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Neural-Network-Based Adaptive Finite-Time Control for a Two-Degree-of-Freedom Helicopter System With an Event-Triggering Mechanism 被引量:1
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作者 Zhijia Zhao Jian Zhang +2 位作者 Shouyan Chen Wei He Keum-Shik Hong 《IEEE/CAA Journal of Automatica Sinica》 SCIE EI CSCD 2023年第8期1754-1765,共12页
Helicopter systems present numerous benefits over fixed-wing aircraft in several fields of application.Developing control schemes for improving the tracking accuracy of such systems is crucial.This paper proposes a ne... Helicopter systems present numerous benefits over fixed-wing aircraft in several fields of application.Developing control schemes for improving the tracking accuracy of such systems is crucial.This paper proposes a neural-network(NN)-based adaptive finite-time control for a two-degree-of-freedom helicopter system.In particular,a radial basis function NN is adopted to solve uncertainty in the helicopter system.Furthermore,an event-triggering mechanism(ETM)with a switching threshold is proposed to alleviate the communication burden on the system.By proposing an adaptive parameter,a bounded estimation,and a smooth function approach,the effect of network measurement errors is effectively compensated for while simultaneously avoiding the Zeno phenomenon.Additionally,the developed adaptive finite-time control technique based on an NN guarantees finitetime convergence of the tracking error,thus enhancing the control accuracy of the system.In addition,the Lyapunov direct method demonstrates that the closed-loop system is semiglobally finite-time stable.Finally,simulation and experimental results show the effectiveness of the control strategy. 展开更多
关键词 Adaptive neural-network control event-triggering mechanism(ETM) finite time two-degree-of-freedom helicopter
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A special hierarchical fuzzy neural-networks based reinforcement learning for multi-variables system
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作者 张文志 吕恬生 《Journal of Harbin Institute of Technology(New Series)》 EI CAS 2005年第6期661-666,共6页
Proposes a reinforcement learning scheme based on a special Hierarchical Fuzzy Neural-Networks (HFNN)for solving complicated learning tasks in a continuous multi-variables environment. The output of the previous layer... Proposes a reinforcement learning scheme based on a special Hierarchical Fuzzy Neural-Networks (HFNN)for solving complicated learning tasks in a continuous multi-variables environment. The output of the previous layer in the HFNN is no longer used as if-part of the next layer, but used only in then-part. Thus it can deal with the difficulty when the output of the previous layer is meaningless or its meaning is uncertain. The proposed HFNN has a minimal number of fuzzy rules and can successfully solve the problem of rules combination explosion and decrease the quantity of computation and memory requirement. In the learning process, two HFNN with the same structure perform fuzzy action composition and evaluation function approximation simultaneously where the parameters of neural-networks are tuned and updated on line by using gradient descent algorithm. The reinforcement learning method is proved to be correct and feasible by simulation of a double inverted pendulum system. 展开更多
关键词 hierarchical fuzzy neural-networks reinforcement learning double inverted pendulum
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Applying Neural-Network-Based Machine Learning to Additive Manufacturing:Current Applications,Challenges,and Future Perspectives 被引量:27
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作者 Xinbo Qi Guofeng Chen +2 位作者 Yong Li Xuan Cheng Changpeng Li 《Engineering》 SCIE EI 2019年第4期721-729,共9页
