Qualcomm​

Predictive Maintenance model on QCX217 Board

Solution Summary

Adaptable and Robust Anomaly Detection – Time Series (ARAD-T):

Aizip time-series foundation model: pretrained on large dataset from diverse sensors, excellent generalization ability

Easily adapted to different equipment (motors, engines, HVAC, servers) & sensors (accelerometer, pressure sensor, EEG)

On-device registration, no training needed

Only need normal data. No need to collect large anomaly dataset

Efficient model can run locally on variety of device (MCUs, CPUs, GPUs, etc.)

Advantages and Values to the Customers:

More accurate & robust than traditional DSP based solutions

Significantly shorten development time compared to conventional deep learning workflow

Edge based solution enhances scalability for large equipment fleets

Cost saving

Predictive Maintenance demo:

Predictive maintenance for industrial machines using vibration data.

Registers “normal operation” of the machine during a registration phase.

Detects deviations from registered operation patterns and triggers an alert.

Adaptability: The model adapts to various industrial settings through an easy and fast registration phase.

Real-Time Response: Detects anomalies quickly.

Runs on a standard ARM Cortex-M3 processor.