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Mobility-Aware User Scheduling in Wireless Federated Learning with Contextual Multi-Armed Bandit
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作者 Li Jun Sun Haiyang +4 位作者 Deng Xiumei Wei Kang Shi Long Liang Le Chen Wen 《China Communications》 2025年第11期256-272,共17页
Federated learning(FL)is an intricate and privacy-preserving technique that enables distributed mobile devices to collaboratively train a machine learning model.However,in real-world FL scenarios,the training performa... Federated learning(FL)is an intricate and privacy-preserving technique that enables distributed mobile devices to collaboratively train a machine learning model.However,in real-world FL scenarios,the training performance is affected by a combination of factors such as the mobility of user devices,limited communication and computational resources,thus making the user scheduling problem crucial.To tackle this problem,we jointly consider the user mobility,communication and computational capacities,and develop a stochastic optimization problem to minimize the convergence time.Specifically,we first establish a convergence bound on the training performance based on the heterogeneity of users’data,and then leverage this bound to derive the participation rate for each user.After deriving the user-specific participation rate,we aim to minimize the training latency by optimizing user scheduling under the constraints of the energy consumption and participation rate.Afterward,we transform this optimization problem to the contextual multi-armed bandit framework based on the Lyapunov method and solve it with the submodular reward enhanced linear upper confidence bound(SR-linUCB)algorithm.Experimental results demonstrate the superiority of our proposed algorithm on the training performance and time consumption compared with stateof-the-art algorithms for both independent and identically distributed(IID)and non-IID settings. 展开更多
关键词 contextual multi-armed bandit federated learning resource allocation upper confidence bound user scheduling
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Demonstration-enhanced policy search for space multi-arm robot collaborative skill learning
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作者 Tian GAO Chengfei YUE +1 位作者 Xiaozhe JU Tao LIN 《Chinese Journal of Aeronautics》 2025年第3期462-473,共12页
The increasing complexity of on-orbit tasks imposes great demands on the flexible operation of space robotic arms, prompting the development of space robots from single-arm manipulation to multi-arm collaboration. In ... The increasing complexity of on-orbit tasks imposes great demands on the flexible operation of space robotic arms, prompting the development of space robots from single-arm manipulation to multi-arm collaboration. In this paper, a combined approach of Learning from Demonstration (LfD) and Reinforcement Learning (RL) is proposed for space multi-arm collaborative skill learning. The combination effectively resolves the trade-off between learning efficiency and feasible solution in LfD, as well as the time-consuming pursuit of the optimal solution in RL. With the prior knowledge of LfD, space robotic arms can achieve efficient guided learning in high-dimensional state-action space. Specifically, an LfD approach with Probabilistic Movement Primitives (ProMP) is firstly utilized to encode and reproduce the demonstration actions, generating a distribution as the initialization of policy. Then in the RL stage, a Relative Entropy Policy Search (REPS) algorithm modified in continuous state-action space is employed for further policy improvement. More importantly, the learned behaviors can maintain and reflect the characteristics of demonstrations. In addition, a series of supplementary policy search mechanisms are designed to accelerate the exploration process. The effectiveness of the proposed method has been verified both theoretically and experimentally. Moreover, comparisons with state-of-the-art methods have confirmed the outperformance of the approach. 展开更多
关键词 Space multi-arm collaboration Demonstrations .Reinforcement Learning Probabilistic Movement Primitives Relative Entropy Policy Search Policy search mechanism
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Apo E基因multi-ARMS与PCR-RFLP分型法的比较研究
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作者 唐慧 董虹 +3 位作者 高建梅 华映昆 张丽平 严新民 《大理学院学报(综合版)》 CAS 2002年第3期1-4,共4页
