期刊文献+
共找到24,351篇文章
< 1 2 250 >
每页显示 20 50 100
A method for predicting random vibration response of train-track-bridge system based on GA-BP neural network
1
作者 Jianfeng Mao Yun Zhang +2 位作者 Li Zheng Mansoor Khan Zhiwu Yu 《High-Speed Railway》 2025年第4期305-317,共13页
To enhance the efficiency of stochastic vibration analysis for the Train-Track-Bridge(TTB)coupled system,this paper proposes a prediction method based on a Genetic Algorithm-optimized Backpropagation(GA-BP)neural netw... To enhance the efficiency of stochastic vibration analysis for the Train-Track-Bridge(TTB)coupled system,this paper proposes a prediction method based on a Genetic Algorithm-optimized Backpropagation(GA-BP)neural network.First,initial track irregularity samples and random parameter sets of the Vehicle-Bridge System(VBS)are generated using the stochastic harmonic function method.Then,the stochastic dynamic responses corresponding to the sample sets are calculated using a developed stochastic vibration analysis model of the TTB system.The track irregularity data and vehicle-bridge random parameters are used as input variables,while the corresponding stochastic responses serve as output variables for training the BP neural network to construct the prediction model.Subsequently,the Genetic Algorithm(GA)is applied to optimize the BP neural network by considering the randomness in excitation and parameters of the TTB system,improving model accuracy.After optimization,the trained GA-BP model enables rapid and accurate prediction of vehicle-bridge responses.To validate the proposed method,predictions of vehicle-bridge responses under varying train speeds are compared with numerical simulation results.The findings demonstrate that the proposed method offers notable advantages in predicting the stochastic vibration response of high-speed railway TTB coupled systems. 展开更多
关键词 Train-track-bridge system Genetic algorithm bp neural network Random response prediction Random parameters
在线阅读 下载PDF
Dynamic interwell connectivity analysis of multi-layer waterflooding reservoirs based on an improved graph neural network 被引量:1
2
作者 Zhao-Qin Huang Zhao-Xu Wang +4 位作者 Hui-Fang Hu Shi-Ming Zhang Yong-Xing Liang Qi Guo Jun Yao 《Petroleum Science》 SCIE EI CAS CSCD 2024年第2期1062-1080,共19页
The analysis of interwell connectivity plays an important role in the formulation of oilfield development plans and the description of residual oil distribution. In fact, sandstone reservoirs in China's onshore oi... The analysis of interwell connectivity plays an important role in the formulation of oilfield development plans and the description of residual oil distribution. In fact, sandstone reservoirs in China's onshore oilfields generally have the characteristics of thin and many layers, so multi-layer joint production is usually adopted. It remains a challenge to ensure the accuracy of splitting and dynamic connectivity in each layer of the injection-production wells with limited field data. The three-dimensional well pattern of multi-layer reservoir and the relationship between injection-production