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A Linear Polynomial NARMAX Model with Multiple Factors to Forecast Day-Ahead Electricity Prices

机译:一种线性多项式Narmax模型,具有多种预测日前电价的因素

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Forecasting algorithms are a valuable mechanism to aid in the prediction of future prices. Although various black-box modelling techniques have been applied to variations of this problem, we focus on the use of transparent models to enable understanding and interpretation of the developed model. We utilize a Nonlinear AutoRegressive Moving Average model with eXogenous input(NARMAX) for electricity price forecasting using multiple input factors. Energy data from a 14-week period in 2017 were analyzed to determine whether a NARMAX model could accurately predict day-ahead electricity prices and to check which input factors in the model were most significant. The model considered the closely correlated lags and included 13 input factors. There were two models developed in order to determine which variables played an important role in predicting future prices. Experimental results indicate that previous price, demand, gas, coal, and nuclear are the most significant factors that influence electricity prices. Gas was the highest weighted factor for both developed models. Previous price yielded the biggest Error Reduction Ratio(ERR), but when not included in the model, demand generated the biggest ERR value. To summarize a NARMAX model with an input regression lag of one and previous price included generates the best day-ahead forecast of electricity prices.
机译:预测算法是一种有价值的机制,可以帮助预测未来价格。虽然各种黑匣子建模技术已应用于此问题的变化,但我们专注于使用透明模型来实现开发模型的理解和解释。我们利用非线性自回归移动平均模型与外源输入(NARMAX),用于使用多输入因子的电价预测。分析来自2017年14周的能源数据,以确定NARMAX模型是否可以准确预测前方的电价,并检查模型中的哪些输入因素最为显着。该模型被认为是密切相关的滞后,包括13个输入因素。有两种模型,以确定哪些变量在预测未来价格中发挥着重要作用。实验结果表明,以前的价格,需求,天然气,煤炭和核是影响电力价格的最重要因素。气体是两种开发模型的加权因素。以前的价格产生了最大的错误减少比率(ERR),但是当不包含在模型中时,需求产生了最大的错误值。总结一个具有输入的输入回归滞后的NARMAX模型,以前的价格包括为本最佳的电价预测。

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