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Towards estimation of electricity demand utilizing a robust multi-gene genetic programming technique

机译:利用可靠的多基因遗传编程技术估算电力需求

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Multi-gene genetic programming (MGGP) is a new nonlinear system modeling approach that integrates the capabilities of standard genetic programming and classical regression. This paper deals with the application of this robust technique for the prediction of annual electricity demand in Thailand. The predictor variables included in the analysis were population, gross domestic product, stock index, and total revenue from exporting industrial products. Several statistical criteria were used to verify the validity of the model. A sensitivity analysis was performed to evaluate the contributions of the input features. The correlation coefficients between the measured and predicted electricity demand values are equal to 0.999 and 0.997 for the calibration and testing data sets, respectively. In addition to its high accuracy, MGGP outperforms regression and other powerful soft computing-based techniques.
机译:多基因遗传规划(MGGP)是一种新的非线性系统建模方法,它集成了标准遗传规划和经典回归的功能。本文讨论了这种强大技术在泰国年度电力需求预测中的应用。分析中包括的预测变量是人口,国内生产总值,股票指数和工业产品出口总收入。一些统计标准被用来验证该模型的有效性。进行了敏感性分析以评估输入特征的贡献。对于校准和测试数据集,测得的电力需求值和预测的电力需求值之间的相关系数分别等于0.999和0.997。除了其高精度外,MGGP还优于回归分析和其他基于软计算的强大技术。

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