期刊文献+
共找到91,035篇文章
< 1 2 250 >
每页显示 20 50 100
不同剂量托法替布对中重度类风湿关节炎患者DAS28评分及血清学指标的影响
1
作者 郭培霞 王振杰 苏晖莹 《西北药学杂志》 2026年第1期244-250,共7页
目的分析不同剂量托法替布对中重度类风湿关节炎(rheumatoid arthritis,RA)患者28个关节的肿胀数和压痛数表(Disease Activity Score 28,DAS28)评分及血清学指标的影响。方法选取于2021年8月至2024年3月收治的136例中重度RA患者作为研... 目的分析不同剂量托法替布对中重度类风湿关节炎(rheumatoid arthritis,RA)患者28个关节的肿胀数和压痛数表(Disease Activity Score 28,DAS28)评分及血清学指标的影响。方法选取于2021年8月至2024年3月收治的136例中重度RA患者作为研究对象。用随机数表法将患者分为低剂量组(68例)和高剂量组(68例)。2组均给予托法替布联合甲氨蝶呤治疗,低剂量组患者每日服用5 mg托法替布,高剂量组每日服用20 mg托法替布,2组服用甲氨蝶呤的剂量一致。2组患者均遵循既定流程,完成3个月连续治疗。于治疗前后,系统统计关节疼痛、肿胀评分及DAS28评分,记录晨僵时间,并监测C反应蛋白(Creactive protein,CRP)、红细胞沉降率(erythrocyte sedimentation rate,ESR)及血清细胞因子白细胞介素-35(interleukin-35,IL-35)、白细胞介素-17(interleukin-17,IL-17)、白细胞介素-6(interleukin-6,IL-6)、干扰素-γ(interferon-gamma,IFN-γ)水平,同时记录不良反应的发生情况。结果治疗后,2组患者的关节疼痛评分、关节肿胀评分、DAS28评分、晨僵持续时间均降低(缩短),且高剂量组的关节疼痛评分、关节肿胀评分、DAS28评分、晨僵持续时间显著低(短)于低剂量组(P<0.05);治疗后,高剂量组和低剂量组患者的ESR、CRP、IL-17、IL-6、IFN-γ水平均下降,IL-35水平均上升,且高剂量组患者的ESR、CRP、IL-17、IL-6、IFN-γ水平均显著低于低剂量组,IL-35水平显著高于低剂量组(P<0.05);治疗后,高剂量组和低剂量组患者的血常规、血脂、肝肾功能与治疗前比较差异均无统计学意义,且2组间血常规、血脂、肝肾功能比较差异均无统计学意义(P>0.05),未观察到其他不良反应。结论采用更高剂量的托法替布能够有效缓解RA患者的临床症状,并降低CRP及ESR水平。高剂量治疗还能够促进抗炎细胞因子IL-35的表达上调,同时有效抑制促炎细胞因子IL-17、IL-6及IFN-γ的过度产生,尽管剂量升高,但并不影响患者的血常规、血脂、肝肾功能,且未观察到其他不良反应。 展开更多
关键词 托法替布 中重度类风湿关节炎 das28评分 血清细胞因子
暂未订购
基于热激励的DAS流量监测试验与数值模拟研究
2
作者 刘均荣 周黎明 +3 位作者 韩艳慧 刘明 姚谦 李志刚 《石油钻探技术》 北大核心 2026年第1期47-57,共11页
为解决现有基于上下游声波信号的分布式光纤声波传感(DAS)流量解释方法在井筒流体流量低时难以识别弱信号的技术难题,引入主动热激励技术,增强信号的差异度。构建室内全尺寸试验装置进行模拟试验,并采用数值模拟验证了该方法的可行性。... 为解决现有基于上下游声波信号的分布式光纤声波传感(DAS)流量解释方法在井筒流体流量低时难以识别弱信号的技术难题,引入主动热激励技术,增强信号的差异度。构建室内全尺寸试验装置进行模拟试验,并采用数值模拟验证了该方法的可行性。模拟试验结果和数值模拟结果表明:主动热激励技术能有效增强DAS低频信号的响应强度,当光纤与热段塞直接接触时,可获得稳定的信号;信号强度主要由热激励强度控制,热激励强度达到10℃即可形成清晰可辨的信号边缘,满足工程应用需求;在流速≥0.0666 m/s(对应流量24 m^(3)/d)工况下,最值追踪法的计算误差可控制在10%以内,但低流速下因热交换充分导致特征点偏移,需进一步优化算法。数值模拟与模拟试验数据在响应趋势和流速计算方面展现出良好的一致性,结构相似性指标验证了数值模型的有效性。研究结果表明,采用10℃热激励强度配合最值追踪法,既可降低系统能耗,又能保障计算精度,主动热激励技术为低产井井下流量监测提供了新的解决方案,但该方法只适用于流量≥24 m^(3)/d的工况,建议下一步优化低流速工况下的特征识别算法及进行现场环境适应性验证。 展开更多
关键词 低流量 热激励 分布式光纤声波传感 物理模拟试验 数值模拟
在线阅读 下载PDF
血清IL-12p70、25(OH)D水平及淋巴细胞亚群与类风湿关节炎患者DAS28-CRP的相关性及对病情的评估价值
3
作者 蔡金云 康丽 +6 位作者 章菊 纳世丽 魏薇 沈堃宇 何金昌 余素君 朱立娟 《临床和实验医学杂志》 2026年第5期473-477,共5页
目的探讨血清白细胞介素(IL)-12p70、25-羟基维生素D[25(OH)D]水平及淋巴细胞亚群与类风湿关节炎(RA)患者C反应蛋白水平的28个关节疾病活动度评分(DAS28-CRP)的相关性及对病情评估价值。方法回顾性选取2024年1月至2025年3月攀枝花市中... 目的探讨血清白细胞介素(IL)-12p70、25-羟基维生素D[25(OH)D]水平及淋巴细胞亚群与类风湿关节炎(RA)患者C反应蛋白水平的28个关节疾病活动度评分(DAS28-CRP)的相关性及对病情评估价值。方法回顾性选取2024年1月至2025年3月攀枝花市中心医院收治的150例RA患者作为RA组,选取本院同期体检的150名健康人群作为对照组。根据病情活动度将患者分为临床缓解组48例、低度活动组35例、中度活动46例、高活动度组21例。比较RA组与对照组血清IL-12p70、25(OH)D水平;比较RA不同疾病活动度组之间IL-12p70、25(OH)D、DAS28-CRP的差异;比较RA组与对照组及RA不同疾病活动度组之间淋巴细胞计数、CD3^(+)、CD4^(+)、CD8^(+)、CD4^(+)/CD8^(+)、CD19^(+)、NK细胞的差异;采用Pearson相关性分析评价IL-12p70、25(OH)D水平及淋巴细胞亚群与DAS28-CRP的相关性;绘制受试者操作特征(ROC)曲线评估血清IL-12p70、25(OH)D水平及淋巴细胞亚群对RA的病情评估价值。结果RA组IL-12p70水平高于对照组,25(OH)D水平低于对照组,差异均有统计学意义(P<0.05)。随着RA疾病活动度增加,IL-12p70水平、DAS28-CRP呈升高趋势(P<0.05);不同疾病活动度组间25(OH)D水平比较,差异均无统计学意义(P>0.05)。RA组淋巴细胞计数、CD3^(+)、CD4^(+)、CD4^(+)/CD8^(+)水平均低于对照组,差异均有统计学意义(P<0.05);两组CD8^(+)、CD19^(+)、NK细胞比较,差异均无统计学意义(P>0.05)。随着RA疾病活动度增加,淋巴细胞计数、CD3^(+)、CD4^(+)、CD4^(+)/CD8^(+)水平呈降低趋势(P<0.05)。Pearson相关性分析显示,IL-12p70与DAS28-CRP呈正相关(P<0.05),淋巴细胞计数、CD3^(+)、CD4^(+)、CD4^(+)/CD8^(+)与DAS28-CRP呈负相关(P<0.05)。IL-12p70、淋巴细胞计数、CD3^(+)、CD4^(+)、CD4^(+)/CD8^(+)联合检测对RA的病情评估的AUC为0.898,优于单一指标检测(P<0.05)。结论血清IL-12p70、25(OH)D水平及淋巴细胞亚群与RA患者DAS28-CRP具有一定相关性,采取多指标联合评估模型可进一步提升对RA病情评估的敏感度与特异度。 展开更多
关键词 白细胞介素-12p70 25-羟基维生素D 类风湿关节炎 das28-CRP 病情评估
暂未订购
分布式光纤测井DAS低频数据处理模型研究
4
作者 田翔 万钧 +4 位作者 刘远志 高晓飞 李恒 张子前 宋文广 《工程地球物理学报》 2026年第1期122-127,共6页
分布式光纤生产测井DAS(Distributed Acoustic Sensing,DAS)信号定量计算井筒内流体速度一直是研究焦点,本文提出一种CNN-FIR(Convolutional Neural Network-finite Impulse Response,CNN-FIR)滤波方法,实现对分布式光纤测井DAS低频数... 分布式光纤生产测井DAS(Distributed Acoustic Sensing,DAS)信号定量计算井筒内流体速度一直是研究焦点,本文提出一种CNN-FIR(Convolutional Neural Network-finite Impulse Response,CNN-FIR)滤波方法,实现对分布式光纤测井DAS低频数据滤波。在数据处理阶段,将原始DAS数据转换到频率-波数域,并将零频率和零波数分量移动到中心;在特征提取模块,首次引入粒子群算法(Particle Swarm Optimization,PSO)优化单类支持向量机(One-class Support Vector Machine,OCSVM)超参数,利用其超平面完成特征提取;在特征增强模块,通过分析特征上噪声信息的规律,创建模式化的规则来完成初步特征强化,再使用样本训练的支持向量机分类器(Support Vector Classifier,SVC)完成进一步的特征增强;最终得到了分布式光纤测井DAS低频数据处理模型。并根据模型,设计了一种计算流体速度的计算方法,准确计算出了井筒内流体速度值,精度达到95%以上。通过实例,论证了该模型计算DAS低频数据的科学性和有效性。 展开更多
关键词 光纤测井 das低频 das声速特征
在线阅读 下载PDF
分布式螺旋光缆DAS地震采集系统与地震检波器对比试验
5