Additive manufacturing(AM),also known as three-dimensional printing,is gaining increasing attention from academia and industry due to the unique advantages it has in comparison with traditional subtractive manufacturi... Additive manufacturing(AM),also known as three-dimensional printing,is gaining increasing attention from academia and industry due to the unique advantages it has in comparison with traditional subtractive manufacturing.However,AM processing parameters are difficult to tune,since they can exert a huge impact on the printed microstructure and on the performance of the subsequent products.It is a difficult task to build a process-structure-property-performance(PSPP)relationship for AM using traditional numerical and analytical models.Today,the machine learning(ML)method has been demonstrated to be a valid way to perform complex pattern recognition and regression analysis without an explicit need to construct and solve the underlying physical models.Among ML algorithms,the neural network(NN)is the most widely used model due to the large dataset that is currently available,strong computational power,and sophisticated algorithm architecture.This paper overviews the progress of applying the NN algorithm to several aspects of the AM whole chain,including model design,in situ monitoring,and quality evaluation.Current challenges in applying NNs to AM and potential solutions for these problems are then outlined.Finally,future trends are proposed in order to provide an overall discussion of this interdisciplinary area. 展开更多
关键词 ADDITIVE manufacturing 3D PRINTING NEURAL network MACHINE learning Algorithm
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Backstepping sliding mode control for uncertain strict-feedback nonlinear systems using neural-network-based adaptive gain scheduling 被引量:15
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作者 YANG Yueneng YAN Ye 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2018年第3期580-586,共7页
A neural-network-based adaptive gain scheduling backstepping sliding mode control(NNAGS-BSMC) approach for a class of uncertain strict-feedback nonlinear system is proposed.First, the control problem of uncertain st... A neural-network-based adaptive gain scheduling backstepping sliding mode control(NNAGS-BSMC) approach for a class of uncertain strict-feedback nonlinear system is proposed.First, the control problem of uncertain strict-feedback nonlinear systems is formulated. Second, the detailed design of NNAGSBSMC is described. The sliding mode control(SMC) law is designed to track a referenced output via backstepping technique.To decrease chattering result from SMC, a radial basis function neural network(RBFNN) is employed to construct the NNAGSBSMC to facilitate adaptive gain scheduling, in which the gains are scheduled adaptively via neural network(NN), with sliding surface and its differential as NN inputs and the gains as NN outputs. Finally, the verification example is given to show the effectiveness and robustness of the proposed approach. Contrasting simulation results indicate that the NNAGS-BSMC decreases the chattering effectively and has better control performance against the BSMC. 展开更多
关键词 backstepping control sliding mode control(SMC) neural network(NN) strict-feedback system chattering decrease
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Establishing the knowledge repository of rapidly solidified aging Cu-Cr-Zr alloy on the artificial neural-network 被引量:3
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作者 SUJuanhua DONGQiming +3 位作者 LIUPing LIHejun KANGBuxi TIANBaohong 《Rare Metals》 SCIE EI CAS CSCD 2004年第2期171-175,共5页
The non-linear relationship between parameters of rapidly solidified agingprocesses and mechancal and electrical properties of Cu-Cr-Zr alloy is available by using asupervised artificial neural network (ANN). A knowle... The non-linear relationship between parameters of rapidly solidified agingprocesses and mechancal and electrical properties of Cu-Cr-Zr alloy is available by using asupervised artificial neural network (ANN). A knowledge repository of rapidly solidified agingprocesses is established via sufficient data learning by the network. The predicted values of theneural network are in accordance with the tested data. So an effective measure for foreseeing andcontrolling the properties of the processing is provided. 展开更多
关键词 Cu-Cr-Zr alloy knowledge repository artificial neural network rapidsolidifiation aging
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Neural-network adaptive controller for nonlinear systems and its application in pneumatic servo systems 被引量:2
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作者 Lu LU Fagui LIU Weixiang SHI 《控制理论与应用(英文版)》 EI 2008年第1期97-103,共7页
