Construction Cost Prediction of Main Tunnel in Railway Tunnel Based on Support Vector Machine
LIU Shaofei1, HOU Dashan2
1. China Railway Engineering Design and Consulting Group Co. Ltd, Beijing 100055, China; 2. China Academy of Railway Sciences Corporation Limited, Beijing 100081, China
Abstract:Research purposes: The accuracy of the preliminary investment estimation of railway engineering projects plays a vital role in the comparison and selection of railway construction projects and investment control. At present, our country's railway engineering investment estimation is mainly carried out by the unit index method and the budget quota method. However, the whole process is relatively complicated and time-consuming, and the accuracy of the estimation also depends on the working experience and ability of the practitioners. In this paper, machine learning algorithms is used, main tunnel in railway tunnel engineering as the research object, to build a cost prediction model based on support vector machine (SVM) and extreme learning machine (ELM), and collect several tunnel samples to train and test the model. Through actual verification and comparison, a more applicable algorithm is selected, which can use historical data to quickly predict the cost of the main tunnel, thereby improving investment estimation and program comparison precision and efficiency. Research conclusions: (1) The result shows that SVM has high prediction accuracy and stability, compared with the ELM algorithm, and the mean absolute percentage error (MAPE) of the prediction results is only 3.41%, which meets the accuracy requirements. (2) The research results can provide a new and intelligent data-driven modeling method for the cost evaluation and prediction of main tunnel in railway tunnel engineering, and the simulation results show that the model has good feasibility and applicability.
刘少非, 侯大山. 基于支持向量机的铁路隧道洞身工程造价预测[J]. 铁道工程学报, 2022, 39(5): 108-114.
LIU Shaofei, HOU Dashan. Construction Cost Prediction of Main Tunnel in Railway Tunnel Based on Support Vector Machine. Journal of Railway Engineering Society, 2022, 39(5): 108-114.
郑健. 谈新时期铁路工程定额基本特征与工作方法[J]. 铁路工程造价管理, 2009(1):1-3.Zheng Jian. Exploration of Fundamental Characteristic and Working Method of Railway Engineering Quota Work in the New Era[J]. Railway Engineering Cost Management, 2009(1):1-3.
[2]
黄敏,吴立,姚沅. 基于支持向量机-粒子群算法的山区公路隧道造价预测[J].公路,2015(7):285-288.Huang Min,Wu Li,Yao Yuan. Cost Prediction of Mountain Highway Tunnel Based on Vector Machine-Particle Swarm Supported Algorithm[J]. Highway, 2015(7):285-288.
[3]
邓雪松, 周继祖. 应用人工神经网络估算新建单线铁路工程投资[J]. 铁路工程技术与经济,2000(4):1-4.Deng Xuesong, Zhou Jizu. Applied with Artificial Neural Network to Estimate Investment on Newly Built Single Railway Line Project[J]. Railway Engineering Technology and Economy, 2000(4):1-4.
[4]
K Petroutsatou, E Georgopoulos,S Lambropoulos,etc. Early Cost Estimating of Road Tunnel Construction Using Neural Networks. [J]. Journal of Construction Engineering and Management,2012(6):679-687.
[5]
Sinfield J V, Einstein H H. Tunnel Construction Costs for Tube Transportation Systems[J]. Journal of Construction Engineering and Management, 1998(1):48-57.
[6]
郑茂辉, 刘少非. GA优化ELM神经网络的排水管道缺陷诊断[J]. 哈尔滨工业大学学报, 2021(5):59-64.Zheng Maohui,Liu Shaofei. Defect Diagnosis of Urban Drainage Pipelines Based on GA Optimized ELM Neural Network[J]. Journal of Harbin Institute of Technology, 2021(5):59-64.
[7]
Stone M. Cross-validatory Choice and Assessment of Statistical Predictions[J]. Journal of the Royal Statistical Society: Series B (Methodological), 1974(2):111-133.
[8]
Huang G B, Zhu Q Y, Siew C K. Extreme Learning Machine: A New Learning Scheme of Feedforward Neural Networks[J]. Neural Networks,2004(2):985-990.