地下隧洞测控技术与地表沉降动态监控模型的研究
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摘要
本文以地下隧洞为对象,系统地研究了地下隧洞地面和地下现代测控理论、技术以及各项测控环节的精度分析,盾构掘进导向系统以及施工引起的地表变形动态预测模型和方法。具体研究内容如下:
     (1)研究了遂洞GPS测控网的布设、数据处理理论;探讨和研究了构筑物反射等产生的多路径效应的影响及应用小波分析理论有效减弱GPS接收信号的多路径噪声的方法;讨论了地下隧洞贯通的误差来源及贯通误差的优化配赋方法。
     (2)对竖井联系及地下测控技术和可靠性进行了研究。详细分析了联系测量各因素对方位传递的影响,探讨并比较了加测陀螺方位角后地下导线的精度提高问题,论证了加测陀螺方位角后直伸等边导线终点精度的严密计算公式及陀螺方位边布测的最佳位置。
     (3)精密导向系统的研究。盾构导向系统是盾构掘进时的指挥系统,对指导盾构掘进、隧洞贯通、减少地表沉降以及保证隧洞的质量等具有重要的作用。本文在研究盾构导向工作原理的基础上开发研制了一套盾构导向系统,精度高、工作可靠,可极大地缩短导向测量的时间和减轻劳动强度,实现了盾构掘进的实时定位和姿态监测。从理论上分析了各项因素对盾构位置和姿态的误差影响,导出了理论公式,总结了提高精度的相应措施。应用表明其精度较高,而且操作简单,在实际定位和导向中具有很好的应用价值。
     (4)研究了隧洞施工中地表沉降动态预测模型,提出了时变参数灰色—时序动态预测模型,并建立了一种改进的时变灰色模型。为了充分利用有限的地表变形数据所蕴涵的内在规律性,提出了利用变形数据的正逆时间序列建立AR模型的方法,并与时变灰色模型组合,不但可反应出变形数据序列的趋势性,同时还可表现出其随机性,从而可进一步提高预测的精度和效果。模型应用于遂洞地表变形预测,验证了模型的有效性和准确性。
     (5)探讨和研究了神经网络模型在盾构掘进时引起的地表沉降预测方法及安全性评价。针对BP算法存在的问题,将遗传算法应用于神经网络,并将改进的神经网络模型及模糊神经网络用于盾构推进时地表变形量和变形因素之间的非线性映射关系的建立,进而应用于地表沉降的变形预测和预报。实例表明此模型和方法的有效性和准确性。
In this dissertation, the modem monitoring technology based on the advanced theories on underground tunnel is provided; the precision control methods and measures are systematically discussed; the direction guidance system of shield tunneling and the dynamic forecasting models of ground settlement are introduced. The main contents are as follows:
    (1) The measurement data processing theory and the design scheme of GPS tunnel control network are introduced; A wavelet analysis technique that can efficiently reduces the multi-path effects caused by tall buildings is presented; Finally, the factor sources of transfixions errors of underground tunnel and limit error distribution method which depends on unequal influence principle are proposed.
    (2) The technology, accuracy, reliability of underground monitoring and control surveying are discussed. The influence factors and optimal scheme of connected-triangle surveying with shaft is analyzed in detail. The formula for calculating the lateral transfixion errors of underground traverse with added gyro orientation line is derived strictly, the calculation results show that the accuracy can be increased obviously by the way of orienting added gyro lines. The optimal position of added a gyro orientation line and increment rate of accuracy is provided.
    (3) The precise direction guidance system of shield tunneling is studied. The direction guidance system plays an important part in the shield excavation, such as the prevention of snake motion, the reduction of ground settlement of tunnel construction and the insurance of tunnel quality etc. Based on the principle of guidance system, a precise direction guidance system with high accuracy, high efficiency and more reliability is developed, it has the advantages of less times of surveying, real time positioning and shield behaviors monitoring. The accuracy estimation methods of the guidance system are discussed in detail. The practical application in underground tunnel shows the system availability and great practical value.
