期刊文献+
共找到1,248篇文章
< 1 2 63 >
每页显示 20 50 100
Application of Artificial Network in Forecasting Liquefaction of Saturated Sandy Soil
1
作者 LU Xiao bing Institute of Mechanics, Chinese Academy of Sciences, Beijing 100080, China 《Advances in Manufacturing》 SCIE CAS 2000年第4期288-291,共4页
The forecasting of liquefaction of saturated sand is difficult because of its complexity, but it is of importance in practice. The technique of artificial neural network is used to model the forecasting of liquefactio... The forecasting of liquefaction of saturated sand is difficult because of its complexity, but it is of importance in practice. The technique of artificial neural network is used to model the forecasting of liquefaction phenonmenan. The dimension analysis is processed, based on which a concise architecture of BP network is built then. It is shown that artificial neural network is an effective tool in forecasting of liquefaction. 展开更多
关键词 forecasting of liquefaction artificial neural network saturated so
在线阅读 下载PDF
Artificial Neural Network Model for Thermal Conductivity Estimation of Metal Oxide Water-Based Nanofluids
2
作者 Nikhil S.Mane Sheetal Kumar Dewangan +3 位作者 Sayantan Mukherjee Pradnyavati Mane Deepak Kumar Singh Ravindra Singh Saluja 《Computers, Materials & Continua》 2026年第1期316-331,共16页
The thermal conductivity of nanofluids is an important property that influences the heat transfer capabilities of nanofluids.Researchers rely on experimental investigations to explore nanofluid properties,as it is a n... The thermal conductivity of nanofluids is an important property that influences the heat transfer capabilities of nanofluids.Researchers rely on experimental investigations to explore nanofluid properties,as it is a necessary step before their practical application.As these investigations are time and resource-consuming undertakings,an effective prediction model can significantly improve the efficiency of research operations.In this work,an Artificial Neural Network(ANN)model is developed to predict the thermal conductivity of metal oxide water-based nanofluid.For this,a comprehensive set of 691 data points was collected from the literature.This dataset is split into training(70%),validation(15%),and testing(15%)and used to train the ANN model.The developed model is a backpropagation artificial neural network with a 4–12–1 architecture.The performance of the developed model shows high accuracy with R values above 0.90 and rapid convergence.It shows that the developed ANN model accurately predicts the thermal conductivity of nanofluids. 展开更多
关键词 artificial neural networks nanofluids thermal conductivity PREDICTION
在线阅读 下载PDF
Artificial Neural Network-Based Flow and Heat Transfer Analysis of Williamson Nanofluid over a Moving Wedge:Effects of Thermal Radiation,Viscous Dissipation,and Homogeneous-Heterogeneous
3
作者 Adnan Ashique Nehad Ali Shah +3 位作者 Usman Afzal Yazen Alawaideh Sohaib Abdal Jae Dong Chung 《Computer Modeling in Engineering & Sciences》 2026年第2期642-664,共23页
There is a need for accurate prediction of heat and mass transfer in aerodynamically designed,non-Newtonian nanofluids across aerodynamically designed,high-flux biomedical micro-devices for thermal management and reac... There is a need for accurate prediction of heat and mass transfer in aerodynamically designed,non-Newtonian nanofluids across aerodynamically designed,high-flux biomedical micro-devices for thermal management and reactive coating processes,but existing work is not uncharacteristically remiss regarding viscoelasticity,radiative heating,viscous dissipation,and homogeneous–heterogeneous reactions within a single scheme that is calibrated.This research investigates the flow of Williamson nanofluid across a dynamically wedged surface under conditions that include viscous dissipation,thermal radiation,and homogeneous-heterogeneous reactions.The paper develops a detailed mathematical approach that utilizes boundary layers to transform partial differential equations into ordinary differential equations using similarity transformations.RK4 is the technique for gaining numerical solutions,but with the addition of ANNs,there is an improvement in prediction accuracy and computational efficiency.The study investigates the influence of wedge angle parameter,along with Weissenberg number,thermal radiation parameter and Brownian motion parameter,and Schmidt number,on velocity distribution,temperature distribution,and concentra-tion distribution.Enhanced Weissenberg numbers enhance viscoelastic responses that modify velocity patterns,but radiation parameters and thermophoresis have key impacts on thermal transfer phenomena.This research develops findings that are of enormous application in aerospace,biomedical(artificial hearts and drug delivery),and industrial cooling technology applications.New findings on non-Newtonian nanofluids under full flow systems are included in this work to enhance heat transfer methods in novel fluid-based systems. 展开更多
