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Integration with EV-QA-Framework — ML-powered battery telemetry QA #5570

Description

@remontsuri

Hi PyBaMM team,

I'm the author of EV-QA-Framework — an open-source Python framework for ML-powered QA of EV battery systems.

What it does:

  • ML anomaly detection (Isolation Forest) on battery telemetry
  • SOH prediction via LSTM
  • CAN bus emulation (CAN 2.0B + J1939) with DBC parser
  • Cell imbalance detection and thermal runaway prediction
  • Prometheus metrics + Grafana dashboard

Integration potential:

  • EV-QA-Framework could use PyBaMM for physics-informed ML / BMS validation
  • PyBaMM could use EV-QA-Framework for automated QA of outputs

Would you be open to discussing integration points?

Repo: https://github.com/remontsuri/EV-QA-Framework

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