期刊文献+
共找到820篇文章
< 1 2 41 >
每页显示 20 50 100
Wideband and high-gain BeiDou antenna with a sequential feed network for satellite tracking 被引量:2
1
作者 Zhuolin DENG Zhongyu TIAN +3 位作者 Chenhe DUAN Pei XIAO Zhu LIU Gaosheng LI 《Frontiers of Information Technology & Electronic Engineering》 SCIE EI CSCD 2023年第10期1471-1481,共11页
BeiDou-3 navigation satellite system was officially opened in 2020.While bringing high-performance services to people around the world,the navigation system requires well-designed BeiDou antennas.In this paper,we prop... BeiDou-3 navigation satellite system was officially opened in 2020.While bringing high-performance services to people around the world,the navigation system requires well-designed BeiDou antennas.In this paper,we propose a wideband circularly polarized high-performance BeiDou antenna.The antenna realizes wideband circularly polarized radiation through a four-port sequential feed network,and the phase imbalance of the feed network from 1.05 to 1.80 GHz is less than 7°.The manufactured antenna demonstrates a return loss of more than 13 dB and an axial ratio<3 dB over the entire global navigation satellite system(GNSS)frequency band.The right-handed circular polarization(RHCP)gain of the proposed antenna is greater than 4 dB in the GNSS low-frequency band and can reach more than 7.1 dB in the high-frequency band.Dimension of the proposed antenna is 120 mm×120 mm×20 mm,i.e.,0.54λo×0.54λo×0.09λo,whereλo is the wavelength of the center frequency.The proposed antenna connected to a GNSS receiver has tracked 12 BeiDou satellites with C/N0 ratios of GNSS signals greater than 30 dB.Such a high-performance antenna provides a basis for high-quality positioning services. 展开更多
关键词 BeiDou antenna Wideband circularly polarized radiation Four-port sequential feed network Global navigation satellite system(GNSS)receiver Satellite tracking
原文传递
Near-infrared Spectral Detection of the Content of Soybean Fat Acids Based on Genetic Multilayer Feed forward Neural Network 被引量:1
2
作者 CHAIYu-hua PANWei NINGHai-long 《Journal of Northeast Agricultural University(English Edition)》 CAS 2005年第1期74-78,共5页
In the paper, a method of building mathematic model employing genetic multilayer feed forward neural network is presented, and the quantitative relationship of chemical measured values and near-infrared spectral data ... In the paper, a method of building mathematic model employing genetic multilayer feed forward neural network is presented, and the quantitative relationship of chemical measured values and near-infrared spectral data is established. In the paper, quantitative mathematic model related chemical assayed values and near-infrared spectral data is established by means of genetic multilayer feed forward neural network, acquired near-infrared spectral data are taken as input of network with the content of five kinds of fat acids tested from chemical method as output, weight values of multilayer feed forward neural network are trained by genetic algorithms and detection model of neural network of soybean is built. A kind of multilayer feed forward neural network trained by genetic algorithms is designed in the paper. Through experiments, all the related coefficients of five fat acids can approach 0.9 which satisfies the preliminary test of soybean breeding. 展开更多
