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Market Data Analysis And Short-term Price Forecasting In The Iran Electricity Market With Pay-as-bid Payment Mechanism

机译:使用按需付款机制的伊朗电力市场市场数据分析和短期价格预测

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摘要

Market data analysis and short-term price forecasting in Iran electricity market as a market with pay-as-bid payment mechanism has been considered in this paper. The data analysis procedure includes both correlation and predictability analysis of the most important load and price indices. The employed data are the experimental time series from Iran electricity market in its real size and is long enough to make it possible to take properties such as non-stationarity of market into account. For predictability analysis, the bifurcation diagrams and recurrence plots of the data have been investigated. The results of these analyses indicate existence of deterministic chaos in addition to non-stationarity property of the system which implies short-term predictability. In the next step, two artificial neural networks have been developed for forecasting the two price indices in Iran's electricity market. The models' input sets are selected regarding four aspects: the correlation properties of the available data, the critiques of Iran's electricity market, a proper convergence rate in case of sudden variations in the market price behavior, and the omission of cumulative forecasting errors. The simulation results based on experimental data from Iran electricity market are representative of good performance of the developed neural networks in coping with and forecasting of the market behavior, even in the case of severe volatility in the market price indices.
机译:本文考虑了伊朗电力市场作为按需付费机制的市场数据分析和短期价格预测。数据分析过程包括对最重要的负荷和价格指数的相关性和可预测性分析。使用的数据是来自伊朗电力市场的实际时间的实验时间序列,其时间足够长,可以考虑到诸如市场不稳定之类的属性。为了进行可预测性分析,已经研究了数据的分叉图和递归图。这些分析的结果表明,除了系统的非平稳性以外,还存在确定性混乱,这意味着短期可预测性。下一步,已经开发了两个人工神经网络来预测伊朗电力市场中的两个价格指数。从四个方面选择模型的输入集:可用数据的相关属性,对伊朗电力市场的批评,在市场价格行为突然变化的情况下的适当收敛速度以及省略累积预测误差。基于来自伊朗电力市场的实验数据的仿真结果代表了发达的神经网络在应对和预测市场行为方面的良好性能,即使在市场价格指数剧烈波动的情况下也是如此。

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