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Gyroscope Dynamic Balance Counterweight Prediction Based on Multi-Head ResGAT Networks
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作者 Wuyang Fan Shisheng Zhong 《Computer Modeling in Engineering & Sciences》 SCIE EI 2024年第6期2525-2555,共31页
The dynamic balance assessment during the assembly of the coordinator gyroscope significantly impacts the guidance accuracy of precision-guided equipment.In dynamic balance debugging,reliance on rudimentary counterwei... The dynamic balance assessment during the assembly of the coordinator gyroscope significantly impacts the guidance accuracy of precision-guided equipment.In dynamic balance debugging,reliance on rudimentary counterweight empirical formulas persists,resulting in suboptimal debugging accuracy and an increased repetition rate.To mitigate this challenge,we present a multi-head residual graph attention network(ResGAT)model,designed to predict dynamic balance counterweights with high precision.In this research,we employ graph neural networks for interaction feature extraction from assembly graph data.An SDAE-GPC model is designed for the assembly condition classification to derive graph data inputs for the ResGAT regression model,which is capable of predicting gyroscope counterweights under small-sample conditions.The results of our experiments demonstrate the effectiveness of the proposed approach in predicting dynamic gyroscope counterweight in its assembly process.Our approach surpasses current methods in mitigating repetition rates and enhancing the assembly efficiency of gyroscopes. 展开更多
关键词 GYROSCOPE COUNTERWEIGHT ASSEMBLY small-sample ResGAT repetition rate
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General limited information diffusion method of small-sample information analysis in insurance 被引量:14
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作者 忻莉莉 耿辉 +1 位作者 王永民 张晶晶 《Journal of Shanghai University(English Edition)》 CAS 2007年第3期259-262,共4页
When analyzing and evaluating risks in insurance, people are often confronted with the situation of incomplete information and insufficient data, which is known as a small-sample problem. In this paper, a one-dimensio... When analyzing and evaluating risks in insurance, people are often confronted with the situation of incomplete information and insufficient data, which is known as a small-sample problem. In this paper, a one-dimensional small-sample problem in insurance was investigated using the kernel density estimation method (KerM) and general limited information diffusion method (GIDM). In particular, MacCormack technique was applied to get the solutions of GIDM equations and then the optimal diffusion solution was acquired based on the two optimization principles. Finally, the analysis introduced in this paper was verified by treating some examples and satisfying results were obtained. 展开更多
关键词 fuzzy mathematics kernel density estimation information diffusion MacCormack technique small-sample
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Analysis method on shoot precision of weapon in small-sample case
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作者 Jiang Jun Song Baowei Liang Qingwei 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2007年第4期781-784,共4页
Because of limits of cost, in general, the test data of weapons are shortness. It is always an important topic that to gain scientific results of weapon performance analyses in small-sample case. Based on the analysis... Because of limits of cost, in general, the test data of weapons are shortness. It is always an important topic that to gain scientific results of weapon performance analyses in small-sample case. Based on the analysis of distribution function characteristics and grey mathematics, a weighting grey method in small-sample case is presented. According to the analysis of test data of a weapon, it is proved that the method is a good method to deal with data in the small-sample case and has a high value in the analysis of weapon performance. 展开更多
关键词 WEAPON small-sample shoot precision statistical characters
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基于内容图像检索中相关反馈技术的回顾 被引量:52
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作者 吴洪 卢汉清 马颂德 《计算机学报》 EI CSCD 北大核心 2005年第12期1969-1979,共11页
由于相关反馈技术能有效地提高基于内容图像检索的性能,使它成为图像检索系统中不可少的一部分.近年来相关反馈技术的研究正吸引着越来越多的关注,涌现出了许多算法.在简要介绍了基于内容图像检索后,文中讨论了相关反馈的交互过程和其... 由于相关反馈技术能有效地提高基于内容图像检索的性能,使它成为图像检索系统中不可少的一部分.近年来相关反馈技术的研究正吸引着越来越多的关注,涌现出了许多算法.在简要介绍了基于内容图像检索后,文中讨论了相关反馈的交互过程和其中的重要环节,进一步分析了相关反馈中的学习问题及其特点,根据相关反馈算法所采用的检索模型把算法分为基于距离度量的方法、基于概率框架的方法和基于机器学习的方法,并在这个分类下对近年来有代表性的一些算法进行了分析和探讨,最后展望了相关反馈技术未来的发展方向. 展开更多
关键词 相关反馈 基于内容图像检索 监督学习 小样本 用户相关判断
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DCGAN Based Spectrum Sensing Data Enhancement for Behavior Recognition in Self-Organized Communication Network 被引量:3
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作者 Kaixin Cheng Lei Zhu +5 位作者 Changhua Yao Lu Yu Xinrong Wu Xiang Zheng Lei Wang Fandi Lin 《China Communications》 SCIE CSCD 2021年第11期182-196,共15页
Communication behavior recognition is an issue with increasingly importance in the antiterrorism and national defense area.However,the sensing data obtained in actual environment is often not sufficient to accurately ... Communication behavior recognition is an issue with increasingly importance in the antiterrorism and national defense area.However,the sensing data obtained in actual environment is often not sufficient to accurately analyze the communication behavior.Traditional means can hardly utilize the scarce and crude spectrum sensing data captured in a real scene.Thus,communication behavior recognition using raw sensing data under smallsample condition has become a new challenge.In this paper,a data enhanced communication behavior recognition(DECBR)scheme is proposed to meet this challenge.Firstly,a preprocessing method is designed to make the raw spectrum data suitable for the proposed scheme.Then,an adaptive convolutional neural network structure is exploited to carry out communication behavior recognition.Moreover,DCGAN is applied to support data enhancement,which realize communication behavior recognition under small-sample condition.Finally,the scheme is verified by experiments under different data size.The results show that the DECBR scheme can greatly improve the accuracy and efficiency of behavior recognition under smallsample condition. 展开更多