    (4) The dynamic data forecasting model of ground settlement is studied, a new prediction model of grey-time serial with time-varying parameters characters is proposed. Based on the analysis of the shortcoming of the classic grey model, an improved grey model with time varying parameters is presented. An improved AR model is studied, which established by the combination normal order time serial and contrary order data in case the observations are less, and then, the combination model with improved grey and time serial is introduced. It can reflect not only the deformation tendency, but also the stochastic characters. It is very suitable to be applied to deformation analysis and prediction. Finally, the effectiveness and accuracy of ground settlement predicting in a practical underground construction with the combination model are validated.
    
    
    
    (5) The NN(Neural Network) prediction model of ground settlement in the shield tunneling is proposed. Firstly, the shortcomings of the back propagation algorithm, such as slow learning speed and local minimum points, are discussed. Then an improved hybrid model with fast convergence rate, good performance based on combination of the genetic algorithm and the BP algorithm is presented by improving real coding, genetic operators etc. Finally, the prediction models of NN and FNN(Fuzzy Neural Network) are tested in shield tunneling, and the experimental results show the model has the higher forecasting accuracy. Then the conclusion is drawn that this method is an effective way of solving prediction problem of tunnel construction.
引文
[1]董安建,刘世煌.我国的水工隧洞建设.水利水电技术,1999,30(12):56~58
    [2]郑治.水工地下工程回顾与展望.贵州水利发电,2001,15(3):29~31
    [3]王建宇.隧道工程和地下空间开发在可持续发展中的地位.世界隧道,1996,3:1~3
    [4]田鸿滨,孙兆荃.世界城市地铁发展综述.土木工程学报,1995,23(1):73~78
    [5]黄宏伟.城市隧道与地下工程的发展与展望.地下空间,2001,21(4):311~317
    [6]中国地铁建设的概况及发展思路.世界隧道,1996,1:1~6
    [7]程骁,潘国庆.盾构施工技术.上海:科学技术出版社,1990
    [8]刘建航,候学渊.盾构法隧道.北京:中国铁道出版社,1991
    [9]尹旅超,朱振宏编译.日本隧道盾构新技术.武汉:华中理工大学出版社,1999
    [10]土木学会(日)编朱伟译.隧道标准规范(盾构篇)及解说.北京:中国建筑出版社,2001
    [11]李青岳,陈永奇.工程测量学.北京:测绘出版社,1982
    [12]章书寿,华锡生.工程测量学.北京:水利水电出版社,1996
    [13]陈永奇.高等应用测量.武汉:武汉测绘科技大学出版社,1996
    [14]于来法.论地下铁道的变形监测.测绘通报,2000,5:13~15
    [15]华锡生,黄腾编著.精密工程测量技术及应用.南京:河海大学出版社,2002
    [16]张正禄.工程测量学.北京:测绘出版社,2002(1),2000(2)
    [17]张项铎.GPS用于布测长大隧道控制网的研究.工程勘察,1995,3:49~52
    [18]陈文平.大型贯通工程中地面控制的最佳方案.矿山测量,1993,2
    [19]秦长利.北京地下铁道复八线工程测量主要技术方法.测绘通报,2000,5:16~17
    [20]陈光金.隧道GPS测量与控制网图形.工程勘察,1994,6:47~50
    [21]冯仲科.地下贯通工程测量方案的优化理论和方法.测绘学报,1996,25(4):304~308
    [22]张正禄.工程测量学发展评述.测绘通报,2000,1:11~14
    [23]刘大杰、施一民.全球定位系统(GPS)的原理与数据处理.上海:同济大学出版社,1996
