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DriftXMiner: A Resilient Process Intelligence Approach for Safe and Transparent Detection of Incremental Concept Drift in Process Mining
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作者 Puneetha B.H Manoj Kumar M.V +1 位作者 Prashanth B.S. Piyush Kumar Pareek 《Computers, Materials & Continua》 2026年第1期1086-1118,共33页
Processes supported by process-aware information systems are subject to continuous and often subtle changes due to evolving operational,organizational,or regulatory factors.These changes,referred to as incremental con... Processes supported by process-aware information systems are subject to continuous and often subtle changes due to evolving operational,organizational,or regulatory factors.These changes,referred to as incremental concept drift,gradually alter the behavior or structure of processes,making their detection and localization a challenging task.Traditional process mining techniques frequently assume process stationarity and are limited in their ability to detect such drift,particularly from a control-flow perspective.The objective of this research is to develop an interpretable and robust framework capable of detecting and localizing incremental concept drift in event logs,with a specific emphasis on the structural evolution of control-flow semantics in processes.We propose DriftXMiner,a control-flow-aware hybrid framework that combines statistical,machine learning,and process model analysis techniques.The approach comprises three key components:(1)Cumulative Drift Scanner that tracks directional statistical deviations to detect early drift signals;(2)a Temporal Clustering and Drift-Aware Forest Ensemble(DAFE)to capture distributional and classification-level changes in process behavior;and(3)Petri net-based process model reconstruction,which enables the precise localization of structural drift using transition deviation metrics and replay fitness scores.Experimental validation on the BPI Challenge 2017 event log demonstrates that DriftXMiner effectively identifies and localizes gradual and incremental process drift over time.The framework achieves a detection accuracy of 92.5%,a localization precision of 90.3%,and an F1-score of 0.91,outperforming competitive baselines such as CUSUM+Histograms and ADWIN+Alpha Miner.Visual analyses further confirm that identified drift points align with transitions in control-flow models and behavioral cluster structures.DriftXMiner offers a novel and interpretable solution for incremental concept drift detection and localization in dynamic,process-aware systems.By integrating statistical signal accumulation,temporal behavior profiling,and structural process mining,the framework enables finegrained drift explanation and supports adaptive process intelligence in evolving environments.Its modular architecture supports extension to streaming data and real-time monitoring contexts. 展开更多
关键词 Process mining concept drift gradual drift incremental drift clustering ensemble techniques process model event log
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脯氨酰羟化酶2抑制剂cpd17对小鼠成骨前体细胞的影响
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作者 杜忠秋 戚晓阳 +4 位作者 杨平 于江林 陈一心 张林坚 邱旭升 《中国组织工程研究》 CAS 北大核心 2025年第2期238-244,共7页
背景:脯氨酰羟化酶2抑制剂能够调节骨代谢,改善卵巢切除大鼠骨质疏松。cpd17是中国药科大学最新研发的一款小分子口服脯氨酰羟化酶2抑制剂,用于治疗肾性贫血疗效肯定,不良反应小,但是对骨形成和骨吸收的作用还不清楚。目的:探讨脯氨酰... 背景:脯氨酰羟化酶2抑制剂能够调节骨代谢,改善卵巢切除大鼠骨质疏松。cpd17是中国药科大学最新研发的一款小分子口服脯氨酰羟化酶2抑制剂,用于治疗肾性贫血疗效肯定,不良反应小,但是对骨形成和骨吸收的作用还不清楚。目的:探讨脯氨酰羟化酶2抑制剂cpd17对成骨前体细胞的影响。方法:采用cpd17处理C57BL/6小鼠成骨前体细胞,检测碱性磷酸酶活性和细胞外基质矿化程度,检测成骨、破骨相关标志物以及脯氨酰羟化酶2、低氧诱导因子1α的表达水平。使用低氧诱导因子1α通路抑制剂LW6抑制低氧诱导因子1α通路后,再次检测碱性磷酸酶活性和细胞外基质矿化程度,以及成骨和破骨分化相关标志物以及脯氨酰羟化酶2、低氧诱导因子1α的表达水平。结果与结论:cpd17能显著增强碱性磷酸酶活性和基质矿化程度,上调成骨分化相关标志物的表达,下调破骨分化相关标志物的表达,并上调低氧诱导因子1α表达,下调脯氨酰羟化酶2的表达。而LW6能明显减弱cpd17的作用。结果表明,脯氨酰羟化酶2抑制剂cpd17可通过激活低氧诱导因子1α信号通路促进成骨分化和抑制破骨分化。 展开更多
