Performance of Artificial Neural Network and Modified Gravitational Search Algorithm Models to Predict Vibration Response of Geocell Reinforced Based Weak Sand

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Abstract

The use of a fast evolving artificial intelligence technology (AIT) to forecast the vibration response of maritime soil based on geocells is explored in this research. The vibration response is represented by an indicator called peak particle velocity (PPV). For the purpose of predicting PPV, the artificial intelligence techniques Artificial Neural Network (ANN) and Modified Gravitational Search Algorithm (MGSA) are employed. To create the dataset for the model, a number of field vibration tests were first performed over the geocell-reinforced beds. PPV variation was investigated by varying the test variables—footing embedment, dynamic load, infill material modulus, width, and depth of geocell mattress placement—during the test performed. The various statistical indicators were determined in order to evaluate the prediction performance of a constructed model. Plate load results on geocell-reinforced foundation beds have been used to validate the proposed hybrid ANN-MGSA model. High accuracy and consistency were found when the findings of the ANN-EHO, JSA, MOA, and RNN method were compared, particularly at predicted and actual resolution levels. A parametric sensitivity has also been examined in order to better understand the behaviour of geocell-reinforced structures
人工神经网络和改进重力搜索算法模型在土工格室加筋弱砂振动响应预测中的性能
本研究探讨了基于土工单元的快速发展的人工智能技术(AIT)在海洋土壤振动响应预测中的应用。振动响应由一个称为峰值粒子速度(PPV)的指标表示。为了预测PPV,采用了人工智能技术人工神经网络(ANN)和修正引力搜索算法(MGSA)。为了创建模型的数据集,首先在土工格室加固层上进行了一系列现场振动测试。在测试过程中,通过改变测试变量——基础嵌入、动载荷、填充材料模量、土工格室垫层放置的宽度和深度——来研究PPV的变化。确定各种统计指标,以评价所构建模型的预测性能。土工格室加筋基础床上的板荷载结果验证了所提出的ANN-MGSA混合模型。当比较ANN-EHO、JSA、MOA和RNN方法的结果时,发现具有较高的准确性和一致性,特别是在预测和实际分辨率水平上。为了更好地理解土工格室增强结构的行为,还研究了参数敏感性
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