In this paper, a novel control law is presented, which uses neural-network techniques to approximate the affine class nonlinear system having unknown or uncertain dynamics and noise disturbances. It adopts an adaptive... In this paper, a novel control law is presented, which uses neural-network techniques to approximate the affine class nonlinear system having unknown or uncertain dynamics and noise disturbances. It adopts an adaptive control law to adjust the network parameters online and adds another control component according to H-infinity control theory to attenuate the disturbance. This control law is applied to the position tracking control of pneumatic servo systems. Simulation and experimental results show that the tracking precision and convergence speed is obviously superior to the results by using the basic BP-network controller and self-tuning adaptive controller. 展开更多
关键词 Nonlinear control CONVERGENCE Adaptive control H-infinity control Neural networks Pneumatic servo system
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Neural-Network-Based Terminal Sliding Mode Control for Frequency Stabilization of Renewable Power Systems 被引量:6
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作者 Dianwei Qian Guoliang Fan 《IEEE/CAA Journal of Automatica Sinica》 SCIE EI CSCD 2018年第3期706-717,共12页
This paper addresses a terminal sliding mode control(T-SMC) method for load frequency control(LFC) in renewable power systems with generation rate constraints(GRC).A two-area interconnected power system with wind turb... This paper addresses a terminal sliding mode control(T-SMC) method for load frequency control(LFC) in renewable power systems with generation rate constraints(GRC).A two-area interconnected power system with wind turbines is taken into account for simulation studies. The terminal sliding mode controllers are assigned in each area to achieve the LFC goal. The increasing complexity of the nonlinear power system aggravates the effects of system uncertainties. Radial basis function neural networks(RBF NNs) are designed to approximate the entire uncertainties. The terminal sliding mode controllers and the RBF NNs work in parallel to solve the LFC problem for the renewable power system. Some simulation results illustrate the feasibility and validity of the presented scheme. 展开更多
关键词 Generation rate constraint(GRC) load frequency control(LFC) radial basis function neural networks(RBF NNs) renewable power system terminal sliding mode control(T-SMC)
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Neural-Network Quantum State of Transverse-Field Ising Model 被引量:1
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作者 Han-Qing Shi Xiao-Yue Sun Ding-Fang Zeng 《Communications in Theoretical Physics》 SCIE CAS CSCD 2019年第11期1379-1387,共9页
Along the way initiated by Carleo and Troyer [G. Carleo and M. Troyer, Science 355(2017) 602], we construct the neural-network quantum state of transverse-field Ising model(TFIM) by an unsupervised machine learning me... Along the way initiated by Carleo and Troyer [G. Carleo and M. Troyer, Science 355(2017) 602], we construct the neural-network quantum state of transverse-field Ising model(TFIM) by an unsupervised machine learning method. Such a wave function is a map from the spin-configuration space to the complex number field determined by an array of network parameters. To get the ground state of the system, values of the network parameters are calculated by a Stochastic Reconfiguration(SR) method. We provide for this SR method an understanding from action principle and information geometry aspects. With this quantum state, we calculate key observables of the system, the energy,correlation function, correlation length, magnetic moment, and susceptibility. As innovations, we provide a high e?ciency method and use it to calculate entanglement entropy(EE) of the system and get results consistent with previous work very well. 展开更多
关键词 neural network QUANTUM state Stochastic RECONFIGURATION method transverse field ISING model QUANTUM phase transition
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A modified alopex which guarantees stability for a class of closed-loop neural-network control systems
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作者 纪军红 麻亮 +1 位作者 强文义 傅佩琛 《Journal of Harbin Institute of Technology(New Series)》 EI CAS 1999年第4期64-67,共4页
