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Analysis on prediction models of TBM performance: A review
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 Title & Authors
Analysis on prediction models of TBM performance: A review
Lee, Hang-Lo; Song, Ki-Il; Cho, Gye-Chun;
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 Abstract
Prediction of TBM performance is very important for machine selection, and for reliable estimation of construction cost and period. The purpose of this research is to analyze the evaluation process of various prediction models for TBM performance and applied methodology. Based on the solid literature review since 2000, a classification system of TBM performance prediction model is proposed in this study. Classification system suggested in this study can be divided into two stages: selection of input parameter and application of prediction techniques. We also analyzed input and output parameters for prediction model and frequency of use. Lastly, the future research and development trend of TBM performance prediction is suggested.
 Keywords
TBM performance;Prediction model;Selection of input parameter;Application of prediction techniques;Classification system;
 Language
Korean
 Cited by
 References
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