哥伦比亚电力市场需求-发电关系的典型化和基于消费模式的小时-日需求预测

Lilian D. Suárez-Riveros, Jejen-Salinas Santiango, Laura M. Patarroyo-Godoy, C. Dante
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引用次数: 0

摘要

这项调查通过描述每小时和每天的消费模式,并随后预测每小时和每天的电力能源需求,确立了哥伦比亚能源市场需求与发电量之间的关系。使用的数据集具有从2019年1月1日至2020年9月30日每小时和每天的电力需求和发电量的变量。Ward的方法采用余弦相似度来建立消费模式。采用线性回归、支持向量机、随机森林等方法进行预测,选择平均绝对百分比误差(MAPE)最小的模型。日能耗分为3组,小时能耗分为6组。发电量符合需求,说明系统是高效的。除10月和12月假期等低需求高峰时段外,预测小时能源需求的最佳算法为线性回归。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Typification of the demand-generation relationship of Colombian electricity market and forecast of demand at an hourly-daily level based on consumption patterns
This investigation establishes the relationship between demand and generation of the Colombian energy market by characterizing hourly and daily consumption patterns and later forecasting electricity energy demand at the hourly-daily level. The dataset used had variables demand and generation of electricity at hourly and daily levels, from 1 January 2019 to 30 September 2020. Ward’s method was applied with cosine similarity to establish the consumption patterns. Linear Regression, Support Vector Machine, and Random Forest were implemented to forecast consumption, and the model chosen was the one whose lowest Mean Absolute Percentage Error (MAPE) was selected. Daily energy consumption was classified into three groups and hourly energy consumption in six groups. The generation is in line with the demand, which indicates that the system is efficient. The algorithm that best forecasted hourly energy demand was linear regression, except for days with low demand peaks, such as October and December holidays.
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