关键词 near infrared multilayer feed forward neural network genetic algorithms SOYBEAN fat acid
在线阅读 下载PDF
Combined Signal Processing Based Techniques and Feed Forward Neural Networks for Pathological Voice Detection and Classification 被引量:1
3
作者 T.Jayasree S.Emerald Shia 《Sound & Vibration》 EI 2021年第2期141-161,共21页
This paper presents the pathological voice detection and classification techniques using signal processing based methodologies and Feed Forward Neural Networks(FFNN).The important pathological voices such as Autism Sp... This paper presents the pathological voice detection and classification techniques using signal processing based methodologies and Feed Forward Neural Networks(FFNN).The important pathological voices such as Autism Spectrum Disorder(ASD)and Down Syndrome(DS)are considered for analysis.These pathological voices are known to manifest in different ways in the speech of children and adults.Therefore,it is possible to discriminate ASD and DS children from normal ones using the acoustic features extracted from the speech of these subjects.The important attributes hidden in the pathological voices are extracted by applying different signal processing techniques.In this work,three group of feature vectors such as perturbation measures,noise parameters and spectral-cepstral modeling are derived from the signals.The detection and classification is done by means of Feed For-ward Neural Network(FFNN)classifier trained with Scaled Conjugate Gradient(SCG)algorithm.The performance of the network is evaluated by finding various performance metrics and the the experimental results clearly demonstrate that the proposed method gives better performance compared with other methods discussed in the literature. 展开更多
关键词 Autism spectrum disorder down syndrome feed forward neural network perturbation measures noise parameters cepstral features
在线阅读 下载PDF
A Kind of Second-Order Learning Algorithm Based on Generalized Cost Criteria in Multi-Layer Feed-Forward Neural Networks
4
作者 张长江 付梦印 金梅 《Journal of Beijing Institute of Technology》 EI CAS 2003年第2期119-124,共6页
A kind of second order algorithm--recursive approximate Newton algorithm was given by Karayiannis. The algorithm was simplified when it was formulated. Especially, the simplification to matrix Hessian was very reluct... A kind of second order algorithm--recursive approximate Newton algorithm was given by Karayiannis. The algorithm was simplified when it was formulated. Especially, the simplification to matrix Hessian was very reluctant, which led to the loss of valuable information and affected performance of the algorithm to certain extent. For multi layer feed forward neural networks, the second order back propagation recursive algorithm based generalized cost criteria was proposed. It is proved that it is equivalent