关键词 Williamson fluid thermal radiation viscous dissipation artificial Neural networks(ANNs) homogeneous-heterogeneous reactions
在线阅读 下载PDF
An Improved PID Controller Based on Artificial Neural Networks for Cathodic Protection of Steel in Chlorinated Media
4
作者 JoséArturo Ramírez-Fernández Henevith G.Méndez-Figueroa +3 位作者 Sebastián Ossandón Ricardo Galván-Martínez MiguelÁngel Hernández-Pérez Ricardo Orozco-Cruz 《Computers, Materials & Continua》 2026年第3期624-640,共17页
In this study,artificial neural networks(ANNs)were implemented to determine design parameters for an impressed current cathodic protection(ICCP)prototype.An ASTM A36 steel plate was tested in 3.5%NaCl solution,seawate... In this study,artificial neural networks(ANNs)were implemented to determine design parameters for an impressed current cathodic protection(ICCP)prototype.An ASTM A36 steel plate was tested in 3.5%NaCl solution,seawater,and NS4 using electrochemical impedance spectroscopy(EIS)to monitor the evolution of the substrate surface,which affects the current required to reach the protection potential(Eprot).Experimental data were collected as training datasets and analyzed using statistical methods,including box plots and correlation matrices.Subsequently,ANNs were applied to predict the current demand at different exposure times,enabling the estimation of electrochemical parameters(limiting voltage values)that can be used to optimize a self-regulating ICCP system.The obtained electrochemical parameters were then used,through Particle Swarm Optimization(PSO),to fine-tune an ANN-based proportional-integral-derivative(PID)controller for the ICCP system. 展开更多
关键词 artificial neural networks(ANNs) corrosion impressed current cathodic protection(ICCP) proportional integral derivative(PID)corrosion control particle swarm optimization(PSO) statistical analysis
在线阅读 下载PDF
Enhancing cyber threat detection with an improved artificial neural network model 被引量:1
5
作者 Toluwase Sunday Oyinloye Micheal Olaolu Arowolo Rajesh Prasad 《Data Science and Management》 2025年第1期107-115,共9页
Identifying cyberattacks that attempt to compromise digital systems is a critical function of intrusion detection systems(IDS).Data labeling difficulties,incorrect conclusions,and vulnerability to malicious data injec... Identifying cyberattacks that attempt to compromise digital systems is a critical function of intrusion detection systems(IDS).Data labeling difficulties,incorrect conclusions,and vulnerability to malicious data injections are only a few drawbacks of using machine learning algorithms for cybersecurity.To overcome these obstacles,researchers have created several network IDS models,such as the Hidden Naive Bayes Multiclass Classifier and supervised/unsupervised machine learning techniques.This study provides an updated learning strategy for artificial neural network(ANN)to address data categorization problems caused by unbalanced data.Compared to traditional approaches,the augmented ANN’s 92%accuracy is a significant improvement owing to the network’s increased resilience to disturbances and computational complexity,brought about by the addition of a random weight and standard scaler.Considering the ever-evolving nature of cybersecurity threats,this study introduces a revolutionary intrusion detection method. 展开更多
关键词 CYBERSECURITY Intrusion detection Deep learning artificial neural network Imbalanced data classification
在线阅读 下载PDF
A composite controller for reactor core combining artificial neural network and fractional-order PID controller
6
作者 WANG Zhe-Zheng ZHANG Xiao DENG Ke 《四川大学学报(自然科学版)》 北大核心 2025年第4期1015-1024,共10页
Core power is a key parameter of nuclear reactor.Traditionally,the proportional-integralderivative(PID)controllers are used to control the core power.Fractional-order PID(FOPID)controller represents the cutting edge i... Core power is a key parameter of nuclear reactor.Traditionally,the proportional-integralderivative(PID)controllers are used to control the core power.Fractional-order PID(FOPID)controller represents the cutting edge in core power control research.In comparing with the integer-order models,fractional-order models describe the variation of core power more accurately,thus provide a comprehensive and realistic depiction for the power and state changes of reactor core.However,current fractional-order controllers cannot adjust their parameters dynamically to response the environmental changes or demands.In this paper,we aim at the stable control and dynamic responsiveness of core power.Based on the strong selflearning ability of artificial neural network(ANN),we propose a composite controller combining the ANN and FOPID controller.The FOPID controller is firstly designed and a back propagation neural network(BPNN)is then utilized to optimize the parameters of FOPID.It is shown by simulation that the composite controller enables the real-time parameter tuning via ANN and retains the advantage of FOPID controller. 展开更多
