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Research on runoff variations based on wavelet analysis and wavelet neural network model: A case study of the Heihe River drainage basin (1944-2005) 被引量:6
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作者 WANG Jun MENG Jijun 《Journal of Geographical Sciences》 SCIE CSCD 2007年第3期327-338,共12页
The Heihe River drainage basin is one of the endangered ecological regions of China. The shortage of water resources is the bottleneck, which constrains the sustainable development of the region. Many scholars in Chin... The Heihe River drainage basin is one of the endangered ecological regions of China. The shortage of water resources is the bottleneck, which constrains the sustainable development of the region. Many scholars in China have done researches concerning this problem. Based on previous researches, this paper analyzed characteristics, tendencies, and causes of annual runoff variations in the Yingluo Gorge (1944-2005) and the Zhengyi Gorge (1954-2005), which are the boundaries of the upper reaches, the middle reaches, and the lower reaches of the Heihe River drainage basin, by wavelet analysis, wavelet neural network model, and GIS spatial analysis. The results show that: (1) annual runoff variations of the Yingluo Gorge have principal periods of 7 years and 25 years, and its increasing rate is 1.04 m^3/s.10y; (2) annual runoff variations of the Zhengyi Gorge have principal periods of 6 years and 27 years, and its decreasing rate is 2.25 m^3/s.10y; (3) prediction results show that: during 2006-2015, annual runoff variations of the Yingluo and Zhengyi gorges have ascending tendencies, and the increasing rates are respectively 2.04 m^3/s.10y and 1.61 m^3/s.10y; (4) the increase of annual runoff in the Yingluo Gorge has causal relationship with increased temperature and precipitation in the upper reaches, and the decrease of annual runoff in the Zhengyi Gorge in the past decades was mainly caused by the increased human consumption of water resources in the middle researches. The study results will provide scientific basis for making rational use and allocation schemes of water resources in the Heihe River drainage basin. 展开更多
关键词 annual runoff variations wavelet analysis wavelet neural network model GIS spatial analysis HeiheRiver drainage basin
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Wavelet Neural Network Based on NARMA-L2 Model for Prediction of Thermal Characteristics in a Feed System 被引量:9
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作者 JIN Chao WU Bo HU Youmin 《Chinese Journal of Mechanical Engineering》 SCIE EI CAS CSCD 2011年第1期33-41,共9页