目的 :以聚合酶链反应—限制性酶切片段长度多态性(PCR -RFLP)方法作为参照 ,建立一种ApoE基因分型方法。方法 :以基因组DNA为模板 ,用PCR -RFLP法和等位基因特异性复合PCR方法(MultiplexAmplificationRefractoryMutationSystem,multi-A... 目的 :以聚合酶链反应—限制性酶切片段长度多态性(PCR -RFLP)方法作为参照 ,建立一种ApoE基因分型方法。方法 :以基因组DNA为模板 ,用PCR -RFLP法和等位基因特异性复合PCR方法(MultiplexAmplificationRefractoryMutationSystem,multi-ARMS)检测了75例个体的ApoE基因型。结果 :共检测出5种常见的ApoE基因型 :ε2/2 ,ε3/3 ,ε2/3,ε3/4 ,ε2/4。两种方法所得的结果完全一致。结论 :说明multi-ARMS方法快速简便、准确可靠 。 展开更多
关键词 APOE基因 multi-armS PCR-RFLP分型法 比较研究 基因分型
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Impedance control of multi-arm space robot for the capture of non-cooperative targets 被引量:9
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作者 GE Dongming SUN Guanghui +1 位作者 ZOU Yuanjie SHI Jixin 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2020年第5期1051-1061,共11页
Robotic systems are expected to play an increasingly important role in future space activities. The robotic on-orbital service, whose key is the capturing technology, becomes a research hot spot in recent years. This ... Robotic systems are expected to play an increasingly important role in future space activities. The robotic on-orbital service, whose key is the capturing technology, becomes a research hot spot in recent years. This paper studies the dynamics modeling and impedance control of a multi-arm free-flying space robotic system capturing a non-cooperative target. Firstly, a control-oriented dynamics model is essential in control algorithm design and code realization. Unlike a numerical algorithm, an analytical approach is suggested. Using a general and a quasi-coordinate Lagrangian formulation, the kinematics and dynamics equations are derived.Then, an impedance control algorithm is developed which allows coordinated control of the multiple manipulators to capture a target.Through enforcing a reference impedance, end-effectors behave like a mass-damper-spring system fixed in inertial space in reaction to any contact force between the capture hands and the target. Meanwhile, the position and the attitude of the base are maintained stably by using gas jet thrusters to work against the manipulators' reaction. Finally, a simulation by using a space robot with two manipulators and a free-floating non-cooperative target is illustrated to verify the effectiveness of the proposed method. 展开更多
关键词 multi-arm space robot impedance control non-cooperative target CAPTURE
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Distributed Weighted Data Aggregation Algorithm in End-to-Edge Communication Networks Based on Multi-armed Bandit 被引量:1
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作者 Yifei ZOU Senmao QI +1 位作者 Cong'an XU Dongxiao YU 《计算机科学》 CSCD 北大核心 2023年第2期13-22,共10页
As a combination of edge computing and artificial intelligence,edge intelligence has become a promising technique and provided its users with a series of fast,precise,and customized services.In edge intelligence,when ... As a combination of edge computing and artificial intelligence,edge intelligence has become a promising technique and provided its users with a series of fast,precise,and customized services.In edge intelligence,when learning agents are deployed on the edge side,the data aggregation from the end side to the designated edge devices is an important research topic.Considering the various importance of end devices,this paper studies the weighted data aggregation problem in a single hop end-to-edge communication network.Firstly,to make sure all the end devices with various weights are fairly treated in data aggregation,a distributed end-to-edge cooperative scheme is proposed.Then,to handle the massive contention on the wireless channel caused by end devices,a multi-armed bandit(MAB)algorithm is designed to help the end devices find their most appropriate update rates.Diffe-rent from the traditional data aggregation works,combining the MAB enables our algorithm a higher efficiency in data aggregation.With a theoretical analysis,we show that the efficiency of our algorithm is asymptotically optimal.Comparative experiments with previous works are also conducted to show the strength of our algorithm. 展开更多
关键词 Weighted data aggregation End-to-edge communication multi-armed bandit Edge intelligence
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Cross-linking Copolymerization of Acrylic Acid and Multi-armed Cross-linkers
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作者 Qiang CHEN Ying GUAN +2 位作者 Xian Min ZHANG Yu Xing PENG Jian XU 《Chinese Chemical Letters》 SCIE CAS CSCD 2001年第11期1029-1032,共4页