    [24]于来法.地下铁道地面控制网布设方案和测量精度设计.测绘通报,1996,6:11~13
    [25]胡伍生.GPS精密高程测量理论与方法及其应用研究[D].南京,河海大学,2001
    [26]Liu Jingnan.et al.The generalized stochaction estimation and its least square algorithm for troposphere delay in GPS positioning. The paper submitted to 1995 IUGG Meeting
    [27]Ou Jikun. Research on atmosphere and its effects on GPS surveying. Laboratory of Dynamic Geodesy, IGG. Chinese Academy, 1994
    [28]Hopfield H S. Tropospheric correction of electromagnetic range signals to a satellite.IGA,Wagenigen,the Netherlands, 1997
    
    
    [29]Athony Teolis Computational Signal Processing with Walvelets,Birkhauser Boston, 1998,92
    [30]Van Nee R D J.Multi-Path Multi-transmitter Interference in Spread -spectrum Communication and Navigation Systems,Delft University Press,Delft,The Netherlands,1995,208
    [31]Loves J W, Teskey W ELachapelle G,Cannon M E.Dynamical Deformation Monitoring of a Tall Structure Using GPS Technology, Journal of Surveying Engineering,1995,ASCE,121,1:35~40
    [32]Pumiaki Kimata,et al.GPS measurement in Tokai region,the south part of central Japan(1989-1991).Proceedings of sixth International Geodetic Symposium on satellite Positioning, 1992.927~934
    [33]Hatch,R. In: Alfred Leick, Isabelle Cohen eds, GPS Solution,New York,WILEY, 2000:1~9
    [34]Willis P.,Beutler G., Gurtner W., et al. Advances in Space Research, 1998:659~663
    [35]Weber R., Slater James A.GPS Solutions, 2001(4):61~67
    [36]Teunissen, P.J.G. The Ionosphere-weighted GPS Baseline Precision in Canonical Form,Journal of Geodesy(1998)72:107-117
    [37]Yue Jiangping,Zhu Huaji,Huang Wanli.The Research of Integrated Dam Safety Monitoring Reasoning System,LAG 国际学术论文, 2001, 武汉
    [38]Yue Jian-ping, Shi Xing-xi.The Research of Improved Model of GPS Levehng 2002 国际GPS会议论文集
    [39]徐佩霞.小波分析及应用实例.合肥:中国科学技术大学出版社,1996
    [40]黄丁发,丁晓利,陈永奇.GPS多路径效应影响与结构振动的小波滤波筛分研究.测绘学报,2001,30(1):36~41
    [41]王金岭,陈永奇.论观测值的可靠性度量.测绘学报,1994,23(4):252~225
    [42]岳建平,朱华吉.安全监测数据粗差检验方法评述.测绘通报,2001,2:3~5
    [43]陶本藻.测量数据统计分析.北京:测绘出版社,1992
    [44]岳建平.大坝安全监控系统可靠性研究[D].南京:河海大学,2002
    [45]A.塔穆季斯[俄].测量控制网的最优设计方法.北京:测绘出版社,1982年
    [46]黄宏伟,张冬梅.盾构隧道施工引起的地表沉降及现场监控[J].岩石力学与工程学报,2001,20(增):1814~1820
    [47]张云.土质隧道土压力和地层位移的离心模型试验及数值模拟研究(D).南京:河海大学,2000
    [48]钱家欢.土力学[M].南京:河海大学出版社,1988
    [49]Komo M R. Elements induced by soft ground tunneling[A]. Inter Conf on Case Histories in Geotech Engrg:Vol 1[C] Toronto:Balkema, 1984
    [50]林永国,廖少明,刘国彬.地铁隧道纵向变形影响因素的探讨.地下空间,2000,20(4):264~267
    
    
    [51]徐永福,孙钧.盾构隧道掘进施工对周围土体的影响[J].地下工程与隧道,1999,2:9~14
    [52]Dan Eisenstein. Urban soft ground tunnelling.Tunnelling and Underground Construction Society, Singapore,2000
