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DAMAGE DETECTION IN STRUCTURES USING MODIFIED BACK-PROPAGATION NEURAL NETWORKS 被引量:6
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作者 Sima Yuzhou 《Acta Mechanica Solida Sinica》 SCIE EI 2002年第4期358-370,共13页
A nonparametric structural damage detection methodology based on neuralnetworks method is presented for health monitoring of structure-unknown systems. In this approachappropriate neural networks are trained by use of... A nonparametric structural damage detection methodology based on neuralnetworks method is presented for health monitoring of structure-unknown systems. In this approachappropriate neural networks are trained by use of the modal test data from a 'healthy' structure.The trained networks which are subsequently fed with vibration measurements from the same structurein different stages have the capability of recognizing the location and the content of structuraldamage and thereby can monitor the health of the structure. A modified back-propagation neuralnetwork is proposed to solve the two practical problems encountered by the traditionalback-propagation method, i.e., slow learning progress and convergence to a false local minimum.Various training algorithms, types of the input layer and numbers of the nodes in the input layerare considered. Numerical example results from a 5-degree-of-freedom spring-mass structure andanalyses on the experimental data of an actual 5-storey-steel-frame demonstrate thatneural-networks-based method is a robust procedure and a practical tool for the detection ofstructural damage, and that the modified back-propagation algorithm could improve the computationalefficiency as well as the accuracy of detection. 展开更多
关键词 neural network modified back-propagation damage detection modal testdata health monitoring
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ELMAN Neural Network with Modified Grey Wolf Optimizer for Enhanced Wind Speed Forecasting 被引量:6
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作者 M. Madhiarasan S. N. Deepa 《Circuits and Systems》 2016年第10期2975-2995,共21页
The scope of this paper is to forecast wind speed. Wind speed, temperature, wind direction, relative humidity, precipitation of water content and air pressure are the main factors make the wind speed forecasting as a ... The scope of this paper is to forecast wind speed. Wind speed, temperature, wind direction, relative humidity, precipitation of water content and air pressure are the main factors make the wind speed forecasting as a complex problem and neural network performance is mainly influenced by proper hidden layer neuron units. This paper proposes new criteria for appropriate hidden layer neuron unit’s determination and attempts a novel hybrid method in order to achieve enhanced wind speed forecasting. This paper proposes the following two main innovative contributions 1) both either over fitting or under fitting issues are avoided by means of the proposed new criteria based hidden layer neuron unit’s estimation. 2) ELMAN neural network is optimized through Modified Grey Wolf Optimizer (MGWO). The proposed hybrid method (ELMAN-MGWO) performance, effectiveness is confirmed by means of the comparison between Grey Wolf Optimizer (GWO), Adaptive Gbest-guided Gravitational Search Algorithm (GGSA), Artificial Bee Colony (ABC), Ant Colony Optimization (ACO), Cuckoo Search (CS), Particle Swarm Optimization (PSO), Evolution Strategy (ES), Genetic Algorithm (GA) algorithms, meanwhile proposed new criteria effectiveness and precise are verified comparison with other existing selection criteria. Three real-time wind data sets are utilized in order to analysis the performance of the proposed approach. Simulation results demonstrate that the proposed hybrid method (ELMAN-MGWO) achieve the mean square error AVG ± STD of 4.1379e-11 ± 1.0567e-15, 6.3073e-11 ± 3.5708e-15 and 7.5840e-11 ± 1.1613e-14 respectively for evaluation on three real-time data sets. Hence, the proposed hybrid method is superior, precise, enhance wind speed forecasting than that of other existing methods and robust. 展开更多
关键词 ELMAN neural network modified Grey Wolf Optimizer Hidden Layer Neuron Units Forecasting Wind Speed
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Research on Novel Natural Image Reconstruction and Representation Algorithm based on Clustering and Modified Neural Network
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作者 LU Dong-xing 《International Journal of Technology Management》 2015年第10期67-69,共3页
In this paper, we conduct research on the novel natural image reconstruction and representation algorithm based on clustenng and modified neural network. Image resolution enhancement is one of the earliest researches ... In this paper, we conduct research on the novel natural image reconstruction and representation algorithm based on clustenng and modified neural network. Image resolution enhancement is one of the earliest researches of single image interpolation. Although the traditional interpolation and method for single image amplification is effect, but did not provide more useful information. Our method combines the neural network and the clustering approach. The experiment shows that our method performs well and satisfactory. 展开更多
关键词 Natural Image Clustering Method modified neural network Image Representation.