The overall cross-linking copolymerization of acrylic acid and multi-armed cross-linkers are investigated by in situ interferometry. The results show that the more arms the cross-linkers have, the higher the polymeriz... The overall cross-linking copolymerization of acrylic acid and multi-armed cross-linkers are investigated by in situ interferometry. The results show that the more arms the cross-linkers have, the higher the polymerization rate is. However, they also mean the existence of less cross-linking efficiency and some defects in gel network. 展开更多
关键词 multi-armed cross-linker acrylic acid in situ interferometry
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Stochastic programming based multi-arm bandit offloading strategy for internet of things
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作者 Bin Cao Tingyong Wu Xiang Bai 《Digital Communications and Networks》 SCIE CSCD 2023年第5期1200-1211,共12页
In order to solve the high latency of traditional cloud computing and the processing capacity limitation of Internet of Things(IoT)users,Multi-access Edge Computing(MEC)migrates computing and storage capabilities from... In order to solve the high latency of traditional cloud computing and the processing capacity limitation of Internet of Things(IoT)users,Multi-access Edge Computing(MEC)migrates computing and storage capabilities from the remote data center to the edge of network,providing users with computation services quickly and directly.In this paper,we investigate the impact of the randomness caused by the movement of the IoT user on decision-making for offloading,where the connection between the IoT user and the MEC servers is uncertain.This uncertainty would be the main obstacle to assign the task accurately.Consequently,if the assigned task cannot match well with the real connection time,a migration(connection time is not enough to process)would be caused.In order to address the impact of this uncertainty,we formulate the offloading decision as an optimization problem considering the transmission,computation and migration.With the help of Stochastic Programming(SP),we use the posteriori recourse to compensate for inaccurate predictions.Meanwhile,in heterogeneous networks,considering multiple candidate MEC servers could be selected simultaneously due to overlapping,we also introduce the Multi-Arm Bandit(MAB)theory for MEC selection.The extensive simulations validate the improvement and effectiveness of the proposed SP-based Multi-arm bandit Method(SMM)for offloading in terms of reward,cost,energy consumption and delay.The results showthat SMMcan achieve about 20%improvement compared with the traditional offloading method that does not consider the randomness,and it also outperforms the existing SP/MAB based method for offloading. 展开更多
关键词 Multi-access computing Internet of things OFFLOADING Stochastic programming multi-arm bandit
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Starlet:Network defense resource allocation with multi-armed bandits for cloud-edge crowd sensing in IoT
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作者 Hui Xia Ning Huang +2 位作者 Xuecai Feng Rui Zhang Chao Liu 《Digital Communications and Networks》 SCIE CSCD 2024年第3期586-596,共11页
The cloud platform has limited defense resources to fully protect the edge servers used to process crowd sensing data in Internet of Things.To guarantee the network's overall security,we present a network defense ... The cloud platform has limited defense resources to fully protect the edge servers used to process crowd sensing data in Internet of Things.To guarantee the network's overall security,we present a network defense resource allocation with multi-armed bandits to maximize the network's overall benefit.Firstly,we propose the method for dynamic setting of node defense resource thresholds to obtain the defender(attacker)benefit function of edge servers(nodes)and distribution.Secondly,we design a defense resource sharing mechanism for neighboring nodes to obtain the defense capability of nodes.Subsequently,we use the decomposability and Lipschitz conti-nuity of the defender's total expected utility to reduce the difference between the utility's discrete and continuous arms and analyze the difference theoretically.Finally,experimental results show that the method maximizes the defender's total expected utility and reduces the difference between the discrete and continuous arms of the utility. 展开更多
关键词 Internet of things Defense resource sharing multi-armed bandits Defense resource allocation
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Training a Quantum Neural Network to Solve the Contextual Multi-Armed Bandit Problem
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作者 Wei Hu James Hu 《Natural Science》 2019年第1期17-27,共11页
