| |||||||||||||||
PHMenergy 2018 : Prognostics and Health Management for renewable energy systems | |||||||||||||||
Link: http://codit2018.com/index.php/special-sessions | |||||||||||||||
| |||||||||||||||
Call For Papers | |||||||||||||||
Registered and Presented papers will be submitted for inclusion into IEEE Xplore as well as other Abstracting and Indexing (A&I) databases.
Proceedings of Past Editions: Proceedings of all past editions of CoDIT are published through IEEE Xplore and indexed in: DBLP, Conference Proceedings Citation Index | Thomson Reuters, SCOPUS, Ei Compendex and IEEE. ______________________________________________________ Session Co-Chairs : Dr.Jaouher Ben Ali, University of Tunis and University of Sousse, Tunisia. Dr.LotfiSaidi, University of Tunis and University of Sousse, Tunisia. Dr. Eric Bechhoefer,Green Power Monitoring Systems, LLC, VT 05753, USA. Prof.Mohamed Benbouzid, University of Brest, France and Shanghai Maritime University, China. Session description: This special session deals with the problem of Prognostics and Health Management (PHM) for renewable energy systems. In fact, all power generation systems will degrade over time. Nevertheless, their related failures are not only losses of production time; it can also have key harmful consequences. Thus, in order to maintain critical industrial systems before the failure takes place, maintenance strategies should be planned. PHM is an enabling discipline that aims at exploiting real collected monitoring data using advanced sensor integration, as well as various algorithms and intelligent models to enable relevant indicators and trends that depict the health of a system. The goal is to aggregate the latest research efforts contributing to theoretical, methodological and technological advances in the integration of various aspects of renewable energy systems PHM applications within a broad range of disciplines. The main intention of this special issue is to present works dealing mainly (but not exclusively) with up-to-date solutions of acoustic and vibration signal processing, feature extraction and classification, health assessment and diagnosis, performance degradation prediction, remaining useful life estimation and dynamic maintenance decision making based on PHM. Prospective authors are invited to submit high-quality original contributions and reviews for this Special Issue. The topics of interest include, but are not limited to: • Data acquisition, processing, for PHM; • Advanced health assessment and diagnosis techniques for renewable sources; • Advanced prognostics for remaining useful life and performance degradation; • Implementation of PHM systems for applications in the fields of renewable energy; • Sound/Vibration based machinery diagnosis and prognosis; • Acoustic emission based machinery diagnosis and prognosis. |
|