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Accelerating the Screening of Modified MA_(2)Z_(4) Catalysts for Hydrogen Evolution Reaction by Deep Learning-Based Local Geometric Analysis
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作者 Jingnan Zheng Shibin Wang +3 位作者 Shengwei Deng Zihao Yao Junhua Hu Jianguo Wang 《Energy & Environmental Materials》 SCIE EI CAS CSCD 2024年第6期290-302,共13页
Machine learning(ML)integrated with density functional theory(DFT)calculations have recently been used to accelerate the design and discovery of single-atom catalysts(SACs)by establishing deep structure–activity rela... Machine learning(ML)integrated with density functional theory(DFT)calculations have recently been used to accelerate the design and discovery of single-atom catalysts(SACs)by establishing deep structure–activity relationships.The traditional ML models are always difficult to identify the structural differences among the single-atom systems with different modification methods,leading to the limitation of the potential application range.Aiming to the structural properties of several typical two-dimensional MA_(2)Z_(4)-based single-atom systems(bare MA_(2)Z_(4) and metal single-atom doped/supported MA_(2)Z_(4)),an improved crystal graph convolutional neural network(CGCNN)classification model was employed,instead of the traditional machine learning regression model,to address the challenge of incompatibility in the studied systems.The CGCNN model was optimized using crystal graph representation in which the geometric configuration was divided into active layer,surface layer,and bulk layer(ASB-GCNN).Through ML and DFT calculations,five potential single-atom hydrogen evolution reaction(HER)catalysts were screened from chemical space of 600 MA_(2)Z_(4)-based materials,especially V_(1)/HfSn_(2)N_(4)(S)with high stability and activity(Δ_(GH*)is 0.06 eV).Further projected density of states(pDOS)analysis in combination with the wave function analysis of the SAC-H bond revealed that the SAC-dz^(2)orbital coincided with the H-s orbital around the energy level of−2.50 eV,and orbital analysis confirmed the formation ofσbonds.This study provides an efficient multistep screening design framework of metal single-atom catalyst for HER systems with similar two-dimensional supports but different geometric configurations. 展开更多
关键词 graph convolutional neural network hydrogen evolution reaction modified MA_(2)Z_(4) substrate single atom catalyst
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Fault Prediction of Elevator Door System Based on PSO-BP Neural Network 被引量:5
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作者 Penggao Wen Meng Zhi +1 位作者 Guangyao Zhang Shengmao Li 《Engineering(科研)》 2016年第11期761-766,共7页
Nowadays, the elevator has become an indispensable means of indoor transportation in people’s life, but in recent years this kind of traffic tools has caused many casualties because of the gate system fault. In order... Nowadays, the elevator has become an indispensable means of indoor transportation in people’s life, but in recent years this kind of traffic tools has caused many casualties because of the gate system fault. In order to ensure the safe and reliable operation of the elevator, the failure of elevator door system was predicted in this