电力系统自动化
電力繫統自動化
전력계통자동화
Automation of Electric Power Systems
2015年
19期
149-154
,共6页
刘本希%廖胜利%冯仲恺%程春田%李秀峰%蔡华祥
劉本希%廖勝利%馮仲愷%程春田%李秀峰%蔡華祥
류본희%료성리%풍중개%정춘전%리수봉%채화상
小水电%神经网络%偏互信息%气象预测系统%发电预测
小水電%神經網絡%偏互信息%氣象預測繫統%髮電預測
소수전%신경망락%편호신식%기상예측계통%발전예측
small hydropower%neural network%mutual information%climate forecast system%power generation forecast
准确预测小水电富集地区小水电的发电能力是保证电网安稳运行、实现大小水电协调的重要措施。不同于大中型水电,小水电大多位于偏远山区,信息采集困难,管理薄弱,可用于发电能力预测的资料较少,难以利用和借鉴现有的大中型水电发电能力预测方法。文中结合小水电的实际情况,以地区小水电整体为对象,提出了耦合偏互信息的小水电发电能力预测方法。该方法以 BP神经网络预测模型为手段,采用偏互信息方法筛选显著影响小水电发电能力的预报因子,并结合气象预测系统(CFS)的气象预报信息作为输入,实现贫资料地区小水电发电能力预测。最后,以云南小水电富集的德宏和大理为实例研究验证了所述方法的有效性。
準確預測小水電富集地區小水電的髮電能力是保證電網安穩運行、實現大小水電協調的重要措施。不同于大中型水電,小水電大多位于偏遠山區,信息採集睏難,管理薄弱,可用于髮電能力預測的資料較少,難以利用和藉鑒現有的大中型水電髮電能力預測方法。文中結閤小水電的實際情況,以地區小水電整體為對象,提齣瞭耦閤偏互信息的小水電髮電能力預測方法。該方法以 BP神經網絡預測模型為手段,採用偏互信息方法篩選顯著影響小水電髮電能力的預報因子,併結閤氣象預測繫統(CFS)的氣象預報信息作為輸入,實現貧資料地區小水電髮電能力預測。最後,以雲南小水電富集的德宏和大理為實例研究驗證瞭所述方法的有效性。
준학예측소수전부집지구소수전적발전능력시보증전망안은운행、실현대소수전협조적중요조시。불동우대중형수전,소수전대다위우편원산구,신식채집곤난,관리박약,가용우발전능력예측적자료교소,난이이용화차감현유적대중형수전발전능력예측방법。문중결합소수전적실제정황,이지구소수전정체위대상,제출료우합편호신식적소수전발전능력예측방법。해방법이 BP신경망락예측모형위수단,채용편호신식방법사선현저영향소수전발전능력적예보인자,병결합기상예측계통(CFS)적기상예보신식작위수입,실현빈자료지구소수전발전능력예측。최후,이운남소수전부집적덕굉화대리위실례연구험증료소술방법적유효성。
In a small hydropower (SHP) enriched area,accurate forecast of SHP generation is very important for ensuring power grid safety and coordinating SHP generation with other power sources.Different from the generation forecast of large hydropower,most SHP stations are located in remote mountainous areas where information gathering is hard and management weak,making it nearly impossible to make use of the locally available forecast methods.By considering the actual situation of SHP stations,and with the SHP stations of an area as the object,a SHP generation forecast method is proposed.This method uses the improved BP neural network as the forecast model and partial mutual information to select remarkable input variables. In the power forecast stage,climate forecast system (CFS) data is used to get the precipitation of the target area and as the input of the model to forecast SHP generation.The case study of Dehong and Dali in Yunnan shows the effectiveness of the proposed method.