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首页> 外文期刊>IEE proceedings. Part C, Generation, Transmission, and Distribution >Artificial neural network based peak load forecasting using Levenberg-Marquardt and quasi-Newton methods
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Artificial neural network based peak load forecasting using Levenberg-Marquardt and quasi-Newton methods

机译:基于人工神经网络的Levenberg-Marquardt和拟牛顿法峰值负荷预测

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Daily electrical peak-load forecasting has been done using the feedforward neural network based on the Levenberg-Marquardt back-propagation algorithm, Broyden-Fletcher-Goldfarb-Shanno back-propagation algorithm and one-step secant backpropagation algorithm by incorporating the effect of eleven weather parameters, the type of day and the previous day peak load information. To avoid the trapping of the network into a state of local minima, the optimisation of user-defined parameters viz. learning rate and error goal has been performed. Training data set has been selected using a growing window concept and is reduced as per the nature of the day and the season for which the forecast is made. For redundancy removal in the input variables, reduction of the number of input variables has been done by the principal component analysis method of factor extraction. The resultant data set is used for the training of a three-layered neural network. To increase the learning speed, the weights and biases are initialised according to the Nguyen and Widrow method. To avoid over-fitting, an early stopping of training is done at the minimum validation error.
机译:结合11个天气的影响,使用基于Levenberg-Marquardt反向传播算法,Broyden-Fletcher-Goldfarb-Shanno反向传播算法和一步割线反向传播算法的前馈神经网络,进行了每日电高峰负荷预测参数,日期类型和前一天的高峰负荷信息。为了避免网络陷入局部最小值状态,用户定义参数的优化即。学习率和错误目标已执行。训练数据集已使用越来越多的窗口概念进行选择,并且会根据进行预测的日期和季节的性质而减少。为了消除输入变量中的冗余,已经通过因子提取的主成分分析方法来减少输入变量的数量。结果数据集用于训练三层神经网络。为了提高学习速度,根据Nguyen和Widrow方法初始化权重和偏差。为避免过度拟合,应以最小的验证误差尽早停止训练。

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