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Application of neural networks and fuzzy systems for the intelligent prediction of CO2-induced strength alteration of coal

机译:神经网络和模糊系统在煤炭致强度变化的智能预测中的应用

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CO2 sequestration and enhanced coal bed methane (ECBM) extraction necessitate CO2 injection into coal reservoirs that affect the coal strength properties and long-term integrity of the seam. Evaluation of CO2-induced coal strength alterations is essential to minimize the reservoir damage. Advanced soft computing models have become prevalent in rock mechanics field, as they are capable of learning trends from complex data sets, preserving the experience and using it for predictions. We present two models viz. artificial neural network (ANN) and adoptive neuro-fuzzy inference system (ANFIS) to predict the strength alterations of coal, under various CO2 saturation conditions. Model performances are compared with linear and non-linear multivariate regression analyses (L-MRA and NL-MRA). We consider three effective input parameters (i.e. coal type, CO2 saturation pressure and CO2 interaction time) and one output parameter (i.e. unconfined compressive strength (UCS)) in the models. ANN consists of a three-layer feed-forward back-propagation network with a 3-5-1 architecture and ANFIS consists of [4 4 4] Gaussian type membership functions. Model results confirm that ANFIS has the highest prediction capacity followed by ANN, with R-2 equal to 0.9954 and 0.9933, respectively. Both L-MRA and NL-MRA prediction performances are not satisfactory, as R-2 values are only 0.7854 and 0.7821 for two models, respectively. Thus, general statistical models like MRA fail to precisely predict the complex strength alterations. From the verified models, we show that well-trained ANN and ANFIS models can successfully fit and forecast the experimental data, and are able to predict the long-term CO2 saturation effect on coal strength. Crown Copyright (C) 2018 Published by Elsevier Ltd. All rights reserved.
机译:CO2封存和增强煤层甲烷(ECBM)提取需要CO2注射到影响煤强度性能和接缝长期完整性的煤储层中。对CO2诱导的煤强化改变的评价对于最大限度地减少储层损伤至关重要。高级软计算模型在岩石力学领域普遍存在,因为它们能够从复杂数据集中学习趋势,保留经验并使用它以进行预测。我们展示了两个型号viz。人工神经网络(ANN)和采用神经模糊推理系统(ANFIS)预测煤的强度改变,在各种CO2饱和条件下。将模型性能与线性和非线性多元回归分析(L-MRA和NL-MRA)进行比较。我们考虑三个有效的输入参数(即煤型,二氧化碳饱和压力和CO2相互作用时间)和一个输出参数(即,在模型中的未束缚的压缩强度(UCS))。 ANN由三层前馈回传播网络组成,具有3-5-1架构,ANFI包括[4 4 4]高斯类型隶属函数。模型结果证实,ANFIS具有最高的预测能力,然后是ANN,R-2分别等于0.9954和0.9933。 L-MRA和NL-MRA预测性能均不令人满意,因为R-2值分别为两种型号仅为0.7854和0.7821。因此,像MRA这样的一般统计模型不能精确地预测复杂的强度改变。从经过验证的模型,我们表明,训练有素的ANN和ANFIS模型可以成功地拟合和预测实验数据,并且能够预测对煤强度的长期CO2饱和效应。 Crown版权所有(C)2018由elestvier有限公司出版。保留所有权利。

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