关键词 脯氨酰羟化酶2抑制剂 cpd17 低氧诱导因子 成骨前体细胞 成骨分化 骨质疏松
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CPD测试用儿童假人呼吸参数研究
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作者 徐哲 贺丽娟 +2 位作者 娄磊 冯亭玮 王继忠 《车辆与动力技术》 2025年第4期35-40,共6页
近年来,儿童存在探测功能装车率逐渐提升,雷达、UWB探测等是实现该功能的主要技术手段,可直接探测儿童的呼吸来判断儿童存在.但目前该测试用假人的呼吸参数定义不完善,现有的假人呼吸参数不统一,因此对测试工具呼吸参数进行定义非常重要... 近年来,儿童存在探测功能装车率逐渐提升,雷达、UWB探测等是实现该功能的主要技术手段,可直接探测儿童的呼吸来判断儿童存在.但目前该测试用假人的呼吸参数定义不完善,现有的假人呼吸参数不统一,因此对测试工具呼吸参数进行定义非常重要.文章对呼吸频率和呼吸幅度两个参数进行分析,并通过多组比对试验证明了呼吸幅度的重要性.对0岁、1岁、3岁、6岁真人儿童的呼吸参数进行实际测量,通过数据统计分析,得到各年龄段CPD假人的呼吸频率和呼吸幅度的定义值.研究结果为完善和提升CPD假人的生物仿真性能提供了依据,使CPD系统的测试结果更加可靠、有效. 展开更多
关键词 儿童存在探测 cpd假人 呼吸频率 呼吸幅度
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CPDGA:基于一致性传播的DGA域名主动检测算法 被引量:1
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作者 刘双双 王志 +1 位作者 董伊萌 李万鹏 《通信学报》 北大核心 2025年第6期18-31,共14页
攻击者通过域名生成算法(DGA)动态注册域名以支持恶意软件活动,恶意域名不断演化导致概念漂移现象,使得现有依赖可持续性学习模型的检测技术时效性不足。针对这一威胁,结合一致性预测与一致性聚类方法,提出了一种基于一致性传播的DGA域... 攻击者通过域名生成算法(DGA)动态注册域名以支持恶意软件活动,恶意域名不断演化导致概念漂移现象,使得现有依赖可持续性学习模型的检测技术时效性不足。针对这一威胁,结合一致性预测与一致性聚类方法,提出了一种基于一致性传播的DGA域名主动检测算法(CPDGA)。通过对2019—2023年恶意与良性域名数据集进行实验,证明CPDGA能够有效缓解概念漂移对机器学习检测模型性能的影响,并使检测准确率提升20.4%。此外,CPDGA在检测13种最新对抗模型生成域名时取得了96.42%的准确率,展现了强大的鲁棒性与适应性。 展开更多
关键词 域名生成算法 概念漂移 一致性预测 一致性聚类 对抗模型
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A digital quartz resonant accelerometer with low temperature drift
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作者 CHEN Fubin ZHANG Haoyu +1 位作者 YANG Min ZHU Jialin 《中国惯性技术学报》 北大核心 2025年第3期273-278,共6页
In order to suppress the influence of temperature changes on the performance of accelerometers,a digital quartz resonant accelerometer with low temperature drift is developed using a quartz resonator cluster as a tran... In order to suppress the influence of temperature changes on the performance of accelerometers,a digital quartz resonant accelerometer with low temperature drift is developed using a quartz resonator cluster as a transducer element.In addition,a digital intellectual property(IP) is designed in FPGA to achieve signal processing and fusion of integrated resonators.A testing system for digital quartz resonant accelerometers is established to characterize the performance under different conditions.The scale factor of the accelerometer prototype reaches 3561.63 Hz/g in the range of -1 g to +1 g,and 3542.5 Hz/g in the range of-10 g to+10 g.In different measurement ranges,the linear correlation coefficient R~2 of the accelerometer achieves greater than 0.998.The temperature drift of the accelerometer prototype is tested using a constant temperature test chamber,with a temperature change from -20℃ to 80℃.After temperature-drift compensation,the zero bias temperature coefficient falls to 0.08 mg/℃,and the scale factor temperature coefficient is 65.43 ppm/℃.The experimental results show that the digital quartz resonant accelerometer exhibits excellent sensitivity and low temperature drift. 展开更多
关键词 quartz resonant accelerometer temperature drift scale factor signal fusion
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新型磷酸二酯酶5抑制剂CPD1促进自噬激活对病理性心肌肥大大鼠心脏的保护作用
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作者 张雪娣 崔华穗 +5 位作者 宋业鼎 陈昊妍 崔锡平 李芳红 穆云萍 赵子建 《中国比较医学杂志》 北大核心 2025年第8期29-38,共10页
