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低温等离子体联合VB6和VC胁迫对紫花芸豆发芽富集γ-氨基丁酸的影响
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作者 高瑞楠 许庆鹏 +2 位作者 王颖 赵自力 李冰 《食品工业科技》 北大核心 2026年第5期119-127,共9页
为探究低温等离子体(cold atmospheric pressure plasma,CAPP)联合VB6和VC胁迫对紫花芸豆发芽富集γ-氨基丁酸(γ-aminobutyric acid,GABA)含量的富集作用及效果。本实验以紫花芸豆为原料,采用不同浓度VB6溶液和VC溶液联合低温等离子体... 为探究低温等离子体(cold atmospheric pressure plasma,CAPP)联合VB6和VC胁迫对紫花芸豆发芽富集γ-氨基丁酸(γ-aminobutyric acid,GABA)含量的富集作用及效果。本实验以紫花芸豆为原料,采用不同浓度VB6溶液和VC溶液联合低温等离子体发芽,考察不同浓度VB6和VC对低温等离子体处理的芽豆GABA富集量以及相关代谢酶活性的影响。结果表明:低温等离子体联合VB6和VC处理对发芽紫花芸豆富集GABA有促进作用;CAPP联合0.25 mg/mL VC处理后,在发芽72 h时GABA富集量为10.05±0.93 mg/g。CAPP联合0.5 mg/mL VB6处理后,在发芽72 h时GABA富集量为10.09±0.06 mg/g。通过对发芽72 h紫花芸豆相关酶活性分析,CAPP、VB6和VC处理对谷氨酸脱羧酶(GAD)活性有促进作用,但对多胺氧化酶(PAO)活性有一定抑制作用。CAPP联合VB6以及CAPP联合VC处理紫花芸豆发芽都是通过提高GAD活性和抑制γ-氨基丁酸转氨酶(GABA-T)活性从而富集GABA。研究表明CAPP联合VB6和VC胁迫对芸豆发芽富集γ-氨基丁酸有促进作用,为生产富含高GABA食品提供理论参考。 展开更多
关键词 紫花芸豆 发芽 低温等离子体 Γ-氨基丁酸 VB6 vc
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EPVCNet:Enhancing privacy and security for image authentication in computing-sensitive 6G environment
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作者 Muhammad Shafiq Lijing Ren +2 位作者 Denghui Zhang Thippa Reddy Gadekallu Mohammad Mahtab Alam 《Digital Communications and Networks》 2025年第5期1679-1688,共10页
As the 5G architecture gains momentum,interest in 6G is growing.The proliferation of Internet of Things(IoT)devices,capable of capturing sensitive images,has increased the need for secure transmission and robust acces... As the 5G architecture gains momentum,interest in 6G is growing.The proliferation of Internet of Things(IoT)devices,capable of capturing sensitive images,has increased the need for secure transmission and robust access control mechanisms.The vast amount of data generated by low-computing devices poses a challenge to traditional centralized access control,which relies on trusted third parties and complex computations,resulting in intricate interactions,higher hardware costs,and processing delays.To address these issues,this paper introduces a novel distributed access control approach that integrates a decentralized and lightweight encryption mechanism with image transmission.This method enhances data security and resource efficiency without imposing heavy computational and network burdens.In comparison to the best existing approach,it achieves a 7%improvement in accuracy,effectively addressing existing gaps in lightweight encryption and recognition performance. 展开更多
关键词 ISAC IOT Privacy and security vc
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Virtual QPU:A Novel Implementation of Quantum Computing
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作者 Danyang Zheng Jinchen Xv +1 位作者 Xin Zhou Zheng Shan 《Computers, Materials & Continua》 2026年第4期1008-1029,共22页
The increasing popularity of quantum computing has resulted in a considerable rise in demand for cloud quantum computing usage in recent years.Nevertheless,the rapid surge in demand for cloud-based quantum computing r... The increasing popularity of quantum computing has resulted in a considerable rise in demand for cloud quantum computing usage in recent years.Nevertheless,the rapid surge in demand for cloud-based quantum computing resources has led to a scarcity.In order to meet the needs of an increasing number of researchers,it is imperative to facilitate efficient and flexible access to computing resources in a cloud environment.In this paper,we propose a novel quantum computing paradigm,Virtual QPU(VQPU),which addresses this issue and enhances quantum cloud throughput with guaranteed circuit fidelity.The proposal introduces three innovative concepts:(1)The integration of virtualization technology into the field of quantum computing to enhance quantum cloud throughput.