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Numerical simulation of the fluid and flexible rods interaction using a semi-resolved coupling model promoted by anisotropic Gaussian kernel function
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作者 Caiping Jin Jingxin Zhang Yonglin Sun 《Theoretical & Applied Mechanics Letters》 2025年第1期5-8,共4页
The numerical simulation of the fluid flow and the flexible rod(s)interaction is more complicated and has lower efficiency due to the high computational cost.In this paper,a semi-resolved model coupling the computatio... The numerical simulation of the fluid flow and the flexible rod(s)interaction is more complicated and has lower efficiency due to the high computational cost.In this paper,a semi-resolved model coupling the computational fluid dynamics and the flexible rod dynamics is proposed using a two-way domain expansion method.The gov-erning equations of the flexible rod dynamics are discretized and solved by the finite element method,and the fluid flow is simulated by the finite volume method.The interaction between fluids and solid rods is modeled by introducing body force terms into the momentum equations.Referred to the traditional semi-resolved numerical model,an anisotropic Gaussian kernel function method is proposed to specify the interactive forces between flu-ids and solid bodies for non-circle rod cross-sections.A benchmark of the flow passing around a single flexible plate with a rectangular cross-section is used to validate the algorithm.Focused on the engineering applications,a test case of a finite patch of cylinders is implemented to validate the accuracy and efficiency of the coupled model. 展开更多
关键词 Semi-resolved coupling model Two-way domain expansion method Anisotropic gaussian kernel function Flexible rod(s)
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Theoretical convergence analysis of complex Gaussian kernel LMS algorithm
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作者 Wei Gao Jianguo Huang +1 位作者 Jing Han Qunfei Zhang 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2016年第1期39-50,共12页
With the vigorous expansion of nonlinear adaptive filtering with real-valued kernel functions,its counterpart complex kernel adaptive filtering algorithms were also sequentially proposed to solve the complex-valued no... With the vigorous expansion of nonlinear adaptive filtering with real-valued kernel functions,its counterpart complex kernel adaptive filtering algorithms were also sequentially proposed to solve the complex-valued nonlinear problems arising in almost all real-world applications.This paper firstly presents two schemes of the complex Gaussian kernel-based adaptive filtering algorithms to illustrate their respective characteristics.Then the theoretical convergence behavior of the complex Gaussian kernel least mean square(LMS)algorithm is studied by using the fixed dictionary strategy.The simulation results demonstrate that the theoretical curves predicted by the derived analytical models consistently coincide with the Monte Carlo simulation results in both transient and steady-state stages for two introduced complex Gaussian kernel LMS algonthms using non-circular complex data.The analytical models are able to be regard as a theoretical tool evaluating ability and allow to compare with mean square error(MSE)performance among of complex kernel LMS(KLMS)methods according to the specified kernel bandwidth and the length of dictionary. 展开更多
关键词 nonlinear adaptive filtering complex gaussian kernel convergence analysis non-circular data kernel least mean square(KLMS).