    [53]汪挺.砂粘土层盾构施工几项技术的探讨.北京建筑工程学院学报,2001.17(10):52~56
    [54]徐永福,孙钧,傅得明等.外滩观光隧道盾构施工的扰动分析.土木工程学报,2002.35(2):70~73
    [55]金丰年,钱七虎.隧道开挖的三维有限元计算.岩石力学与工程学报,1996,15(3):193~200
    [56]易宏伟,孙钧.盾构施工对软土的扰动机理分析.同济大学学报,200,28(3):278~281
    [57]张庆贺,朱忠隆,杨俊龙等.盾构推进引起土体扰动理论分析及试验研究.岩石力学与工程学报,1999,18(6):699~703
    [58]刘洪洲,孙钧.软土隧道盾构推进中地面沉降影响因素的数值法研究.现代隧道技术,2001.38(6):24~28
    [59]丁春林,肖广智,朱世友等.盾构施工引起的隧道围岩和地面路基变形的预测分析.地下空间,2002,22(1):16~20
    [60]祝国荣,蔺安林译.从基础工程角度看盾构掘进法.隧道译丛,1985,5:49~63
    [61]Peck R B.Tunnelling in soils[A].10th ICSMFE[C] Stockholm,1981.607~628
    [62]Attewell P B.Engineering contract,site investigation and surface movements in tunneling works.In:Balkema A A ed.Soft-ground tunneling-failures and displacement,Rotter Dam, 1981,5~12
    [63]Fino R J,Clough G W.Evaluation of soil response to EPB shield tunnelling.Journal of Geotechnical Engineering, 1985,115(2): 155~173
    [64]Ito T, Hisatake M.three dimensional surface subsidence caused by tunnel driving[A].in:Elsenstein Z ed.Processings of the Fourth International Conference on Numerical Methods in Geomethanicals[C].Rotterdam:A.A.Balkema,1982, 2:551~559
    [65]Lee K M,Rowe R K.Analysis of three-dimensional ground movements:the Tunder Bay Tunnel.Canadian Geotechnical Journal, 1991,28(1):25~41
    [66]李强,曾得顺.盾构千斤顶推力变化对地面变形的影响[J].地下空间,2002,22(1):12~15
    [67]施建勇,张静,佘才高等.隧道施工引起土体变形的半解析分析.河海大学学报,2002,30(6):48~51
    [68]孙钧,刘洪洲.交叠隧道盾构法施工土体变形的三维数值模拟.同济大学学报,2002,
    
    30(4):279~385
    [69]张冬梅,黄宏伟,王箭明.盾构推进引起地面沉降的粘弹性分析[J].岩石力学,2001,22(3):311~314
    [70]田文,夏正中.浅埋隧道稳定性的粘弹塑性有限元分析[J].地下空间,1992,12(2):97~104
    [71]刘宝琛,张家生.近地表开挖引起的地表沉降的随机介质方法[J].岩石力学与工程学报,1995,14(4):289~296
    [72]李德仁.误差处理和可靠性理论.北京:测绘出版社,1988
    [73]陶本藻.自由网平差与变形分析.北京:测绘出版社,1984
    [74]崔希璋,於宗俦,陶本藻.广义测量平差.北京:测绘出版社,1992
    [75]李明峰.动态平差概括模型及形变与粗差的定位定值方法[D].武汉:武汉测绘科技大学,1996
    [76]Aduol F W O.Robust geodetic parameter estimation through iterative weighting.Survey Review, 1994,32(253)
    [77]Sun W P.A new method for localization of gross errors.Survey Review,1994,32(252)
    [78]Li D R,Zhou Y. Optimization and design of geodetic networks in consideration of accuracy and reliability. AVN,International Edition,1991
    [79]张正禄,张松林,黄全义.大坝安全监测、分析与预报的发展综述[J].大坝与安全,2002,5:13~16
    [80]陈永奇,吴子安,吴中如.变形观测分析与预报.北京:测绘出版社,1998
    [81]赵望生,龚文慈.变形监测的现状方法综述与展望.大坝观测与土木测试,1996,20(3):15~18
    [82]张启锐.实用回归分析:北京:地质出版社[M],1988
    [83]安鸿志,陈兆国,杜金观等.时间序列的分析与应用.北京:科学出版社,1983
    [84]甘仞初:动态数据的统计分析.北京:北京理工大学出版社,1991
    [85]杨叔子、吴雅等:时间序列的工程应用.武汉:华中理工大学出版社,1991
    [86]施仁杰,卢科学.时间序列分析引论.西安:西安电子科技大学出版社,1988
    [87]邓自立.最优滤波理论及其应用—现代时间序列分析方法.哈尔滨:哈尔滨工业大学出版社,2000
    [88]布洛克威尔著,田铮译.时间序列的理论与方法.北京:高等教育出版社,2001
    [89]项静栝,杜金观,史久恩.动态数据处理.北京:气象出版社,1986
