balance the loadings.To verify if loading adjustment reduces the stability of the DFIG,the eigen–sensitivity models,with respect to Q_(g*)and stator voltage,are newly proposed with the power flow Jacobian matrix.Numerical results verify the accuracy and efficiency of the proposed model.The loadings of the converters are balanced with a few adjustments.Loading balance has little negative impact on the stability of the DFIG. 展开更多
关键词 CONVERTER doubly-fed induction generator eigen-sensitivity loading balance sensitivity STABILITY
原文传递
Handover management in beyond 5G HetNet topologies with unbalanced user distribution
2
作者 Abdussamet Hatipoglu Mehmet Akif Yazici +2 位作者 Mehmet Basaran Mine Ardanuc Lutfiye Durak-Ata 《Digital Communications and Networks》 2025年第2期465-472,共8页
The increase in user mobility and density in modern cellular networks increases the risk of overloading certain base stations in popular locations such as shopping malls or stadiums,which can result in connection loss... The increase in user mobility and density in modern cellular networks increases the risk of overloading certain base stations in popular locations such as shopping malls or stadiums,which can result in connection loss for some users.To combat this,the traffic load of base stations should be kept as balanced as possible.In this paper,we propose an efficient load balancing-aware handover algorithm for highly dynamic beyond 5G heterogeneous networks by assigning mobile users to base stations with lighter loads when a handover is performed.The proposed algorithm is evaluated in a scenario with users having different levels of mobility,such as pedestrians and vehicles,and is shown to outperform the conventional handover mechanism,as well as another algorithm from the literature.As a secondary benefit,the overall energy consumption in the network is shown to be reduced with the proposed algorithm. 展开更多
关键词 Beyond 5G Handover management Load balancing Markov chain Poisson point process Poisson hole process Ultra-dense heterogeneous network
在线阅读 下载PDF
ELGR:An Energy-efficiency and Load-balanced Geographic Routing Algorithm for Lossy Mobile Ad Hoc Networks 被引量:2
3
作者 王国栋 王钢 《Chinese Journal of Aeronautics》 SCIE EI CAS CSCD 2010年第3期334-340,共7页
Geographic routing is a highly active area of research in mobile ad hoc networks (MANETs) owing to its efficiency and scalability. However,the use of simple greedy forwarding decreases the packet reception rate (PR... Geographic routing is a highly active area of research in mobile ad hoc networks (MANETs) owing to its efficiency and scalability. However,the use of simple greedy forwarding decreases the packet reception rate (PRR) dramatically in unreliable wireless environments; this also depresses the network lifetime. Therefore,it is important to improve delivery performance and prolong MANET lifetime simultaneously. In this article,a novel geographic routing algorithm,named energy-efficiency and load-loalanced geographic routing (ELGR),is presented for lossy MANETs. ELGR combines energy efficiency and load balance to make routing decisions. First,a link estimation scheme for the PRR is presented that increases the network energy efficiency level. Second,a learning method is proposed to adaptively sense local network loads,allowing enhanced whole network load balance. The results of a simulation show that ELGR performs better than several other geographic routing algorithms; in particular it extends network lifetime by about 20%,with a higher delivery ratio. 展开更多
关键词 MANET geographic routing energy efficiency load balance FORWARDING
原文传递
Powering Artificial Intelligence:How Artificial Intelligence’s Massive Energy Demands Are Reshaping the Future of Smart Grid
4
作者 Bahman Zohuri Farhang Mossavar-Rahmani Mehdi Abedi-Varaki 《Journal of Energy and Power Engineering》 2025年第3期91-99,共9页