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Gaussian Kernel Based SVR Model for Short-Term Photovoltaic MPP Power Prediction
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作者 Yasemin Onal 《Computer Systems Science & Engineering》 SCIE EI 2022年第4期141-156,共16页
Predicting the power obtained at the output of the photovoltaic(PV)system is fundamental for the optimum use of the PV system.However,it varies at different times of the day depending on intermittent and nonlinear env... Predicting the power obtained at the output of the photovoltaic(PV)system is fundamental for the optimum use of the PV system.However,it varies at different times of the day depending on intermittent and nonlinear environmen-tal conditions including solar irradiation,temperature and the wind speed,Short-term power prediction is vital in PV systems to reconcile generation and demand in terms of the cost and capacity of the reserve.In this study,a Gaussian kernel based Support Vector Regression(SVR)prediction model using multiple input variables is proposed for estimating the maximum power obtained from using per-turb observation method in the different irradiation and the different temperatures for a short-term in the DC-DC boost converter at the PV system.The performance of the kernel-based prediction model depends on the availability of a suitable ker-nel function that matches the learning objective,since an unsuitable kernel func-tion or hyper parameter tuning results in significantly poor performance.In this study for thefirst time in the literature both maximum power is obtained at max-imum power point and short-term maximum power estimation is made.While evaluating the performance of the suggested model,the PV power data simulated at variable irradiations and variable temperatures for one day in the PV system simulated in MATLAB were used.The maximum power obtained from the simu-lated system at maximum irradiance was 852.6 W.The accuracy and the perfor-mance evaluation of suggested forecasting model were identified utilizing the computing error statistics such as root mean square error(RMSE)and mean square error(MSE)values.MSE and RMSE rates which obtained were 4.5566*10-04 and 0.0213 using ANN model.MSE and RMSE rates which obtained were 13.0000*10-04 and 0.0362 using SWD-FFNN model.Using SVR model,1.1548*10-05 MSE and 0.0034 RMSE rates were obtained.In the short-term maximum power prediction,SVR gave higher prediction performance according to ANN and SWD-FFNN. 展开更多
关键词 Short term power prediction gaussian kernel support vector regression photovoltaic system
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Stochastic Economic Dispatch Considering the Dependence of Multiple Wind Farms Using Multivariate Gaussian Kernel Copula 被引量:4
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作者 Yantai Lin Tianyao Ji +1 位作者 Yuzi Jiang Q.H.Wu 《CSEE Journal of Power and Energy Systems》 SCIE EI CSCD 2022年第5期1352-1362,共11页