作者 聂俊光 徐德宝 +1 位作者 姚宇晖 洪晓亮 《地球物理学进展》 北大核心 2026年第1期428-441,共14页
分布式声学传感技术基于光纤中背向瑞利散射光相位对外界声场的线性响应特性,实现对外界振动的分布式感知和采集,该技术目前已广泛应用于地震勘探领域.但传统直光纤具有单一轴向敏感特性,其对垂直入射的地震波敏感性较差,限制了其在地... 分布式声学传感技术基于光纤中背向瑞利散射光相位对外界声场的线性响应特性,实现对外界振动的分布式感知和采集,该技术目前已广泛应用于地震勘探领域.但传统直光纤具有单一轴向敏感特性,其对垂直入射的地震波敏感性较差,限制了其在地表地震采集中的应用.为解决这一问题,业内提出了一种基于螺旋光纤传感的分布式声学传感技术(HWC-DAS),该技术通过将光纤螺旋缠绕在易形变的弹性介质上,通过螺旋缠绕的结构改善光纤的轴向指向性,不仅改善了光纤对垂直入射反射波的接收能力,还显著提升了其灵敏度.然而,目前HWC-DAS技术与检波器尚缺乏系统的的对比试验,其对不同频段振动信号的响应特性、灵敏度和信噪比与传统地震检波器之间的差异不明确,相关的实验研究不充分,对HWC-DAS的信号接收评估能力不全面.为验证HWC-DAS的性能,本文开展了垂直振动台试验(对应z分量)和振动感知试验在内的室内对比实验,系统评估了HWC-DAS与传统地震检波器在振动响应、灵敏度和信噪比等方面的表现.振动台振动实验结果表明,HWC-DAS在不同频率范围内表现出于检波器相当的振动响应能力;振动感知试验表明了HWC-DAS相比单点地震检波器具有更高的灵敏度、信噪比的优势.本研究从室内试验的角度验证了HWC-DAS在地震勘探中的有效性和可行性,为其产业化应用提供了基础试验分析. 展开更多
关键词 分布式声学传感 螺旋光缆 地震检波器 振动试验
原文传递
Noninvasive Radar Sensing Augmented with Machine Learning for Reliable Detection of Motor Imbalance
6
作者 Faten S.Alamri Adil Ali Saleem +2 位作者 Muhammad I.Khan Hafeez Ur Rehman Siddiqui Amjad Rehman 《Computer Modeling in Engineering & Sciences》 2026年第1期698-726,共29页
Motor imbalance is a critical failure mode in rotating machinery,potentially causing severe equipment damage if undetected.Traditional vibration-based diagnostic methods rely on direct sensor contact,leading to instal... Motor imbalance is a critical failure mode in rotating machinery,potentially causing severe equipment damage if undetected.Traditional vibration-based diagnostic methods rely on direct sensor contact,leading to installation challenges and measurement artifacts that can compromise accuracy.This study presents a novel radar-based framework for non-contact motor imbalance detection using 24 GHz continuous-wave radar.A dataset of 1802 experimental trials was sourced,covering four imbalance levels(0,10,20,30 g)across varying motor speeds(500–1500 rpm)and load torques(0–3 Nm).Dual-channel in-phase and quadrature radar signals were captured at 10,000 samples per second for 30-s intervals,preserving both amplitude and phase information for analysis.A multi-domain feature extraction methodology captured imbalance signatures in time,frequency,and complex signal domains.From 65 initial features,statistical analysis using Kruskal–Wallis tests identified significant descriptors,and recursive feature elimination with Random Forest reduced the feature set to 20 dimensions,achieving 69%dimensionality reduction without loss of performance.Six machine learning algorithms,Random Forest,Extra Trees Classifier,Extreme Gradient Boosting,Categorical Boosting,Support Vector Machine with radial basis function kernel,and k-Nearest Neighbors were evaluated with grid-search hyperparameter optimization and five-fold cross-validation.The Extra Trees Classifier achieved the best performance with 98.52%test accuracy,98%cross-validation accuracy,and minimal variance,maintaining per-class precision and recall above 97%.Its superior performance is attributed to its randomized split selection and full bootstrapping strategy,which reduce variance and overfitting while effectively capturing the nonlinear feature interactions and non-normal distributions present in the dataset.The model’s average inference time of 70 ms enables near real-time deployment.Comparative analysis demonstrates that the radar-based framework matches or exceeds traditional contact-based methods while eliminating their inherent limitations,providing a robust,scalable,and noninvasive solution for industrial motor condition monitoring,particularly in hazardous or space-constrained environments. 展开更多
关键词 Condition monitoring imbalance detection industrial applications machine learning motor fault diagnosis non-contact sensing radar sensing vibration monitoring
在线阅读 下载PDF
基于DAS的带式输送机声音异常监测识别技术研究
7
作者 张书林 李军 +1 位作者 伍玉山 王涛 《煤矿机械》 2026年第4期193-200,共8页
在矿山、港口、发电站等行业中,带式输送机是物料转运的主要设备。带式输送机在复杂环境中易发生故障,传统的故障排查方法难以实现实时监测和准确识别,无法满足实际需求。采用先进的传感技术手段对带式输送机运行过程进行实时监测具有... 在矿山、港口、发电站等行业中,带式输送机是物料转运的主要设备。带式输送机在复杂环境中易发生故障,传统的故障排查方法难以实现实时监测和准确识别,无法满足实际需求。采用先进的传感技术手段对带式输送机运行过程进行实时监测具有重要现实意义。研究了基于分布式光纤声波探测系统(DAS)的带式输送机声音异常监测识别方法,介绍了DAS结构与声音监测原理,构建了实验测试平台,并研究了小波变换在该系统中的应用。结果表明:采用小波变换的方法、选择db3基函数和0.8阈值对含噪声的信号进行去噪处理,可成功提取出淹没在强噪声中的微弱信号成分,验证了DAS在带式输送机声音异常监测中的有效性,为带式输送机故障排查提供了一种新的技术手段。 展开更多
关键词 带式输送机 das 小波变换 异常声音监测
原文传递
螺旋缠绕光纤DAS应变率正演模拟方法
8
作者 孙上饶 曹丹平 《地球物理学报》 北大核心 2026年第3期1110-1124,共15页