Research of thermal characteristics has been a key issue in the development of high-speed feed system. Most of the work carried out thus far is based on the principle of directly mapping the thermal error against the ... Research of thermal characteristics has been a key issue in the development of high-speed feed system. Most of the work carried out thus far is based on the principle of directly mapping the thermal error against the temperature of critical machine elements irrespective of the operating conditions. But recent researches show that different sets of operating parameters generated significantly different error values even though the temperature of the machine elements generated was similar. As such, it is important to develop a generic thermal error model which is capable of evaluating the positioning error induced by different operating parameters. This paper ultimately aims at the development of a comprehensive prediction model that can predict the thermal characteristics under different operating conditions (feeding speed, load and preload of ballscrew) in a feed system. A novel wavelet neural network based on feedback linearization autoregressive moving averaging (NARMA-L2) model is introduced to predict the temperature rise of sensitive points and thermal positioning errors considering the different operating conditions as the model inputs. Particle swarm optimization(PSO) algorithm is brought in as the training method. According to ISO230-2 Positioning Accuracy Measurement and ISO230-3 Thermal Effect Evaluation standards, experiments under different operating conditions were carried out on a self-made quasi high-speed feed system experimental bench HUST-FS-001 by using Pt100 as temperature sensor, and the positioning errors were measured by Heidenhain linear grating scale. The experiment results show that the recommended method can be used to predict temperature rise of sensitive points and thermal positioning errors with good accuracy. The work described in this paper lays a solid foundation of thermal error prediction and compensation in a feed system based on varying operating conditions and machine tool characteristics. 展开更多
关键词 wavelet neural network NARMA-L2 model particle swarm optimization thermal positioning error feed system
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Network traffic prediction by a wavelet-based combined model 被引量:1
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作者 孙韩林 金跃辉 +1 位作者 崔毅东 程时端 《Chinese Physics B》 SCIE EI CAS CSCD 2009年第11期4760-4768,共9页
Network traffic prediction models can be grouped into two types, single models and combined ones. Combined models integrate several single models and thus can improve prediction accuracy. Based on wavelet transform, g... Network traffic prediction models can be grouped into two types, single models and combined ones. Combined models integrate several single models and thus can improve prediction accuracy. Based on wavelet transform, grey theory, and chaos theory, this paper proposes a novel combined model, wavelet-grey-chaos (WGC), for network traffic prediction. In the WGC model, we develop a time series decomposition method without the boundary problem by modifying the standard à trous algorithm, decompose the network traffic into two parts, the residual part and the burst part to alleviate the accumulated error problem, and employ the grey model GM(1,1) and chaos model to predict the residual part and the burst part respectively. Simulation results on real network traffic show that the WGC model does improve prediction accuracy. 