Untanpreeda presented a training algorithm based on BP [1] , which guarantees the closed loop stability for a class of widely used Neural network control systems. However, it has some shortcomings, such as insuf... Untanpreeda presented a training algorithm based on BP [1] , which guarantees the closed loop stability for a class of widely used Neural network control systems. However, it has some shortcomings, such as insufficient stable condition, low efficiency and frequent convergence of parameters to a local minimum. A new training algorithm based on Alopex is proposed to ensure sufficient stability, and overcome some of the shortcomings. 展开更多
关键词 neural network control system STABILITY ALOPEX algorithm
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BP-Neural-Network-Based Tool Wear Monitoring by Using Wav elet Decomposition of the Power Spectrum 被引量:1
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作者 ZHENGJian-ming XIChang-qing +1 位作者 LIYan XIAOJi-ming 《International Journal of Plant Engineering and Management》 2004年第4期198-204,共7页
In a drilling process, the power spectrum of the drilling force is related tothe tool wear and is widely applied in the monitoring of tool wear. But the feature extraction andidentification of the power spectrum have ... In a drilling process, the power spectrum of the drilling force is related tothe tool wear and is widely applied in the monitoring of tool wear. But the feature extraction andidentification of the power spectrum have always been an unresolved difficult problem. This papersolves it through decomposition of the power spectrum in multilayers using wavelet transform andextraction of the low frequency decomposition coefficient as the envelope information of the powerspectrum. Intelligent identification of the tool wear status is achieved in the drilling processthrough fusing the wavelet decomposition coefficient of the power spectrum by using a BP (BackPropagation) neural network. The experimental results show that the features of the power spectrumcan be extracted efficiently through this method, and the trained neural networks show highidentification precision and the ability of extension. 展开更多
关键词 tool wear monitoring power spectrum wavelet transform BP neural network
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Multiple-model-and-neural-network-based nonlinear multivariable adaptive control
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作者 Yue FU Tianyou CHAI 《控制理论与应用(英文版)》 EI 2007年第2期121-126,共6页
A multivariable adaptive controller feasible for implementation on distributed computer systems (DCS) is presented for a class of uncertain nonlinear multivariable discrete time systems. The adaptive controller is c... A multivariable adaptive controller feasible for implementation on distributed computer systems (DCS) is presented for a class of uncertain nonlinear multivariable discrete time systems. The adaptive controller is composed of a linear adaptive controller, a neural network nonlinear adaptive controller and a switching mechanism. The linear controller can provide boundedness of the input and output signals, and the nonlinear controller can improve the performance of the system. The purpose of using the switching mechanism is to obtain the improved system performance and stability simultaneously. Theory analysis and simulation results are presented to show the effectiveness of the proposed method. 展开更多
关键词 Adaptive control Neural network Multiple models SWITCHING Stability
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AN IMAGE SEGMENTATION APPROACH BASED ON FUZZY-NEURAL-NETWORK HYBRID SYSTEM
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作者 Qian Yuntao Xie Weixin(Dept. of Computer Sci. & Eng., Northwestern Polytechnical University, Xi’an 710072) (Dept. of Electronic Eng., Xidian University, Xi’an 710071) 《Journal of Electronics(China)》 1997年第4期352-356,共5页
This paper presents a new solution to the image segmentation problem, which is based on fuzzy-neural-network hybrid system (FNNHS). This approach can use the experiential knowledge and the ability of neural networks w... This paper presents a new solution to the image segmentation problem, which is based on fuzzy-neural-network hybrid system (FNNHS). This approach can use the experiential knowledge and the ability of neural networks which learn knowledge from the examples, to obtain the well performed fuzzy rules. Furthermore this fuzzy inference system is completed by neural network structure which can work in parallel. The segmentation process consists of pre-segmentation based on region growing algorithm and region merging based on FNNHS. The experimental results on the complicated image manifest the utility of this method. 展开更多
