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Development of an Algorithm for the Automatic Quantity Estimation of Wall Rebar

Authors
김도영서상욱김선국Lwun Poe Khant
Issue Date
Sep-2023
Publisher
한국건설관리학회
Keywords
Algorithm; Wall Rebar; Special length; BIM; Quantity Estimation
Citation
한국건설관리학회 논문집, v.24, no.5, pp.83 - 94
Journal Title
한국건설관리학회 논문집
Volume
24
Number
5
Start Page
83
End Page
94
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/89148
DOI
10.6106/KJCEM.2023.24.5.083
ISSN
2005-6095
Abstract
In order to devise a rebar usage optimization algorithm, it is necessary to calculate the exact rebar length and revise the arrangement of rebars into special lengths. However, the process of rearranging numerous rebars and manually calculating their quantities is time-consuming and requires significant human resources. To address this challenge, it is necessary to develop an algorithm that can automatically estimate the length of rebars and calculate their quantities. This study aims to create an automatic estimation algorithm that improves work efficiency while ensuring accurate and reliable calculations of rebar quantities. The algorithm considers various factors such as concrete cover, hook length, development length, and lapping length, mandated by the building codes, to calculate the quantity of rebars for wall structures. The effectiveness of the proposed method is validated by comparing the rebar quantities generated by the algorithm with manually calculated quantities, resulting in a difference rate of 1.14% for the hook case and 1.37% for the U-bar case. The implementation of this method enables fast and precise estimation of rebar quantities, adhering to relevant regulatory codes.
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