wells can be equivalent to a directional heterogeneous graph. In this paper, an improved graph neural network is proposed to construct an interacting process mimics the real interwell flow regularity. In detail, this method is used to split injection and production rates by combining permeability, porosity and effective thickness, and to invert the dynamic connectivity in each layer of the injection-production wells by attention mechanism.Based on the material balance and physical information, the overall connectivity from the injection wells,through the water injection layers to the production layers and the output of final production wells is established. Meanwhile, the change of well pattern caused by perforation, plugging and switching of wells at different times is achieved by updated graph structure in spatial and temporal ways. The effectiveness of the method is verified by a combination of reservoir numerical simulation examples and field example. The method corresponds to the actual situation of the reservoir, has wide adaptability and low cost, has good practical value, and provides a reference for adjusting the injection-production relationship of the reservoir and the development of the remaining oil. 展开更多
关键词 Graph neural network Dynamic interwell connectivity Production-injection splitting Attention mechanism multi-layer reservoir
原文传递
Efficient Training of Multi-Layer Neural Networks to Achieve Faster Validation 被引量:1
3
作者 Adel Saad Assiri 《Computer Systems Science & Engineering》 SCIE EI 2021年第3期435-450,共16页
Artificial neural networks(ANNs)are one of the hottest topics in computer science and artificial intelligence due to their potential and advantages in analyzing real-world problems in various disciplines,including but... Artificial neural networks(ANNs)are one of the hottest topics in computer science and artificial intelligence due to their potential and advantages in analyzing real-world problems in various disciplines,including but not limited to physics,biology,chemistry,and engineering.However,ANNs lack several key characteristics of biological neural networks,such as sparsity,scale-freeness,and small-worldness.The concept of sparse and scale-free neural networks has been introduced to fill this gap.Network sparsity is implemented by removing weak weights between neurons during the learning process and replacing them with random weights.When the network is initialized,the neural network is fully connected,which means the number of weights is four times the number of neurons.In this study,considering that a biological neural network has some degree of initial sparsity,we design an ANN with a prescribed level of initial sparsity.The neural network is tested on handwritten digits,Arabic characters,CIFAR-10,and Reuters newswire topics.Simulations show that it is possible to reduce the number of weights by up to 50%without losing prediction accuracy.Moreover,in both cases,the testing time is dramatically reduced compared with fully connected ANNs. 展开更多
关键词 SPARSITY weak weights multi-layer neural network NN training with initial sparsity