(2)The introduction of an asynchronous execution of circuits methodology to improve quantum computing flexibility.(3)The development of a virtual QPU allocation scheme for quantum tasks in a cloud environment to improve circuit fidelity.The concepts have been validated through the utilization of a self-built simulated quantum cloud platform. 展开更多
关键词 Quantum computing scheduling parallel computing computational paradigm
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Back-gate-tuned organic electrochemical transistor with temporal dynamic modulation for reservoir computing
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作者 Qian Xu Jie Qiu +6 位作者 Mengyang Liu Dongzi Yang Tingpan Lan Jie Cao Yingfen Wei Hao Jiang Ming Wang 《Journal of Semiconductors》 2026年第1期118-123,共6页
Organic electrochemical transistor(OECT)devices demonstrate great promising potential for reservoir computing(RC)systems,but their lack of tunable dynamic characteristics limits their application in multi-temporal sca... Organic electrochemical transistor(OECT)devices demonstrate great promising potential for reservoir computing(RC)systems,but their lack of tunable dynamic characteristics limits their application in multi-temporal scale tasks.In this study,we report an OECT-based neuromorphic device with tunable relaxation time(τ)by introducing an additional vertical back-gate electrode into a planar structure.The dual-gate design enablesτreconfiguration from 93 to 541 ms.The tunable relaxation behaviors can be attributed to the combined effects of planar-gate induced electrochemical doping and back-gateinduced electrostatic coupling,as verified by electrochemical impedance spectroscopy analysis.Furthermore,we used theτ-tunable OECT devices as physical reservoirs in the RC system for intelligent driving trajectory prediction,achieving a significant improvement in prediction accuracy from below 69%to 99%.The results demonstrate that theτ-tunable OECT shows a promising candidate for multi-temporal scale neuromorphic computing applications. 展开更多
关键词 neuromorphic computing reservoir computing OECT tunable dynamics trajectory prediction
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Multi-Objective Enhanced Cheetah Optimizer for Joint Optimization of Computation Offloading and Task Scheduling in Fog Computing
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作者 Ahmad Zia Nazia Azim +5 位作者 Bekarystankyzy Akbayan Khalid J.Alzahrani Ateeq Ur Rehman Faheem Ullah Khan Nouf Al-Kahtani Hend Khalid Alkahtani 《Computers, Materials & Continua》 2026年第3期1559-1588,共30页
The cloud-fog computing paradigm has emerged as a novel hybrid computing model that integrates computational resources at both fog nodes and cloud servers to address the challenges posed by dynamic and heterogeneous c... The cloud-fog computing paradigm has emerged as a novel hybrid computing model that integrates computational resources at both fog nodes and cloud servers to address the challenges posed by dynamic and heterogeneous computing networks.Finding an optimal computational resource for task offloading and then executing efficiently is a critical issue to achieve a trade-off between energy consumption and transmission delay.In this network,the task processed at fog nodes reduces transmission