电力系统保护与控制
電力繫統保護與控製
전력계통보호여공제
POWER SYSTM PROTECTION AND CONTROL
2014年
2期
132-138
,共7页
白牧可%唐巍%张璐%丛鹏伟
白牧可%唐巍%張璐%叢鵬偉
백목가%당외%장로%총붕위
电压降落%农村中压电网%神经网络群%BP算法改进%估算方法
電壓降落%農村中壓電網%神經網絡群%BP算法改進%估算方法
전압강락%농촌중압전망%신경망락군%BP산법개진%고산방법
voltage drop%rural middle-voltage power network%neural network group%improved algorithm of BP%estimation method
对影响农村中压电网电压降落的因素进行了分析,利用神经网络具有自学习、联想记忆功能以及逼近任意非线性映射的能力,提出了基于BP神经网络群的中压电网电压降落估算方法。为解决由于样本多、分类空间复杂而易导致网络不容易收敛的问题,采用分层的BP网络群结构,将样本分类,由各BP子网进行单类样本训练,完成对样本的并行训练及测试。该方法依据电压降落影响因素及实际电网结构参数,确定神经网络输入输出特征量;按照线路负荷分布类型将样本分类,减小了BP网络训练复杂度;根据样本误差和误差变化调整学习率和冲量因子,提高了BP网络学习效率。实际算例结果验证了所提出方法的有效性和可行性。
對影響農村中壓電網電壓降落的因素進行瞭分析,利用神經網絡具有自學習、聯想記憶功能以及逼近任意非線性映射的能力,提齣瞭基于BP神經網絡群的中壓電網電壓降落估算方法。為解決由于樣本多、分類空間複雜而易導緻網絡不容易收斂的問題,採用分層的BP網絡群結構,將樣本分類,由各BP子網進行單類樣本訓練,完成對樣本的併行訓練及測試。該方法依據電壓降落影響因素及實際電網結構參數,確定神經網絡輸入輸齣特徵量;按照線路負荷分佈類型將樣本分類,減小瞭BP網絡訓練複雜度;根據樣本誤差和誤差變化調整學習率和遲量因子,提高瞭BP網絡學習效率。實際算例結果驗證瞭所提齣方法的有效性和可行性。
대영향농촌중압전망전압강락적인소진행료분석,이용신경망락구유자학습、련상기억공능이급핍근임의비선성영사적능력,제출료기우BP신경망락군적중압전망전압강락고산방법。위해결유우양본다、분류공간복잡이역도치망락불용역수렴적문제,채용분층적BP망락군결구,장양본분류,유각BP자망진행단류양본훈련,완성대양본적병행훈련급측시。해방법의거전압강락영향인소급실제전망결구삼수,학정신경망락수입수출특정량;안조선로부하분포류형장양본분류,감소료BP망락훈련복잡도;근거양본오차화오차변화조정학습솔화충량인자,제고료BP망락학습효솔。실제산례결과험증료소제출방법적유효성화가행성。
The paper analyzes the factors influencing the voltage drop of the rural middle-voltage power network. Considering the self-learning ability, associative memory and approximating nonlinear mapping of neural network, a new method to estimate voltage drop of middle voltage distribution network is proposed based on BP neural network group. As the large number of sample data of voltage estimation and the complexity of classification are easy to lead to difficult network convergence, the BP network group structure is proposed. According to the specific requirements, samples are classified and input to each BP subnet to complete the single training as well as parallel training and tests. According to impact factors of the voltage drop and the actual parameters of distribution network, the neural network input and output characteristics are identified. The samples are classified according to the load distribution type, thus the complexity of BP network training is reduced and the training efficiency is improved. The simulation results of actual examples show that the proposed method is effective and feasible for estimation of voltage drop.