paper. Against the fault type of elevator door system: elevator door opened, excessive vibration when elevator door opened or closed, elevator door did not open or closed when reached the specified level. Three fault types were used as the output of the prediction model. There were 8 reasons for the failure, used them as input. A model based on particle swarm optimization (PSO) and BP neural network was established, using MATLAB to emulation;the results showed that: PSO-BP neural network algorithm was feasible in the fault prediction of the elevator door system. 展开更多
关键词 Elevator Door System Gate System Fault Fault Prediction pso-bp neural network
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Multi-Source Underwater DOA Estimation Using PSO-BP Neural Network Based on High-Order Cumulant Optimization
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作者 Haihua Chen Jingyao Zhang +3 位作者 Bin Jiang Xuerong Cui Rongrong Zhou Yucheng Zhang 《China Communications》 SCIE CSCD 2023年第12期212-229,共18页
Due to the complex and changeable environment under water,the performance of traditional DOA estimation algorithms based on mathematical model,such as MUSIC,ESPRIT,etc.,degrades greatly or even some mistakes can be ma... Due to the complex and changeable environment under water,the performance of traditional DOA estimation algorithms based on mathematical model,such as MUSIC,ESPRIT,etc.,degrades greatly or even some mistakes can be made because of the mismatch between algorithm model and actual environment model.In addition,the neural network has the ability of generalization and mapping,it can consider the noise,transmission channel inconsistency and other factors of the objective environment.Therefore,this paper utilizes Back Propagation(BP)neural network as the basic framework of underwater DOA estimation.Furthermore,in order to improve the performance of DOA estimation of BP neural network,the following three improvements are proposed.(1)Aiming at the problem that the weight and threshold of traditional BP neural network converge slowly and easily fall into the local optimal value in the iterative process,PSO-BP-NN based on optimized particle swarm optimization(PSO)algorithm is proposed.(2)The Higher-order cumulant of the received signal is utilized to establish the training model.(3)A BP neural network training method for arbitrary number of sources is proposed.Finally,the effectiveness of the proposed algorithm is proved by comparing with the state-of-the-art algorithms and MUSIC algorithm. 展开更多
关键词 gaussian colored noise higher-order cumulant multiple sources particle swarm optimization(PSO)algorithm pso-bp neural network
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Formation of TiO2 Modified Film on Carbon Steel 被引量:2
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作者 LaizhouSONG ShizheSONG ZhimingGAO 《Journal of Materials Science & Technology》 SCIE EI CAS CSCD 2004年第5期599-601,共3页
