Rui Wan
update
e8e6dad
import torch
import numpy as np
import matplotlib.pyplot as plt
from Dataset import DataAdditiveManufacturing, DataThermoforming
from model import NeuralNetwork
DEVICE = torch.device('cpu')
# Set global plotting parameters
plt.rcParams.update({'font.size': 14,
'figure.figsize': (10, 8),
'lines.linewidth': 2,
'lines.markersize': 6,
'axes.grid': True,
'axes.labelsize': 16,
'legend.fontsize': 10,
'xtick.labelsize': 14,
'ytick.labelsize': 14,
'figure.autolayout': True
})
def set_seed(seed=42):
np.random.seed(seed)
torch.manual_seed(seed)
if torch.cuda.is_available():
torch.cuda.manual_seed_all(seed)
def train_neural_network(model, inputs, outputs, optimizer, epochs=1000, lr_scheduler=None):
model.train()
for epoch in range(epochs):
optimizer.zero_grad()
predictions = model(inputs)
loss = torch.mean(torch.square(predictions - outputs))
loss.backward()
optimizer.step()
if lr_scheduler:
lr_scheduler.step()
if epoch % 100 == 0:
print(f'Epoch {epoch}, Loss: {loss.item()}, Learning Rate: {optimizer.param_groups[0]["lr"]}')
def kfold_indices(n_samples, k=5, seed=42, shuffle=True):
rng = np.random.default_rng(seed)
indices = np.arange(n_samples)
if shuffle:
rng.shuffle(indices)
fold_sizes = np.full(k, n_samples // k, dtype=int)
fold_sizes[: n_samples % k] += 1
current = 0
folds = []
for fold_size in fold_sizes:
start, stop = current, current + fold_size
folds.append(indices[start:stop])
current = stop
return folds
def ridge_fit_predict(x_train, y_train, x_test, alpha=1.0):
# Closed-form ridge regression: W = (X^T X + alpha I)^-1 X^T Y
x_aug = np.concatenate([x_train, np.ones((x_train.shape[0], 1))], axis=1)
xtx = x_aug.T @ x_aug
reg = alpha * np.eye(xtx.shape[0], dtype=x_train.dtype)
reg[-1, -1] = 0.0 # don't regularize bias
w = np.linalg.solve(xtx + reg, x_aug.T @ y_train)
x_test_aug = np.concatenate([x_test, np.ones((x_test.shape[0], 1))], axis=1)
return x_test_aug @ w
def kfold_ridge_baseline(inputs, outputs, k=5, alpha=1.0, seed=42):
folds = kfold_indices(len(inputs), k=k, seed=seed, shuffle=True)
mse_folds = []
r2_folds = []
for i in range(k):
test_idx = folds[i]
train_idx = np.concatenate([f for j, f in enumerate(folds) if j != i])
x_train = inputs[train_idx]
y_train = outputs[train_idx]
x_test = inputs[test_idx]
y_test = outputs[test_idx]
# Train-only normalization
x_mean = x_train.mean(axis=0)
x_std = x_train.std(axis=0) + 1e-8
y_mean = y_train.mean(axis=0)
y_std = y_train.std(axis=0) + 1e-8
x_train_n = (x_train - x_mean) / x_std
x_test_n = (x_test - x_mean) / x_std
y_train_n = (y_train - y_mean) / y_std
y_pred_n = ridge_fit_predict(x_train_n, y_train_n, x_test_n, alpha=alpha)
y_pred = y_pred_n * y_std + y_mean
mse = np.mean((y_pred - y_test) ** 2, axis=0)
ss_res = np.sum((y_test - y_pred) ** 2, axis=0)
ss_tot = np.sum((y_test - np.mean(y_test, axis=0)) ** 2, axis=0)
r2 = 1 - ss_res / ss_tot
mse_folds.append(mse)
r2_folds.append(r2)
mse_folds = np.stack(mse_folds, axis=0)
r2_folds = np.stack(r2_folds, axis=0)
print("Ridge k-fold CV (alpha=%.3g, k=%d)" % (alpha, k))
print("MSE mean:", np.mean(mse_folds, axis=0))
