Journal of System Simulation ›› 2026, Vol. 38 ›› Issue (5): 1239-1254.doi: 10.16182/j.issn1004731x.joss.25-0396
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Mei Huawei1,2, Yang Penghui1, Yu Yang3,4
Received:2025-05-08
Revised:2025-07-09
Online:2026-05-21
Published:2026-05-29
Contact:
Yu Yang
CLC Number:
Mei Huawei, Yang Penghui, Yu Yang. Ultra-short-term Photovoltaic Power Prediction Based on Improved PatchTST Considering Data Drift[J]. Journal of System Simulation, 2026, 38(5): 1239-1254.
Table 4
Results of comparative experiments on Inner Mongolia dataset
| 模型类别 | 模型名 | RMSE/kW | MAE/kW | R2 |
|---|---|---|---|---|
| 循环神经网络 | RNN | 0.723 8 | 0.311 5 | 0.948 5 |
| LSTM | 0.694 9 | 0.283 8 | 0.952 5 | |
| GRU | 0.677 4 | 0.273 4 | 0.954 9 | |
| 卷积神经网络 | CNN | 0.918 8 | 0.486 3 | 0.917 0 |
| TCN | 0.849 2 | 0.424 7 | 0.929 1 | |
| 集成树模型 | RF | 0.688 5 | 0.269 2 | 0.953 4 |
| XGBoost | 0.706 3 | 0.274 8 | 0.951 0 | |
| LightGBM | 0.685 0 | 0.286 7 | 0.953 9 | |
| Transformer架构 | Transformer | 0.675 9 | 0.257 9 | 0.955 1 |
| Informer | 0.673 0 | 0.311 1 | 0.955 6 | |
| Autoformer | 0.812 9 | 0.410 4 | 0.935 2 | |
| 线性模型 | Linear | 0.921 7 | 0.538 4 | 0.916 7 |
| NLinear | 0.745 0 | 0.328 1 | 0.945 6 | |
| DLinear | 0.800 8 | 0.382 5 | 0.937 1 | |
| 现有研究 | CNN-LSTM | 0.743 7 | 0.339 8 | 0.945 6 |
| VMD-LSTM | 0.727 8 | 0.357 7 | 0.947 9 | |
| K-means-LSTM | 0.693 2 | 0.285 5 | 0.952 8 | |
| LSTM-PSO | 0.678 8 | 0.270 4 | 0.954 7 | |
| LSTM-BiGRU | 0.675 1 | 0.361 3 | 0.955 2 | |
| LSTM-BiGRU-PSO | 0.681 6 | 0.288 0 | 0.954 3 | |
| K-means-LSTM-BiGRU | 0.679 6 | 0.362 4 | 0.954 6 | |
| PatchTST | PatchTST*-GLAFF | 0.650 7 | 0.248 5 | 0.958 4 |
Table 7
Results of comparative experiments on DKASC dataset
| 模型类别 | 模型名 | RMSE/kW | MAE/kW | R2 |
|---|---|---|---|---|
| 循环神经网络 | RNN | 1.046 3 | 0.441 8 | 0.987 7 |
| LSTM | 0.972 8 | 0.361 3 | 0.989 3 | |
| GRU | 0.985 5 | 0.386 8 | 0.989 1 | |
| 卷积神经网络 | CNN | 1.077 8 | 0.469 3 | 0.986 9 |
| TCN | 0.989 7 | 0.390 9 | 0.989 0 | |
| 集成树模型 | RF | 1.038 0 | 0.378 9 | 0.987 9 |
| XGBoost | 0.966 8 | 0.295 8 | 0.989 5 | |
| LightGBM | 0.961 5 | 0.287 3 | 0.989 6 | |
| Transformer架构 | Transformer | 1.014 4 | 0.412 4 | 0.988 4 |
| Informer | 0.974 6 | 0.426 5 | 0.989 3 | |
| Autoformer | 0.991 4 | 0.462 8 | 0.988 9 | |
| 线性模型 | Linear | 1.671 3 | 0.801 8 | 0.968 6 |
| NLinear | 1.102 4 | 0.394 4 | 0.986 3 | |
| Dlinear | 1.236 9 | 0.551 5 | 0.982 8 | |
| 现有研究 | CNN-LSTM | 1.098 8 | 0.437 2 | 0.986 4 |
| VMD-LSTM | 1.144 1 | 0.677 3 | 0.985 3 | |
| K-means-LSTM | 1.063 6 | 0.464 1 | 0.987 3 | |
| LSTM-PSO | 0.970 3 | 0.377 2 | 0.989 4 | |
| LSTM-BiGRU | 0.979 2 | 0.373 3 | 0.989 2 | |
| LSTM-BiGRU-PSO | 0.995 9 | 0.402 0 | 0.988 8 | |
| K-means-LSTM-BiGRU | 1.114 6 | 0.488 5 | 0.986 0 | |
| PatchTST | PatchTST*-GLAFF | 0.922 8 | 0.266 9 | 0.990 4 |
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