分布式声传感(DAS)技术在地球物理勘探领域已经得到广泛应用,常用的直光纤只能采集光纤轴向分量的振动信息,通过对光纤进行缠绕可以获得其他方向上更丰富的信息,但同时也导致螺旋缠绕光纤DAS的应变率响应特征变得更加复杂.本文聚焦螺旋... 分布式声传感(DAS)技术在地球物理勘探领域已经得到广泛应用,常用的直光纤只能采集光纤轴向分量的振动信息,通过对光纤进行缠绕可以获得其他方向上更丰富的信息,但同时也导致螺旋缠绕光纤DAS的应变率响应特征变得更加复杂.本文聚焦螺旋缠绕光纤DAS应变率开展正演模拟,构建了螺旋缠绕光纤几何模型,实现了质点三分量振动信号与螺旋缠绕光纤应变率响应之间的映射,进一步结合DAS散射模式建立了考虑标距效应的螺旋缠绕光纤DAS应变率数学表达式,形成了螺旋缠绕光纤DAS应变率正演模拟方法及流程.数值模拟表明螺旋缠绕光纤DAS应变率记录具有周期性和相似性的特征,定量分析明确了DAS标距长度和光纤缠绕角度对螺旋缠绕光纤DAS应变率的影响大于光纤旋转角度和缠绕半径.本文正演模拟方法厘清了螺旋缠绕光纤DAS振动信号特征,为螺旋缠绕光纤DAS信号采集过程中的关键参数确定与优化提供了依据,为直接利用DAS信号开展数据处理和反演成像提供了理论基础. 展开更多
关键词 螺旋缠绕光纤 分布式声传感 正演模拟 应变率
在线阅读 下载PDF
Azobenzene-winged phenanthroline for supramolecular chirality sensing and multidimensional chiroptical manipulation via solvent,light,temperature,and redox
9
作者 Xiaoqian Wang Yanling Shen +6 位作者 Long Chen Lizhi Fang Kuppusamy Kanagaraj Ming Rao Chunying Fan Wanhua Wu Cheng Yang 《Chinese Chemical Letters》 2026年第2期453-457,共5页
Azobenzene-winged phenanthrolines(L1 and L2)were designed,synthesized,and fully characterized.Ligand L1 forms an in-situ cobalt complex,which has been effectively employed as a circular dichroism(CD)-active chiral sen... Azobenzene-winged phenanthrolines(L1 and L2)were designed,synthesized,and fully characterized.Ligand L1 forms an in-situ cobalt complex,which has been effectively employed as a circular dichroism(CD)-active chiral sensor.The resulting ternary complex(L1-Co^(2+)-amino alcohol)exhibits pronounced exciton-coupled circular dichroism(ECCD)signals at the characteristic azobenzene absorption bands.These signals arise from efficient chirality transfer from the chiral amino alcohol to the azobenzene chromophores,enabling the determination of the absolute configuration of chiral amino alcohols.Accordingly,the L1-Co^(2+)coordination system demonstrates considerably potential in chirality sensing applications.Remarkably,the induced ECCD signals are highly responsive to multiple external stimuli,including photoirradiation,solvent polarity,temperature,and redox conditions.In particular,temperature and redox changes can induce a reversible inversion of the ECCD signal,thereby establishing this system as a multifunctional,stimuli-responsive chiroptical molecular switch. 展开更多
关键词 Phenanthroline derivative AZOBENZENE Amino alcohols Chirality sensing Stimuli-response
原文传递
Entropy-Driven Cellulosic Elastomer Self-Assembly for Mechanical Energy Harvesting and Self-Powered Sensing
10
作者 Pinle Zhang Yingping He +5 位作者 Huancheng Huang Neng Xiong Xinyue Nong Xinke Yu Shuangfei Wang Xinliang Liu 《Nano-Micro Letters》 2026年第6期898-941,共44页
The rapid advancement of flexible electronics technology has placed higher demands on the structural design and performance regulation of elastic materials.Cellulosic elastomers,with their biodegradability,renewabilit... The rapid advancement of flexible electronics technology has placed higher demands on the structural design and performance regulation of elastic materials.Cellulosic elastomers,with their biodegradability,renewability,and tunability,emerge as ideal candidate materials.Entropy-driven self-as sembly promotes the spontaneous formation of ordered structures,serving as a crucial pathway for optimizing cellulose elastomer properties.However,the structure-property relationship between the self-assembled ordered structures of cellulose elastomers and their mechanical and electrical properties remains insufficiently explored.It hinders the expansion of their applications in electronic devices.This paper systematically reviews the structure-property regulation mechanisms of self-assembled cellulosic elastomers from an entropy-driven perspective.It elucidates the application principles and performance optimization strategies for mechanical energy harvesting and self-powered sensing,while also exploring the challenges and prospects for performance enhancement.This work provides a reference for the development of self-assembled cellulosic elastomers in the field of energy devices. 展开更多
关键词 Cellulosic elastomers Entropy-driven self-assembly Mechanoelectric conversion Self-powered sensing
在线阅读 下载PDF
Strong yet Flexible TiC-SiC Fibrous Membrane with Long-Time Ultrahigh Temperature Resistance for Sensing in Extreme Environment
11
作者 Tianyue Yang Yan Shen +5 位作者 Yangzhong Zhao Zhongqian Zhao Xue Zhou Qianji Chen Xujing Wang Yanzi Gou 《Nano-Micro Letters》 2026年第6期16-29,共14页
