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Hossein Foroozand
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Year
Entropy Ensemble Filter: A Modified Bootstrap Aggregating (Bagging) Procedure to Improve Efficiency in Ensemble Model Simulation
H Foroozand, SV Weijs
Entropy 19 (10), 520, 2017
132017
Dependency and Redundancy: How Information Theory Untangles Three Variable Interactions in Environmental Data
SV Weijs, H Foroozand, A Kumar
Water Resources Research 54 (10), 7143-7148, 2018
112018
Application of entropy ensemble filter in neural network forecasts of tropical Pacific sea surface temperatures
H Foroozand, V Radić, SV Weijs
Entropy 20 (3), 207, 2018
102018
Objective functions for information-theoretical monitoring network design: what is “optimal”?
H Foroozand, SV Weijs
Hydrology and Earth System Sciences 25 (2), 831-850, 2021
72021
A comparative study of honey-bee mating optimization algorithm and support vector regression system approach for river discharge prediction Case study: Kashkan River Basin
H Foroozand, SH Afzali
International Conference on Civil Engineering Architecture and urban …, 2015
42015
Application of machine learning and information theory to monitor and predict environmental signals
H Foroozand
UNIVERSITY OF BRITISH COLUMBIA (Vancouver, 2021
2021
Tracking bits of information through forecasting systems: from source to decision
S Weijs, H Foroozand
EGU General Assembly Conference Abstracts, 13223, 2020
2020
Entropy Ensemble Filter: Does information content assessment of bootstrapped training datasets before model training lead to better trade-off between ensemble size and …
H Foroozand, SV Weijs
EGU General Assembly Conference Abstracts, 1963, 2020
2020
Information theory-based location of sensor nodes: what is optimal?
SV Weijs, H Foroozand
AGU Fall Meeting Abstracts 2018, H11M-1629, 2018
2018
SOURCING AND CHANNELLING INFORMATION FLOWS FOR HYDROLOGICAL PREDICTION
SV Weijs, H Foroozand, A Kumar, LC Galindo
2017
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Articles 1–10