展开更多
关键词 network traffic prediction wavelet transform grey model chaos model
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A Wavelet Neural Network Based Non-linear Model Predictive Controller for a Multi-variable Coupled Tank System 被引量:4
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作者 Kayode Owa Sanjay Sharma Robert Sutton 《International Journal of Automation and computing》 EI CSCD 2015年第2期156-170,共15页
In this paper, a novel real time non-linear model predictive controller(NMPC) for a multi-variable coupled tank system(CTS) is designed. CTSs are highly non-linear and can be found in many industrial process applicati... In this paper, a novel real time non-linear model predictive controller(NMPC) for a multi-variable coupled tank system(CTS) is designed. CTSs are highly non-linear and can be found in many industrial process applications. The involvement of multi-input multi-output(MIMO) system makes the design of an effective controller a challenging task. MIMO systems have inherent couplings,interactions in-between the process input-output variables and generally have an complex internal structure. The aim of this paper is to design, simulate, and implement a novel real time constrained NMPC for a multi-variable CTS with the aid of intelligent system techniques. There are two major formidable challenges hindering the success of the implementation of a NMPC strategy in the MIMO case. The first is the difficulty of obtaining a good non-linear model by training a non-convex complex network to avoid being trapped in a local minimum solution. The second is the online real time optimisation(RTO) of the manipulated variable at every sampling time.A novel wavelet neural network(WNN) with high predicting precision and time-frequency localisation characteristic was selected for an MIMO model and a fast stochastic wavelet gradient algorithm was used for initial training of the network. Furthermore, a genetic algorithm was used to obtain the optimised parameters of the WNN as well as the RTO during the NMPC strategy. The proposed strategy performed well in both simulation and real time on an MIMO CTS. The results indicated that WNN provided better trajectory regulation with less mean-squared-error and average control energy compared to an artificial neural network. It is also shown that the WNN is more robust during abnormal operating conditions. 展开更多
关键词 wavelet neural network(WNN) non-linear model predictive control(NMPC) real time practical implementation multi-input multi-outpu
