Developing a Machine-Learning Model to Predict Clash Resolution Options

被引:0
|
作者
Harode, Ashit [1 ]
Thabet, Walid [1 ]
Gao, Xinghua [1 ]
机构
[1] Virginia Tech, Myers Lawson Sch Construct, Blacksburg, VA 24060 USA
关键词
DESIGN CLASHES; MEP; KNOWLEDGE; COORDINATION;
D O I
10.1061/JCCEE5.CPENG-5548
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Even with the utilization of software tools like Navisworks to automate clash detection, clash resolution in construction projects remains a slow and manual process. The reason is the meticulous nature of the process where coordinators need to ensure that resolving one clash does not lead to new clashes. The use of machine learning to automate clash resolution as a potential option to improve the clash resolution process has been suggested with research showing positive results to support the implementation. While the research shows high accuracy in predicting clash resolution options to support automation, the scope limits the discussion on the complex and often lengthy process of developing a machine-learning model. Based on this research gap, the authors in this paper discuss the development of a prediction model to identify clash resolution options for given clashes. The discussion is focused on individual steps involved in creating machine-learning models like data collection, data preprocessing, and machine-learning algorithm development and selection. The authors also address common challenges in the development of machine-learning models including class imbalance and availability of limited data. The authors utilize a multilabel synthetic oversampling method to generate different percentages of synthetic data to account for class imbalance and limited data sets. Using this data set, the authors trained five machine-learning algorithms and reported on their accuracy. The authors concluded that increasing the data set with 20% synthetic data, and using an artificial neural network to develop the machine-learning model to automate the resolution of clashes have generated better results with an average accuracy of around 80%.
引用
收藏
页数:18
相关论文
共 50 条
  • [1] Formulation of Feature and Label Space Using Modified Delphi in Support of Developing a Machine-Learning Algorithm to Automate Clash Resolution
    Harode, Ashit
    Thabet, Walid
    Leite, Fernanda
    [J]. JOURNAL OF CONSTRUCTION ENGINEERING AND MANAGEMENT, 2024, 150 (03)
  • [2] Developing Machine-Learning Models to Predict Airfield Pavement Responses
    Gungor, Osman Erman
    Al-Qadi, Imad L.
    [J]. TRANSPORTATION RESEARCH RECORD, 2018, 2672 (29) : 23 - 34
  • [3] An integrated machine-learning model to predict nucleosome architecture
    Sala, Alba
    Labrador, Mireia
    Buitrago, Diana
    De Jorge, Pau
    Battistini, Federica
    Heath, Isabelle Brun
    Orozco, Modesto
    [J]. NUCLEIC ACIDS RESEARCH, 2024, 52 (17) : 10132 - 10143
  • [4] Developing machine-learning regression model with Logical Analysis of Data (LAD)
    Khalifa, Ramy M.
    Yacout, Soumaya
    Bassetto, Samuel
    [J]. COMPUTERS & INDUSTRIAL ENGINEERING, 2021, 151
  • [5] A machine-learning approach to predict postprandial hypoglycemia
    Seo, Wonju
    Lee, You-Bin
    Lee, Seunghyun
    Jin, Sang-Man
    Park, Sung-Min
    [J]. BMC MEDICAL INFORMATICS AND DECISION MAKING, 2019, 19 (01)
  • [6] A machine-learning approach to predict postprandial hypoglycemia
    Wonju Seo
    You-Bin Lee
    Seunghyun Lee
    Sang-Man Jin
    Sung-Min Park
    [J]. BMC Medical Informatics and Decision Making, 19
  • [7] Development and Validation of a Machine-Learning Model to Predict Early Recurrence of Intrahepatic Cholangiocarcinoma
    Laura Alaimo
    Henrique A. Lima
    Zorays Moazzam
    Yutaka Endo
    Jason Yang
    Andrea Ruzzenente
    Alfredo Guglielmi
    Luca Aldrighetti
    Matthew Weiss
    Todd W. Bauer
    Sorin Alexandrescu
    George A. Poultsides
    Shishir K. Maithel
    Hugo P. Marques
    Guillaume Martel
    Carlo Pulitano
    Feng Shen
    François Cauchy
    Bas Groot Koerkamp
    Itaru Endo
    Minoru Kitago
    Timothy M. Pawlik
    [J]. Annals of Surgical Oncology, 2023, 30 : 5406 - 5415
  • [8] Machine-learning models predict produced water properties
    Procyk, Alex
    [J]. OIL & GAS JOURNAL, 2023, 121 (10) : 48 - 53
  • [9] Implementing a Machine-Learning Model to Predict Risk of Chronic Kidney Disease (CKD) Progression
    Tangri, Navdeep
    Singh, Rakesh
    Betts, Keith A.
    Du, Yuxian
    Gao, Sophie
    Katta, Arvind
    Farag, Youssef
    Fatoba, Samuel T.
    Liu, Hongjiao
    Chen, Jingyi
    Ferguson, Thomas
    Whitlock, Reid
    Leon, Silvia J.
    Singh, Ajay K.
    [J]. DIABETES, 2024, 73
  • [10] A machine-learning model to predict suicide risk in Japan based on national survey data
    Chou, Po-Han
    Wang, Shao-Cheng
    Wu, Chi-Shin
    Horikoshi, Masaru
    Ito, Masaya
    [J]. FRONTIERS IN PSYCHIATRY, 2022, 13