The demand for sensors capable of operating in extreme environment of the fields,such as aerospace vehicles,aeroengines and fire protection,is rapidly increasing.However,developing flexible ceramic fibrous pressure se... The demand for sensors capable of operating in extreme environment of the fields,such as aerospace vehicles,aeroengines and fire protection,is rapidly increasing.However,developing flexible ceramic fibrous pressure sensors that combine high temperature stability with robust mechanical properties remains a significant challenge.Herein,through precise multi-scale process control,high-strength(2.1 MPa)TiC-SiC flexible fibrous membrane is successfully fabricated.The membrane exhibits exceptional thermal resistance(2000℃)and long–term thermal stability(1800℃ for 5 h)in the inert atmosphere.Meanwhile,the TiC-SiC fibrous membrane shows excellent oxidation resistance and still achieves strength of 1.8 MPa after being oxidized at 1200℃ for 1 h in air.Remarkably,TiC-SiC fibrous membrane withstands a load of approximately 1400 times its own weight and the ablation of butane flame(~1300℃)for at least 1 h without breaking.Notably,after heat treatment at 1800℃ for 5 h in an argon atmosphere,the TiC-SiC fibrous membrane even sustains pressure–sensing performance for up to 300 cycles.The membrane exhibits stable resistivity up to 900℃ and shows sensing stability under butane flame.The results of this work provide an effective and feasible solution to fill the research gap of flexible fibrous sensors for extreme environments. 展开更多
关键词 TiC-SiC Fibrous membrane FLEXIBILITY High temperature stability Pressure sensing
在线阅读 下载PDF
Impact of zearalenone on quorum sensing signaling molecules and its association with the suppression of ruminal microbial fermentation in a RUSITEC system
12
作者 Zuo Wang Tianyi Ma +6 位作者 Jianhua He Yu Ge Qianglin Liu Xinyi Lan Lei Liu Fachun Wan Weijun Shen 《Journal of Animal Science and Biotechnology》 2026年第2期1119-1134,共16页
Background Zearalenone(ZEN),a common mycotoxin in ruminant diets,could disturb the rumen ecosystem and impair rumen fermentation.Noticeably,ZEN has been shown to reduce the relative abundances of specific bacterial ta... Background Zearalenone(ZEN),a common mycotoxin in ruminant diets,could disturb the rumen ecosystem and impair rumen fermentation.Noticeably,ZEN has been shown to reduce the relative abundances of specific bacterial taxa that potentially possess quorum sensing(QS)functions,which are deemed essential for the microbial interactions and adaptations during rumen fermentation.Nonetheless,whether QS communications participate in the responses of rumen microbial fermentation to ZEN remains unknown.Therefore,the present trial was performed to explore the potential roles of QS during the alterations of rumen microbial fermentation by ZEN through a rumen simulation technique(RUSITEC)system,in a replicated 4×4 Latin square design.Results ZEN significantly(P<0.05)reduced QS signal autoinducer-2(AI-2),and tended to(P=0.051)downregulate QS signal C4-homoserine lactone(HSL).ZEN also significantly(P<0.05)decreased total volatile fatty acid(TVFA),acetate,propionate,isobutyrate,isovalerate,organic matter disappearance(OMD),neutral detergent fiber disappearance(NDFD),and acid detergent fiber disappearance(ADFD)in different manners.The linear discriminant analysis effect size(LEf Se)analysis indicated significantly(P<0.05)differential enrichments of a series of bacterial taxa such as Butyrivibrio_sp_X503,Rhizobium daejeonense,Hoylesella buccalis,Ezakiella coagulans,Enterococcus cecorum,Ruminococcus_sp_zg-924,Polystyrenella longa,and Methylacidimicrobium fagopyrum across different treatments.The phylogenetic investigation of communities by reconstruction of unobserved states 2(PICRUSt2)analysis suggested that QS were predicted to be significantly(P<0.05)affected by ZEN.The metabolomics analysis detected considerable significantly(P<0.05)differing metabolites and implied that ZEN challenge significantly(P<0.05)influenced the indole alkaloid biosynthesis,biosynthesis of alkaloids derived from shikimate pathway,and sesquiterpenoid and triterpenoid biosynthesis.Significant(P<0.05)interconnections of QS molecules with the differential rumen fermentation traits,differential bacterial taxa,and differential metabolites were exhibited by Spearman analysis.Conclusions ZEN negatively affected the QS signals of AI-2 and C4-HSL,which was found to correlate with the fluctuations in specific rumen fermentation characteristics,ruminal bacterial populations,and ruminal metabolisms.These interrelationships implied the potential involvement of QS in the reactions of rumen microbiota to ZEN contamination,and probably contributed to the inhibition of rumen fermentation. 展开更多
