Searched for: subject%3A%22Ensemble%255C+model%22
(1 - 8 of 8)
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Zarifsanayei, Amin Reza (author), Antolínez, José A. Á. (author), Cartwright, Nick (author), Etemad-Shahidi, Amir (author), Strauss, Darrell (author), Lemos, Gil (author), Semedo, Alvaro (author), Kumar, Rajesh (author), Dobrynin, Mikhail (author), Akpınar, Adem (author)
In this study four experiments were conducted to investigate uncertainty in future longshore sediment transport (LST) projections due to: working with continuous time series of CSIRO CMIP6-driven waves (experiment #1) or sliced time series of waves from CSIRO-CMIP6-Ws and CSIRO-CMIP5-Ws (experiment #2); different wave-model-parametrization pairs...
journal article 2023
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Piadeh, Farzad (author), Behzadian, Kourosh (author), Chen, Albert S. (author), Kapelan, Z. (author), Rizzuto, Joseph P. (author), Campos, Luiza C. (author)
This study presents a novel approach for urban flood forecasting in drainage systems using a dynamic ensemble-based data mining model which has yet to be utilised properly in this context. The proposed method incorporates an event identification technique and rainfall feature extraction to develop weak learner data mining models. These models...
journal article 2023
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Pierzyna, Maximilian (author), Saathof, R. (author), Basu, S. (author)
Free-Space Optical Communication (FSOC) links are considered a key technology to support the increasing needs of our connected, data-heavy world, but they are prone to disturbance through atmospheric processes such as optical turbulence. Since turbulence is highly dependent on local topographic and meteorological conditions, modeling optical...
conference paper 2023
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Zarifsanayei, Amin Reza (author), Antolínez, José A. Á. (author), Etemad-Shahidi, Amir (author), Cartwright, Nick (author), Strauss, Darrell (author), Lemos, Gil (author)
This study quantifies the uncertainties in the projected changes in potential longshore sediment transport (LST) rates along a non-straight coastline. Four main sources of uncertainty, including the choice of emission scenarios, Global Circulation Model-driven offshore wave datasets (GCM-Ws), LST models, and their non-linear interactions were...
journal article 2022
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Colonna, Kyle J. (author), Nane, G.F. (author), Choma, Ernani F. (author), Cooke, R.M. (author), Evans, John S. (author)
Coronavirus disease 2019 (COVID-19) forecasts from over 100 models are readily available. However, little published information exists regarding the performance of their uncertainty estimates (i.e. probabilistic performance). To evaluate their probabilistic performance, we employ the classical model (CM), an established method typically used...
journal article 2022
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Zarifsanayei, Amin Reza (author), Antolínez, José A. Á. (author), Etemad-Shahidi, Amir (author), Cartwright, Nick (author), Strauss, Darrell (author)
Although there have been many efforts in the literature to hindcast the patterns of longshore sediment transport (LST), they mainly disregarded uncertainty issues. Forcing datasets, wave transformation methods, and LST models are among the main sources of uncertainty in LST estimations. The combination of the aforementioned sources of...
journal article 2022
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Janizadeh, Saeid (author), Vafakhah, Mehdi (author), Kapelan, Z. (author), Dinan, Naghmeh Mobarghaee (author)
Identifying areas prone to flooding is a key step in flood risk management. The purpose of this study is to develop and present a novel flood susceptibility model based on Bayesian Additive Regression Tree (BART) methodology. The predictive performance of the new model is assessed via comparison with the Naïve Bayes (NB) and Random Forest (RF...
journal article 2021
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Exbrayat, J. F. (author), Breuer, L. (author), Viney, N. R. (author), Seibert, J. (author), Wrede, S. (author), Frede, H. G. (author)
Model predictions of biogeochemical fluxes on the landscape scale are highly uncertain, both with respect to stochastic (parameter) and structural uncertainty. The idea of our ensemble modelling approach is to reduce the predictive uncertainty by covering part of the parameter and model structural uncertainty. In this study 4 different models...
conference paper 2009
Searched for: subject%3A%22Ensemble%255C+model%22
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