Nuclear Power Plants (NPP) undergo fault and sensitivity analysis with scenario modelling to predict catastrophic events, specifically releases of Cesium 137 (Cs-137). The purpose of this thesis is to find which of 108 input-features from Modular Accident Analysis Program (MAAP)simulation code are important, when there is large release of Cs-137 emissions. The features are tested all together and in their groupings. To find important features, the Machine learning (ML) model Random Forest (RF) has a built-in attribute which identifies important features. The results of RF model classification are corroborated with Support Vector Machines (SVM), K-Nearest Neighbor (KNN) and use k-folds cross validation to improve and validate the results, re...
In the current state of maturity of severe accident codes, the time has come to foster the systemati...
Integrated severe accident codes should be capable of simulating not only specific physical phenomen...
Condition monitoring is the process of observing a parameter, or multiple parameters, extracted from...
Nuclear Power Plants (NPP) undergo fault and sensitivity analysis with scenario modelling to predict...
In this paper the use of machine learning (ML) is explored as an efficient tool for uncertainty quan...
During nuclear accidents, decision-makers need to handle considerable data to take appropriate prote...
As world-wide energy consumption continues to increase, so does the demand for the use of alternativ...
The current Horizon-2020 project on “Management and Uncertainties of Severe Accidents (MUSA)” aims a...
Natural hazards have the potential to trigger complex chains of events in technological installation...
Numerical tools are widely used to assess Nuclear Power Plants (NPP) behaviour during postulated Sev...
In case of an accident in a nuclear power plant (NPP), the fast and cor-rect identification of the N...
Embargo until 23 January 2022When a nuclear accident occurs, decision makers in the affected country...
International audienceThe Management and Uncertainties of Severe Accidents (MUSA) project, funded in...
Nuclear plant operators are required to understand the uncertainties associated with the deployment ...
As world-wide energy consumption continues to increase, so does the demand for the use of alternativ...
In the current state of maturity of severe accident codes, the time has come to foster the systemati...
Integrated severe accident codes should be capable of simulating not only specific physical phenomen...
Condition monitoring is the process of observing a parameter, or multiple parameters, extracted from...
Nuclear Power Plants (NPP) undergo fault and sensitivity analysis with scenario modelling to predict...
In this paper the use of machine learning (ML) is explored as an efficient tool for uncertainty quan...
During nuclear accidents, decision-makers need to handle considerable data to take appropriate prote...
As world-wide energy consumption continues to increase, so does the demand for the use of alternativ...
The current Horizon-2020 project on “Management and Uncertainties of Severe Accidents (MUSA)” aims a...
Natural hazards have the potential to trigger complex chains of events in technological installation...
Numerical tools are widely used to assess Nuclear Power Plants (NPP) behaviour during postulated Sev...
In case of an accident in a nuclear power plant (NPP), the fast and cor-rect identification of the N...
Embargo until 23 January 2022When a nuclear accident occurs, decision makers in the affected country...
International audienceThe Management and Uncertainties of Severe Accidents (MUSA) project, funded in...
Nuclear plant operators are required to understand the uncertainties associated with the deployment ...
As world-wide energy consumption continues to increase, so does the demand for the use of alternativ...
In the current state of maturity of severe accident codes, the time has come to foster the systemati...
Integrated severe accident codes should be capable of simulating not only specific physical phenomen...
Condition monitoring is the process of observing a parameter, or multiple parameters, extracted from...