关键词 Nuclear reactor Core power Fractional PID controller artificial neural network
在线阅读 下载PDF
Review of the Mechanical Performance Prediction of Concrete Based on Artificial Neural Networks
7
作者 Yidong Xu Weijie Zhuge +2 位作者 Jialei Wang Xiaopeng Yu Kan Wu 《Structural Durability & Health Monitoring》 2025年第6期1507-1527,共21页
The performance of concrete can be affected by many factors,including the material composition,environmental conditions,and construction methods,and it is challenging to predict the performance evolution accurately.Th... The performance of concrete can be affected by many factors,including the material composition,environmental conditions,and construction methods,and it is challenging to predict the performance evolution accurately.The rise of artificial intelligence provides a way to meet the above challenges.This article elaborates on research overview of artificial neural network(ANN)and its prediction for concrete strength,deformation,and durability.The focus is on the comparative analysis of the prediction accuracy for different types of neural networks.Numerous studies have shown that the prediction accuracy of ANN can meet the standards of the practical engineering applications.To further improve the applicability of ANN in concrete,the model can consider the combination of multiple algorithms and the expansion of data samples.The review can provide new research ideas for development of concrete performance prediction. 展开更多
关键词 CONCRETE performance prediction artificial neural network STRENGTH DEFORMATION DURABILITY
在线阅读 下载PDF
Artificial neural networks applied to photo-Fenton process:An innovative approach to wastewater treatment
8
作者 Davide Palma Kevin U.Antela +3 位作者 Alessandra Bianco Prevot MLuisa Cervera Angel Morales-Rubio Roberto Sáez-Hernández 《Water Science and Engineering》 2025年第3期324-334,共11页
Artificial intelligence(AI)is a revolutionizing problem-solver across various domains,including scientific research.Its application to chemical processes holds remarkable potential for rapid optimization of protocols ... Artificial intelligence(AI)is a revolutionizing problem-solver across various domains,including scientific research.Its application to chemical processes holds remarkable potential for rapid optimization of protocols and methods.A notable application of AI is in the photoFenton degradation of organic compounds.Despite the high novelty and recent surge of interest in this area,a comprehensive synthesis of existing literature on AI applications in the photo-Fenton process is lacking.This review aims to bridge this gap by providing an in-depth summary of the state-of-the-art use of artificial neural networks(ANN)in the photo-Fenton process,with the goal of aiding researchers in the water treatment field to identify the most crucial and relevant variables.It examines the types and architectures of ANNs,input and output variables,and the efficiency of these networks.The findings reveal a rapidly expanding field with increasing publications highlighting AI's potential to optimize the photo-Fenton process.This review also discusses the benefits and drawbacks of using ANNs,emphasizing the need for further research to advance this promising area. 展开更多
关键词 artificial neural networks DEGRADATION Machine learning Optimization Persistent organic pollutants WASTEWATER
在线阅读 下载PDF
Machine Learning Stroke Prediction in Smart Healthcare:Integrating Fuzzy K-Nearest Neighbor and Artificial Neural Networks with Feature Selection Techniques
9
作者 Abdul Ahad Ira Puspitasari +4 位作者 Jiangbin Zheng Shamsher Ullah Farhan Ullah Sheikh Tahir Bakhsh Ivan Miguel Pires 《Computers, Materials & Continua》 2025年第3期5115-5134,共20页
