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Application of Neuro-Fuzzy Technique in Mine Support System for Ground Control

机译:模糊神经网络技术在矿山地面控制保障系统中的应用

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In underground activities ground control is a challenging problem. It affects safety, production, and efficiency. As per statistics of accident data, "fall of roof/sides" is one of the major causes of mine accidents. In many cases, our experiences and understanding of soil and rock behavior still fall short of being able to predict how the ground will behave. Presently, empirical approaches to design are widely used in estimating mine support parameters. Under these circumstances, expert judgment plays an important role, and such accidents can be obviated with accurate measurement and optimization of data and analysis using the neuro-fuzzy technique of artificial intelligence. Recently, a neuro-fuzzy hybrid approach has become one of the major areas of interest in engineering fields because it gets the benefits of neural networks as well as those of fuzzy logic systems, and it removes the individual disadvantages by combining them on the common features. Neural network and fuzzy logic technologies have common features, such as a distributed representation of knowledge, the ability to handle data with uncertainty and imprecision, etc., like in ground control. Fuzzy logic technique has tolerance for imprecision of data, while neural networks have tolerance for noisy data. In this paper we have focused an intelligent technique, i.e., neuro-fuzzy technique, to approximate the setting load given to the standing support (props) erected for the purpose of supporting freshly exposed roof during underground mining. We have used twelve input variables of rock parameters, and after having trained using a neural network with a sigmoidal function as an activation function, simulation was done to find the output parameter, i.e., the pre-load (setting load)to be applied on props. Outputs of the neural network were again fed to the fuzzy system together with the twelve parameters, incorporating five triangular membership functions for each parameter. Final optimum output was approximated using the MATLAB program, which was found to be satisfactory. Neuro-fuzzy technique has better performance over individual neural networks or fuzzy logic technique.
机译:在地下活动中,地面控制是一个具有挑战性的问题。它影响安全性,生产和效率。根据事故数据的统计,“顶板/侧面跌落”是矿井事故的主要原因之一。在许多情况下,我们对土壤和岩石行为的经验和理解仍不足以预测地面的行为。目前,经验设计方法被广泛用于估算防雷参数。在这种情况下,专家的判断起着重要的作用,可以通过使用人工智能的神经模糊技术对数据进行准确的测量,优化和分析来避免此类事故的发生。近年来,神经模糊混合方法已成为工程领域的主要关注领域之一,因为它获得了神经网络以及模糊逻辑系统的好处,并且通过将它们结合到共同的特征上而消除了各自的缺点。 。神经网络和模糊逻辑技术具有共同的特征,例如知识的分布式表示,具有不确定性和不精确性的数据处理能力等,例如在地面控制中。模糊逻辑技术可以容忍数据不精确,而神经网络则可以容忍嘈杂的数据。在本文中,我们集中研究了一种智能技术(即神经模糊技术),以近似估算竖立支撑(道具)所承受的设定载荷,以支撑地下采矿过程中新暴露的屋顶。我们已经使用了十二个岩石参数的输入变量,并且在使用以S型函数作为激活函数的神经网络进行训练之后,进行了仿真以找到输出参数,即要施加到目标参数上的预载荷(设定载荷)道具。将神经网络的输出与十二个参数一起输入到模糊系统,其中每个参数包含五个三角隶属函数。使用MATLAB程序估算出最终的最佳输出,结果令人满意。神经模糊技术比单个神经网络或模糊逻辑技术具有更好的性能。

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