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Application of adaptive wavelet neural network to forecast operating reserve requirements in forward ancillary services market

机译:自适应小波神经网络在预测辅助服务市场运营准备金需求预测中的应用

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摘要

Operating reserve (OR) is a major portion of ancillary services (AS) in a competitive electricity market and need to be procured by independent system operator (ISO), to achieve a high degree of power system reliability and security, following the major generation and transmission contingencies. Several ISOs have adopted deterministic methods to assess the OR requirements, however, such methods do not explicitly consider the unforeseen load swings and the probability of equipment outages. This paper proposes an adaptive wavelet neural network (AWNN) based two-stage approach to forecast OR requirements for both day-ahead and hour-ahead AS market in the California ISO (CAISO) controlled grid. The AWNN is a new class of feed-forward neural network with continuous wavelet function as the hidden layer node's activation function. The forecasting results for winter and summer seasons of the year 2007 are presented and compared with those obtained by feed-forward multi-layer perceptron neural network (MLPNN). It is found that AWNN based proposed method outperforms the MLPNN model.
机译:在竞争激烈的电力市场中,运营储备(OR)是辅助服务(AS)的重要组成部分,需要由独立系统运营商(ISO)采购,以确保在继主要发电和发电之后实现高度的电力系统可靠性和安全性。传输意外事件。多个ISO已采用确定性方法来评估OR要求,但是,此类方法并未明确考虑不可预见的负载波动和设备中断的可能性。本文提出了一种基于自适应小波神经网络(AWNN)的两阶段方法来预测加利福尼亚ISO(CAISO)控制网格中日前和时前AS市场的OR需求。 AWNN是一类新的前馈神经网络,具有连续小波函数作为隐藏层节点的激活函数。介绍了2007年冬季和夏季的预测结果,并将其与通过前馈多层感知器神经网络(MLPNN)获得的预测结果进行了比较。发现基于AWNN的方法优于MLPNN模型。

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