The rapid evolution and expanding scale of AI(artificial intelligence)technologies exert unprecedented energy demands on global electrical grids.Powering computationally intensive tasks such as large-scale AI model tr... The rapid evolution and expanding scale of AI(artificial intelligence)technologies exert unprecedented energy demands on global electrical grids.Powering computationally intensive tasks such as large-scale AI model training and widespread real-time inference necessitates substantial electricity consumption,presenting a significant challenge to conventional power infrastructure.This paper examines the critical need for a fundamental shift towards smart energy grids in response to AI’s growing energy footprint.It delves into the symbiotic relationship wherein AI acts as a significant energy consumer while offering the intelligence required for dynamic load management,efficient integration of renewable energy sources,and optimized grid operations.We posit that advanced smart grids are indispensable for facilitating AI’s sustainable growth,underscoring this synergy as a pivotal advancement toward a resilient energy future. 展开更多
关键词 AI smart grid energy demand data centers load balancing renewable integration grid modernization deep learning power consumption real-time monitoring AI in energy systems
在线阅读 下载PDF
An Enhanced Fuzzy Routing Protocol for Energy Optimization in the Underwater Wireless Sensor Networks
5
作者 Mehran Tarif Mohammadhossein Homaei Amir Mosavi 《Computers, Materials & Continua》 2025年第5期1791-1820,共30页
Underwater Wireless Sensor Networks(UWSNs)are gaining popularity because of their potential uses in oceanography,seismic activity monitoring,environmental preservation,and underwater mapping.Yet,these networks are fac... Underwater Wireless Sensor Networks(UWSNs)are gaining popularity because of their potential uses in oceanography,seismic activity monitoring,environmental preservation,and underwater mapping.Yet,these networks are faced with challenges such as self-interference,long propagation delays,limited bandwidth,and changing network topologies.These challenges are coped with by designing advanced routing protocols.In this work,we present Under Water Fuzzy-Routing Protocol for Low power and Lossy networks(UWF-RPL),an enhanced fuzzy-based protocol that improves decision-making during path selection and traffic distribution over different network nodes.Our method extends RPL with the aid of fuzzy logic to optimize depth,energy,Received Signal Strength Indicator(RSSI)to Expected Transmission Count(ETX)ratio,and latency.Theproposed protocol outperforms other techniques in that it offersmore energy efficiency,better packet delivery,lowdelay,and no queue overflow.It also exhibits better scalability and reliability in dynamic underwater networks,which is of very high importance in maintaining the network operations efficiency and the lifetime of UWSNs optimized.Compared to other recent methods,it offers improved network convergence time(10%–23%),energy efficiency(15%),packet delivery(17%),and delay(24%). 展开更多
关键词 Underwater sensor networks(UWSNs) ROUTING energy fuzzy logic MULTIPATH load balancing
在线阅读 下载PDF
A Dynamic Workload Prediction and Distribution in Cloud Computing Using Deep Reinforcement Learning and LSTM
6
作者 Nampally Vijay Kumar Satarupa Mohanty Prasant Kumar Pattnaik 《Journal of Harbin Institute of Technology(New Series)》 2025年第4期64-71,共8页
Maintaining high-quality service supply and sustainability in modern cloud computing is essential to ensuring optimal system performance and energy efficiency.A novel approach is introduced in this study to decrease a... Maintaining high-quality service supply and sustainability in modern cloud computing is essential to ensuring optimal system performance and energy efficiency.A novel approach is introduced in this study to decrease a system's overall delay and energy consumption by using a deep reinforcement learning(DRL)model to predict and allocate incoming workloads flexibly.The proposed methodology integrates workload prediction utilising long short-term memory(LSTM)networks with efficient load-balancing techniques led by deep Q-learning and Actor-critic algorithms.By continuously analysing current and historical data,the model can efficiently allocate resources,prioritizing speed and energy preservation.The experimental results demonstrate that our load balancing system,which utilises DRL,significantly reduces average response times and energy usage compared to traditional methods.This approach provides a scalable and adaptable strategy for enhancing cloud infrastructure performance.It consistently provides reliable and durable performance across a range of dynamic workloads. 展开更多
关键词 DRL LSTM cloud computing load balancing Q-LEARNING
在线阅读 下载PDF
A Survey of Spark Scheduling Strategy Optimization Techniques and Development Trends
7
作者 Chuan Li Xuanlin Wen 《Computers, Materials & Continua》 2025年第6期3843-3875,共33页
