Fault diagnostics in practice faces the challenge of dealing with unlabelled time series that have long-term temporal dependencies. Inspired by the idea of representing temporal patterns by a mechanism of neurodynamical pattern learning, called Conceptors, we propose an unsupervised clustering method for identifying the degradation state of industrial equipment. Conceptors are used to represent the dynamic behaviour of the degradation trajectories and spectral clustering is used to group the Conceptors in homogenous classes of similar degradation states. The proposed method is applied to a case study of literature. The results show that the accuracy of the fault diagnosis is satisfactory
International audienceChronicles are temporal patterns well suited for an abstract representation of...
International audienceChronicles are temporal patterns well suited for an abstract representation of...
The aerospace industry develops prognosis and health management algorithms to ensure better safety o...
Fault diagnostics in practice faces the challenge of dealing with unlabelled time series that have l...
Fault diagnostics in practice faces the challenge of dealing with unlabelled time series that have l...
Fault diagnostics in practice faces the challenge of dealing with unlabelled time series that have l...
Fault diagnostics in practice faces the challenge of dealing with unlabelled time series that have l...
International audienceIn this paper, we propose an unsupervised ensemble clustering approac...
International audienceIn this paper, we propose an unsupervised ensemble clustering approac...
International audienceIn this paper, we propose an unsupervised ensemble clustering approac...
A diagnostic algorithm is described in this article that is based on clustering qualitative event se...
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 audienceChronicles are temporal patterns well suited for an abstract representation of...
International audienceChronicles are temporal patterns well suited for an abstract representation of...
International audienceChronicles are temporal patterns well suited for an abstract representation of...
The aerospace industry develops prognosis and health management algorithms to ensure better safety o...
Fault diagnostics in practice faces the challenge of dealing with unlabelled time series that have l...
Fault diagnostics in practice faces the challenge of dealing with unlabelled time series that have l...
Fault diagnostics in practice faces the challenge of dealing with unlabelled time series that have l...
Fault diagnostics in practice faces the challenge of dealing with unlabelled time series that have l...
International audienceIn this paper, we propose an unsupervised ensemble clustering approac...
International audienceIn this paper, we propose an unsupervised ensemble clustering approac...
International audienceIn this paper, we propose an unsupervised ensemble clustering approac...
A diagnostic algorithm is described in this article that is based on clustering qualitative event se...
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 audienceChronicles are temporal patterns well suited for an abstract representation of...
International audienceChronicles are temporal patterns well suited for an abstract representation of...
International audienceChronicles are temporal patterns well suited for an abstract representation of...
The aerospace industry develops prognosis and health management algorithms to ensure better safety o...