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
Hausdorff Dimension of Multi-Layer Neural Networks
5
作者 Jung-Chao Ban Chih-Hung Chang 《Advances in Pure Mathematics》 2013年第9期9-14,共6页
This elucidation investigates the Hausdorff dimension of the output space of multi-layer neural networks. When the factor map from the covering space of the output space to the output space has a synchronizing word, t... This elucidation investigates the Hausdorff dimension of the output space of multi-layer neural networks. When the factor map from the covering space of the output space to the output space has a synchronizing word, the Hausdorff dimension of the output space relates to its topological entropy. This clarifies the geometrical structure of the output space in more details. 展开更多
关键词 multi-layer neural networks HAUSDORFF DIMENSION Sofic SHIFT OUTPUT Space
在线阅读 下载PDF
Learning Performance of Linear and Exponential Activity Function with Multi-layered Neural Networks
6
作者 Betere Job Isaac Hiroshi Kinjo +1 位作者 Kunihiko Nakazono Naoki Oshiro 《Journal of Electrical Engineering》 2018年第5期289-294,共6页
This paper presents a study on the improvement of MLNNs(multi-layer neural networks)performance by an activity function for multi logic training patterns.Our model network has L hidden layers of two inputs and three,f... This paper presents a study on the improvement of MLNNs(multi-layer neural networks)performance by an activity function for multi logic training patterns.Our model network has L hidden layers of two inputs and three,four to six output training using BP(backpropagation)neural network.We used logic functions of XOR(exclusive OR),OR,AND,NAND(not AND),NXOR(not exclusive OR)and NOR(not OR)as the multi logic teacher signals to evaluate the training performance of MLNNs by an activity function for information and data enlargement in signal processing(synaptic divergence state).We specifically used four activity functions from which we modified one and called it L&exp.function as it could give the highest training abilities compared to the original activity functions of Sigmoid,ReLU and Step during simulation and training in the network.And finally,we propose L&exp.function as being good for MLNNs and it may be applicable for signal processing of data and information enlargement because of its performance training characteristics with multiple training logic patterns hence can be adopted in machine deep learning. 展开更多
关键词 multi-layer neural networks LEARNING performance multi logic training patterns ACTIVITY FUNCTION bp neural network deep LEARNING
在线阅读 下载PDF
Study on Remote Sensing of Water Depths Based on BP Artificial Neural Network 被引量:4
7
作者 王艳姣 张培群 +1 位作者 董文杰 张鹰 《Marine Science Bulletin》 CAS 2007年第1期26-35,共10页