关键词 Acyl-homoserine lactones Autoinducer-2 Quorum sensing Rumen microbiome ZEARALENONE
在线阅读 下载PDF
Integrating optical and radiofrequency interferometry for enhanced phase sensing
13
作者 Ruimin Jie Zhaopeng Zhang +1 位作者 Chen Zhu Jie Huang 《Advanced Photonics Nexus》 2026年第1期111-121,共11页
Interferometry is a crucial investigative technique used across diverse fields to achieve highprecision measurements.It works by analyzing the phase difference between two interfering waves,which results from variatio... Interferometry is a crucial investigative technique used across diverse fields to achieve highprecision measurements.It works by analyzing the phase difference between two interfering waves,which results from variations in optical path lengths within an interferometer.We introduce a novel method for directly measuring changes in the phase difference within an optical interferometer,importantly,with the added advantage of a controllable enhancement factor.This approach is achieved through a two-step process:first,the optical phase difference is encoded into a sub-GHz radiofrequency(RF)signal using microwave-photonic manipulation;then,RF interferometry-assisted phase amplification is implemented at the destructive interference point.In our experiments,we demonstrate a phase sensitivity of 2.14 rad∕nm operating at 140 MHz using a miniature in-fiber Fabry-Pérot interferometer for sub-nanometer displacement sensing,which reveals a sensitivity magnification factor of 258.6.With further refinement,we anticipate that even higher enhancement factors can be achieved,paving the way for the development of cost-effective,ultrasensitive interferometry-based instruments for high-precision optical measurements. 展开更多
关键词 fiber-optic interferometer microwave photonics INTERFEROMETRY phase sensing radiofrequency interferometry
在线阅读 下载PDF
MewCDNet: A Wavelet-Based Multi-Scale Interaction Network for Efficient Remote Sensing Building Change Detection
14
作者 Jia Liu Hao Chen +5 位作者 Hang Gu Yushan Pan Haoran Chen Erlin Tian Min Huang Zuhe Li 《Computers, Materials & Continua》 2026年第1期687-710,共24页
Accurate and efficient detection of building changes in remote sensing imagery is crucial for urban planning,disaster emergency response,and resource management.However,existing methods face challenges such as spectra... Accurate and efficient detection of building changes in remote sensing imagery is crucial for urban planning,disaster emergency response,and resource management.However,existing methods face challenges such as spectral similarity between buildings and backgrounds,sensor variations,and insufficient computational efficiency.To address these challenges,this paper proposes a novel Multi-scale Efficient Wavelet-based Change Detection Network(MewCDNet),which integrates the advantages of Convolutional Neural Networks and Transformers,balances computational costs,and achieves high-performance building change detection.The network employs EfficientNet-B4 as the backbone for hierarchical feature extraction,integrates multi-level feature maps through a multi-scale fusion strategy,and incorporates two key modules:Cross-temporal Difference Detection(CTDD)and Cross-scale Wavelet Refinement(CSWR).CTDD adopts a dual-branch architecture that combines pixel-wise differencing with semanticaware Euclidean distance weighting to enhance the distinction between true changes and background noise.CSWR integrates Haar-based Discrete Wavelet Transform with multi-head cross-attention mechanisms,enabling cross-scale feature fusion while significantly improving edge localization and suppressing spurious changes.Extensive experiments on four benchmark datasets demonstrate MewCDNet’s superiority over comparison methods:achieving F1 scores of 91.54%on LEVIR,93.70%on WHUCD,and 64.96%on S2Looking for building change detection.Furthermore,MewCDNet exhibits optimal performance on the multi-class⋅SYSU dataset(F1:82.71%),highlighting its exceptional generalization capability. 展开更多
