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基于大语言模型的语义感知Bloom Filter
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作者 张浩 太梦思云 +1 位作者 赵文韬 和炜 《昆明冶金高等专科学校学报》 2025年第3期101-107,共7页
随着数据量的迅猛增长,传统的Bloom Filter在处理大规模数据流时面临较高的误判率和缺乏灵活性的问题。为提升数据流处理的精度与效率,提出了一种基于大语言模型(LLM)的语义感知Bloom Filter(SABF)。SABF通过融合大语言模型在语义理解... 随着数据量的迅猛增长,传统的Bloom Filter在处理大规模数据流时面临较高的误判率和缺乏灵活性的问题。为提升数据流处理的精度与效率,提出了一种基于大语言模型(LLM)的语义感知Bloom Filter(SABF)。SABF通过融合大语言模型在语义理解方面的卓越能力,生成文本数据的语义嵌入向量,并利用这些信息调整哈希函数的选择及位图结构设计,从而更精准地识别文本数据的语义特征。实验结果表明,SABF能显著降低误判率,尤其是在数据规模扩大后,其误判率较传统方法降低了超过20%。此外,SABF在识别语义相似文档方面表现优异,准确率达到83%,有效提升了复杂语义信息的处理效率。 展开更多
关键词 语义感知 BLOOM过滤器 大语言模型 双向编码器表征模型 数据结构优化
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Multiple Kalman filters model with shaping filter GPS real-time deformation analysis 被引量:6
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作者 李丽华 彭军还 《Transactions of Nonferrous Metals Society of China》 SCIE EI CAS CSCD 2014年第11期3674-3681,共8页
In order to detect the deformation in real-time of the GPS time series and improve its reliability, the multiple Kalman filters model with shaping filter was proposed. Two problems were solved: firstly, because the GP... In order to detect the deformation in real-time of the GPS time series and improve its reliability, the multiple Kalman filters model with shaping filter was proposed. Two problems were solved: firstly, because the GPS real-time deformation series with a high sampling rate contain coloured noise, the multiple Kalman filter model requires the white noise, and the multiple Kalman filters model is augmented by a shaping filter in order to reduce the colored noise; secondly, the multiple Kalman filters model with shaping filter can detect the deformation epoch in real-time and improve the quality of GPS measurements for the real-time deformation applications. Based on the comparisons of the applications in different GPS time series with different models, the advantages of the proposed model were illustrated. The proposed model can reduce the colored noise, detect the smaller changes, and improve the precision of the detected deformation epoch. 展开更多
关键词 multiple Kalman filters model Kalman filter shaping filter deformation detection
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Volterra filter modeling of a nonlinear discrete-time system based on a ranked differential evolution algorithm
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作者 De-xuan ZOU Li-qun GAO Steven LI 《Journal of Zhejiang University-Science C(Computers and Electronics)》 SCIE EI 2014年第8期687-696,共10页
This paper presents a ranked differential evolution(RDE) algorithm for solving the identification problem of nonlinear discrete-time systems based on a Volterra filter model. In the improved method, a scale factor, ge... This paper presents a ranked differential evolution(RDE) algorithm for solving the identification problem of nonlinear discrete-time systems based on a Volterra filter model. In the improved method, a scale factor, generated by combining a sine function and randomness, effectively keeps a balance between the global search and the local search. Also, the mutation operation is modified after ranking all candidate solutions of the population to help avoid the occurrence of premature convergence. Finally, two examples including a highly nonlinear discrete-time rational system and a real heat exchanger are used to evaluate the performance of the RDE algorithm and five other approaches. Numerical experiments and comparisons demonstrate that the RDE algorithm performs better than the other approaches in most cases. 展开更多
关键词 Ranked differential evolution Identification problem Nonlinear discrete-time systems Volterra filter model Premature convergence
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Multiple Model Filtering in the Presence of Gaussian Mixture Measurement Noises 被引量:1
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作者 张永安 周荻 段广仁 《Chinese Journal of Aeronautics》 SCIE EI CAS CSCD 2004年第4期229-234,共6页
A simplified multiple model filter is developed for discrete-time systems inthe presence of Gaussian mixture measurement noises. Theoretical analysis proves that the proposedfilter has the same estimation performance ... A simplified multiple model filter is developed for discrete-time systems inthe presence of Gaussian mixture measurement noises. Theoretical analysis proves that the proposedfilter has the same estimation performance as the interacting multiple model filter at the price ofless computational cost. Numerically robust implementation of the filter is presented to meetpractical applications. An example on bearings-only guidance demonstrates the effect of the proposedalgorithm. 展开更多
关键词 state estimation multiple model filter interacting multiple model Gaussianmixture target tracking bearings-only guidance
