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Load forecasting techniques for power systems with high levels of unmetered renewable generation: A comparative study

机译:高水平未再生于高水平再生生成电力系统的负载预测技术:比较研究

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Load forecasting remains a challenging problem in power system operation due to growth in low carbon technologies and distributed small scale renewable generation. In this paper we provide a comparative evaluation of a number of linear and non-linear (machine learning) load forecasting models for day-ahead load forecasting under these new conditions. Both autoregressive and exogenous input only models are considered with regressors determined either empirically or by a greedy forward selection methodology. Using data from the Northern Ireland power system as a case study, we show that non-linear models yield significant performance improvements for exogenous input (EI) based models, but that linear models remain competitive for same day last week (SDLW) models that include a historical load term as a regressor.
机译:负载预测由于低碳技术的增长和分布式小规模可再生生成,负载预测仍然是电力系统运行的具有挑战性问题。 在本文中,我们提供了许多线性和非线性(机器学习)负载预测模型的比较评估,用于在这些新条件下进行日前负荷预测。 自回归和外源性输入只有模型被认为是用凭经验确定的回归或通过贪婪的前向选择方法学。 使用来自北爱尔兰电力系统的数据作为案例研究,我们表明非线性模型对基于外源输入(EI)的模型产生了显着的性能改进,但是线性模型在上周的同一天保持竞争力(SDLW)模型 作为回归的历史负荷术语。

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