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The Application of the GM(1,1) Metabolism Model to Error Data Processing of NC Machine Tools 被引量:1
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作者 LIAODe-gang XIONGXiao-hong 《International Journal of Plant Engineering and Management》 2003年第2期103-107,共5页
This paper applied the gray system theory to error data processing of NCmachine tools according to the characteristic. It presented the gray metabolism model of error dataprocessing. The test method for the model need... This paper applied the gray system theory to error data processing of NCmachine tools according to the characteristic. It presented the gray metabolism model of error dataprocessing. The test method for the model needs less capacity. Practice proved that the method issimple, calculation is easy, and results are exact. 展开更多
关键词 NC machine tools gray system error data processing
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Error Data Analytics on RSS Range-Based Localization 被引量:2
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作者 Shuhui Yang Zimu Yuan Wei Li 《Big Data Mining and Analytics》 EI 2020年第3期155-170,共16页
The quality of measurement data is critical to the accuracy of both outdoor and indoor localization methods.Due to the inevitable measurement error,the analytics on the error data is critical to evaluate localization ... The quality of measurement data is critical to the accuracy of both outdoor and indoor localization methods.Due to the inevitable measurement error,the analytics on the error data is critical to evaluate localization methods and to find the effective ones.For indoor localization,Received Signal Strength(RSS)is a convenient and low-cost measurement that has been adopted in many localization approaches.However,using RSS data for localization needs to solve a fundamental problem,that is,how accurate are these methods?The reason of the low accuracy of the current RSS-based localization methods is the oversimplified analysis on RSS measurement data.In this proposed work,we adopt a generalized measurement model to find optimal estimators whose estimated error is equal to the Cram′er-Rao Lower Bound(CRLB).Through mathematical techniques,the key factors that affect the accuracy of RSS-based localization methods are revealed,and the analytics expression that discloses the proportional relationship between the localization accuracy and these factors is derived.The significance of our discovery has two folds:First,we present a general expression for localization error data analytics,which can explain and predict the accuracy of range-based localization algorithms;second,the further study on the general analytics expression and its minimum can be used to optimize current localization algorithms. 展开更多
关键词 Cramér-Rao Lower Bound(CRLB) error data analytics generalized least squares Received Signal Strength(RSS)
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A Forecast Error Correction Method in Numerical Weather Prediction by Using Recent Multiple-time Evolution Data 被引量:4
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作者 薛海乐 沈学顺 丑纪范 《Advances in Atmospheric Sciences》 SCIE CAS CSCD 2013年第5期1249-1259,共11页
The initial value error and the imperfect numerical model are usually considered as error sources of numerical weather prediction (NWP). By using past multi-time observations and model output, this study proposes a ... The initial value error and the imperfect numerical model are usually considered as error sources of numerical weather prediction (NWP). By using past multi-time observations and model output, this study proposes a method to estimate imperfect numerical model error. This method can be inversely estimated through expressing the model error as a Lagrange interpolation polynomial, while the coefficients of polyno- mial are determined by past model performance. However, for practical application in the full NWP model, it is necessary to determine the following criteria: (1) the length of past data sufficient for estimation of the model errors, (2) a proper method of estimating the term "model integration with the exact solution" when solving the inverse problem, and (3) the extent to which this scheme is sensitive to the observational errors. In this study, such issues are resolved using a simple linear model, and an advection diffusion model is applied to discuss the sensitivity of the method to an artificial error source. The results indicate that the forecast errors can be largely reduced using the proposed method if the proper length of past data is chosen. To address the three problems, it is determined that (1) a few data limited by the order of the corrector can be used, (2) trapezoidal approximation can be employed to estimate the "term" in this study; however, a more accurate method should be explored for an operational NWP model, and (3) the correction is sensitive to observational error. 展开更多
关键词 numerical weather prediction past data model error inverse problem
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Detecting Data-flow Errors Based on Petri Nets With Data Operations 被引量:6
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作者 Dongming Xiang Guanjun Liu +1 位作者 Chungang Yan Changjun Jiang 《IEEE/CAA Journal of Automatica Sinica》 SCIE EI CSCD 2018年第1期251-260,共10页
In order to guarantee the correctness of business processes, not only control-flow errors but also data-flow errors should be considered. The control-flow errors mainly focus on deadlock, livelock, soundness, and so o... In order to guarantee the correctness of business processes, not only control-flow errors but also data-flow errors should be considered. The control-flow errors mainly focus on deadlock, livelock, soundness, and so on. However, there are not too many methods for detecting data-flow errors. This paper defines Petri nets with data operations(PN-DO) that can model the operations on data such as read, write and delete. Based on PN-DO, we define some data-flow errors in this paper. We construct a reachability graph with data operations for each PN-DO, and then propose a method to reduce the reachability graph. Based on the reduced reachability graph, data-flow errors can be detected rapidly. A case study is given to illustrate the effectiveness of our methods. 展开更多