delay.Still,it increases energy consumption,while routing tasks to the cloud server saves energy at the cost of higher communication delay.Moreover,the order in which offloaded tasks are executed affects the system’s efficiency.For instance,executing lower-priority tasks before higher-priority jobs can disturb the reliability and stability of the system.Therefore,an efficient strategy of optimal computation offloading and task scheduling is required for operational efficacy.In this paper,we introduced a multi-objective and enhanced version of Cheeta Optimizer(CO),namely(MoECO),to jointly optimize the computation offloading and task scheduling in cloud-fog networks to minimize two competing objectives,i.e.,energy consumption and communication delay.MoECO first assigns tasks to the optimal computational nodes and then the allocated tasks are scheduled for processing based on the task priority.The mathematical modelling of CO needs improvement in computation time and convergence speed.Therefore,MoECO is proposed to increase the search capability of agents by controlling the search strategy based on a leader’s location.The adaptive step length operator is adjusted to diversify the solution and thus improves the exploration phase,i.e.,global search strategy.Consequently,this prevents the algorithm from getting trapped in the local optimal solution.Moreover,the interaction factor during the exploitation phase is also adjusted based on the location of the prey instead of the adjacent Cheetah.This increases the exploitation capability of agents,i.e.,local search capability.Furthermore,MoECO employs a multi-objective Pareto-optimal front to simultaneously minimize designated objectives.Comprehensive simulations in MATLAB demonstrate that the proposed algorithm obtains multiple solutions via a Pareto-optimal front and achieves an efficient trade-off between optimization objectives compared to baseline methods. 展开更多
关键词 Computation offloading task scheduling cheetah optimizer fog computing optimization resource allocation internet of things
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Energy Aware Task Scheduling of IoT Application Using a Hybrid Metaheuristic Algorithm in Cloud Computing
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作者 Ahmed Awad Mohamed Eslam Abdelhakim Seyam +4 位作者 Ahmed R.Elsaeed Laith Abualigah Aseel Smerat Ahmed M.AbdelMouty Hosam E.Refaat 《Computers, Materials & Continua》 2026年第3期1786-1803,共18页
In recent years,fog computing has become an important environment for dealing with the Internet of Things.Fog computing was developed to handle large-scale big data by scheduling tasks via cloud computing.Task schedul... In recent years,fog computing has become an important environment for dealing with the Internet of Things.Fog computing was developed to handle large-scale big data by scheduling tasks via cloud computing.Task scheduling is crucial for efficiently handling IoT user requests,thereby improving system performance,cost,and energy consumption across nodes in cloud computing.With the large amount of data and user requests,achieving the optimal solution to the task scheduling problem is challenging,particularly in terms of cost and energy efficiency.In this paper,we develop novel strategies to save energy consumption across nodes in fog computing when users execute tasks through the least-cost paths.Task scheduling is developed using modified artificial ecosystem optimization(AEO),combined with negative swarm operators,Salp Swarm Algorithm(SSA),in order