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Hybrid AI-IoT Framework with Digital Twin Integration for Predictive Urban Infrastructure Management in Smart Cities
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作者 Abdullah Alourani Mehtab Alam +2 位作者 Ashraf Ali Ihtiram Raza Khan Chandra Kanta Samal 《Computers, Materials & Continua》 2026年第1期462-493,共32页
The evolution of cities into digitally managed environments requires computational systems that can operate in real time while supporting predictive and adaptive infrastructure management.Earlier approaches have often... The evolution of cities into digitally managed environments requires computational systems that can operate in real time while supporting predictive and adaptive infrastructure management.Earlier approaches have often advanced one dimension—such as Internet of Things(IoT)-based data acquisition,Artificial Intelligence(AI)-driven analytics,or digital twin visualization—without fully integrating these strands into a single operational loop.As a result,many existing solutions encounter bottlenecks in responsiveness,interoperability,and scalability,while also leaving concerns about data privacy unresolved.This research introduces a hybrid AI–IoT–Digital Twin framework that combines continuous sensing,distributed intelligence,and simulation-based decision support.The design incorporates multi-source sensor data,lightweight edge inference through Convolutional Neural Networks(CNN)and Long ShortTerm Memory(LSTM)models,and federated learning enhanced with secure aggregation and differential privacy to maintain confidentiality.A digital twin layer extends these capabilities by simulating city assets such as traffic flows and water networks,generating what-if scenarios,and issuing actionable control signals.Complementary modules,including model compression and synchronization protocols,are embedded to ensure reliability in bandwidth-constrained and heterogeneous urban environments.The framework is validated in two urban domains:traffic management,where it adapts signal cycles based on real-time congestion patterns,and pipeline monitoring,where it anticipates leaks through pressure and vibration data.Experimental results show a 28%reduction in response time,a 35%decrease in maintenance costs,and a marked reduction in false positives relative to conventional baselines.The architecture also demonstrates stability across 50+edge devices under federated training and resilience to uneven node participation.The proposed system provides a scalable and privacy-aware foundation for predictive urban infrastructure management.By closing the loop between sensing,learning,and control,it reduces operator dependence,enhances resource efficiency,and supports transparent governance models for emerging smart cities. 展开更多
关键词 Smart cities digital twin AI-IOT framework predictive infrastructure management edge computing reinforcement learning optimization methods federated learning urban systems modeling smart governance
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Ecological Security Assessment,Prediction,and Zoning Management:An Integrated Analytical Framework
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作者 Bo Nan Yujia Zhai +2 位作者 Mengmeng Wang Hongjie Wang Baoshan Cui 《Engineering》 2025年第6期238-250,共13页
Enhancing ecological security for sustainable social,economic,and environmental development is a key focus of current research and a practical necessity for ecological management.However,the integration of retrospecti... Enhancing ecological security for sustainable social,economic,and environmental development is a key focus of current research and a practical necessity for ecological management.However,the integration of retrospective ecological security assessments with future trend predictions and fine-scale targeted regulations remains inadequate,limiting effective ecological governance and sustainable regional development.Guided by Social-Economic-Natural Complex Ecosystems(SENCE)theory,this study proposes an analytical framework that integrates ecological security assessment,prediction,and zoning management.The Daqing River Basin,a typical river basin in the North China Plain,was selected as a case study.The results indicate that overall ecological security in the Daqing River Basin improved from a“Moderate”level to a“Relatively Safe”level between 2000 and 2020;however,spatial heterogeneity persisted,with higher ecological security in northwestern and eastern regions and lower ecological security in the central region.Approximately 62% of the Basin experienced an improvement in ecological security level,except in the major urban areas of Beijing,Tianjin,and Hebei,where ecological security deteriorated.From 2025 to 2040,the overall ecological security of the Daqing River Basin is expected to improve and remain at the“Relatively Safe”level.However,spatial heterogeneity will be further aggravated as the ecological security of major urban areas continues to deteriorate.Ecological security management zones and regulation strategies are proposed at the regional and county scales to emphasize integrated regulation for the entire basin and major urban areas.The proposed analytical framework provides valuable insights for advancing theoretical research on ecological security.The case study offers a practical reference for ecological security enhancement in river basins and other regions facing significant human-land conflicts. 展开更多
