利用混合线性ARMA和进化无气味h∞滤波器训练的非线性函数链接神经网络挖掘能源市场电价

D. K. Bebarta, R. Bisoi, P. Dash
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引用次数: 2

摘要

本文提出了一种混合自回归移动平均(ARMA)和非线性函数链神经网络用于能源市场电价预测。功能神经块通过基函数将输入空间扩展到高维空间,而不使用像MLP结构这样的隐藏层,从而有助于引入非线性。与传统的功能链接人工神经网络(FLANN)不同,输入层由输入和输入的线性组合的正切双曲函数组成,称为基函数。所提出的混合神经网络由一个无气味的H-infinity过滤器训练,以提供对前一天电价的准确预测。采用自适应差分进化策略进一步优化了无气味h∞滤波器的噪声协方差参数。对PJM、西班牙和澳大利亚能源市场的研究显示,在不同的季节范围内,提前一天的预测结果非常出色。
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Mining of electricity prices in energy markets using a hybrid linear ARMA and nonlinear functional link neural network trained by evolutionary unscented H-infinity filter
This paper presents a hybrid autoregressive moving average (ARMA) and a nonlinear functional link neural network for electricity price forecasting in an Energy market. The functional neural block helps to introduce nonlinearity by expanding the input space to higher dimensional space through a basis function without using any hidden layers like MLP structure. Unlike the conventional functional link artificial neural network (FLANN), the input layer comprises the inputs and tangent hyperbolic functions of the linear combination of the inputs known as the basis functions. The proposed hybrid neural network is trained by an unscented H-infinity filter to provide an accurate forecasting of day ahead electricity prices. The noise covariance parameters of the unscented H-infinity filter are further optimised with an adaptive differential evolution strategy. The studies on PJM, Spanish and Australian energy markets exhibit excellent forecasting results over different seasonal horizons for one day ahead of time.
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