A new technique for preparing TiO2 modified film on carbon steel was accomplished by electroless plating and sol-gel composite process. The artificial neural network was applied to optimize the preparing condition of ... A new technique for preparing TiO2 modified film on carbon steel was accomplished by electroless plating and sol-gel composite process. The artificial neural network was applied to optimize the preparing condition of TiO2 modified film. The optimized condition for forming TiO2 modified film on carbon steel was that NiP plating for 50 min, dip-coating times as 4, heat treatment time for 2 h, and the molar ratio of complexing agent and Ti(OC4HZ9)4 kept 1.5:1. The results showed that TiO2 modified film have good corrosion resistance. The result conformed that it is feasible to design the preparing conditions of TiO2 modified film by artificial neural network. 展开更多
关键词 Electroless plating Sol-gel composite process Artificial neural network TiO2 modified film Corrosion resistance
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SPEECH EMOTION RECOGNITION USING MODIFIED QUADRATIC DISCRIMINATION FUNCTION 被引量:9
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作者 Zhao Yan Zhao Li Zou Cairong Yu Yinhua 《Journal of Electronics(China)》 2008年第6期840-844,共5页
Quadratic Discrimination Function (QDF) is commonly used in speech emotion recognition, which proceeds on the premise that the input data is normal distribution. In this paper, we propose a transformation to normali... Quadratic Discrimination Function (QDF) is commonly used in speech emotion recognition, which proceeds on the premise that the input data is normal distribution. In this paper, we propose a transformation to normalize the emotional features, emotion recognition. Features based on prosody then derivate a Modified QDF (MQDF) to speech and voice quality are extracted and Principal Component Analysis Neural Network (PCANN) is used to reduce dimension of the feature vectors. The results show that voice quality features are effective supplement for recognition, and the method in this paper could improve the recognition ratio effectively. 展开更多
关键词 Speech emotion recognition Principal Component Analysis neural network (PCANN) modified Quadratic Discrimination Function (MQDF)
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Parallel Physics-Informed Neural Networks Method with Regularization Strategies for the Forward-Inverse Problems of the Variable Coefficient Modified KdV Equation 被引量:1
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作者 ZHOU Huijuan 《Journal of Systems Science & Complexity》 SCIE EI CSCD 2024年第2期511-544,共34页
This paper mainly introduces the parallel physics-informed neural networks(PPINNs)method with regularization strategies to solve the data-driven forward-inverse problems of the variable coefficient modified Korteweg-d... This paper mainly introduces the parallel physics-informed neural networks(PPINNs)method with regularization strategies to solve the data-driven forward-inverse problems of the variable coefficient modified Korteweg-de Vries(VC-MKdV)equation.For the forward problem of the VC-MKdV equation,the authors use the traditional PINN method to obtain satisfactory data-driven soliton solutions and provide a detailed analysis of the impact of network width and depth on solving accuracy and speed.Furthermore,the author finds that the traditional PINN method outperforms the one with locally adaptive activation functions in solving the data-driven forward problems of the VC-MKdV equation.As for the data-driven inverse problem of the VC-MKdV equation,the author introduces a parallel neural networks to