Artificial intelligence has permeated all aspects of our lives today. However, to make AI behave like real AI, the critical bottleneck lies in the speed of computing. Quantum computers employ the peculiar and unique p... Artificial intelligence has permeated all aspects of our lives today. However, to make AI behave like real AI, the critical bottleneck lies in the speed of computing. Quantum computers employ the peculiar and unique properties of quantum states such as superposition, entanglement, and interference to process information in ways that classical computers cannot. As a new paradigm of computation, quantum computers are capable of performing tasks intractable for classical processors, thus providing a quantum leap in AI research and making the development of real AI a possibility. In this regard, quantum machine learning not only enhances the classical machine learning approach but more importantly it provides an avenue to explore new machine learning models that have no classical counterparts. The qubit-based quantum computers cannot naturally represent the continuous variables commonly used in machine learning, since the measurement outputs of qubit-based circuits are generally discrete. Therefore, a continuous-variable (CV) quantum architecture based on a photonic quantum computing model is selected for our study. In this work, we employ machine learning and optimization to create photonic quantum circuits that can solve the contextual multi-armed bandit problem, a problem in the domain of reinforcement learning, which demonstrates that quantum reinforcement learning algorithms can be learned by a quantum device. 展开更多
关键词 Continuous-Variable QUANTUM COMPUTERS QUANTUM Machine LEARNING QUANTUM Reinforcement LEARNING CONTEXTUAL multi-armed BANDIT PROBLEM
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Strict greedy design paradigm applied to the stochastic multi-armed bandit problem
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作者 Joey Hong 《机床与液压》 北大核心 2015年第6期1-6,共6页
The process of making decisions is something humans do inherently and routinely,to the extent that it appears commonplace. However,in order to achieve good overall performance,decisions must take into account both the... The process of making decisions is something humans do inherently and routinely,to the extent that it appears commonplace. However,in order to achieve good overall performance,decisions must take into account both the outcomes of past decisions and opportunities of future ones. Reinforcement learning,which is fundamental to sequential decision-making,consists of the following components: 1 A set of decisions epochs; 2 A set of environment states; 3 A set of available actions to transition states; 4 State-action dependent immediate rewards for each action.At each decision,the environment state provides the decision maker with a set of available actions from which to choose. As a result of selecting a particular action in the state,the environment generates an immediate reward for the decision maker and shifts to a different state and decision. The ultimate goal for the decision maker is to maximize the total reward after a sequence of time steps.This paper will focus on an archetypal example of reinforcement learning,the stochastic multi-armed bandit problem. After introducing the dilemma,I will briefly cover the most common methods used to solve it,namely the UCB and εn- greedy algorithms. I will also introduce my own greedy implementation,the strict-greedy algorithm,which more tightly follows the greedy pattern in algorithm design,and show that it runs comparably to the two accepted algorithms. 展开更多
关键词 Greedy algorithms Allocation strategy Stochastic multi-armed bandit problem
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Meta-Analysis of Multi-Arm Trials Using Binomial Approach
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作者 Hathaikan Chootrakool Pichet Treewai 《Open Journal of Statistics》 2022年第1期15-32,共18页
Most meta-analysis has concentrated on combining of treatment effect measures based on comparisons of two treatments. Meta-analysis of multi-arm trials is a key component of submission to summarize evidence from all p... Most meta-analysis has concentrated on combining of treatment effect measures based on comparisons of two treatments. Meta-analysis of multi-arm trials is a key component of submission to summarize evidence from all possible studies. In this paper, an exact binomial model is proposed by using logistic regression model to compare different treatment in multi-arm trials. Two approaches such as unconditional maximum likelihood and conditional maximum likelihood have been determined and compared for the logistic regression model. The proposed models are performed using the data from 27 randomized clinical trials (RCTs) which determine the efficacy of antiplatelet therapy in reduction venous thrombosis and pulmonary embolism. 展开更多
