Estimation of Calorific Value of Lignite Field in Kütahya-Gürağaç (Turkey) by means of Artificial Neural Network

Sedat Toraman, Cem Şensöğüt
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Abstract

Artificial neural networks are generally information processing systems that mimic the working principles of the human brain or central nervous system. Artificial neural networks are a method that gives successful results in solving many daily life problems such as classification, modeling and prediction. Artificial neural networks accomplish this by adjusting the connection weights between neurons. It can solve prediction and classification problems with back propagation algorithm, which is widely used in artificial neural networks with multilayer perceptron. In this study, unknown calorific values were tried to be estimated by using the analysis values (depth, ash, moisture, sulfur, calorific value) of the drillings realized in the Kütahya -Gürağaç lignite field. An artificial neural network was created for this purpose. First, 8 neurons were used in the hidden layer of the network, and 10 neurons were used secondarily. In the artificial neural network, the learning function is sigma, the learning rate is 95%, and the network is trained using Levenberg-Marquardt as the training algorithm. The network with 10 neurons converged at the desired margin of error (1e-07) and was completed after 271 iterations. The relationship between actual calorie values and predicted calorie values with network training reached a high ratio of R2=0.97. After the training of the network is completed, the network is simulated for the estimation of seams with unknown caloric values. As a result, caloric values were determined with an average of 97% confidence interval for the unknown coal seams of the field.
利用人工神经网络估算土耳其Kütahya-Gürağaç褐煤田热值
人工神经网络通常是模仿人类大脑或中枢神经系统工作原理的信息处理系统。人工神经网络是一种能够成功解决许多日常生活问题的方法,如分类、建模和预测。人工神经网络通过调整神经元之间的连接权值来实现这一点。它可以用反向传播算法解决预测和分类问题,这种算法广泛应用于多层感知器人工神经网络。本研究尝试利用k塔哈亚-Gürağaç褐煤田实现钻井的分析值(深度、灰分、水分、硫、热值)估算未知热值。为此,我们创建了一个人工神经网络。首先在网络的隐藏层使用8个神经元,其次使用10个神经元。在人工神经网络中,学习函数为sigma,学习率为95%,使用Levenberg-Marquardt作为训练算法对网络进行训练。由10个神经元组成的网络在期望的误差范围(1e-07)收敛,经过271次迭代完成。通过网络训练,实际热量值与预测热量值之间的关系达到了R2=0.97的高比值。网络训练完成后,对网络进行模拟,用于估算热值未知的接缝。因此,确定了该领域未知煤层的热值,平均置信区间为97%。
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