to Newton recursive algorithm and has a second order convergent rate. The performance and application prospect are analyzed. Lots of simulation experiments indicate that the calculation of the new algorithm is almost equivalent to the recursive least square multiple algorithm. The algorithm and selection of networks parameters are significant and the performance is more excellent than BP algorithm and the second order learning algorithm that was given by Karayiannis. 展开更多
关键词 multi layer feed forward neural networks BP algorithm Newton recursive algorithm
在线阅读 下载PDF
Feed-Forward Neural Network Based Petroleum Wells Equipment Failure Prediction
5
作者 Agil Yolchuyev 《Engineering(科研)》 CAS 2023年第3期163-175,共13页
In the oil industry, the productivity of oil wells depends on the performance of the sub-surface equipment system. These systems often have problems stemming from sand, corrosion, internal pressure variation, or other... In the oil industry, the productivity of oil wells depends on the performance of the sub-surface equipment system. These systems often have problems stemming from sand, corrosion, internal pressure variation, or other factors. In order to ensure high equipment performance and avoid high-cost losses, it is essential to identify the source of possible failures in the early stage. However, this requires additional maintenance fees and human power. Moreover, the losses caused by these problems may lead to interruptions in the whole production process. In order to minimize maintenance costs, in this paper, we introduce a model for predicting equipment failure based on processing the historical data collected from multiple sensors. The state of the system is predicted by a Feed-Forward Neural Network (FFNN) with an SGD and Backpropagation algorithm is applied in the training process. Our model’s primary goal is to identify potential malfunctions at an early stage to ensure the production process’ continued high performance. We also evaluated the effectiveness of our model against other solutions currently available in the industry. The results of our study show that the FFNN can attain an accuracy score of 97% on the given dataset, which exceeds the performance of the models provided. 展开更多
关键词 PDM IOT Internet of Things Machine Learning SENSORS feed-Forward Neural networks FFNN
在线阅读 下载PDF
基于高阶空间交互的盲超分辨率图像重建算法
6
作者 王晓峰 谭文雅 +1 位作者 沈紫璇 黄俊俊 《计算机工程与设计》 北大核心 2026年第2期309-315,共7页
为了克服盲超分辨率领域中生成对抗网络模型在生成细节和抑制伪影方面的局限性,提出了一种新型的具有高阶交互能力的Real-GSRGAN模型。该模型包括3个关键组成部分:高阶退化模型、基于残差门控注意力模块的Transformer生成器和U-Net鉴别... 为了克服盲超分辨率领域中生成对抗网络模型在生成细节和抑制伪影方面的局限性,提出了一种新型的具有高阶交互能力的Real-GSRGAN模型。该模型包括3个关键组成部分:高阶退化模型、基于残差门控注意力模块的Transformer生成器和U-Net鉴别器。在生成器中,采用了通道空间自注意力模块来捕捉多维特征,并通过递归门控卷积实现全局依赖和局部细节的高阶交互。前馈网络引入门控机制添加空间建模信息。为抑制伪影和图像过于平滑的现象,添加了去伪影损失函数。实验结果表明,该方法在多个数据集上表现出更优的视觉重建效果,还通过高阶交互机制显著提升了整体性能,优于现有方法。 展开更多
关键词 生成对抗网络 盲超分辨率 注意力机制 前馈网络 递归门控卷积 高阶空间交互 高阶特征
在线阅读 下载PDF
VIFusion:低光场景下可见光与红外图像的互补融合模型
7
作者 张晓滨 牛燕皓 陈金广 《西安工程大学学报》 2026年第1期126-135,共10页
