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Genetic assisted selection of RBF model structures for greenhouse inside air temperature prediction

机译:遗传辅助选择的RBF模型结构用于温室内部气温预测

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This paper presents results on the application of Multi-Objective Genetic Algorithms to the selection of Radial Basis Function Neural Networks structures. The neural networks are to be incorporated in a real-time predictive greenhouse environmental control strategy, as predictors of the inside air temperature. Previous research conducted by the authors modelled the inside air temperature as a function of the inside relative humidity and of the outside temperature and solar radiation. A second-order model structure previously selected in the context of dynamic temperature models identification was used. Several training and learning methods were compared, and the application of the Levenberg-Marquardt optimisation method was found to be the best way to determine the neural network parameters. The application of correlation-based model-validity tests revealed that the validity of such a second-order model structure could be manually improved after inspection of the tests results. Both network performance and validity are certainly affected by the number of neurons, the input variables considered and the time delays used. As the number of alternatives is huge, Multi-Objective Genetic Algorithms are applied here to the selection of network inputs and number of neurons.
机译:本文介绍了多目标遗传算法在径向基函数神经网络结构选择中的应用结果。该神经网络将被结合到实时预测温室环境控制策略中,作为室内空气温度的预测器。作者先前进行的研究将内部空气温度建模为内部相对湿度以及外部温度和太阳辐射的函数。使用先前在动态温度模型识别的上下文中选择的二阶模型结构。比较了几种培训和学习方法,发现Levenberg-Marquardt优化方法的应用是确定神经网络参数的最佳方法。基于相关性的模型有效性测试的应用表明,在检查测试结果后,可以手动提高这种二阶模型结构的有效性。网络性能和有效性当然都受到神经元数量,所考虑的输入变量和所用时间延迟的影响。由于备选方案的数量巨大,因此此处将多目标遗传算法应用于网络输入和神经元数量的选择。

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