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A novel multimode process monitoring method integrating LDRSKM with Bayesian inference
Shi-jin REN,Yin LIANG,Xiang-jun ZHAO,Mao-yun YANG
Frontiers of Information Technology & Electronic Engineering 2015, Volume 16, Issue 8, Pages 617-633 doi: 10.1631/FITEE.1400263
Keywords: Multimode process monitoring Local discriminant regularized soft k-means clustering Kernel supportvector data description Bayesian inference Tennessee Eastman process
Image quality assessmentmethod based on nonlinear feature extraction in kernel space Article
Yong DING,Nan LI,Yang ZHAO,Kai HUANG
Frontiers of Information Technology & Electronic Engineering 2016, Volume 17, Issue 10, Pages 1008-1017 doi: 10.1631/FITEE.1500439
Keywords: Image quality assessment Full-reference method Feature extraction Kernel space Support vector regression
Liquefaction prediction using support vector machine model based on cone penetration data
Pijush SAMUI
Frontiers of Structural and Civil Engineering 2013, Volume 7, Issue 1, Pages 72-82 doi: 10.1007/s11709-013-0185-y
Keywords: earthquake cone penetration test liquefaction support vector machine (SVM) prediction
Alireza TABARSA, Nima LATIFI, Abdolreza OSOULI, Younes BAGHERI
Frontiers of Structural and Civil Engineering 2021, Volume 15, Issue 2, Pages 520-536 doi: 10.1007/s11709-021-0689-9
Keywords: unconfined compressive strength artificial neural network support vector machine predictive models regression
Ali Reza GHANIZADEH, Hakime ABBASLOU, Amir Tavana AMLASHI, Pourya ALIDOUST
Frontiers of Structural and Civil Engineering 2019, Volume 13, Issue 1, Pages 215-239 doi: 10.1007/s11709-018-0489-z
Keywords: bentonite/sepiolite plastic concrete compressive strength artificial neural network support vector machine
Diagnosis of sewer pipe defects on image recognition of multi-features and support vector machine in
Xiangyang Ye, Jian’e Zuo, Ruohan Li, Yajiao Wang, Lili Gan, Zhonghan Yu, Xiaoqing Hu
Frontiers of Environmental Science & Engineering 2019, Volume 13, Issue 2, doi: 10.1007/s11783-019-1102-y
An image-recognition-based diagnosis system of pipe defect types was established. 1043 practical pipe images were gathered by CCTV robot in a southern Chinese city. The overall accuracy of the system is 84% and the highest accuracy is 99.3%. The accuracy shows positive correlation to the number of training samples.
Keywords: Sewer pipe defects Defect diagnosing Image recognition Multi-features extraction Support vector machine
Generalization and application in time series forecasting of the least square support vector machine
Xiang Xiaodong
Strategic Study of CAE 2008, Volume 10, Issue 11, Pages 89-92
According to the theory that the present data contains more future informationthan historical data in time-series,the paper extends the prediction method of least square supportvector machine and obtains a more general prediction model of least square support vector machine,andextended model is more effective.Therefore it improves the value of the prediction method of least square supportvector machine.
Keywords: least square support vector machine generalization time series forecasting
A robust intelligent audio watermarking scheme using support vector machine Article
Mohammad MOSLEH,Hadi LATIFPOUR,Mohammad KHEYRANDISH,Mahdi MOSLEH,Najmeh HOSSEINPOUR
Frontiers of Information Technology & Electronic Engineering 2016, Volume 17, Issue 12, Pages 1320-1330 doi: 10.1631/FITEE.1500297
Keywords: Audio watermarking Copyright protection Singular value decomposition (SVD) Machine learning Supportvector machine (SVM)
Big Data to support sustainable urban energy planning: The EvoEnergy project
Moulay Larbi CHALAL, Benachir MEDJDOUB, Nacer BEZAI, Raid SHRAHILY
Frontiers of Engineering Management 2020, Volume 7, Issue 2, Pages 287-300 doi: 10.1007/s42524-019-0081-9
Keywords: urban energy planning sustainable planning Big Data household transition energy prediction
Research on the data processing methods of airborne vector gravimetry using SINS/GNSS
Ning Jinsheng
Strategic Study of CAE 2014, Volume 16, Issue 3, Pages 4-13
Airborne vector gravimetry is an advanced and efficient technology to determine high frequency informationThe principle of airborne vector gravimetry using SINS(strapdown inertial navigation system)/GNSS(globalnavigation satellite systems)is introduced in the paper,and then the data preprocessing,data reductiontopographical effect and downward continuation are discussed,as well as the geoid determination from airborne vectorIt provides the support for the development of airborne vector gravimetry in our country.