This research explores the use of Fuzzy K-Nearest Neighbor(F-KNN)and Artificial Neural Networks(ANN)for predicting heart stroke incidents,focusing on the impact of feature selection methods,specifically Chi-Square and... This research explores the use of Fuzzy K-Nearest Neighbor(F-KNN)and Artificial Neural Networks(ANN)for predicting heart stroke incidents,focusing on the impact of feature selection methods,specifically Chi-Square and Best First Search(BFS).The study demonstrates that BFS significantly enhances the performance of both classifiers.With BFS preprocessing,the ANN model achieved an impressive accuracy of 97.5%,precision and recall of 97.5%,and an Receiver Operating Characteristics(ROC)area of 97.9%,outperforming the Chi-Square-based ANN,which recorded an accuracy of 91.4%.Similarly,the F-KNN model with BFS achieved an accuracy of 96.3%,precision and recall of 96.3%,and a Receiver Operating Characteristics(ROC)area of 96.2%,surpassing the performance of the Chi-Square F-KNN model,which showed an accuracy of 95%.These results highlight that BFS improves the ability to select the most relevant features,contributing to more reliable and accurate stroke predictions.The findings underscore the importance of using advanced feature selection methods like BFS to enhance the performance of machine learning models in healthcare applications,leading to better stroke risk management and improved patient outcomes. 展开更多
关键词 Fuzzy K-nearest neighbor artificial neural network accuracy precision RECALL F-MEASURE CHI-SQUARE best search first heart stroke
在线阅读 下载PDF
Artificial neural network validation of MHD natural bioconvection in a square enclosure:entropic analysis and optimization
10
作者 Noura Alsedais Mohamed Ahmed Mansour +1 位作者 Abdelraheem Mahmoud Aly Sara I.Abdelsalam 《Acta Mechanica Sinica》 2025年第9期17-35,共19页
This study numerically investigates inclined magneto-hydrodynamic natural convection in a porous cavity filled with nanofluid containing gyrotactic microorganisms.The governing equations are nondimensionalized and sol... This study numerically investigates inclined magneto-hydrodynamic natural convection in a porous cavity filled with nanofluid containing gyrotactic microorganisms.The governing equations are nondimensionalized and solved using the finite volume method.The simulations examine the impact of key parameters such as heat source length and position,Peclet number,porosity,and heat generation/absorption on flow patterns,temperature distribution,concentration profiles,and microorganism rotation.Results indicate that extending the heat source length enhances convective currents and heat transfer efficiency,while optimizing the heat source position reduces entropy generation.Higher Peclet numbers amplify convective currents and microorganism distribution complexity.Variations in porosity and heat generation/absorption significantly influence flow dynamics.Additionally,the artificial neural network model reliably predicts the mean Nusselt and Sherwood numbers(Nu&Sh),demonstrating its effectiveness for such analyses.The simulation results reveal that increasing the heat source length significantly enhances heat transfer,as evidenced by a 15%increase in the mean Nusselt number. 展开更多
关键词 artificial neural network Gyrotactic microorganisms MAGNETOHYDRODYNAMICS Natural convection Square enclosure
原文传递
Largely tunable compensation temperature in a rare-earth ferrimagnetic metal and deterministic spin-orbit torque switching for artificial neural network application
11
作者 Li Liu Yuzhou He +13 位作者 Yifei Ma Peixin Qin Hongyu Chen Xiaoning Wang Xiaorong Zhou Ziang Meng Guojian Zhao Zhiyuan Duan Dazhuang Kang Yu Liu Shuai Ning Zhaochu Luo Qinghua Zhang Zhiqi Liu 《Journal of Materials Science & Technology》 2025年第31期15-23,共9页
Ferrimagnets are important for next-generation high-density ultrafast spintronic device applications.Magnetization compensation temperature(TM)is a fundamentally critical magnetic parameter for ferrimagnets besides th... Ferrimagnets are important for next-generation high-density ultrafast spintronic device applications.Magnetization compensation temperature(TM)is a fundamentally critical magnetic parameter for ferrimagnets besides their Curie temperature.Around TM,the spin-orbit switching efficiencies are extraordinarily high.Therefore,the accurate manipulation of TM from the material fabrication process is essential for the electrical steering of ferrimagnetic spins.In this work,CoTb thin films,with the 3 d and 4 f magnetic sublattices antiferromagnetically coupled to each other,are deposited at different temperatures.The magnetotransport and magnetic properties of these films are systematically investigated.It was found that the TM of this rare-earth ferrimagnet largely depends on the growth temperature and it can be tuned by over 100 K.Accordingly,the spins of an optimized ferrimagnetic CoTb thin film with its TM close to room temperature can be efficiently switched by the current-pulse-induced spin-orbit torque.Moreover,an artificial neural network utilizing the spin-orbit torque device was constructed,demonstrating an image recognition accuracy of approximately 92.5%,which is comparable to that of conventional software solutions.Thus,this work demonstrates the large tunability of TM of a rare earth ferrimagnet by chemical ordering and the great potential of such a ferrimagnet for electrically operated spintronic devices. 展开更多