separately train the solution function and coefficient function,successfully addressing the function discovery problem of the VC-MKdV equation.To further enhance the network’s generalization ability and noise robustness,the author incorporates two regularization strategies into the PPINNs.An amount of numerical experimental data in this paper demonstrates that the PPINNs method can effectively address the function discovery problem of the VC-MKdV equation,and the inclusion of appropriate regularization strategies in the PPINNs can improves its performance. 展开更多
关键词 Data-driven forward-inverse problems parallel physics-informed neural networks regularization strategies variable coefficient modified KdV equation
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Gender Identification on Twitter Using the Modified Balanced Winnow
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作者 William Deitrick Zachary Miller +3 位作者 Benjamin Valyou Brian Dickinson Timothy Munson Wei Hu 《Communications and Network》 2012年第3期189-195,共7页
With the rapid growth of web-based social networking technologies in recent years, author identification and analysis have proven increasingly useful. Authorship analysis provides information about a document’s autho... With the rapid growth of web-based social networking technologies in recent years, author identification and analysis have proven increasingly useful. Authorship analysis provides information about a document’s author, often including the author’s gender. Men and women are known to write in distinctly different ways, and these differences can be successfully used to make a gender prediction. Making use of these distinctions between male and female authors, this study demonstrates the use of a simple stream-based neural network to automatically discriminate gender on manually labeled tweets from the Twitter social network. This neural network, the Modified Balanced Winnow, was employed in two ways;the effectiveness of data stream mining was initially examined with an extensive list of n-gram features. Feature selection techniques were then evaluated by drastically reducing the feature list using WEKA’s attribute selection algorithms. This study demonstrates the effectiveness of the stream mining approach, achieving an accuracy of 82.48%, a 20.81% increase above the baseline prediction. Using feature selection methods improved the results by an additional 16.03%, to an accuracy of 98.51%. 展开更多
关键词 GENDER IDENTIFICATION TWITTER modified BALANCED WINNOW neural networks Stream Data Mining Feature Selection
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结合面法向和切向接触刚度的MPSO-BP神经网络算法的建模 被引量:13
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作者 杨红平 傅卫平 +2 位作者 王雯 师彪 杨世强 《仪器仪表学报》 EI CAS CSCD 北大核心 2012年第8期1856-1861,共6页
提出一种基于改进的粒子群和BP神经网络相结合的算法模型,用改进粒子群优化算法优化BP神经网络参数。以机械结合面法向接触刚度和切向接触刚度作为算例。考虑结合面配对副材料、接触载荷、表面加工方法、表面粗糙度和结合面间的介质作... 提出一种基于改进的粒子群和BP神经网络相结合的算法模型,用改进粒子群优化算法优化BP神经网络参数。以机械结合面法向接触刚度和切向接触刚度作为算例。考虑结合面配对副材料、接触载荷、表面加工方法、表面粗糙度和结合面间的介质作为主要因素,对8组结合面法向和切向接触刚度进行预测建模,并对仿真与实验结果进行比较与误差分析。结果表明,该方法实现了多种影响因素组合下的机械结合面法向和切向接触刚度较高精度的建模和预测。 展开更多
关键词 改进PSO—BP神经网络算法 法向和切向接触刚度 预测
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改进PSO-BP注塑成型工艺参数优化研究 被引量:7
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作者 韩淑华 侯学元 李文卿 《机械设计与制造》 北大核心 2015年第10期98-101,105,共5页
