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A new hybrid method for predicting ripping production in different weathering zones through in situ tests

机译:一种新的混合方法,用于通过原位测试预测不同风化区域的剥落生产

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Due to blasting's limitations, ripping as a breaking technique of rock mass is one of the most popular methods in mining and civil engineering applications. The typical practice is that ripping is used for loosening the soils and weak rocks while blasting is used for breaking stronger rocks. With the regulatory restrictions on blasting, there is a growing interest in ripping rocks that traditionally have been blasted. The ripping is typically cheaper than blasting but predicting whether ripping can be done on a particular rock and the estimation of the excavation cost are challenging and a function of rock properties. This study aims at predicting the ripping production based on an extensive database obtained from three sites in Malaysia. The site observations for production rate and the relations with the sandstone and shale rocks were presented. In situ observations/tests (sonic velocity, joint spacing, Schmitdt hammer, weathering zone) were conducted by the site engineers and the results were used as input data for training and proposing a new model for estimating the ripping production. Many hybrid particle swarm optimization-artificial neural network (PSO-ANN) models were created and the best model was identified based on a ranking system. Then, the best PSO-ANN model with coefficient of determination values of 0.982 and 0.978 and root mean square error values of 0.038 and 0.045 for training and testing datasets, respectively, was selected and introduced to predict ripping production. This study documented that the new PSO-ANN achieved higher performance than the ANN method. (C) 2019 Elsevier Ltd. All rights reserved.
机译:由于爆破的局限性,作为岩石质量的破碎技术撕裂是采矿和土木工程应用中最受欢迎的方法之一。典型的做法是剥落用于松开土壤和弱岩石,而爆破用于破坏较强的岩石。随着对爆破的监管限制,对传统上被爆破的撕裂岩石产生了日益增长的兴趣。撕裂通常比爆破便宜,但预测是否可以在特定岩石上进行撕裂,并且挖掘成本的估计是具有挑战性的,并且岩石属性的功能是具有挑战性的。本研究旨在通过从马来西亚三个站点获得的广泛数据库来预测剥离生产。提出了生产率的现场观察和与砂岩和页岩岩石的关系。现场工程师进行了原位观测/测试(声速,关节间距,施密锤,风化区域),结果用作培训的输入数据,并提出估算剥落生产的新模型。创建了许多混合粒子群优化 - 人工神经网络(PSO-ANN)模型,基于排名系统识别了最佳模型。然后,选择并分别选择具有0.982和0.978系数0.982和0.978的系数的最佳PSO-ANN模型,以及用于训练和测试数据集的0.038和0.045的根均方误差值,并引入预测剥离生产。本研究记录了新的PSO-ANN比ANN方法实现了更高的性能。 (c)2019年elestvier有限公司保留所有权利。

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