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Combining Back-Propagation and Genetic Algorithms to Train Neural Networks for Ambient Temperature Modeling in Italy

机译:将反向传播和遗传算法结合到意大利环境温度建模的培训神经网络

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This paper presents a hybrid approach based on soft computing techniques in order to estimate ambient temperature for those places where such datum is not available. Indeed, we combine the Back-Propagation (BP) algorithm and the Simple Genetic Algorithm (GA) in order to effectively train neural networks in such a way that the BP algorithm initialises a few individuals of the GA's population. Experiments have been performed over all the available Italian places and results have shown a remarkable improvement in accuracy compared to the single and traditional methods.
机译:本文介绍了一种基于软计算技术的混合方法,以估计这些数据的地方的环境温度。实际上,我们结合了后传播(BP)算法和简单的遗传算法(GA),以便有效地训练神经网络,使得BP算法初始化GA人群的少数人。在所有可用的意大利场所进行了实验,与单一和传统方法相比,结果表明,准确性的显着提高。

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