UOP staff
ΝΙΚΟΛΟΠΟΥΛΟΣ ΣΤΑΥΡΟΣ
ΕΡΓΑΣΤΗΡΙΑΚΟ ΔΙΔΑΚΤΙΚΟ ΠΡΟΣΩΠΙΚΟ
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
Ε-mail: nikiplos (at) uop (dot) gr
Τηλέφωνο: 27210-45-334
Γραφείο: Νέο Κτήριο, Δ1.08
Ώρες Γραφείου: 09:00 - 14:00 - (Κατόπιν ραντεβού)
Σύντομο Βιογραφικό Σημείωμα

Ο Σταύρος Ν. Νικολόπουλος είναι απόφοιτος της Σχολής των Ηλεκτρολόγων Μηχανικών και Μηχανικών Υπολογιστών του Εθνικού Μετσόβιου Πολυτεχνείου και κατέχει διδακτορικό δίπλωμα στην Βιοϊατρική Μηχανική από το ίδιο Πανεπιστήμιο. Από το 2008 έως το 2010 πραγματοποίησε μεταδιδακτορικές σπουδές στο Παρίσι ως υπότροφος του CNRS στο ICM (Institut du Cerveau et de la Moelle épinière. ICM - Hôpital Pitié Salpêtrière. 47, bd de l'hôpital 75013 PARIS). Υπηρετεί στη Διεύθυνση Πληροφορικής του Πανεπιστημίου Πελοποννήσου, όπου ασκεί τεχνικές, εκπαιδευτικές και ερευνητικές δραστηριότητες.

Οι κύριες ερευνητικές δραστηριότητές του αφορούν τη μη γραμμική ανάλυση πειραματικών χρονοσειρών, οι οποίες προκύπτουν από πειραματικά δεδομένα, από Βιοϊατρικά σήματα εγκεφάλου και καρδιάς καθώς και από ηλεκτρομαγνητικά γεωφυσικά σήματα. Στα πλαίσια αυτών των δραστηριοτήτων έχει συμμετάσχει σε ευρωπαϊκά ερευνητικά προγράμματα, όπως στο ΠΑΒΕ με κωδικό 96BE85, στο EPEAEK / PYTHAGORAS 70/3/7357 αλλά και στο διευρωπαϊκό FP7 Project EPILEPSIAE (Evolving Platform for Improving Living Expectation of Patients Suffering from Ictal Events, Grant No 211713), στο οποίο ήταν βασικό μέλος της ερευνητικής ομάδας.  Έχει πάνω από 40 δημοσιεύσεις σε διεθνή επιστημονικά περιοδικά και συνέδρια με κρίση σε πλήρη εργασία. Η εργασία του με τίτλο: “A unified approach of catastrophic events” Natural Hazards and Earth System Sciences 4: 615 – 631 (2004), έχει συμπεριληφθεί στο συλλεκτικό βιβλίο “Models and Application of Chaos in Modern Sciences”, edited by Dr Elhadj Zeraoulia, Science Publishers, USA, 2011.

Παράλληλα με τα παραπάνω, εργάστηκε στο Υπουργείο Δημοσίας Τάξης στην Υπηρεσία 1020/16, όπου ασχολήθηκε με την ασφάλεια των πληροφοριών και επικοινωνιών με κύριο αντικείμενο την ασφάλεια Η/Υ και την κρυπτολογία. Στα πλαίσια των ανωτέρω δραστηριοτήτων είναι συνδικαιούχος στην πατέντα με τίτλο: ΑΣΦΑΛΕΙΑ ΕΠΙΚΟΙΝΩΝΙΩΝ ΣΕ ΔΙΚΤΥΑ ΜΕ ΤΗ ΒΟΗΘΕΙΑ ΕΛΕΓΧΩΝ ΤΥΧΑΙΟΤΗΤΑΣ με Αριθμ. Πατ.: Αρ. Αιτ. ΔΕ 20030100537. Αθήνα 29-12-2003.


Short CV

Stavros N. Nikolopoulos, received his PhD degree in Biomedical Engineering from the School of Electrical and Computer Engineering in National Technical University of Athens in Greece. He did post-doctoral studies in the Centre de Recherche de l'ICM, INSERM UMRS 975 - CNRS UMR 7225, Hôpital de la Pitié-Salpêtrière, in Paris, France. Currently he works in the Directorate of Informatics of University of Peloponnese, where he is conducting technical, educational and research activities.

His main research activities regard non linear analysis of timeseries generated from experimental measures,  on biological systems of heart and brain, and of electromagnetic geophysical signals as well. He has been participated in European research programs, such as the Program of Industrial Research Development with code 96BE85 or the  FP7 Project EPILEPSIAE (Evolving Platform for Improving Living Expectation of Patients Suffering from Ictal Events, Grant No 211713). In the latter he was one of the members developed EPILAB, a software package for studies on the prediction of epileptic seizures.

He also participated in the European research program EPEAEK/PYTHAGORAS 70/3/7357, where he conducted research in experimental geophysical signals for identifying precursors to imminent severe land earthquakes. His article “A unified approach of catastrophic events” Natural Hazards and Earth System Sciences 4: 615 – 631 (2004), has been entered in the collective Book entitled “Models and Application of Chaos in Modern Sciences”, edited by Dr Elhadj Zeraoulia, Science Publishers, USA, 2011.  

He has published more than 40 papers in the field of Non linear Timeseries Analysis, obtained from experimental data in international journals and full review conferences.

From 2001 up to 2017, he has been working in the Ministry of Public Order and Citizen Protection in the sector of Cryptology and Information Assurance. He is co-beneficiary in a patent entitled: Communication Security in Networks with the aid of random check, with number: ΔΕ 20030100537. Athens 29-12-2003.

 

Επιστημονικά Ενδιαφέροντα:

Επεξεργασία, Ανάλυση και Αποτίμηση πειραματικών Δεδομένων

Γραμμική και Μη γραμμική ανάλυση πειραματικών χρονοσειρών εφαρμοσμένη σε φυσικά πειραματικά δεδομένα.

Πρόβλεψη Χρονοσειρών - Ανάλυση - Πρόβλεψη Γεγονότων

Βιοστατιστική


Science Interest:

Data process and analysis.

Data mining and prediction

Linear and nonlinear timeseries analysis and prediction, applied to natural experimental data.

Biostatistics