A momentum BP neural network model (MBPNNM) was constructed to retrieve the water depth information for the South Channel of the Yangtze River Estuary using the relationship between the reflectance derived from Land... A momentum BP neural network model (MBPNNM) was constructed to retrieve the water depth information for the South Channel of the Yangtze River Estuary using the relationship between the reflectance derived from Landsat 7 satellite data and the water depth information. Results showed that MBPNNM, which exhibited a strong capability of nonlinear mapping, allowed the water depth information in the study area to be retrieved at a relatively high level of accuracy. Affected by the sediment concentration of water in the estuary, MBPNNM enabled the retrieval of water depth of less than 5 meters accurately. However, the accuracy was not ideal for the water depths of more than 10 meters. 展开更多
关键词 Yangtze River Estuary bp neural network water-depth remote sensing retrieval model
在线阅读 下载PDF
Study on the Model of Excessive Staminate Catkin Thinning of Proterandrous Walnut Based on Quadratic Polynomial Regression Equation and BP Artificial Neural Network 被引量:1
8
作者 王贤萍 曹贵寿 +4 位作者 杨晓华 张倩茹 李凯 李鸿雁 段泽敏 《Agricultural Science & Technology》 CAS 2015年第6期1295-1300,共6页
The excessive staminate catkin thinning (emasculation) of proterandrous walnut is an important management measure for improving yield. To improve the excessive staminate catkin thinning efficiency, the model of quad... The excessive staminate catkin thinning (emasculation) of proterandrous walnut is an important management measure for improving yield. To improve the excessive staminate catkin thinning efficiency, the model of quadratic polynomial regression equation and BP artificial neural network was developed. The effects of ethephon, gibberel in and mepiquat on shedding rate of staminate catkin of pro-terandrous walnut were investigated by modeling field test. Based on the modeling test results, the excessive staminate catkin thinning model of quadratic polynomial regression equation and BP artificial neural network was established, and it was validated by field test next year. The test data were divided into training set, vali-dation set and test set. The total 20 sets of data obtained from the modeling field test were randomly divided into training set (17) and validation set (3) by central composite design (quadric rotational regression test design), and the data obtained from the next-year field test were divided into the test set. The topological struc-ture of BP artificial neural network was 3-5-1. The results showed that the pre-diction errors of BP neural network for samples from the validation set were 1.355 0%, 0.429 1% and 0.353 8%, respectively; the difference between the predicted value by the BP neural network and validated value by field test was 2.04%, and the difference between the predicted value by the regression equation and validated value by field test was 3.12%; the prediction accuracy of BP neural network was over 1.0% higher than that of regression equation. The effective combination of quadratic polynomial stepwise regression and BP artificial neural network wil not only help to determine the effect of independent parameter but also improve the prediction accuracy. 展开更多
关键词 WALNUT THINNING bp artificial neural network Regression PREDICTION
在线阅读 下载PDF
