农业工程学报
農業工程學報
농업공정학보
2013年
14期
178-184
,共7页
电力系统%负荷%数学模型%短期负荷预测%均值生成函数%最优子集回归
電力繫統%負荷%數學模型%短期負荷預測%均值生成函數%最優子集迴歸
전력계통%부하%수학모형%단기부하예측%균치생성함수%최우자집회귀
electric power systems%loads%mathematical models%shot-term load forecasting%mean generating function(MGF)%optimal subset regression(OSR)
为进一步提高电力负荷预测的精度和运算速度,针对短期负荷预测样本数据既有趋势性又有波动性的特点,采用均生函数-最优子集回归(mean generating function-optimal subset regression,MGF-OSR)建立预测模型。相对于均生函数主成分回归(mean generating function-principal component analysis,MGF-PCA)模型,该方法引入了一阶、二阶差分序列对高频部分进行拟合,又建立累加生成序列拟合其趋势,通过均值生成函数(MGF)将上述所有序列构建出预测因子矩阵,采用双评分准则进行粗选,剔除评分较低的因子,其他预报因子经组合寻优后得到最优子集并以此建立预测模型。实例分析表明,该模型预测的平均相对误差可低至2.42%,明显优于主成分回归模型的预测精度。
為進一步提高電力負荷預測的精度和運算速度,針對短期負荷預測樣本數據既有趨勢性又有波動性的特點,採用均生函數-最優子集迴歸(mean generating function-optimal subset regression,MGF-OSR)建立預測模型。相對于均生函數主成分迴歸(mean generating function-principal component analysis,MGF-PCA)模型,該方法引入瞭一階、二階差分序列對高頻部分進行擬閤,又建立纍加生成序列擬閤其趨勢,通過均值生成函數(MGF)將上述所有序列構建齣預測因子矩陣,採用雙評分準則進行粗選,剔除評分較低的因子,其他預報因子經組閤尋優後得到最優子集併以此建立預測模型。實例分析錶明,該模型預測的平均相對誤差可低至2.42%,明顯優于主成分迴歸模型的預測精度。
위진일보제고전력부하예측적정도화운산속도,침대단기부하예측양본수거기유추세성우유파동성적특점,채용균생함수-최우자집회귀(mean generating function-optimal subset regression,MGF-OSR)건립예측모형。상대우균생함수주성분회귀(mean generating function-principal component analysis,MGF-PCA)모형,해방법인입료일계、이계차분서렬대고빈부분진행의합,우건립루가생성서렬의합기추세,통과균치생성함수(MGF)장상술소유서렬구건출예측인자구진,채용쌍평분준칙진행조선,척제평분교저적인자,기타예보인자경조합심우후득도최우자집병이차건립예측모형。실례분석표명,해모형예측적평균상대오차가저지2.42%,명현우우주성분회귀모형적예측정도。
Power load forecasting can be divided into long-term prediction, medium-term prediction, short-term prediction and ultra short-term prediction, according to different time horizons of sample sequences. If sample sequences are different, their statistical characteristics are different. Therefore, we should adopt different forecast methods and models in this prediction process. This paper mainly discusses short-term load forecasting. Power system short-term load sample sequences not only have the characteristics of tendency and periodicity, but it also fluctuates greatly, making it difficult to forecast. In the current forecast models, there are some drawbacks, and the accuracy of fitting is not good. In order to improve the accuracy of short-term prediction, this paper established the Optimal Subset Regression (OSR) model for prediction based on the Mean Generating Function (MGF) sequence. MGF adopts m (m=INT(n/2)) different cycles to extract sample data from the original sample sequence, and x(n) to calculate their averages to get the new sequence. Then they are repeatedly extended to the length of the original sample sequence and we can get n×m matrix Fn×m called Mean Generating Function matrix. Each column vector fl(0)(t) of Fn×m can be used as a regression predictor of the original sample sequence. Furthermore, in order to fit the high frequency component of the original sample sequence, we make twice-differencing operations of original sample sequences so that we can achieve the effect of high-pass filtering. The first-order difference sequence of x(n) is x(1)(n-1) and the second-order difference sequence is x(2)(n-2). We can get fl(1)(t) and fl(2)(t) by calculating the MGF extended sequence of x(1)(n-1) and x(2)(n-2) respectively, then generating accumulation extended sequence fl(3)(t) by using fl(1)(t), so we can get about m4 MGF extended sequence fl(0)(t), fl(1)(t), fl(2)(t)和fl(3)(t) (l=1,2,…, m). In order to reduce the calculation work, we use all the predictors for roughing, using the sample sequence for simple regression. According to the couple score criterion (CSC), we can get the CSC value of simple regression. Then we makeχ2 test and keep qualified predictors, which, with bigger CSC values, are about 1/6 of the original predictors. We take these qualified predictors for free combination, generating 2p-1 subsets, and using these subsets for regression calculation. Then we calculate again the CSC value of the regression result, and select the subset with the maximum CSC value-the optimal subset using as prediction regression equation. According to the requirements of the prediction length, we extend the length of predictive factors of the optimal subset, substituting the extension value into the regression equation, so we can get the forecast results.