Many troubles in life require decision-making with convoluted processes because they are caused by uncertainty about the process of relationships that appear in the system. This problem leads to the creation of a model called the Bayesian Network. Bayesian Network is a Bayesian supported development supported by computing advancements. The Bayesian network has also been developed in various fields. At this time, information can implement Bayesian Networks in determining the extent of damage to buildings using individual building data. In practice, there is mixed data which is a combination of continuous and discrete variables. Therefore, to simplify the study it is assumed that all variables are discrete in order to solve practical problems...
This article reports on an ongoing research project, which is aimed at implementing advanced probabi...
Currently, significant development of methods supporting decision making under uncertainty condition...
In this paper we show how discrete and continuous variables can be combined using parametric conditi...
Many troubles in life require decision-making with convoluted processes because they are caused by u...
Disaster mitigation is a series of efforts to reduce disaster risk. One of the disaster mitigation e...
The Bayesian networks are a graphical probability model that represents interactions between variabl...
This paper presents an advanced computational approach to assess the risk of damage to masonry build...
Bayesian networks are a very general and powerful tool that can be used for a large number of proble...
The performance of a building decreases with time and this process is accelerated if proper maintena...
The Hague University in Delft uses an advanced climate control system. All sensors and actuators are...
Excavation processes can frequently manifest critical issues regarding permanent damages in surround...
This article reports on an ongoing research project, which is aimed at implementing advanced probabi...
Bayesian inference provides a powerful approach to system identification and damage assessment for s...
This paper develops a hybrid approach that integrates the cloud model and Bayesian networks (BNs) to...
Currently, significant development of methods supporting decision making under uncertainty condition...
This article reports on an ongoing research project, which is aimed at implementing advanced probabi...
Currently, significant development of methods supporting decision making under uncertainty condition...
In this paper we show how discrete and continuous variables can be combined using parametric conditi...
Many troubles in life require decision-making with convoluted processes because they are caused by u...
Disaster mitigation is a series of efforts to reduce disaster risk. One of the disaster mitigation e...
The Bayesian networks are a graphical probability model that represents interactions between variabl...
This paper presents an advanced computational approach to assess the risk of damage to masonry build...
Bayesian networks are a very general and powerful tool that can be used for a large number of proble...
The performance of a building decreases with time and this process is accelerated if proper maintena...
The Hague University in Delft uses an advanced climate control system. All sensors and actuators are...
Excavation processes can frequently manifest critical issues regarding permanent damages in surround...
This article reports on an ongoing research project, which is aimed at implementing advanced probabi...
Bayesian inference provides a powerful approach to system identification and damage assessment for s...
This paper develops a hybrid approach that integrates the cloud model and Bayesian networks (BNs) to...
Currently, significant development of methods supporting decision making under uncertainty condition...
This article reports on an ongoing research project, which is aimed at implementing advanced probabi...
Currently, significant development of methods supporting decision making under uncertainty condition...
In this paper we show how discrete and continuous variables can be combined using parametric conditi...