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A Collaborative Filtering Recommendation Algorithm Based on Item and Cloud Model 被引量:9
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作者 WANG Shuliang XIE Yuan FANG Meng 《Wuhan University Journal of Natural Sciences》 CAS 2011年第1期16-20,共5页
Recommender system is an important content in the research of E-commerce technology. Collaborative filtering recom-mendation algorithm has already been used successfully at recom-mender system. However,with the develo... Recommender system is an important content in the research of E-commerce technology. Collaborative filtering recom-mendation algorithm has already been used successfully at recom-mender system. However,with the development of E-commerce,the difficulties of the extreme sparsity of user rating data have become more and more severe. Based on the traditional similarity measuring methods,we introduce the cloud model and combine it with the item-based collaborative filtering recommendation algorithms. The new collaborative filtering recommendation algorithm based on item and cloud model (IC-Based CF) computes the similarity de-gree between items by comparing the statistical characteristic of items. The experimental results show that this method can improve the performance of the present item-based collaborative filtering algorithm with extreme sparsity of data. 展开更多
关键词 recommendation system collaborative filtering cloud model item similarity
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An Improved H_∞ Filter Design for Nonlinear Systems Described by T-S Fuzzy Models with Time-varying Delay 被引量:1
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作者 Tuo Zhou Xi-Qin He 《International Journal of Automation and computing》 EI CSCD 2015年第6期671-678,共8页
This paper addresses a robust H∞filter design problem for nonlinear systems with time-varying delay through TakagiSugeno(T-S) fuzzy model approach. Firstly, by introducing free-weighting matrix method combined with a... This paper addresses a robust H∞filter design problem for nonlinear systems with time-varying delay through TakagiSugeno(T-S) fuzzy model approach. Firstly, by introducing free-weighting matrix method combined with a matrix decoupling approach and adopting an improved integral inequality method without ignoring any integral term, less conservative results are achieved. Next,based on the model, new delay-dependent sufficient conditions are derived, which are less conservative than the existing ones via solving the linear matrix inequalities(LMIs). Lastly, simulations show a significant improvement over the previous results. 展开更多
关键词 Takagi-Sugeno(T-S) fuzzy model H∞filter nonlinear
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Investigation of the different weight models in Kalman filter:A case study of GNSS monitoring results 被引量:2
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作者 Roman Shults Andriy Annenkov 《Geodesy and Geodynamics》 2018年第3期220-228,共9页
During geodetic monitoring with GNSS technology one of important steps is the correct processing and analysis of the measured displacements. We used the processing method of Kalman filter smoothing algorithm, which al... During geodetic monitoring with GNSS technology one of important steps is the correct processing and analysis of the measured displacements. We used the processing method of Kalman filter smoothing algorithm, which allows to evaluate not only displacements, but also the speed, acceleration, and other characteristics of the deformation model. One of the important issues is the calculation of the obser- vations weight matrix in the Kalman filter. Recurrence algorithm of Kalman filtering can calculate and specify the weights during processing. However, the weights obtained in such way do not always exactly correspond to the actual observation accuracy. We established the observations weights based on the accuracy of baseline measurements. In the presented study, we offered and investigated different models of establishing the accuracy of the baselines. The offered models and the processing of the measured displacements were tested on an experimentally geodetic GNSS network. The research results show that despite of different weight models, changing weights up to 2 times do not change Kalman filtering ac- curacy extremely. The significant improvements for Kalman filtering accuracy for baselines shorter than 10 km were not got. Therefore, for typical GNSS monitoring networks with baseline range 10-15 km, we recommend to use any kind of models. The compulsory condition for getting correct and reliable results is checking results on blunders. For baselines, which are longer than 15 km we propose to use weight model which include baseline standard deviation from network adjustment and corrections for baseline length and its accuracy. 展开更多
关键词 Kalman filter Weight model GNSS Vertical displacement Baseline accuracy