Wind farms usually cluster in areas with abundant wind resources.Therefore,spatial dependence of wind speeds among nearby wind farms should be taken into account when modeling a power system with large-scale wind powe... Wind farms usually cluster in areas with abundant wind resources.Therefore,spatial dependence of wind speeds among nearby wind farms should be taken into account when modeling a power system with large-scale wind power penetration.This paper proposes a novel non-parametric copula method,multivariate Gaussian kernel copula(MGKC),to describe the dependence structure of wind speeds among multiple wind farms.Wind speed scenarios considering the dependence among different wind farms are sampled from the MGKC by the quasi-Monte Carlo(QMC)method,so as to solve the stochastic economic dispatch(SED)problem,for which an improved meanvariance(MV)model is established,which targets at minimizing the expectation and risk of fuel cost simultaneously.In this model,confidence interval is applied in the wind speed to obtain more practical dispatch solutions by excluding extreme scenarios,for which the quantile-copula is proposed to construct the confidence interval constraint.Simulation studies are carried out on a modified IEEE 30-bus power system with wind farms integrated in two areas,and the results prove the superiority of the MGKC in formulating the dependence among different wind farms and the superiority of the improved MV model based on quantilecopula in determining a better dispatch solution. 展开更多
关键词 Multivariate gaussian kernel copula Quasi-Monte Carlo Quantile-copula stochastic economic dispatch
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Non-iterative Cauchy kernel-based maximum correntropy cubature Kalman filter for non-Gaussian systems 被引量:3
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作者 Aastha Dak Rahul Radhakrishnan 《Control Theory and Technology》 EI CSCD 2022年第4期465-474,共10页
This article addresses the nonlinear state estimation problem where the conventional Gaussian assumption is completely relaxed.Here,the uncertainties in process and measurements are assumed non-Gaussian,such that the ... This article addresses the nonlinear state estimation problem where the conventional Gaussian assumption is completely relaxed.Here,the uncertainties in process and measurements are assumed non-Gaussian,such that the maximum correntropy criterion(MCC)is chosen to replace the conventional minimum mean square error criterion.Furthermore,the MCC is realized using Gaussian as well as Cauchy kernels by defining an appropriate cost function.Simulation results demonstrate the superior estimation accuracy of the developed estimators for two nonlinear estimation problems. 展开更多
关键词 Maximum correntropy criterion Cubature Kalman filter Non-gaussian noise Cauchy kernel gaussian kernel
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Optimization of Extrusion-based Silicone Additive Manufacturing Process Parameters Based on Improved Kernel Extreme Learning Machine
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作者 Zi-Ning Li Xiao-Qing Tian +3 位作者 Dingyifei Ma Shahid Hussain Lian Xia Jiang Han 《Chinese Journal of Polymer Science》 2025年第5期848-862,共15页