针对注塑过程当中影响塑件质量的多个工艺参数配置问题,提出改进粒子群算法、BP神经网络、灰色关联度相融合的成型工艺参数优化模型。首先,针对BP易陷入局部最优、收敛效率低的不足,改进粒子群算法中粒子速度与位置更新策略并优化BP算... 针对注塑过程当中影响塑件质量的多个工艺参数配置问题,提出改进粒子群算法、BP神经网络、灰色关联度相融合的成型工艺参数优化模型。首先,针对BP易陷入局部最优、收敛效率低的不足,改进粒子群算法中粒子速度与位置更新策略并优化BP算法的权值和阈值,从而构建起工艺参数预测模型。在此基础上,以正交实验数据为训练样本,Moldflow软件分析结果为输出样本,灰色关联度为粒子群适应度函数,进而由粒子群算法寻得最佳的工艺参数。实验结果表明,该方法能够更快、更好的获得注塑成型中的工艺参数,且以此工艺参数进行实验,塑件的翘曲变形量、收缩率均较小。 展开更多
关键词 注塑成型 工艺参数优化 BP神经网络 改进粒子群算法
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基于MPSO-BP模型的小半径弯管成形结果快速预测 被引量:4
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作者 赵阳 刘俊 +1 位作者 唐文勇 邹双桂 《塑性工程学报》 CAS CSCD 北大核心 2018年第3期122-128,共7页
选取起皱率、扁平率和减薄率作为小半径弯管成形结果的考察指标,采用1次1因子法对影响因子进行筛选,最终选取管件直径、厚度、芯棒伸出量和芯棒与管件内侧之间的间隙值作为考察的影响因子。利用数值模拟手段针对小半径弯管的考察指标和... 选取起皱率、扁平率和减薄率作为小半径弯管成形结果的考察指标,采用1次1因子法对影响因子进行筛选,最终选取管件直径、厚度、芯棒伸出量和芯棒与管件内侧之间的间隙值作为考察的影响因子。利用数值模拟手段针对小半径弯管的考察指标和影响因子建立样本库,并随机选取其中12组作为测试样本,剩余作为训练样本,结合BP神经网络和改进的粒子群算法对预测模型进行训练,构建小半径弯管成形结果快速预测的MPSO-BP神经网络预测模型。利用数值模拟和BP模型对MPSO-BP模型的预测结果进行验证和分析,结果表明MPSO-BP神经网络模型的预测结果可靠有效。 展开更多
关键词 小半径弯管 成形指标 BP神经网络 改进粒子群算法 快速预测
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改进PSO-BP神经网络模型在海堤渗压监测中的应用 被引量:5
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作者 蓝祝光 黄铭 《中国农村水利水电》 北大核心 2017年第1期148-151,共4页
针对传统BP神经网络存在收敛速度慢、难以脱离局部极小值的不足,利用改进粒子群算法(PSO)快速的收敛特性和强大的全局搜索能力,将改进的粒子群算法与BP神经网络结合起来,根据海堤特点分类比较渗压的影响因素,采用相关系数法选取主要影... 针对传统BP神经网络存在收敛速度慢、难以脱离局部极小值的不足,利用改进粒子群算法(PSO)快速的收敛特性和强大的全局搜索能力,将改进的粒子群算法与BP神经网络结合起来,根据海堤特点分类比较渗压的影响因素,采用相关系数法选取主要影响因子构建模型输入层,对应渗压作为模型输出层,建立海堤渗压改进PSO-BP监测模型。采用浦东海堤实测信息作为实例进行分析,结果显示,与BP模型相比,改进PSO-BP模型在海堤渗压监测应用中具有更高的收敛速度和更强的预测能力,能更有效地揭示海堤渗压的变化规律。 展开更多
关键词 海堤渗压 改进粒子群算法 神经网络 因子选择 监测模型
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Constitutive modeling of compression behavior of TC4 tube based on modified Arrhenius and artificial neural network models 被引量:5
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作者 Zhi-Jun Tao He Yang +2 位作者 Heng Li Jun Ma Peng-Fei Gao 《Rare Metals》 SCIE EI CAS CSCD 2016年第2期162-171,共10页
Warm rotary draw bending provides a feasible method to form the large-diameter thin-walled(LDTW)TC4 bent tubes, which are widely used in the pneumatic system of aircrafts. An accurate prediction of flow behavior of ... Warm rotary draw bending provides a feasible method to form the large-diameter thin-walled(LDTW)TC4 bent tubes, which are widely used in the pneumatic system of aircrafts. An accurate prediction of flow behavior of TC4 tubes considering the couple effects of temperature,strain rate and strain is critical for understanding the deformation behavior of metals and optimizing the processing parameters in warm rotary draw bending of TC4 tubes. In this study, isothermal compression tests of TC4 tube alloy were performed from 573 to 873 K with an interval of 100 K and strain rates of 0.001, 0.010 and0.100 s^(-1). The prediction of flow behavior was done using two constitutive models, namely modified Arrhenius model and artificial neural network(ANN) model. The predictions of these constitutive models were compared using statistical measures like correlation coefficient(R), average absolute relative error(AARE) and its variation with the deformation parameters(temperature, strain rate and strain). Analysis of statistical measures reveals that the two models show high predicted accuracy