关键词 Ecological security Analytical framework Assessment prediction Zoning management
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Spectrum Prediction Based on GAN and Deep Transfer Learning:A Cross-Band Data Augmentation Framework 被引量:7
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作者 Fandi Lin Jin Chen +3 位作者 Guoru Ding Yutao Jiao Jiachen Sun Haichao Wang 《China Communications》 SCIE CSCD 2021年第1期18-32,共15页
This paper investigates the problem of data scarcity in spectrum prediction.A cognitive radio equipment may frequently switch the target frequency as the electromagnetic environment changes.The previously trained mode... This paper investigates the problem of data scarcity in spectrum prediction.A cognitive radio equipment may frequently switch the target frequency as the electromagnetic environment changes.The previously trained model for prediction often cannot maintain a good performance when facing small amount of historical data of the new target frequency.Moreover,the cognitive radio equipment usually implements the dynamic spectrum access in real time which means the time to recollect the data of the new task frequency band and retrain the model is very limited.To address the above issues,we develop a crossband data augmentation framework for spectrum prediction by leveraging the recent advances of generative adversarial network(GAN)and deep transfer learning.Firstly,through the similarity measurement,we pre-train a GAN model using the historical data of the frequency band that is the most similar to the target frequency band.Then,through the data augmentation by feeding the small amount of the target data into the pre-trained GAN,temporal-spectral residual network is further trained using deep transfer learning and the generated data with high similarity from GAN.Finally,experiment results demonstrate the effectiveness of the proposed framework. 展开更多
关键词 cognitive radio cross-band spectrum prediction deep transfer learning generative adversarial network cross-band data augmentation framework
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Time-series gas prediction model using LS-SVR within a Bayesian framework 被引量:8
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作者 Qiao Meiying Ma Xiaoping +1 位作者 Lan ]ianyi Wang Ying 《Mining Science and Technology》 EI CAS 2011年第1期153-157,共5页
The traditional least squares support vector regression(LS-SVR)model,using cross validation to determine the regularization parameter and kernel parameter,is time-consuming.We propose a Bayesian evidence framework t... The traditional least squares support vector regression(LS-SVR)model,using cross validation to determine the regularization parameter and kernel parameter,is time-consuming.We propose a Bayesian evidence framework to infer the LS-SVR model parameters.Three levels Bayesian inferences are used to determine the model parameters,regularization hyper-parameters and tune the nuclear parameters by model comparison.On this basis,we established Bayesian LS-SVR time-series gas forecasting models and provide steps for the algorithm.The gas outburst data of a Hebi 10th mine working face is used to validate the model.The optimal embedding dimension and delay time of the time series were obtained by the smallest differential entropy method.Finally,within a MATLAB7.1 environment,we used actual coal gas data to compare the traditional LS-SVR and the Bayesian LS-SVR with LS-SVMlab1.5 Toolbox simulation.The results show that the Bayesian framework of an LS-SVR significantly improves the speed and accuracy of the forecast. 展开更多
关键词 Bayesian framework LS-SVR Time-series Gas prediction
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User Behavior Traffic Analysis Using a Simplified Memory-Prediction Framework 被引量:1
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作者 Rahmat Budiarto Ahmad A.Alqarni +3 位作者 Mohammed YAlzahrani Muhammad Fermi Pasha Mohamed FazilMohamed Firdhous Deris Stiawan 《Computers, Materials & Continua》 SCIE EI 2022年第2期2679-2698,共20页