Silicone material extrusion(MEX)is widely used for processing liquids and pastes.Owing to the uneven linewidth and elastic extrusion deformation caused by material accumulation,products may exhibit geometric errors an... Silicone material extrusion(MEX)is widely used for processing liquids and pastes.Owing to the uneven linewidth and elastic extrusion deformation caused by material accumulation,products may exhibit geometric errors and performance defects,leading to a decline in product quality and affecting its service life.This study proposes a process parameter optimization method that considers the mechanical properties of printed specimens and production costs.To improve the quality of silicone printing samples and reduce production costs,three machine learning models,kernel extreme learning machine(KELM),support vector regression(SVR),and random forest(RF),were developed to predict these three factors.Training data were obtained through a complete factorial experiment.A new dataset is obtained using the Euclidean distance method,which assigns the elimination factor.It is trained with Bayesian optimization algorithms for parameter optimization,the new dataset is input into the improved double Gaussian extreme learning machine,and finally obtains the improved KELM model.The results showed improved prediction accuracy over SVR and RF.Furthermore,a multi-objective optimization framework was proposed by combining genetic algorithm technology with the improved KELM model.The effectiveness and reasonableness of the model algorithm were verified by comparing the optimized results with the experimental results. 展开更多
关键词 Silicone material extrusion Process parameter optimization Double gaussian kernel extreme learning machine Euclidean distance assigned to the elimination factor Multi-objective optimization framework
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Gaussian kernel operators on white noise functional spaces
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作者 骆顺龙 严加安 《Science China Mathematics》 SCIE 2000年第10期1067-1074,共8页
The Gaussian kernel operators on white noise functional spaces, including second quantization, Fourier-Mehler transform, scaling, renormalization, etc. are studied by means of symbol calculus, and characterized by the... The Gaussian kernel operators on white noise functional spaces, including second quantization, Fourier-Mehler transform, scaling, renormalization, etc. are studied by means of symbol calculus, and characterized by the intertwining relations with annihilation and creation operators. The infinitesimal generators of the Gaussian kernel operators are second order white noise operators of which the number operator and the Gross Laplacian are particular examples. 展开更多
关键词 gaussian kernel OPERATORS SYMBOLS Laplacians.
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Comparison of Uniform and Kernel Gaussian Weight Matrix in Generalized Spatial Panel Data Model
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作者 Tuti Purwaningsih Erfiani   《Open Journal of Statistics》 2015年第1期90-95,共6页
