Industrial Grinding Machine
- Project
- 17041 SMART-PDM
- Description
Self-diagnostic cycle reports that:
- Shows the value and evaluation of the last measurement whether it is in range or not
- The evolution of the bearings and analysis capable of detecting imbalances and phenomena that are detected at lower frequencies
- Contact
- Gorka Unamuno, Ideko
- gunamuno@ideko.es
- Technical features
Input(s):
- Accelerometers
- Spindles
- Controller
- Gateway
- CNC
- Arrowhead compatible interfaces
- Feature analysis and extraction algorithms
- Diagnostic and decision algorithms
Main feature(s):
- Super-efficient proactive maintenance
- Increased production efficiency
- Ensure better product quality and increased machines health and safety
- Making use of data to improve manufacturing efficiency
- Smart services such as maintenance based artificial intelligence techniques that subsequently the results of data analysis offers valued-services to companies
Output(s):
- Self-diagnostic cycle reports
- Architecture that allows the acquisition and processing of data from the machine to know its current state of health and predict possible failures in system to justify the predictive maintenance
- Operating models and behaviour patterns of critical parts of machines
- Most suitable analysis techniques to perform an analysis of machine tools focused in a predictive maintenance system
- Integration constraints
Hardware requirements:
- Windows (7,8,10), macOS (10.7-10.15), Linux, Controller (PLC), A gateway
- A solution for acquisition of data from sensor deployed in the machine
- The quality of the data collection from the machine through sensors
- Targeted customer(s)
Customers, End user.
- Conditions for reuse
Licensing
- Confidentiality
- Public
- Publication date
- 15-01-2022
- Involved partners
- Ideko (ESP)
- Danobat (ESP)