关键词 Remote sensing change detection deep learning wavelet transform MULTI-SCALE
在线阅读 下载PDF
GLMCNet: A Global-Local Multiscale Context Network for High-Resolution Remote Sensing Image Semantic Segmentation
15
作者 Yanting Zhang Qiyue Liu +4 位作者 Chuanzhao Tian Xuewen Li Na Yang Feng Zhang Hongyue Zhang 《Computers, Materials & Continua》 2026年第1期2086-2110,共25页
High-resolution remote sensing images(HRSIs)are now an essential data source for gathering surface information due to advancements in remote sensing data capture technologies.However,their significant scale changes an... High-resolution remote sensing images(HRSIs)are now an essential data source for gathering surface information due to advancements in remote sensing data capture technologies.However,their significant scale changes and wealth of spatial details pose challenges for semantic segmentation.While convolutional neural networks(CNNs)excel at capturing local features,they are limited in modeling long-range dependencies.Conversely,transformers utilize multihead self-attention to integrate global context effectively,but this approach often incurs a high computational cost.This paper proposes a global-local multiscale context network(GLMCNet)to extract both global and local multiscale contextual information from HRSIs.A detail-enhanced filtering module(DEFM)is proposed at the end of the encoder to refine the encoder outputs further,thereby enhancing the key details extracted by the encoder and effectively suppressing redundant information.In addition,a global-local multiscale transformer block(GLMTB)is proposed in the decoding stage to enable the modeling of rich multiscale global and local information.We also design a stair fusion mechanism to transmit deep semantic information from deep to shallow layers progressively.Finally,we propose the semantic awareness enhancement module(SAEM),which further enhances the representation of multiscale semantic features through spatial attention and covariance channel attention.Extensive ablation analyses and comparative experiments were conducted to evaluate the performance of the proposed method.Specifically,our method achieved a mean Intersection over Union(mIoU)of 86.89%on the ISPRS Potsdam dataset and 84.34%on the ISPRS Vaihingen dataset,outperforming existing models such as ABCNet and BANet. 展开更多
关键词 Multiscale context attention mechanism remote sensing images semantic segmentation
在线阅读 下载PDF
Single-shot wavefront sensing enabled by a photonic integrated circuit
16
作者 Wenyu Chen Zixin Zhao +3 位作者 Shiyuan Liu Hui Deng Liang Gao Jinlong Zhu 《Advanced Photonics Nexus》 2026年第1期131-139,共9页
Point-of-care diagnostics and inline quantitative phase imaging(QPI)drive the demand for portable,ultra-miniaturized,and robust optical imaging and metrology systems.We propose and demonstrate a wavefront sensor integ... Point-of-care diagnostics and inline quantitative phase imaging(QPI)drive the demand for portable,ultra-miniaturized,and robust optical imaging and metrology systems.We propose and demonstrate a wavefront sensor integrated into a photonic integrated circuit,enabling single-shot optical phase retrieval.We implemented an integrated wavefront sensor array with a spatial resolution of 17μm and a numerical aperture of 0.1.Furthermore,we experimentally demonstrated the reconstruction of wavefronts defined by Zernike polynomials,specifically the first 14 terms(Z_(1)to Z_(14)),achieving an average root mean square error below 0.07.This advancement paves the way for fully integrated,portable,and robust optical imaging systems,facilitating integrated wavefront sensors in demanding applications such as point-of-care diagnostics,endoscopy,in situ QPI,and inline surface profile measurement. 展开更多
关键词 wavefront sensing photonic integrated circuit computational imaging miniaturized optical system
在线阅读 下载PDF
Research Progress on Spatiotemporal Variability of Rice Planting Based on Satellite Remote Sensing Monitoring
17
作者 Qi ang HU Aichuan LI +2 位作者 Xinbing WANG Francesco Marinello Zhan SHI 《Agricultural Biotechnology》 2026年第1期76-81,共6页