Panel data combine cross-section data and time series data. If the cross-section is locations, there is a need to check the correlation among locations. ρ and λ are parameters in generalized spatial model to cover e... Panel data combine cross-section data and time series data. If the cross-section is locations, there is a need to check the correlation among locations. ρ and λ are parameters in generalized spatial model to cover effect of correlation between locations. Value of ρ or λ will influence the goodness of fit model, so it is important to make parameter estimation. The effect of another location is covered by making contiguity matrix until it gets spatial weighted matrix (W). There are some types of W—uniform W, binary W, kernel Gaussian W and some W from real case of economics condition or transportation condition from locations. This study is aimed to compare uniform W and kernel Gaussian W in spatial panel data model using RMSE value. The result of analysis showed that uniform weight had RMSE value less than kernel Gaussian model. Uniform W had stabil value for all the combinations. 展开更多
关键词 Component UNIFORM WEIGHT kernel gaussian WEIGHT GENERALIZED Spatial PANEL Data Model
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机器学习中核函数的隐私保护计算方法及应用
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作者 张明武 黄子麒 王玉珠 《密码学报(中英文)》 北大核心 2026年第1期28-42,共15页
核函数通过量化跨域样本间的相似性,将数据映射至高维空间以解决线性不可分问题,但其在传统明文上计算方式涉及多方数据交互,存在隐私泄露风险.本文针对该问题,提出半诚实模型下的隐私保护计算核函数框架.首先基于同态加密与随机扰乱因... 核函数通过量化跨域样本间的相似性,将数据映射至高维空间以解决线性不可分问题,但其在传统明文上计算方式涉及多方数据交互,存在隐私泄露风险.本文针对该问题,提出半诚实模型下的隐私保护计算核函数框架.首先基于同态加密与随机扰乱因子设计了三个交互式子协议,包括安全内积计算、安全幂函数计算与安全欧氏距离计算协议;通过将明文空间划分为正负数同余类并引入浮点数缩放因子,解决了传统加密算法在真实数据集上的兼容性问题;构建了基于交互式协议的非线性运算框架,在仅依赖加性同态加密的条件下,结合泰勒多项式逼近技术,通过两方计算与随机扰动技术实现了复杂核函数的安全计算,在单一密码系统内支持线性核函数、多项式核函数与高斯核函数;分析了方案的正确性、安全性、计算复杂性并说明了该方案的使用场景,利用公开数据集验证了此方案.实验结果表明,该方案在保证核函数模型精度的同时,有效实现了隐私保护目标,具备计算复杂度低与时间开销少的优势. 展开更多
关键词 线性可分 线性核 多项式核 高斯核 隐私保护
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结合深度核学习与高斯过程的边坡稳定性预测方法
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作者 李书 喻国荣 +1 位作者 付兵杰 鲍海洲 《水力发电》 2026年第2期40-47,共8页
鉴于边坡特征之间、特征与稳定性判定之间的复杂非线性关系,经典的高斯过程边坡稳定性预测方法在复杂结构建模上表现有限且难以处理大规模的边坡数据,提出一种结合深度核学习与高斯过程的边坡稳定性预测方法。首先,利用多层前馈网络对... 鉴于边坡特征之间、特征与稳定性判定之间的复杂非线性关系,经典的高斯过程边坡稳定性预测方法在复杂结构建模上表现有限且难以处理大规模的边坡数据,提出一种结合深度核学习与高斯过程的边坡稳定性预测方法。首先,利用多层前馈网络对边坡特征进行深度提取,再将隐空间映射到带有径向基函数核的高斯过程,实现非参数不确定性量化。模型通过最大化边缘对数似然函数优化神经网络权重与核超参数,可端到端学习数据驱动的最优核。在公开的Kaggle数据集上的试验表明,所提方法较经典机器学习算法随机森林RF、支持向量机SVM、高斯过程回归GPR,以及深度学习方法门控循环单元GRU、深度神经网络DNN在均方根误差、平均绝对误差和决定系数等指标上均取得最佳结果,为边坡灾害智能预警提供了新的技术支撑。 展开更多
关键词 边坡稳定性 预测算法 深度核学习 高斯过程回归 经典机器学习算法
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预测扇形孔气膜分布的“核”参数模型
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作者 傅奕融 李月茹 +1 位作者 陈榴 戴韧 《动力工程学报》 北大核心 2026年第1期51-58,共8页
在离散孔群(群孔)覆盖区域的气膜冷却效率计算中,常规计算流体动力学(CFD)模拟面临建模网格复杂与计算资源耗费大的问题。因此,提出了一种参数形式的核函数,以描述单个气膜孔的冷却效率分布特征,预测气膜冷却效率,并结合数据驱动的机器... 在离散孔群(群孔)覆盖区域的气膜冷却效率计算中,常规计算流体动力学(CFD)模拟面临建模网格复杂与计算资源耗费大的问题。因此,提出了一种参数形式的核函数,以描述单个气膜孔的冷却效率分布特征,预测气膜冷却效率,并结合数据驱动的机器学习技术和Sellers气膜冷却效率叠加方法,实现对群孔覆盖域冷却效率分布的高效预测。基于该“核”参数模型,成功复现了7-7-7扇形气膜孔的单孔和三列顺排群孔的冷却效率分布,并在给定区域内,利用整数规划方法获得了区域面平均冷却效率最高的顺排群孔布局。结果表明:“核”参数模型能够准确反映气膜孔覆盖域内冷却效率的分布特征,克服了传统关联式仅预测展向平均冷却效率的局限性,而且显著减少了机器学习所需的样本数量,可适用于不同工况下的气膜冷却效率预测。 展开更多
关键词 气膜冷却 高斯核 人工神经网络 全覆盖预测
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球床式高温堆气固两相耦合半解析函数研究
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作者 赵蓬 王郑阳 +2 位作者 吴浩 牛风雷 刘洋 《强激光与粒子束》 北大核心 2026年第2期123-130,共8页
