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Yue Wu
Guest PhD student
,
AAU Energy
Guest PhD student
,
The Faculty of Engineering and Science
Guest PhD student
,
Power Electronics System Integration and Materials
Batteries
Email
yuew
energy.aau
dk
2022
2023
Research activity per year
Overview
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Publications
(2)
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Dive into the research topics where Yue Wu is active. These topic labels come from the works of this person. Together they form a unique fingerprint.
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Weight
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Engineering
Electric Vehicle
95%
Temperature
95%
Networks
95%
Learning Task
95%
Accuracy
88%
Illustrates
64%
Battery Life
64%
Error
43%
Prediction
43%
Mean Absolute Error
43%
Root Mean Square Error
43%
Reliability
35%
Measurement Data
31%
Computational Efficiency
31%
Temperature Profile
31%
External Condition
31%
Experiments
31%
Transfer Learning
31%
State of Charge
31%
Monitoring Result
31%
Convolutional Neural Network
31%
Aging
31%
Safe Operation
31%
Estimation
31%
Battery Management System
31%
Potential Application
31%
Benchmark
31%
Energy Engineering
31%
Tasks
31%
Applications
31%
Requirements
31%
Battery Capacity
23%
Dataset
23%
Regression
11%
Mean Value
11%
Gaussian Mixture Model
11%
Square Mean
11%
Conventional Method
11%
High Accuracy
11%
Models
11%
Reduction
11%
Electric Potential
11%
Confidence Interval
11%
Selection Method
11%
Base Model
11%
Long Short-Term Memory
11%
Correlation
11%
Computer Science
Accuracy
100%
Multitask Learning
95%
Mean Absolute Error
43%
Internal Variable
31%
Measurement Data
31%
Multiple Task
31%
Benchmark
31%
And-States
31%
System Management
31%
Transfer Learning
31%
Generation
31%
Key Requirement
31%
Convolutional Neural Network
31%
Application Scenario
31%
Computational Efficiency
31%
Potential Application
31%
Battery Capacity
23%
Long Short-Term Memory Network
11%
Training Model
11%
High Correlation
11%
Conventional Method
11%
Gaussian Mixture Model
11%
Selection Method
11%
Regression
11%
References
11%
Models
11%
Physics
Battery
95%
Information
95%
Neural Network
95%
Electric Battery
95%
Reliability
35%
Model
35%
Degradation
23%
Migration
11%
Electric Potential
11%
Memory
11%
Confidence
11%
Networks
11%
Value
11%
Intervals
11%
Mixtures
11%
Correlation
11%