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Short-term load forecasting using Cartesian Genetic Programming: An efficient evolutive strategy: Case: Australian electricity market

机译:使用笛卡尔遗传规划的短期负荷预测:一种有效的演进策略:案例:澳大利亚电力市场

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Currently, the Cartesian Genetic Programming approaches applied to regression problems tackle the evolutive strategy from a static point of view. They are confident on the evolving capacity of the genetic algorithm, with less attention being paid over alternative methods to enhance the generalization error of the trained models or the convergence time of the algorithm. On this article, we propose a novel efficient strategy to train models using Cartesian Genetic Programming at a faster rate than its basic implementation. This proposal achieves greater generalization and enhances the error convergence. Finally, the complete methodology is tested using the Australian electricity market as a case study.
机译:当前,应用于回归问题的笛卡尔遗传规划方法从静态的角度解决了进化策略。他们对遗传算法的不断发展的能力充满信心,而对替代方法的关注却很少,这些方法会增加训练模型的泛化误差或算法的收敛时间。在本文上,我们提出了一种新颖有效的策略,即使用笛卡尔遗传程序以比其基本实现更快的速度训练模型。该提议实现了更大的概括并增强了误差收敛。最后,以澳大利亚电力市场为例,对完整的方法论进行了测试。

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