Abstract: In recent years, structural integrity monitoring has become increasingly important in structural engineering and construction management. It represents an important tool for the assessment of the dependability of existing complex structural systems as it integrates, in a unified perspective, advanced engineering analyses and experimental data processing. In the first part of this work the concepts of dependability and structural integrity are discussed and it is shown that an effective integrity assessment needs advanced computational methods. For this purpose, soft computing methods have shown to be very useful. In particular, in this work the neural networks model is chosen and successfully improved by applying the Bayesian infe...
Structural health monitoring system can provide valuable information for improving decision-making p...
Many physics-based and surrogate models used in structural health monitoring are affected by differe...
As a primary component of a Bridge Management System (BMS), prediction models are crucial for planni...
In recent years, neural network models have been widely used in the Civil Engineering field. Interes...
In recent years, there has been an increasing interest in permanent observation of the dynamic behav...
In recent years, neural network models have been widely used in the Civil Engineering field. Interes...
Dependability of a structural system is a comprehensive concept that by definition describes the qua...
In recent years there has been a growing interest on the application of soft computing methods for p...
More than a billion structures exist on our planet comprising a million bridges. A number of these i...
Summarization: The objective of this paper is to investigate the efficiency of soft computing method...
Bridges play an essential role in the current transportation system that connects places separated b...
AbstractThis study aims to facilitate damage detection in concrete bridge girders without the need f...
This article proposes an approach for the derivation of multi-hazard fragility functions, through th...
The development of a methodology to model network level bridge deterioration using a Bayesian Belief...
The development of a methodology to model network level bridge deterioration using a Bayesian Belief...
Structural health monitoring system can provide valuable information for improving decision-making p...
Many physics-based and surrogate models used in structural health monitoring are affected by differe...
As a primary component of a Bridge Management System (BMS), prediction models are crucial for planni...
In recent years, neural network models have been widely used in the Civil Engineering field. Interes...
In recent years, there has been an increasing interest in permanent observation of the dynamic behav...
In recent years, neural network models have been widely used in the Civil Engineering field. Interes...
Dependability of a structural system is a comprehensive concept that by definition describes the qua...
In recent years there has been a growing interest on the application of soft computing methods for p...
More than a billion structures exist on our planet comprising a million bridges. A number of these i...
Summarization: The objective of this paper is to investigate the efficiency of soft computing method...
Bridges play an essential role in the current transportation system that connects places separated b...
AbstractThis study aims to facilitate damage detection in concrete bridge girders without the need f...
This article proposes an approach for the derivation of multi-hazard fragility functions, through th...
The development of a methodology to model network level bridge deterioration using a Bayesian Belief...
The development of a methodology to model network level bridge deterioration using a Bayesian Belief...
Structural health monitoring system can provide valuable information for improving decision-making p...
Many physics-based and surrogate models used in structural health monitoring are affected by differe...
As a primary component of a Bridge Management System (BMS), prediction models are crucial for planni...