外文翻译-伊朗国家电网利用人工神经网络的短期负荷预测.doc
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- 外文 翻译 伊朗 国家电网 利用 人工 神经网络 短期 负荷 预测
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1、英文原文Short Term Load Forecasting of IranNational Power SystemUsing Artificial Neural NetworkGeneration TwoR. Barzamini,M. B. Menhaj, Sh. Kamalvand, A. TajbakhshAbstractThis paper presents a neuro-based short termload forecasting (STLF) method for Iran national power system (INPS) and its regions. Thi
2、s is an improved version of the one given in 1. The architecture of the proposed network is a three-layer feed forward neural network whose parameters are tuned by Levenberg-Marquardt BP (LMBP) augmented by an Early Stopping (ES) method tried out for increasing the speed of convergence. Instead of s
3、easonal training, an input as a month indicator is added to the input vectors. The short term load forecasting simulator developed so far presents satisfactory and better results for one hour up to a week prediction of INPS loads and region of INPS,Bakhtar Region Electric Co (BREC).I. INTRODUCTIONLo
4、ad forecasting has always been the essential part of an efficient power system planning and operation.Generally there are two groups of forecasting models, traditional models (model-based techniques) and modern technique (known as model-free techniques). Traditional load forecasting models are time
5、series and regression analysis. In recent years, computational intelligence methods are more commonly used for load forecasting 2-10.Multilayer feed forward neural networks as universal approximates are very suitable for load forecasting because they have remarkable ability to approximate nonlinear
6、functions with any desired accuracy. Selection of the input-output training data and input vector of the neural network plays a crucial role. Essentially in our case (load forecasting problem) the MLP-based networks are greatly affected by selection of inputs. Day type, Month type, historical load d
7、ata and weather information. How to choose the hourly load inputs for each weekly group plays an important role in improving networks performance (section II). The second Niroo Research Institute (NRI) STLF(NSTLFII) program is based on a three-layer feed forward neural network building block. For th
8、e training of this MLP, instead of conventional back propagation (BP) methods, the Levenberg-Marquardt BP (LMBP) and Early Stopping (ES) methods was employed in order to reach the optimum networks parameters faster, and also instead of seasonal training the month input was added to the input vectors
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