As a vital food crop,rice is an important part of global food crops.Studying the spatiotemporal changes in rice cultivation facilitates early prediction of production risks and provides support for agricultural policy... As a vital food crop,rice is an important part of global food crops.Studying the spatiotemporal changes in rice cultivation facilitates early prediction of production risks and provides support for agricultural policy decisions related to rice.With the increasing application of satellite remote sensing technology in crop monitoring,remote sensing for rice cultivation has emerged as a novel approach,offering new perspectives for monitoring rice planting.This paper briefly outlined the current research and development status of satellite remote sensing for monitoring rice cultivation both at home and abroad.Foreign scholars have made innovations in data sources and methodologies for satellite remote sensing monitoring,and utilized multi-source satellite information and machine learning algorithms to enhance the accuracy of rice planting monitoring.Scholars in China have achieved significant results in the study of satellite remote sensing for monitoring rice cultivation.Their research and application in monitoring rice planting areas provide valuable references for agricultural production management.However,satellite remote sensing monitoring of rice still faces challenges such as low spatiotemporal resolution and difficulties related to cloud cover and data fusion,which require further in-depth investigation.Additionally,there are shortcomings in the accuracy of remote sensing monitoring for fragmented farmland plots and smallholder farming.To address these issues,future efforts should focus on developing multi-source heterogeneous data fusion analysis technologies and researching monitoring systems.These advancements are expected to enable high-precision large-scale acquisition of rice planting information,laying a foundation for future smart agriculture. 展开更多
关键词 Satellite remote sensing Rice cultivation Spatiotemporal variability MONITORING Research review
在线阅读 下载PDF
Remote Sensing-Enhanced Lithological Mapping for Predicting Shallow Landslide Susceptibility in Complex Terrains
18
作者 Qixing Wang 《Journal of Environmental & Earth Sciences》 2026年第3期251-265,共15页
Shallow landslides are strongly controlled by near-surface lithological variability,yet conventional geological maps are often too generalized to support accurate susceptibility assessment in complex terrains.This rev... Shallow landslides are strongly controlled by near-surface lithological variability,yet conventional geological maps are often too generalized to support accurate susceptibility assessment in complex terrains.This review synthesizes recent advances in remote sensing–based lithological mapping and evaluates their integration into landslide susceptibility modeling.Evidence from the literature indicates that remote sensing-derived lithological products,particularly those incorporating mineralogical information and higher spatial resolution,consistently outperform traditional geological maps in improving model accuracy and spatial detail,especially in heterogeneous environments.However,key challenges remain,including scale mismatches between surface observations and subsurface controls,limited ground validation,uncertainty propagation,and restricted model transferability across regions.The review identifies multi-sensor data fusion and explainable machine learning as the most promising directions for advancing lithological discrimination and model reliability.Future progress depends on integrating remote sensing with process-based understanding,improving validation strategies,and standardizing uncertainty reporting.These developments are essential for enabling more robust,scalable,and operationally relevant landslide susceptibility assessments in complex terrains.Lastly,we describe the directions of research that focus on multi-sensor fusion,explainable machine learning,UAV(Unmanned Aerial Vehicle)-enabled validation,and standardized uncertainty reporting that can help articulate landslide susceptibility assessment,making them even more robust and operationally significant. 展开更多
关键词 Shallow Landslides Lithological Mapping Remote sensing Susceptibility Modeling Complex Terrain
在线阅读 下载PDF
Enhanced Multi-Scale Feature Extraction Lightweight Network for Remote Sensing Object Detection