目的探讨自主研发的新型PDE5抑制剂CPD1对腹主动脉缩窄(AAC)引起的病理性心肌肥大大鼠的治疗作用和对心肌组织中自噬信号通路激活的影响。方法SD雄性大鼠(180~200 g)随机分为正常对照(Control)组、假手术(Sham)组、模型(AAC)组、CPD1治... 目的探讨自主研发的新型PDE5抑制剂CPD1对腹主动脉缩窄(AAC)引起的病理性心肌肥大大鼠的治疗作用和对心肌组织中自噬信号通路激活的影响。方法SD雄性大鼠(180~200 g)随机分为正常对照(Control)组、假手术(Sham)组、模型(AAC)组、CPD1治疗组(5 mg/kg)、西地那非(sildenafil,Sif)治疗组(20 mg/kg),除Control组,其余大鼠经手术在左肾动脉分支点钝性分离腹主动脉,AAC组和各治疗组行缩窄结扎术,Sham组仅分离不结扎。造模3 d后各治疗组大鼠分别给予CPD1或Sif灌胃治疗,Control组、Sham组和AAC组灌胃等量生理盐水,每天1次,持续8周。小动物超高分辨率超声心动图和左心室插管术用于检测大鼠左心功能,计算心脏质量指数,通过Western blot和RT-PCR技术,检测大鼠左心组织中肥大因子心房钠尿肽(ANP)、自噬通路关键因子p62和LC3A/B的表达。结果AAC引起大鼠左心功能损伤,心脏质量指数增大,心肌细胞横截面积显著增大,左心组织中ANP表达显著增加(P<0.05),自噬信号活性降低,LC3I蛋白显著积累,向LC3II转化水平降低,p62蛋白表达显著增加;CPD1和Sif明显改善AAC大鼠的左心功能损伤,减轻全心肥厚,抑制肥大因子ANP和p62蛋白的表达(P<0.05),激活自噬信号,促进LC3I向LC3II转化,值得注意的是,低剂量的CPD1治疗效果与高剂量的西地那非相当。结论CPD1促进左心组织中自噬信号通路激活,抑制p62和ANP表达,减小心肌细胞横截面积,改善AAC引起的病理性心肌肥大和左心功能损伤,且与Sif相比具有起效剂量低的优势,为病理性心肌肥大的治疗提供新的选择。 展开更多
关键词 cpd1 病理性心肌肥大 自噬 腹主动脉缩窄 左心功能 西地那非
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DRIFTS与随钻地层孔隙压力监测协同耦合的复杂超压判别方法
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作者 邱万军 胡益涛 印森林 《录井工程》 2025年第3期58-64,共7页
针对传统地层孔隙压力监测方法在生烃增压作用较强地层中存在的不足,提出一种基于地层孔隙压力监测技术与漫反射红外傅里叶变换光谱(DRIFTS)技术协同耦合的新型地层压力趋势判别方法。在随钻地层压力监测过程中,利用测录井参数(如dc指... 针对传统地层孔隙压力监测方法在生烃增压作用较强地层中存在的不足,提出一种基于地层孔隙压力监测技术与漫反射红外傅里叶变换光谱(DRIFTS)技术协同耦合的新型地层压力趋势判别方法。在随钻地层压力监测过程中,利用测录井参数(如dc指数、声波时差、电阻率等)偏离正常趋势线的特征识别异常压力地层,同时引入DRIFTS技术快速分析岩屑样品的矿物成分、总有机碳含量(TOC)及镜质体反射率(R_(o)),揭示有机质生烃增压效应。以珠江口盆地文昌A凹陷B井为例,通过地层压力技术与DRIFTS技术的协同耦合构建图板,进而识别出该井4350 m为生烃增压拐点,发现地层孔隙压力上升趋势与TOC、R_(o)的升高趋势高度一致,验证了协同判别方法的有效性。与传统模型相比,该方法能够同时量化欠压实与生烃作用的超压贡献,显著提高了复杂超压机制地层的压力判别精度。DRIFTS技术对矿物与有机质的高分辨率分析能力,与随钻压力监测数据的动态结合,为钻井工程提供了更可靠的地层压力预测与安全指导,具有重要现场应用价值。 展开更多
关键词 地层压力 随钻监测技术 driftS 技术 协同耦合 生烃增压 珠江口盆地
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INEQUALITIES FOR EIGENVALUES OF POLYNOMIAL OPERATOR OF THE DRIFTING LAPLACIAN ON THE CIGAR SOLITON
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作者 YUAN Yuan SUN He-jun 《数学杂志》 2025年第4期293-306,共14页
In this paper,we investigate the weighted Dirichlet eigenvalue problem of polynomial operator of the drifting Laplacian on the cigar soliton■as follows■where is a positive continuous function on,denotes the outward ... In this paper,we investigate the weighted Dirichlet eigenvalue problem of polynomial operator of the drifting Laplacian on the cigar soliton■as follows■where is a positive continuous function on,denotes the outward unit normal to the boundary,and are two nonnegative constants.We establish some universal inequalities for eigenvalues of this problem. 展开更多
关键词 drifting Laplacian Cigarsoliton EIGENVALUE
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Cluster counting algorithm for the CEPC drift chamber using LSTM and DGCNN
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作者 Zhe-Fei Tian Guang Zhao +7 位作者 Ling-Hui Wu Zhen-Yu Zhang Xiang Zhou Shui-Ting Xin Shuai-Yi Liu Gang Li Ming-Yi Dong Sheng-Sen Sun 《Nuclear Science and Techniques》 2025年第7期14-23,共10页
The particle identification(PID)of hadrons plays a crucial role in particle physics experiments,especially in flavor physics and jet tagging.The cluster counting method,which measures the number of primary ionizations... The particle identification(PID)of hadrons plays a crucial role in particle physics experiments,especially in flavor physics and jet tagging.The cluster counting method,which measures the number of primary ionizations in gaseous detectors,is a promising breakthrough in PID.However,developing an effective reconstruction algorithm for cluster counting remains challenging.To address this challenge,we propose a cluster counting algorithm based on long short-term memory and dynamic graph convolutional neural networks for the CEPC drift chamber.Experiments on Monte Carlo simulated samples demonstrate that our machine learning-based algorithm surpasses traditional methods.It improves the K/πseparation of PID by 10%,meeting the PID requirements of CEPC. 展开更多
