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Hackathon 5th No.63 PhyCRNet: Physics-informed Convolutional-Recurrent Network for Solving Spatiotemporal PDEs #557
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Thanks for your contribution! |
更新使用 PaddleScience套件,增加ppsci.arch.PhyCRNet |
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need to align with paper
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## 5. 结果展示 | ||
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PhyCRNet 案例针对 epoch=200 和 learning\_rate=1e-4 的参数配置进行了实验,结果返回Loss为 17.86。 |
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compute the error
error = frobenius_norm(np.array(ten_pred)-np.array(ten_true)) / frobenius_norm(
np.array(ten_true))
print('The predicted error is: ', error)
u_pred = output[:-1, 0, :, :].detach().cpu().numpy()
u_pred = np.swapaxes(u_pred, 1, 2) # [h,w] = [y,x]
u_true = truth[:, 0, :, :]
t_true = np.linspace(0, 2, 1001)
t_pred = np.linspace(0, 2, time_steps)
plt.plot(t_pred, u_pred[:, 32, 32], label='x=32, y=32, CRL')
plt.plot(t_true, u_true[:, 32, 32], '--', label='x=32, y=32, Ref.')
plt.xlabel('t')
plt.ylabel('u')
plt.xlim(0, 2)
plt.legend()
plt.savefig(fig_save_path + "x=32,y=32.png")
plt.close("all")
# plt.show()
# plot train loss
plt.figure()
plt.plot(train_loss, label = 'train loss')
plt.yscale('log')
plt.legend()
plt.savefig(fig_save_path + 'train loss.png', dpi = 300)
科学计算类论文复现,更关注 物理error和最后的物理场效果,参考原文代码复现error和对比图
(可以从checkpoint加载模型直接eval,不需要重新训练)
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need a-RMSE plot for t in [0,4]
# initialize logger | ||
logger.init_logger("ppsci", f"{OUTPUT_DIR}/train.log", "info") | ||
# set training hyper-parameters | ||
EPOCHS = 200 if not args.epochs else args.epochs |
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2000
return result_dict["loss"] | ||
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def output_graph(model, input_dataset, fig_save_path): |
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@@ -0,0 +1,273 @@ | |||
# Copyright (c) 2023 PaddlePaddle Authors. All Rights Reserved. |
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FN_2d_solver_[HighOrder].py
FitzHugh- Nagumo RD 方程数据生成代码需要补齐
np.array(ten_pred) - np.array(ten_true) | ||
) / functions.frobenius_norm(np.array(ten_true)) | ||
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print("The predicted error is: ", error) |
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error要求达到:源码,论文(1e-3)取较大值
--8<-- | ||
``` | ||
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### 3.7 模型训练与评估 |
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self.input_channels = input_channels | ||
self.hidden_channels = hidden_channels | ||
self.hidden_kernel_size = 3 |
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3是怎么来的?
self.input_kernel_size = input_kernel_size | ||
self.input_stride = input_stride | ||
self.input_padding = input_padding | ||
self.num_features = 4 |
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4是怎么来的?
class loss_generator(nn.Layer): | ||
"""Loss generator for physics loss""" | ||
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def __init__(self, dt=(10.0 / 200), dx=(20.0 / 128)): |
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默认值删掉
if __name__ == "__main__": | ||
# grid size | ||
M, N = 128, 128 | ||
n_simu_steps = 30000 |
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40000
layer_state_dict = paddle.load("output/phycrnet.pdparams") | ||
model.set_state_dict(layer_state_dict) | ||
model.register_output_transform(None) | ||
output_graph(model, input_dict_val, fig_save_path) |
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input_dict_val进行修改,尝试完成时间变量t,从0s到4s的u_predict和u_true的对比,以及a-RMSE计算
暂时关闭 |
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PR changes
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Describe
PaddlePaddle/Paddle#57262
Loss精度
运行 200 次截图
torch
paddle