in terms of R and AARE. Comparatively speaking, the ANN model presents higher predicted accuracy than the modified Arrhenius model. In addition, the predicted accuracy of ANN model presents high stability at the whole deformation parameter ranges, whereas the predictability of the modified Arrhenius model has some fluctuation at different deformation conditions. It presents higher predicted accuracy at temperatures of 573-773 K, strain rates of 0.010-0.100 s^(-1)and strain of 0.04-0.32, while low accuracy at temperature of 873 K, strain rates of 0.001 s^(-1)and strain of 0.36-0.48.Thus, the application of modified Arrhenius model is limited by its relatively low predicted accuracy at some deformation conditions, while the ANN model presents very high predicted accuracy at all deformation conditions,which can be used to study the compression behavior of TC4 tube at the temperature range of 573-873 K and the strain rate of 0.001-0.100 s^(-1). It can provide guideline for the design of processing parameters in warm rotary draw bending of LDTW TC4 tubes. 展开更多
关键词 TC4 tube Compression behavior Constitutive model modified Arrhenius model neural network model
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Modified artificial neural network model with an explicit expression to describe flow behavior and processing maps of Ti2AlNb-based superalloy
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作者 Yan-qi Fu Qing Zhao +1 位作者 Man-qian Lv Zhen-shan Cui 《Journal of Iron and Steel Research International》 SCIE EI CSCD 2021年第11期1451-1462,共12页
The elevated-temperature deformation behavior of Ti2AlNb superalloy was observed by isothermal compression experiments in a wide range of temperatures(950–1200°C)and strain rates(0.001–10 s^(-1)).The flow behav... The elevated-temperature deformation behavior of Ti2AlNb superalloy was observed by isothermal compression experiments in a wide range of temperatures(950–1200°C)and strain rates(0.001–10 s^(-1)).The flow behavior is nonlinear,strongly coupled,and multivariable.The constitutive models,namely the double multivariate nonlinear regression model,artificial neural network model,and modified artificial neural network model with an explicit expression,were applied to describe the Ti2AlNb superalloy plastic deformation behavior.The comparative predictability of those constitutive models was further evaluated by considering the correlation coefficient and average absolute relative error.The comparative results show that the modified artificial network model can describe the flow stress of Ti2AlNb superalloy more accurately than the other developed constitutive models.The explicit expression obtained from the modified artificial neural network model can be directly used for finite element simulation.The modified artificial neural network model solves the problems that the double multivariate nonlinear regression model cannot describe the nonlinear,strongly coupled,and multivariable flow behavior of Ti2AlNb superalloy accurately,and the artificial neural network model cannot be embedded into the finite element software directly.However,the modified artificial neural network model is mainly dependent on the quantity of high-quality experimental data and characteristic variables,and the modified artificial neural network model has not physical meanings.Besides,the processing maps were applied to obtain the optimum processing parameters. 展开更多