关键词 Ferrimagnetic metals CoTb Spin-orbit torque Compensation temperatures artificial neural network
原文传递
A comparison between artificial neural network and random forest on predicting ferrofluids viscosity under magnetic field application
12
作者 Walaeddine Maaoui Zouhaier Mehrez Mustapha Najjari 《Acta Mechanica Sinica》 2025年第6期50-62,共13页
This research study focuses on predicting ferrofluids’viscosity using machine learning models,artificial neural networks(ANNs),and random forests(RFs)incorporating key parameters;ferrofluid type,concentration of magn... This research study focuses on predicting ferrofluids’viscosity using machine learning models,artificial neural networks(ANNs),and random forests(RFs)incorporating key parameters;ferrofluid type,concentration of magnetic nanoparticles,temperature,and magnetic field intensity as inputs.A comprehensive database of 333 datasets sourced from various literatures was utilized for training and validating models.The ANN model demonstrated high accuracy,with root mean square error(RMSE)values below 0.033 and mean absolute percentage error(MAPE)not exceeding 3.01%,while the RF model achieved similar accuracy with RMSE under 0.052 and MAPE below 4.82%.Maximum deviations observed were 9.14%for ANN and 16.48%for RF,confirming that both models accurately learned the underlying patterns without overestimating viscosity.Additionally,the ANN model successfully captured intricate physical relationships between input parameters and viscosity when it was used to predict viscosity for random input data,confirming its ability to generalize beyond the training dataset.The RF model,however,showed limitations in extrapolating beyond the range of the training data.This research study demonstrates machine learning models’effectiveness in capturing intricate relationships governing the viscosity of ferrofluid for different types,paving the way for an improved understanding of ferrofluid’s viscosity behavior. 展开更多
关键词 VISCOSITY FERROFLUIDS Magnetic field artificial neural networks
原文传递
Statistical and Visual Evaluation of Artificial Neural Networks and Multiple Linear Regression Performances in Estimating Reference Crop Evapotranspiration for Mersin
13
作者 Fatma Bunyan Unel Lutfiye Kusak +3 位作者 Murat Yakar Abdullah Sahin Hakan Dogan Fikret Demir 《Revue Internationale de Géomatique》 2025年第1期433-460,共28页
This study aimed to create a model for calculating the total reference crop evapotranspiration(ETo)in Mersin Province from May 2015 to 2020 and to generate maps using spatial analysis.Lemons from citrus play a signifi... This study aimed to create a model for calculating the total reference crop evapotranspiration(ETo)in Mersin Province from May 2015 to 2020 and to generate maps using spatial analysis.Lemons from citrus play a significant role inMersin’s agriculture,and because of lemons’sensitivity to temperature,ETo is essential for them.Itwas observed that the ETo value(EToPM)calculated using the Penman-Monteith(PM)method increased over the years.A model was developed using data from 36 Automated Weather Observing Systems(AWOS)in Mersin,Turkiye,which is located in a semi-arid climate zone.The model was created using Multiple Linear Regression(MLR)and artificial neural network(ANN)methods.The station climate data were divided into training and test datasets separately and collectively,and ETo values were estimated with different combinations using three scenarios and six model constructs.The dataset was divided into training(2015-2018)and testing(2019-2020).ANN1 andMLR1 are analyses of individual AWOS,while the other models are analyses of all AWOS together.The statistical performance analysis involved a comparison of the R2,Mean Absolute Error(MAE),Mean Absolute Percentage Error(MAPE),and RootMean Square Error(RMSE)values.The analysis results indicated that ANN1(0.9997,0.0105,0.2718%,and 0.0162,respectively)and ANN2(0.9958,0.0678,1.5341%,and 0.0864,respectively)models successfully predicted as statistical with both single and all AWOS.Themodels were visually evaluated using the Inverse DistanceWeighting(IDW)interpolationmethod,andmaps of plant water consumption were generated.The relationships between bothmodels and years in themonthly total ETo maps allowed for a clearer comparison. 展开更多