关键词 spectrum sensing communication behavior recognition small-sample data enhancement selforganized network
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An Improved Algorithm for Imbalanced Data and Small Sample Size Classification
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作者 Yong Hu Dongfa Guo +7 位作者 Zengwei Fan Chen Dong Qiuhong Huang Shengkai Xie Guifang Liu Jing Tan Boping Li Qiwei Xie 《Journal of Data Analysis and Information Processing》 2015年第3期27-33,共7页
Traditional classification algorithms perform not very well on imbalanced data sets and small sample size. To deal with the problem, a novel method is proposed to change the class distribution through adding virtual s... Traditional classification algorithms perform not very well on imbalanced data sets and small sample size. To deal with the problem, a novel method is proposed to change the class distribution through adding virtual samples, which are generated by the windowed regression over-sampling (WRO) method. The proposed method WRO not only reflects the additive effects but also reflects the multiplicative effect between samples. A comparative study between the proposed method and other over-sampling methods such as synthetic minority over-sampling technique (SMOTE) and borderline over-sampling (BOS) on UCI datasets and Fourier transform infrared spectroscopy (FTIR) data set is provided. Experimental results show that the WRO method can achieve better performance than other methods. 展开更多
关键词 Class IMBALANCE Learning OVER-SAMPLING HIGH-DIMENSIONAL small-sample SIZE Support VECTOR Machine
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Sealing reliability modeling of aviation seal based on interval uncertainty method and multidimensional response surface 被引量:3
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作者 Baopeng LIAO Bo SUN +5 位作者 Yu LI Meichen YAN Yi REN Qiang FENG Dezhen YANG Kun ZHOU 《Chinese Journal of Aeronautics》 SCIE EI CAS CSCD 2019年第9期2188-2198,共11页
Many variables affect the sealing performance, and their distribution characteristics are difficult to obtain with probabilistic methods owing to the high cost involved. Numerous problems in engineering are similar du... Many variables affect the sealing performance, and their distribution characteristics are difficult to obtain with probabilistic methods owing to the high cost involved. Numerous problems in engineering are similar due to the appearance of small-sample parameters. In this study, the sealing reliability of an aviation seal was defined as the research object, and an interval uncertainty method and multidimensional response surface were proposed to calculate the sealing reliability.Based on this, we first analyzed the failure mechanism of the aviation seal and established a leakage rate model. Then, based on the non-probabilistic interval model, an interval uncertainty method was proposed to construct the analytical model. With reference to the limit state equation from the structural reliability theory, the multidimensional response surface was used for fast calculation.Then, we chose the single-cylinder gas steering gear used in aircraft as the case study, its sealing reliability in working and non-working statuses were calculated, and the results were verified with the actual maintenance records. By analyzing the sensitivity of some variables, we can improve the sealing reliability of the aviation seal by improving the surface roughness only if the cost allows.Finally, we consider that the method proposed in this study realizes the application of smallsample uncertainty analysis in reliability analysis, and could provide a feasible way to solve the similar problems in engineering with multidimensional and small-sample parameters. 展开更多
关键词 AVIATION SEAL Interval uncertainty METHOD MULTIDIMENSIONAL response surface SEALING RELIABILITY small-sample parameters
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A generic and extensible model for the martensite start temperature incorporating thermodynamic data mining and deep learning framework
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作者 Chenchong Wang Kaiyu Zhu +2 位作者 Peter Hedström Yong Li Wei Xu 《Journal of Materials Science & Technology》 SCIE EI CAS CSCD 2022年第33期31-43,共13页
The martensite start temperature is a critical parameter for steels with metastable austenite.Although numerous models have been developed to predict the martensite start(Ms)temperature,the complexity of the martensit... The martensite start temperature is a critical parameter for steels with metastable austenite.Although numerous models have been developed to predict the martensite start(Ms)temperature,the complexity of the martensitic transformation greatly limits their performance and extensibility.In this work,we apply deep data mining of thermodynamic calculations and deep learning to develop a generic model for Msprediction.Deep data mining was used to establish a hierarchical database with three levels of information.Then,a convolutional neural network model,which can accurately treat the hierarchical data structure,was used to obtain the final model.By integrating thermodynamic calculations,traditional machine learning and deep learning modeling,the final predictor model shows excellent generalizability and extensibility,i.e.model performance both within and beyond the composition range of the original database.The effects of 15 alloying elements were considered successfully using the proposed methodology.The work suggests that,with the help of deep data mining considering the physical mechanisms,deep learning methods can partially mitigate the challenge with limited data in materials science and provide a means for solving complex problems with small databases. 展开更多
关键词 Martensite transformation Data mining Deep learning EXTENSIBILITY small-sample problem
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