Assoc Prof Nathan Downs
Name | Nathan Downs |
---|---|
Position | Associate Professor (Mathematics) |
Section | School of Mathematics, Physics and Computing |
Office | D118 |
Location | Toowoomba Campus |
Phone | +61 7 4631 5521 |
Extension | 5521 |
Qualifications | BEd USQ , BEng(Hons) USQ , MPhil USQ , PhD USQ |
Homepage |
https://www.researchgate.net/profile/Nathan_Downs The views expressed on staff homepages may not reflect the views of the University. |
-
Physical Sciences not elsewhere classified
( 029999)
-
Atmospheric Sciences not elsewhere classified
( 040199)
-
Public Health and Health Services not elsewhere classified
( 111799)
-
Atmospheric Sciences not elsewhere classified
( 370199)
-
Other Physical Sciences not elsewhere classified
( 519999)
-
Public Health not elsewhere classified
( 420699)
-
Public Health
( 420600)
-
Atmospheric Sciences
( 370100)
-
Other Physical Sciences
( 519900)
Solar UV radiation
Public Health
Maths/Science Education
-
Centre for Health Sciences Research (CHSR)
-
International Centre for Applied Climate Sciences (ICACS)
ENM1500
MAT1000
MAT1102
-
Physical Sciences not elsewhere classified
( 029999)
-
Atmospheric Sciences not elsewhere classified
( 040199)
-
Public Health and Health Services not elsewhere classified
( 111799)
-
Atmospheric Sciences not elsewhere classified
( 370199)
-
Other Physical Sciences not elsewhere classified
( 519999)
-
Public Health not elsewhere classified
( 420699)
-
Public Health
( 420600)
-
Atmospheric Sciences
( 370100)
-
Other Physical Sciences
( 519900)
-
Explainable Artificial Intelligence Predictive Models of Solar Ultraviolet UV Radiation and Cloud Cover Effects for Skin and Eye Health Risk Evaluation
-
Energy Demand and Price Forecasting with Artificial Intelligence Models for Consumer Energy Predictability
-
Modelling and Optimisation of Wind Power with Artificial Intelligence Approaches
-
Renewable Energy Resource Forecasting with Cloud Cover Bias Correction in Numerical Weather Models
-
Modelling Tropical Cyclones for Disaster Risk Management with Deep Learning Approaches