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Prediction of Al(OH)_3 fluidized roasting temperature based on wavelet neural network 被引量:1
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作者 李劼 刘代飞 +2 位作者 戴学儒 邹忠 丁凤其 《中国有色金属学会会刊:英文版》 EI CSCD 2007年第5期1052-1056,共5页
The recycle fluidization roasting in alumina production was studied and a temperature forecast model was established based on wavelet neural network that had a momentum item and an adjustable learning rate. By analyzi... The recycle fluidization roasting in alumina production was studied and a temperature forecast model was established based on wavelet neural network that had a momentum item and an adjustable learning rate. By analyzing the roasting process, coal gas flux, aluminium hydroxide feeding and oxygen content were ascertained as the main parameters for the forecast model. The order and delay time of each parameter in the model were deduced by F test method. With 400 groups of sample data (sampled with the period of 1.5 min) for its training, a wavelet neural network model was acquired that had a structure of {7 211}, i.e., seven nodes in the input layer, twenty-one nodes in the hidden layer and one node in the output layer. Testing on the prediction accuracy of the model shows that as the absolute error ±5.0 ℃ is adopted, the single-step prediction accuracy can achieve 90% and within 6 steps the multi-step forecast result of model for temperature is receivable. 展开更多
关键词 子波 神经网络 氢氧化铝 硫化煅烧
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Self-Constructing Neural Network Modeling and Control of an AGV
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作者 Jafar Keighobadi Khadijeh Alioghli Fazeli Mohammad Sadeghi Shahidi 《Positioning》 2013年第2期160-168,共9页
Tracking precision of pre-planned trajectories is essential for an auto-guided vehicle (AGV). The purpose of this paper is to design a self-constructing wavelet neural network (SCWNN) method for dynamical modeling and... Tracking precision of pre-planned trajectories is essential for an auto-guided vehicle (AGV). The purpose of this paper is to design a self-constructing wavelet neural network (SCWNN) method for dynamical modeling and control of a 2-DOF AGV. In control systems of AGVs, kinematical models have been preferred in recent research documents. However, in this paper, to enhance the trajectory tracking performance through including the AGV’s inertial effects in the control system, a learned dynamical model is replaced to the kinematical kind. As the base of a control system, the mathematical models are not preferred due to modeling uncertainties and exogenous inputs. Therefore, adaptive dynamic and control models of AGV are proposed using a four-layer SCWNN system comprising of the input, wavelet, product, and output layers. By use of the SCWNN, a robust controller against uncertainties is developed, which yields the perfect convergence of AGV to reference trajectories. Owing to the adaptive structure, the number of nodes in the layers is adjusted in online and thus the computational burden of the neural network methods is decreased. Using software simulations, the tracking performance of the proposed control system is assessed. 展开更多
