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Photovoltaic plants predictive model by means of ANN trained by a hybrid evolutionary algorithm

机译:基于混合进化算法的神经网络的光伏植物预测模型。

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This paper introduces a hybrid evolutionary optimization algorithm as a tool for training an Artificial Neural Network used for production forecasting of solar energy PV plants. This hybrid technique is developed in order to exploit in the most effective way the uniqueness and peculiarities of two classical optimization approaches, Particle Swarm Optimization (PSO) and Genetic Algorithms (GA). This procedure essentially represent a bio-inspired heuristic search technique, which can be used to solve combinatorial optimization problems, modeled on the concepts of natural selection and evolution (GA), but also based on cultural and social behaviours derived from the analysis of the swarm intelligence and interaction among particles (PSO). Some simulation results are reported to highlight advantages and drawbacks of the proposed technique in order to suitably apply this algorithm to neural network applications in engineering problems.
机译:本文介绍了一种混合进化优化算法,将其作为训练人工神经网络的工具,该人工神经网络用于太阳能光伏电站的生产预测。开发此混合技术是为了以最有效的方式利用两种经典优化方法(粒子群优化(PSO)和遗传算法(GA))的独特性和特殊性。此过程本质上代表了一种生物启发式启发式搜索技术,可用于解决组合优化问题,该算法以自然选择和进化(GA)的概念为模型,而且还基于从群体分析中得出的文化和社会行为粒子之间的智能和交互(PSO)。据报道,一些仿真结果突出了所提出技术的优缺点,以便将该算法适当地应用于工程问题中的神经网络应用。

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