Electric Power ›› 2025, Vol. 58 ›› Issue (6): 172-179.DOI: 10.11930/j.issn.1004-9649.202409031
• New Energy and Energy Storage • Previous Articles Next Articles
WEI Wei(), YU He(
), YE Li(
), WANG Yingchun(
)
Received:
2024-09-05
Online:
2025-06-30
Published:
2025-06-28
Supported by:
WEI Wei, YU He, YE Li, WANG Yingchun. Low Voltage Substation Photovoltaic Ultra Short Term Power Prediction Method Based on FCM-SENet-TCN[J]. Electric Power, 2025, 58(6): 172-179.
气象因素 | 相关系数 | |
有功功率 | 1.000 | |
温度 | 0.426 | |
相对湿度 | –0.405 | |
太阳辐射度 | 0.912 | |
风速 | 0.541 | |
降雨量 | –0.075 | |
风向 | –0.040 |
Table 1 Pearson correlation coefficient
气象因素 | 相关系数 | |
有功功率 | 1.000 | |
温度 | 0.426 | |
相对湿度 | –0.405 | |
太阳辐射度 | 0.912 | |
风速 | 0.541 | |
降雨量 | –0.075 | |
风向 | –0.040 |
项目 | 数据 | |
逆变器尺寸/类型 | 4×6 kW;SMA SMC | |
跟踪器类型 | DEGE Renergie | |
阵列区域/m2 | 4×38.37 | |
面板类型 | 天合TSM-195 DC01 A | |
面板数量/个 | 4×30 | |
面板额定值/W | 195 | |
阵列评级/kW | 23.4 |
Table 2 Photovoltaic system data
项目 | 数据 | |
逆变器尺寸/类型 | 4×6 kW;SMA SMC | |
跟踪器类型 | DEGE Renergie | |
阵列区域/m2 | 4×38.37 | |
面板类型 | 天合TSM-195 DC01 A | |
面板数量/个 | 4×30 | |
面板额定值/W | 195 | |
阵列评级/kW | 23.4 |
模型 | 春 | 夏 | 秋 | 冬 | 平均 | |||||
FCM-LSTM | ||||||||||
FCM-TCN | ||||||||||
FCM-SENet-TCN |
Table 3 Comparison of RMSE values for different seasons
模型 | 春 | 夏 | 秋 | 冬 | 平均 | |||||
FCM-LSTM | ||||||||||
FCM-TCN | ||||||||||
FCM-SENet-TCN |
模型 | 春 | 夏 | 秋 | 冬 | 平均 | |||||
FCM-LSTM | ||||||||||
FCM-TCN | ||||||||||
FCM-SENet-TCN |
Table 4 Comparison of MAE values for different seasons
模型 | 春 | 夏 | 秋 | 冬 | 平均 | |||||
FCM-LSTM | ||||||||||
FCM-TCN | ||||||||||
FCM-SENet-TCN |
模型 | 晴天 | 多云 | 雨天 | 平均 | ||||
FCM-LSTM | ||||||||
FCM-TCN | ||||||||
FCM-SENet-TCN |
Table 5 Comparison of RMSE values for different weather conditions
模型 | 晴天 | 多云 | 雨天 | 平均 | ||||
FCM-LSTM | ||||||||
FCM-TCN | ||||||||
FCM-SENet-TCN |
模型 | 晴天 | 多云 | 雨天 | 平均 | ||||
FCM-LSTM | ||||||||
FCM-TCN | ||||||||
FCM-SENet-TCN |
Table 6 Comparison of MAE values for different weather conditions
模型 | 晴天 | 多云 | 雨天 | 平均 | ||||
FCM-LSTM | ||||||||
FCM-TCN | ||||||||
FCM-SENet-TCN |
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