针对低光场景下可见光与红外图像融合算法存在时序信息丢失、特征图通道冗余、细节模糊等问题,本文基于Vision Transformer框架,提出了一种低光场景下可见光与红外图像的互补融合模型VIFusion。该模型通过包含的双时态特征聚合(dual tem... 针对低光场景下可见光与红外图像融合算法存在时序信息丢失、特征图通道冗余、细节模糊等问题,本文基于Vision Transformer框架,提出了一种低光场景下可见光与红外图像的互补融合模型VIFusion。该模型通过包含的双时态特征聚合(dual temporal feature aggregation,DTFA)模块、特征细化前馈网络(feature refinement feedforward network,FRFN)模块和空间通道注意力机制(spatial channel attention,SCA)模块提升了融合图像的质量和信息表达能力。其中,DTFA模块使用分组卷积保持特征空间完整性,然后进行时序对齐与融合,以增强时序一致性并减少信息损失。FRFN模块对提取的特征进行逐层优化,减少通道冗余。SCA模块通过自适应建模图像空间和通道关系,突出关键特征,提高信息表达能力、增强边缘、纹理等细节信息。实验结果表明:在LLVIP数据集上,VIFusion模型在客观指标(AG、CC、EN、SF、SSIM、VIF、MI)上优于传统方法和深度学习模型(如GTF、TarDAL、DenseFuse等)。在数据集TNO上的泛化实验中,生成的融合图像在细节保留和目标突出上也表现更佳。VIFusion模型为低光场景下的多模态图像融合提供了一种高效实用的解决方案。 展开更多
关键词 双时态特征聚合 特征细化前馈网络 空间通道注意力 图像融合
在线阅读 下载PDF
数字化转型驱动对饲料产业价值链重构的影响 被引量:3
8
作者 王爱东 《饲料工业》 北大核心 2026年第1期184-188,共5页
为破解中国饲料产业大而不强、产品同质化严重及上下游利润挤压的困境,填补数字化驱动价值链重构底层经济学机理的研究空白,研究探究其内在逻辑、机制与路径并提供理论及实践指引。基于交易成本、信息经济学等理论,构建多学科整合分析框... 为破解中国饲料产业大而不强、产品同质化严重及上下游利润挤压的困境,填补数字化驱动价值链重构底层经济学机理的研究空白,研究探究其内在逻辑、机制与路径并提供理论及实践指引。基于交易成本、信息经济学等理论,构建多学科整合分析框架,结合行业报告数据,通过理论演绎解析数字化解构机理与重构路径。结果显示,数字化转型通过信息透明化与交易优化双重机制,沿赋能融合、分解网络化、延伸生态化3条路径推动价值链重构,促使价值创造转向范围经济与长尾经济协同,价值分配形成生态共享模式。综上,数字化转型是饲料产业价值链从线性结构向网络化生态转型的关键驱动力,研究构建的分析框架填补了理论空白,可为企业转型与政策制定提供指引。 展开更多
关键词 数字化转型 饲料产业 价值链重构 交易成本 价值网络
在线阅读 下载PDF
Feed-Forward Artificial Neural Network Model for Air Pollutant Index Prediction in the Southern Region of Peninsular Malaysia 被引量:1
9
作者 Azman Azid Hafizan Juahir +2 位作者 Mohd Talib Latif Sharifuddin Mohd Zain Mohamad Romizan Osman 《Journal of Environmental Protection》 2013年第12期1-10,共10页
This paper describes the application of principal component analysis (PCA) and artificial neural network (ANN) to predict the air pollutant index (API) within the seven selected Malaysian air monitoring stations in th... This paper describes the application of principal component analysis (PCA) and artificial neural network (ANN) to predict the air pollutant index (API) within the seven selected Malaysian air monitoring stations in the southern region of Peninsular Malaysia based on seven years database (2005-2011). Feed-forward ANN was used as a prediction method. The feed-forward ANN analysis demonstrated that the rotated principal component scores (RPCs) were the best input parameters to predict API. From the 4 RPCs, only 10 (CO, O3, PM10, NO2, CH4, NmHC, THC, wind direction, humidity and ambient temp) out of 12 prediction variables were the most significant parameters to predict API. The results proved that the ANN method can be applied successfully as tools for decision making and problem solving for better atmospheric management. 展开更多
关键词 Air POLLUTANT Index (API) Principal COMPONENT Analysis (PCA) Artificial Neural network (ANN) Rotated Principal COMPONENT SCORES (RPCs) feed-FORWARD ANN
暂未订购
近红外光谱结合Lévy飞行网络优化模型预测鱼粉蛋白质含量
10
作者 张思媛 陈伟豪 +3 位作者 陈华舟 侯灿 蒙芳秀 洪绍勇 《中国无机分析化学》 北大核心 2026年第2期292-300,共9页