关键词 META-ANALYSIS multi-arm Trials Binomial Approach
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Diversity-Based Recruitment in Crowdsensing by Combinatorial Multi-Armed Bandits
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作者 Abdalaziz Sawwan Jie Wu 《Tsinghua Science and Technology》 2025年第2期732-747,共16页
Mobile Crowdsensing(MCS)represents a transformative approach to collecting data from the environment as it utilizes the ubiquity and sensory capabilities of mobile devices with human participants.This paradigm enables... Mobile Crowdsensing(MCS)represents a transformative approach to collecting data from the environment as it utilizes the ubiquity and sensory capabilities of mobile devices with human participants.This paradigm enables scales of data collection critical for applications ranging from environmental monitoring to urban planning.However,the effective harnessing of this distributed data collection capability faces significant challenges.One of the most significant challenges is the variability in the sensing qualities of the participating devices while they are initially unknown and must be learned over time to optimize task assignments.This paper tackles the dual challenges of managing task diversity to mitigate data redundancy and optimizing task assignment amidst the inherent variability of worker performance.We introduce a novel model that dynamically adjusts task weights based on assignment frequency to promote diversity and incorporates a flexible approach to account for the different qualities of task completion,especially in scenarios with overlapping task assignments.Our strategy aims to maximize the overall weighted quality of data collected within the constraints of a predefined budget.Our strategy leverages a combinatorial multi-armed bandit framework with an upper confidence bound approach to guide decision-making.We demonstrate the efficacy of our approach through a combination of regret analysis and simulations grounded in realistic scenarios. 展开更多
关键词 diverse allocation mobile crowdsensing multi-agent systems multi-armed bandits online learning worker recruitment
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Collaborative DNN inference in maritime edge intelligence networks with group neural multi-armed bandits
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作者 Yulei Wang Shishi Liu +1 位作者 Di Bai Yongqiang Cui 《Intelligent and Converged Networks》 2025年第4期378-391,共14页
Collaborative Deep Neural Networks(DNNs)inference has emerged as a promising paradigm for growing number of artificial intelligence-integrated maritime Internet of Things(IoT)devices in maritime edge intelligence netw... Collaborative Deep Neural Networks(DNNs)inference has emerged as a promising paradigm for growing number of artificial intelligence-integrated maritime Internet of Things(IoT)devices in maritime edge intelligence networks.However,the resource constraints of devices,the delay-sensitive nature of tasks,and the dynamic environmental conditions present significant challenges.While Multi-Armed Bandit(MAB)algorithms have been explored for task offloading,their performance is often constrained in highly dynamic scenarios with complex,nonlinear utility dependencies.To address these challenges,we propose a Group Neural MAB(GN-MAB)approach that jointly optimizes idle device selection(i.e.,arm groups)and DNN partitioning decisions(i.e.,arms)for efficient collaborative inference.Building upon the neural upper confidence bound algorithm,GN-MAB dynamically balances the exploration and exploitation,enabling continuous adaptation of offloading strategies across sequential inference tasks.Extensive experimental results show that GN-MAB outperforms baseline approaches,achieving superior inference performance while exhibiting robust adaptability to the fluctuating conditions of maritime environments. 展开更多
关键词 collaborative Deep Neural Networks(DNNs)inference Maritime Edge Intelligence Networks(MEIN) multi-armed Bandits(MAB) neural bandits
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基于Kriging模型与NSGA-Ⅱ算法的500 kV复合横担均压屏蔽装置设计优化
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作者 杨暘 刘鹏 黄力 《高压电器》 北大核心 2026年第2期183-193,共11页
