93 lines
3.7 KiB
Markdown
93 lines
3.7 KiB
Markdown
|
|
# CLAUDE.md
|
|||
|
|
|
|||
|
|
This file provides guidance to Claude Code (claude.ai/code) when working with code in this repository.
|
|||
|
|
|
|||
|
|
## Project Overview
|
|||
|
|
|
|||
|
|
**Heat Equation PINN** — A Physics-Informed Neural Network that solves the 1D time-varying heat equation with physical boundary conditions:
|
|||
|
|
|
|||
|
|
```
|
|||
|
|
∂T/∂t = α ∂²T/∂x² x ∈ [0, L], t ∈ [0, T_END]
|
|||
|
|
```
|
|||
|
|
|
|||
|
|
- **IC:** `T(x, 0) = T0` (uniform)
|
|||
|
|
- **BC x=0:** Neumann — heat flux step: `−k ∂T/∂x = Q(t)` where `Q = Q_VAL` if `t ≥ T_STEP` else `0`
|
|||
|
|
- **BC x=L:** Robin — convection: `−k ∂T/∂x = h (T − T_AMB)`
|
|||
|
|
|
|||
|
|
No experimental data is needed. A `fdm/` module provides a reference numerical solution (FTCS explicit scheme) used for evaluation and visualization comparison.
|
|||
|
|
|
|||
|
|
All physical and numerical parameters live in `config.py`.
|
|||
|
|
|
|||
|
|
## Running
|
|||
|
|
|
|||
|
|
Always activate the virtual environment first:
|
|||
|
|
|
|||
|
|
```bash
|
|||
|
|
source .venv/bin/activate
|
|||
|
|
```
|
|||
|
|
|
|||
|
|
**PINN:**
|
|||
|
|
```bash
|
|||
|
|
python app.py # Train / Evaluate (L2 vs FDM) / Visualize
|
|||
|
|
```
|
|||
|
|
|
|||
|
|
**FDM reference solver:**
|
|||
|
|
```bash
|
|||
|
|
python fdm/app.py # Solve / Heatmap / Animation / Time-series
|
|||
|
|
```
|
|||
|
|
|
|||
|
|
Saved artifacts (git-ignored): `models/best_heat_pinn_model.pth`, HTML plots in `animations/` and `animations/fdm/`.
|
|||
|
|
|
|||
|
|
To retrain from scratch: `rm models/best_heat_pinn_model.pth` before running option 1.
|
|||
|
|
|
|||
|
|
## Dependencies
|
|||
|
|
|
|||
|
|
`requirements.txt` exists. Key packages: `torch`, `numpy`, `plotly`. No `pandas` or `scikit-learn` needed.
|
|||
|
|
|
|||
|
|
GPU is auto-detected (`cuda` → `mps` → `cpu`) in `engine.py:_get_device()`.
|
|||
|
|
|
|||
|
|
## Architecture
|
|||
|
|
|
|||
|
|
```
|
|||
|
|
config.py ← all physical + numerical parameters (edit here to change the problem)
|
|||
|
|
app.py ← PINN CLI menu
|
|||
|
|
model.py ← HeatPINN + heat_pinn_loss()
|
|||
|
|
engine.py ← data sampling, Adam+L-BFGS training, evaluation vs FDM, visualization call
|
|||
|
|
visualizer.py ← PINN vs FDM: heatmap, animated T(x), time-series at fixed points
|
|||
|
|
fdm/
|
|||
|
|
solver.py ← FTCS explicit scheme, ghost-cell Neumann, explicit Robin
|
|||
|
|
visualizer.py ← same 3 plot types for FDM-only output
|
|||
|
|
app.py ← FDM CLI menu
|
|||
|
|
```
|
|||
|
|
|
|||
|
|
### Neural Network (`model.py`)
|
|||
|
|
|
|||
|
|
`HeatPINN`: 5-layer fully connected, input `(x, t)` → output `T`.
|
|||
|
|
|
|||
|
|
**Output scaling** — the network predicts a dimensionless perturbation; the `forward()` applies:
|
|||
|
|
```
|
|||
|
|
T = T_AMB + (Q_VAL · L / K) · net(x, t)
|
|||
|
|
```
|
|||
|
|
This keeps `net` outputs in `[0, 1]` range and ensures gradients `∂T/∂x` are O(1) for the network to learn. Do not remove this scaling.
|
|||
|
|
|
|||
|
|
`heat_pinn_loss()` normalizes all three loss terms to O(1) using `T_char = Q_VAL·L/K` and `grad_char = (Q_VAL/K)²`. Changing physical parameters in `config.py` does not require re-tuning loss weights.
|
|||
|
|
|
|||
|
|
### Training (`engine.py`)
|
|||
|
|
|
|||
|
|
`prepare_data()` samples collocation points with **deliberate clustering**: extra points near `x=0` (steep Neumann gradient) and around `t=T_STEP` (flux step discontinuity). Increasing `N_f` / `N_bc` here is the first lever to pull if accuracy is low.
|
|||
|
|
|
|||
|
|
`train_model()` runs **Adam first, then L-BFGS fine-tuning**. L-BFGS uses a closure that captures loss components in `_last` dict (avoids calling `heat_pinn_loss` outside an active grad context).
|
|||
|
|
|
|||
|
|
`evaluate_model()` runs the FDM solver and downsamples its `(NX, NT)` output to the PINN prediction grid `(100, 100)` for L2 comparison.
|
|||
|
|
|
|||
|
|
### FDM Solver (`fdm/solver.py`)
|
|||
|
|
|
|||
|
|
Returns `(T_matrix[NX, NT], x_vals, t_vals)`. Uses:
|
|||
|
|
- Ghost cell for Neumann: `T_ghost = T[1] + 2·dx·Q(t)/k`
|
|||
|
|
- Explicit Robin at x=L: `T[N] = (T[N−1] + dx·h/k·T_amb) / (1 + dx·h/k)` — uses `T_cur[-2]`, not `T_new[-2]`
|
|||
|
|
- CFL check at startup (warns, does not crash)
|
|||
|
|
|
|||
|
|
### Loss Scaling Notes
|
|||
|
|
|
|||
|
|
If you change `Q_VAL`, `K`, `H_CONV`, or `L` in `config.py`, the normalization in `heat_pinn_loss()` adjusts automatically. If losses diverge, check that `T_char = Q_VAL·L/K` is not near zero.
|