Spark performs excellently in large-scale data-parallel computing and iterative processing.However,with the increase in data size and program complexity,the default scheduling strategy has difficultymeeting the demand... Spark performs excellently in large-scale data-parallel computing and iterative processing.However,with the increase in data size and program complexity,the default scheduling strategy has difficultymeeting the demands of resource utilization and performance optimization.Scheduling strategy optimization,as a key direction for improving Spark’s execution efficiency,has attracted widespread attention.This paper first introduces the basic theories of Spark,compares several default scheduling strategies,and discusses common scheduling performance evaluation indicators and factors affecting scheduling efficiency.Subsequently,existing scheduling optimization schemes are summarized based on three scheduling modes:load characteristics,cluster characteristics,and matching of both,and representative algorithms are analyzed in terms of performance indicators and applicable scenarios,comparing the advantages and disadvantages of different scheduling modes.The article also explores in detail the integration of Spark scheduling strategies with specific application scenarios and the challenges in production environments.Finally,the limitations of the existing schemes are analyzed,and prospects are envisioned. 展开更多
关键词 SPARK scheduling optimization load balancing resource utilization distributed computing
在线阅读 下载PDF
Integrating Edge Intelligence with Blockchain-Driven Secured IoT Healthcare Optimization Model
8
作者 Khulud Salem Alshudukhi Mamoona Humayun Ghadah Naif Alwakid 《Computers, Materials & Continua》 2025年第5期1973-1986,共14页
The Internet ofThings(IoT)and edge computing have substantially contributed to the development and growth of smart cities.It handled time-constrained services and mobile devices to capture the observing environment fo... The Internet ofThings(IoT)and edge computing have substantially contributed to the development and growth of smart cities.It handled time-constrained services and mobile devices to capture the observing environment for surveillance applications.These systems are composed of wireless cameras,digital devices,and tiny sensors to facilitate the operations of crucial healthcare services.Recently,many interactive applications have been proposed,including integrating intelligent systems to handle data processing and enable dynamic communication functionalities for crucial IoT services.Nonetheless,most solutions lack optimizing relayingmethods and impose excessive overheads for maintaining devices’connectivity.Alternatively,data integrity and trust are another vital consideration for nextgeneration networks.This research proposed a load-balanced trusted surveillance routing model with collaborative decisions at network edges to enhance energymanagement and resource balancing.It leverages graph-based optimization to enable reliable analysis of decision-making parameters.Furthermore,mobile devices integratewith the proposed model to sustain trusted routes with lightweight privacy-preserving and authentication.The proposed model analyzed its performance results in a simulation-based environment and illustrated an exceptional improvement in packet loss ratio,energy consumption,detection anomaly,and blockchain overhead than related solutions. 展开更多
关键词 Smart cities load balancing blockchain health systems edge computing
在线阅读 下载PDF
Hybrid Spotted Hyena and Whale Optimization Algorithm-Based Dynamic Load Balancing Technique for Cloud Computing Environment
9
作者 N Jagadish Kumar R Praveen +1 位作者 D Selvaraj D Dhinakaran 《China Communications》 2025年第8期206-227,共22页
The uncertain nature of mapping user tasks to Virtual Machines(VMs) causes system failure or execution delay in Cloud Computing.To maximize cloud resource throughput and decrease user response time,load balancing is n... The uncertain nature of mapping user tasks to Virtual Machines(VMs) causes system failure or execution delay in Cloud Computing.To maximize cloud resource throughput and decrease user response time,load balancing is needed.Possible load balancing is needed to overcome user task execution delay and system failure.Most swarm intelligent dynamic load balancing solutions that used hybrid metaheuristic algorithms failed to balance exploitation