Keywords: airborne vector gravimetry SINS/GNSS data fusion earth gravity field geoid
Improving lipid production by for renewable fuel production based on machine learning
Frontiers of Chemical Science and Engineering 2024, Volume 18, Issue 5, doi: 10.1007/s11705-024-2410-8
Keywords: microbial lipid machine learning artificial neural network support vector machine genetic algorithm
Frontiers in Energy 2022, Volume 16, Issue 2, Pages 277-291 doi: 10.1007/s11708-021-0731-6
Keywords: sooting tendency yield sooting index Bayesian multiple kernel learning surrogate assessment surrogate
A comprehensive review and analysis of solar forecasting techniques
Pardeep SINGLA, Manoj DUHAN, Sumit SAROHA
Frontiers in Energy 2022, Volume 16, Issue 2, Pages 187-223 doi: 10.1007/s11708-021-0722-7
Keywords: forecasting techniques hybrid models neural network solar forecasting error metric support vector machine
artificial intelligence based method for evaluating power grid node importance using network embedding and supportvector regression Research Papers
Hui-fang WANG, Chen-yu ZHANG, Dong-yang LIN, Ben-teng HE
Frontiers of Information Technology & Electronic Engineering 2019, Volume 20, Issue 6, Pages 816-828 doi: 10.1631/FITEE.1800146
Keywords: Power grid Artificial intelligence Node importance Text-associated DeepWalk Network embedding Supportvector regression
LSSVM-based approach for refining soil failure criteria and calculating safety factor of slopes
Shiguo XIAO; Shaohong LI
Frontiers of Structural and Civil Engineering 2022, Volume 16, Issue 7, Pages 871-881 doi: 10.1007/s11709-022-0863-8
Keywords: slope stability safety factor failure criterion least square support vector machine
Title Author Date Type Operation
A novel multimode process monitoring method integrating LDRSKM with Bayesian inference
Shi-jin REN,Yin LIANG,Xiang-jun ZHAO,Mao-yun YANG
Journal Article
Image quality assessmentmethod based on nonlinear feature extraction in kernel space
Yong DING,Nan LI,Yang ZHAO,Kai HUANG
Journal Article
Liquefaction prediction using support vector machine model based on cone penetration data
Pijush SAMUI
Journal Article
Unconfined compressive strength prediction of soils stabilized using artificial neural networks and supportvector machines
Alireza TABARSA, Nima LATIFI, Abdolreza OSOULI, Younes BAGHERI
Journal Article
Modeling of bentonite/sepiolite plastic concrete compressive strength using artificial neural network and supportvector machine
Ali Reza GHANIZADEH, Hakime ABBASLOU, Amir Tavana AMLASHI, Pourya ALIDOUST
Journal Article
Diagnosis of sewer pipe defects on image recognition of multi-features and support vector machine in
Xiangyang Ye, Jian’e Zuo, Ruohan Li, Yajiao Wang, Lili Gan, Zhonghan Yu, Xiaoqing Hu
Journal Article
Generalization and application in time series forecasting of the least square support vector machine
Xiang Xiaodong
Journal Article
A robust intelligent audio watermarking scheme using support vector machine
Mohammad MOSLEH,Hadi LATIFPOUR,Mohammad KHEYRANDISH,Mahdi MOSLEH,Najmeh HOSSEINPOUR
Journal Article
Big Data to support sustainable urban energy planning: The EvoEnergy project
Moulay Larbi CHALAL, Benachir MEDJDOUB, Nacer BEZAI, Raid SHRAHILY
Journal Article
Research on the data processing methods of airborne vector gravimetry using SINS/GNSS
Ning Jinsheng
Journal Article
Improving lipid production by for renewable fuel production based on machine learning
Journal Article
An assessment of surrogate fuel using Bayesian multiple kernel learning model in sight of sooting tendency
Journal Article
A comprehensive review and analysis of solar forecasting techniques
Pardeep SINGLA, Manoj DUHAN, Sumit SAROHA
Journal Article
artificial intelligence based method for evaluating power grid node importance using network embedding and supportvector regression
Hui-fang WANG, Chen-yu ZHANG, Dong-yang LIN, Ben-teng HE
Journal Article