基于人工神经网络的单位重量位移剩余阻力预测

Sandi Baressi Segota, N. Anđelić, J. Kudláček, R. Čep
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引用次数: 12

摘要

本文提出利用人工神经网络(ANN)从描述船舶尺寸的变量中预测单位排水量的剩余阻力值。为此,使用多层感知器(MLP)回归神经网络,并应用网格搜索技术来确定模型的适当属性。模型训练后,使用R2值和Bland-Altman (BA)图来确定其质量,该图显示大多数预测值落在95%置信区间内。最佳模型有4个隐藏层,分别有10个、20个、20个和10个节点,使用恒定学习率为0.01的relu激活函数,正则化参数L2值为0.001。所得到的模型显示出较高的回归质量,但由于缺乏数据,在较高的值范围内缺乏精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial neural network for predicting values of residuary resistance per unit weight of displacement
This paper proposes the usage of an Artificial neural network (ANN) to predict the values of the residuary resistance per unit weight of displacement from the variables describing ship’s dimensions. For this purpose, a Multilayer perceptron (MLP) regressor ANN is used, with the grid search technique being applied to determine the appropriate properties of the model. After the model training, its quality is determined using R2 value and a Bland-Altman (BA) graph which shows a majority of values predicted falling within the 95% confidence interval. The best model has four hidden layers with ten, twenty, twenty and ten nodes respectively, uses a relu activation function with a constant learning rate of 0.01 and the regularization parameter L2 value of 0.001. The achieved model shows a high regression quality, lacking precision in the higher value range due to the lack of data.
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