关键词 Particle identification Cluster counting Machine learning drift chamber
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N⁃DD: New Approach for Drift Detection Based on Neutrosophic Support Vector Machine
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作者 Rania Lutfi 《Journal of Harbin Institute of Technology(New Series)》 2025年第3期82-90,共9页
Many real⁃world machine learning applications face the challenge of dealing with changing data over time,known as concept drift,and the issue of data indeterminacy,where all the true labels available are unrealistic.T... Many real⁃world machine learning applications face the challenge of dealing with changing data over time,known as concept drift,and the issue of data indeterminacy,where all the true labels available are unrealistic.This can lead to a decrease in the accuracy of the prediction models.The aim of this study is to introduce a new approach for detecting drift,which is based on neutrosophic set theory.This approach takes into account uncertainty in the prediction model and is able to handle indeterminate information,considering its impact on the models performance.The proposed method reads data into windows and calculates a set of values based on the concept of neutrosophic membership.These values are then used in the Neutrosophic Support Vector Machine(N⁃SVM).To address the issue of indeterminate true label data,the values issued by N⁃SVM are expressed as entropy and used as input for the ADWIN(Adaptive Windowing)change detector.When a drift is detected,the prediction model is retrained by including only the most recent instances with the original training data set.The proposed method gives promising results in terms of drift detection accuracy compared to the state of existing drift detection methods such as KSWIN,ADWIN,and DWM. 展开更多
关键词 drift detection indeterminate labels UNCERTAINTY neutrosophic set theory data stream
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A Fine-Grained Defect Prediction Method Based on Drift-Immune Graph Neural Networks
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作者 Fengyu Yang Fa Zhong +1 位作者 Xiaohui Wei Guangdong Zeng 《Computers, Materials & Continua》 2025年第2期3563-3590,共28页
The primary goal of software defect prediction (SDP) is to pinpoint code modules that are likely to contain defects, thereby enabling software quality assurance teams to strategically allocate their resources and manp... The primary goal of software defect prediction (SDP) is to pinpoint code modules that are likely to contain defects, thereby enabling software quality assurance teams to strategically allocate their resources and manpower. Within-project defect prediction (WPDP) is a widely used method in SDP. Despite various improvements, current methods still face challenges such as coarse-grained prediction and ineffective handling of data drift due to differences in project distribution. To address these issues, we propose a fine-grained SDP method called DIDP (drift-immune defect prediction), based on drift-immune graph neural networks (DI-GNN). DIDP converts source code into graph representations and uses DI-GNN to mitigate data drift at the model level. It also analyses key statements leading to file defects for a more detailed SDP approach. We evaluated the performance of DIDP in WPDP by examining its file-level and statement-level accuracy compared to state-of-the-art methods, and by examining its cross-project prediction accuracy. The results of the experiment show that DIDP showed significant improvements in F1-score and Recall@Top20%LOC compared to existing methods, even with large software version changes. DIDP also performed well in cross-project SDP. Our study demonstrates that DIDP achieves impressive prediction results in WPDP, effectively mitigating data drift and accurately predicting defective files. Additionally, DIDP can rank the risk of statements in defective files, aiding developers and testers in identifying potential code issues. 展开更多