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Recommendation algorithm of cloud computing system based on random walk algorithm and collaborative filtering model 被引量:1
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作者 Feng Zhang Hua Ma +1 位作者 Lei Peng Lanhua Zhang 《International Journal of Technology Management》 2017年第3期79-81,共3页
The traditional collaborative filtering recommendation technology has some shortcomings in the large data environment. To solve this problem, a personalized recommendation method based on cloud computing technology is... The traditional collaborative filtering recommendation technology has some shortcomings in the large data environment. To solve this problem, a personalized recommendation method based on cloud computing technology is proposed. The large data set and recommendation computation are decomposed into parallel processing on multiple computers. A parallel recommendation engine based on Hadoop open source framework is established, and the effectiveness of the system is validated by learning recommendation on an English training platform. The experimental results show that the scalability of the recommender system can be greatly improved by using cloud computing technology to handle massive data in the cluster. On the basis of the comparison of traditional recommendation algorithms, combined with the advantages of cloud computing, a personalized recommendation system based on cloud computing is proposed. 展开更多
关键词 Random walk algorithm collaborative filtering model cloud computing system recommendation algorithm
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A novel maneuvering multi-target tracking algorithm based on multiple model particle filter in clutters 被引量:2
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作者 胡振涛 Pan Quan Yang Feng 《High Technology Letters》 EI CAS 2011年第1期19-24,共6页
To solve the problem of strong nonlinear and motion model switching of maneuvering target tracking system in clutter environment, a novel maneuvering multi-target tracking algorithm based on multiple model particle fi... To solve the problem of strong nonlinear and motion model switching of maneuvering target tracking system in clutter environment, a novel maneuvering multi-target tracking algorithm based on multiple model particle filter is presented in this paper. The algorithm realizes dynamic combination of multiple model particle filter and joint probabilistic data association algorithm. The rapid expan- sion of computational complexity, caused by the simple combination of the interacting multiple model algorithm and particle filter is solved by introducing model information into the sampling process of particle state, and the effective validation and utilization of echo is accomplished by the joint proba- bilistic data association algorithm. The concrete steps of the algorithm are given, and the theory analysis and simulation results show the validity of the method. 展开更多
关键词 maneuvering multi-target tracking multiple model particle filter interacting multiple model IMM) joint probabilistic data association
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Short-term traffic safety forecasting using Gaussian mixture model and Kalman filter 被引量:6
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作者 Sheng JIN Dian-hai WANG +1 位作者 Cheng XU Dong-fang MA 《Journal of Zhejiang University-Science A(Applied Physics & Engineering)》 SCIE EI CAS CSCD 2013年第4期231-243,共13页
In this paper,a prediction model is developed that combines a Gaussian mixture model(GMM) and a Kalman filter for online forecasting of traffic safety on expressways.Raw time-to-collision(TTC) samples are divided into... In this paper,a prediction model is developed that combines a Gaussian mixture model(GMM) and a Kalman filter for online forecasting of traffic safety on expressways.Raw time-to-collision(TTC) samples are divided into two categories:those representing vehicles in risky situations and those in safe situations.Then,the GMM is used to model the bimodal distribution of the TTC samples,and the maximum likelihood(ML) estimation parameters of the TTC distribution are obtained using the expectation-maximization(EM) algorithm.We propose a new traffic safety indicator,named the proportion of exposure to traffic conflicts(PETTC),for assessing the risk and predicting the safety of expressway traffic.A Kalman filter is applied to forecast the short-term safety indicator,PETTC,and solves the online safety prediction problem.A dataset collected from four different expressway locations is used for performance estimation.The test results demonstrate the precision and robustness of the prediction model under different traffic conditions and using different datasets.These results could help decision-makers to improve their online traffic safety forecasting and enable the optimal operation of expressway traffic management systems. 展开更多
