PdM Module
- Project
- 17008 PIANiSM
- Description
- Reduction in Breakdown events
- Reduction in Downtime hours
- Reduction in Maintenance Costs
- Failure Prediction
- Better inventory management
- Predictable product quality
- Overall equipment effectiveness
- Faster delivery to market
- Contact
- Şebnem Köken, Erste Software Limited
- sebnem@erstesoftware.com
- Technical features
Input(s):
- Data involving diagnostic and performance data, maintenance histories, failure data, operator logs and design data
Main feature(s):
- Anomaly detection remaining useful lifetime estimation probability of failure of a machine/component
Output(s):
- Robust failure and anomaly detection to prevent failures and unplanned downtime in multi-industry domains
- A rich set of ML models such as LSTM Networks, Variational Autoencoders, Isolation Forests, Deep Convolutional Networks etc. to predict failures and anomalies
- An ML service API that allows the users to start/stop various ML processes based on their current requirements
- An AutoML interface to make the users understand and observe the dynamics
- Integration constraints
- Manufacturing companies may not have enough data
- Even if they have data, they may not have accompanying failure or anomaly data
- Manufacturing companies may not have enough skill set in AI and ML
- Targeted customer(s)
Manufacturers with different levels of need.
- Conditions for reuse
Licensing
- Confidentiality
- Public
- Publication date
- 02-06-2022
- Involved partners
- ERSTE Software Limited (TUR)