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Gene expression programming as a basis for new generation of electricity demand prediction models

机译:基因表达编程作为新一代电力需求预测模型的基础

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摘要

This study proposes a new gene expression programming (GEP) approach for the prediction of electricity demand. The annual population, gross domestic product, stock index, and total revenue from exporting industrial products were used to predict the electricity demand of the same year in Thailand. Several statistical criteria were used to verify the validity of the model. Further, the contributions of the influencing variables to the prediction of the electricity demand were analyzed. Correlation coefficient, root mean squared error and mean absolute percent error were used to evaluate the performance of the model. In addition to its high accuracy, the derived model outperforms regression and other soft computing-based models.
机译:这项研究提出了一种新的基因表达程序设计(GEP)方法来预测电力需求。年人口,国内生产总值,股票指数和工业产品出口总收入被用来预测泰国同年的电力需求。一些统计标准被用来验证该模型的有效性。此外,分析了影响变量对电力需求预测的贡献。相关系数,均方根误差和绝对绝对百分数误差用于评估模型的性能。除了其高精度外,派生模型还优于回归模型和其他基于软计算的模型。

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