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Artificial neural networks based on principal component analysis, fuzzy systems and fuzzy neural networks for preliminary design of rubble mound breakwaters

机译:基于主成分分析,模糊系统和模糊神经网络的人工神经网络在碎石堤防波堤的初步设计中的应用

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摘要

The new artificial intelligence models proposed for the preliminary design of rubble mound breakwaters consist of (1) multi layer feed forward artificial neural networks, (2) hybrid artificial neural networks with principal component analysis, (3) fuzzy systems, and (4) fuzzy neural networks. These models are applied for the stability analyses of Mersin yacht harbor main breakwater, as a case study in Turkey. A better agreement between the predicted stability numbers of hybrid artificial neural networks and measurements is obtained when compared to the stability equations. The Hybrid Artificial Neural Network model that is trained by the pre-processed database of measurements obtained from the Principal Component Analysis is considered as a robust technique in handling uncertainties inherent in the preliminary design. The fuzzy system and fuzzy neural network models have the advantages of incorporating flexible reasoning as expert systems when compared to hybrid neural networks; however, they require the development of new prediction enhancement techniques for the improvement of their forecasts.
机译:为瓦砾堆防波堤的初步设计提出的新的人工智能模型包括(1)多层前馈人工神经网络,(2)具有主成分分析的混合人工神经网络,(3)模糊系统和(4)模糊神经网络。这些模型用于土耳其梅尔辛游艇港主要防波堤的稳定性分析。与稳定性方程相比,可以在混合人工神经网络的预测稳定性数与测量值之间取得更好的一致性。通过从主成分分析获得的预处理数据数据库进行训练的混合人工神经网络模型被认为是处理初步设计中固有的不确定性的可靠技术。与混合神经网络相比,模糊系统和模糊神经网络模型具有将灵活推理作为专家系统的优势。但是,他们需要开发新的预测增强技术来改善其预测。

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