关键词 PENMAN-MONTEITH reference crop evapotranspiration multiple linear regression artificial neural networks IDWinterpolation
在线阅读 下载PDF
An Intelligent Control Method Based on the Artificial Neural Network Model
14
作者 Liangkai Zhou Dan Han +1 位作者 Qinzhe Wang Nv Yang 《Journal of Electronic Research and Application》 2025年第5期299-303,共5页
The topology structure of the artificial neural network is an intelligent control model,which is used for the intelligent vehicle control system and household sweeping robot.When setting the intelligent control system... The topology structure of the artificial neural network is an intelligent control model,which is used for the intelligent vehicle control system and household sweeping robot.When setting the intelligent control system,the connection point of each network is regarded as a neuron in the nervous system,and each connection point has input and output functions.Only when the input of nodes reaches a certain threshold can the output function of nodes be stimulated.Using the networking mode of the artificial neural network model,the mobile node can output in multiple directions.If the input direction of a certain path is the same as that of other nodes,it can choose to avoid and choose another path.The weighted value of each path between nodes is different,which means that the influence of the front node on the current node varies.The control method based on the artificial neural network model can be applied to vehicle control,household sweeping robots,and other fields,and a relatively optimized scheme can be obtained from the aspect of time and energy consumption. 展开更多
关键词 artificial neural network MODEL Control method Optimization scheme
在线阅读 下载PDF
An artificial neural network-based data-driven constitutive model of shape memory alloys
15
作者 Xingyu Zhou Ziang Liu +1 位作者 Chao Yu Guozheng Kang 《Acta Mechanica Sinica》 2025年第8期108-125,共18页
The constitutive models of shape memory alloys(SMAs)play an important role in facilitating the widespread application of such types of alloys in various engineering fields.However,to accurately describe the deformatio... The constitutive models of shape memory alloys(SMAs)play an important role in facilitating the widespread application of such types of alloys in various engineering fields.However,to accurately describe the deformation behaviors of SMAs,the concepts in classical plasticity are employed in the existing constitutive models,and a series of complex mathematical equations are involved.Such complexity brings inconvenience for the construction,implementation,and application of the constitutive models.To overcome these shortcomings,a data-driven constitutive model of SMAs is developed in this work based on the artificial neural network(ANN).In the proposed model,the components of the strain tensor in principal space,ambient temperature,and the maximum equivalent strain in the deformation history from the initial state to the current loading state are chosen as the input features,and the components of the stress tensor in principal space are set as the output.The proposed ANN-based constitutive model is implemented into the finite element program ABAQUS by deriving its consistent tangent modulus and writing a user-defined material subroutine.The stress-strain responses of SMA material under various loading paths and at different ambient temperatures are used to train the ANN model,which is generated from the existing constitutive model(numerical experiments).To validate the capability of the proposed model,the predicted stress-strain responses of SMA material,and the global and local responses of two typical SMA structures are compared with the corresponding numerical experiments.This work demonstrates a good potential to obtain the constitutive model of SMAs by pure data and avoid the need for vast stores of knowledge for the construction of constitutive models. 展开更多
关键词 Shape memory alloys Constitutive model DATA-DRIVEN artificial neural network
原文传递
A Comprehensive Numerical and Data-Driven Investigations of Nanofluid Heat Transfer Enhancement Using the Finite Element Method and Artificial Neural Network
16
作者 Adnan Ashique Khalid Masood +4 位作者 Usman Afzal Mati Ur Rahman Maddina Dinesh Kumar Sohaib Abdal Nehad Ali Shah 《Computer Modeling in Engineering & Sciences》 2025年第12期3627-3699,共73页
