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Productivity estimation of cutter suction dredger operation through data mining and learning from real-time big data

Jiake Fu (State Key Laboratory of Hydraulic Engineering Simulation and Safety, Tianjin, China)
Huijing Tian (Design and Research Institute of Ecological Environmental Protection, China Communications Construction Company, Tianjin, China)
Lingguang Song (Department of Construction Management, University of Houston, Houston, USA)
Mingchao Li (School of Civil Engineering, Tianjin University, Tianjin, China)
Shuo Bai (State Key Laboratory of Hydraulic Engineering Simulation and Safety, Tianjin, China)
Qiubing Ren (State Key Laboratory of Hydraulic Engineering Simulation and Safety, Tianjin, China)

Engineering, Construction and Architectural Management

ISSN: 0969-9988

Article publication date: 25 January 2021

Issue publication date: 16 July 2021

320

Abstract

Purpose

This paper presents a new approach of productivity estimation of cutter suction dredger operation through data mining and learning from real-time big data.

Design/methodology/approach

The paper used big data, data mining and machine learning techniques to extract features of cutter suction dredgers (CSD) for predicting its productivity. ElasticNet-SVR (Elastic Net-Support Vector Machine) method is used to filter the original monitoring data. Along with the actual working conditions of CSD, 15 features were selected. Then, a box plot was used to clean the corresponding data by filtering out outliers. Finally, four algorithms, namely SVR (Support Vector Regression), XGBoost (Extreme Gradient Boosting), LSTM (Long-Short Term Memory Network) and BP (Back Propagation) Neural Network, were used for modeling and testing.

Findings

The paper provided a comprehensive forecasting framework for productivity estimation including feature selection, data processing and model evaluation. The optimal coefficient of determination (R2) of four algorithms were all above 80.0%, indicating that the features selected were representative. Finally, the BP neural network model coupled with the SVR model was selected as the final model.

Originality/value

Machine-learning algorithm incorporating domain expert judgments was used to select predictive features. The final optimal coefficient of determination (R2) of the coupled model of BP neural network and SVR is 87.6%, indicating that the method proposed in this paper is effective for CSD productivity estimation.

Keywords

Acknowledgements

This research was supported by the Tianjin Science Foundation for Distinguished Young Scientists of China (Grant No. 17JCJQJC44000).

Citation

Fu, J., Tian, H., Song, L., Li, M., Bai, S. and Ren, Q. (2021), "Productivity estimation of cutter suction dredger operation through data mining and learning from real-time big data", Engineering, Construction and Architectural Management, Vol. 28 No. 7, pp. 2023-2041. https://doi.org/10.1108/ECAM-05-2020-0357

Publisher

:

Emerald Publishing Limited

Copyright © 2020, Emerald Publishing Limited

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