关键词 Forecasting Traffic safety Gaussian mixture model Kalman filter
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Particle-filter-based walking prediction model for occlusion situations 被引量:1
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作者 Yoonchang Sung Woojin Chung 《Journal of Measurement Science and Instrumentation》 CAS 2013年第3期263-266,共4页
In the field of mobile robotics,human tracking has emerged as an important objective for facilitating human-robot interaction.In this paper,we propose a particle-filter-based walking prediction model that will address... In the field of mobile robotics,human tracking has emerged as an important objective for facilitating human-robot interaction.In this paper,we propose a particle-filter-based walking prediction model that will address an occlusion situation.Since the target being tracked is a human leg,a motion model for a leg is required.The validity of the proposed model is verified experimentally. 展开更多
关键词 human-following particle filter motion modelCLC number:TP242.6 Document code:AArticle ID:1674-8042(2013)03-0263-04
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A New Aware-Context Collaborative Filtering Approach by Applying Multivariate Logistic Regression Model into General User Pattern 被引量:1
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作者 Loc Nguyen 《Journal of Data Analysis and Information Processing》 2016年第3期124-131,共8页
Traditional collaborative filtering (CF) does not take into account contextual factors such as time, place, companion, environment, etc. which are useful information around users or relevant to recommender application... Traditional collaborative filtering (CF) does not take into account contextual factors such as time, place, companion, environment, etc. which are useful information around users or relevant to recommender application. So, recent aware-context CF takes advantages of such information in order to improve the quality of recommendation. There are three main aware-context approaches: contextual pre-filtering, contextual post-filtering and contextual modeling. Each approach has individual strong points and drawbacks but there is a requirement of steady and fast inference model which supports the aware-context recommendation process. This paper proposes a new approach which discovers multivariate logistic regression model by mining both traditional rating data and contextual data. Logistic model is optimal inference model in response to the binary question “whether or not a user prefers a list of recommendations with regard to contextual condition”. Consequently, such regression model is used as a filter to remove irrelevant items from recommendations. The final list is the best recommendations to be given to users under contextual information. Moreover the searching items space of logistic model is reduced to smaller set of items so-called general user pattern (GUP). GUP supports logistic model to be faster in real-time response. 展开更多
关键词 Aware-Context Collaborative filtering Logistic Regression model
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Kalman Filter for Generalized 2-D Roesser Models 被引量:2
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作者 盛梅 邹云 《Defence Technology(防务技术)》 SCIE EI CAS 2007年第1期43-48,共6页
The design problem of the state filter for the generalized stochastic 2-D Roesser models, which appears when both the state and measurement are simultaneously subjected to the interference from white noise, is discuss... The design problem of the state filter for the generalized stochastic 2-D Roesser models, which appears when both the state and measurement are simultaneously subjected to the interference from white noise, is discussed. The well-known Kalman filter design is extended to the generalized 2-D Roesser models. Based on the method of “scanning line by line”,the filtering problem of generalized 2-D Roesser models with mode-energy reconstruction is solved. The formula of the optimal filtering, which minimizes the variance of the estimation error of the state vectors, is derived. The validity of the designed filter is verified by the calculation steps and the examples are introduced. 展开更多
关键词 广义系统 二维Roesser模型 卡尔曼滤波器 控制论
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PARTICLE FILTERING BASED AUTOREGRESSIVE CHANNEL PREDICTION MODEL 被引量:1
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作者 Dong Chunli Dong Yuning +2 位作者 Wang Li Yang Zhen Zhang Hui 《Journal of Electronics(China)》 2010年第3期316-320,共5页
