Predictive Maintenance Platform
- Project
- 17041 SMART-PDM
- Description
- Completes an end-to-end predictive maintenance once supplied with right inputs (can also be used merely for descriptive purposes, i.e. to collect, organise, and visualise industrial IoT data, without any predictive model)
- Ability to auto-scale with demand
- Contact
- Enforma
- sales@enforma-tr.com
- Technical features
Input(s):
- Sensor readouts
- Failure data
- Service records
Main feature(s):
- Flow-based programming UI
- Customisable charts & dashboard
- Callable RESTful API
- Ability to define endpoints for IoT, edge device and gateway
- Cloud based; multi-tenant Web application
Output(s):
- Remaining Useful Life in time unit
- Probability of Failure in percentage
- Alerts, self-updating visuals
- Machine Learning Model results
- Integration constraints
- Platform requires minimum configuration during set-up
- Docker-based; also an enabler for local cloud implementation
- Input data in JSON format
- Targeted customer(s)
Cyber physical system operator; Manufacturing Execution System; (MES) vendors; Operation and Maintenance teams; End-user (maintenance engineer).
- Conditions for reuse
Licensing
- Confidentiality
- Public
- Publication date
- 15-01-2022
- Involved partners
- Enforma Information and Communication Technologies A.S. (TUR)