Quantitative Detection Model of Pernicious Gases in Pig House Based on BP Neural Network
9
作者 俞守华 张洁芳 区晶莹 《Animal Husbandry and Feed Science》 CAS 2009年第3期40-43,48,共5页
To find a neural network model suitable to identify the concentration of mixed pernicious gases in pig house, the quantitative detection model of pernicious gases in pig house was set up based on BP ( Back propagatio... To find a neural network model suitable to identify the concentration of mixed pernicious gases in pig house, the quantitative detection model of pernicious gases in pig house was set up based on BP ( Back propagation) neural network. The BP neural network was trained separately by the three functions, trainbr, traingdm and trainlm, in order to identify the concentration of mixed pernicious gases composed of ammonia gas and hepatic gas. The neural network toolbox in MATLAB software was used to simulate the detection. The results showed that the neural network trained by trainbr function has high average identification accuracy and faster detection speed, and it is also insensitive to noise; therefore, it is suitable to identify the concentration of pemidous gases in pig house. These data provide a reference for intelligent monitoring of pemicious gases in pigsty. 展开更多
关键词 bp neural network pig house -Quantitative detection of gas
在线阅读 下载PDF
Prediction of Injection-Production Ratio with BP Neural Network
10
作者 袁爱武 郑晓松 王东城 《Petroleum Science》 SCIE CAS CSCD 2004年第4期62-65,共4页
Injection of water to enhance oil production is commonplace, and improvements in understanding the process are economically important. This study examines predictive models of the injection-to-production ratio. First... Injection of water to enhance oil production is commonplace, and improvements in understanding the process are economically important. This study examines predictive models of the injection-to-production ratio. Firstly, the error between the fitting and actual injection-production ratio is calculated with such methods as the injection-production ratio and water-oil ratio method, the material balance method, the multiple regression method, the gray theory GM (1,1) model and the back-propogation (BP) neural network method by computer applications in this paper. The relative average errors calculated are respectively 1.67%, 1.08%, 19.2%, 1.38% and 0.88%. Secondly, the reasons for the errors from different prediction methods are analyzed theoretically, indicating that the prediction precision of the BP neural network method is high, and that it has a better self-adaptability, so that it can reflect the internal relationship between the injection-production ratio and the influencing factors. Therefore, the BP neural network method is suitable to the prediction of injection-production ratio. 展开更多
关键词 Injection-production ratio (IPR) bp neural network gray theory PREDICTION
原文传递
基于多算法优化BP神经网络的机床主轴振动监控方法
11
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
在线阅读 下载PDF
基于BP神经网络的成都砂卵石离散元模型细观参数标定研究
12
作者 袁胜洋 练小莲 +3 位作者 周伟星 李城栋 谷耀 刘先峰 《铁道学报》 北大核心 2026年第1期140-150,共11页