and exploration.Most load balancing methods were insufficient to handle the growing uncertainty in job distribution to VMs.Thus,the Hybrid Spotted Hyena and Whale Optimization Algorithm-based Dynamic Load Balancing Mechanism(HSHWOA) partitions traffic among numerous VMs or servers to guarantee user chores are completed quickly.This load balancing approach improved performance by considering average network latency,dependability,and throughput.This hybridization of SHOA and WOA aims to improve the trade-off between exploration and exploitation,assign jobs to VMs with more solution diversity,and prevent the solution from reaching a local optimality.Pysim-based experimental verification and testing for the proposed HSHWOA showed a 12.38% improvement in minimized makespan,16.21% increase in mean throughput,and 14.84% increase in network stability compared to baseline load balancing strategies like Fractional Improved Whale Social Optimization Based VM Migration Strategy FIWSOA,HDWOA,and Binary Bird Swap. 展开更多
关键词 cloud computing load balancing Spotted Hyena Optimization Algorithm(SHOA) THROUGHPUT Virtual Machines(VMs) Whale Optimization Algorithm(WOA)
在线阅读 下载PDF
Retrofitting Design of a Deep Drilling Rig Mud Pump Load Balancing System
10
作者 Danijel Pavkovic Pietro Kristovic +1 位作者 Mihael Cipek Dragutin Lisjak 《Energy Engineering》 2025年第5期1669-1696,共28页
In deep drilling applications,such as those for geothermal energy,there are many challenges,such as those related to efficient operation of the drilling fluid(mud)pumping system.Legacy drilling rigs often use paired,p... In deep drilling applications,such as those for geothermal energy,there are many challenges,such as those related to efficient operation of the drilling fluid(mud)pumping system.Legacy drilling rigs often use paired,parallel-connected independent-excitation direct-current(DC)motors for mud pumps,that are supplied by a single power converter.This configuration results in electrical power imbalance,thus reducing its efficiency.This paper investigates this power imbalance issue in such legacy DC mud pump drive systems and offers an innovative solution in the form of a closed-loop control system for electrical load balancing.The paper first analyzes the drilling fluid circulation and electrical drive layout to develop an analytical model that can be used for electrical load balancing and related energy efficiency improvements.Based on this analysis,a feedback control system(so-called“current mirror”control system)is designed to balance the electrical load(i.e.,armature currents)of parallel-connected DC machines by adjusting the excitation current of one of the DC machines,thus mitigating the power imbalance of the electrical drive.Theproposed control systemeffectiveness has been validated,first through simulations,followed by experimental testing on a deep drilling rig during commissioning and field tests.The results demonstrate the practical viability of the proposed“current mirror”control system that can effectively and rather quickly equalize the armature currents of both DC machines in a parallel-connected electrical drive,and thus balance both the electrical and mechanical load of individual DC machines under realistic operating conditions of the mud pump electrical drive. 展开更多
关键词 Deep drilling mud pump electrical load balancing direct current motor excitation control armature current mirroring field tests
在线阅读 下载PDF
MLB-TR: Multi-Service Load Balancing Routing Algorithm for Traffic Return in Integrated Satellite-Terrestrial Networks
11
作者 Liu Chang Zhang Jiaxin +2 位作者 Chang Zhaoyang Zhang Xing Wang Wenbo 《China Communications》 2025年第10期60-71,共12页
In recent years,load balancing routing al-gorithms have been extensively studied in satellite net-works.Most existing studies focus on path selection and hop-count optimization for end-to-end transmis-sion,while overl... In recent years,load balancing routing al-gorithms have been extensively studied in satellite net-works.Most existing studies focus on path selection and hop-count optimization for end-to-end transmis-sion,while overlooking congestion issues on feeder links caused by the limited number and centralized distribution of ground stations.Hence,a multi-service routing algorithm called the Multi-service Load Bal-ancing Routing Algorithm for Traffic Return(MLB-TR)is proposed.Unlike traditional approaches,MLB-TR aims to achieve a broader and more comprehensive load balancing objective.Specifically,based on the service type,an appropriate landing satellite is first selected by considering factors such as shortest path hop count and satellite load.Then,a set of candidate paths from the source satellite to the selected landing satellite is computed.Finally,using the regional load balancing index as the optimization objective,the final transmission path is selected from the candidate path set.Simulation results show that the proposed algo-rithm outperforms the existing works. 展开更多