关键词 Software defect prediction data drift graph neural networks information bottleneck
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Leveraging Safe and Secure AI for Predictive Maintenance of Mechanical Devices Using Incremental Learning and Drift Detection
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作者 Prashanth B.S Manoj Kumar M.V. +1 位作者 Nasser Almuraqab Puneetha B.H 《Computers, Materials & Continua》 2025年第6期4979-4998,共20页
Ever since the research in machine learning gained traction in recent years,it has been employed to address challenges in a wide variety of domains,including mechanical devices.Most of the machine learning models are ... Ever since the research in machine learning gained traction in recent years,it has been employed to address challenges in a wide variety of domains,including mechanical devices.Most of the machine learning models are built on the assumption of a static learning environment,but in practical situations,the data generated by the process is dynamic.This evolution of the data is termed concept drift.This research paper presents an approach for predictingmechanical failure in real-time using incremental learning based on the statistically calculated parameters of mechanical equipment.The method proposed here is applicable to allmechanical devices that are susceptible to failure or operational degradation.The proposed method in this paper is equipped with the capacity to detect the drift in data generation and adaptation.The proposed approach evaluates the machine learning and deep learning models for their efficacy in handling the errors related to industrial machines due to their dynamic nature.It is observed that,in the settings without concept drift in the data,methods like SVM and Random Forest performed better compared to deep neural networks.However,this resulted in poor sensitivity for the smallest drift in the machine data reported as a drift.In this perspective,DNN generated the stable drift detection method;it reported an accuracy of 84%and an AUC of 0.87 while detecting only a single drift point,indicating the stability to performbetter in detecting and adapting to new data in the drifting environments under industrial measurement settings. 展开更多
关键词 Incremental learning drift detection real-time failure prediction deep neural network proactive machine health monitoring
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Dynamic domain analysis for predicting concept drift in engineering AI-enabled software
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作者 Murtuza Shahzad Hamed Barzamini +2 位作者 Joseph Wilson Hamed Alhoori Mona Rahimi 《Journal of Data and Information Science》 2025年第2期124-151,共28页
Purpose:This research addresses the challenge of concept drift in AI-enabled software,particularly within autonomous vehicle systems where concept drift in object recognition(like pedestrian detection)can lead to misc... Purpose:This research addresses the challenge of concept drift in AI-enabled software,particularly within autonomous vehicle systems where concept drift in object recognition(like pedestrian detection)can lead to misclassifications and safety risks.This study introduces a proactive framework to detect early signs of domain-specific concept drift by leveraging domain analysis and natural language processing techniques.This method is designed to