As nearly half of the incidents in enterprise security have been triggered by insiders,it is important to deploy a more intelligent defense system to assist enterprises in pinpointing and resolving the incidents cause... As nearly half of the incidents in enterprise security have been triggered by insiders,it is important to deploy a more intelligent defense system to assist enterprises in pinpointing and resolving the incidents caused by insiders or malicious software(malware)in real-time.Failing to do so may cause a serious loss of reputation as well as business.At the same time,modern network traffic has dynamic patterns,high complexity,and large volumes that make it more difficult to detect malware early.The ability to learn tasks sequentially is crucial to the development of artificial intelligence.Existing neurogenetic computation models with deep-learning techniques are able to detect complex patterns;however,the models have limitations,including catastrophic forgetfulness,and require intensive computational resources.As defense systems using deep-learning models require more time to learn new traffic patterns,they cannot perform fully online(on-the-fly)learning.Hence,an intelligent attack/malware detection system with on-the-fly learning capability is required.For this paper,a memory-prediction framework was adopted,and a simplified single cell assembled sequential hierarchical memory(s.SCASHM)model instead of the hierarchical temporal memory(HTM)model is proposed to speed up learning convergence to achieve onthe-fly learning.The s.SCASHM consists of a Single Neuronal Cell(SNC)model and a simplified Sequential Hierarchical Superset(SHS)platform.The s.SCASHMis implemented as the prediction engine of a user behavior analysis tool to detect insider attacks/anomalies.The experimental results show that the proposed memory model can predict users’traffic behavior with accuracy level ranging from 72%to 83%while performing on-the-fly learning. 展开更多
关键词 Machine learning memory prediction framework insider attacks user behavior analytics
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PAMPHLET:PAM Prediction HomoLogous-Enhancement Toolkit for precise PAM prediction in CRISPR-Cas systems
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作者 Chen Qi Xuechun Shen +6 位作者 Baitao Li Chuan Liu Lei Huang Hongxia Lan Donglong Chen Yuan Jiang Dan Wang 《Journal of Genetics and Genomics》 2025年第2期258-268,共11页
CRISPR-Cas technology has revolutionized our ability to understand and engineer organisms,evolving from a singular Cas9 model to a diverse CRISPR toolbox.A critical bottleneck in developing new Cas proteins is identif... CRISPR-Cas technology has revolutionized our ability to understand and engineer organisms,evolving from a singular Cas9 model to a diverse CRISPR toolbox.A critical bottleneck in developing new Cas proteins is identifying protospacer adjacent motif(PAM)sequences.Due to the limitations of experimental methods,bioinformatics approaches have become essential.However,existing PAM prediction programs are limited by the small number of spacers in CRISPR-Cas systems,resulting in low accuracy.To address this,we develop PAMPHLET,a pipeline that uses homology searches to identify additional spacers,significantly increasing the number of spacers up to 18-fold.PAMPHLET is validated on 20 CRISPR-Cas systems and successfully predicts PAM sequences for 18 protospacers.These predictions are further validated using the DocMF platform,which characterizes protein-DNA recognition patterns via next-generation sequencing.The high consistency between PAMPHLET predictions and DocMF results for Cas proteins demonstrates the potential of PAMPHLET to enhance PAM sequence prediction accuracy,expedite the discovery process,and accelerate the development of CRISPR tools. 展开更多
关键词 CRISPR-Cas Protospacer adjacentmotif Genome editing PAM prediction Computational framework
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Advancements in energetic metal-organic frameworks, alkali and alkaline earth metal salts, and transition metal complexes: Predictive models for detonation velocity, heat, and pressure
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作者 Mohammad Hossein Keshavarz Nasser Hassanzadeh Mohammad Jafari 《Defence Technology(防务技术)》 2025年第7期96-112,共17页
Recent advancements have led to the synthesis of various new metal-containing explosives,particularly energetic metal-organic frameworks(EMOFs),which feature high-energy ligands within well-ordered crystalline structu... Recent advancements have led to the synthesis of various new metal-containing explosives,particularly energetic metal-organic frameworks(EMOFs),which feature high-energy ligands within well-ordered crystalline structures.These explosives exhibit significant advantages over traditional compounds,including higher density,greater heats of detonation,improved mechanical hardness,and excellent thermal stability.To effectively evaluate their detonation performance,it is crucial to have a reliable method for predicting detonation heat,velocity,and pressure.This study leverages experimental data and outputs from the leading commercial computer code to identify suitable decomposition pathways for different metal oxides,facilitating straightforward calculations for the detonation performance of alkali metal salts,and metal coordination compounds,along with EMOFs.The new model enhances predictive reliability for detonation velocities,aligning more closely with experimental results,as evi-denced by a root mean square error(RMSE)of 0.68 km/s compared to 1.12 km/s for existing methods.Furthermore,it accommodates a broader range of compounds,including those containing Sr,Cd,and Ag,and provides predictions for EMOFs that are more consistent with computer code outputs than previous predictive models. 展开更多