关键词 modified artificial neural network model Ti2AlNb superalloy Double multivariate nonlinear regression model Explicit expression Processing map
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角秒级定位精度气浮转台驱动参数调节方法研究
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作者 李彬 王亚宁 +2 位作者 吴媛媛 任东旭 陈雨涵 《制造技术与机床》 北大核心 2024年第12期158-163,共6页
为实现气浮转台角秒级定位精度,基于20组驱动器经验参数及其定位精度数据,采用改进粒子群算法和BP(back propagation)神经网络对驱动器参数进行优化。该方法以粒子群优化神经网络为基础,通过混沌映射提高粒子位置随机性,引入莱维飞行策... 为实现气浮转台角秒级定位精度,基于20组驱动器经验参数及其定位精度数据,采用改进粒子群算法和BP(back propagation)神经网络对驱动器参数进行优化。该方法以粒子群优化神经网络为基础,通过混沌映射提高粒子位置随机性,引入莱维飞行策略防止局部最优;构建气浮转台进行驱动器参数优化对比试验,经验法整定后转台定位精度为±6.91″,优化整定后转台定位精度为±2.27″,提升67.15%;经验法整定后转台重复定位精度为±5.99″,优化整定后转台重复定位精度为±2.00″,提升66.61%,结果表明所提出的参数优化方法可以较好的提高定位精度。 展开更多
关键词 气浮转台 改进BP神经网络 混沌映射 莱维飞行策略
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基于Gash修正模型与神经网络优化模型的刺槐冠层截留模拟 被引量:1
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作者 马军 韩磊 +3 位作者 周鹏 柳利利 王娜娜 马云蕾 《水土保持研究》 CSCD 北大核心 2024年第4期188-196,共9页
[目的]对比分析Gash修正模型和神经网络模型在模拟和预测人工林冠层截留的适用性,揭示干旱区刺槐冠层截留及其响应过程,为深入了解森林生态水文过程及其调控机制提供科学依据。[方法]于2019年5—10月,以宁夏河东地区刺槐(Robinia pseudo... [目的]对比分析Gash修正模型和神经网络模型在模拟和预测人工林冠层截留的适用性,揭示干旱区刺槐冠层截留及其响应过程,为深入了解森林生态水文过程及其调控机制提供科学依据。[方法]于2019年5—10月,以宁夏河东地区刺槐(Robinia pseudoacacia)人工林为研究对象,定位观测了树干茎流和穿透雨并计算得到冠层截留,采用修正后的Gash模型与神经网络模型对刺槐林林冠截留量进行了模拟。[结果](1)研究区刺槐人工林的穿透雨量、树干茎流量、林冠截留量分别为154.19,5.61,16.5 mm,产生穿透雨和树干茎流的阈值分别为1.37,2.17 mm。(2)Gash修正模型和优化后的神经网络模型均能较好地模拟刺槐冠层截留量,Gash修正模型的绝对误差、均方误差、均方根误差、平均绝对百分比误差分别为0.20%,0.06%,0.24%,52.43%,模拟结果拟合精度达到83%;与Gash修正模型相比,采用麻雀搜索算法优化后的BP神经网络算法模型(SSA-BP),均方误差降低了61.48%,平均绝对误差降低了40.39%,均方根误差降低了37.93%,平均绝对百分比误差降低了50.52%,决定系数提高了1.2%。[结论]在林木冠层截留模拟研究方面,加入麻雀搜索算法后的BP神经网络模型具有较好的可靠性,可以有效降低模拟误差,提高模型的预测精度。 展开更多
关键词 冠层截留 修正后Gash模型 神经网络模型 麻雀搜索算法 刺槐林
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钢筋混凝土水池壁板水平施工缝抗渗性能试验研究
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作者 李晓帆 张爽 +2 位作者 周仲煜 周知 黄维 《硅酸盐通报》 CAS 北大核心 2024年第9期3224-3234,共11页
钢筋混凝土水池壁板因混凝土浇筑施工间断形成水平施工缝,造成新旧混凝土无法形成良好连接,在高水压作用下易出现渗漏。本文对不同混凝土材料及模拟水平施工缝试块进行了抗渗试验,对比分析了其抗渗性能,试验结果表明,添加聚丙烯纤维和... 钢筋混凝土水池壁板因混凝土浇筑施工间断形成水平施工缝,造成新旧混凝土无法形成良好连接,在高水压作用下易出现渗漏。本文对不同混凝土材料及模拟水平施工缝试块进行了抗渗试验,对比分析了其抗渗性能,试验结果表明,添加聚丙烯纤维和内掺水泥基渗透结晶防水材料均能一定程度提高混凝土抗渗性能,而施工缝处的抗渗性能远低于混凝土自防水性能,对水平施工缝迎水面涂抹水泥基渗透结晶防水材料能有效提高该处的抗渗性能。对2片比例为1∶2的缩尺钢筋混凝土水池壁板进行了一次成型和考虑施工缝的二次成型局部渗透性能试验,试验结果表明,施工缝处混凝土因浇筑、振捣和养护不充分,池壁容易形成贯通裂缝,难以达到混凝土自防水目标要求。采用改性混凝土材料及在相关部位进行表面处理,能有效提高关键部位抗渗性能,进而提高整体抗渗性能。采用BP神经网络,建立了混凝土抗渗性能与其材料参数和施工工艺之间的非线性预测模型。 展开更多
关键词 钢筋混凝土水池壁板 水平施工缝 改性混凝土 抗渗性能 BP神经网络
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基于改进卷积神经网络的变压器有载分接开关故障自适应识别方法
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作者 高志刚 《电工技术》 2024年第20期66-70,共5页
常规变压器有载分接开关故障自适应识别多采用改进半监督阶梯网络算法,但由于无法解决网络梯度爆炸问题,最终的故障识别精度较低,因此提出基于改进卷积神经网络的变压器有载分接开关故障自适应识别方法。依据变压器有载分接开关的基本... 常规变压器有载分接开关故障自适应识别多采用改进半监督阶梯网络算法,但由于无法解决网络梯度爆炸问题,最终的故障识别精度较低,因此提出基于改进卷积神经网络的变压器有载分接开关故障自适应识别方法。依据变压器有载分接开关的基本组成结构,利用小波包分解算法与信号的频域识别向量挖掘其中的故障特征参量,采用一维卷积神经网络对特征参量进行融合处理,并引入注意力机制改进与优化网络结构参数,进而构建故障自适应识别模型,通过残差结构解决网络结构的梯度爆炸问题,求取输入样本的故障综合评分,确定样本的所属故障类型,由此实现故障自适应识别。实例应用结果显示,所提方法能够有效识别有载分接开关故障,识别结果与实际一致,并且F1_score最高值达到0.97,因此所提方法具备较高的识别精度。 展开更多
关键词 改进卷积神经网络 变压器有载分接开关 故障自适应识别 识别精度
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