to competitively optimize their capabilities during the exploitation phase of the optimal search process.In addition,the proposed strategy,Enhancement Artificial Ecosystem Optimization Salp Swarm Algorithm(EAEOSSA),attempts to find the most suitable solution.The optimization that combines cost and energy for multi-objective task scheduling optimization problems.The backpack problem is also added to improve both cost and energy in the iFogSim implementation as well.A comparison was made between the proposed strategy and other strategies in terms of time,cost,energy,and productivity.Experimental results showed that the proposed strategy improved energy consumption,cost,and time over other algorithms.Simulation results demonstrate that the proposed algorithm increases the average cost,average energy consumption,and mean service time in most scenarios,with average reductions of up to 21.15%in cost and 25.8%in energy consumption. 展开更多
关键词 Energy-efficient tasks internet of things(IoT) cloud fog computing artificial ecosystem-based optimization salp swarm algorithm cloud computing
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Two-Dimensional MXene-Based Advanced Sensors for Neuromorphic Computing Intelligent Application
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作者 Lin Lu Bo Sun +2 位作者 Zheng Wang Jialin Meng Tianyu Wang 《Nano-Micro Letters》 2026年第2期664-691,共28页
As emerging two-dimensional(2D)materials,carbides and nitrides(MXenes)could be solid solutions or organized structures made up of multi-atomic layers.With remarkable and adjustable electrical,optical,mechanical,and el... As emerging two-dimensional(2D)materials,carbides and nitrides(MXenes)could be solid solutions or organized structures made up of multi-atomic layers.With remarkable and adjustable electrical,optical,mechanical,and electrochemical characteristics,MXenes have shown great potential in brain-inspired neuromorphic computing electronics,including neuromorphic gas sensors,pressure sensors and photodetectors.This paper provides a forward-looking review of the research progress regarding MXenes in the neuromorphic sensing domain and discussed the critical challenges that need to be resolved.Key bottlenecks such as insufficient long-term stability under environmental exposure,high costs,scalability limitations in large-scale production,and mechanical mismatch in wearable integration hinder their practical deployment.Furthermore,unresolved issues like interfacial compatibility in heterostructures and energy inefficiency in neu-romorphic signal conversion demand urgent attention.The review offers insights into future research directions enhance the fundamental understanding of MXene properties and promote further integration into neuromorphic computing applications through the convergence with various emerging technologies. 展开更多
关键词 TWO-DIMENSIONAL MXenes SENSOR Neuromorphic computing Multimodal intelligent system Wearable electronics
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Mechanical Properties Analysis of Flexible Memristors for Neuromorphic Computing
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作者 Zhenqian Zhu Jiheng Shui +1 位作者 Tianyu Wang Jialin Meng 《Nano-Micro Letters》 2026年第1期53-79,共27页
