Files
radiacode/CLAUDE.md
Jacquin Antoine 75d271c696 Background réaliste CsI(Tl) + hybridation mesuré/synthétique + dashboard continuum
- Remplace le continuum exponentiel par un modèle réaliste CsI(Tl) dans
  l'entraînement (bosse asymétrique ~110 keV + queue Compton)
- Ajoute l'injection de background mesuré (70% mesuré / 30% synthétique)
  via --measured_background et MEASURED_BACKGROUND_PATH
- Ajoute l'endpoint /api/background/continuum et le toggle "Continuum CsI"
  sur le dashboard background
- Exclut le canal 1023 (overflow bin) de l'affichage web (NUM_CHANNELS=1023)
- Corrige le lissage Gaussien du background (normalisation locale aux bords)
- Met à jour README.md, CLAUDE.md, TUTORIEL.md, TOTO.md, vega_ml/README.md

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-05-19 18:14:00 +02:00

4.8 KiB
Raw Blame History

CLAUDE.md

This file provides guidance to Claude Code (claude.ai/code) when working with code in this repository.

Project Overview

Radiacode 103 is a gamma-ray spectrometer isotope identification pipeline. It captures spectra from a Radiacode 103 USB detector, subtracts background radiation, and identifies isotopes using a CNN-FCNN multi-task PyTorch model (VegaModel, 34.5M params, 82 isotopes). The project runs as Docker containers orchestrated by docker-compose.

Architecture

Three Docker containers, each with its own Dockerfile:

  • train/ — Generates 50k synthetic spectra and trains VegaModel on GPU. Entrypoint runs generation then training sequentially. Code lives in train/vega_ml/ (synthetic_spectra, training/vega).
  • detect/ — Production monitor. Connects to Radiacode 103 via USB, samples every 60s, accumulates spectrum, subtracts background, runs inference, writes JSON state and daily reports. Two scripts: radiacode_monitor.py (main loop) and capture_background.py (24h background capture).
  • web/ — FastAPI dashboard on port 8080. Serves a single-page HTML/JS frontend with tabs for spectrum, background, CPS timeline, and history. Reads monitor state from JSON files written by the detect container.

Data flow: detect writes monitor_state.json + cps_log.jsonl + daily reports to /data/ and /logs/web reads them (read-only volume mounts). The train container reads/writes /data/synthetic/ and /models/.

Web API Routes

  • /api/status — monitor status (connected, CPS, staleness)
  • /api/spectrum/current — accumulated spectrum (1023 channels, overflow channel excluded)
  • /api/spectrum/difference — background-subtracted spectrum
  • /api/background, /api/background/spectrum, /api/background/reference, /api/background/theoretical — background data (live, 24h reference, theoretical CsI(Tl) model)
  • /api/cps/timeline — CPS time series
  • /api/history, /api/history/{date} — daily detection reports

Key Physics Constants

Energy calibration: E(keV) = 0.33 + 2.97 * channel_index (env vars ENERGY_CALIBRATION_OFFSET and ENERGY_CALIBRATION_SLOPE). The detector has 1024 raw channels but channel 1023 is an overflow bin — only the first 1023 channels (203036 keV) are used for display and inference. CsI(Tl) crystal with 8.4% FWHM at 662 keV.

Commands

# Build all images
docker compose build

# Train model (GPU required, ~45 min on RTX 5060 Ti)
docker compose run --rm train

# Capture 24h background (leave running, no radioactive source nearby)
docker compose run --rm -d --name radiacode-bg detect python capture_background.py

# Start continuous detection monitor
docker compose up detect

# Start web dashboard
docker compose up web

# Run both detect and web
docker compose up detect web

No test suite exists in this project. No linter is configured.

VegaModel

Defined in train/vega_ml/training/vega/model.py. Input: 1D spectrum (1023 channels, normalized to max). Output: classification logits (82 isotopes, apply sigmoid for probabilities) + activity predictions (Bq, scaled by max_activity_bq=1000). Loss: VegaLoss = BCE(logits) + 0.1 * Huber(activities * mask) — regression only penalizes present isotopes.

The model checkpoint (models/vega_best.pt) stores model_config and model_state_dict. At inference, the detect container dynamically imports VegaModel and IsotopeIndex from the mounted vega_ml volume.

Synthetic Background Model

The training background uses a realistic CsI(Tl) continuum shape (not a simple exponential):

  • Continuum: Asymmetric hump at ~110 keV (sigma_left=55, sigma_right=50 keV) + Compton tail (0.45*exp(-E/240) + 0.04*exp(-E/700)) + noise floor. Calibrated against real Radiacode 103 measurements. Implemented in spectrum_physics.py::generate_realistic_continuum().
  • Isotope peaks: K-40 (1460 keV), Pb-214 (295, 352 keV), Bi-214 (609, 1120, 1764 keV), Ac-228 (911 keV), Pb-212 (239 keV), Tl-208 (583, 2614 keV) — with stochastic activity variation per sample.
  • Hybrid training: If MEASURED_BACKGROUND_PATH points to a valid .npy file, 70% measured + 30% synthetic continuum is used. This is controlled by SpectrumConfig.measured_background_path and the --measured_background CLI argument.

Configuration

All config is via environment variables in docker-compose.yml. Key variables:

  • MODEL_PATH, ISOTOPE_INDEX_PATH, BACKGROUND_PATH — file paths (container-mounted volumes)
  • VEGA_DEVICEcpu or cuda
  • THRESHOLD — detection probability threshold (default 0.5)
  • SAMPLE_INTERVAL — seconds between samples (default 60)
  • ENERGY_CALIBRATION_OFFSET/SLOPE — energy calibration constants
  • MEASURED_BACKGROUND_PATH — path to measured background .npy for hybrid training (default: /data/background_24h.npy)