关键词 Metal-organic framework Alkali and alkaline earth metal salt Transition metal complexe Detonation performance Decomposition pathway predictive reliability
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Forecasting hourly PM_(2.5)concentrations based on decomposition-ensemble-reconstruction framework incorporating deep learning algorithms 被引量:2
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作者 Peilei Cai Chengyuan Zhang Jian Chai 《Data Science and Management》 2023年第1期46-54,共9页
Accurate predictions of hourly PM_(2.5)concentrations are crucial for preventing the harmful effects of air pollution.In this study,a new decomposition-ensemble framework incorporating the variational mode decompositi... Accurate predictions of hourly PM_(2.5)concentrations are crucial for preventing the harmful effects of air pollution.In this study,a new decomposition-ensemble framework incorporating the variational mode decomposition method(VMD),econometric forecasting method(autoregressive integrated moving average model,ARIMA),and deep learning techniques(convolutional neural networks(CNN)and temporal convolutional network(TCN))was developed to model the data characteristics of hourly PM_(2.5)concentrations.Taking the PM_(2.5)concentration of Lanzhou,Gansu Province,China as the sample,the empirical results demonstrated that the developed decomposition-ensemble framework is significantly superior to the benchmarks with the econometric model,machine learning models,basic deep learning models,and traditional decomposition-ensemble models,within one-,two-,or three-step-ahead.This study verified the effectiveness of the new prediction framework to capture the data patterns of PM_(2.5)concentration and can be employed as a meaningful PM_(2.5)concentrations prediction tool. 展开更多
关键词 PM_(2.5)concentration prediction decomposition-ensemble-reconstruction framework Variational mode decomposition method Deep learning
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Customer Churn Prediction Framework of Inclusive Finance Based on Blockchain Smart Contract
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作者 Fang Yu Wenbin Bi +2 位作者 Ning Cao Hongjun Li Russell Higgs 《Computer Systems Science & Engineering》 SCIE EI 2023年第10期1-17,共17页
In view of the fact that the prediction effect of influential financial customer churn in the Internet of Things environment is difficult to achieve the expectation,at the smart contract level of the blockchain,a cust... In view of the fact that the prediction effect of influential financial customer churn in the Internet of Things environment is difficult to achieve the expectation,at the smart contract level of the blockchain,a customer churn prediction framework based on situational awareness and integrating customer attributes,the impact of project hotspots on customer interests,and customer satisfaction with the project has been built.This framework introduces the background factors in the financial customer environment,and further discusses the relationship between customers,the background of customers and the characteristics of pre-lost customers.The improved Singular Value Decomposition(SVD)algorithm and the time decay function are used to optimize the search and analysis of the characteristics of pre-lost customers,and the key index combination is screened to obtain the data of potential lost customers.The framework will change with time according to the customer’s interest,adding the time factor to the customer churn prediction,and improving the dimensionality reduction and prediction generalization ability in feature selection.Logistic regression,naive Bayes and decision tree are used to establish a prediction model in the experiment,and it is compared with the financial customer churn prediction framework under situational awareness.The prediction results of the framework are evaluated from four aspects:accuracy,accuracy,recall rate and F-measure.The experimental results show that the context-aware customer churn prediction framework can be effectively applied to predict customer churn trends,so as to obtain potential customer data with high churn probability,and then these data can be transmitted to the company’s customer service department in time,so as to improve customer churn rate and customer loyalty through accurate service. 展开更多
关键词 Contextual awareness customer churn prediction framework dimensionality reduction generalization ability
