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An adaptively trainable neural network algorithm and its application to electric load forecasting

机译:一种自适应的培训神经网络算法及其在电负荷预测中的应用

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A training procedure that adapts the weights of a trained layered perceptron type artificial neural network to training data originating from a slowly varying nonstationary process is proposed. The resulting adaptively trained neural network (ATNN), based on nonlinear programming techniques, is shown to adapt to new training data that is in conflict with earlier training data with affecting the neural networks' response minimally to data elsewhere. The ATNN demonstrates improved accuracy over conventionally trained layered perceptron when applied to the problem of electric load forecasting.
机译:提出了一种培训程序,它提出了一种训练分层的感知者类型人工神经网络的权重,以源自缓慢变化的非间断过程的训练数据。基于非线性编程技术的由此产生的自适应培训的神经网络(ATNN)被示出了适应与早期培训数据冲突的新培训数据,其利用影响其他地方的数据的神经网络的响应。 ATNN在应用于电负荷预测问题时,通过常规训练的层状摄影师进行了改进的精度。

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