关键词 integrated satellite-terrestrial network landing satellites load balancing traffic return
在线阅读 下载PDF
Reliable and Load Balance-Aware Multi-Controller Deployment in SDN 被引量:7
12
作者 Tao Hu Peng Yi +1 位作者 Jianhui Zhang Julong Lan 《China Communications》 SCIE CSCD 2018年第11期184-198,共15页
Software Defined Networking(SDN) provides flexible network management by decoupling control plane and data plane. However, such separation introduces the issues regarding the reliability of the control plane and contr... Software Defined Networking(SDN) provides flexible network management by decoupling control plane and data plane. However, such separation introduces the issues regarding the reliability of the control plane and controller load imbalance in the distributed SDN network, which will cause the low network stability and the poor controller performance. This paper proposes Reliable and Load balance-aware Multi-controller Deployment(RLMD) strategy to address the above problems. Firstly, we establish a multiple-controller network model and define the relevant parameters for RLMD. Then, we design the corresponding algorithms to implement this strategy. By weighing node efficiency and path quality, Controller Placement Selection(CPS) algorithm is introduced to explore the reliable deployments of the controllers. On this basis, we design Multiple Domain Partition(MDP) algorithm to allocate switches for controllers according to node attractability and controller load balancing rate, which could realize the reasonable domain planning. Finally, the simulations show that, compared with the typical strategies, RLMD has the better performance in improving the reliability of the control plane and balancing the distribution of the controller loads. 展开更多
关键词 software defined networking CONTROLLER reliability load balancing networkoptimization
在线阅读 下载PDF
A Distributed Intrusion Detection Model via Nondestructive Partitioning and Balanced Allocation for Big Data 被引量:4
13
作者 Xiaonian Wu Chuyun Zhang +2 位作者 Runlian Zhang Yujue Wang Jinhua Cui 《Computers, Materials & Continua》 SCIE EI 2018年第7期61-72,共12页
There are two key issues in distributed intrusion detection system,that is,maintaining load balance of system and protecting data integrity.To address these issues,this paper proposes a new distributed intrusion detec... There are two key issues in distributed intrusion detection system,that is,maintaining load balance of system and protecting data integrity.To address these issues,this paper proposes a new distributed intrusion detection model for big data based on nondestructive partitioning and balanced allocation.A data allocation strategy based on capacity and workload is introduced to achieve local load balance,and a dynamic load adjustment strategy is adopted to maintain global load balance of cluster.Moreover,data integrity is protected by using session reassemble and session partitioning.The simulation results show that the new model enjoys favorable advantages such as good load balance,higher detection rate and detection efficiency. 展开更多
关键词 Distributed intrusion detection data allocation load balancing data integrity big data
在线阅读 下载PDF
On the use of the genetic programming for balanced load distribution in software-defined networks 被引量:4
14
作者 Shahram Jamali Amin Badirzadeh Mina Soltani Siapoush 《Digital Communications and Networks》 SCIE 2019年第4期288-296,共9页