砂卵石土广泛分布于成都地区,受颗粒粒径限制,采用常规试验手段研究其力学特性时,耗时长且成本高。离散元数值试验是研究砂卵石力学特性的一有效手段,但颗粒间细观参数难以确定。基于砂卵石三轴试验,通过统计真实颗粒圆度和纵横比,采用... 砂卵石土广泛分布于成都地区,受颗粒粒径限制,采用常规试验手段研究其力学特性时,耗时长且成本高。离散元数值试验是研究砂卵石力学特性的一有效手段,但颗粒间细观参数难以确定。基于砂卵石三轴试验,通过统计真实颗粒圆度和纵横比,采用凸包法生成不规则颗粒,利用三维离散元软件构建考虑砂卵石颗粒形貌特征的数值模型。基于不同细观参数试算得到的25组数据建立神经网络,采用BP神经网络反演方式标定模型参数,分别采用莱文贝格-马夸特方法、贝叶斯正则化方法和量化共轭梯度法对数据进行训练。使用后验差分析法评估3种方法预测的模型数据精度。结果表明:使用贝叶斯正则化方法得出的预测参数精度最高,确定的砂卵石土颗粒法切向刚度比k、摩擦系数f分别为1.633、0.831;基于该细观参数,对不同细粒含量的砂卵石三轴试验进行模拟,模型数据和试验数据误差基本都在±10%以内,表明BP神经网络可用于砂卵石模型颗粒法切向刚度比和摩擦系数标定。 展开更多
关键词 砂卵石 不规则颗粒 三维离散元 bp神经网络 细观参数标定
在线阅读 下载PDF
基于感性工学与BP神经网络的电动修枝剪造型设计优化
13
作者 杨梅 张帆 苏兆婧 《工业设计》 2026年第2期143-146,共4页
文章从用户情感需求与产品造型设计要素出发,结合数学模型相关理论与方法构建回归模型,实现高适应性的产品设计,从而解决目标产品设计与用户实际需求难以深度匹配的问题。首先,采用语义差异量表法,系统收集用户对目标产品的感性意象量... 文章从用户情感需求与产品造型设计要素出发,结合数学模型相关理论与方法构建回归模型,实现高适应性的产品设计,从而解决目标产品设计与用户实际需求难以深度匹配的问题。首先,采用语义差异量表法,系统收集用户对目标产品的感性意象量化数据,并进行归纳与分类;其次,对目标产品模型进行模块化分解,对各模块进行数字化编码,利用所获得的情感意象评价值与模型数据进行模型训练;最后,通过二次语义差异法问卷实验验证方法的有效性。在此基础上,基于BP神经网络预测情感评价最优的产品造型,并进行第二轮用户问卷评分,以检验模型精度。该方法有助于缓解农业工具设计实践中主观需求向客观设计转化过程中存在的匹配不足问题。 展开更多
关键词 工业设计 bp神经网络 遗传算法 感性工学 电动修枝剪
在线阅读 下载PDF
基于PSO-BP的水质监测系统设计
14
作者 张凌飞 赵明玉 +2 位作者 赵展文 陈博行 陈洋洋 《现代电子技术》 北大核心 2026年第4期33-41,共9页
为提高水质监测系统覆盖范围并提升系统鲁棒性,设计一种以LoRa技术为通信方式,结合BP神经网络的水质监测系统。利用多节点采集水质的温度、pH值、总溶解固体(TDS)、氧化还原电位(ORP)等参数,通过无线传输技术将数据传输至汇聚节点,之后... 为提高水质监测系统覆盖范围并提升系统鲁棒性,设计一种以LoRa技术为通信方式,结合BP神经网络的水质监测系统。利用多节点采集水质的温度、pH值、总溶解固体(TDS)、氧化还原电位(ORP)等参数,通过无线传输技术将数据传输至汇聚节点,之后上传至云端物联网平台并实时下载到本地数据库,以支持网络模型处理和数据可视化分析,实现了多区域信息采集。再结合粒子群优化(PSO)算法优化BP神经网络的水质参数预测模型,实现对水质参数的预测补充,以提高系统的鲁棒性。通过实验验证系统水质信息采集的准确性以及参数预测模型的可靠性,结果表明,粒子群优化算法优化的BP神经网络模型对于pH值、温度、TDS和ORP四个参数的预测平均绝对百分比误差分别降低0.8269%、1.9475%、1.1039%和0.3125%,能够满足监测系统的需求。 展开更多
关键词 水质监测 无线传输 LoRa技术 粒子群优化算法 bp神经网络 参数预测
在线阅读 下载PDF
基于GA-BP神经网络的碳纤维复合芯导线压接缺陷识别方法
15
作者 杜志叶 黄子韧 +2 位作者 俸波 岳国华 廖永力 《电工技术学报》 北大核心 2026年第1期315-328,共14页
碳纤维复合芯导线因其低碳节能等特性,在输电线路的增容改造中有着良好的应用前景。但碳纤维芯棒十分脆弱,技术工艺不成熟,由于压接不良导致的断线事故时有发生,制约了该技术的推广应用。为此,该文针对断裂和少压两种严重压接缺陷,提出... 碳纤维复合芯导线因其低碳节能等特性,在输电线路的增容改造中有着良好的应用前景。但碳纤维芯棒十分脆弱,技术工艺不成熟,由于压接不良导致的断线事故时有发生,制约了该技术的推广应用。为此,该文针对断裂和少压两种严重压接缺陷,提出一种碳纤维复合芯导线压接缺陷的漏磁检测信号缺陷特征提取方法。通过实验优化,以漏磁检测信号数据中7个峰值点的幅值、21个相对位置信息和7个波形类型信息作为缺陷判断特征值,有效地提高了缺陷种类和缺陷程度识别的准确度。对碳纤维芯导线进行磁性制备,并研制相对应的漏磁检测装置,生产106根不同类型、不同程度的碳纤维芯压接缺陷样品,得到613组漏磁检测信号数据并完成特征值提取,搭建基于遗传算法(GA)的反向传播(BP)神经网络。实测数据表明,该方法可以有效地完成对碳纤维复合芯导线压接缺陷类型的识别,同时对缺陷程度的识别准确率可达到94.31%。 展开更多
关键词 碳纤维复合芯导线 缺陷识别 磁性制备 漏磁检测 遗传算法 bp神经网络
在线阅读 下载PDF
基于BP神经网络的混凝土热学参数反演方法及应用
16
作者 田仲初 赵望 +2 位作者 张祖军 彭涛 林乐鑫 《交通科学与工程》 2026年第1期134-142,共9页
【目的】解决大体积混凝土温度场仿真计算中热学参数与施工现场实际情况不符的问题。【方法】采用BP神经网络对温度场仿真计算所需的热学参数进行反演分析,首先通过均匀设计理论与温度场有限元法分析,构造BP神经网络的训练样本以及测试... 【目的】解决大体积混凝土温度场仿真计算中热学参数与施工现场实际情况不符的问题。【方法】采用BP神经网络对温度场仿真计算所需的热学参数进行反演分析,首先通过均匀设计理论与温度场有限元法分析,构造BP神经网络的训练样本以及测试样本;然后通过L-M算法优化BP神经网络,拟合出测点温度与热学参数的非线性关系;最后,将施工现场实测温度值输入优化后的网络,实现多个热力学参数的同步反演分析,在巴洛河主墩承台大体积混凝土施工中反演绝热温升、导热系数与表面放热系数。【结果】基于L-M算法优化后的BP神经网络能加快网络收敛速度,且反演参数对应的温度计算值与温度实测值吻合良好。【结论】将均匀设计理论引入BP神经网络反演分析中能有效地提高反演分析的效率,该研究成果能够为大体积混凝土施工温度场仿真计算提供指导,进而辅助温控施工。 展开更多
关键词 桥梁工程 大体积混凝土 bp神经网络 均匀设计 热力学参数 参数反演
在线阅读 下载PDF
基于GOA-BP的海域蒸发波导智能预报方法
17
作者 文凯 闫晓龙 廖希 《电波科学学报》 北大核心 2026年第1期187-196,共10页
