SIGDIG – Signal Discrimination for Condition Monitoring A system for condition analysis and monitoring of industrial signals Collaborative research effort.

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Presentation transcript:

SIGDIG – Signal Discrimination for Condition Monitoring A system for condition analysis and monitoring of industrial signals Collaborative research effort of Laboratories of Information Processing (Dept. of Information Technology) and Digital and Computer Electronics (Dept. of Electrical Engineering).

Condition monitoring and analysis Condition monitoring is important in modern industrial environments requiring high degree of automation: –Predict the need of maintenance (from time- based to condition based maintenance) –Avoid failures and minimize downtime With reliable condition monitoring, machines can be utilized in a more optimal fashion

Automatic estimation of system condition Physical models can be generated (e.g., bearing faults of electric motors) + often correspond to reality, and thus, interpretable - slow and difficult to derive - often inaccurate and limited (apply only to specific situations) Recorded data can be used to automatically derive models + easy to use - data can be difficult to collect

Current research Theory has been proposed to detect failure conditions when examples from two classes are available (normal condition and failure condition) and when system mode remains constant (speed, load, etc.) –Software has been developed –Theory is based on strong statistical principles

Software - Interface Files containing measurements from normal condition and failure condition can be added (multiple failure types)

Software – comparing measurements Mean frequency content of both conditions can be plotted and compared

Software – finding discriminative features The most discriminative features can be automatically searched

Software – classifier module The loaded data can be used to construct a statistical classifier

Software – inspecting new measurements New measurements can be loaded and classified

Software – using classifier module In this file all measurements are from bearing damaged motors classification may however fail.... if wrong features (not discriminative frequencies) are used

Software – utilizing the discriminative features Good results can be achieved with correct features (most discriminative frequency is 270Hz)

Future research The system works accurately and reliably in constant operation mode (load, speed, etc.) –In future the system should automatically detect the constant mode before classification or utilize features which are robust to changing conditions The system requires measurements from failure conditions –In future the system should perform classification only based on normal condition measurements (e.g. by utilizing the confidence) The system is a laboratory based analyzing tool –In future the system should be installed for on-line operation

References Ilonen, J., Kamarainen, J.-K., Lindh, T., Ahola, J., Kälviäinen, H., Partanen, J., Diagnosis Tool for Motor Condition Monitoring, IEEE Trans. on Industry Applications, Lindh, T., Ahola, J., Kamarainen, J.-K., Kyrki, V., Partanen, J., Bearing Damage Detection Based on Statistical Discrimination of Stator Current, In Proc. of the 4th IEEE Int. Symp. on Diagnostics for Electric Machines, Power Electronics and Drives, (Atlanta, Georgia, USA, 2003), pp