关键词 Business process modeling data-flow errors Petri nets reachability graph
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Ocean Data Assimilation with Background Error Covariance Derived from OGCM Outputs 被引量:3
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作者 符伟伟 周广庆 王会军 《Advances in Atmospheric Sciences》 SCIE CAS CSCD 2004年第2期181-192,共12页
The background error covariance plays an important role in modern data assimilation and analysis systems by determining the spatial spreading of information in the data. A novel method based on model output is propose... The background error covariance plays an important role in modern data assimilation and analysis systems by determining the spatial spreading of information in the data. A novel method based on model output is proposed to estimate background error covariance for use in Optimum Interpolation. At every model level, anisotropic correlation scales are obtained that give a more detailed description of the spatial correlation structure. Furthermore, the impact of the background field itself is included in the background error covariance. The methodology of the estimation is presented and the structure of the covariance is examined. The results of 20-year assimilation experiments are compared with observations from TOGA-TAO (The Tropical Ocean-Global Atmosphere-Tropical Atmosphere Ocean) array and other analysis data. 展开更多
关键词 data assimilation background error model output COVARIANCE
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Handling Error Propagation in Sequential Data Assimilation Using an Evolutionary Strategy 被引量:1
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作者 摆玉龙 李新 黄春林 《Advances in Atmospheric Sciences》 SCIE CAS CSCD 2013年第4期1096-1105,共10页
An evolutionary strategy-based error parameterization method that searches for the most ideal error adjustment factors was developed to obtain better assimilation results. Numerical experiments were designed using som... An evolutionary strategy-based error parameterization method that searches for the most ideal error adjustment factors was developed to obtain better assimilation results. Numerical experiments were designed using some classical nonlinear models (i.e., the Lorenz-63 model and the Lorenz-96 model). Crossover and mutation error adjustment factors of evolutionary strategy were investigated in four aspects: the initial conditions of the Lorenz model, ensemble sizes, observation covarianee, and the observation intervals. The search for error adjustment factors is usually performed using trial-and-error methods. To solve this difficult problem, a new data assimilation system coupled with genetic algorithms was developed. The method was tested in some simplified model frameworks, and the results are encouraging. The evolutionary strategy- based error handling methods performed robustly under both perfect and imperfect model scenarios in the Lorenz-96 model. However, the application of the methodology to more complex atmospheric or land surface models remains to be tested. 展开更多
关键词 data assimilation error propagation evolutionary strategies
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A Support Vector Regression Approach for Recursive Simultaneous Data Reconciliation and Gross Error Detection in Nonlinear Dynamical Systems 被引量:3
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作者 MIAO Yu SU Hong-Ye CHU Jian 《自动化学报》 EI CSCD 北大核心 2009年第6期707-716,共10页
关键词 数据分析 自动化系统 智能系统 质量数据
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On the Current Error Based Sampled-data Iterative Learning Control with Reduced Memory Capacity
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作者 Chiang-Ju Chien Yu-Chung Hung Rong-Hu Chi 《International Journal of Automation and computing》 EI CSCD 2015年第3期307-315,共9页
The design of iterative learning controller(ILC) requires to store the system input, output or control parameters of previous trials for generating the input of the current trial. In order to apply the iterative learn... The design of iterative learning controller(ILC) requires to store the system input, output or control parameters of previous trials for generating the input of the current trial. In order to apply the iterative learning controller for a real application and reduce the memory size for implementation, a current error based sampled-data proportional-derivative(PD) type iterative learning controller is proposed for control systems with initial resetting error, input disturbance and output measurement noise in this paper.The proposed iterative learning controller is simple and effective. The first contribution in this paper is to prove the learning error convergence via a rigorous technical analysis. It is shown that the learning error will converge to a residual set if a forgetting factor is introduced in the controller. All the theoretical results are also shown by computer simulations. The second main contribution is to realize the iterative learning controller by a digital circuit using a field programmable gate array(FPGA) chip applied to repetitive position tracking control of direct current(DC) motors. The feasibility and effectiveness of the proposed current error based sampleddata iterative learning controller are demonstrated by the experiment results. Finally, the relationship between learning performance and design parameters are also discussed extensively. 展开更多
关键词 Iterative learning control current error sampled-data system memory capacity field programmable gate array(FPGA) chip.