    [90]Box,G.E.P.,and Jenkins,G.M.,Time Series Analysis:Forecasting and Control,Holden-Day, San Francisco, 1970
    [91]Levinson N.The wiener RMS Error Criterion in Filter Design and Prediction.J.Math.Phys., 1947,25
    
    
    [92]Burg J P.Maximum Eutroy Spectral Analysis.Proc.37th Meeting Society of Exploration Geophysists, 1967
    [93]Marples S L.A New Autoregressive Spectrum Analysis Algorithm.IEEE Trans ASSP,1980,28
    [94]Byoung-Seon Choi.An Algorithm for Solving the Extended Yule-Walker Equations of Autoregressive Moving-Average Time'Series,IEEE Trans.IT, Vol.32,No.3,pp.417~419
    [95]S.M.Pandit, S.M.Wu.Time Series and System Analysis with Applications,New York:Joha Wiley,1983
    [96]S.Li,B.W.Dickinson. An Efficient Method to Compute Consistent Estimates of the AR Parameters of an ARMA Model,IEEE Trans.AC-31 No.3 pp.275-278 1986
    [97]Prestley, M.B.,Spectral Analysis and Time Series,Vol. 1,2,Academic Press, 1981
    [98]R.S. Tsay and G.C Tiao. "Consistent estimates of autoregressive parameters and extended sample autocorrelation function for stationary and nonstationary ARMA models".J. ASAM. Vol.79 NO.385,1984
    [99]Floris Takens. Detecting Nonlinearities in Stationary Time Series.International Journal of Bifurcation and Chaos, 1993,3 (2): 241-256.
    [100]潘国荣,王穗辉.建筑物动态变形的模型变形及预测.测绘学报,1999,28(4):340~348
    [101]刘金元,杨春林,吴正文.时间序列方法在观测资料分析中的应用.河海大学学报,1999,27(2):116~118
    [102]Xiao Chuang bai. A New Method for determination of the AR order of an ARMA Process. Methodologies & Application, 1994:32-35.
    [103]陈得豪,丁窘辋.时序分析在危岩体监测数据处理中的应用.武汉测绘科技大学学报,1994,19(3):210~215
    [104]邓聚龙.灰色预测与决策.武汉:华中理工大学出版社,1986
    [105]邓聚龙.灰色系统理论教程.武汉:华中理工大学出版社,1990
    [106]朱瑞赓等.地下峒室围岩变形监测及灰色预测预报.国际滑坡与岩土工程学术会议论文集.武汉:华中理工大学出版社,1991
    [107]廖野澜,谢谟文.监测位移的灰色预报.岩石力学于工程学报,1996,15(3):269~274
    [108]岳东杰,雷伟刚,华锡生.灰关联模型GM(1,N)及其在安全监测中的应用.河海大学学报,2000.3:34~38
    [109]张玉祥.岩土工程时间序列预报问题初探.岩石力学与工程学报,1998,17(5):552~558
    [110]尹晖,丁窘辋,张琰等.灰色动态预测方法及其在变形预测中的应用.武汉测绘科技大学学报,1996,21(1):31~35
    [111]朱华吉,马少娟.非等时空距GM(1,1)模型在建筑物沉降中的应用.测绘工程,2001,
    
    10(4):39~41
    [112]马能武.大坝监测资料动平均灰色模型分析方法的研究.河海大学学报,1997,25(1):116~118
    [113]齐长鑫,汪树玉.灰色系统模型在坝基位移预测中的应用.水利学报,1996,9:49~52
    [114]李雪红,顾冲时,徐洪钟.混凝土坝变形的灰色回归—时序模型.河海大学学报,2002,30(6):116~119
    [115]郭庆海,吴中如,杨杰.堆石坝变形监测德灰色非线性时序组合模型.河海大学学报,2001,29(6):51~55
    [116]耿继进.时变参数灰色模型.武测科技,1994,2:29~32
    [117]邓跃进,张正禄等.自适应卡尔曼滤波在变形监测动态数据处理中的应用.武测科技,1996,1:1~4
    [118]秦四清等.滑坡时间预报的灾害理论及灰色突变理论方法.大自然探索,1993.4
    [119]高鹏,艾南山.土质滑坡体破坏的突变模型.工程地质学报,1994,4:67~76
    [120]周萃英等:滑坡灾害系统非线性动力学研究.长春地质学院学报,1995(3):310~316
    [121]易顺民.晏同珍.滑坡定量预测的非线性理论方法地学前缘.1996,3(1):77~85
    [122]袁曾任.人工神经元网络及其应用[M].北京:清华大学出版社,1999
