This paper presents an advanced computational approach to assess the risk of damage to masonry buildings subjected to negative kinematic impacts of underground mining exploitation. The research goals were achieved using selected tools from the area of artificial intelligence (AI) methods. Ultimately, two models of damage risk assessment were built using the Naive Bayes classifier (NBC) and Bayesian Networks (BN). The first model was used to compare results obtained using the more computationally advanced Bayesian network methodology. In the case of the Bayesian network, the unknown Directed Acyclic Graph (DAG) structure was extracted using Chow-Liu’s Tree Augmented Naive Bayes (TAN-CL) algorithm. Thus, one of the methods involving Bayesian ...
This article reports on an ongoing research project, which is aimed at implementing advanced probabi...
There is an intrinsic risk associated with tunnel construction, particularly in urban areas where a ...
A probabilistic Structural Equation Model (SEM) based on a Bayesian network construction is introduc...
This paper presents the results of comparative studies on the implementation of machine learning met...
The paper presents a comparative analysis of Machine Learning (ML) research methods allowing to asse...
Underground mining gives rise to geotechnical hazards. A formal geotechnical risk assessment can hel...
In recent years there has been a growing interest on the application of soft computing methods for p...
Excavation processes can frequently manifest critical issues regarding permanent damages in surround...
Many troubles in life require decision-making with convoluted processes because they are caused by u...
Mining involves the extraction of finite resources for their use in vast number of applications. Dep...
In recent years, there has been an increasing interest in permanent observation of the dynamic behav...
The paper presents a comparative analysis of Machine Learning (ML) research methods allowing to asse...
Currently, significant development of methods supporting decision making under uncertainty condition...
Currently, significant development of methods supporting decision making under uncertainty condition...
This paper presents a methodology to systematically assess and manage the risks associated with tunn...
This article reports on an ongoing research project, which is aimed at implementing advanced probabi...
There is an intrinsic risk associated with tunnel construction, particularly in urban areas where a ...
A probabilistic Structural Equation Model (SEM) based on a Bayesian network construction is introduc...
This paper presents the results of comparative studies on the implementation of machine learning met...
The paper presents a comparative analysis of Machine Learning (ML) research methods allowing to asse...
Underground mining gives rise to geotechnical hazards. A formal geotechnical risk assessment can hel...
In recent years there has been a growing interest on the application of soft computing methods for p...
Excavation processes can frequently manifest critical issues regarding permanent damages in surround...
Many troubles in life require decision-making with convoluted processes because they are caused by u...
Mining involves the extraction of finite resources for their use in vast number of applications. Dep...
In recent years, there has been an increasing interest in permanent observation of the dynamic behav...
The paper presents a comparative analysis of Machine Learning (ML) research methods allowing to asse...
Currently, significant development of methods supporting decision making under uncertainty condition...
Currently, significant development of methods supporting decision making under uncertainty condition...
This paper presents a methodology to systematically assess and manage the risks associated with tunn...
This article reports on an ongoing research project, which is aimed at implementing advanced probabi...
There is an intrinsic risk associated with tunnel construction, particularly in urban areas where a ...
A probabilistic Structural Equation Model (SEM) based on a Bayesian network construction is introduc...