Entropy, as a complexity measure, has been widely applied for time series analysis. One preeminent example is the design of machine condition monitoring and industrial fault diagnostic systems. The occurrence of failures in a machine will typically lead to non-linear characteristics in the measurements, caused by instantaneous variations, which can increase the complexity in the system response. Entropy measures are suitable to quantify such dynamic changes in the underlying process, distinguishing between different system conditions. However, notions of entropy are defined differently in various contexts (e.g., information theory and dynamical systems theory), which may confound researchers in the applied sciences. In this paper, we have...
Abstract—In order to make a quantitative description for the running status of the scroll compressor...
An effective fault diagnosis method for induction motors is proposed in this paper to improve the re...
In this paper, a methodology for assessing the unpredictability of systems with memory was developed...
Entropy, as a complexity measure, has been widely applied for time series analysis. One preeminent e...
Fault diagnosis is significant for identifying latent abnormalities, and implementing fault-tolerant ...
Fault diagnosis of rotating machinery is of considerable significance to ensure high reliability an...
In large machinery, the most common element we can use is rolling bearing. When the rolling bearing ...
In large machinery, the most common element we can use is rolling bearing. When the rolling bearing ...
The field of structural health monitoring (SHM) applies damage detection techniques to provide timel...
The Complexity-entropy causality plane (CECP) is a parsimonious representation space for time series...
Bearings are an essential component throughout most rotating equipment and power-generating systems....
ca. 200 words; this text will present the book in all promotional forms (e.g. flyers). Please descri...
Condition monitoring of machinery is one of the most important aspects of many modern industries. Wi...
Based on information theory, a number of entropy measures have been proposed since the 1990s to asse...
Methods based on vibration analysis are currently regarded as the most conclusive means for fault di...
Abstract—In order to make a quantitative description for the running status of the scroll compressor...
An effective fault diagnosis method for induction motors is proposed in this paper to improve the re...
In this paper, a methodology for assessing the unpredictability of systems with memory was developed...
Entropy, as a complexity measure, has been widely applied for time series analysis. One preeminent e...
Fault diagnosis is significant for identifying latent abnormalities, and implementing fault-tolerant ...
Fault diagnosis of rotating machinery is of considerable significance to ensure high reliability an...
In large machinery, the most common element we can use is rolling bearing. When the rolling bearing ...
In large machinery, the most common element we can use is rolling bearing. When the rolling bearing ...
The field of structural health monitoring (SHM) applies damage detection techniques to provide timel...
The Complexity-entropy causality plane (CECP) is a parsimonious representation space for time series...
Bearings are an essential component throughout most rotating equipment and power-generating systems....
ca. 200 words; this text will present the book in all promotional forms (e.g. flyers). Please descri...
Condition monitoring of machinery is one of the most important aspects of many modern industries. Wi...
Based on information theory, a number of entropy measures have been proposed since the 1990s to asse...
Methods based on vibration analysis are currently regarded as the most conclusive means for fault di...
Abstract—In order to make a quantitative description for the running status of the scroll compressor...
An effective fault diagnosis method for induction motors is proposed in this paper to improve the re...
In this paper, a methodology for assessing the unpredictability of systems with memory was developed...