This study outlines a quantitative and data-driven study of the mixed convection heat transfer processes that concern Cu-water nanofluids in a I-shaped enclosure with one to five rotating cylinders.The dimensionless e... This study outlines a quantitative and data-driven study of the mixed convection heat transfer processes that concern Cu-water nanofluids in a I-shaped enclosure with one to five rotating cylinders.The dimensionless equations of mass,momentum,and energy are solved using the finite element method as implemented in the COMSOL Multiphysics 6.3 software in different rotating Reynolds numbers and cylinder geometries.An artificial Neural Network that is trained using Bayesian Regularization on data produced by the COMSOL is utilized to estimate the average Nusselt numbers.The analysis is conducted for a wide range of rotational Reynolds numbers(Re_(w)=0-100),with the fixed Prandtl number.Results are presented in terms of streamline patterns,isotherm contours,and Nusselt numbers to assess heat transfer behavior.Findings revealed that increasing the number of cylinders and optimizing their placement significantly enhances convective mixing and thermal transport.The ANN model accurately predicts the Nusselt numbers across all configurations with negligible errors.Among all configurations,the third arrangement in Scenario 5 exhibits the highest heat transfer rates,attributed to intensified vortex interaction and reduced thermal resistance.Artificial neural networks and finite element-based models will be of great value to the design of miniature and energy-efficient enclosures and electronics cooling mechanisms that make use of nanofluids. 展开更多
关键词 Cu-water nanofluid rotational Reynolds number heat transfer enhancement COMSOL Multiphysics artificial neural network
在线阅读 下载PDF
Forecasting Performance Indicators of a Single-Channel Solar Chimney Using Artificial Neural Networks
17
作者 Carlos Torres-Aguilar Pedro Moreno +4 位作者 Diego Rossit Sergio Nesmachnow Karla M.Aguilar-Castro Edgar V.Macias-Melo Luis Hernández-Callejo 《Computer Modeling in Engineering & Sciences》 2025年第12期3859-3881,共23页
Solar chimneys are renewable energy systems designed to enhance natural ventilation,improving thermal comfort in buildings.As passive systems,solar chimneys contribute to energy efficiency in a sustainable and environ... Solar chimneys are renewable energy systems designed to enhance natural ventilation,improving thermal comfort in buildings.As passive systems,solar chimneys contribute to energy efficiency in a sustainable and environmentally friendly way.The effectiveness of a solar chimney depends on its design and orientation relative to the cardinal directions,both of which are critical for optimal performance.This article presents a supervised learning approach using artificial neural networks to forecast the performance indicators of solar chimneys.Thedataset includes information from 2784 solar chimney configurations,which encompasses various factors such as chimney height,channel thickness,glass thickness,paint,wall material,measurement date,and orientation.The case study examines the four cardinal orientations and weather data from Mexico City,covering the period from 01 January to 31 December 2024.The main results indicate that the proposed artificial neural network models achieved higher coefficient of determination values(0.905-0.990)than the baseline method across performance indicators of the solar chimney system,demonstrating greater accuracy and improved generalization.The proposed approach highlights the potential of using artificial neural networks as a decision-making tool in the design stage of solar chimneys in sustainable architecture. 展开更多
关键词 Solar chimney natural ventilation artificial neural networks
在线阅读 下载PDF
Artificial Neural Network-Based Risk Assessment for Cardiac Implantable Electronic Device Complications
18
作者 Chih-Yin Chien Tsae-Jyy Wang +2 位作者 Pei-Hung Liao Ying-Hsiang Lee Wei-Sho Ho 《Congenital Heart Disease》 2025年第5期601-612,共12页
Background:Cardiac implantable electronic devices(CIEDs)are essential for preventing sudden cardiac death in patients with cardiovascular diseases,but implantation procedures carry risks of complications such as infec... Background:Cardiac implantable electronic devices(CIEDs)are essential for preventing sudden cardiac death in patients with cardiovascular diseases,but implantation procedures carry risks of complications such as infection,hematoma,and bleeding,with incidence rates of 3–4%.Previous studies have examined individual risk factors separately,but integrated predictive models are lacking.We compared the predictive performance and interpretability of artificial neural network(ANN)and logistic regression models to evaluate their respective strengths in clinical risk assessment.Methods:This retrospective study analyzed data from 180 patients who underwent cardiac implantable electronic device(CIED)implantation