A particle filtering based AutoRegressive (AR) channel prediction model is presented for cognitive radio systems. Firstly, this paper introduces the particle filtering and the system model. Secondly, the AR model of o... A particle filtering based AutoRegressive (AR) channel prediction model is presented for cognitive radio systems. Firstly, this paper introduces the particle filtering and the system model. Secondly, the AR model of order p is used to approximate the flat Rayleigh fading channels; its stability is discussed, and an algorithm for solving the AR model parameters is also given. Finally, an AR channel prediction model based on particle filtering and second-order AR model is presented. Simulation results show that the performance of the proposed AR channel prediction model based on particle filtering is better than that of Kalman filtering. 展开更多
关键词 Cognitive radio Rayleigh fading channel AutoRegressive (AR) model Particle filtering
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Assimilation of Remote Sensing and Crop Model for LAI Estimation Based on Ensemble Kalman Filter 被引量:4
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作者 LI Rui LI Cun-jun +4 位作者 DONG Ying-ying LIU Feng WANG Ji-hua YANG Xiao-dong PAN Yu-chun 《Agricultural Sciences in China》 CAS CSCD 2011年第10期1595-1602,共8页
Data assimilation in agricultural remote sensing research is of great significance to integrate with remote sensing observations and model simulations for parameters estimation. The present investigation not only desi... Data assimilation in agricultural remote sensing research is of great significance to integrate with remote sensing observations and model simulations for parameters estimation. The present investigation not only designed and realized the Ensemble Kalman Filtering algorithm (EnKF) assimilation by combing the crop growth model (CERES-Wheat) with remote sensing data, but also optimized and updated the key parameters (LAI) of winter wheat by using remote sensing data. Results showed that the assimilation LAI and the observation ones agreed with each other, and the R2 reached 0.8315. So assimilation remote sensing and crop model could provide reference data for the agricultural production. 展开更多
关键词 crop model ASSIMILATION Ensemble Kalman filter algorithm leaf area index
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A “Dressed” Ensemble Kalman Filter Using the Hybrid Coordinate Ocean Model in the Pacific 被引量:3
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作者 万莉颖 朱江 +2 位作者 王辉 闫长香 Laurent BERTINO 《Advances in Atmospheric Sciences》 SCIE CAS CSCD 2009年第5期1042-1052,共11页
The computational cost required by the Ensemble Kalman Filter (EnKF) is much larger than that of some simpler assimilation schemes, such as Optimal Interpolation (OI) or three-dimension variational as- similation ... The computational cost required by the Ensemble Kalman Filter (EnKF) is much larger than that of some simpler assimilation schemes, such as Optimal Interpolation (OI) or three-dimension variational as- similation (3DVAR). Ensemble optimal interpolation (EnOI), a crudely simplified implementation of EnKF, is sometimes used as a substitute in some oceanic applications and requires much less computational time than EnKF. In this paper, to compromise between computational cost and dynamic covariance, we use the idea of "dressing" a small size dynamical ensemble with a larger number of static ensembles in order to form an approximate dynamic covariance. The term "dressing" means that a dynamical ensemble seed from model runs is perturbed by adding the anomalies of some static ensembles. This dressing EnKF (DrEnKF for short) scheme is tested in assimilation of real altimetry data in the Pacific using the HYbrid Coordinate Ocean Model (HYCOM) over a four-year period. Ten dynamical ensemble seeds are each dressed by 10 static ensemble members selected from a 100-member static ensemble. Results are compared to two EnKF assimilation runs that use 10 and 100 dynamical ensemble members. Both temperature and salinity fields from the DrEnKF and the EnKF are compared to observations from Argo floats and an OI SST dataset. The results show that the DrEnKF and the 100-member EnKF yield similar root mean square errors (RMSE) at every model level. Error covariance matrices from the DrEnKF and the 100-member EnKF are also compared and show good agreement. 展开更多
关键词 Dressing Ensemble Kalman filter (DrEnKF) HYbrid Coordinate Ocean model root meansquare errors
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Algebraic Attack on Filter-Combiner Model Keystream Generators
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作者 WUZhi-ping YEDing-feng MAWei-ju 《Wuhan University Journal of Natural Sciences》 EI CAS 2005年第1期259-262,共4页
Algebraic attack was applied to attack Filter-Combintr model keystreamgenerators. We proposed the technique of function composition to improve the model, and the improvedmodel can resist the algebraic attack. A new cr... Algebraic attack was applied to attack Filter-Combintr model keystreamgenerators. We proposed the technique of function composition to improve the model, and the improvedmodel can resist the algebraic attack. A new criterion for designing Filter-Combiner model was alsoproposed: the total length I. of Linear Finite State Machines used in the model should be largeenough and the degree d of Filter-Combiner function should be approximate [L/2]. 展开更多