关键词 wavelet NEURAL networks Self-Constructing DYNAMICAL modeling TRAJECTORY TRACKING
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融合视觉Mamba与自适应多尺度损失的医学图像分割 被引量:1
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作者 刘建明 曹圣浩 张志鹏 《中国图象图形学报》 北大核心 2026年第1期335-348,共14页
目的在医学图像分割领域,传统基于卷积神经网络(convolutional neural network,CNN)的模型在捕捉长距离依赖信息方面存在固有局限,而基于视觉Transformer(vision Transformer,ViT)的模型其自注意力机制的计算复杂度与图像尺寸呈平方关系... 目的在医学图像分割领域,传统基于卷积神经网络(convolutional neural network,CNN)的模型在捕捉长距离依赖信息方面存在固有局限,而基于视觉Transformer(vision Transformer,ViT)的模型其自注意力机制的计算复杂度与图像尺寸呈平方关系,在资源有限的现实环境中难以部署。为了解决这些问题,提出一种融合视觉Mamba和自适应多尺度损失的医学图像分割方法VMAML-UNet(medical image segmentation with vision Mamba and adaptive multi-scale loss)。方法VMAML-UNet采用编码器—解码器架构。在编码阶段,设计了融合小波卷积的视觉Mamba块,以线性复杂度提取病变区域的精确特征并扩大感受野,并通过块合并进行下采样。解码阶段同样引入融合小波卷积的视觉Mamba块并利用块扩展进行上采样。跳跃连接中,提出小波卷积注意力聚合模块,用于提取并融合不同尺度下的图像特征。此外,设计了柯尔莫哥洛夫—阿诺德网络(Kolmogorov-Arnold network,KAN)调控多尺度加权损失,动态调控各层级损失权重。结果在BUSI(breast ultrasound images dataset)、GlaS(gland segmenta⁃tion in histology images challenge dataset)和CVC(CVC-ClinicDB dataset)3个异质性显著的医学图像数据集上的实验结果表明,与主流的VM-UNet(vision Mamba UNet)等采用Mamba的医学图像分割方法相比取得显著的性能提升。在BUSI数据集上,交并比(intersection over union,IoU)和F1分数分别提升2.72%和2.02%;在GlaS数据集上,IoU和F1分数分别提升3.38%和1.89%;在CVC数据集上,IoU和F1分数分别提升2.51%和1.42%。结论提出的VMAML-UNet采用基于视觉Mamba的线性复杂度的长距离依赖建模与基于KAN的动态损失优化机制,显著减少了计算成本,同时提升了模型对复杂医学图像的分割精度。该模型在3个数据集上的优异表现证明了其在不同医学图像场景下的广泛适用性和高效性。 展开更多
关键词 状态空间模型(SSM) 柯尔莫哥洛夫-阿诺德网络(KAN) 小波卷积 多尺度加权损失 连续流
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A Hybrid Time-delay Prediction Method for Networked Control System 被引量:6
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作者 Zhong-Da Tian Xian-Wen Gao Kun Li 《International Journal of Automation and computing》 EI CSCD 2014年第1期19-24,共6页
This paper presents an Ethernet based hybrid method for predicting random time-delay in the networked control system.First,db3 wavelet is used to decompose and reconstruct time-delay sequence,and the approximation com... This paper presents an Ethernet based hybrid method for predicting random time-delay in the networked control system.First,db3 wavelet is used to decompose and reconstruct time-delay sequence,and the approximation component and detail components of time-delay sequences are fgured out.Next,one step prediction of time-delay is obtained through echo state network(ESN)model and auto-regressive integrated moving average model(ARIMA)according to the diferent characteristics of approximate component and detail components.Then,the fnal predictive value of time-delay is obtained by summation.Meanwhile,the parameters of echo state network is optimized by genetic algorithm.The simulation results indicate that higher accuracy can be achieved through this prediction method. 展开更多
