Time-Series Forecasting Energy Loads: A Case Study in Texas

R. Rice, K. North, G. Hansen, D. Pearson, Oliver Schaer, T. Sherman, Daniel Vassallo
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引用次数: 1

Abstract

Future predicted energy demand on the grid is a major factor that drives the prices of energy contracts on trading markets. Errors in forecasting are problematic for energy traders who buy and sell futures contracts on the expected price of energy: when decisions are made on inaccurate predictions, the market will be inefficient, leading to price volatility and investment losses. This paper proposes the use of an ensemble model of lasso and ridge regressions to predict energy loads. Specifically, the methodology is used to forecast hourly energy demand for up to forty-one hours in the future for the Electric Reliability Council of Texas (ERCOT). The features in the model include previous energy loads and time identifiers such as month, day, and hour of the prediction horizon. The methodology resulted in the creation of forty-one hourly models, each an ensemble of lasso and ridge regression models. The performance of the methodology is measured via out-of-sample data from ERCOT in 2020 against the ERCOT predictions for the same period.
时间序列预测能源负荷:以德克萨斯州为例
未来电网预测的能源需求是驱动交易市场能源合约价格的主要因素。对于根据预期能源价格买卖期货合约的能源交易员来说,预测错误是一个问题:当根据不准确的预测做出决策时,市场将效率低下,导致价格波动和投资损失。本文提出使用套索回归和脊回归的集合模型来预测能量负荷。具体来说,该方法被用于预测德克萨斯州电力可靠性委员会(ERCOT)未来长达41小时的每小时能源需求。模型中的特征包括以前的能源负荷和时间标识符,如预测视界的月、日和小时。该方法产生了41个小时模型,每个模型都是套索回归模型和脊回归模型的集合。该方法的性能是通过2020年ERCOT的样本外数据与同期的ERCOT预测来衡量的。
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