As a new networking paradigm,Software-Defined Networking(SDN)enables us to cope with the limitations of traditional networks.SDN uses a controller that has a global view of the network and switch devices which act as ... As a new networking paradigm,Software-Defined Networking(SDN)enables us to cope with the limitations of traditional networks.SDN uses a controller that has a global view of the network and switch devices which act as packet forwarding hardware,known as“OpenFlow switches”.Since load balancing service is essential to distribute workload across servers in data centers,we propose an effective load balancing scheme in SDN,using a genetic programming approach,called Genetic Programming based Load Balancing(GPLB).We formulate the problem to find a path:1)with the best bottleneck switch which has the lowest capacity within bottleneck switches of each path,2)with the shortest path,and 3)requiring the less possible operations.For the purpose of choosing the real-time least loaded path,GPLB immediately calculates the integrated load of paths based on the information that receives from the SDN controller.Hence,in this design,the controller sends the load information of each path to the load balancing algorithm periodically and then the load balancing algorithm returns a least loaded path to the controller.In this paper,we use the Mininet emulator and the OpenDaylight controller to evaluate the effectiveness of the GPLB.The simulative study of the GPLB shows that there is a big improvement in performance metrics and the latency and the jitter are minimized.The GPLB also has the maximum throughput in comparison with related works and has performed better in the heavy traffic situation.The results show that our model stands smartly while not increasing further overhead. 展开更多
关键词 Software-defined networking OpenFlow Mininet OpenDaylight Load balancing
在线阅读 下载PDF
P-ACOHONEYBEE: A Novel Load Balancer for Cloud Computing Using Mathematical Approach 被引量:2
15
作者 Sunday Adeola Ajagbe Mayowa O.Oyediran +2 位作者 Anand Nayyar Jinmisayo A.Awokola Jehad F.Al-Amri 《Computers, Materials & Continua》 SCIE EI 2022年第10期1943-1959,共17页
Cloud computing is a collection of disparate resources or services,a web of massive infrastructures,which is aimed at achieving maximum utilization with higher availability at a minimized cost.One of the most attracti... Cloud computing is a collection of disparate resources or services,a web of massive infrastructures,which is aimed at achieving maximum utilization with higher availability at a minimized cost.One of the most attractive applications for cloud computing is the concept of distributed information processing.Security,privacy,energy saving,reliability and load balancing are the major challenges facing cloud computing and most information technology innovations.Load balancing is the process of redistributing workload among all nodes in a network;to improve resource utilization and job response time,while avoiding overloading some nodes when other nodes are underloaded or idle is a major challenge.Thus,this research aims to design a novel load balancing systems in a cloud computing environment.The research is based on the modification of the existing approaches,namely;particle swarm optimization(PSO),honeybee,and ant colony optimization(ACO)with mathematical expression to form a novel approach called PACOHONEYBEE.The experiments were conducted on response time and throughput.The results of the response time of honeybee,PSO,SASOS,round-robin,PSO-ACO,and P-ACOHONEYBEE are:2791,2780,2784,2767,2727,and 2599(ms)respectively.The outcome of throughput of honeybee,PSO,SASOS,round-robin,PSO-ACO,and P-ACOHONEYBEE are:7451,7425,7398,7357,7387 and 7482(bps)respectively.It is observed that P-ACOHONEYBEE approach produces the lowest response time,high throughput and overall improved performance for the 10 nodes.The research has helped in managing the imbalance drawback by maximizing throughput,and reducing response time with scalability and reliability. 展开更多
关键词 ACO cloud computing load balancing swarm intelligence PSO P-ACOHONEYBE honeybee swarm
在线阅读 下载PDF
A load balance optimization framework for sharded-blockchain enabled Internet of Things 被引量:2
16
作者 YANG Zhaoxin YANG Ruizhe +2 位作者 LI Meng YU Richard Fei ZHANG Yanhua 《High Technology Letters》 EI CAS 2022年第1期10-20,共11页
