International audienceWe consider a real industrial case concerning 148 shutdown multidimensional transients of a nuclear power plant (NPP) turbine. The objective is to identify groups of transients with similar functional behaviors, and distinguish transients with peculiar behaviors which can be representative of anomalous conditions in the turbine. This objective is pursued by analyzing 7 vibration signals referred to the turbine shaft. The novelty of the work consists in transforming the signals into the " turbine speed-domain " for aligning them according to the turbine speed, so as to easily recognize outlier transients and then performing a fuzzy similarity analysis based on pointwise differences. Spectral analysis and Fuzzy C-Means (...
We develop an unsupervised clustering method for the classification of transient data. A fuzzy-based...
International audienceThe development of empirical classification models for fault diagnosis usually...
International audienceThe development of empirical classification models for fault diagnosis usually...
International audienceWe consider a real industrial case concerning 148 shutdown multidimensional tr...
International audienceWe consider a real industrial case concerning 148 shutdown multidimensional tr...
International audienceEmpirical methods for fault diagnosis usually entail a process of supervised t...
International audienceEmpirical methods for fault diagnosis usually entail a process of supervised t...
We analyze signal data collected during 148 shut-down transients of a nuclear power plant (NPP) turb...
We analyze signal data collected during 148 shut-down transients of a nuclear power plant (NPP) turb...
We analyze signal data collected during 148 shut-down transients of a nuclear power plant (NPP) turb...
We analyze signal data collected during 148 shut-down transients of a nuclear power plant (NPP) turb...
International audienceThe objective of the present work is to develop a novel approach for combining...
International audienceThe objective of the present work is to develop a novel approach for combining...
We develop an unsupervised clustering method for the classification of transient data. A fuzzy-based...
We develop an unsupervised clustering method for the classification of transient data. A fuzzy-based...
We develop an unsupervised clustering method for the classification of transient data. A fuzzy-based...
International audienceThe development of empirical classification models for fault diagnosis usually...
International audienceThe development of empirical classification models for fault diagnosis usually...
International audienceWe consider a real industrial case concerning 148 shutdown multidimensional tr...
International audienceWe consider a real industrial case concerning 148 shutdown multidimensional tr...
International audienceEmpirical methods for fault diagnosis usually entail a process of supervised t...
International audienceEmpirical methods for fault diagnosis usually entail a process of supervised t...
We analyze signal data collected during 148 shut-down transients of a nuclear power plant (NPP) turb...
We analyze signal data collected during 148 shut-down transients of a nuclear power plant (NPP) turb...
We analyze signal data collected during 148 shut-down transients of a nuclear power plant (NPP) turb...
We analyze signal data collected during 148 shut-down transients of a nuclear power plant (NPP) turb...
International audienceThe objective of the present work is to develop a novel approach for combining...
International audienceThe objective of the present work is to develop a novel approach for combining...
We develop an unsupervised clustering method for the classification of transient data. A fuzzy-based...
We develop an unsupervised clustering method for the classification of transient data. A fuzzy-based...
We develop an unsupervised clustering method for the classification of transient data. A fuzzy-based...
International audienceThe development of empirical classification models for fault diagnosis usually...
International audienceThe development of empirical classification models for fault diagnosis usually...