
Machine learning: How algorithms are trained at KSB
Is it possible to collect operating data from pumps and other machines, then process it using smart algorithms to reliably detect operating anomalies and make valid predictions about problems that may arise in the future? By harnessing machine learning, KSB is opening the door to a fascinating research field. Learn more about the current state of technology, the methodologies KSB is using to explore the topic and the opportunities offered by machine learning.
Is it possible to collect operating data from pumps and other machines, then process it using smart algorithms to reliably detect operating anomalies and make valid predictions about problems that may arise in the future? By harnessing machine learning, KSB is opening the door to a fascinating research field. Learn more about the current state of technology, the methodologies KSB is using to explore the topic and the opportunities offered by machine learning.
Detect machine damage before it happens
Reliably detecting and evaluating anomalies
How do you turn simple data into useful information?
- Creation of the basic overall system architecture
- Development of a data platform
- Detection of fault statuses (anomalies)
- Classification of fault statuses
- Prediction of fault statuses
Unscheduled pump downtimes can be really expensive. However, with the KSB Guard monitoring service, such failures are far less likely.
Work package 1 Creation of the basic overall system architecture
Work package 2 Development of a data platform
Work package 3 Detection of fault statuses (anomalies)
Work package 4 Classification of fault statuses
Work package 5 Prediction of fault statuses
On the best path to predictive maintenance: Visualisation of vibration data detected by KSB Guard