print("MSE std:", np.std(mse_folds, axis=0))
print("R2 mean:", np.mean(r2_folds, axis=0))
print("R2 std:", np.std(r2_folds, axis=0))
def main():
dataset = DataAdditiveManufacturing()
inputs = dataset.get_input(normalize=False)
outputs = dataset.get_output(normalize=False)
idx_train = np.random.choice(len(inputs), size=int(0.95 * len(inputs)), replace=False)
idx_test = np.setdiff1d(np.arange(len(inputs)), idx_train)
# Normalize using train-only statistics to avoid test leakage
x_train = inputs[idx_train]
y_train = outputs[idx_train]
x_test = inputs[idx_test]
y_test = outputs[idx_test]
x_mean = x_train.mean(axis=0)
x_std = x_train.std(axis=0) + 1e-8
y_mean = y_train.mean(axis=0)
y_std = y_train.std(axis=0) + 1e-8
x_train_n = (x_train - x_mean) / x_std
x_test_n = (x_test - x_mean) / x_std
y_train_n = (y_train - y_mean) / y_std
y_test_n = (y_test - y_mean) / y_std
inputs_train = torch.tensor(x_train_n, dtype=torch.float32).to(DEVICE)
outputs_train = torch.tensor(y_train_n, dtype=torch.float32).to(DEVICE)
inputs_test = torch.tensor(x_test_n, dtype=torch.float32).to(DEVICE)
outputs_test = torch.tensor(y_test_n, dtype=torch.float32).to(DEVICE)
layer_sizes = [inputs.shape[1], 64, 32, outputs.shape[1]]
dropout_rate = 0.1
model = NeuralNetwork(layer_sizes, dropout_rate=dropout_rate, activation=torch.nn.ReLU).to(DEVICE)
optimizer = torch.optim.Adam(model.parameters(), lr=0.001, weight_decay=1e-4)
lr_scheduler = torch.optim.lr_scheduler.StepLR(optimizer, step_size=2000, gamma=0.9)
# Create a proper dataset that keeps input-output pairs together
train_dataset = torch.utils.data.TensorDataset(inputs_train, outputs_train)
train_loader = torch.utils.data.DataLoader(train_dataset, batch_size=16, shuffle=True)
# Train the model
epochs = 5000
best_test_loss = float("inf")
patience = 400
patience_left = patience
for epoch in range(epochs):
model.train()
for inputs_batch, outputs_batch in train_loader:
inputs_batch = inputs_batch.to(DEVICE)
outputs_batch = outputs_batch.to(DEVICE)
optimizer.zero_grad()
predictions = model(inputs_batch)
loss = torch.mean(torch.square(predictions - outputs_batch))
loss.backward()
optimizer.step()
if lr_scheduler:
lr_scheduler.step()
if epoch % 200 == 0:
model.eval()
with torch.no_grad():
train_pred = model(inputs_train, train=False)
train_loss = torch.mean(torch.square(train_pred - outputs_train))
test_pred = model(inputs_test, train=False)
test_loss = torch.mean(torch.square(test_pred - outputs_test))
print(f'Epoch {epoch}, Train Loss: {train_loss.item():.6f}, Test Loss: {test_loss.item():.6f}')
if test_loss.item() < best_test_loss - 1e-6:
best_test_loss = test_loss.item()
patience_left = patience
else:
patience_left -= 1
if patience_left <= 0:
print(f"Early stopping at epoch {epoch}")
break
predictions = model.predict(inputs_test)
test_loss = torch.mean(torch.square(predictions - outputs_test))
print(f'Test Loss: {test_loss.item()}. Samples: {idx_test}')
x = np.arange(0, len(idx_test))
outputs_test = outputs_test.cpu().numpy() * y_std + y_mean
predictions = predictions.cpu().numpy() * y_std + y_mean
