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Short-Term Electricity Price Forecasting Using Wavelet Transform Integrated Generalized Neuron

机译:使用小波变换综合通用神经元的短期电价预测

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With the advent of deregulation, electricity has become a commodity which is capable of being traded in the deregulated electricity market. In the deregulated environment, accurate electricity price forecasting has become necessity for the generating companies in order to maximize their profits. The existing forecasting models can be broadly classified into statistical models, simulation models, and soft computing models. The soft computing based models have gained popularity among other existing models because of their nonlinear mapping capabilities and ease of implementation. In the presented work, a generalized neuron based electricity price forecasting model has been proposed to forecast the electricity price of New South Wales electricity market. The de-noising capability of the wavelet transform is explored for decomposing the ill-behaved price signal into low- and high-frequency signals for better representation. The low- and high-frequency signals were given as input to the generalized neuron model individually for improving the forecasting accuracy of the model.
机译:随着放松管制的出现,电力已成为一种能够在解除管制电力市场交易的商品。在解除管制的环境中,准确的电价预测已成为发电公司的必要性,以便最大限度地提高其利润。现有的预测模型可广泛分类为统计模型,仿真模型和软计算模型。由于其非线性绘图功能和易于实现,软计算基于软计算的模型在其他现有模型中获得了普及。在本作工作中,提出了一种广义神经元电价预测模型,预测新南威尔士电力市场的电价。探讨了小波变换的去噪能力,用于将不合适的价格信号分解成低频和高频信号以更好地表示。低频和高频信号被称为单独的通用神经元模型的输入,以改善模型的预测精度。

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