关键词 networked control system wavelet transform auto-regressive integrated moving average model echo state network genetic algorithm time-delay prediction
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基于自回归积分滑动平均模型的无线传感网络通信传输信号延迟消除方法 被引量:2
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作者 崔蕾 王同 《传感技术学报》 北大核心 2025年第3期543-549,共7页
为了解决受环境影响无线传感网络通信传输信号的延迟问题,提出了一种传输信号延迟消除的方法。将自回归积分滑动平均模型(ARIMA)和小波神经网络(WNN)相结合,进行通信传输信号延迟的组合预测。根据延迟预测结果设计传输信号延迟消除流程... 为了解决受环境影响无线传感网络通信传输信号的延迟问题,提出了一种传输信号延迟消除的方法。将自回归积分滑动平均模型(ARIMA)和小波神经网络(WNN)相结合,进行通信传输信号延迟的组合预测。根据延迟预测结果设计传输信号延迟消除流程的步骤和约束条件,并以此构建无线传感网络通信传输的优化目标函数,引入免疫克隆蛙跳算法对目标函数进行求解,获取最优的传输方案。仿真分析表明,所提方法的延迟预测误差和端到端延迟误差低于0.01 s,能量消耗最大值为6.4 W,平均丢包率最大值为0.286%。上述结果证明了所提方法可以有效准确预测和消除无线传感网络通信传输信号延迟。 展开更多
关键词 无线传感网络 传输信号 延迟消除 自回归积分滑动平均模型 小波神经网络
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变换域高斯向量嵌入融合深度特征人脸识别
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作者 李朝荣 杨鹏 凌旭东 《计算机应用与软件》 北大核心 2025年第11期198-206,257,共10页
针对现有模型在识别细节信息方面的不足,提出Gabor小波变换域高斯模型向量嵌入(GGVE)人脸识别方法。该方法在Gabor变换域建立多变量高斯模型,用对数欧氏向量嵌入方法将高斯模型转换到线性空间,并利用欧氏距离进行快速计算模型的相似度... 针对现有模型在识别细节信息方面的不足,提出Gabor小波变换域高斯模型向量嵌入(GGVE)人脸识别方法。该方法在Gabor变换域建立多变量高斯模型,用对数欧氏向量嵌入方法将高斯模型转换到线性空间,并利用欧氏距离进行快速计算模型的相似度。与现有的手工描述子相比,GGVE能够在复杂环境下更有效地提取出稳健的面部细节特征。为了弥补深度网络信息丢失问题,提出多特征输出的ResNet50网络模型(ResNet50MF),并结合GGVE特征进行人脸识别。实验表明,将GGVE特征和ResNet50MF高层特征进行融合能够显著提升识别准确率,可以应用于复杂环境下的人脸识别。 展开更多
关键词 人脸细节特征 高斯嵌入 GABOR小波 深度网络模型
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The Recognition of Fault Type of Transmission Line Based on Wavelet Transmission and FNN
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作者 Li-Zhang Shun Ling-Chen Qiao Zhi-Wang Shun-Lv Yang He-Liu 《通讯和计算机(中英文版)》 2013年第5期724-729,共6页
关键词 模糊神经网络 故障类型 小波变换 识别率 输电线路 模糊推理模型 序电流分量 模糊集理论
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基于神经网络的热负荷预测模型研究 被引量:2
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作者 张庆环 韩天庆 +1 位作者 曹琦 赵亮 《热科学与技术》 北大核心 2025年第3期261-267,共7页
随着计算机技术的发展,大多数热电公司已经建立了平稳运行的网络系统,这些网络系统在运营管理工作中起到了关键作用。对于网络系统中形成的大量数据,怎样合理分析数据来更好地为企业服务已成为广受关注的问题。为了解决上述问题,本文基... 随着计算机技术的发展,大多数热电公司已经建立了平稳运行的网络系统,这些网络系统在运营管理工作中起到了关键作用。对于网络系统中形成的大量数据,怎样合理分析数据来更好地为企业服务已成为广受关注的问题。为了解决上述问题,本文基于大数据分析热用户的用热特点,并以某热电厂的大量历史数据为例,建立BP神经网络预测模型,预测热电厂蒸汽负荷。针对传统BP神经网络模型容易陷入局部最优解的问题,将小波理论与传统BP神经网络模型相结合,构建小波神经网络模型,提高对热电厂蒸汽负荷预测的准确度。 展开更多
关键词 大数据分析 用热特性 BP神经网络模型 小波神经网络模型
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用于阴影去除的小波非均匀扩散模型
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作者 黄颖 程彬 +1 位作者 房少杰 刘歆 《中国图象图形学报》 北大核心 2025年第1期66-82,共17页
