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Modelling the cross-shore beach profiles of sandy beaches with Posidonia oceanica using artificial neural networks: Murcia (Spain) as study case

机译:用人工神经网络建模沙滩横岸海滩型材:穆尔西亚(西班牙)作为研究案例

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This paper presents a model of the cross-shore beach profile taking into account the presence of the seagrass Posidonia oceanica whose ultimate objective is to reduce the volume of sand used in beach nourishment. The methodology describes the training, validation, testing and application of models of artificial neural networks (ANN) for computing the cross-shore beach profile of sandy beaches in the province of Murcia (Spain). Eighty ANN models were generated by modifying both the input variables and the number of neurons in the hidden layer. The input variables consist of wave and sediment data and data concerning the Posidonia oceanica. To select and evaluate the performance of the optimal model, the following parameters were used: R-2 , absolute error, mean absolute percentage error and percentage relative error. The results show a mean absolute error of 0.22 m (0.21 m in training and 0.28 m in test), representing an improvement of 85.1% compared to models that do not use the Posidonia oceanica and 69.8% against those that consider it. Although the ANN was developed for beaches with P.oceanica, it could be used in areas with other seagrass able to reduce wave energy and consolidate the sand such as Syringodium filiforme, Thaalassia testudinum, Laminaria hyperborea, Halodule wrightii and Zostera marina. (C) 2018 Elsevier Ltd. All rights reserved.
机译:本文介绍了横梁海滩型材的模型,考虑到海草的存在,其最终目标是减少海滩营养中使用的沙子的体积。该方法描述了人工神经网络模型(ANN)模型的培训,验证,测试和应用,用于计算穆尔西亚省(西班牙)的沙滩横岸海滩剖面。通过修改隐藏层中的输入变量和神经元数来生成八十个ANN模型。输入变量由波浪和沉积物数据和有关Posidonia Oceanica的数据组成。要选择和评估最佳模型的性能,使用以下参数:R-2,绝对误差,平均百分比误差和相对误差百分比。结果表明,2.22米的平均绝对误差为0.22米(训练和0.28米,试验中0.28米),与不使用Posidonia Oceanica的模型和69.8%的模型相比,提高了85.1%。虽然ANN是为与P.oceanica的海滩开发的,但它可以在其他能够减少波浪能量的地区使用,并巩固砂浆,如紫罗兰,Thaalassia Testudinum,Laminaria Hyperborea,Halodule Wrightii和Zostera Marina。 (c)2018年elestvier有限公司保留所有权利。

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