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A beetle antennae search improved BP neural network model for predicting multi-factor-based gas explosion pressures

机译:甲壳虫天线搜索改进的BP神经网络模型,用于预测基于多因子的气体爆炸压力

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摘要

A gas explosion in an underground structure may cause serious damage to the human body and ground buildings and may result in huge economic losses. The pressure of the gas explosion is an important parameter in determining its severity and designating an emergency plan. However, existing empirical and computational fluid dynamics (CFD) methods for pressure prediction are either inaccurate or inefficient when considering multiple influencing factors and their interrelationships. Therefore, for a more efficient and reliable prediction, the present study developed a multifactorial prediction model based on a beetle antennae search (BAS) algorithm improved back propagation (BP) neural network. A total of 317 sets of data which considered factors of geometry, gas, obstacle, vent, and ignition were collected from previous studies. The results showed that the established model can predict pressures accurately by low RMSE (43.4542 and 50.7176) and MAPE (3.9666% and 4.9605%) values and high R-2 (0.7696 and 0.7388) values for training and testing datasets, respectively. Meanwhile, the BAS algorithm was applied to improve both the calculation efficiency and the accuracy of the proposed model by enabling a more intelligent hyperparameter tuning method. Furthermore, the permutation importance of input variables was investigated, and the length (L) and the ratio of length and diameter (L/D) of geometry were found to be the most critical factors that affect the explosion pressure level.
机译:地下结构中的气体爆炸可能会对人体和地面建筑造成严重损害,可能导致经济损失巨大。气体爆炸的压力是确定其严重程度和指定应急计划的重要参数。然而,在考虑多次影响因素及其相互关系时,存在用于压力预测的现有经验和计算流体动力学(CFD)方法是不准确的或低效。因此,对于更高效可靠的预测,本研究开发了一种基于甲虫天线搜索(BAS)算法的多因素预测模型改进的反向传播(BP)神经网络。从以前的研究中收集了总共317套数据,其中考虑了几何形状,气体,障碍物,通风口和点火因素。结果表明,已建立的模型可以通过低RMSE(43.4542和50.7176)和MAPE(3.9666%和4.9605%)值和高R-2(0.7696和0.7388)的训练和测试数据集来预测压力。同时,应用BAS算法来通过实现更智能的超参数调整方法来提高所提出的模型的计算效率和准确性。此外,研究了输入变量的置换重要性,并且几何形状的长度(L)和长度(L / D)的比例是影响爆炸压力水平的最关键因素。

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