鱼粉是动物饲料的主要膳食蛋白质来源,如何选择蛋白质含量高、品质好的鱼粉是饲料产业亟待解决的问题。近红外光谱(NIRS)技术已经发展成为备受瞩目的现代化智能分析技术,在农业、农副业中的产品品质、过程分析和质量控制等方面发挥着重... 鱼粉是动物饲料的主要膳食蛋白质来源,如何选择蛋白质含量高、品质好的鱼粉是饲料产业亟待解决的问题。近红外光谱(NIRS)技术已经发展成为备受瞩目的现代化智能分析技术,在农业、农副业中的产品品质、过程分析和质量控制等方面发挥着重要的作用,而这依赖于计量分析模型的智能化演变。在此背景下,本文构建具有3个隐藏层的神经网络(NN)深度学习模型,结合布谷鸟搜索(CS)进化计算,基于泊松迭代过程的Lévy飞行的自适应优化策略,实现对光谱定标模型进行超参数优化,以提升NIRS技术应用于饲料鱼粉蛋白质定量分析的精准度。针对194个鱼粉样本的NIRS数据实验,建立Lévy-CS-NN模型,讨论有效的参数优化模式,并使之与其他经典模型,如组合模型(NN、CS-NN、Lévy-NN)、偏最小二乘(PLS)、最小二乘支持向量机(LSSVM)、一维卷积神经网络(1D-CNN)等进行结果对比分析。实验结果表明:所提出的Lévy-CS-NN模型能获得最优的预测结果,训练偏差为1.971,训练相关系数为0.923,测试偏差为2.922,测试相关系数为0.879;该模型的预测结果明显优于其他对比模型,验证了NIRS定量分析技术在计量方法智能化的有效支持下,能够实现对饲料鱼粉的营养水平的快速评估;相关智能优化及迭代计算策略的研究有望在农副业绿色技术推广过程中发挥关键作用,有助于推动农业信息化的发展。 展开更多
关键词 近红外光谱(NIRS) 饲料鱼粉 蛋白质 神经网络(NN) Lévy飞行策略 进化迭代优化
在线阅读 下载PDF
CSWin-Transformer与可形变卷积相结合的图像修复技术研究与实现
11
作者 刘海洋 胡永 《软件导刊》 2026年第1期119-126,共8页
针对现有图像修复模型修复大面积不规则缺损图像效果不佳、计算资源消耗大的问题,提出了一种CSWinTransformer与可形变卷积残差密集网络相结合的图像修复方法。首先,构建一个由全局层网络和局部层网络组成的生成模型,利用全局层CSWin-Tr... 针对现有图像修复模型修复大面积不规则缺损图像效果不佳、计算资源消耗大的问题,提出了一种CSWinTransformer与可形变卷积残差密集网络相结合的图像修复方法。首先,构建一个由全局层网络和局部层网络组成的生成模型,利用全局层CSWin-Transformer模块的条纹窗口在较低的计算复杂度下获取更大的感受野,增强其图像特征提取能力;其次,在CSWin-Transformer中加入一种新的门控深度卷积前馈网络,其能够进行有选择性的特征转换,即过滤掉信息量不足的特征,仅保留有价值的信息继续在网络的层级结构中流动;再次,通过并行局部层的可形变卷积残差密集块灵活对图像进行采样,增强结构纹理修复的精确度,同时,在上述并行生成模型之间,构建共享的注意力机制来促进全局和局部特征之间的信息交流;最终,采用谱归一化的马尔科夫判别模型进行对抗性训练。实验结果表明,提出的方法相较于其他方法在PSNR和SSIM指标上分别提升了2.47dB和0.075 2,在LPIPS指标上下降了0.092 4。 展开更多
关键词 深度学习 CSWin-Transformer 门控深度卷积前馈网络 可形变卷积残差密集网络
在线阅读 下载PDF
一种基于神经网络的发送端均衡调优方法
12
作者 申慧毅 李晋文 +1 位作者 曹继军 赖明澈 《计算机工程与科学》 北大核心 2026年第1期1-10,共10页
随着数据中心和高性能计算机系统日益增长的数据传输带宽需求,高速互连网络数据传输的速率越来越快,而信号传输的链路也越来越复杂,对于高速串行通信SerDes信号的均衡技术也提出了更高的要求。目前接收端的均衡可以做到自适应,但是发送... 随着数据中心和高性能计算机系统日益增长的数据传输带宽需求,高速互连网络数据传输的速率越来越快,而信号传输的链路也越来越复杂,对于高速串行通信SerDes信号的均衡技术也提出了更高的要求。目前接收端的均衡可以做到自适应,但是发送端前馈均衡FFE难以做到自适应,需要手动配置。针对这个问题,提出了一种基于神经网络的发送端前馈均衡系数的多目标调优方法,首先通过采集模拟仿真数据,利用神经网络对FFE的抽头系数与眼高和眼宽建模,再使用多目标优化算法对训练好的神经网络模型求解,能够快速得到最优的FFE电路抽头系数。与传统基于逐位模拟的FFE系数单目标优化方法相比,所提出的方法最高可以在眼图面积上实现约25%的提升,并且大大减少时间开销,提高优化效率。 展开更多
关键词 发送端 前馈均衡 抽头系数 眼图 神经网络 多目标优化算法
在线阅读 下载PDF
STUDYING THE ABRASION BEHAVIOR OF RUBBERY MATERIALS WITH COMBINED DESIGN OF EXPERIMENT-ARTIFICIAL NEURAL NETWORK 被引量:1
13
作者 Mehdi Shiva Hossein Atashi Mahtab Hassanpourfard 《Chinese Journal of Polymer Science》 SCIE CAS CSCD 2012年第4期520-529,共10页
In this study, an application of artificial neural network (ANN) has been presented in modeling and studying the effect of compounding variables on abrasion behavior of rubber formulations. Three case studies were c... In this study, an application of artificial neural network (ANN) has been presented in modeling and studying the effect of compounding variables on abrasion behavior of rubber formulations. Three case studies were carried out in which the experiment data were collected according to classical response surface designs. Besides developing the ANN models, we developed response surface methodology (RSM) to confirm the ANN predictions. A simple relation was employed for determination of relative importance of each variable according to ANN models. It was shown through these case studies that ANN models delivered very good data fitting and their simulating curves could help the researchers to better understand the abrasion behavior. 展开更多
关键词 ABRASION feed forward neural networks Rubber compounding Central composite design.