# for sample in outputs_test:
# print(f'Test samples: {sample}')
plt.figure(figsize=(10, 6))
plt.plot(x, outputs_test[:, 0], color='b', linestyle='--', label='True Phi7_Change')
plt.plot(x, predictions[:, 0], color='b', linestyle='-', label='Predicted Phi7_Change')
plt.plot(x, outputs_test[:, 1], color='r', linestyle='--', label='True Phi8_Change')
plt.plot(x, predictions[:, 1], color='r', linestyle='-', label='Predicted Phi8_Change')
plt.plot(x, outputs_test[:, 2], color='g', linestyle='--', label='True Phi9_Change')
plt.plot(x, predictions[:, 2], color='g', linestyle='-', label='Predicted Phi9_Change')
plt.gca().xaxis.set_major_locator(plt.MaxNLocator(integer=True))
plt.xlabel('Sample Index')
plt.xticks(ticks=range(len(idx_test)),labels=idx_test + 1)
plt.ylabel('Angle Change (Degrees)')
plt.title('Angle Change Prediction')
plt.legend(loc='lower left')
plt.savefig('fdm_simulation.png')
plt.figure(figsize=(10, 6))
plt.plot(x, outputs_test[:, -1], color='m', linestyle='--', label='True Global_Max_Stress')
plt.plot(x, predictions[:, -1], color='m', linestyle='-', label='Predicted Global_Max_Stress')
plt.xlabel('Sample Index')
plt.xticks(ticks=range(len(idx_test)),labels=idx_test + 1)
plt.ylabel('Stress (MPa)')
plt.title('Global Max Stress Prediction')
plt.legend(loc='lower left')
plt.savefig('fdm_stress_prediction.png')
# MSE
mse = np.mean((predictions - outputs_test) ** 2, axis=0)
# print(f'Mean Squared Error for Phi1_Change: {mse[0]:.6f}, Phi2_Change: {mse[1]:.6f}, Phi3_Change: {mse[2]:.6f}, Phi7_Change: {mse[3]:.6f}, Phi8_Change: {mse[4]:.6f}, Phi9_Change: {mse[5]:.6f}, Global_Max_Stress: {mse[6]:.6f}')
print(f'Mean Squared Error for Phi7_Change: {mse[0]:.6f}, Phi8_Change: {mse[1]:.6f}, Phi9_Change: {mse[2]:.6f}, Global_Max_Stress: {mse[3]:.6f}')
# R 2 score
ss_ress = np.sum((outputs_test - predictions) ** 2, axis=0)
ss_tots = np.sum((outputs_test - np.mean(outputs_test, axis=0)) ** 2, axis=0)
r2_scores = 1 - ss_ress / ss_tots
# print(f'R² Score for Phi1_Change: {r2_scores[0]:.6f}, Phi2_Change: {r2_scores[1]:.6f}, Phi3_Change: {r2_scores[2]:.6f}, Phi7_Change: {r2_scores[3]:.6f}, Phi8_Change: {r2_scores[4]:.6f}, Phi9_Change: {r2_scores[5]:.6f}, Global_Max_Stress: {r2_scores[6]:.6f}')
print(f'R² Score for Phi7_Change: {r2_scores[0]:.6f}, Phi8_Change: {r2_scores[1]:.6f}, Phi9_Change: {r2_scores[2]:.6f}, Global_Max_Stress: {r2_scores[3]:.6f}')
# Error
# Save the model
model_save_path = './model_fdm_ckpt.pth'
model_config = {'layer_sizes': layer_sizes,
'dropout_rate': dropout_rate
}
checkpoint = {
'model_state_dict': model.state_dict(),
'model_config': model_config
}
torch.save(checkpoint, model_save_path)
def load_model(model_path):
checkpoint = torch.load(model_path, map_location=DEVICE)
model_config = checkpoint['model_config']
model = NeuralNetwork(model_config['layer_sizes'], dropout_rate=model_config['dropout_rate'], activation=torch.nn.ReLU).to(DEVICE)
model.load_state_dict(checkpoint['model_state_dict'])
print(f"Model loaded from {model_path}")
return model
def inverse_design(material_base, fiber, fiber_vf, y_target, n_restarts=5, epochs=100, use_lbfgs=True, model=None, data=None):
