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ANN and ANFIS performance prediction models for hydraulic impact hammers

机译:液压冲击锤的ANN和ANFIS性能预测模型

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摘要

Hydraulic impact hammers are mechanical excavators that can be used in tunneling projects economically under geologic conditions suitable for rock breakage by indentation. However, there is relatively less published material in the literature in relation to predicting the performance of that equipment employing rock properties and machine parameters. In tunnel excavation projects, there is often a need for accurate prediction the performance of such machinery. The poor prediction of machine performance can lead to very costly contractual claims, in this study, the application of soft computing methods for data analysis called artificial neural network (ANN) and adaptive neuro-fuzzy inference system (ANFIS) to predict the net breaking rate of an impact hammer is demonstrated. The prediction capabilities offered by ANN and ANFIS were shown by using field data of obtained from metro tunnel project in Istanbul, Turkey. For this purpose, two prediction models based on ANN and ANFIS were developed and the results obtained from those models were then compared to those of multiple regression-based predictions. Various statistical performance indexes were used to compare the performance of those prediction models. The results suggest that the proposed ANFlS-based prediction model outperforms both ANN model and the classical multiple regression-based prediction model, and thus can be used to produce a more accurate and reliable estimate of impact hammer performance from Schmidt hammer rebound hardness (SHRH) and rock quality designation (RQD) values obtained from the field tests.
机译:液压冲击锤是一种机械挖掘机,可在适合因压痕导致岩石破损的地质条件下经济地用于隧道工程。然而,与利用岩石特性和机器参数来预测该设备的性能有关的文献中,相对较少的材料。在隧道开挖项目中,经常需要准确预测此类机械的性能。对机器性能的不良预测可能导致非常昂贵的合同索赔,在这项研究中,将软计算方法用于数据分析的应用称为人工神经网络(ANN)和自适应神经模糊推理系统(ANFIS)来预测净破损率演示了冲击锤的示意图。 ANN和ANFIS提供的预测功能通过使用从土耳其伊斯坦布尔地铁隧道项目获得的现场数据进行了展示。为此,开发了两个基于ANN和ANFIS的预测模型,然后将从这些模型获得的结果与基于多元回归的预测进行比较。使用各种统计性能指标来比较那些预测模型的性能。结果表明,基于ANFlS的预测模型优于基于ANN的模型和基于经典多元回归的预测模型,因此可用于根据施密特锤回弹硬度(SHRH)来更准确,更可靠地评估冲击锤性能。以及从现场测试中获得的岩石质量标识(RQD)值。

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