目的现有的阴影去除方法通常依赖于像素级重建,旨在学习阴影图像和无阴影图像之间的确定性映射关系。然而阴影去除关注阴影区域的局部恢复,容易导致在去除阴影的同时破坏非阴影区域。此外,现有的大多数扩散模型在恢复图像时存在耗时过... 目的现有的阴影去除方法通常依赖于像素级重建,旨在学习阴影图像和无阴影图像之间的确定性映射关系。然而阴影去除关注阴影区域的局部恢复,容易导致在去除阴影的同时破坏非阴影区域。此外,现有的大多数扩散模型在恢复图像时存在耗时过长和对分辨率敏感等问题。为此,提出了一种用于阴影去除的小波非均匀扩散模型。方法首先将图像通过小波分解为低频分量与高频分量,然后针对低频和高频分量分别设计扩散生成网络来重建无阴影图像的小波域分布,并分别恢复这些分量中的各种退化信息,如低频(颜色、亮度)和高频细节等。结果实验在3个阴影数据集上进行训练和测试,在SRD(shadow removal dataset)数据集中,与9种代表性方法进行比较,在非阴影区域和整幅图像上,峰值信噪比(peak signal-to-noise ratio,PSNR)、结构相似性(structural similarity index,SSIM)和均方根误差(root mean square error,RMSE)均取得最优或次优的结果;在ISTD+(augmented dataset with image shadow triplets)数据集中,与6种代表性方法进行比较,在非阴影区域上,性能取得了最佳,PSNR和RMSE分别提高了0.47 dB和0.1。除此之外,在SRD数据集上,ShadowDiffusion方法在生成不同分辨率图像时性能有明显差异,而本文方法性能基本保持稳定。此外,本文方法生成速度与其相比提高了约4倍。结论提出的方法能够加快扩散模型的采样速度,在去除阴影的同时,恢复出阴影区域缺失的颜色、亮度和丰富的细节等信息。 展开更多
关键词 阴影去除 扩散模型(DM) 小波变换 双分支网络 噪声调度表
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消除温度效应滞后影响的桥梁挠度异常监测方法 被引量:2
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作者 孙家正 郭东升 +2 位作者 杨东辉 伊廷华 张冠华 《应用基础与工程科学学报》 北大核心 2025年第1期40-49,共10页
温度作用下桥梁挠度呈现周期性变化,探究其时变特征在一定程度上能够反映支座、伸缩缝等主梁边界约束的服役性能.建立温度与挠度监测数据间的相关模型,是实现对桥梁挠度异常变化进行识别的重要手段.现有研究忽略了温度与挠度间的滞后效... 温度作用下桥梁挠度呈现周期性变化,探究其时变特征在一定程度上能够反映支座、伸缩缝等主梁边界约束的服役性能.建立温度与挠度监测数据间的相关模型,是实现对桥梁挠度异常变化进行识别的重要手段.现有研究忽略了温度与挠度间的滞后效应,导致建模精度较低,影响桥梁挠度异常的准确识别.鉴于此,提出了一种可自适应消除滞后效应影响的桥梁挠度异常监测方法.首先,基于小波分解方法实现了桥梁温致挠度的准确提取,并筛选了影响桥梁挠度变化的主要温度变量.其次,采用可通过重置门与更新门自适应考虑变量间滞后效应的门控循环单元(Gated Recurrent Unit,GRU)神经网络,建立消除滞后效应影响的温度-挠度相关模型,实现了对桥梁温致挠度的准确预测,并提出了可反映由主梁约束构件服役性能劣化引起挠度改变的异常识别指标.最后,通过实桥结构健康监测数据验证了该方法的有效性.研究结果表明,所提监测方法可有效识别温致挠度异常,为实现对桥梁约束构件性能劣化的在线监测诊断提供了依据. 展开更多
关键词 桥梁健康监测 桥梁挠度 主成分分析 门控循环单元(GRU)神经网络 相关性模型 小波分解
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重载货车常用制动工况下制动缸压力预测与拟合
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作者 王鼎 熊芯 马忠 《中国铁路》 北大核心 2025年第2期71-80,88,共11页
在重载列车纵向动力学系统中,制动系统的制动及缓解特性关键参数对车钩力仿真的影响至关重要。基于线路试验实测数据,建立小波神经网络模型,对制动缸升压时间进行预测;采用拟合的方法,获取整个制动缓解过程中各阶段的制动缸压力值;通过... 在重载列车纵向动力学系统中,制动系统的制动及缓解特性关键参数对车钩力仿真的影响至关重要。基于线路试验实测数据,建立小波神经网络模型,对制动缸升压时间进行预测;采用拟合的方法,获取整个制动缓解过程中各阶段的制动缸压力值;通过残差分析和检验,拟合模型的结果得以验证。通过给出的计算模型,可在已知主控机车列车管减压量以及任何1位制动缸压力值的条件下,对列车制动缓解过程中各个位置制动缸压力进行计算,为纵向动力学车钩力仿真提供参数基础。 展开更多
关键词 重载货车 常用制动 制动缸压力 小波神经网络模型 拟合残差分析
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基于近红外光谱的连续小波变换与卷积注意力模块建立秦艽的定性分析模型
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作者 周玉 李四海 +1 位作者 李坤鹏 王泽朋 《理化检验(化学分册)》 北大核心 2025年第4期436-442,共7页
针对近红外光谱的处理研究大多聚焦于对原始的一维光谱信号直接进行卷积特征抽取,为了更加全面地挖掘光谱数据中的信息,提高分类模型的建模效果,提出了连续小波变换与卷积注意力模块建立秦艽定性分析模型的方法。采用连续小波变换将一... 针对近红外光谱的处理研究大多聚焦于对原始的一维光谱信号直接进行卷积特征抽取,为了更加全面地挖掘光谱数据中的信息,提高分类模型的建模效果,提出了连续小波变换与卷积注意力模块建立秦艽定性分析模型的方法。采用连续小波变换将一维的信号转换为二维图像表现形式,以得到的小波时频图作为光谱特征,建立具有注意力机制的秦艽近红外光谱的卷积神经网络定性分析模型Att-GoogleNet,并通过翻转、对比度增强以及加入高斯噪声来扩充数据集实现数据增强,提高模型的泛化能力。结果表明:对207个秦艽样品的产地进行分析,Att-GooogleNet模型的分类准确率为99.6%,准确率、精确率、召回率、特异度、F1分数均优于传统机器学习模型。 展开更多
关键词 近红外光谱 连续小波变换 卷积神经网络 注意力机制 模型 秦艽
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定制化小波基赋能的薄热障涂层太赫兹可解释测厚新方法
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作者 孙凤山 范孟豹 +1 位作者 曹丙花 叶波 《机械工程学报》 北大核心 2025年第24期12-27,共16页
