Mbah Tawum Juvert, Ye Haiwang, Zhang Jianhua, Long Mei
Department of Resources and Environmental Engineering, Wuhan University of Technology, Wuhan, China.
Min Metall Explor. 2021;38(2):913-926. doi: 10.1007/s42461-020-00362-y. Epub 2021 Jan 6.
There have been many improvements and advancements in the application of neural networks in the mining industry. In this study, two advanced deep learning neural networks called recurrent neural network (RNN) and autoregressive integrated moving average (ARIMA) were implemented in the simulation and prediction of limestone price variation. The RNN uses long short-term memory layers (LSTM), dropout regularization, activation functions, mean square error (MSE), and the Adam optimizer to simulate the predictions. The LSTM stores previous data over time and uses it in simulating future prices based on defined parameters and algorithms. The ARIMA model is a statistical method that captures different time series based on the level, trend, and seasonality of the data. The auto ARIMA function searches for the best parameters that fit the model. Different layers and parameters are added to the model to simulate the price prediction. The performance of both network models is remarkable in terms of trend variability and factors affecting limestone price. The ARIMA model has an accuracy of 95.7% while RNN has an accuracy of 91.8%. This shows that the ARIMA model outperforms the RNN model. In addition, the time required to train the ARIMA is than that of the RNN. Predicting limestone prices may help both investors and industries in making economical and technical decisions, for example, when to invest, buy, sell, increase, and decrease production.
神经网络在采矿业中的应用已经有了许多改进和进展。在本研究中,两种先进的深度学习神经网络,即递归神经网络(RNN)和自回归积分移动平均模型(ARIMA),被用于石灰石价格变化的模拟和预测。RNN使用长短期记忆层(LSTM)、随机失活正则化、激活函数、均方误差(MSE)和Adam优化器来模拟预测。LSTM会随着时间存储先前的数据,并根据定义的参数和算法将其用于模拟未来价格。ARIMA模型是一种统计方法,它基于数据的水平、趋势和季节性来捕捉不同的时间序列。自动ARIMA函数会搜索适合该模型的最佳参数。向模型中添加不同的层和参数以模拟价格预测。就趋势变化性和影响石灰石价格的因素而言,这两种网络模型的性能都很显著。ARIMA模型的准确率为95.7%,而RNN的准确率为91.8%。这表明ARIMA模型优于RNN模型。此外,训练ARIMA所需的时间比RNN少。预测石灰石价格可能有助于投资者和行业做出经济和技术决策,例如何时投资、买入、卖出、增加和减少产量。