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露天煤矿的颗粒物浓度:混合机器学习估算。

Particulate matter concentration from open-cut coal mines: A hybrid machine learning estimation.

机构信息

School of Civil, Environmental and Mining Engineering, University of Western Australia, Perth, 6009, Australia; School of Resources and Safety Engineering, Central South University, Changsha, 410083, China.

School of Mines, China University of Mining and Technology, Xuzhou, 221116, China; State Key Laboratory of Coal Resources and Safe Mining, China University of Mining and Technology, Xuzhou, 221116, China.

出版信息

Environ Pollut. 2020 Aug;263(Pt A):114517. doi: 10.1016/j.envpol.2020.114517. Epub 2020 Apr 4.

Abstract

Particulate matter (PM) emission is one of the leading environmental pollution issues associated with the coal mining industry. Before any control techniques can be employed, however, an accurate prediction of PM concentration is desired. Towards this end, this work aimed to provide an accurate estimation of PM concentration using a hybrid machine-learning technique. The proposed predictive model was based on the hybridazation of random forest (RF) model particle swarm optimization (PSO) for estimating PM concentration. The main objective of hybridazing the PSO was to tune the hyper-parameters of the RF model. The hybrid method was applied to PM data collected from an open-cut coal mine in northern China, the Haerwusu Coal Mine. The inputs selected were wind direction, wind speed, temperature, humidity, noise level and PM concentration at 5 min before. The outputs selected were the current concentration of PM (particles with an aerodynamic diameter smaller than 2.5 μm), PM (particles with an aerodynamic diameter smaller than 10 μm) and total suspended particulate (TSP). A detailed procedure for the implementation of the RF_PSO was presented and the predictive performance was analyzed. The results show that the RF_PSO could estimate PM concentration with a high degree of accuracy. The Pearson correlation coefficients among the average estimated and measured PM data were 0.91, 0.84 and 0.86 for the PM, PM and TSP datasets, respectively. The relative importance analysis shows that the current PM concentration was mainly influenced by PM concentration at 5 min before, followed by humidity > temperature ≈ noise level > wind speed > wind direction. This study presents an efficient and accurate way to estimate PM concentration, which is fundamental to the assessment of the atmospheric quality risks emanating from open-cut mining and the design of dust removal techniques.

摘要

颗粒物(PM)排放是与煤炭开采行业相关的主要环境污染问题之一。然而,在采用任何控制技术之前,需要准确预测 PM 浓度。为此,本工作旨在使用混合机器学习技术对 PM 浓度进行准确估计。所提出的预测模型基于随机森林(RF)模型粒子群优化(PSO)的混合,用于估计 PM 浓度。混合 PSO 的主要目的是调整 RF 模型的超参数。该混合方法应用于从中国北方露天煤矿(海勒斯素煤矿)采集的 PM 数据。选择的输入有风的方向、风速、温度、湿度、噪声水平和前 5 分钟的 PM 浓度。选择的输出是当前的 PM(空气动力学直径小于 2.5μm 的颗粒)浓度、PM(空气动力学直径小于 10μm 的颗粒)浓度和总悬浮颗粒物(TSP)浓度。提出了实施 RF_PSO 的详细过程,并分析了预测性能。结果表明,RF_PSO 可以高度准确地估计 PM 浓度。PM、PM 和 TSP 数据集的平均估计和测量 PM 数据之间的 Pearson 相关系数分别为 0.91、0.84 和 0.86。相对重要性分析表明,当前的 PM 浓度主要受前 5 分钟的 PM 浓度影响,其次是湿度>温度≈噪声水平>风速>风向。本研究提出了一种有效且准确的方法来估计 PM 浓度,这对于评估露天开采引起的大气质量风险和设计除尘技术至关重要。

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