薄热障涂层的陶瓷层厚度远小于太赫兹(Terahertz,THz)系统中心波长,导致THz信号严重混叠,难以准确提取飞行时间与折射率,使测厚误差增大。为此,提出小波基赋能的薄热障涂层THz可解释测厚新方法,创新设计定制化高斯小波解混叠层,自主构... 薄热障涂层的陶瓷层厚度远小于太赫兹(Terahertz,THz)系统中心波长,导致THz信号严重混叠,难以准确提取飞行时间与折射率,使测厚误差增大。为此,提出小波基赋能的薄热障涂层THz可解释测厚新方法,创新设计定制化高斯小波解混叠层,自主构建与反射峰特征相似的小波基,以消除信号混叠,使可解释网络结构能够准确提取测厚所需的飞行时间与折射率。首先,建立考虑热障涂层结构的THz信号解析模型,探索反射峰的形状特征,以此为模板,优选适用于解混叠的小波族。其次,提出定制化高斯小波解混叠层,自主构建出与前两峰高度相似的基函数,准确分离反射峰,并建立稀疏层筛选峰值关键信息,提升解析模型生成的仿真训练集与试验测试集一致性。然后,构建物理可解释测量模块分别从时、频域特征中提取飞行时间与折射率,将两者结果以除法方式连接,求解准确陶瓷层厚度。最后,制备热障涂层样品,开展THz试验,结果表明:构建的定制化高斯小波基与反射峰相关系数超过0.93,所提出方法与已有的六种现有测厚算法相比,其精度最高,最大测厚误差小于5μm,耗时为8.2 ms。 展开更多
关键词 热障涂层 太赫兹无损检测 定制小波基 可解释神经网络 解析模型
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基于WTT-iTransformer时序预测的容器群伸缩策略研究
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作者 陈奇超 叶楠 曹炳尧 《电子测量技术》 北大核心 2025年第12期88-98,共11页
Kubernetes默认的HPA策略因其特有的响应性机制而存在扩缩容滞后的局限。为了提高资源的响应性能和资源利用率,本文引入了基于时序资源负载预测的弹性伸缩策略,预测部分创新得提出了WTT-iTransformer模型对集群资源进行预测。已知iTrans... Kubernetes默认的HPA策略因其特有的响应性机制而存在扩缩容滞后的局限。为了提高资源的响应性能和资源利用率,本文引入了基于时序资源负载预测的弹性伸缩策略,预测部分创新得提出了WTT-iTransformer模型对集群资源进行预测。已知iTransformer不仅在长期序列预测表现优异,还可通过变量序列作为token嵌入获取了多变量间的关联性。本文通过增加了小波变换卷积层WTConv2d和多尺度时间卷积网络的WTT-iTransformer模型可以更精确地从时、频域两方面提取资源时间序列的长期特征与依赖关系,更符合容器使用特征的预测。基于该模型的负载变化预测,能够实现高、低流量发生的初期进行快速扩缩容,以解决反应滞后和资源利用率低的问题。实验结果表明,WTT-iTransformer在训练过程中表现出更好的稳定性和更低的训练误差,能够较为准确地预测集群负载的变化趋势,改进的弹性伸缩策略与Kubernetes传统的HPA相比更加智能、稳定,在负载特征明显、突发性负载较多的场景展现出显著提升,具有广泛的应用潜力。 展开更多
关键词 Kubernetes 时序预测模型WTT-iTransformer 负载预测 混合弹性伸缩策略 小波变换卷积 时间卷积网络 iTransformer模型
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小波分解和BDLTM-GRU混合模型相融合的桥梁耦合极值应力高精度预测
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作者 杨渡 樊学平 刘月飞 《振动工程学报》 北大核心 2025年第5期1026-1035,共10页
为实现桥梁耦合极值应力的高精度预测,采用小波多分辨率分析法对监测极值应力进行分解,取分解后的低频数据为趋势项信息,高频数据为车辆荷载效应信息,趋势项减去其均值为温度荷载效应信息,通过以上步骤实现桥梁极值应力的解耦。建立双变... 为实现桥梁耦合极值应力的高精度预测,采用小波多分辨率分析法对监测极值应力进行分解,取分解后的低频数据为趋势项信息,高频数据为车辆荷载效应信息,趋势项减去其均值为温度荷载效应信息,通过以上步骤实现桥梁极值应力的解耦。建立双变量(引入随时间变化的趋势项)贝叶斯动态线性趋势性模型(BDLTM)对低频极值应力进行预测分析;采用GRU神经网络模型对高频极值应力进行预测分析;实现耦合极值应力的叠加预测。利用天津富民桥的监测耦合数据验证BDLTM-GRU模型的可行性,同时与耦合极值应力的单BDLTM和单GRU模型进行精度比较,验证BDLTM-GRU模型预测的高精度。 展开更多
关键词 耦合极值应力 小波多分辨率分析法 BDLTM-GRU模型 BDLTM GRU神经网络
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嵌入式医疗设备双电源瞬态过电压检测系统设计
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作者 赵如如 《国外电子测量技术》 2025年第5期259-264,共6页
过电压会影响医疗设备的正常使用,严重时会造成使用者的人身和财产安全损失。为实现瞬时过电压的实时检测,研究基于小波变换(Wavelet Transform,WT)和卷积神经网络(Convolutional Neural Network,CNN)提出了过电压特征提取方法,并以STM3... 过电压会影响医疗设备的正常使用,严重时会造成使用者的人身和财产安全损失。为实现瞬时过电压的实时检测,研究基于小波变换(Wavelet Transform,WT)和卷积神经网络(Convolutional Neural Network,CNN)提出了过电压特征提取方法,并以STM32H7为硬件支撑,在TFLM(Tensor Flow Lite Micro)框架下构建了用于双电源医疗设备的嵌入式瞬时过电压实时检测模型。在实际应用中,模型对中央处理器(Central Processing Unit,CPU)的占用最大值为22.3%,对随机存取存储器(Random Access Memory,RAM)占用最大值为125 KB。在检测时的上升时间分辨率最大值为0.75μs,增幅误差介于-1.2%~+0.8%之间,且在高频电刀干扰下准确率为90.3%,超声探头干扰下准确率为88.75%。由此可知模型的实际应用效果较好,对于瞬时过电压检测系统的开发具有积极意义。 展开更多
关键词 过电压 小波变换 卷积神经网络 实时检测模型
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