The advancement of flexible memristors has significantly promoted the development of wearable electronic for emerging neuromorphic computing applications.Inspired by in-memory computing architecture of human brain,fle... The advancement of flexible memristors has significantly promoted the development of wearable electronic for emerging neuromorphic computing applications.Inspired by in-memory computing architecture of human brain,flexible memristors exhibit great application potential in emulating artificial synapses for highefficiency and low power consumption neuromorphic computing.This paper provides comprehensive overview of flexible memristors from perspectives of development history,material system,device structure,mechanical deformation method,device performance analysis,stress simulation during deformation,and neuromorphic computing applications.The recent advances in flexible electronics are summarized,including single device,device array and integration.The challenges and future perspectives of flexible memristor for neuromorphic computing are discussed deeply,paving the way for constructing wearable smart electronics and applications in large-scale neuromorphic computing and high-order intelligent robotics. 展开更多
关键词 Flexible memristor Neuromorphic computing Mechanical property Wearable electronics
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High-Entropy Oxide Memristors for Neuromorphic Computing:From Material Engineering to Functional Integration
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作者 Jia‑Li Yang Xin‑Gui Tang +4 位作者 Xuan Gu Qi‑Jun Sun Zhen‑Hua Tang Wen‑Hua Li Yan-Ping Jiang 《Nano-Micro Letters》 2026年第2期138-169,共32页
High-entropy oxides(HEOs)have emerged as a promising class of memristive materials,characterized by entropy-stabilized crystal structures,multivalent cation coordination,and tunable defect landscapes.These intrinsic f... High-entropy oxides(HEOs)have emerged as a promising class of memristive materials,characterized by entropy-stabilized crystal structures,multivalent cation coordination,and tunable defect landscapes.These intrinsic features enable forming-free resistive switching,multilevel conductance modulation,and synaptic plasticity,making HEOs attractive for neuromorphic computing.This review outlines recent progress in HEO-based memristors across materials engineering,switching mechanisms,and synaptic emulation.Particular attention is given to vacancy migration,phase transitions,and valence-state dynamics—mechanisms that underlie the switching behaviors observed in both amorphous and crystalline systems.Their relevance to neuromorphic functions such as short-term plasticity and spike-timing-dependent learning is also examined.While encouraging results have been achieved at the device level,challenges remain in conductance precision,variability control,and scalable integration.Addressing these demands a concerted effort across materials design,interface optimization,and task-aware modeling.With such integration,HEO memristors offer a compelling pathway toward energy-efficient and adaptable brain-inspired electronics. 展开更多
关键词 High-entropy oxides MEMRISTORS Neuromorphic computing Configurational entropy Resistive switching
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A low-thermal-budget MOSFET-based reservoir computing for temporal data classification
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作者 Yanqing Li Feixiong Wang +5 位作者 Heyi Huang Yadong Zhang Xiangpeng Liang Shuang Liu Jianshi Tang Huaxiang Yin 《Journal of Semiconductors》 2026年第1期42-48,共7页