为精确模拟高温球床堆内数万计燃料颗粒的气固两相耦合传热过程,并克服传统CFD-DEM方法因网格粗大导致的精度不足及全解析方法计算成本过高的问题,提出了一种适用于精细流体网格的半解析函数模型。该模型通过引入高斯核函数,对颗粒周围... 为精确模拟高温球床堆内数万计燃料颗粒的气固两相耦合传热过程,并克服传统CFD-DEM方法因网格粗大导致的精度不足及全解析方法计算成本过高的问题,提出了一种适用于精细流体网格的半解析函数模型。该模型通过引入高斯核函数,对颗粒周围物理属性进行平滑与加权平均,从而实现在亚网格尺度下对颗粒所受流体作用力的精确计算。沃罗单元体分析表明,无量纲扩散时间的最优取值为0.6。超过此值会导致核函数影响域过度扩展,致使空间分布过度平滑而难以捕捉球床局部特征。在HTR-10球床堆的耦合传热仿真中,采用该模型计算得到的温度场分布与经验模型高度吻合。结果表明,本模型能够准确捕获颗粒间的相间作用力,为高温气冷堆热工流体仿真提供了一个兼具精度与效率的解决方案。 展开更多
关键词 高温球床 半解析函数 CFD-DEM 颗粒 高斯核函数
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利用Gaussian核对多元函数的近似逼近及其误差估计 被引量:3
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作者 徐艳艳 陈广贵 雷文慧 《四川师范大学学报(自然科学版)》 CAS CSCD 北大核心 2009年第5期581-587,共7页
V.Maz’ya首次提出了近似逼近法,其主要是研究定义在全空间上的光滑函数的逼近情况,但它不能有效的处理积分和拟微分算子的高阶求积公式问题及利用更有效的数值和半数值方法解决数学物理的边界等问题.F.M櫣ller和W.Varnhorn给出了一维... V.Maz’ya首次提出了近似逼近法,其主要是研究定义在全空间上的光滑函数的逼近情况,但它不能有效的处理积分和拟微分算子的高阶求积公式问题及利用更有效的数值和半数值方法解决数学物理的边界等问题.F.M櫣ller和W.Varnhorn给出了一维紧区间上函数的近似逼近方法,而且还可以控制近似逼近的截断误差.根据上述思想,采用近似逼近法,利用Gaussian核对二维紧空间上光滑函数进行逼近,并考察由这种近似逼近法所产生的误差情况. 展开更多
关键词 gaussian 近似逼近数 全误差 TAYLOR公式
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Gaussian小波SVM及其混沌时间序列预测 被引量:3
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作者 郑永康 陈维荣 +1 位作者 戴朝华 王维博 《控制工程》 CSCD 北大核心 2009年第4期468-471,共4页
为了提高混沌时间序列的预测精度,针对小波有利于信号细微特征提取的优点,结合小波技术和SVM的核函数方法,提出基于Gaussian小波SVM的混沌时间序列预测模型。证明了偶数阶Gaussian小波函数满足SVM平移不变核条件,并构建相应的Gaussian小... 为了提高混沌时间序列的预测精度,针对小波有利于信号细微特征提取的优点,结合小波技术和SVM的核函数方法,提出基于Gaussian小波SVM的混沌时间序列预测模型。证明了偶数阶Gaussian小波函数满足SVM平移不变核条件,并构建相应的Gaussian小波SVM。对混沌时间序列进行相空间重构,将重构相空间中的向量作为SVM的输入参量。用Gaussian小波SVM与常用的径向基SVM及Morlet小波SVM进行对比实验,通过对Chens混沌时间序列和负荷混沌时间序列的预测,结果表明,Gaussian小波SVM的效果比其他两种SVM更好。 展开更多
关键词 混沌时间序列预测 相空间重构 gaussian小波核 负荷预测
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Gaussian核SVM在抗噪语音识别中的应用 被引量:1
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作者 白静 张雪英 《计算机工程与设计》 CSCD 北大核心 2009年第17期4061-4063,4066,共4页
为提高机器学习的推广能力,解决语音识别系统在噪声环境中识别率变差等问题,采用改进的MFCC语音特征参数,用Gaussian核支持向量机(SVM)作为语音识别网络,对SVM多类分类问题采用"一对一"分类算法,实现了一个汉语孤立词非特定... 为提高机器学习的推广能力,解决语音识别系统在噪声环境中识别率变差等问题,采用改进的MFCC语音特征参数,用Gaussian核支持向量机(SVM)作为语音识别网络,对SVM多类分类问题采用"一对一"分类算法,实现了一个汉语孤立词非特定人中等词汇量的抗噪语音识别系统。通过实验,分析了Gaussian核参数和误差惩罚参数C对SVM推广能力的影响。实验结果表明,当工作在不同信噪比情况下,使用最优参数的Gaussion核SVM的识别率比使用RBF神经网络有较大的提高,训练时间能大为缩减,鲁棒性也较好。 展开更多
关键词 支持向量机 gaussian 多类分类算法 特征提取 语音识别
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基于GPR模型的多保真气动力建模方法
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作者 罗希 黄俊 +1 位作者 唐磊 王庆凤 《空气动力学学报》 北大核心 2026年第3期22-34,共13页
通过整合不同保真度的数据,多保真气动力建模能够有效提升飞行器气动特性分析的计算效率和预测精度。为了更好处理高低保真数据之间同时存在的线性和非线性的混合复杂相关性,本文在非线性自回归高斯过程(nonlinear autoregressive Gauss... 通过整合不同保真度的数据,多保真气动力建模能够有效提升飞行器气动特性分析的计算效率和预测精度。为了更好处理高低保真数据之间同时存在的线性和非线性的混合复杂相关性,本文在非线性自回归高斯过程(nonlinear autoregressive Gaussian process,NARGP)模型的基础上,提出了一种新的多保真高斯过程回归模型(multi-fidelity Gaussian process regressive,MFGPR)。该模型通过结合线性核函数和非线性核函数,扩展了NARGP的能力,能够同时处理多保真数据中复杂的非线性关系和线性依赖性。为验证MFGPR的有效性,本文选取两类经典解析函数进行数值测试,并与Cokriging、NARGP和MFDNN三种传统多保真方法进行了对比分析。结果表明,在处理线性相关关系时,MFGPR的预测性能与CoKriging基本一致;而在非线性相关关系建模中,MFGPR相较于其他三种方法表现出更高的预测精度,同时在建模效率方面更具优势。进一步地,本文将MFGPR应用于ONERA M6机翼的压力分布预测和NACA2414翼型的阻力系数预测问题上,验证了其在气动力建模中的应用潜力和优越性能。 展开更多
关键词 多保真气动力建模 气动特性 高斯过程回归 线性核函数 建模效率
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SPI阈值智能优化算法