    [123]宣士斌.动态数学神经网络模型及其应用.广西民族学院学报,1999,5(1):5~8
    [124]Zurada Jacek M. Introduction to Artificial Neural Systems. West Pub. Company, 1992, New York
    [125]刘春.用模糊神经网络对建筑物变形进行短期预测[J].工程勘察,1998,6:42~45
    [126]朱合华,杨林德,乔正本.深基坑工程动态施工反演分析与变形预报[J].岩土工程学报,1998(4):30~35
    [127]黄修云,曹国安,张青.人工神经网络在地下工程预测中的应用[J].北方交通大学学报,1998,22(1):39-43
    [128]张德宝.建筑物沉降的灰色预测预报.工程勘察,2000,3:56~59
    [129]王穗辉,潘国荣.人工神经网络在隧道地表变形预测中的应用[J].同济大学学报,2001,29(10):1147~1152
    [130]胡伍生.用神经网络方法探测数学模型误差.大坝观测与土工测试,2001.25(4):13~16
    [131]Tian T, Zhu M Z,Zhang B M.An artificial neural network-based on expert system for network topological error identification.In:1995 IEEE International Conference on Neural Networks Proceedings.New York IEEE,1995,882~888
    [132]Hecht-Nielsen R.Application to computing with neural nets.IEEE ASSP Magazine,April 1987,4~22
    [133]Gallant Stephen I.Neural network learning and expert systems.I
    
    Cambridge,Massachusetts,London England The MIT Press, 1993.195~198
    [134]Narendra Kumpati S,Parthasarathy K.Identification and control of dynamical systems using neural networks.IEEE Transactions on Neural networks,March 1990,1(1):4~27
    [135]Psaltis D,Sideris A,Yamamura AA.A multi-layered neural networks controller.IEEE Control System Magazine, 1988(8): 17~21
    [136]Schiffmann W, Joost M, Werner R.Optimization of the back propagation algorithm for training multilayer perceptions technical report.University of Koblenz,Institute of Physics,1993
    [137]Anderson Charles W.Leaming to control an inverted pendulum using neural networks.IEEE Control Magazine,Aprial 1989,31~37
    [138]Silva F M, Almeida L B.Speeding up back propagation.Advanced Neural Networks,1988(1):131~139
    [139]Leonard J,Kramer M A.Improvement of the Back propagation algorithm for training neural networks. Computers Chen.Engng. 1990,14(3):337~341
    [140]Fahlman,S,E.and Lebiere,C..The cascade-correlation leaning architecture.Advances in Neural Information Processing System 2,1990,524~532
    [141]王小平,曹立明.遗传算法—理论、应用与软件实现[M].西安:西安交通大学出版社,2002
    [142]Holland J H. Adaptation in natural and artificial system. MI: University of Michigan Press. 1975
    [143]H Asoh, H Muhlenbein.On the mean convergence time of evolutionary algorithms without selection and mutation. In: parallel Problem Solving from Nature. 1994
    [144]D E Goldberg,P Segrest.Finite Markov chain analysis of genetic algorithms.In:Proc of the 2nd Int Conf Genetic Algorithms. 1987:1~8
    [145]Goldberg D E.Genetic Algorithms in Search,Optimization and machine leafing[M].New York:Addison-Wesley, 1989:1~83
    [146]王丽微,洪勇,洪家荣.遗传算法的收敛性研究.计算机学报,1996,19(10):794~797