Neuromorphic devices have garnered significant attention as potential building blocks for energy-efficient hardware systems owing to their capacity to emulate the computational efficiency of the brain.In this regard,r... Neuromorphic devices have garnered significant attention as potential building blocks for energy-efficient hardware systems owing to their capacity to emulate the computational efficiency of the brain.In this regard,reservoir computing(RC)framework,which leverages straightforward training methods and efficient temporal signal processing,has emerged as a promising scheme.While various physical reservoir devices,including ferroelectric,optoelectronic,and memristor-based systems,have been demonstrated,many still face challenges related to compatibility with mainstream complementary metal oxide semiconductor(CMOS)integration processes.This study introduced a silicon-based schottky barrier metal-oxide-semiconductor field effect transistor(SB-MOSFET),which was fabricated under low thermal budget and compatible with back-end-of-line(BEOL).The device demonstrated short-term memory characteristics,facilitated by the modulation of schottky barriers and charge trapping.Utilizing these characteristics,a RC system for temporal data processing was constructed,and its performance was validated in a 5×4 digital classification task,achieving an accuracy exceeding 98%after 50 training epochs.Furthermore,the system successfully processed temporal signal in waveform classification and prediction tasks using time-division multiplexing.Overall,the SB-MOSFET's high compatibility with CMOS technology provides substantial advantages for large-scale integration,enabling the development of energy-efficient reservoir computing hardware. 展开更多
关键词 schottky barrier MOSFET back-end-of-line integration reservoir computing
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Intelligent Resource Allocation for Multiaccess Edge Computing in 5G Ultra-Dense Slicing Network Using Federated Multiagent DDPG Algorithm
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作者 Gong Yu Gong Pengwei +3 位作者 Jiang He Xie Wen Wang Chenxi Xu Peijun 《China Communications》 2026年第1期273-289,共17页
Nowadays,advances in communication technology and cloud computing have spawned a variety of smart mobile devices,which will generate a great amount of computing-intensive businesses,and require corresponding resources... Nowadays,advances in communication technology and cloud computing have spawned a variety of smart mobile devices,which will generate a great amount of computing-intensive businesses,and require corresponding resources of computation and communication.Multiaccess edge computing(MEC)can offload computing-intensive tasks to the nearby edge servers,which alleviates the pressure of devices.Ultra-dense network(UDN)can provide effective spectrum resources by deploying a large number of micro base stations.Furthermore,network slicing can support various applications in different communication scenarios.Therefore,this paper integrates the ultra-dense network slicing and the MEC technology,and introduces a hybrid computing offloading strategy in order to satisfy various quality of service(QoS)of edge devices.In order to dynamically allocate limited resources,the above problem is formulated as multiagent distributed deep reinforcement learning(DRL),which will achieve low overhead computation offloading strategy and real-time resource allocation decisions.In this context,federated learning is added to train DRL agents in a distributed manner,where each agent is dedicated to exploring actions composed of offloading decisions and allocating resources,so as to jointly optimize system delay and energy consumption.Simulation results show that the proposed learning algorithm has better performance compared with other strategies in literature. 展开更多
