We present a time-series-based algorithm to identify structural damage in the structure. The method is in the context of non-model-based approaches; hence, it eliminates the need of any representative numerical model of the structure to be built. The method starts by partitioning the state space into a finite number of subsets which are mutually exclusive and exhaustive and each subset is identified by a distinct symbol. Partitioning is performed based on a maximum entropy approach which takes into account the sparsity and distribution of information in the time series. After constructing the symbol space, the time series data are uniquely transformed from the state space into the constructed symbol space to create the symbol sequences. Sym...
Damage assessment techniques based on entropy measurements have been recently proposed for the struc...
A multivariate time-series analysis employing a state-space embedding strategy and singular value de...
In this study, a novel approach using a modified time series analysis methodology is used to detect ...
© 2017, © The Author(s) 2017. We present a time-series-based algorithm to identify structural damage...
Reliability of truss bridges can be significantly affected by local damages as damage changes the lo...
Acoustic emission (AE) and vibration signal are significant criteria of damage identificationin stru...
The objective of this paper is to localise damage in a single or multiple state at early stages of d...
Recently, advances in sensing and sensing methodologies have led to the deployment of multiple senso...
Copyright © 2014 John Wiley & Sons, Ltd. The objective of this paper is to localize damage in a sing...
The paper considers some possibilities to use pure time series analysis for damage diagnosis in vibr...
In this paper, a structural health monitoring (SHM) system based on multi-scale cross-sample entropy...
In this study, a new method based on topological entropy, the so‐called persistent entropy, is prese...
This paper investigates the time series representation methods and similarity measures for sensor da...
Data analysis for large amounts of data efficiently and effectively has been a critical issue for st...
This paper investigates the time series representation methods and similarity measures for sensor da...
Damage assessment techniques based on entropy measurements have been recently proposed for the struc...
A multivariate time-series analysis employing a state-space embedding strategy and singular value de...
In this study, a novel approach using a modified time series analysis methodology is used to detect ...
© 2017, © The Author(s) 2017. We present a time-series-based algorithm to identify structural damage...
Reliability of truss bridges can be significantly affected by local damages as damage changes the lo...
Acoustic emission (AE) and vibration signal are significant criteria of damage identificationin stru...
The objective of this paper is to localise damage in a single or multiple state at early stages of d...
Recently, advances in sensing and sensing methodologies have led to the deployment of multiple senso...
Copyright © 2014 John Wiley & Sons, Ltd. The objective of this paper is to localize damage in a sing...
The paper considers some possibilities to use pure time series analysis for damage diagnosis in vibr...
In this paper, a structural health monitoring (SHM) system based on multi-scale cross-sample entropy...
In this study, a new method based on topological entropy, the so‐called persistent entropy, is prese...
This paper investigates the time series representation methods and similarity measures for sensor da...
Data analysis for large amounts of data efficiently and effectively has been a critical issue for st...
This paper investigates the time series representation methods and similarity measures for sensor da...
Damage assessment techniques based on entropy measurements have been recently proposed for the struc...
A multivariate time-series analysis employing a state-space embedding strategy and singular value de...
In this study, a novel approach using a modified time series analysis methodology is used to detect ...