关键词 algebraic attack filter-Combiner model stream cipher 'XL' algorithm function composition
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A Framework of Finite-model Kalman Filter with Case Study: MVDP-FMKF Algorithm 被引量:1
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作者 FENG Bo MA Hong-Bin +1 位作者 FU Meng-Yin WANG Shun-Ting 《自动化学报》 EI CSCD 北大核心 2013年第8期1246-1256,共11页
然而,过滤技术的 Kalman 广泛地在许多应用被使用了为线性 Gaussian 系统的标准 Kalman 过滤器不能通常工作很好或甚至面对大模型无常分叉。在实际应用程序,有高费用的实验的大数字是昂贵的或对甚至不可能获得一个准确系统模型。在有... 然而,过滤技术的 Kalman 广泛地在许多应用被使用了为线性 Gaussian 系统的标准 Kalman 过滤器不能通常工作很好或甚至面对大模型无常分叉。在实际应用程序,有高费用的实验的大数字是昂贵的或对甚至不可能获得一个准确系统模型。在有限模型的适应控制上由我们的以前的开创的工作激发了,过滤的有限模型的 Kalman 的一个框架在这份报纸被介绍。这个框架想那大模型无常可以被能与对方很不同的已知的模型的一个有限集合限制。而且,在集合的已知的模型的数字能灵活地被选择以便换句话说,不明确的模型可以被已知的模型之一总是接近大模型无常被已知的模型的凸的壳盖住。在介绍框架以内根据经由最小化的向量距离原则的适应切换的想法,一个简单有限模型的 Kalman 过滤器, MVDP-FMKF,被广泛的模拟算术地提出并且说明。MEMS 回转仪飘移的一个实验验证了建议算法的有效性,显示有限模型的 Kalman 过滤器的机制在 Kalman 过滤器的实际应用有用、有效,特别在惯性的航行系统。 展开更多
关键词 卡尔曼滤波技术 有限模型 框架 算法 卡尔曼滤波器 不确定性模型 惯性导航系统 自适应控制
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Reliable flight performance assessment of multirotor based on interacting multiple model particle filter and health degree 被引量:6
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作者 Zhiyao ZHAO Peng YAO +3 位作者 Xiaoyi WANG Jiping XU Li WANG Jiabin YU 《Chinese Journal of Aeronautics》 SCIE EI CAS CSCD 2019年第2期444-453,共10页
Multirotor has been applied to many military and civilian mission scenarios. From the perspective of reliability, it is difficult to ensure that multirotors do not generate hardware and software failures or performanc... Multirotor has been applied to many military and civilian mission scenarios. From the perspective of reliability, it is difficult to ensure that multirotors do not generate hardware and software failures or performance anomalies during the flight process. These failures and anomalies may result in mission interruptions, crashes, and even threats to the lives and property of human beings.Thus, the study of flight reliability problems of multirotors is conductive to the development of the drone industry and has theoretical significance and engineering value. This paper proposes a reliable flight performance assessment method of multirotors based on an Interacting Multiple Model Particle Filter(IMMPF) algorithm and health degree as the performance indicator. First, the multirotor is modeled by the Stochastic Hybrid System(SHS) model, and the problem of reliable flight performance assessment is formulated. In order to solve the problem, the IMMPF algorithm is presented to estimate the real-time probability distribution of hybrid state of the established SHS-based multirotor model, since it can decrease estimation errors compared with the standard interacting multiple model algorithm based on extended Kalman filter. Then, the reliable flight performance is assessed with health degree based on the estimation result. Finally, a case study of a multirotor suffering from sensor anomalies is presented to validate the effectiveness of the proposed method. 展开更多
关键词 HEALTH DEGREE INTERACTING multiple model Multirotor Particle filter Reliability and safety RELIABLE flight performance Unmanned AERIAL vehicles
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A numerical storm surge forecast model with Kalman filter
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作者 于福江 张占海 林一骅 《Acta Oceanologica Sinica》 SCIE CAS CSCD 2001年第4期483-492,共10页
Kalman filter data assimilation technique is incorporated into a standard two-dimensional linear storm surge model. Imperfect model equation and imperfect meteorological forcimg are accounted for by adding noise terms... Kalman filter data assimilation technique is incorporated into a standard two-dimensional linear storm surge model. Imperfect model equation and imperfect meteorological forcimg are accounted for by adding noise terms to the momentum equations. The deterministic model output is corrected by using the available tidal gauge station data. The stationary Kalman filter algorithm for the model domain is calculated by an iterative procedure using specified information on the inaccuracies in the momentum e- quations and specified error information for the observations. An application to a real storm surge that occurred in the summer of 1956 in the East China Sea is performed by means of this data assimilation technique. The result shows that Kalman filter is useful for storm surge forecast and hindcast. 展开更多
关键词 Storm surge model Kalman filter
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