原文传递
An Efficient Hybrid Model Based on Modified Whale Optimization Algorithm and Multilayer Perceptron Neural Network for Medical Classification Problems 被引量:1
14
作者 Saeid Raziani Sajad Ahmadian +1 位作者 Seyed Mohammad Jafar Jalali Abdolah Chalechale 《Journal of Bionic Engineering》 SCIE EI CSCD 2022年第5期1504-1521,共18页
Feedforward Neural Network(FNN)is one of the most popular neural network models that is utilized to solve a wide range of nonlinear and complex problems.Several models such as stochastic gradient descent have been dev... Feedforward Neural Network(FNN)is one of the most popular neural network models that is utilized to solve a wide range of nonlinear and complex problems.Several models such as stochastic gradient descent have been developed to train FNNs.However,they mainly suffer from falling into local optima leading to reduce the accuracy of FNNs.Moreover,the convergence speed of training process depends on the initial values of weights and biases in FNNs.Generally,these values are randomly determined by most of the training models.To deal with these issues,in this paper,we develop a novel evolutionary algorithm by modifying the original version of Whale Optimization Algorithm(WOA).To this end,a nonlinear function is introduced to improve the exploration and exploitation phases in the search process of WOA.Then,the modified WOA is applied to automatically obtain the initial values of weights and biases in FNN leading to reduce the probability of falling into local optima.In addition,the FNN model trained by the modified WOA is used to develop a classification approach for medical diagnosis problems.Ten medical diagnosis datasets are utilized to evaluate the efficiency of the proposed method.Also,four evaluation metrics including accuracy,AUC,specificity,and sensitivity are used in the experiments to compare the performance of classification models.The experimental results demonstrate that the proposed method is better than other competing classification models due to achieving higher values of accuracy,AUC,specificity,and sensitivity metrics for the used datasets. 展开更多
关键词 feed forward neural network Meta-heuristic algorithm Whale optimization algorithm Optimization CLASSIFICATION Bionic algorithm
在线阅读 下载PDF
Response Surface Methodology and Artificial Neural Network Methods Comparative Assessment for Fuel Rich and Fuel Lean Catalytic Combustion 被引量:1
15
作者 Tahani S. Gendy Amal S. Zakhary Salwa A. Ghoneim 《World Journal of Engineering and Technology》 2021年第4期816-847,共32页
Modeling, predictive and generalization capabilities of response surface methodology (RSM) and artificial neural network (ANN) have been performed to assess the thermal structure of the experimentally studied cat... Modeling, predictive and generalization capabilities of response surface methodology (RSM) and artificial neural network (ANN) have been performed to assess the thermal structure of the experimentally studied catalytic combustion of stabilized confined turbulent gaseous diffusion flames. The Pt/<i>γ</i>Al<sub>2</sub>O<sub>3</sub> and Pd/<i>γ</i>Al<sub>2</sub>O<sub>3</sub> disc burners were located in the combustion domain and the experiments were accomplished under both fuel-rich and fuel-lean conditions at a modified equivalence (fuel/air) ratio (<i><span style="white-space:nowrap;"><span style="font-family:Verdana, Helvetica, Arial;white-space:normal;background-color:#FFFFFF;">&oslash;</span></span></i>) of 0.75 and 0.25, respectively. The thermal structure of these catalytic flames developed over the Pt and Pd disc burners w<span style="white-space:normal;font-family:;" "="">as</span><span style="white-space:normal;font-family:;" "=""> scrutinized via measuring the mean temperature profiles in the radial direction at different discrete axial locations along with the flames. The RSM and ANN methods investigated the effect of the two operating parameters namely (<i>r</i>), the radial distance from the center line of the flame, and (<i>x</i>), axial distance along with the flame over the disc, on the measured temperature of the flames and predicted the corresponding temperatures beside predicting the maximum temperature and the corresponding input process variables. A three</span><span style="white-space:normal;font-family:;" "="">-</span><span style="white-space:normal;font-family:;" "="">layered Feed Forward Neural Network was developed in conjugation