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A Study on the Explainability of Thyroid Cancer Prediction:SHAP Values and Association-Rule Based Feature Integration Framework
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作者 Sujithra Sankar S.Sathyalakshmi 《Computers, Materials & Continua》 SCIE EI 2024年第5期3111-3138,共28页
In the era of advanced machine learning techniques,the development of accurate predictive models for complex medical conditions,such as thyroid cancer,has shown remarkable progress.Accurate predictivemodels for thyroi... In the era of advanced machine learning techniques,the development of accurate predictive models for complex medical conditions,such as thyroid cancer,has shown remarkable progress.Accurate predictivemodels for thyroid cancer enhance early detection,improve resource allocation,and reduce overtreatment.However,the widespread adoption of these models in clinical practice demands predictive performance along with interpretability and transparency.This paper proposes a novel association-rule based feature-integratedmachine learning model which shows better classification and prediction accuracy than present state-of-the-artmodels.Our study also focuses on the application of SHapley Additive exPlanations(SHAP)values as a powerful tool for explaining thyroid cancer prediction models.In the proposed method,the association-rule based feature integration framework identifies frequently occurring attribute combinations in the dataset.The original dataset is used in trainingmachine learning models,and further used in generating SHAP values fromthesemodels.In the next phase,the dataset is integrated with the dominant feature sets identified through association-rule based analysis.This new integrated dataset is used in re-training the machine learning models.The new SHAP values generated from these models help in validating the contributions of feature sets in predicting malignancy.The conventional machine learning models lack interpretability,which can hinder their integration into clinical decision-making systems.In this study,the SHAP values are introduced along with association-rule based feature integration as a comprehensive framework for understanding the contributions of feature sets inmodelling the predictions.The study discusses the importance of reliable predictive models for early diagnosis of thyroid cancer,and a validation framework of explainability.The proposed model shows an accuracy of 93.48%.Performance metrics such as precision,recall,F1-score,and the area under the receiver operating characteristic(AUROC)are also higher than the baseline models.The results of the proposed model help us identify the dominant feature sets that impact thyroid cancer classification and prediction.The features{calcification}and{shape}consistently emerged as the top-ranked features associated with thyroid malignancy,in both association-rule based interestingnessmetric values and SHAPmethods.The paper highlights the potential of the rule-based integrated models with SHAP in bridging the gap between the machine learning predictions and the interpretability of this prediction which is required for real-world medical applications. 展开更多
关键词 Explainable AI machine learning clinical decision support systems thyroid cancer association-rule based framework SHAP values classification and prediction
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A fusion deep learning framework based on breast cancer grade prediction
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作者 Weijian Tao Zufan Zhang +1 位作者 Xi Liu Maobin Yang 《Digital Communications and Networks》 CSCD 2024年第6期1782-1789,共8页
In breast cancer grading,the subtle differences between HE-stained pathological images and the insufficient number of data samples lead to grading inefficiency.With its rapid development,deep learning technology has b... In breast cancer grading,the subtle differences between HE-stained pathological images and the insufficient number of data samples lead to grading inefficiency.With its rapid development,deep learning technology has been widely used for automatic breast cancer grading based on pathological images.In this paper,we propose an integrated breast cancer grading framework based on a fusion deep learning model,which uses three different convolutional neural networks as submodels to extract feature information at different levels from pathological images.Then,the output features of each submodel are learned by the fusion network based on stacking to generate the final decision results.To validate the effectiveness and reliability of our proposed model,we perform dichotomous and multiclassification experiments on the Invasive Ductal Carcinoma(IDC)pathological image dataset and a generated dataset and compare its performance with those of the state-of-the-art models.The classification accuracy of the proposed fusion network is 93.8%,the recall is 93.5%,and the F1 score is 93.8%,which outperforms the state-of-the-art methods. 展开更多
