利用三种不同的遗传算法估算能源和火用生产和消耗值。第1部分:模型开发

H. Ceylan, H. Ozturk, A. Hepbasli, Z. Utlu
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引用次数: 11

摘要

摘要本研究分为两个部分,提出了利用遗传算法估算能源和火用生产和消费值的新模型。本研究的第1部分处理模型开发,而在各种场景下的应用程序和测试将在第2部分进行处理。在这方面,提出了遗传算法能量(GAEN)和遗传算法火用(GAEX)估计模型。在能源和能源估算中,自变量为GDP、人口和进出口比。提出了GAEN和GAEX方程的三种形式,即线性形式、指数形式和指数形式与线性形式的混合形式。其中,选取平均相对误差和测试周期的最佳拟合模型用于未来估计,并提出了GAEN和GAEX的拟合模型。可以得出结论,这里提出的模型可以用作可用估计技术的替代解决方案和估计技术。
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Estimating Energy and Exergy Production and Consumption Values Using Three Different Genetic Algorithm Approaches. Part 1: Model Development
Abstract The present study, consisting of two parts, proposes new models for estimating energy and exergy production and consumption values using the genetic algorithm approach. Part 1 of this study deals with the model development, while the application and testing with various scenarios will be treated in Part 2. In this regard, the genetic algorithm energy (GAEN) and genetic algorithm exergy (GAEX) estimating models have been proposed. During the energy and exergy estimation, independent variables are the GDP, population, and the ratio of export to import. The three forms of the GAEN and GAEX are developed, of which one is linear, second is exponential and the third is a mix of the exponential and linear form of the equations. Among them, the best fit models in terms of average relative errors and for the testing period are selected for future estimation and proposed both for GAEN and GAEX. It may be concluded that the models proposed here can be used as an alternative solution and estimation techniques to available estimation techniques.
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