关键词 federated learning multiaccess edge computing mutiagent deep reinforcement learning resource allocation ultra-dense slicing network
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Lightweight YOLOv5 with ShuffleNetV2 for Rice Disease Detection in Edge Computing
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作者 Qingtao Meng Sang-Hyun Lee 《Computers, Materials & Continua》 2026年第1期1395-1409,共15页
This study proposes a lightweight rice disease detection model optimized for edge computing environments.The goal is to enhance the You Only Look Once(YOLO)v5 architecture to achieve a balance between real-time diagno... This study proposes a lightweight rice disease detection model optimized for edge computing environments.The goal is to enhance the You Only Look Once(YOLO)v5 architecture to achieve a balance between real-time diagnostic performance and computational efficiency.To this end,a total of 3234 high-resolution images(2400×1080)were collected from three major rice diseases Rice Blast,Bacterial Blight,and Brown Spot—frequently found in actual rice cultivation fields.These images served as the training dataset.The proposed YOLOv5-V2 model removes the Focus layer from the original YOLOv5s and integrates ShuffleNet V2 into the backbone,thereby resulting in both model compression and improved inference speed.Additionally,YOLOv5-P,based on PP-PicoDet,was configured as a comparative model to quantitatively evaluate performance.Experimental results demonstrated that YOLOv5-V2 achieved excellent detection performance,with an mAP 0.5 of 89.6%,mAP 0.5–0.95 of 66.7%,precision of 91.3%,and recall of 85.6%,while maintaining a lightweight model size of 6.45 MB.In contrast,YOLOv5-P exhibited a smaller model size of 4.03 MB,but showed lower performance with an mAP 0.5 of 70.3%,mAP 0.5–0.95 of 35.2%,precision of 62.3%,and recall of 74.1%.This study lays a technical foundation for the implementation of smart agriculture and real-time disease diagnosis systems by proposing a model that satisfies both accuracy and lightweight requirements. 展开更多
关键词 Lightweight object detection YOLOv5-V2 ShuffleNet V2 edge computing rice disease detection
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基于VC++的智能冷库监控系统设计 被引量:1
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作者 李秀美 狄敬国 +1 位作者 王凤杰 田欣 《机电产品开发与创新》 2025年第1期14-16,共3页
在研究计算机链接通信协议的基础上,设计开发了基于VC++的智能冷库监控系统,对于提高农业果蔬冷藏质量、降低成本都具有重要的意义。该系统选用松下FP1型PLC,采用Visual C++编程,向PLC发送命令,与PLC进行信息交换,实现了监控冷库的运行... 在研究计算机链接通信协议的基础上,设计开发了基于VC++的智能冷库监控系统,对于提高农业果蔬冷藏质量、降低成本都具有重要的意义。该系统选用松下FP1型PLC,采用Visual C++编程,向PLC发送命令,与PLC进行信息交换,实现了监控冷库的运行状态、给定运行参数、查询历史数据等功能,数据传输稳定,监控效果直观,操作方法简便,人机界面友好,其做法可以为开发其他PLC监控系统提供有价值的参考。 展开更多
关键词 vc++ PLC FP1 串行通信
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“生活即教育”理念驱动下仪器分析教学改革探索与实践——以市售常见果蔬食品和保健品中VC含量比较为例 被引量:1
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作者 俞晟 徐小云 陈一虎 《科学咨询》 2025年第11期135-138,共4页
以市售常见果蔬食品和维生素保健品中VC含量的对比分析为立足点,按照“方案制定—原材料收集—预处理—VC检测—结果比较”的工作目标任务执行程序。此过程旨在提高学生在VC含量鉴定问题中实际工况分析的能力,增强其运用Excel和SPSS工... 以市售常见果蔬食品和维生素保健品中VC含量的对比分析为立足点,按照“方案制定—原材料收集—预处理—VC检测—结果比较”的工作目标任务执行程序。此过程旨在提高学生在VC含量鉴定问题中实际工况分析的能力,增强其运用Excel和SPSS工具软件绘制标准曲线的熟练度,提升其将线性相关系数从R^(2)=0.9955提升至R^(2)=0.9999并稳定保持在R2=0.9999等方面的分析检测技能。同时,学生可以在实践中感受世间烟火气,体会菜篮子中的幸福,见证科技发展进步对日常生活的改变。此外,通过对比果蔬和保健品中的VC含量,还原果蔬和保健品被奉为“VC神药”的真实情况,使学生明确作为食品检测专业人员,需要时刻保持清醒的头脑,不盲目迷信市售保健品。 展开更多
关键词 vc 果蔬食品 保健品 含量
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基于MioT.VC的汽车发动机装配产线仿真设计 被引量:1