关键词 Breast cancer Grade prediction Fusion framework Convolutional neural networks
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Traffic prediction using a self-adjusted evolutionary neural network 被引量:2
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作者 Shiva Rahimipour Rayehe Moeinfar Mehdi Hashemi 《Journal of Modern Transportation》 2019年第4期306-316,共11页
Short-term prediction of traffic flow is one of the most essential elements of all proactive traffic control systems.The aim of this paper is to provide a model based on neural networks(NNs)for multi-step-ahead traffi... Short-term prediction of traffic flow is one of the most essential elements of all proactive traffic control systems.The aim of this paper is to provide a model based on neural networks(NNs)for multi-step-ahead traffic prediction.NNs'dependency on parameter setting is the major challenge in using them as a predictor.Given the fact that the best combination of NN parameters results in the minimum error of predicted output,the main problem is NN optimization.So,it is viable to set the best combination of the parameters according to a specific traffic behavior.On the other hand,an automatic method—which is applicable in general cases—is strongly desired to set appropriate parameters for neural networks.This paper defines a self-adjusted NN using the non-dominated sorting genetic algorithm II(NSGA-II)as a multi-objective optimizer for short-term prediction.NSGA-II is used to optimize the number of neurons in the first and second layers of the NN,learning ratio and slope of the activation function.This model addresses the challenge of optimizing a multi-output NN in a self-adjusted way.Performance of the developed network is evaluated by application to both univariate and multivariate traffic flow data from an urban highway.Results are analyzed based on the performance measures,showing that the genetic algorithm tunes the NN as well without any manually pre-adjustment.The achieved prediction accuracy is calculated with multiple measures such as the root mean square error(RMSE),and the RMSE value is 10 and 12 in the best configuration of the proposed model for single and multi-step-ahead traffic flow prediction,respectively. 展开更多
关键词 TRAFFIC prediction NEURAL NETWORKS GENETIC algorithm Self-adjusted framework
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Object Identification in Dynamic Images Based on the Memory-Prediction Theory of Brain Function 被引量:3
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作者 Marek Bundzel Shuji Hashimoto 《Journal of Intelligent Learning Systems and Applications》 2010年第4期212-220,共9页
In 2004, Jeff Hawkins presented a memory-prediction theory of brain function, and later used it to create the Hierar-chical Temporal Memory model. Several of the concepts described in the theory are applied here in a ... In 2004, Jeff Hawkins presented a memory-prediction theory of brain function, and later used it to create the Hierar-chical Temporal Memory model. Several of the concepts described in the theory are applied here in a computer vision system for a mobile robot application. The aim was to produce a system enabling a mobile robot to explore its envi-ronment and recognize different types of objects without human supervision. The operator has means to assign names to the identified objects of interest. The system presented here works with time ordered sequences of images. It utilizes a tree structure of connected computational nodes similar to Hierarchical Temporal Memory and memorizes frequent sequences of events. The structure of the proposed system and the algorithms involved are explained. A brief survey of the existing algorithms applicable in the system is provided and future applications are outlined. Problems that can arise when the robot’s velocity changes are listed, and a solution is proposed. The proposed system was tested on a sequence of images recorded by two parallel cameras moving in a real world environment. Results for mono- and ste-reo vision experiments are presented. 展开更多
关键词 MEMORY prediction framework Mobile ROBOTICS COMPUTER VISION UNSUPERVISED Learning
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Short-Term Relay Quality Prediction Algorithm Based on Long and Short-Term Memory 被引量:3
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作者 XUE Wendong CHAI Yuan +2 位作者 LI Qigan HONG Yongqiang ZHENG Gaofeng 《Instrumentation》 2018年第4期46-54,共9页
The fraction defective of semi-finished products is predicted to optimize the process of relay production lines, by which production quality and productivity are increased, and the costs are decreased. The process par... The fraction defective of semi-finished products is predicted to optimize the process of relay production lines, by which production quality and productivity are increased, and the costs are decreased. The process parameters of relay production lines are studied based on the long-and-short-term memory network. Then, the Keras deep learning framework is utilized to build up a short-term relay quality prediction algorithm for the semi-finished product. A simulation model is used to study prediction algorithm. The simulation results show that the average prediction absolute error of the fraction is less than 5%. This work displays great application potential in the relay production lines. 展开更多