19
作者 Xiang Luo Yuxuan Peng +2 位作者 Renghong Xie Peng Li Yuwen Qian 《Computers, Materials & Continua》 2026年第3期2097-2118,共22页
Deep learning has made significant progress in the field of oriented object detection for remote sensing images.However,existing methods still face challenges when dealing with difficult tasks such as multi-scale targ... Deep learning has made significant progress in the field of oriented object detection for remote sensing images.However,existing methods still face challenges when dealing with difficult tasks such as multi-scale targets,complex backgrounds,and small objects in remote sensing.Maintaining model lightweight to address resource constraints in remote sensing scenarios while improving task completion for remote sensing tasks remains a research hotspot.Therefore,we propose an enhanced multi-scale feature extraction lightweight network EM-YOLO based on the YOLOv8s architecture,specifically optimized for the characteristics of large target scale variations,diverse orientations,and numerous small objects in remote sensing images.Our innovations lie in two main aspects:First,a dynamic snake convolution(DSC)is introduced into the backbone network to enhance the model’s feature extraction capability for oriented targets.Second,an innovative focusing-diffusion module is designed in the feature fusion neck to effectively integrate multi-scale feature information.Finally,we introduce Layer-Adaptive Sparsity for magnitude-based Pruning(LASP)method to perform lightweight network pruning to better complete tasks in resource-constrained scenarios.Experimental results on the lightweight platform Orin demonstrate that the proposed method significantly outperforms the original YOLOv8s model in oriented remote sensing object detection tasks,and achieves comparable or superior performance to state-of-the-art methods on three authoritative remote sensing datasets(DOTA v1.0,DOTA v1.5,and HRSC2016). 展开更多
关键词 Deep learning object detection feature extraction feature fusion remote sensing
在线阅读 下载PDF
Strain localization and time-dependent deformation in granodiorite characterized by distributed optical fiber sensing
20
作者 Shuting Miao Arno Zang +3 位作者 Guido Blöcher Yinlin Ji Hannes Hofmann Pengzhi Pan 《Journal of Rock Mechanics and Geotechnical Engineering》 2026年第1期166-178,共13页
A multi-stage stress relaxation test was performed on a granodiorite sample to understand the deformation process prior to the macroscopic failure of brittle rocks,as well as the transient response during stress relax... A multi-stage stress relaxation test was performed on a granodiorite sample to understand the deformation process prior to the macroscopic failure of brittle rocks,as well as the transient response during stress relaxation.Distributed optical fiber sensing was used to measure strains across the sample surface by helically wrapping the single-mode fiber around the cylindrical sample.Close agreement was observed between the circumferential strains obtained from the optical fibers and the extensometer.The reconstructed full-field strain contours show strain heterogeneity from the crack closure phase,and the strains in the later deformation phase are dominantly localized within the former high-strain zone.The Gini coefficient was used to quantify the degree of strain localization and shows an initial increase during the crack closure phase,a decrease during the linear elastic phase,and a subsequent increase during the post-yielding phase.This behavior corresponds to a process of initial localization from an imperfect boundary condition,homogenization,and eventual relocalization prior to the macroscopic failure of the sample.The transient strain rate decay during the stress relaxation phase was quantified using the p-value in the“Omori-like"power law function.A higher initial stress at the onset of relaxation results in a lower p-value,indicating a slower strain rate decay.As the sample approaches macroscopic failure,the lowest p-value shifts from the most damaged zone to adjacent areas,suggesting stress redistribution or crack propagation in deformed crystalline rocks under stress relaxation conditions. 展开更多
关键词 Distributed optical fiber sensing Stress relaxation Strain localization Time-dependent deformation
在线阅读 下载PDF
上一页 1 2 250 下一页 到第
使用帮助 返回顶部