竞争性发电公司的价格信号分析

J. Nicolaisen, C. Richter, Gerald B. SheblC
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引用次数: 42

摘要

在竞争激烈的电力市场中,成功的运营和投标需要精心策划的策略。适当的策略取决于系统的状态。大量数据(包括时间序列)是可用的,对这些数据进行适当的分析可以为选择正确的策略提供洞察力。传统的数据分析技术可能非常耗时。快速分析数据的技术可以帮助预测价格和需求,并确定市场的现状,这应该有助于精明的交易者在竞争对手之前对市场做出明智的反应。先进的数据分析技术可以揭示数据中的模式,这可能对预测需求或价格非常有帮助。本文比较了几种有助于在相关时间序列数据中识别有用模式的技术。这些模式是未来电力价格或电力需求的关键或领先指标。随着竞争的加剧,快速识别这些信号的重要性将会增加。正在研究的技术是傅里叶变换和哈特利变换,使用傅里叶变换和哈特利变换的线谱分析。
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Price signal analysis for competitive electric generation companies
Successful operation and bidding in the competitive electricity marketplace requires well-planned strategies. The appropriate strategy is dependent on the state of the system. Much data (including time series) is available, and a proper analysis of this data can provide insight in choosing the right strategies. Traditional data analysis techniques can be time consuming. Techniques that quickly analyze the data can assist in forecasting price and demand and identifying the present state of the market, which should help the savvy trader in reacting intelligently to the market before its competitors. Advanced data analysis techniques may reveal patterns in the data that may be very helpful in forecasting demand or price. This paper compares several techniques that may help in identifying useful patterns in relevant time series data. These patterns are keys or leading indicators of future electric utility price or demand of electricity. The importance of quickly identifying these signals will increase as competition increases. The techniques being investigated are Fourier and Hartley transforms, line spectrum analysis using both Fourier transforms and Hartley transforms.
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