关键词 RELAY Production LINE LONG and SHORT-TERM MEMORY Network Keras DEEP Learning framework Quality prediction
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An End-to-End Machine Learning Framework for Predicting Common Geriatric Diseases
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作者 Jian Guo Yu Han +2 位作者 Fan Xu Jiru Deng Zhe Li 《Journal of Beijing Institute of Technology》 EI CAS 2023年第2期209-218,共10页
Interdisciplinary applications between information technology and geriatrics have been accelerated in recent years by the advancement of artificial intelligence,cloud computing,and 5G technology,among others.Meanwhile... Interdisciplinary applications between information technology and geriatrics have been accelerated in recent years by the advancement of artificial intelligence,cloud computing,and 5G technology,among others.Meanwhile,applications developed by using the above technologies make it possible to predict the risk of age-related diseases early,which can give caregivers time to intervene and reduce the risk,potentially improving the health span of the elderly.However,the popularity of these applications is still limited for several reasons.For example,many older people are unable or unwilling to use mobile applications or devices(e.g.smartphones)because they are relatively complex operations or time-consuming for older people.In this work,we design and implement an end-to-end framework and integrate it with the WeChat platform to make it easily accessible to elders.In this work,multifactorial geriatric assessment data can be collected.Then,stacked machine learning models are trained to assess and predict the incidence of common diseases in the elderly.Experimental results show that our framework can not only provide more accurate prediction(precision:0.8713,recall:0.8212)for several common elderly diseases,but also very low timeconsuming(28.6 s)within a workflow compared to some existing similar applications. 展开更多
关键词 predicting geriatric diseases machine learning end-to-end framework
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User Churn Prediction Hierarchical Model Based on Graph Attention Convolutional Neural Networks
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作者 Mei Miao Tang Miao Zhou Long 《China Communications》 SCIE CSCD 2024年第7期169-185,共17页
The telecommunications industry is becoming increasingly aware of potential subscriber churn as a result of the growing popularity of smartphones in the mobile Internet era,the quick development of telecommunications ... The telecommunications industry is becoming increasingly aware of potential subscriber churn as a result of the growing popularity of smartphones in the mobile Internet era,the quick development of telecommunications services,the implementation of the number portability policy,and the intensifying competition among operators.At the same time,users'consumption preferences and choices are evolving.Excellent churn prediction models must be created in order to accurately predict the churn tendency,since keeping existing customers is far less expensive than acquiring new ones.But conventional or learning-based algorithms can only go so far into a single subscriber's data;they cannot take into consideration changes in a subscriber's subscription and ignore the coupling and correlation between various features.Additionally,the current churn prediction models have a high computational burden,a fuzzy weight distribution,and significant resource economic costs.The prediction algorithms involving network models currently in use primarily take into account the private information shared between users with text and pictures,ignoring the reference value supplied by other users with the same package.This work suggests a user churn prediction model based on Graph Attention Convolutional Neural Network(GAT-CNN)to address the aforementioned issues.The main contributions of this paper are as follows:Firstly,we present a three-tiered hierarchical cloud-edge cooperative framework that increases the volume of user feature input by means of two aggregations at the device,edge,and cloud layers.Second,we extend the use of users'own data by introducing self-attention and graph convolution models to track the relative changes of both users and packages simultaneously.Lastly,we build an integrated offline-online system for churn prediction based on the strengths of the two models,and we experimentally validate the efficacy of cloudside collaborative training and inference.In summary,the churn prediction model based on Graph Attention Convolutional Neural Network presented in this paper can effectively address the drawbacks of conventional algorithms and offer telecom operators crucial decision support in developing subscriber retention strategies and cutting operational expenses. 展开更多