面向对流层超视距通信对大区域高分辨率蒸发波导高度的精确性预报需求,提出了一种融合塘鹅优化算法(gannet optimization algorithm, GOA)和反向传播(back propagation, BP)神经网络的预报模型,即GOABP模型。首先利用天气研究和预报模型... 面向对流层超视距通信对大区域高分辨率蒸发波导高度的精确性预报需求,提出了一种融合塘鹅优化算法(gannet optimization algorithm, GOA)和反向传播(back propagation, BP)神经网络的预报模型,即GOABP模型。首先利用天气研究和预报模型(weather research and forecasting model, WRF)中尺度数值模式,获得区域环境气象参数;其次,结合美国海军研究生院NPS模型预报蒸发波导高度,构建出包含环境信息与蒸发波导高度预报值的联合数据集;再次,引入GOA优化BP神经网络的初始参数,显著增强模型的全局搜索能力和收敛速度,规避传统BP神经网络易于陷入局部最优解的缺陷;最后,经过训练得到GOA-BP模型。实验表明,GOABP模型决定系数达到0.972 1,验证均方根误差(root mean square error, RMSE)平均值为2.24 m,说明GOABP模型能够更准确有效地预报蒸发波导高度。本文方法可为超短波/微波超视距雷达和无线电通信系统规划和应用提供参考。 展开更多
关键词 蒸发波导预报 WRF NPS模型 反向传播(bp)神经网络 塘鹅优化算法(GOA)
在线阅读 下载PDF
基于改进BP神经网络的物联网安全态势感知方法
18
作者 陈伟伟 《计算机应用文摘》 2026年第5期225-227,共3页
针对现有物联网安全态势感知方法在精准度与稳定性方面的不足,文章提出一种基于改进BP神经网络的安全态势感知方法。首先,构建安全态势感知模型,对不同应用场景下的攻击概率进行量化分析,准确定位安全薄弱环节。其次,引入LM(Levenberg-M... 针对现有物联网安全态势感知方法在精准度与稳定性方面的不足,文章提出一种基于改进BP神经网络的安全态势感知方法。首先,构建安全态势感知模型,对不同应用场景下的攻击概率进行量化分析,准确定位安全薄弱环节。其次,引入LM(Levenberg-Marquardt)算法对BP神经网络进行改进,增强其对复杂非线性网络安全态势的辨识能力。在此基础上,设计安全态势评分函数,实现对系统整体安全态势的量化评估。测试结果表明,该模型对各类攻击场景的预测准确率较高;实验组的态势值始终维持在较低水平,且波动幅度较小,表明该方法在有效控制安全态势值、提升感知稳定性方面具有明显优势。 展开更多
关键词 bp神经网络 物联网 态势感知 算法改进 安全
在线阅读 下载PDF
Spatial Interpolation of Soil Nutrients Based on BP Neural Network 被引量:3
19
作者 李晴 程家昌 胡月明 《Agricultural Science & Technology》 CAS 2014年第3期506-511,共6页
With Zengcheng City, Guangdong Province, as the object of study, 200 soil sampling points were col ected for the spatial interpolation prediction of soil properties by using Kriging method and BP neural network method... With Zengcheng City, Guangdong Province, as the object of study, 200 soil sampling points were col ected for the spatial interpolation prediction of soil properties by using Kriging method and BP neural network method. After comparing the interpolation results with the measured values, the root mean square error of the prediction data was obtained. The results showed that the interpolation accuracy of BP neural network was higher than that of Kriging method under the same cir-cumstances, and there was no smoothness in using BP neural network method when there were few sample points. In addition, with no requirement on the distri-bution of sample data, BP neural network method had stronger generalization ability than traditional interpolation method, which was an alternative interpolation method. 展开更多
关键词 bp neural network Soil nutrients Spatial prediction KRIGING
在线阅读 下载PDF
融合CUSUM方法与BP神经网络的实际供热管网分级泄漏检测
20
作者 周守军 刘晓康 +3 位作者 王耀龙 刘书豪 董建敏 赵一林 《暖通空调》 2026年第3期139-144,共6页
为解决目前供热管网泄漏故障检测困难、效率低的现状,本文提出了一种融合CUSUM(累积和)与BP神经网络(BPNN)的管网泄漏故障分级检测系统。该系统首先采用CUSUM方法(一级)检测供热管网补水流量并判断是否泄漏,如果该管网泄漏,则再采用BP... 为解决目前供热管网泄漏故障检测困难、效率低的现状,本文提出了一种融合CUSUM(累积和)与BP神经网络(BPNN)的管网泄漏故障分级检测系统。该系统首先采用CUSUM方法(一级)检测供热管网补水流量并判断是否泄漏,如果该管网泄漏,则再采用BP神经网络(二级)对泄漏位置进行精确定位。以某矿区实际供热管网为研究对象,结合其供暖期内运行数据与仿真数据,以PCA(主成分分析)方法及数据归一化进行数据处理,构建并训练了实际供热管网泄漏位置检测的BPNN模型,最终开发了该矿区的CUSUM-BPNN供热管网泄漏故障分级检测系统。使用现场供回水管道排污阀对泄漏进行模拟,采用该系统对3个换热站及其供热管网分别进行了测试,结果表明,该系统能够准确判断泄漏故障并快速定位泄漏点所在管段,泄漏报警延迟时间在2 min之内,很少出现故障未报或者误报的情况,验证了本文所开发系统的可靠性和高效性。 展开更多
关键词 供热管网 泄漏检测 CUSUM bp神经网络 仿真模型 主成分分析
在线阅读 下载PDF
上一页 1 2 250 下一页 到第
使用帮助 返回顶部