with the hyperbolic tangent sigmoid (tansig) transfer function and an optimized topology of 2:10:1 (input neurons:hidden neurons:output neurons). Also the ANN method has been exploited to illustrate </span><span style="white-space:normal;font-family:;" "="">the </span><span style="white-space:normal;font-family:;" "="">effects of coded <i>R</i> and <i>X</i> input variables on the response in the three and two dimensions and to locate the predicted maximum temperature. The results indicated the superiority of ANN in the prediction capability as the ranges of  & F_Ratio are 0.9181</span><span style="white-space:normal;font-family:;" "=""> </span><span style="white-space:normal;font-family:;" "="">- 0.9809 & 634.5</span><span style="white-space:normal;font-family:;" "=""> </span><span style="white-space:normal;font-family:;" "="">- 3528.8 for RSM method compared to 0.9857</span><span style="white-space:normal;font-family:;" "=""> </span><span style="white-space:normal;font-family:;" "="">- 0.9951 & 7636.4</span><span style="white-space:normal;font-family:;" "=""> </span><span style="white-space:normal;font-family:;" "="">- 24</span><span style="white-space:normal;font-family:;" "="">,</span><span style="white-space:normal;font-family:;" "="">028.4 for ANN method beside lower values </span><span style="white-space:normal;font-family:;" "="">for error analysis terms.</span> 展开更多
关键词 Catalytic Combustion Fuel Lean/Fuel Rich Noble Metals Burners Thermal structure MODELING Artificial Neural network Response Surface Methodology feed Forward Neural network
在线阅读 下载PDF
融合复制机制和input-feeding方法的中文自动摘要模型
16
作者 农丁安 欧阳纯萍 阳小华 《计算机应用研究》 CSCD 北大核心 2020年第8期2395-2399,共5页
针对中文自动摘要准确率不高的问题,在含有注意力机制的序列到序列(sequence-to-sequence,seq2seq)基础模型的解码器中融合了复制机制和input-feeding方法,提出了准确率更高的中文自动摘要模型。首先,该模型使用指针网络将出现在源序列... 针对中文自动摘要准确率不高的问题,在含有注意力机制的序列到序列(sequence-to-sequence,seq2seq)基础模型的解码器中融合了复制机制和input-feeding方法,提出了准确率更高的中文自动摘要模型。首先,该模型使用指针网络将出现在源序列中的OOV(out-of-vocabulary)词扩展到固定词典,以实现从源序列复制OOV词到生成序列中;其次,input-feeding方法用于跟踪已生成序列的注意力决定信息以提升模型输出准确率。在NLPCC2018数据集上的实验结果表明,与基础模型相比,所提出模型获得了更高的ROUGE得分,验证了该模型的可行性。 展开更多
关键词 自动摘要 复制机制 input-feeding方法 指针网络 序列到序列 注意力机制
在线阅读 下载PDF
The Application of Artificial Neural Network in Assessing Chinese Mobile Internet Service
17
作者 Zhu Jiachuan 《学术界》 CSSCI 北大核心 2014年第6期282-288,共7页
This paper pays its attention on Chinese mobile Internet service( MIS). Chinese MIS is developing so rapidly that the research on the mechanism of the formation of MIS assessment makes significant sense and therefore ... This paper pays its attention on Chinese mobile Internet service( MIS). Chinese MIS is developing so rapidly that the research on the mechanism of the formation of MIS assessment makes significant sense and therefore the three layers construct of the artificial neural network( ANN) theory is applied to address the problem. The final research model contains MIS features including personalization,localization,reachability,connectivity,convenience and ubiquity as the input layer variables,perceived MIS quality and MIS satisfaction as the hidden layer variables and reuse intention as the output layer variable. MIS risk is identified as the mediating variable. Theoretically,the framework is robust and reveals the mechanism of how customers evaluate a certain mobile Internet service. Practically,the model based on ANN should shed some light on how to understand and improve customer perceived mobile Internet service for both MIS giants and new comers. 展开更多
关键词 人工神经网络 互联网服务 质量管理信息系统 移动 中国 应用 评估 MIS
在线阅读 下载PDF
Applying the Artificial Neural Network to Estimate the Drag Force for an Autonomous Underwater Vehicle
18
作者 Ehsan Yari Ahmadreza Ayoobi Hassan Ghassemi 《Open Journal of Fluid Dynamics》 2014年第3期334-346,共13页