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Data processing and error analysis for the CE-1 Lunar microwave radiometer
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作者 Jian-Qing Feng Yan Su +2 位作者 Jian-Jun Liu Yong-Liao Zou Chun-Lai Li 《Research in Astronomy and Astrophysics》 SCIE CAS CSCD 2013年第3期359-372,共14页
The microwave radiometer (MRM) onboard the Chang' E-1 (CE-I) lu- nar orbiter is a 4-frequency microwave radiometer, and it is mainly used to obtain the brightness temperature (TB) of the lunar surface, from whi... The microwave radiometer (MRM) onboard the Chang' E-1 (CE-I) lu- nar orbiter is a 4-frequency microwave radiometer, and it is mainly used to obtain the brightness temperature (TB) of the lunar surface, from which the thickness, temperature, dielectric constant and other related properties of the lunar regolith can be derived. The working mode of the CE-1 MRM, the ground calibration (including the official calibration coefficients), as well as the acquisition and processing of the raw data are introduced. Our data analysis shows that TB increases with increasing frequency, decreases towards the lunar poles and is significantly affected by solar illumination. Our analysis also reveals that the main uncertainty in TB comes from ground calibration. 展开更多
关键词 space vehicles -- instruments: microwave radiometer -- Moon: bright-ness temperature -- method: data processing -- error analysis
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Improvement in Background Error Covariances Using Ensemble Forecasts for Assimilation of High-Resolution Satellite Data
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作者 Seung-Woo LEE Dong-Kyou LEE 《Advances in Atmospheric Sciences》 SCIE CAS CSCD 2011年第4期758-774,共17页
Satellite data obtained over synoptic data-sparse regions such as an ocean contribute toward improving the quality of the initial state of limited-area models. Background error covariances are crucial to the proper di... Satellite data obtained over synoptic data-sparse regions such as an ocean contribute toward improving the quality of the initial state of limited-area models. Background error covariances are crucial to the proper distribution of satellite-observed information in variational data assimilation. In the NMC (National Meteorological Center) method, background error covariances are underestimated over data-sparse regions such as an ocean because of small differences between different forecast times. Thus, it is necessary to reconstruct and tune the background error covariances so as to maximize the usefulness of the satellite data for the initial state of limited-area models, especially over an ocean where there is a lack of conventional data. In this study, we attempted to estimate background error covariances so as to provide adequate error statistics for data-sparse regions by using ensemble forecasts of optimal perturbations using bred vectors. The background error covariances estimated by the ensemble method reduced the overestimation of error amplitude obtained by the NMC method. By employing an appropriate horizontal length scale to exclude spurious correlations, the ensemble method produced better results than the NMC method in the assimilation of retrieved satellite data. Because the ensemble method distributes observed information over a limited local area, it would be more useful in the analysis of high-resolution satellite data. Accordingly, the performance of forecast models can be improved over the area where the satellite data are assimilated. 展开更多
关键词 3DVAR background error covariances retrieved satellite data assimilation ensemble forecasts.