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作者 韩玉信 陈金锤 +2 位作者 罗海波 任磊 孙磊 《电子工艺技术》 2026年第1期54-58,共5页
随着电子产品微型化、高密度集成化的发展趋势,印制电路板(PCB)设计复杂度持续提升,对SMT锡膏印刷的工艺要求也日趋严苛。当前产线普遍依赖焊膏检测设备(Solder Paste Inspection,SPI)来拦截和管控印刷缺陷,然而,SPI阈值参数的确定主要... 随着电子产品微型化、高密度集成化的发展趋势,印制电路板(PCB)设计复杂度持续提升,对SMT锡膏印刷的工艺要求也日趋严苛。当前产线普遍依赖焊膏检测设备(Solder Paste Inspection,SPI)来拦截和管控印刷缺陷,然而,SPI阈值参数的确定主要依赖于工程经验,缺乏基于数据的科学分析,导致相对于最终加工结果的“漏检”或“误报”。鉴于此,提出一种基于工业大数据分析的SPI阈值智能设定方法,旨在优化锡膏印刷质量管控体系。 展开更多
关键词 印刷质量控制 SPI阈值 高斯核密度估计 遗传算法
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A Kernel-Based Nonlinear Representor with Application to Eigenface Classification 被引量:7
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作者 张晶 刘本永 谭浩 《Journal of Electronic Science and Technology of China》 2004年第2期19-22,共4页
This paper presents a classifier named kernel-based nonlinear representor (KNR) for optimal representation of pattern features. Adopting the Gaussian kernel, with the kernel width adaptively estimated by a simple tech... This paper presents a classifier named kernel-based nonlinear representor (KNR) for optimal representation of pattern features. Adopting the Gaussian kernel, with the kernel width adaptively estimated by a simple technique, it is applied to eigenface classification. Experimental results on the ORL face database show that it improves performance by around 6 points, in classification rate, over the Euclidean distance classifier. 展开更多
关键词 kernel based nonlinear representor face recognition EIGENFACES gaussian kernel euclidean distance classifier
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基于多尺度空间注意力机制与高斯核函数软标注的华山松大小蠹受害木遥感识别方法
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作者 黄光体 林浩然 +4 位作者 佃袁勇 韩泽民 彭寿连 刘晓阳 肖箫 《湖北农业科学》 2026年第1期159-165,185,共8页
针对传统树冠边界标注耗时费力,且现有深度学习模型在复杂森林环境中易因下采样丢失空间细节而导致检测精度下降的问题,提出一种融合多尺度空间注意力机制卷积网络(MSSCN)与高斯核函数软标注的单木定位方法。以神农架林区2000、2200、24... 针对传统树冠边界标注耗时费力,且现有深度学习模型在复杂森林环境中易因下采样丢失空间细节而导致检测精度下降的问题,提出一种融合多尺度空间注意力机制卷积网络(MSSCN)与高斯核函数软标注的单木定位方法。以神农架林区2000、2200、2400 m 3个海拔梯度的高分辨率航空遥感影像为数据源,仅标注华山松大小蠹(Dendroctonus armandi)受害木树冠中心点,并采用二维高斯核函数置信图生成标签和制作训练数据集,将区域分割任务转化为单木定位问题。通过调整多尺度特征卷积模块的位置,构建MSSCN1模型、MSSCN2模型、MSSCN3模型,并与U-Net模型、FCN模型和DeepLabV3+模型进行对比。结果表明,高斯核函数软标注方法降低了人工标注成本,同时支持受害木的精确定位。MSSCN3模型在训练100 Epoch时即达到最优性能,测试区精确率、召回率和F1得分的平均值分别为91.97%、93.68%和0.93,优于其他对比模型。MSSCN3模型在神农架林区高海拔区域整体表现出更优的检测性能,且在高暴发密度区的检测精度普遍高于低暴发密度区,然而,在海拔2400 m的高暴发密度区,模型精度出现轻微下降,表明地形与生态因子可能对检测稳定性产生交互影响。MSSCN3模型能够准确识别神农架林区的华山松大小蠹受害木,为虫害防治提供了一种高效且鲁棒的技术路径。 展开更多
关键词 多尺度空间注意力机制 高斯核函数软标注 华山松大小蠹(Dendroctonus armandi) 受害木 遥感识别
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基于知识度量的模糊粗糙c-均值算法
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作者 李文焱 李丽红 王洪欣 《山东大学学报(理学版)》 北大核心 2026年第1期49-64,共16页
提出基于知识度量的模糊粗糙c-均值聚类(fuzzy rough c-means based on the knowledge measure,KFRCM)算法。传统聚类算法在处理具有模糊边界的数据时存在一定的局限性,表现为对初始聚类中心较为敏感且在高维空间中效率较低。为解决上... 提出基于知识度量的模糊粗糙c-均值聚类(fuzzy rough c-means based on the knowledge measure,KFRCM)算法。传统聚类算法在处理具有模糊边界的数据时存在一定的局限性,表现为对初始聚类中心较为敏感且在高维空间中效率较低。为解决上述问题,引入特征加权的知识度量,结合模糊隶属度函数与粗糙集近似算子,采用高斯核相似度以增强边界特性。实验采用14个数据集,实验结果表明,KFRCM算法的聚类准确性、稳定性和计算效率均优于6种主流聚类算法。该研究首次将知识度量与模糊粗糙聚类相结合,为开发更为可靠和适应性更强的聚类算法提供了新的思路和算法。 展开更多
关键词 模糊粗糙集 知识度量 聚类分析 高斯核函数 上下近似集
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