Detect change patterns where labeled failures are scarce

CONTROL
PredictCare
Sensor-based anomaly detection and asset health — Detects changes in vibration, current, temperature and pressure signals and supports maintenance decisions with operating-context evidence.
Concept · validation requiredMaintain baselines by asset and operating mode
Connect alarm evidence to inspection and maintenance feedback
COMPONENTS
Components
- Data acquisition kit
- Baseline and anomaly models
- Asset-health dashboard
- Feedback workflow
INTEGRATION
Integration
- Vibration, current and temperature sensors
- PLC and historian
- CMMS and MES
- DeviceOps
DELIVERABLES
Deliverables
- Sensor and sampling plan
- Baseline-period definition
- Alarm validation set
- Inspection and feedback procedure
VALIDATION ITEMS
What must be validated before specifications
Performance, specifications and schedule are confirmed only after validating the actual samples and site conditions.
- 01Sensor location and quality
- 02Operating-mode separation
- 03Alarm cost
- 04Maintenance feedback
- 05Long-term data retention
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Validate feasibility with actual samples and site conditions
Product status and specifications are stated in the proposal based on validation and supply conditions.