Using particle swarm optimization algorithm in an artificial neural network to forecast the strength
- 期刊名字:中国矿业大学学报(英文版)
- 文件大小:
- 论文作者:CHANG Qing-liang,ZHOU Hua-qian
- 作者单位:School of Mines
- 更新时间:2023-02-12
- 下载次数:次
论文简介
In order to forecast the strength of filling material exactly, the main factors affecting the strength of filling material are analyzed. The model of predicting the strength of filling material was established by applying the theory of artificial neural networks. Based on cases related to our test data of filling material, the predicted results of the model and measured values are compared and analyzed. The results show that the model is feasible and scientifically justified to predict the strength of filling material,which provides a new method for forecasting the strength of filling material for paste filling in coal mines.
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