Development of a Prediction Model for Demolition Waste Generation Using a Random Forest Algorithm Based on Small DataSets

Recently, artificial intelligence (AI) technologies have been employed to predict construction and demolition (C&D) waste generation. However, most studies have used machine learning models with continuous data input variables, applying algorithms, such as artificial neural networks, adaptive ne...

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Veröffentlicht in:International journal of environmental research and public health 2020-09, Vol.17 (19), p.6997
Hauptverfasser: Cha, Gi-Wook, Moon, Hyeun Jun, Kim, Young-Min, Hong, Won-Hwa, Hwang, Jung-Ha, Park, Won-Jun, Kim, Young-Chan
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container_issue 19
container_start_page 6997
container_title International journal of environmental research and public health
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creator Cha, Gi-Wook
Moon, Hyeun Jun
Kim, Young-Min
Hong, Won-Hwa
Hwang, Jung-Ha
Park, Won-Jun
Kim, Young-Chan
description Recently, artificial intelligence (AI) technologies have been employed to predict construction and demolition (C&D) waste generation. However, most studies have used machine learning models with continuous data input variables, applying algorithms, such as artificial neural networks, adaptive neuro-fuzzy inference systems, support vector machines, linear regression analysis, decision trees, and genetic algorithms. Therefore, machine learning algorithms may not perform as well when applied to categorical data. This article uses machine learning algorithms to predict C&D waste generation from a dataset, as a way to improve the accuracy of waste management in C&D facilities. These datasets include categorical (e.g., region, building structure, building use, wall material, and roofing material), and continuous data (particularly, gloss floor area), and a random forest (RF) algorithm was used. Results indicate that RF is an adequate machine learning algorithm for a small dataset consisting of categorical data, and even with a small dataset, an adequate prediction model can be developed. Despite the small dataset, the predictive performance according to the demolition waste (DW) type was R (Pearson's correlation coefficient) = 0.691-0.871, R (coefficient of determination) = 0.554-0.800, showing stable prediction performance. High prediction performance was observed using three (for mortar), five (for other DW types), or six (for concrete) input variables. This study is significant because the proposed RF model can predict DW generation using a small amount of data. Additionally, it demonstrates the possibility of applying AI to multi-purpose DW management.
doi_str_mv 10.3390/ijerph17196997
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Despite the small dataset, the predictive performance according to the demolition waste (DW) type was R (Pearson's correlation coefficient) = 0.691-0.871, R (coefficient of determination) = 0.554-0.800, showing stable prediction performance. High prediction performance was observed using three (for mortar), five (for other DW types), or six (for concrete) input variables. This study is significant because the proposed RF model can predict DW generation using a small amount of data. Additionally, it demonstrates the possibility of applying AI to multi-purpose DW management.</abstract><cop>Switzerland</cop><pub>MDPI AG</pub><pmid>32987874</pmid><doi>10.3390/ijerph17196997</doi><orcidid>https://orcid.org/0000-0001-9141-0360</orcidid><orcidid>https://orcid.org/0000-0001-8590-6482</orcidid><oa>free_for_read</oa></addata></record>
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subjects Adaptive systems
Algorithms
Artificial Intelligence
Concrete
Construction
Construction Industry
Construction materials
Correlation coefficient
Correlation coefficients
Datasets
Demolition
Feature selection
Fuzzy logic
Fuzzy systems
Genetic algorithms
Genetic analysis
Gloss
Learning algorithms
Machine Learning
Methods
Neural networks
Neural Networks, Computer
Prediction models
Regression analysis
Roofing
Solid Waste
Statistical analysis
Support Vector Machine
Support vector machines
Variables
Waste disposal
Waste management
title Development of a Prediction Model for Demolition Waste Generation Using a Random Forest Algorithm Based on Small DataSets
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