采矿外文翻译---采矿工业中实用的神经网络应用程序
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1、PDF原文:http:/ 中文3570字英文原文 Practical Neural Network Applications in the Mining Industry L. Miller-Tait, R. Pakalnis Department of Mining and Mineral Process Engineering, University of British Columbia, Vancouver, B.C., Canada ABSTRACT The mining industry relies heavily upon empirical analy
2、sis for design and prediction. Neural networks arecomputer programs that use parallel processing, similar to the human brain, to analyze data for trends andcorrelation. Two practical neural network applications in the mining industry would be rockburst predictionand stope dilution estimates. This pa
3、per summarizes neural network data analysis results for a 1995Goldcorp/Canmet study on rockbursting and a 1986 UBC/Canmet study on open stope dilution at theRuttan Mine. 1. INTRODUCTION Many aspects of mine design are based upon empirical data. Neural Networks analyze data and predictions based on p
4、revious results. Neural networks haveadvantages over conventional empirical designapproaches.These advantages include: Neural networks can easily use multiple inputs to analyze data. By using multiple hidden layers and nodes neural networks investigate the combined influence of inputs. Neural networ
5、ks can be easily retrained as new data becomes available making them a more dynamicand flexible empirical estimation approach. Neural network software is inexpensive and easy to use. Neural networks have demonstrated a more accurate empirical estimate over conventional methods. The advantages of usi
6、ng neural networks are illustrated in a rockburst prediction example and an open stope dilution example. 2. ROCKBURST PREDICTION The first example of a potential situation where neural networks could be useful in the mining industry isthe prediction of rockbursts through physical inputs. To quote di
7、rectly from the Ontario Ministry ofLabor“.we do not have the ability to predict when and where rockbursts will occur, and the experts in the fieldagree that we are not close to make such predictions” 1. Between 1984 and 1993 eight undergroundminers were killed in Ontario due to rockbursts. This acco
8、unted for approximately 10% of underground fatalities during this period. If neuralnetworks were to have success in predicting where rockburstsoccur, additional ground support, remote equipment, and/or design modifications could reduce or possibly eliminate fatalities due to rockburst. As saf
9、ety is the primary responsibility of mining engineers, thepotential for neural networks to assist in predicting rockburst inputs should be investigated. In 1995, a joint project was completed by Goldcorp Inc. and Canmet called “Development of EmpiricalDesign Techniques in Burst Prone Ground at A. W.
10、 White Mine” 2. Part of the study was to collect inputinformation on rockburst, caving, ground wedge, and roof fall failures at the A. W. White Mine between1992 and 1995. This resulted in a failure database consisting of 88 ground failures with correspondinginputs for each failure. The six inputs co
11、llected for each failure were RMR 3, Q 4, span 5, SRF2,RMR adjustment, and depth. These input factors were set up and run in a neural network with 73 examplesbeing used for training and 15 examples being used to test the network. The output factor, stability, can beone of four failures2 - PUN-RF (po
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