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Estimation of Nonparametric Multiple Regression Measurement Error Models with Validation Data
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作者 Zanhua Yin Fang Liu 《Open Journal of Statistics》 2015年第7期808-819,共12页
In this article, we develop estimation approaches for nonparametric multiple regression measurement error models when both independent validation data on covariables and primary data on the response variable and surro... In this article, we develop estimation approaches for nonparametric multiple regression measurement error models when both independent validation data on covariables and primary data on the response variable and surrogate covariables are available. An estimator which integrates Fourier series estimation and truncated series approximation methods is derived without any error model structure assumption between the true covariables and surrogate variables. Most importantly, our proposed methodology can be readily extended to the case that only some of covariates are measured with errors with the assistance of validation data. Under mild conditions, we derive the convergence rates of the proposed estimators. The finite-sample properties of the estimators are investigated through simulation studies. 展开更多
关键词 ILL-POSED INVERSE Problem Linear OPERATOR Measurement errorS NONPARAMETRIC Regression VALIDATION data
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Bayesian estimator of human error probability based on human performance data
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作者 Zhiqiang Sun Erling Gong +2 位作者 Zhengyi Li Yingjie Jiang Hongwei Xie 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2013年第2期242-249,共8页
A Bayesian method for estimating human error probability(HEP) is presented.The main idea of the method is incorporating human performance data into the HEP estimation process.By integrating human performance data an... A Bayesian method for estimating human error probability(HEP) is presented.The main idea of the method is incorporating human performance data into the HEP estimation process.By integrating human performance data and prior information about human performance together,a more accurate and specific HEP estimation can be achieved.For the time-unrelated task without rigorous time restriction,the HEP estimated by the common-used human reliability analysis(HRA) methods or expert judgments is collected as the source of prior information.And for the time-related task with rigorous time restriction,the human error is expressed as non-response making.Therefore,HEP is the time curve of non-response probability(NRP).The prior information is collected from system safety and reliability specifications or by expert judgments.The(joint) posterior distribution of HEP or NRP-related parameter(s) is constructed after prior information has been collected.Based on the posterior distribution,the point or interval estimation of HEP/NRP is obtained.Two illustrative examples are introduced to demonstrate the practicality of the aforementioned approach. 展开更多
关键词 human error probability(HEP) human performance data human reliability probabilistic safety assessment Bayesian approach