    [147]Winter G(ed).Genetic Algorithms in Engineering and Computer Science.Wiley, 1995
    [148]Pham D T, Jin G. Genetic algorithm using gradient-like reproduction operator[J].Electronics Letters, 1995,31(18): 1558~1559
    [149]Muhlenbein H,Schlierkamp Voosen D.A predictive theory of the breeder algorithm.in:Proc of the KI94 Workshop.Germany, 1994,7~15
    [150]Marshell S J and Harrison R F. Optimization and training of feed forward neural networks by genetic algorithms[A].The Second IEE International Conference on Artificial Neural Networks[C],Stevenage,1991,39~43
    
    
    [151]PAN Z J,KANG L S,NIE S X. Evolving both the topology and weights of neural networks[J].Parallel Algorithms and Applications, 1996,9:299~307
    [152]Fogarty T C.Varing the probability of mutation in generation algorithms.In:Proceedings of the 3th International Conference on Genetic Algorithms.Boc, 1989:104~109
    [153]王士同.神经模糊系统及其应用研究[M].北京:北京航空航天大学出版社,1998
    [154]赵振宇.徐用懋.模糊理论和神经网络的基础与应用[M].北京:清华大学出版社,1996
    [155]Timothy J.Ross著,钱同慧,沈其聪等译.模糊逻辑及其工程应用.北京:电子工业出版社.2001
    [156]Lee,H M,et al.A Fuzzy neural network model for revising imperfect fuzzy rules.Int.J.Fuzzy sets and systems,Vol.76,No. 1,1995
    [157]Khan E,et al.Neufuz:neural network based fuzzy logic design algorithms.Proc IEEE Conf.on fuzzy systems, 1993
    [158]Horikawa S,Furuhashi T, Uchikawa W.On fuzzy modeling using fuzzy neural networks with the Back-Propagation algorithm.IEEE Trans on Neural networks,1995,3(5):801~806
    [159]Lin C T.,Lee C S G.Neural network based fuzzy logic control and decision system.IEEE Trans on Computer, 1991,40(12):320~336
    [160]Kawamura A,Watanbe N,Okada H, et al.A prototype of neuro-fuzzy cooperation system.In:IEEE Inter Conf On Fuzzy Systems.San Diego,CA,USA:IEEE, 1992.275~282
    [161]Jang G R.ANFIS:Adaptive-network-based fuzzy interfence system.IEEE Trans Con Systems,Men,And Cybernetics,1993,23(3):665~685
    [162]Takagi H,Hayashi I.NN_driven Fuzzy Reasoning[J].Int Journal of Approximate Reasing, 1991.Vol5:191-213
    [163]刘仁鹏.土压平衡盾构技术综述.世界隧道,2000,1:1~7
    [164]张庆贺,柏炯.上海软土隧道的设计与施工.世界隧道,1998,2:11~25
    [165]胡正才,先明其,马积薪编译.应用人工智能和模糊理论的盾构自动掘进系统.世界隧道,1995,5:46~51
    [166]华锡生,黄腾.地下工程自动精密导向技术研究.大坝观测与土工测试.2001,25(4):27~29
    [167]蔡干序,姬生月.精密导向技术在顶管工程中的实际应用.铁路航测.2002,2:38~40
    [168]陈建华.顶管导向测量系统的开发研究.河海大学学报,1999,27(6):110~113
    [169]华锡生,赵钢.自动全站仪检测系统的大气折光改正研究.工程勘察,2001,545~51
    [170]刘维宁,张弥,邙明.城市环境影响的控制理论及其应用.土木工程学报,1997,30(5): 66~74
    [171]Zhang Zhenglu. Studying on New Ideas and Methods of Deformation Analysis.The 8th FIG International Symposium on Deformation Measurements, 1996:253-258

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