This paper offer an artificial neural network (ANN) model to calculate drag force on an axisymmetric underwater vehicle by obtaining dataset from a computational fluid dynamic analysis. First, great effort was done to... This paper offer an artificial neural network (ANN) model to calculate drag force on an axisymmetric underwater vehicle by obtaining dataset from a computational fluid dynamic analysis. First, great effort was done to calculate the pressure and viscous data forces by increasing the precision and numerical data in order to extend and raise quality of dataset. In this step, numerous different geometry models (configurations of axisymmetric body) were designed, examined and evaluated input parameters including: diameter of body, diameter of nose disc, length of body, length of nose and velocity whereas outputs contain pressure and viscous forces. This dataset was used to train the ANN model. Feed-forward neural network (FFNN) is selected which is more common and suitable in this field’s study. A three-layer neural network was opted and after training this network, the results showed good agreement with CFD data. This study shows that applying the ANN model helps to reach final purpose in the least time and error, in addition a variety of tests can be performed to have a desired design in this way. 展开更多
关键词 Drag Force feed-FORWARD Neural networks BACK-PROPAGATION Algorithm AUV
在线阅读 下载PDF
Wavelet based detection of ventricular arrhythmias with neural network classifier
19
作者 Sankara Subramanian Arumugam Gurusamy Gurusamy Selvakumar Gopalasamy 《Journal of Biomedical Science and Engineering》 2009年第6期439-444,共6页
This paper presents an algorithm based on the wavelet decomposition, for feature extraction from the Electrocardiogram (ECG) signal and recognition of three types of Ventricular Arrhythmias using neural networks. A se... This paper presents an algorithm based on the wavelet decomposition, for feature extraction from the Electrocardiogram (ECG) signal and recognition of three types of Ventricular Arrhythmias using neural networks. A set of Discrete Wavelet Transform (DWT) coefficients, which contain the maximum information about the arrhythmias, is selected from the wavelet decomposition. These coefficients are fed to the feed forward neural network which classifies the arrhythmias. The algorithm is applied on the ECG registrations from the MIT-BIH arrhythmia and malignant ventricular arrhythmia databases. We applied Daubechies 4 wavelet in our algorithm. The wavelet decomposition enabled us to perform the task efficiently and produced reliable results. 展开更多
关键词 Daubechies 4 WAVELET ECG feed FORWARD Neural network VENTRICULAR ARRHYTHMIAS WAVELET De-composition
暂未订购
Comparative Appraisal of Response Surface Methodology and Artificial Neural Network Method for Stabilized Turbulent Confined Jet Diffusion Flames Using Bluff-Body Burners
20
作者 Tahani S. Gendy Salwa A. Ghoneim Amal S. Zakhary 《World Journal of Engineering and Technology》 2020年第1期121-143,共23页
The present study was conducted to present the comparative modeling, predictive and generalization abilities of response surface methodology (RSM) and artificial neural network (ANN) for the thermal structure of stabi... The present study was conducted to present the comparative modeling, predictive and generalization abilities of response surface methodology (RSM) and artificial neural network (ANN) for the thermal structure of stabilized confined jet diffusion flames in the presence of different geometries of bluff-body burners. Two stabilizer disc burners tapered at 30° and 60° and another frustum cone of 60°/30° inclination angle were employed all having the same diameter of 80 (mm) acting as flame holders. The measured radial mean temperature profiles of the developed stabilized flames at different normalized axial distances (x/dj) were considered as the model example of the physical process. The RSM and ANN methods analyze the effect of the two operating parameters namely (r), the radial distance from the center line of the flame, and (x/dj) on the measured temperature of the flames, to find the predicted maximum temperature and the corresponding process variables. A three-layered Feed Forward Neural Network in conjugation with the hyperbolic tangent sigmoid (tansig) as transfer function and the optimized topology of 2:10:1 (input neurons: hidden neurons: output neurons) was developed. Also the ANN method has been employed to illustrate such effects in the three and two dimensions and shows the location of the predicted maximum temperature. The results indicated the superiority of ANN in the prediction capability as the ranges of R2 and F Ratio are 0.868 - 0.947 and 231.7 - 864.1 for RSM method compared to 0.964 - 0.987 and 2878.8 7580.7 for ANN method beside lower values for error analysis terms. 展开更多
关键词 STABILIZED TURBULENT Flames BLUFF-BODY Burners Thermal Structure Modeling Artificial NEURAL network Response Surface Methodology Multi-Layer PERCEPTRON feed Forward NEURAL network
在线阅读 下载PDF
上一页 1 2 41 下一页 到第
使用帮助 返回顶部