ISSN 2096-4498

   CN 44-1745/U

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Tunnel Construction ›› 2022, Vol. 42 ›› Issue (12): 2048-2063.DOI: 10.3973/j.issn.2096-4498.2022.12.008

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Greenhouse Gas Prediction Using Whale Optimization AlgorithmDeep Extreme Learning Machine in Chengdu Metro Construction Stage

CHEN Zheng, GUO Yalin, GUO Chun*   

  1. (Key Laboratory of Transportation Tunnel Engineering, Ministry of Education, Southwest Jiaotong University, Chengdu 610031, Sichuan, China)
  • Online:2022-12-20 Published:2023-01-09

Abstract:

To achieve low carbon emission and reduction in the design and construction of Chengdu metro, the machine learning algorithm is employed to predict the carbon emissions in the construction phase of the Chengdu metro based on a case study of 6 stations and 7 sections of the Chengdu metro line 18. The greenhouse gas emissions from building material production, transportation, and onsite construction in metro stations and shield sections are then calculated using a life cycle assessment method, and a metro carbon emission prediction model based on deep extreme learning machine (DELM) optimized by whale optimization algorithm (WOA) is established. The prediction results of DELM algorithms optimized by the winddriven optimizer, grey wolf optimizer, particle swarm optimizer, artificial bee colony, multiverse optimizer, and atom search optimizer are compared with those of nonoptimized back propagation neural network, kernel extreme learning machine, and DELM algorithms. The research results reveal the following: (1) The correlation consistency of WOADELM algorithm prediction results is 0.757, slightly higher than other algorithm models. (2) The sensitivity analysis of the leading input indicators of metro carbon emission is conducted using the WOADELM HJalgorithm model, obtaining the key influencing factors of station carbon emission prediction, i.e., station length and rail surface buried depth, and the relative change rates of corresponding indicators of carbon emission are 30.1% and 23.1%, respectively.

Key words: metro, life cycle assessment, carbon emission, deep extreme learning machine, prediction model