Optimizing the architecture of the artificial neural network by genetic algorithm to improve the predictability of pile bearing capacity based on CPT results

T. Pham, Huong-Lan Thi Vu
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引用次数: 1

Abstract

This paper presents the results of applying the Artificial Neural Network (ANN) model in determining pile bearing capacity. The traditional methods used to calculate the bearing capacity of piles still have many disadvantages that need to be overcome such as high cost, complicated calculation, time-consuming. Currently, Artificial Intelligence (AI) is a useful tool that is applied in many fields to save time and costs. The study develops an ANN model and optimizes the architecture, using the Genetic Algorithm (GA) to determine the pile bearing capacity. A dataset of 108 pile static compression results is used to train and test the model. The results of the study are compared with the experimental formula according to Vietnamese nation standard TCVN 10304:2014, showing that the ANN model with well optimized, allowing prediction of pile bearing capacity close to experimental results and better than the formula in nation standard. Specifically, the ANN model gives 12% and 32.4% better performance, respectively, than the empirical formula on R2 and RMSE criteria, respectively. The results of the study are a premise for the application of AI in solving pile problems in the field of construction.
利用遗传算法优化人工神经网络结构,提高基于CPT结果的桩承载力可预测性
本文介绍了人工神经网络(ANN)模型在确定桩承载力中的应用结果。传统的桩承载力计算方法仍存在成本高、计算复杂、耗时长等缺点。目前,人工智能(AI)是一个有用的工具,应用于许多领域,以节省时间和成本。本研究建立了人工神经网络模型并对结构进行了优化,利用遗传算法确定了桩的承载力。利用108个桩静压结果数据集对模型进行训练和测试。将研究结果与越南国家标准TCVN 10304:2014的试验公式进行对比,结果表明,优化后的人工神经网络模型对桩承载力的预测接近试验结果,优于国家标准公式。具体而言,在R2和RMSE标准下,人工神经网络模型的性能分别比经验公式高12%和32.4%。研究结果为人工智能在建筑领域解决桩问题的应用提供了前提。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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