关键词 cloud-edge cooperative framework GAT-CNN self-attention and graph convolution models subscriber churn prediction
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An Improved Machine Learning Technique with Effective Heart Disease Prediction System
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作者 Mohammad Tabrez Quasim Saad Alhuwaimel +4 位作者 Asadullah Shaikh Yousef Asiri Khairan Rajab Rihem Farkh Khaled Al Jaloud 《Computers, Materials & Continua》 SCIE EI 2021年第12期4169-4181,共13页
Heart disease is the leading cause of death worldwide.Predicting heart disease is challenging because it requires substantial experience and knowledge.Several research studies have found that the diagnostic accuracy o... Heart disease is the leading cause of death worldwide.Predicting heart disease is challenging because it requires substantial experience and knowledge.Several research studies have found that the diagnostic accuracy of heart disease is low.The coronary heart disorder determines the state that influences the heart valves,causing heart disease.Two indications of coronary heart disorder are strep throat with a red persistent skin rash,and a sore throat covered by tonsils or strep throat.This work focuses on a hybrid machine learning algorithm that helps predict heart attacks and arterial stiffness.At first,we achieved the component perception measured by using a hybrid cuckoo search particle swarm optimization(CSPSO)algorithm.With this perception measure,characterization and accuracy were improved,while the execution time of the proposed model was decreased.The CSPSO-deep recurrent neural network algorithm resolved issues that state-of-the-art methods face.Our proposed method offers an illustrative framework that helps predict heart attacks with high accuracy.The proposed technique demonstrates the model accuracy,which reached 0.97 with the applied dataset. 展开更多
关键词 Machine learning deep recurrent neural network effective heart disease prediction framework
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天气-气候一体化模式无缝隙预报流程及其评估体系的构建
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作者 陈林 洪玉涛 +8 位作者 李昊谦 周旋 孙明 容新尧 苏京志 刘波 马利斌 彭珂 张荣华 《大气科学学报》 北大核心 2026年第1期196-207,共12页
以Global-Regional Integrated Forecast System with Modular Ocean Model(GRISTMOM)一体化模式为范例,构建了覆盖天气-次季节-季节尺度的0~90 d无缝隙预报流程,提出了一种兼具计算效率与预报性能需求的变分辨率无缝隙预报方案,并针对... 以Global-Regional Integrated Forecast System with Modular Ocean Model(GRISTMOM)一体化模式为范例,构建了覆盖天气-次季节-季节尺度的0~90 d无缝隙预报流程,提出了一种兼具计算效率与预报性能需求的变分辨率无缝隙预报方案,并针对该无缝隙预报流程在分辨率切换过程中的连续性与平稳性,设计了一套系统化的定量评估框架。本研究在GRISTMOM一体化模式无缝隙预报系统的基础上,以GRISTMOM变分辨率预报试验为应用范例,通过对关键大尺度背景场、典型天气系统及热带季节内振荡(Madden-Julian Oscillation,MJO)等多尺度特征的综合分析,对该无缝隙预报系统变分辨率衔接流程的连续平稳性进行了定量评估。结果表明:1)10 km×10 km切换为100 km×100 km的变分辨率预报过程中,大尺度环流场的预报误差在变分辨率衔接过渡阶段平滑无突变,表明该无缝隙流程在大尺度环流场上保持良好的连续性和稳定性;2)在对不同时空尺度预报对象的检验中,台风(典型天气系统)的路径、强度、降水落区及其环流结构在分辨率转换前后具有良好的时空一致性,MJO(典型次季节变率)的位相轨迹及其相关的对流-风场传播特征也能够在不同分辨率衔接中保持平滑延续,表明该流程在多尺度天气-气候信号传递方面具有良好的物理完整性。 展开更多
关键词 天气-气候一体化模式 无缝隙预报 无缝隙预报方案 变分辨率预报试验 无缝隙预报流程评估体系
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电站锅炉安全科技研究二十年回顾与展望
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作者 赵钦新 梁志远 +4 位作者 王硕 车畅 王静杰 邵怀爽 杨旭 《特种设备学报》 2026年第1期80-90,共11页
笔者回顾了“十一五”到“十四五”期间主持国家重点研发计划项目中课题组织和执行的历程,在原国家质检总局(后期为市场监管总局)组织领导和中国特种设备检测研究院牵头的特种设备安全科技研究发展战略中,笔者呈现了科研团队提出电站锅... 笔者回顾了“十一五”到“十四五”期间主持国家重点研发计划项目中课题组织和执行的历程,在原国家质检总局(后期为市场监管总局)组织领导和中国特种设备检测研究院牵头的特种设备安全科技研究发展战略中,笔者呈现了科研团队提出电站锅炉安全科技研究的总体技术思路、分析和综合相结合的研究方法,展示了协同科研取得的科研成果以及这些成果如何转化成指导电站锅炉安全生产促进经济和社会发展的安全监管体系、技术标准和安全评估及预测预警方法,为电站锅炉长周期安全运行构建了一道切实可行的防火墙。实践证明:体系化的领导组织管理、正确的研究思路和研究方法、实事求是反映时代需求的命题设置、产学研诸环节协同攻关创新、全面响应和解决电站锅炉安全生产中存在的现实问题是协同科技攻关重大需求研究中的成功路径。 展开更多
关键词 电站锅炉 安全科技研究 研究思路 研究方法 安全评估 预测预警 重大需求
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基于双层优化和卡尔曼滤波分频框架的电动汽车负荷预测
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作者 许晓敏 杨梦琪 +3 位作者 李湘颖 肖亮 关晓 杨溢 《科学技术与工程》 北大核心 2026年第9期3817-3829,共13页
在“双碳”战略目标的推动下,低碳绿色的出行需求带动了电动汽车的规模化普及。为提升电动汽车充电负荷预测精度,支撑电网稳定运行与充电设施优化调度,提出一种基于双层优化和无迹卡尔曼滤波算法(unscented Kalman filter, UKF)分频集... 在“双碳”战略目标的推动下,低碳绿色的出行需求带动了电动汽车的规模化普及。为提升电动汽车充电负荷预测精度,支撑电网稳定运行与充电设施优化调度,提出一种基于双层优化和无迹卡尔曼滤波算法(unscented Kalman filter, UKF)分频集成框架(decomposition-ensemble learning prediction, DEP)的电动汽车负荷预测模型。首先,构建BKA-VMD分解模型,引入黑翅鸢优化算法(black-winged kite algorithm, BKA)对变分模态分解(variational mode decomposition, VMD)参数进行自适应寻优,提高分解的稳定性与模态特征提取能力。其次,运用改进的极光优化算法(improved polar lights optimization, IPLO)优化预测模型超参数,使用UKF-Transformer-LSTM、UKF-Transformer、LSTM模型分别对高中低频分量进行预测,增强模型在全局搜索与局部开发之间的平衡性,提升预测的收敛性与鲁棒性。最后,选取H区域电动汽车充电站的充电负荷数据进行实证分析。结果表明,本文模型在多类性能指标上显著优于对比模型,R2达0.9941,适用于电动汽车充电超短期负荷预测,能够为EV负荷实时调度与充电站分钟级响应等应用场景提供支持。 展开更多
关键词 黑翅鸢优化算法 变分模态分解 极光优化算法 无迹卡尔曼滤波算法 分解预测框架
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