help maintain the relevance of domain knowledge and prevent potential failures in AI systems due to evolving concept definitions.Design/methodology/approach:The proposed framework integrates natural language processing and image analysis to continuously update and monitor key domain concepts against evolving external data sources,such as social media and news.By identifying terms and features closely associated with core concepts,the system anticipates and flags significant changes.This was tested in the automotive domain on the pedestrian concept,where the framework was evaluated for its capacity to detect shifts in the recognition of pedestrians,particularly during events like Halloween and specific car accidents.Findings:The framework demonstrated an ability to detect shifts in the domain concept of pedestrians,as evidenced by contextual changes around major events.While it successfully identified pedestrian-related drift,the system’s accuracy varied when overlapping with larger social events.The results indicate the model’s potential to foresee relevant shifts before they impact autonomous systems,although further refinement is needed to handle high-impact concurrent events.Research limitations:This study focused on detecting concept drift in the pedestrian domain within autonomous vehicles,with results varying across domains.To assess generalizability,we tested the framework for airplane-related incidents and demonstrated adaptability.However,unpredictable events and data biases from social media and news may obscure domain-specific drifts.Further evaluation across diverse applications is needed to enhance robustness in evolving AI environments.Practical implications:The proactive detection of concept drift has significant implications for AI-driven domains,especially in safety-critical applications like autonomous driving.By identifying early signs of drift,this framework provides actionable insights for AI system updates,potentially reducing misclassification risks and enhancing public safety.Moreover,it enables timely interventions,reducing costly and labor-intensive retraining requirements by focusing only on the relevant aspects of evolving concepts.This method offers a streamlined approach for maintaining AI system performance in environments where domain knowledge rapidly changes.Originality/value:This study contributes a novel domain-agnostic framework that combines natural language processing with image analysis to predict concept drift early.This unique approach,which is focused on real-time data sources,offers an effective and scalable solution for addressing the evolving nature of domain-specific concepts in AI applications. 展开更多
关键词 AI-enable software system Concept drift detection Applied machine learning Autonomous vehicles Natural language processing
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Beam test results of the prototype of the multi wire drift chamber for the CSR external-target experiment
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作者 Zhi Qin Zhou-Bo He +18 位作者 Zhe Cao Tao Chen Zhi Deng Li-Min Duan Dong Guo Rong-Jiang Hu Jie Kong Can-Wen Liu Peng Ma Tian-Lei Pu Yi Qian Xiang-Lun Wei Shi-Hai Wen Xiang-Jie Wen Jun-Wei Yan He-Run Yang Zuo-Qiao Yang Yu-Hong Yu Zhi-Gang Xiao 《Nuclear Science and Techniques》 2025年第4期171-180,共10页
