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Feasibility of PSO-ANN model for predicting surface settlement caused by tunneling

机译:PSO-ANN模型预测隧道引起的地表沉降的可行性

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摘要

The potential surface settlement, especially in urban areas, is one of the most hazardous factors in subway and other infrastructure tunnel excavations. Therefore, accurate prediction of maximum surface settlement (MSS) is essential to minimize the possible risk of damage. This paper presents a new hybrid model of artificial neural network (ANN) optimized by particle swarm optimization (PSO) for prediction of MSS. Here, this combination is abbreviated using PSO-ANN. To indicate the performance capacity of the PSO-ANN model in predicting MSS, a pre-developed ANN model was also developed. To construct the mentioned models, horizontal to vertical stress ratio, cohesion and Young's modulus were set as input parameters, whereas MSS was considered as system output. A database consisting of 143 data sets, obtained from the line No. 2 of Karaj subway, in Iran, was used to develop the predictive models. The performance of the predictive models was evaluated by comparing performance prediction parameters, including root mean square error (RMSE), variance account for (VAF) and coefficient correlation (R~2). The results indicate that the proposed PSO-ANN model is able to predict MSS with a higher degree of accuracy in comparison with the ANN results. In addition, the results of sensitivity analysis show that the horizontal to vertical stress ratio has slightly higher effect of MSS compared to other model inputs.
机译:潜在的地面沉降,尤其是在城市地区,是地铁和其他基础设施隧道开挖中最危险的因素之一。因此,最大表面沉降(MSS)的准确预测对于最大程度地减少损坏的可能性至关重要。本文提出了一种新的人工神经网络(ANN)的混合模型,通过粒子群优化(PSO)进行了优化,用于预测MSS。在此,使用PSO-ANN缩写该组合。为了表明PSO-ANN模型在预测MSS中的性能,还开发了一个预先开发的ANN模型。为了构建上述模型,将水平应力与垂直应力之比,内聚力和杨氏模量设置为输入参数,而将MSS视为系统输出。从伊朗卡拉伊地铁2号线获得的143个数据集组成的数据库用于开发预测模型。通过比较性能预测参数,包括均方根误差(RMSE),方差占比(VAF)和系数相关性(R〜2),评估了预测模型的性能。结果表明,与ANN结果相比,所提出的PSO-ANN模型能够以更高的准确度预测MSS。此外,敏感性分析的结果表明,与其他模型输入相比,水平应力与垂直应力之比对MSS的影响略高。

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