Recently,sharded-blockchain has attracted more and more attention.Its inherited immutabili-ty,decentralization,and promoted scalability effectively address the trust issue of the data sharing in the Internet of Things... Recently,sharded-blockchain has attracted more and more attention.Its inherited immutabili-ty,decentralization,and promoted scalability effectively address the trust issue of the data sharing in the Internet of Things(IoT).Nevertheless,the traditional random allocation between validator groups and transaction pools ignores the differences of shards,which reduces the overall system per-formance due to the unbalance between computing capacity and transaction load.To solve this prob-lem,a load balance optimization framework for sharded-blockchain enabled IoT is proposed,where the allocation between the validator groups and transaction pools is implemented reasonably by deep reinforcement learning(DRL).Specifically,based on the theoretical analysis of the intra-shard consensus and the final system consensus,the optimization of system performance is formed as a Markov decision process(MDP),and the allocation of the transaction pools,the block size,and the block interval are jointly trained in the DRL agent.The simulation results show that the proposed scheme improves the scalability of the sharded blockchain system for IoT. 展开更多
关键词 Internet of Things(IoT) blockchain sharding load balance deep reinforcement learning(DRL)
在线阅读 下载PDF
Determination method of load balance ranges for train operation safety under strong wind 被引量:3
17
作者 田红旗 《Journal of Central South University》 SCIE EI CAS CSCD 2015年第3期1146-1154,共9页
The aerodynamic performances of a passenger car and a box car with different heights of windbreak walls under strong wind were studied using the numerical simulations, and the changes of aerodynamic side force, lift f... The aerodynamic performances of a passenger car and a box car with different heights of windbreak walls under strong wind were studied using the numerical simulations, and the changes of aerodynamic side force, lift force and overturning moment with different wind speeds and wall heights were calculated. According to the principle of static moment balance of vehicles, the overturning coefficients of trains with different wind speeds and wall heights were obtained. Based on the influence of wind speed and wall height on the aerodynamic performance and the overturning stability of trains, a method of determination of the load balance ranges for the train operation safety was proposed, which made the overturning coefficient have nearly closed interval. A min(|A1|+|A2|), s.t. |A1|→|A2|(A1 refers to the downwind overturning coefficient and A2 refers to the upwind overturning coefficient)was found. This minimum value helps to lower the wall height as much as possible, and meanwhile, guarantees the operation safety of various types of trains under strong wind. This method has been used for the construction and improvement of the windbreak walls along the Lanzhou–Xinjiang railway(from Lanzhou to Urumqi, China). 展开更多
关键词 strong wind train load balance range overturning coefficient aerodynamic performance
在线阅读 下载PDF
Blockchain Based Secured Load Balanced Task Scheduling Approach for Fitness Service
18
作者 Muhammad Ibrahim Faisal Jamil +1 位作者 YunJung Lee DoHyeun Kim 《Computers, Materials & Continua》 SCIE EI 2022年第5期2599-2616,共18页
In recent times,the evolution of blockchain technology has got huge attention from the research community due to its versatile applications and unique security features.The IoT has shown wide adoption in various appli... In recent times,the evolution of blockchain technology has got huge attention from the research community due to its versatile applications and unique security features.The IoT has shown wide adoption in various applications including smart cities,healthcare,trade,business,etc.Among these applications,fitness applications have been widely considered for smart fitness systems.The users of the fitness system are increasing at a high rate thus the gym providers are constantly extending the fitness facilities.Thus,scheduling such a huge number of requests for fitness exercise is a big challenge.Secondly,the user fitness data is critical thus securing the user fitness data from unauthorized access is also challenging.To overcome these issues,this work proposed a blockchain-based load-balanced task scheduling approach.A thorough analysis has been performed to investigate the applications of IoT in the fitness industry and various scheduling approaches.The proposed scheduling approach aims to schedule the requests of the fitness users in a load-balanced way that maximize the acceptance rate of the users’requests and improve resource utilization.The performance of the proposed task scheduling approach is compared with the state-of-the-art approaches concerning the average resource utilization and task rejection ratio.The obtained results confirm the efficiency of the proposed scheduling approach.For investigating the performance of the blockchain,various experiments are performed using the Hyperledger Caliper concerning latency,throughput,resource utilization.The Solo approach has shown an improvement of 32%and 26%in throughput as compared to Raft and Solo-Raft approaches respectively.The obtained results assert that the proposed architecture is applicable for resource-constrained IoT applications and is extensible for different IoT applications. 展开更多