A half-size prototype of the multi wire drift chamber for the cooling storage ring external-target experiment(CEE)was assembled and tested in the 350 MeV/u Kr+Fe reactions at the heavy-ion research facility in Lanzhou... A half-size prototype of the multi wire drift chamber for the cooling storage ring external-target experiment(CEE)was assembled and tested in the 350 MeV/u Kr+Fe reactions at the heavy-ion research facility in Lanzhou.The prototype consists of six sense layers,where the sense wires are stretched in three directions X,U,and V;meeting 0?,30?,and-30?,respectively,with respect to the vertical axis.The sensitive area of the prototype is 76 cm×76 cm.The amplified and shaped signals from the anode wires were digitized in a serial capacity array.When operating at a high voltage of 1500 V on the anode wires,the efficiency for each layer is greater than 95%.The tracking residual is approximately 301±2μm.This performance satisfies the requirements of CEE. 展开更多
关键词 Multi wire drift chamber(MWDC) CSR external-target experiment(CEE) Tracking
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Concept Drift Detection and Adaptation Method for IoT Security Framework
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作者 Yin Jie Xie Wenwei +2 位作者 Liang Guangjun Zhang Lanping Zhang Xixi 《China Communications》 2025年第12期137-147,共11页
With the gradual penetration of the internet of things(IoT)into all areas of life,the scale of IoT devices shows an explosive growth trend.The era of internet of everything is coming,and the important position of IoT ... With the gradual penetration of the internet of things(IoT)into all areas of life,the scale of IoT devices shows an explosive growth trend.The era of internet of everything is coming,and the important position of IoT security is becoming increasingly prominent.Due to the large number types of IoT devices,there may be different security vulnerabilities,and unknown attack forms and virus samples are appear.In other words,large number of IoT devices,large data volumes,and various attack forms pose a big challenge of malicious traffic identification.To solve these problems,this paper proposes a concept drift detection and adaptation(CDDA)method for IoT security framework.The AI model performance is evaluated by verifying the effectiveness of IoT traffic for data drift detection,so as to select the best AI model.The experimental test are given to confirm that the feasibility of the framework and the adaptive method in practice,and the effect on the performance of IoT traffic identification is also verified. 展开更多
关键词 concept drift detection and adaptive(CDDA)method IoT security malicious traffic identification
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A Real-Time Deep Learning Approach for Electrocardiogram-Based Cardiovascular Disease Prediction with Adaptive Drift Detection and Generative Feature Replay
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作者 Soumia Zertal Asma Saighi +2 位作者 Sofia Kouah Souham Meshoul Zakaria Laboudi 《Computer Modeling in Engineering & Sciences》 2025年第9期3737-3782,共46页
Cardiovascular diseases(CVDs)continue to present a leading cause ofmortalityworldwide,emphasizing the importance of early and accurate prediction.Electrocardiogram(ECG)signals,central to cardiac monitoring,have increa... Cardiovascular diseases(CVDs)continue to present a leading cause ofmortalityworldwide,emphasizing the importance of early and accurate prediction.Electrocardiogram(ECG)signals,central to cardiac monitoring,have increasingly been integratedwithDeep Learning(DL)for real-time prediction of CVDs.However,DL models are prone to performance degradation due to concept drift and to catastrophic forgetting.To address this issue,we propose a realtime CVDs prediction approach,referred to as ADWIN-GFR that combines Convolutional Neural Network(CNN)layers,for spatial feature extraction,with Gated Recurrent Units(GRU),for temporal modeling,alongside adaptive drift detection and mitigation mechanisms.The proposed approach