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作者 梁生龙 《自动化应用》 2025年第13期274-277,共4页
针对传统汽车发动机装配产线设计过程中效率低、成本高、动态调整能力不足的问题,提出一种基于MioT.VC的装配产线仿真设计方法。通过集成数字孪生、物联网与虚拟协作技术,构建了发动机装配产线的多维度虚拟仿真模型,实现了装配流程的动... 针对传统汽车发动机装配产线设计过程中效率低、成本高、动态调整能力不足的问题,提出一种基于MioT.VC的装配产线仿真设计方法。通过集成数字孪生、物联网与虚拟协作技术,构建了发动机装配产线的多维度虚拟仿真模型,实现了装配流程的动态可视化与实时优化。研究首先在MIoT.VC软件中导入AGV、人工、UR5机械臂、升降机、输送线、仓储货架等生产单元三维模型并进行布局设计,然后进行了产线工艺设计,搭建了包含机械臂运动轨迹、物料配送路径及人员操作逻辑的协同仿真环境,最后结合实时数据采集与深度学习算法,对装配节拍、资源利用率及潜在瓶颈进行了动态预测与迭代优化。实验结果表明,与传统方法相比,该仿真系统的装配效率提升18.6%,设计周期缩短32%,且能有效识别并规避90%以上的潜在冲突。 展开更多
关键词 美擎仿真MioT.vc 数字孪生 产线 仿真设计 布局规划
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VC与婴幼儿健康及母乳中VC含量研究进展
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作者 贾宏信 苏米亚 +1 位作者 陈文亮 曲也直 《乳业科学与技术》 2025年第1期41-45,共5页
母乳中含有丰富的VC,能满足新生儿早期生长发育的需要。VC被证明具有预防坏血病、治疗缺氧缺血性脑病及预防胎盘脱落等作用。本文介绍不同国家、地区母乳中VC的含量、影响因素及其健康作用等,以期为婴幼儿配方乳粉的发展提供参考。
关键词 vc 母乳 婴幼儿配方乳粉 坏血病
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激光熔覆Fe/TiC-VC涂层的耐磨性能研究
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作者 马天兵 李勇 +2 位作者 俞延庆 沈晨 边策 《安徽理工大学学报(自然科学版)》 2025年第3期17-24,共8页
目的为了探究金属基复合涂层对截齿齿身用42CrMo合金钢耐磨性能的提升作用。方法在42CrMo合金钢表面制备激光熔覆TiC-VC增强Fe基涂层。使用光学/电子显微镜表征涂层的宏观/微观截面形貌,采用显微硬度仪测定涂层的显微硬度,利用摩擦磨损... 目的为了探究金属基复合涂层对截齿齿身用42CrMo合金钢耐磨性能的提升作用。方法在42CrMo合金钢表面制备激光熔覆TiC-VC增强Fe基涂层。使用光学/电子显微镜表征涂层的宏观/微观截面形貌,采用显微硬度仪测定涂层的显微硬度,利用摩擦磨损试验机测试涂层的摩擦学性能。结果由于熔覆层吸收激光能量并向下传递,涂层温度自上而下逐渐降低。涂层顶部更高的温度和持续时间使TiC大颗粒发生更多的溶解,导致涂层顶部TiC数量和尺寸远低于涂层底部。溶解的TiC颗粒会与VC/Fe粉末结合生成复合碳化物小颗粒并弥散分布在涂层中。由于复合碳化物小颗粒的弥散强化作用,涂层的硬度从347.2 HV0.2提升至1011.7 HV0.2,滑动摩擦系数从0.581降至0.484。激光熔覆前后材料的磨损机制均为磨粒磨损和氧化磨损,但熔覆后犁沟痕迹更加轻微,且磨损体积仅为熔覆前的10.2%。结论激光熔覆TiC-VC增强Fe基涂层能显著提高42CrMo合金钢的耐磨性,可为截齿齿身耐磨防护提供参考。 展开更多
关键词 激光熔覆 Fe/TiC-vc涂层 微观组织 耐磨性
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等离子原位制备VC增强Al_(1.5)CoCrFeNi高熵合金熔覆层的组织与力学性能 被引量:1
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作者 王虎 秦晓婷 +1 位作者 王智慧 贺定勇 《表面技术》 北大核心 2025年第3期110-117,共8页
目的制备不同含量碳化物增强BCC结构的高熵合金熔覆层,研究碳化物含量对其微观组织和力学性能的影响规律。方法在Q235钢表面采用等离子原位合成技术制备Al_(1.5)CoCrFeNi(VC)x(x为0、0.1、0.2、0.3)高熵合金熔覆层,研究VC含量对其物相... 目的制备不同含量碳化物增强BCC结构的高熵合金熔覆层,研究碳化物含量对其微观组织和力学性能的影响规律。方法在Q235钢表面采用等离子原位合成技术制备Al_(1.5)CoCrFeNi(VC)x(x为0、0.1、0.2、0.3)高熵合金熔覆层,研究VC含量对其物相组成、微观组织及力学性能的影响。结果在x=0时,熔覆层为简单体心立方(BCC)固溶体结构,微观组织呈典型的树枝晶,枝晶内为富含Al、Ni的BCC固溶体,枝晶间为富含Cr、Fe的BCC固溶体。在加入V、C后(x为0.1、0.2、0.3),物相组成转变为BCC相、原位合成的VC增强相及少量的σ相。VC呈颗粒状、长条状及十字状,主要偏聚于基体的树枝晶间,少数从枝晶内析出,且随着V、C含量的提高,VC的析出量逐渐上升。TEM结果显示,原位合成的VC增强相与基体之间的界面整洁,无反应物生成。当VC的含量x由0提高至0.3时,熔覆层的硬度由529.3HV增至829.8HV,磨损率由34.88mg/min降至2.45mg/min。在x=0时,熔覆层的磨损形式以微观切削为主,以多次塑性变形为辅;在原位合成VC增强相后(x为0.1、0.3),熔覆层的磨损形式以微观切削为主。结论原位合成VC对高熵合金起到了明显的强化作用,随着VC含量的增加(x为0~0.3),熔覆层的显微硬度和耐磨性逐渐增加。 展开更多
关键词 等离子熔覆 原位合成 高熵合金 vc 微观组织 力学性能
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VC含量对超细硬质合金微观组织和性能的影响 被引量:1
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作者 陈轩恒 刘昌斌 +4 位作者 刘风光 罗双兰 颜练武 伍小波 彭英彪 《湖南工业大学学报》 2025年第3期98-104,共7页
WC-Co基超细晶硬质合金具优异综合力学性能,成为制备高性能切削刀具的理想材料。为改善WC-Co基硬质合金的综合性能,制备了具不同碳化钒(VC)含量的超细硬质合金,研究了VC添加量对(V,W)C立方相团聚、烧结过程中WC三维晶粒形貌演变及力学... WC-Co基超细晶硬质合金具优异综合力学性能,成为制备高性能切削刀具的理想材料。为改善WC-Co基硬质合金的综合性能,制备了具不同碳化钒(VC)含量的超细硬质合金,研究了VC添加量对(V,W)C立方相团聚、烧结过程中WC三维晶粒形貌演变及力学性能的影响,并利用热力学计算对(V,W)C立方相团聚现象进行理论分析。结果表明:VC在黏结相的固溶度较小,当VC添加质量分数为0.3%时,黏结相中过饱和的V在液态黏结相中迅速析出,导致组织中出现(V,W)C团聚立方相;随着VC添加量继续增加,V的过饱和析出量和析出温度进一步增加,导致团聚组织尺寸显著增加,严重影响了材料的组织均匀性;VC在WC/Co界面的偏析导致WC晶粒呈现台阶状三棱柱形貌,该形貌随VC添加量和烧结温度的增加而更显著;随着VC添加质量分数从0.1%增至0.6%,合金的矫顽磁力显著增加,维氏硬度亦呈上升趋势,而断裂韧性则呈下降趋势。当VC添加质量分数为0.6%时,合金展现出最佳综合性能,维氏硬度和断裂韧性分别为17.9 kN/mm^(2)和8.9 MPa·m^(1/2),相对磁饱和和矫顽磁力分别为88.5%和31.57 kA/m。 展开更多
关键词 WC-CO硬质合金 vc 微观组织 力学性能 热力学计算
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