in Taiwan between 2017 and 2018.To address class imbalance and enhance model training,the dataset was augmented to 540 records using the Synthetic Minority Oversampling Technique(SMOTE).A total of 13 clinical risk factors were evaluated(e.g.,age,body mass index(BMI),platelet count,left ventricular ejection fraction(LVEF),prothrombin time/international normalized ratio(PT/INR),hemoglobin(Hb),comorbidities,and antithrombotic use).Results:The most influential risk factors identified by the ANN model were platelet count,PT/INR,LVEF,Hb,and age.In the logistic regression analysis,reduced LVEF,lower hemoglobin levels,prolonged PT/INR,and lower BMI were significantly associated with an increased risk of complications.ANN model achieved a higher area under the curve(AUC=0.952)compared to the logistic regression model(AUC=0.802),indicating superior predictive performance.Additionally,the overall model quality was also higher for the ANN model(0.93)than for logistic regression(0.76).Conclusions:This study demonstrates that ANN models can effectively predict complications associated CIED procedures and identify critical preoperative risk factors.These findings support the use of ANN-based models for individualized risk stratification,enhancing procedural safety,improving patient outcomes,and potentially reducing healthcare costs associated with postoperative complications. 展开更多
关键词 artificial neural network cardiac implantable electronic device predictive risk factors retrospective correlational study post-procedure complications
暂未订购
Phase selection prediction and component determination of multiple-principal amorphous alloy composites based on artificial neural network model
19
作者 Lin WANG Pei-you LI +5 位作者 Wei ZHANG Xiao-ling FU Fang-yi WAN Yong-shan WANG Lin-sen SHU Long-quan YONG 《Transactions of Nonferrous Metals Society of China》 2025年第5期1543-1559,共17页
The probability of phase formation was predicted using k-nearest neighbor algorithm(KNN)and artificial neural network algorithm(ANN).Additionally,the composition ranges of Ti,Cu,Ni,and Hf in 40 unknown amorphous alloy... The probability of phase formation was predicted using k-nearest neighbor algorithm(KNN)and artificial neural network algorithm(ANN).Additionally,the composition ranges of Ti,Cu,Ni,and Hf in 40 unknown amorphous alloy composites(AACs)were predicted using ANN.The predicted alloys were then experimentally verified through X-ray diffraction(XRD)and high-resolution transmission electron microscopy(HRTEM).The prediction accuracies of the ANN for AM and IM phases are 93.12%and 85.16%,respectively,while the prediction accuracies of KNN for AM and IM phases are 93%and 84%,respectively.It is observed that when the contents of Ti,Cu,Ni,and Hf fall within the ranges of 32.7−34.5 at.%,16.4−17.3 at.%,30.9−32.7 at.%,and 17.3−18.3 at.%,respectively,it is more likely to form AACs.Based on the results of XRD and HRTEM,the Ti_(34)Cu17Ni_(31.36)Hf_(17.64)and Ti_(36)Cu_(18)Ni_(29.44)Hf_(16.56)alloys are identified as good AACs,which are in closely consistent with the predicted amorphous alloy compositions. 展开更多
关键词 multiple-principal amorphous alloy composites Ti−Cu−Ni−Hf alloy phase selection artificial neural network machine learning
在线阅读 下载PDF
Reconfigurable bipolar and nonlinear photoresponse in 2D VSe_(2)/WSe_(2) photodetectors for high-performance optical neural networks
20
作者 Zhengui Zhao Yuan Cheng +5 位作者 Jiacheng Sun Pengyu Zhang Tonglu Wang Jianshi Tang Yuyan Wang Junying Zhang 《Science Bulletin》 2026年第3期486-489,共4页
In the era of big data and artificial intelligence,optical neural networks(ONNs)have emerged as a promising alternative to conventional electronic approaches,offering superior parallelism,ultrafast processing speeds,a... In the era of big data and artificial intelligence,optical neural networks(ONNs)have emerged as a promising alternative to conventional electronic approaches,offering superior parallelism,ultrafast processing speeds,and high energy efficiency[1-3].However,a major bottleneck in the practical implementation of ONNs is the absence of effective nonlinear activation functions.Self-driven photodetectors have emerged as versatile optical to electrical converters,opening innovative avenues for energy-effective and flexibly integrated activation functions in ONNs through their reconfigurable optoelectronic nonlinearity. 展开更多
关键词 D VSe WSe photodetectors optical electrical convertersopening conventional electronic approachesoffering reconfigurable bipolar high performance optical neural networks artificial intelligenceoptical neural networks onns big data nonlinear photoresponse
原文传递
上一页 1 2 63 下一页 到第
使用帮助 返回顶部