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Orthogonal Series Estimation of Nonparametric Regression Measurement Error Models with Validation Data
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作者 Zanhua Yin 《Applied Mathematics》 2017年第12期1820-1831,共12页
In this article we study the estimation method of nonparametric regression measurement error model based on a validation data. The estimation procedures are based on orthogonal series estimation and truncated series a... In this article we study the estimation method of nonparametric regression measurement error model based on a validation data. The estimation procedures are based on orthogonal series estimation and truncated series approximation methods without specifying any structure equation and the distribution assumption. The convergence rates of the proposed estimator are derived. By example and through simulation, the method is robust against the misspecification of a measurement error model. 展开更多
关键词 ILL-POSED INVERSE Problems Measurement errorS NONPARAMETRIC Regression ORTHOGONAL Series VALIDATION data
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台站级天气雷达数据质量控制方法探索
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作者 邹红 姚朋 罗予 《气象水文海洋仪器》 2026年第1期19-22,25,共5页
文章着力于解决台站级雷达业务工作中出现的疑误数据问题,对南充国家天气雷达站2020-2023年出现的电磁干扰、地物干扰、系统故障等引起的异常回波、空回波对应的疑误数据进行统计和分析,总结了一套基于对地物回波的变化进行监控来探索... 文章着力于解决台站级雷达业务工作中出现的疑误数据问题,对南充国家天气雷达站2020-2023年出现的电磁干扰、地物干扰、系统故障等引起的异常回波、空回波对应的疑误数据进行统计和分析,总结了一套基于对地物回波的变化进行监控来探索台站级天气雷达数据质量控制方法。开发雷达标准格式数据可视化平台,经质控算法能快速识别地物杂波、系统异常回波、同频干扰回波并及时短信告警。便于雷达业务人员及时发现问题,从源头上控制和减少疑误数据,进而提高新一代天气雷达设备稳定运行率和雷达数据质量。 展开更多
关键词 数据疑误 数据可疑 数据质量 同频干扰 设备稳定运行率
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高精度机械实训装置的误差分析与补偿策略研究
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作者 杜少华 《自动化应用》 2026年第1期107-109,共3页
针对现代机械实训装置日趋追求高精度与高动态响应的需求,基于误差理论和现代控制方法,对高精度机械实训装置中存在的各类误差进行了系统分析,构建了多层级误差模型,并提出了一种基于自适应模型与数据反馈融合的补偿策略。通过理论推导... 针对现代机械实训装置日趋追求高精度与高动态响应的需求,基于误差理论和现代控制方法,对高精度机械实训装置中存在的各类误差进行了系统分析,构建了多层级误差模型,并提出了一种基于自适应模型与数据反馈融合的补偿策略。通过理论推导、数学建模和实验验证,揭示了机理、环境及随机因素在误差形成中的作用机理,利用误差传播公式和补偿算法实现了误差的实时在线校正。实验结果表明,该策略能将装置的定位精度提高近90%,具有较好的应用前景,以期为高精度机电系统的误差控制提供一定理论与实践支持。 展开更多
关键词 机械实训装置 误差分析 补偿策略 自适应模型 数据反馈
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Biomedical Event Extraction Using a New Error Detection Learning Approach Based on Neural Network 被引量:3
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作者 Xiaolei Ma Yang Lu +2 位作者 Yinan Lu Zhili Pei Jichao Liu 《Computers, Materials & Continua》 SCIE EI 2020年第5期923-941,共19页
Supervised machine learning approaches are effective in text mining,but their success relies heavily on manually annotated corpora.However,there are limited numbers of annotated biomedical event corpora,and the availa... Supervised machine learning approaches are effective in text mining,but their success relies heavily on manually annotated corpora.However,there are limited numbers of annotated biomedical event corpora,and the available datasets contain insufficient examples for training classifiers;the common cure is to seek large amounts of training samples from unlabeled data,but such data sets often contain many mislabeled samples,which will degrade the performance of classifiers.Therefore,this study proposes a novel error data detection approach suitable for reducing noise in unlabeled biomedical event data.First,we