超高压输电线路复合横担的绝缘结构复杂,部分重要区域电场畸变严重,极易发生电晕放电和电蚀损破坏,合理且有效的配置均压屏蔽装置是保障复合横担杆塔安全稳定运行的重要环节。为确定均压屏蔽装置的外形结构和具体参数尺寸,文中建立复合... 超高压输电线路复合横担的绝缘结构复杂,部分重要区域电场畸变严重,极易发生电晕放电和电蚀损破坏,合理且有效的配置均压屏蔽装置是保障复合横担杆塔安全稳定运行的重要环节。为确定均压屏蔽装置的外形结构和具体参数尺寸,文中建立复合横担三维模型,首先利用有限元仿真软件获得复合横担无均压屏蔽装置下的电场分布情况,分析场强畸变严重部位电场分布特性并对均压屏蔽装置进行初步设计;然后,采用最优拉丁超立方设计方法在均压屏蔽装置结构参数变量空间中抽取试验样本点,通过有限元仿真获得不同样本点下的复合横担和均压屏蔽装置表面电场分布;其次,通过构建Kriging模型,搭建复合横担和均压屏蔽装置测点场强与均压屏蔽装置结构参数的响应关系近似模型,并基于灵敏度分析技术获得各结构参数对复合横担和均压屏蔽装置表面最高场强的影响程度;最后,通过第二代非劣排序遗传算法,获得最优均压屏蔽装置结构参数。结果表明,加装文中设计优化后的均压屏蔽装置,复合横担柱式绝缘子沿面场强峰值下降约63.5%,悬式绝缘子沿面场强峰值下降约54.7%,并且复合横担沿面场强和均压屏蔽装置表面场强均满足控制要求。优化方法为输电线路均压屏蔽装置优化设计提供重要的参考价值。 展开更多
关键词 复合横担 均压屏蔽装置 多目标遗传算法 KRIGING模型
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Hierarchical path planning for multi-arm spacecraft with general translational and rotational locomotion mode 被引量:10
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作者 YUE ChengFei LIN Tao +2 位作者 ZHANG Xiao CHEN XueQin CAO XiBin 《Science China(Technological Sciences)》 SCIE EI CAS CSCD 2023年第4期1180-1191,共12页
On-orbit construction and maintenance technology will play a significant role in future space exploration.The dexterous multifunctional spacecraft equipped with multi-arm,for instance,Spider Fab Bot,has attracted a gr... On-orbit construction and maintenance technology will play a significant role in future space exploration.The dexterous multifunctional spacecraft equipped with multi-arm,for instance,Spider Fab Bot,has attracted a great deal of focus due to its versatility in completing these missions.In such engineering practice,point-to-point moving in a complex environment is the fundamental issue.This paper investigates the three-dimensional point-to-point path planning problem,and a hierarchical path planning architecture is developed to give the trajectory of the multi-arm spacecraft effectively and efficiently.In the proposed 3-level architecture,the high-level planner generates the global constrained centric trajectory of the spacecraft with a rigid envelop assumption;the middle-level planner contributes the action sequence,a combination of the newly developed general translational and rotational locomotion mode,to cope with the relative position and attitude of the arms about the centroid of the spacecraft;the low-level planner maps the position/attitude of the end-effector of each arm from the operational space to the joint space optimally.Finally,the simulation experiment is carried out,and the results verify the effectiveness of the proposed three-layer architecture path planning strategy. 展开更多
关键词 multi-arm spacecraft path planning hierarchical architecture locomotion mode translational locomotion rotational locomotion
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Simultaneously inducing synthesis of semiconductor selenium multi-armed nanorods and nanobars through bio-membrane bi-templates 被引量:3
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作者 LI Li1, WU Qingsheng1 DING Yaping2 & LI Ping3 1. Department of Chemistry, Tongji University, Shanghai 200092, China 2. Department of Chemistry, Shanghai University, Shanghai 200436, China 3. Department of Food, Anhui Agricultural University, Hefei 230036, China 《Science China Chemistry》 SCIE EI CAS 2004年第6期507-511,共5页
Multi-armed nanorods and nanobars of semiconductor selenium were simultane- ously synthesized in the light of biomineralization process through bio-membrane bi-templates of rush at room temperature. The multi-armed na... Multi-armed nanorods and nanobars of semiconductor selenium were simultane- ously synthesized in the light of biomineralization process through bio-membrane bi-templates of rush at room temperature. The multi-armed nanorods are 60 nm in diameter and 1.5 μm in length; the nanobars are 150 nm in diameter and 1000—1100 nm in length. The XRD pattern indicates that these nanocrystals were crystallized in the hexagonal structure with lattice constants a = 0.437 nm, c = 0.495 nm. The possible formation mechanism was investigated. 展开更多
关键词 selenium multi-armed nanorods nanobars bio-membrane bi-templates.
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Residential HVAC Aggregation Based on Risk-averse Multi-armed Bandit Learning for Secondary Frequency Regulation 被引量:8
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作者 Xinyi Chen Qinran Hu +3 位作者 Qingxin Shi Xiangjun Quan Zaijun Wu Fangxing Li 《Journal of Modern Power Systems and Clean Energy》 SCIE EI CSCD 2020年第6期1160-1167,共8页
