Department of Construction Management, Huazhong University of Science and Technology, China.
Department of Construction Management, Huazhong University of Science and Technology, China.
Waste Manag. 2021 May 1;126:791-799. doi: 10.1016/j.wasman.2021.04.012. Epub 2021 Apr 21.
Estimation of construction waste generation (CWG) at the field scale is a crucial but challenging task for effective construction waste management (CWM). Extant field-scale CWG modeling approaches have faced difficulties in obtaining accurate results due to a lack of detailed CWG data, and most of them fail to consider the complex relationship among predictive variables. This study attempts to tackle this issue by proposing a novel CWG modeling approach that integrates improved on-site measurement (IOM) and a support vector machine (SVM)-based prediction model. To achieve this goal, 206 ongoing commercial construction sites were investigated to obtain the predictor values and waste generation rates (WGRs) of five types of waste (i.e., inorganic nonmetallic waste, organic waste, metal waste, composite waste, and hazardous waste) generated at three construction stages (i.e., the understructure stage, superstructure stage, and finishing stage). The data were introduced to the SVM to develop the relationships between predictive variables and WGRs. An actual commercial building under construction was used to demonstrate the applicability of the proposed approach. The results showed that the superiority of the IOM can be used as a basis to implement robust CWG data collection. In addition, the SVM-based WGR prediction model (SWPM) can obtain more accurate prediction results (R = 86.87%) than the back-propagation neural network (R = 75.14%) and multiple linear regression (R = 61.93%).
估算施工现场的建筑废弃物产生量(CWG)对于有效的建筑废弃物管理(CWM)至关重要,但这也是一项极具挑战性的任务。由于缺乏详细的 CWG 数据,现有的现场规模 CWG 建模方法难以获得准确的结果,而且大多数方法都未能考虑到预测变量之间的复杂关系。本研究试图通过提出一种新的 CWG 建模方法来解决这个问题,该方法将改进的现场测量(IOM)和基于支持向量机(SVM)的预测模型相结合。为了实现这一目标,研究调查了 206 个正在进行的商业建筑工地,以获取五种类型的废弃物(即无机非金属废弃物、有机废弃物、金属废弃物、复合材料废弃物和危险废弃物)在三个施工阶段(即基础结构阶段、上部结构阶段和竣工阶段)产生的预测值和废弃物产生率(WGR)。这些数据被引入 SVM 中,以建立预测变量与 WGR 之间的关系。一个正在建设中的实际商业建筑被用来演示所提出方法的适用性。结果表明,IOM 的优越性可作为实施稳健 CWG 数据收集的基础。此外,基于 SVM 的 WGR 预测模型(SWPM)比反向传播神经网络(R=75.14%)和多元线性回归(R=61.93%)能获得更准确的预测结果(R=86.87%)。