construct the mislabeled dataset through error data analysis with the development dataset.The sample pairs’vector representations are then obtained by the means of sequence patterns and the joint model of convolutional neural network and long short-term memory recurrent neural network.Following this,the sample identification strategy is proposed,using error detection based on pair representation for unlabeled data.With the latter,the selected samples are added to enrich the training dataset and improve the classification performance.In the BioNLP Shared Task GENIA,the experiments results indicate that the proposed approach is competent in extract the biomedical event from biomedical literature.Our approach can effectively filter some noisy examples and build a satisfactory prediction model. 展开更多
关键词 Biomedical event extraction pair representation error data detection sample identification
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融合多维环境特征的视觉测量扰动补偿
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作者 陈博宇 刘欣琳 +4 位作者 朱松 元鹏鹏 孟凡一 华远盛 朱家松 《测绘通报》 北大核心 2026年第3期106-111,共6页
室外高精度视觉测量中,温度、湿度、光照等环境因素的复杂耦合与时滞效应,常会导致测量精度与稳定性显著下降。基于此,本文提出了一种融合多维环境特征的数据驱动扰动补偿框架。该方法通过系统分析提取关键环境扰动源,并引入时间变量捕... 室外高精度视觉测量中,温度、湿度、光照等环境因素的复杂耦合与时滞效应,常会导致测量精度与稳定性显著下降。基于此,本文提出了一种融合多维环境特征的数据驱动扰动补偿框架。该方法通过系统分析提取关键环境扰动源,并引入时间变量捕捉误差周期性特征,最终构建高精度补偿模型。试验表明,温度、湿度与光照为主要影响因子,其影响存在显著时滞;引入时间变量能有效提高模型精度,可使非线性模型的补偿精度提升约30%,显著优于传统线性模型,并最终实现亚像素级的扰动补偿。本文证实了该数据驱动框架的有效性,为解决室外长周期视觉测量系统的环境适应性问题提供了理论依据与实践路径。 展开更多
关键词 视觉测量 环境扰动 误差补偿 数据驱动 机器学习
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基于空间Panel Data的中国区域人均GDP收敛分析 被引量:10
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作者 项云帆 王少平 《中国地质大学学报(社会科学版)》 2007年第5期77-82,共6页
本文应用空间Panel Data分析方法,对我国区域人均生产总值(GDP)的β收敛模型进行实证研究。研究结果表明我国区域经济增长在1996年至2005年期间存在扩散,1996年至2000年区域人均GDP为β收敛,2001年至2005年区间β扩散,β收敛理论实证研... 本文应用空间Panel Data分析方法,对我国区域人均生产总值(GDP)的β收敛模型进行实证研究。研究结果表明我国区域经济增长在1996年至2005年期间存在扩散,1996年至2000年区域人均GDP为β收敛,2001年至2005年区间β扩散,β收敛理论实证研究受样本区间影响很大。在政策上提出国家对缩小国内区域经济增长差距的政策应根据国家长短期目标而调控。 展开更多
关键词 空间Panel data 空间误差自相关 Β收敛 Bootstrap仿真
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面向数据攻击的ARM MTE自动防御实现
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作者 梁思远 刘铁铭 张媛媛 《信息工程大学学报》 2026年第1期120-126,共7页
针对基于软件的防护机制面临性能开销偏高且难以防御部分高级攻击的问题,提出一种使用ARM内存标记扩展(MTE)来增强内存安全性的方法。该方法使用底层虚拟机(LLVM)编译器进行堆栈调用分析,并使用MTE机制进行标签管理。通过使用基准测试... 针对基于软件的防护机制面临性能开销偏高且难以防御部分高级攻击的问题,提出一种使用ARM内存标记扩展(MTE)来增强内存安全性的方法。该方法使用底层虚拟机(LLVM)编译器进行堆栈调用分析,并使用MTE机制进行标签管理。通过使用基准测试和50个易受攻击的程序进行实验评估,该方法显示出针对数据导向攻击显著的防御能力,运行时开销平均为52.8%,文件大小开销为17.7%。该研究在对抗数据导向攻击方面取得了进展,在安全性和性能效率之间取得了较好的平衡。 展开更多
关键词 内存错误 数据导向攻击 ARM内存标记扩展 自动防御 底层虚拟机
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面向药柱整形的数字工艺孪生制造研究
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作者 郭敏玉 孙梦雪 +3 位作者 蔡永林 王江涛 梁志强 王东前 《制造技术与机床》 北大核心 2026年第4期52-63,共12页
针对药柱车削整形过程中存在的装备-工艺可视化差、危险性高等问题,开展面向药柱整形过程的数字工艺孪生制造研究。首先,基于数字孪生架构,提出了一种多源异构数据采集与实时处理方法;然后,构建了药柱车削表面位置误差预测模型;其次,基... 针对药柱车削整形过程中存在的装备-工艺可视化差、危险性高等问题,开展面向药柱整形过程的数字工艺孪生制造研究。首先,基于数字孪生架构,提出了一种多源异构数据采集与实时处理方法;然后,构建了药柱车削表面位置误差预测模型;其次,基于智能测温刀具对整形过程进行温度反馈;最后,构建了药柱整形过程的装备-工艺交互模型,开发了面向药柱车削加工的装备-工艺可视化数字孪生平台。结果表明,所提装备-工艺交互模型能够对加工过程表面位置误差和温度进行随动监测与交互展示,所开发的数字孪生平台可有效支撑药柱车削整形过程的智能化监控与精度保障。 展开更多
关键词 数字工艺孪生 药柱车削 表面位置误差 多源数据融合 智能测温刀具
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