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Measurement and Prediction of Decomposed Energy Efficiencies of Lithium Ion Batteries With Two Charge Models
Journal article
Huang, Y.H., Su, Y., Garg, A.. Measurement and Prediction of Decomposed Energy Efficiencies of Lithium Ion Batteries With Two Charge Models[J]. Journal of Electrochemical Energy Conversion and Storage, 2021, 030901-030901.
Authors:
Huang, Y.H.
;
Su, Y.
;
Garg, A.
Favorite
|
IF:
2.7
/
2.4
|
Submit date:2023/08/16
Artificial neural network prediction
Degradation patterns
Energy efficiencies
Lithium-ion batteries
Measurement and Prediction of Decomposed Energy Efficiencies of Lithium Ion Batteries With Two Charge Models
Journal article
Huang, Yuhao, Su, Yan, Garg, Akhil. Measurement and Prediction of Decomposed Energy Efficiencies of Lithium Ion Batteries With Two Charge Models[J]. JOURNAL OF ELECTROCHEMICAL ENERGY CONVERSION AND STORAGE, 2021, 18(3), JEECS-20-1145.
Authors:
Huang, Yuhao
;
Su, Yan
;
Garg, Akhil
Favorite
|
TC[WOS]:
3
TC[Scopus]:
3
IF:
2.7
/
2.4
|
Submit date:2022/05/13
Artificial Neural Network Prediction
Batteries
Degradation Patterns
Electrochemical Storage
Energy Efficiencies
Lithium-ion Batteries
Predicting oral disintegrating tablet formulations by neural network techniques
Journal article
Han, Run, Yang, Yilong, Li, Xiaoshan, Ouyang, Defang. Predicting oral disintegrating tablet formulations by neural network techniques[J]. ASIAN JOURNAL OF PHARMACEUTICAL SCIENCES, 2018, 13(4), 336-342.
Authors:
Han, Run
;
Yang, Yilong
;
Li, Xiaoshan
;
Ouyang, Defang
Favorite
|
TC[WOS]:
57
TC[Scopus]:
73
IF:
10.7
/
9.0
|
Submit date:2018/10/30
Oral Disintegrating Tablets
Formulation Prediction
Artificial Neural Network
Deep Neural Network
Deep-learning
Using Principle Component Regression, Artificial Neural Network, and Hybrid Models for Predicting Phytoplankton Abundance in Macau Storage Reservoir
Journal article
Iek In Ieong, Inchio Lou, Wai Kin Ung, Kai Meng Mok. Using Principle Component Regression, Artificial Neural Network, and Hybrid Models for Predicting Phytoplankton Abundance in Macau Storage Reservoir[J]. Environmental Modeling and Assessment, 2015, 20(4), 355-365.
Authors:
Iek In Ieong
;
Inchio Lou
;
Wai Kin Ung
;
Kai Meng Mok
Favorite
|
TC[WOS]:
7
TC[Scopus]:
11
IF:
2.7
/
2.5
|
Submit date:2019/02/12
Algal Bloom
Artificial Neural Network
Forecast Model
Phytoplankton Abundance
Prediction Model
Principle Component Analysis
Analysis of daily solar power prediction with data-driven approaches
Journal article
Long H., Zhang Z., Su Y.. Analysis of daily solar power prediction with data-driven approaches[J]. Applied Energy, 2014, 126, 29.
Authors:
Long H.
;
Zhang Z.
;
Su Y.
Favorite
|
TC[WOS]:
119
TC[Scopus]:
144
|
Submit date:2018/10/30
Artificial Neural Network (Ann)
Data Mining
Solar Power Prediction
Support Vector Machine (Svm)
Time-series Model
Modelling and prediction of diesel vehicle engine performance using relevance vector machine
Conference paper
K. I. Wong, Wong, Pak Kin, C.S. Cheung. Modelling and prediction of diesel vehicle engine performance using relevance vector machine[C], 2012.
Authors:
K. I. Wong
;
Wong, Pak Kin
;
C.S. Cheung
Favorite
|
|
Submit date:2019/04/12
Modelling
Diesel Engine Emissions
Engine Performance Prediction
Relevance Vector Machine
Artificial Neural Network
Is a complex neural network based air quality prediction model better than a simple one? A Bayesian point of view
Conference paper
K. I. Hoi, K. V. Yuen, K. M. Mok. Is a complex neural network based air quality prediction model better than a simple one? A Bayesian point of view[C]:AMER INST PHYSICS, 2 HUNTINGTON QUADRANGLE, STE 1NO1, MELVILLE, NY 11747-4501 USA, 2010, 764-769.
Authors:
K. I. Hoi
;
K. V. Yuen
;
K. M. Mok
Favorite
|
TC[WOS]:
0
TC[Scopus]:
1
|
Submit date:2019/02/12
Air Quality Prediction
Artificial Neural Network
Bayesian Approach
Macau
Pm10
Prediction of daily averaged PM10 concentrations by statistical time-varying model
Journal article
K.I. Hoi, K.V. Yuen, K.M. Mok. Prediction of daily averaged PM10 concentrations by statistical time-varying model[J]. Atmospheric Environment, 2009, 43(16), 2579-2581.
Authors:
K.I. Hoi
;
K.V. Yuen
;
K.M. Mok
Favorite
|
TC[WOS]:
42
TC[Scopus]:
47
IF:
4.2
/
4.4
|
Submit date:2018/10/30
Air Quality Prediction
Artificial Neural Network
Kalman Filter
Coastal City
Macau
Pm10
An Artificial Neural Network Model for the Prediction of Daily Averaged PM10 Concentrations in Macau
Conference paper
Hoi, K. I., Yuen, K. V., Mok, K. M.. An Artificial Neural Network Model for the Prediction of Daily Averaged PM10 Concentrations in Macau[C], 2008.
Authors:
Hoi, K. I.
;
Yuen, K. V.
;
Mok, K. M.
Favorite
|
|
Submit date:2022/07/27
Air Quality Prediction
artificial neural network
Macau
PM10