As the penetration of renewable energy continues to increase,stochastic and intermittent generation resources gradually replace the conventional generators,bringing significant challenges in stabilizing power system f... As the penetration of renewable energy continues to increase,stochastic and intermittent generation resources gradually replace the conventional generators,bringing significant challenges in stabilizing power system frequency.Thus,aggregating demand-side resources for frequency regulation attracts attentions from both academia and industry.However,in practice,conventional aggregation approaches suffer from random and uncertain behaviors of the users such as opting out control signals.The risk-averse multi-armed bandit learning approach is adopted to learn the behaviors of the users and a novel aggregation strategy is developed for residential heating,ventilation,and air conditioning(HVAC)to provide reliable secondary frequency regulation.Compared with the conventional approach,the simulation results show that the risk-averse multiarmed bandit learning approach performs better in secondary frequency regulation with fewer users being selected and opting out of the control.Besides,the proposed approach is more robust to random and changing behaviors of the users. 展开更多
关键词 HEATING ventilation and air conditioning(HVAC) load control multi-armed bandit online learning secondary frequency regulation
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An in situ dressing material containing a multi-armed antibiotic for healing irregular wounds 被引量:1
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作者 Ruihua Dong Mian Chen +4 位作者 Yuexiao Jia Hao Tang Ziyin Xiong Yunze Long Xingyu Jiang 《Aggregate》 EI CAS 2024年第3期248-257,共10页
Acute and infected wounds resulting from accidents,battlefield trauma,or surgical interventions have become a global healthcare burden due to the complex bacterial infection environment.However,conventional gauze dres... Acute and infected wounds resulting from accidents,battlefield trauma,or surgical interventions have become a global healthcare burden due to the complex bacterial infection environment.However,conventional gauze dressings present insufficient contact with irregular wounds and lack antibacterial activity against multi-drug-resistant bacteria.In this study,we develop in situ nanofibrous dressings tailored tofit wounds of various shapes and sizes while providing nanoscale comfort and excellent antibacterial properties.Our approach involves the fabrication of these dressings using a handheld electrospinning device that allows for the direct depo-sition of nanofiber dressings onto specific irregular wound sites,resulting in perfect conformal wound closure without any mismatch in 2 min.The nanofibrous dressings are loaded with multi-armed antibiotics that exhibit outstanding antibacterial activ-ity against Staphylococcus aureus(S.aureus)and methicillin-resistant S.aureus.Compared to conventional vancomycin,this in situ nanofibrous dressing shows great antibacterial performance against up to 98%of multi-drug-resistant bacteria.In vitro and in vivo experiments demonstrate the ability of in situ nanofibrous dressings to prevent multi-drug-resistant bacterial infection,greatly alleviate inflammation,and promote wound healing.Ourfindings highlight the potential of these personalized nanofibrous dressings for clinical applications,including emergency,accident,and surgical healthcare treatment. 展开更多
关键词 deposited nanofibrous dressing multi-armed antibiotics personalized healthcare portable electrospin-ning device
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面向标准化果园的多臂采摘机器人结构参数优化
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作者 吴维理 万熠 +1 位作者 李亚男 唐东浩 《自动化与仪表》 2026年第2期36-42,48,共8页
在矮砧密植结构化果园中,果实分布密集且空间层次复杂,对采摘机器人提出了作业空间、结构布局协调性等多方面要求。该文设计双侧对称布置的上下两组五自由度龙门式机械臂,并基于改进D-H方法建立运动学模型与逆解推导。以各关节行程及关... 在矮砧密植结构化果园中,果实分布密集且空间层次复杂,对采摘机器人提出了作业空间、结构布局协调性等多方面要求。该文设计双侧对称布置的上下两组五自由度龙门式机械臂,并基于改进D-H方法建立运动学模型与逆解推导。以各关节行程及关键结构参数为优化变量,提出覆盖范围、结构紧凑性、上下臂冗余覆盖能力与结构兼容性4个目标,采用CMOEACD多目标进化算法优化,并通过Tsallis Entropy-TOPSIS方法筛选最优解。最终搭建样机并进行采摘实验,验证了优化设计的有效性。 展开更多
关键词 多臂采摘机器人 龙门式机械臂 多目标优化 结构参数优化
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基于多臂赌博机的RIS辅助MIMO主被动波束成形设计
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作者 沈天泽 汪革 +2 位作者 宋云超 高天宝 梁汇彬 《电信科学》 北大核心 2026年第2期45-58,共14页
可重构智能表面(reconfigurable intelligent surface,RIS)因其低功耗、易调节、辅助通信等优势,被广泛应用于毫米波通信领域,现有大多数传输方案利用信道状态信息设计预编码和RIS的被动波束成形矩阵,然而,这将消耗较大的导频开销,导致... 可重构智能表面(reconfigurable intelligent surface,RIS)因其低功耗、易调节、辅助通信等优势,被广泛应用于毫米波通信领域,现有大多数传输方案利用信道状态信息设计预编码和RIS的被动波束成形矩阵,然而,这将消耗较大的导频开销,导致频谱效率下降。基于此,利用多臂赌博机(multi-armed bandit,MAB)算法进行RIS辅助多输入多输出(multiple-input multiple-output,MIMO)系统的波束成形设计,该算法从历史数据中获取信道协方差矩阵,并用于波束成形设计,以降低导频开销。具体来说,将被动波束成形矩阵设计问题建模为MAB问题,结合线性上置信界(linear upper confidence bound,LinUCB)算法框架来估计信道协方差矩阵,将有效频谱效率设置为奖励、RIS相移向量设置为动作,提出利用层级贪婪搜索算法选择最大化有效频谱效率之和的方法获取相移向量。仿真结果表明,所提出的算法在减少导频开销、提高有效频谱效率方面表现良好,展示了其优越性。 展开更多
关键词 可重构智能表面 多输入多输出 多臂赌博机 线性上置信界算法
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