关键词 Load balancing resource scheduling task scheduling Internet of things blockchain fitness applications
在线阅读 下载PDF
Load Balance Strategy of Data Routing Algorithm Using Semantics for Deduplication Clusters
19
作者 Ze-Jun Jiang Zhi-Ke Zhang +2 位作者 Li-Fang Wang Chin-Chen Chang Li Liu 《Journal of Electronic Science and Technology》 CAS CSCD 2017年第3期277-282,共6页
The backup requirement of data centres is tremendous as the size of data created by human is massive and is increasing exponentially.Single node deduplication cannot meet the increasing backup requirement of data cent... The backup requirement of data centres is tremendous as the size of data created by human is massive and is increasing exponentially.Single node deduplication cannot meet the increasing backup requirement of data centres.A feasible way is the deduplication cluster,which can meet it by adding storage nodes.The data routing strategy is the key of the deduplication cluster.DRSS(data routing strategy using semantics) improves the storage utilization of MCS(minimum chunk signature) data routing strategy a lot.However,for the large deduplication cluster,the load balance of DRSS is worse than MCS.To improve the load balance of DRSS,we propose a load balance strategy used for DRSS,namely DRSSLB.When a node is overloaded,DRSSLB iteratively migrates the current smallest container of the node to the smallest node in the deduplication cluster until this overloaded node becomes non-overloaded.A container is the minimum unit of data migration.Similar files sharing the same features or file names are stored in the same container.This ensures the similar data groups are still in the same node after rebalancing the nodes.We use the dataset from the real world to evaluate DRSSLB.Experimental results show that,for various numbers of nodes of the deduplication cluster,the data skews of DRSSLB are under predefined value while the storage utilizations of DRSSLB do not nearly increase compared with DRSS,with the low penalty(the data migration rate is only6.5% when the number of nodes is 64). 展开更多
关键词 Index Terms--Data routing strategy deduplicationcluster SEMANTICS load balance.
在线阅读 下载PDF
BE-RPL:Balanced-load and Energy-efficient RPL
20
作者 S.Jagir Hussain M.Roopa 《Computer Systems Science & Engineering》 SCIE EI 2023年第4期785-801,共17页
Internet of Things(IoT)empowers imaginative applications and permits new services when mobile nodes are included.For IoT-enabled low-power and lossy networks(LLN),the Routing Protocol for Low-power and Lossy Networks(... Internet of Things(IoT)empowers imaginative applications and permits new services when mobile nodes are included.For IoT-enabled low-power and lossy networks(LLN),the Routing Protocol for Low-power and Lossy Networks(RPL)has become an established standard routing protocol.Mobility under standard RPL remains a difficult issue as it causes continuous path disturbance,energy loss,and increases the end-to-end delay in the network.In this unique circumstance,a Balanced-load and Energy-efficient RPL(BE-RPL)is proposed.It is a routing technique that is both energy-efficient and mobility-aware.It responds quicker to link breakage through received signal strength-based mobility monitoring and selecting a new preferred parent reactively.The proposed system also implements load balancing among stationary nodes for leaf node allocation.Static nodes with more leaf nodes are restricted from participating in the election for a new preferred parent.The performance of BE-RPL is assessed using the COOJA simulator.It improves the energy use,network control overhead,frame acknowledgment ratio,and packet delivery ratio of the network. 展开更多
关键词 COOJA simulator energy HANDOVER internet of things BE-RPL load balancing low-power and lossy network mobility routing protocols RPL
在线阅读 下载PDF
上一页 1 2 13 下一页 到第
使用帮助 返回顶部