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多污染源下施工扬尘颗粒排放特性的分析与模拟预测。

Analyzed and Simulated Prediction of Emission Characteristics of Construction Dust Particles under Multiple Pollution Sources.

机构信息

School of Civil Engineering and Architecture, East China Jiaotong University, Nanchang 330013, China.

Civil Engineering Department of Engineering Science University of Greenwich, London, UK.

出版信息

Comput Intell Neurosci. 2022 Jul 7;2022:7349001. doi: 10.1155/2022/7349001. eCollection 2022.

Abstract

Dust pollution in construction sites is an invisible hazard that is often ignored as a nuisance. Regulatory and engineering control methods are predominantly used for its mitigation. To control dust, dust-generating activities and their magnitudes need to be established. While researchers have comprehensively studied dust emissions of construction work, prediction of dust concentrations based on work phases and climatic conditions is still lacking. To overcome the above knowledge gap, this article selected two construction stages of a project to monitor dust generation using the HXF-35 dust sampler. Based on the collected data, dust emission characteristics of these two stages are studied, and dust emission characteristics under multiple pollution sources are analyzed. Based on the results, a BP neural network model is built to perform simulations of dust emission concentrations in different work areas and predict construction dust concentrations under different conditions. Except few, the majority of the work areas monitored have exceeded the allowable upper limit of TSP concentration stipulated by relevant standards. In addition, dust emission differences of work areas are pronounced. The results verified that the BP neural network dust concentration prediction model is feasible to be used to predict dust concentration changes in different work faces under different climate conditions and to provide a scientific base for pollution control. This study provides several practical solutions where the prediction of dust concentrations at designated work areas will allow construction companies early warning to implement mitigation measures before it becomes a serious health hazard. In addition, it provides an opportunity to re-evaluate those hazardous work in the light of these revelations. The outcome of this study is both original and useful for both construction companies and regulatory agencies. It can better predict the concentration of construction dust in different operating areas and different weather conditions and provide a guide for the prevention and control of construction dust.

摘要

建筑工地扬尘是一种无形的危害,通常被视为一种滋扰而被忽视。主要采用法规和工程控制方法来减轻其影响。为了控制粉尘,需要确定产生粉尘的活动及其规模。虽然研究人员已经全面研究了建筑工作的粉尘排放,但根据工作阶段和气候条件预测粉尘浓度的方法仍然缺乏。为了克服上述知识差距,本文选择了一个项目的两个施工阶段,使用 HXF-35 粉尘采样器来监测粉尘的产生。根据收集到的数据,研究了这两个阶段的粉尘排放特性,并分析了多个污染源下的粉尘排放特性。基于结果,建立了一个 BP 神经网络模型,对不同工作区域的粉尘排放浓度进行模拟,并预测不同条件下的施工粉尘浓度。除了少数几个,监测到的大部分工作区域都超过了相关标准规定的 TSP 浓度允许上限。此外,工作区域的粉尘排放差异明显。结果验证了 BP 神经网络粉尘浓度预测模型可以用于预测不同气候条件下不同工作面的粉尘浓度变化,为污染控制提供科学依据。本研究提供了一些实用的解决方案,即在指定的工作区域预测粉尘浓度,以便施工公司在粉尘成为严重健康危害之前采取缓解措施。此外,这也为根据这些发现重新评估那些危险工作提供了机会。本研究的结果对于施工公司和监管机构来说都是原创且有用的。它可以更好地预测不同作业区域和不同天气条件下的施工粉尘浓度,并为施工粉尘的防治提供指导。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/599f/9283019/9a93f2e9bc2f/CIN2022-7349001.001.jpg

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