integratesAdaptiveWindowing(ADWIN)for realtime concept drift detection,a fine-tuning strategy based on Generative Features Replay(GFR)to preserve previously acquired knowledge,and a dynamic replay buffer ensuring variance,diversity,and data distribution coverage.Extensive experiments conducted on the MIT-BIH arrhythmia dataset demonstrate that ADWIN-GFR outperforms standard fine-tuning techniques,achieving an average post-drift accuracy of 95.4%,amacro F1-score of 93.9%,and a remarkably low forgetting score of 0.9%.It also exhibits an average drift detection delay of 12 steps and achieves an adaptation gain of 17.2%.These findings underscore the potential of ADWIN-GFR for deployment in real-world cardiac monitoring systems,including wearable ECG devices and hospital-based patient monitoring platforms. 展开更多
关键词 Real-time cardiovascular disease prediction concept drift detection catastrophic forgetting fine-tuning electrocardiogram convolutional neural networks gated recurrent units adaptive windowing generative feature replay
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曲率特征约束的多视点云CPD配准方法
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作者 张银屏 董明 毛力妹 《北京测绘》 2025年第1期33-39,共7页
针对概率模型方法不适用于大场景点云配准的问题,本文提出了一种点云局部主曲率特征约束的匹配方法,通过匹配下采样特征四元数,计算对应特征在原始点云的最近邻质心,对该点集使用连贯点漂移算法。斯坦福(Stanford)数据集的实验表明,本... 针对概率模型方法不适用于大场景点云配准的问题,本文提出了一种点云局部主曲率特征约束的匹配方法,通过匹配下采样特征四元数,计算对应特征在原始点云的最近邻质心,对该点集使用连贯点漂移算法。斯坦福(Stanford)数据集的实验表明,本文算法相比现有主流方法,在小规模点云配准上有较快的速度和较高的精度,且对点云初始姿态要求不高,初始位姿差异较小时,在Bunny数据取得了6.073×10^(-3) mm的均方根误差;初始位姿较差时,迭代最近邻点算法(ICP)无效,本文算法取得了3.743×10^(-1) mm的均方根误差,在Dragon数据的均方根误差为1.639 mm。武汉大学地面站扫描点云配准基准(WHU-TLS)数据集的实验表明,本文算法可以自动为ICP算法提供良好的初值,能够推广至大场景点云配准应用。 展开更多
关键词 点云配准 连贯点漂移 局部主曲率 点云下采样
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目标解耦驱动的在线深度网络
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作者 郭虎升 申聪 +1 位作者 夏浩森 王文剑 《小型微型计算机系统》 北大核心 2026年第1期42-50,共9页
概念漂移是数据流挖掘中不可避免的难点问题,其典型特征是数据分布随时间可能发生改变.针对现有模型处理数据流分类任务时出现过拟合的问题,本文提出了一种目标解耦驱动的在线深度网络(Online Deep Network driven by Target Decoupling... 概念漂移是数据流挖掘中不可避免的难点问题,其典型特征是数据分布随时间可能发生改变.针对现有模型处理数据流分类任务时出现过拟合的问题,本文提出了一种目标解耦驱动的在线深度网络(Online Deep Network driven by Target Decoupling,ODNTD).首先,该模型从历史数据流中学习一个任务未知型特征提取器,实现了对任务的无偏见表示学习,从而增强了模型的泛化能力;其次,模型利用任务特定的权重调整,使得任务未知的通用特征表示能够适应具体任务,通过这种目标任务的权重学习进一步提升了模型的适应性.实验结果表明,所提出的方法对含概念漂移的数据流有良好的泛化性能. 展开更多
关键词 概念漂移 表示学习 权重学习 自适应深度网络 特征表示蒸馏
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基于传感器参数和改良CPD算法的红外与可见光图像点云配准 被引量:2
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作者 王鹏 高颖慧 +2 位作者 王平 曲智国 沈振康 《红外与毫米波学报》 SCIE EI CAS CSCD 北大核心 2012年第2期171-176,共6页
为实现前下视红外图像与可见光图像的有效配准,提出了一种基于传感器参数和改良CPD算法的红外与可见光图像自动配准算法.首先,利用传感器的姿态和高度信息,对前下视红外图像进行几何透视校正,消除图像间的旋转和比例缩放等差异;然后,对... 为实现前下视红外图像与可见光图像的有效配准,提出了一种基于传感器参数和改良CPD算法的红外与可见光图像自动配准算法.首先,利用传感器的姿态和高度信息,对前下视红外图像进行几何透视校正,消除图像间的旋转和比例缩放等差异;然后,对可见光图像和校正后的红外图像提取边缘特征点,基于相似变换模型,利用改良的CPD算法对其实现精配准.实测数据验证表明,该方法能实现对红外与可见光图像的良好配准,配准精度达到1个像素左右. 展开更多
关键词 图像配准 点云配准 红外与可见光图像 改良的cpd 粒子群优化算法
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水平地震下RC剪力墙结构层间位移角限值评估
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作者 凌育洪 汤怀鼎 +1 位作者 周靖 温新贵 《工程力学》 北大核心 2026年第2期135-145,共11页
为评估现行规范水平地震作用下钢筋混凝土(RC)剪力墙结构层间位移角限值的合理性,与美国规范对比,构建50个RC剪力墙数值模型结构进行非线性分析,探讨场地类别、设防烈度和结构高度等因素对剪力墙层间位移角富裕度比值β_(C/A)的影响规... 为评估现行规范水平地震作用下钢筋混凝土(RC)剪力墙结构层间位移角限值的合理性,与美国规范对比,构建50个RC剪力墙数值模型结构进行非线性分析,探讨场地类别、设防烈度和结构高度等因素对剪力墙层间位移角富裕度比值β_(C/A)的影响规律。提出位移角限值建议值,逐步放松位移角,评估放松位移角后结构在罕遇地震下的安全性;用同样方法讨论广东省标准《高层建筑混凝土结构技术规程》放松位移角限值的合理性。结果表明:β_(C/A)值均大于1,表明我国规范中剪力墙结构层间位移角限值比美国规范严格;以建议值1/550作为层间位移角限值设计剪力墙结构是安全合理的,说明广东省标准《高层建筑混凝土结构技术规程》以1/180为中震作用下RC剪力墙结构弹性层间位移角限值具备合理性。 展开更多
关键词 层间位移角限值 剪力墙结构 中美规范对比 弹塑性分析 安全性评估
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