关键词 COMPUTER VISION Image segmentation Fuzzy LOGIC NEURAL NETWORK
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Multiple Chaos Generator by Neural-Network-Differential-Equation for Intelligent Fish-Catching
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作者 Mamoru Minami Akira Yanou Yuya Ito Takashi Tomono 《通讯和计算机(中英文版)》 2013年第6期823-831,共9页
关键词 智能机器人 差分方程 神经网络 混沌轨迹 发生器 鱼类 适应能力 李雅普诺夫
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Bootstrapped Multi-Model Neural-Network Super-Ensembles for Wind Speed and Power Forecasting
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作者 Zhongxian Men Eugene Yee +2 位作者 Fue-Sang Lien Hua Ji Yongqian Liu 《Energy and Power Engineering》 2014年第11期340-348,共9页
The bootstrap resampling method is applied to an ensemble artificial neural network (ANN) approach (which combines machine learning with physical data obtained from a numerical weather prediction model) to provide a m... The bootstrap resampling method is applied to an ensemble artificial neural network (ANN) approach (which combines machine learning with physical data obtained from a numerical weather prediction model) to provide a multi-ANN model super-ensemble for application to multi-step-ahead forecasting of wind speed and of the associated power generated from a wind turbine. A statistical combination of the individual forecasts from the various ANNs of the super-ensemble is used to construct the best deterministic forecast, as well as the prediction uncertainty interval associated with this forecast. The bootstrapped neural-network methodology is validated using measured wind speed and power data acquired from a wind turbine in an operational wind farm located in northern China. 展开更多
关键词 Artificial Neural Network BOOTSTRAP RESAMPLING Numerical Weather Prediction Super-Ensemble Wind Speed Power Forecasting
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E-Learning Optimization Using Supervised Artificial Neural-Network
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作者 Mohamed Sayed Faris Baker 《Journal of Software Engineering and Applications》 2015年第1期26-34,共9页
Improving learning outcome has always been an important motivating factor in educational inquiry. In a blended learning environment where e-learning and traditional face to face class tutoring are combined, there are ... Improving learning outcome has always been an important motivating factor in educational inquiry. In a blended learning environment where e-learning and traditional face to face class tutoring are combined, there are opportunities to explore the role of technology in improving student’s grades. A student’s performance is impacted by many factors such as engagement, self-regulation, peer interaction, tutor’s experience and tutors’ time involvement with students. Furthermore, e-course design factors such as providing personalized learning are an urgent requirement for improved learning process. In this paper, an artificial neural network model is introduced as a type of supervised learning, meaning that the network is provided with example input parameters of learning and the desired optimized and correct output for that input. We also describe, by utilizing e-learning interactions and social analytics how to use artificial neural network to produce a converging mathematical model. Then students’ performance can be efficiently predicted and so the danger of failing in an enrolled e-course should be reduced. 展开更多
关键词 Artificial NEURAL NETWORKS E-LEARNING PREDICTION MODELS Supervised LEARNING
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Using Artificial Neural-Networks in Stochastic Differential Equations Based Software Reliability Growth Modeling
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作者 Sunil Kumar Khatri Prakriti Trivedi +1 位作者 Shiv Kant Nisha Dembla 《Journal of Software Engineering and Applications》 2011年第10期596-601,共6页
