Repository logo
 
No Thumbnail Available
Publication

Neuro-fuzzy fault detection approach using a Profibus network

Use this identifier to reference this record.
Name:Description:Size:Format: 
Neuro-fuzzy fault_MJGCMendes.pdf301.01 KBAdobe PDF Download

Advisor(s)

Abstract(s)

Generally three methodologies to develop and test FDI algorithms can de distinguished: software benches, hardware benches and industrial data. The current approach uses a hardware bench constructed with components commonly used in industry that consists on a pilot plant under supervision, a supervision unit, a fault detection unit and a fault simulation unit. All elements are connected to a PROFIBUS network that acts as the communication system exchanging information between automation system and distributed field devices. A fault detection methodology, which is based on neuro-fuzzy models, has been developed and implemented. During the current studies actuator faults, sensor faults and leakages have been considered as incipient and abrupt faults. Several studies have also been performed under multiple simultaneous faulty scenarios.

Description

Keywords

Neuro-fuzzy Fault detection Fieldbus Abrupt Incipient faults

Citation

CALADO, João M. F.; [et al] – Neuro-fuzzy fault detection approach using a Profibus network. In Proceedings of the 10th Mediterranean Conference on Control and Automation - MED2002 Lisboa, Portugal, 2002. Pp. 1-10

Research Projects

Organizational Units

Journal Issue

Publisher

CC License