if model is None:
model = load_model('./model_fdm_ckpt.pth').to(torch.device('cpu'))
if data is None:
data = DataAdditiveManufacturing()
mat_type = data.material_base_map.get(material_base, 0.0)
fiber_type = data.fiber_type_map.get(fiber, 0.0)
build_direction = data.build_direction_map.get("Vertical", 0.0)
y_target_norm = torch.tensor(data.normalize_output(y_target), dtype=torch.float32)
y_target_tensor = torch.tensor(y_target, dtype=torch.float32)
input_mean = torch.tensor(data.input_mean)
input_std = torch.tensor(data.input_std)
output_mean = torch.tensor(data.output_mean)
output_std = torch.tensor(data.output_std)
weights = torch.tensor([1.0, 1.0, 1.0, 0.001], dtype=torch.float32)
bounds = torch.tensor([[100., 300.], [50., 300.], [10., 200.]], dtype=torch.float32) # Extruder_Temp, Velocity, Bed_Temp
best = {"loss": float('inf'), "input": None, "output": None}
for restart in range(n_restarts):
z = torch.randn(3, requires_grad=True)
if use_lbfgs:
optimizer = torch.optim.LBFGS([z], lr=0.1, max_iter=epochs, line_search_fn="strong_wolfe")
steps = 1
else:
optimizer = torch.optim.Adam([z], lr=0.001)
steps = epochs
for step in range(steps):
def closure():
var = bounds[:, 0] + (bounds[:, 1] - bounds[:, 0]) * torch.sigmoid(z)
optimizer.zero_grad()
input_raw = torch.cat([torch.tensor([mat_type, fiber_type, fiber_vf, build_direction]), var]).unsqueeze(0)
input_norm = (input_raw - input_mean) / input_std
output_pred = model(input_norm)
output_pred = (output_pred * output_std) + output_mean
loss = torch.sum(weights * (output_pred - y_target_tensor) ** 2)
loss.backward()
return loss
if use_lbfgs:
loss = optimizer.step(closure)
else:
loss = closure()
optimizer.step()
if (step + 1) % 200 == 0:
print(f'Restart {restart + 1}, Step {step + 1}, Loss: {loss.item():.6f}, grad: {z.grad.norm().item():.6f}')
with torch.no_grad():
var = bounds[:, 0] + (bounds[:, 1] - bounds[:, 0]) * torch.sigmoid(z)
input_raw = torch.cat([torch.tensor([mat_type, fiber_type, fiber_vf, build_direction]), var])
input_norm = (input_raw - input_mean) / input_std
output_pred = model(input_norm)
output_pred = data.denormalize_output(output_pred.numpy())
final_loss = np.sum(weights.numpy() * (output_pred - y_target) ** 2).item()
if final_loss < best["loss"]:
best["loss"] = final_loss
best["input"] = var.detach().cpu().numpy()
best["output"] = output_pred
return best
if __name__ == "__main__":
set_seed(51)
# dataset = DataAdditiveManufacturing()
# inputs = dataset.get_input(normalize=False)
# outputs = dataset.get_output(normalize=False)
# kfold_ridge_baseline(inputs, outputs, k=5, alpha=1.0, seed=51)
# main()
best = inverse_design(material_base="HDPE", fiber="CF", fiber_vf=45.0,
y_target=np.array([-0.22, 0.11, -0.004, 185.2]), n_restarts=20, epochs=100, use_lbfgs=True)
print("Best design found:")
print(f"Extruder_Temp: {best['input'][0]:.2f}, Velocity: {best['input'][1]:.2f}, Bed_Temp: {best['input'][2]:.2f}")
print(f"Predicted Outputs: Phi7_Change: {best['output'][0]:.4f}, Phi8_Change: {best['output'][1]:.4f}, Phi9_Change: {best['output'][2]:.4f}, Global_Max_Stress: {best['output'][3]:.4f}")