Due to high cost of fixing failures, safety concerns, and legal liabilities, organizations need to produce software that is highly reliable. Software reliability growth models have been developed by software developer... Due to high cost of fixing failures, safety concerns, and legal liabilities, organizations need to produce software that is highly reliable. Software reliability growth models have been developed by software developers in tracking and measuring the growth of reliability. Most of the Software Reliability Growth Models, which have been proposed, treat the event of software fault detection in the testing and operational phase as a counting process. Moreover, if the size of software system is large, the number of software faults detected during the testing phase becomes large, and the change of the number of faults which are detected and removed through debugging activities becomes sufficiently small compared with the initial fault content at the beginning of the testing phase. Therefore in such a situation, we can model the software fault detection process as a stochastic process with a continuous state space. Recently, Artificial Neural Networks (ANN) have been applied in software reliability growth prediction. In this paper, we propose an ANN based software reliability growth model based on Ito type of stochastic differential equation. The model has been validated, evaluated and compared with other existing NHPP model by applying it on actual failure/fault removal data sets cited from real software development projects. The proposed model integrated with the concept of stochastic differential equation performs comparatively better than the existing NHPP based model. 展开更多
关键词 Software Reliability Growth Model Artificial NEURAL Network STOCHASTIC DIFFERENTIAL EQUATION (SDE) STOCHASTIC Process
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基于改进物理信息神经网络的轴流泵流场重构方法研究
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作者 刘康 刘兴宁 +4 位作者 孙勇 刘良 贾贺 曾涛 张耀飞 《人民黄河》 北大核心 2026年第3期157-162,共6页
轴流泵流场信息是其运行稳定性分析和结构优化设计的依据,受测量技术限制在运行过程中难以获取完整流场信息。为此,提出一种改进物理信息神经网络(PINN)模型,用于稀疏数据情况下重构流场。首先通过分析流场物理约束、边界约束及流场约束... 轴流泵流场信息是其运行稳定性分析和结构优化设计的依据,受测量技术限制在运行过程中难以获取完整流场信息。为此,提出一种改进物理信息神经网络(PINN)模型,用于稀疏数据情况下重构流场。首先通过分析流场物理约束、边界约束及流场约束,描述流场问题;然后引入三维卷积神经网络(3D CNN)求解流场问题;最后采用有限体积法(FVM)进行数值模拟,获取稳态流速和压力分布信息,基于网格化预处理后采样1%的流场数据进行模型训练。以某简化轴流泵管道作为测试对象,验证所提出方法。结果表明:改进PINN模型重构流场与FVM数值模拟流场对比,压力基本吻合,流速变化趋势基本相同,仅在叶轮及导叶流场区域存在细微偏差,说明所提出的方法能够在稀缺数据和复杂边界条件下准确预测三维流场。 展开更多
关键词 改进物理信息神经网络 三维卷积神经网络 流场重构 轴流泵 有限体积法
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同质性增强的异构图提示学习方法
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作者 魏楚元 刘舜尧 +4 位作者 卓胜达 张蕾 王昌栋 黄书强 刘杰 《小型微型计算机系统》 北大核心 2026年第1期97-105,共9页
图神经网络在多个不同领域展现出巨大潜力,然而传统的图神经网络方法通常依赖大量标注数据进行训练,而在实际应用中,标注大量数据往往代价高昂且费时费力.近年来,提示学习作为一种新兴的预训练模型范式,在Few-shot、Zero-shot等低资源... 图神经网络在多个不同领域展现出巨大潜力,然而传统的图神经网络方法通常依赖大量标注数据进行训练,而在实际应用中,标注大量数据往往代价高昂且费时费力.近年来,提示学习作为一种新兴的预训练模型范式,在Few-shot、Zero-shot等低资源场景中表现出色.图提示学习是一种新颖的图预训练和提示框架,能够通过少量标注数据实现图数据的多任务处理,有效弥合预训练任务与下游任务之间的差距.然而,现有图提示学习方法在处理异构图时,忽视了图数据复杂的内在结构,特别是未能充分挖掘异构图中蕴含的同质性特征.为了解决该问题,本文提出了一种同质性增强的异构图提示学习方法,旨在提升图神经网络在异构图中的表现.具体而言,设计了基于元路径的同质子图提取方法,并结合同质性软聚类技术,有效捕捉节点间的节点相似性关系,从而优化图提示效果.实验结果表明,所提出的方法在多个基准数据集上优于现有技术,表现出更强的性能和效果. 展开更多
关键词 图神经网络 图提示学习 异构图 同质性 元路径
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基于多算法优化BP神经网络的机床主轴振动监控方法
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作者 孙文 郭磊磊 +2 位作者 曾威 席文奎 魏航信 《工具技术》 北大核心 2026年第1期102-109,共8页
针对机床主轴在切削过程及运行故障时产生较大振动,会导致加工产品质量下降和机床切削精度降低的问题,提出基于粒子群、遗传、模拟退火算法优化的BP神经网络机床主轴振动监控模型。阐述BP神经网络和3种优化算法模型的理论公式。基于解... 针对机床主轴在切削过程及运行故障时产生较大振动,会导致加工产品质量下降和机床切削精度降低的问题,提出基于粒子群、遗传、模拟退火算法优化的BP神经网络机床主轴振动监控模型。阐述BP神经网络和3种优化算法模型的理论公式。基于解算三轴振动传感器方法,将三轴振动传感器部署在机床主轴上,完成不同工况下机床主轴振动信号的采集。利用采集到的数据对BP神经网络进行训练和测试,并将统计学方法融入BP神经网络测试函数,提升监控模型的输出精度。结果表明,优化的监控模型训练初始误差降低40%~50%,训练时误差收敛速度高于未优化模型,其中粒子群算法能更好地提高BP神经网络的误差收敛速度。该研究结果为机床主轴振动监控和切削过程优化提供理论参考。 展开更多
关键词 机床主轴 BP神经网络 振动 传感器 监控
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移动机器人轨迹跟踪的参数估计与原对偶神经网络预测控制
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作者 张浪文 王中旭 +1 位作者 魏海翔 谢巍 《控制理论与应用》 北大核心 2026年第2期278-286,共9页
本文针对轮式移动机器人的不确定参数估计与轨迹跟踪问题,研究了基于卷积神经网络(CNN)的移动机器人不确定模型参数估计方法,提出了移动机器人的原对偶神经网络(PDNN)模型预测控制(MPC)轨迹跟踪控制算法.对于轮式移动机器人而言,轮胎侧... 本文针对轮式移动机器人的不确定参数估计与轨迹跟踪问题,研究了基于卷积神经网络(CNN)的移动机器人不确定模型参数估计方法,提出了移动机器人的原对偶神经网络(PDNN)模型预测控制(MPC)轨迹跟踪控制算法.对于轮式移动机器人而言,轮胎侧偏刚度受到负载扰动、未建模动态和路况变化等不确定因素影响,在实际行驶过程中难以实时测量.论文研究侧偏刚度的CNN回归模型,以估计机器人运行过程中的不确定性.考虑前轮偏角与加速度等状态的约束条件,研究基于CNN参数估计的移动机器人预测控制设计方法,提出基于PDNN的移动机器人预测控制问题求解算法,并证明了所提出基于CNN参数估计的PDNN-MPC算法稳定性.最后,为了验证控制器的有效性,对所提出的PDNN-MPC算法进行验证. 展开更多
关键词 轮式移动机器人 轨迹跟踪 模型预测控制 原对偶神经网络 卷积神经网络
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