Comparison of robust machine-learning and deep-learning models for midterm electrical load forecasting

Fatma Yaprakdal, Fatih Bal
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引用次数: 1

Abstract

Electrical load forecasting (ELF) is gaining importance especially due to the severe impact of climate change on electrical energy usage and dynamically evolving smart grid technologies in the last decades. In this regard, medium-term load forecasting, a crucial need for power system planning (generation optimization and outages plan) and operation control, has become prominent in particular. Machine learning and deep learning-based techniques are currently trending approaches in electrical load estimation due to their capability to model complex non-linearity, feature abstraction and high accuracy, especially in the smart power systems environment. In this study, several load forecasting models based on machine learning methods which comprise linear regression (LR), decision tree (DT), random forest (RF), gradient boosting, adaBoost, and deep learning techniques such as recurrent neural network (RNN) and long short-term memory (LSTM) are studied for medium-term electrical load demand forecasting at an aggregated level. Performance metric results of these analyzes are presented in detail. State-of-the-art feature selection models are examined on the dataset and their effects on these forecasting methods are evaluated. Numerical results show that forecasting performance can be significantly improved. These results are validated by the results of other studies on the subject and found to be superior.
鲁棒机器学习和深度学习模型在中期电力负荷预测中的比较
在过去的几十年里,由于气候变化对电能使用的严重影响和智能电网技术的动态发展,电力负荷预测(ELF)变得越来越重要。在此背景下,中期负荷预测作为电力系统规划(发电优化和停电计划)和运行控制的关键需求,显得尤为突出。由于机器学习和基于深度学习的技术具有模拟复杂非线性、特征抽象和高精度的能力,特别是在智能电力系统环境中,是目前电力负荷估计的趋势方法。在本研究中,研究了几种基于机器学习方法的负荷预测模型,包括线性回归(LR),决策树(DT),随机森林(RF),梯度增强,adaBoost以及深度学习技术,如循环神经网络(RNN)和长短期记忆(LSTM),用于汇总水平的中期电力负荷需求预测。详细介绍了这些分析的性能度量结果。在数据集上检查了最先进的特征选择模型,并评估了它们对这些预测方法的影响。数值结果表明,该方法能显著提高预测性能。这些结果被其他关于该主题的研究结果所证实,并被发现是优越的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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