ImageVerifierCode 换一换
格式:DOC , 页数:11 ,大小:118KB ,
资源ID:20600      下载积分:10 金币
验证码下载
登录下载
邮箱地址:
验证码: 获取验证码
温馨提示:
支付成功后,系统会自动生成账号(用户名为邮箱地址,密码是验证码),方便下次登录下载和查询订单;
特别说明:
请自助下载,系统不会自动发送文件的哦; 如果您已付费,想二次下载,请登录后访问:我的下载记录
支付方式: 支付宝   
验证码:   换一换

 

温馨提示:由于个人手机设置不同,如果发现不能下载,请复制以下地址【https://www.thwenku.com/down/20600.html】到电脑端继续下载(重复下载不扣费)。

已注册用户请登录:
账号:
密码:
验证码:   换一换
  忘记密码?
三方登录: 微信登录   QQ登录  
下载须知

1: 本站所有资源如无特殊说明,都需要本地电脑安装OFFICE2007和PDF阅读器。
2: 试题试卷类文档,如果标题没有明确说明有答案则都视为没有答案,请知晓。
3: 文件的所有权益归上传用户所有。
4. 未经权益所有人同意不得将文件中的内容挪作商业或盈利用途。
5. 本站仅提供交流平台,并不能对任何下载内容负责。
6. 下载文件中如有侵权或不适当内容,请与我们联系,我们立即纠正。
7. 本站不保证下载资源的准确性、安全性和完整性, 同时也不承担用户因使用这些下载资源对自己和他人造成任何形式的伤害或损失。

版权提示 | 免责声明

本文(外文翻译-采矿工业中实用的神经网络应用程序.doc)为本站会员主动上传,图海文库仅提供信息存储空间,仅对用户上传内容的表现方式做保护处理,对上载内容本身不做任何修改或编辑。 若此文所含内容侵犯了您的版权或隐私,请立即通知图海文库(发送邮件至admin@thwenku.com或直接QQ联系客服),我们立即给予删除!

外文翻译-采矿工业中实用的神经网络应用程序.doc

1、翻译部分英文原文Practical Neural Network Applications in the Mining IndustryL. Miller-Tait, R. PakalnisDepartment of Mining and Mineral Process Engineering,University of British Columbia,Vancouver, B.C., CanadaABSTRACTThe mining industry relies heavily upon empirical analysis for design and prediction. Neur

2、al networks are computer programs that use parallel processing, similar to the human brain, to analyze data for trends and correlation. Two practical neural network applications in the mining industry would be rockburst prediction and stope dilution estimates. This paper summarizes neural network da

3、ta analysis results for a 1995 Goldcorp/Canmet study on rockbursting and a 1986 UBC/Canmet study on open stope dilution at the Ruttan Mine.1 INTRODUCTIONMany aspects of mine design are based upon empirical data. Neural Networks analyze data and predictions based on previous results. Neural networks

4、have advantages over conventional empirical design approaches. 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 networks can be easily retrained as

5、new data becomes available making them a more dynamic and 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 using neural networks are illustr

6、ated in a rockburst prediction example and an open stope dilution example.2 ROCKBURST PREDICTIONThe first example of a potential situation where neural networks could be useful in the mining industry is the prediction of rockbursts through physical inputs. To quote directly from the Ontario Ministry

7、 of Labor “.we do not have the ability to predict when and where rockbursts will occur, and the experts in the field agree that we are not close to make such predictions” 1. Between 1984 and 1993 eight underground miners were killed in Ontario due to rockbursts. This accounted for approximately 10%

8、of underground fatalities during this period. If neural networks were to have success in predicting where rockbursts occur, additional ground support, remote equipment, and/or design modifications could reduce or possibly eliminate fatalities due to rockburst. As safety is the primary responsibility

9、 of mining engineers, the potential 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 Empirical Design Techniques in Burst Prone Ground at A. W. White Mine” 2. Part of the stu

10、dy was to collect input information on rockburst, caving, ground wedge, and roof fall failures at the A. W. White Mine between 1992 and 1995. This resulted in a failure database consisting of 88 ground failures with corresponding inputs for each failure. The six inputs collected for each failure wer

11、e 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 examples being used for training and 15 examples being used to test the network. The output factor, stability, can be one of four failures 2 - PUN-RF (potentially unstable roof f

12、all), PUN-GW (potentially unstable ground wedge), BUR (rock burst), and CAV (cave). A brief description of the input and output factors are listed below.2.1 Input factorsRMR - The RMR system, initially developed by Bieniawski in 19733, bases rock mass quality on five parameters. These parameters are

13、: Uniaxial compressive strength of the rock Rock quality designation (RQD) Spacing of discontinuities Condition of discontinuity Ground water conditions.These factors are given a numerical value and totalled together to get an RMR value. This value will be a number between 0 and 100 with zero being

14、very poor rock and 100 being extremely good rock. The ground water conditions were assumed to be dry conditions.Q -The Q factor refers to the rock quality tunnelling index 4. Developed in 1974, by Barton, Lien and Lunde, from the Norwegian Geotechnical Institute, the Q factor is based on six factors

15、, which are: RQD - rock quality designation Jn -joint set number Jr -joint roughness number Ja -joint alteration number Jw - joint water reduction factor SRF - stress reduction factor.The actual Q formula is Q= RQD/Jn Jr/Ja Jw/SRF.The Jw/SRF factor was assumed to be 1.0 for this study because dry co

16、nditions are assumed. Stress is factored through modelling and strain measurements. The Q factor ranges on a logarithmic scale ranging from 0.001 to 1,000 where 0.001 is extremely poor rock and 1,000 is virtually perfect rock.Span 5 - the meaning of span refers to the width of an underground opening in plan view. Span can be determined through the largest diameter of a cir

网站客服QQ:2356858848

  客服联系电话:18503783681

copyright@ 2008-2022 thwenku网站版权所有

ICP备案:豫ICP备2022023751号-1


>


客服