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基于电力大数据预测铸造行业的空气污染物排放

Predicting air pollutant emissions of the foundry industry: Based on the electricity big data.

作者信息

Chi Xiangyu, Li Zheng, Liu Hanqing, Chen Jianhua, Gao Jian

机构信息

State Key Laboratory of Environmental Criteria and Risk Assessment, Chinese Research Academy of Environmental Sciences, Beijing 100012, China.

State Key Laboratory of Environmental Criteria and Risk Assessment, Chinese Research Academy of Environmental Sciences, Beijing 100012, China.

出版信息

Sci Total Environ. 2024 Mar 20;917:170323. doi: 10.1016/j.scitotenv.2024.170323. Epub 2024 Jan 24.

Abstract

Industrial enterprises are one of the largest sources of air pollution. However, the existing means of monitoring air pollutant emissions are narrow in coverage, high in cost, and low in accuracy. To bridge these gaps, this study explored a predicting model for air pollutant emissions from foundry industries based on high-accuracy electricity consumption data and continuous emission monitoring system (CEMS). The model has then been applied to the calculation of air pollutant emissions from foundries without CEMS and the optimization of air pollutant emission temporal allocation factors. The results reveal that electricity consumption and PM emissions during the 2022 Beijing Winter Olympics have the same ascending and descending relationship. Furthermore, a cubic polynomial model between electricity consumption and flue gas flow is established based on the whole year data of 2021 (R = 0.85). The relative errors between the PM emissions calculated by the model and the emission factor method are small (-17.09-24.12 %), and the results from the two methods revealed a strong correlation (r = 0.93, p < 0.01). In addition, the monthly PM emissions from foundries are mainly concentrated in spring and winter, and the daily emissions on weekends are significantly lower than those on workdays. These results can be useful for environmental regulation and optimization of air pollutant emission inventories of foundry industry.

摘要

工业企业是空气污染的最大来源之一。然而,现有的空气污染物排放监测手段覆盖范围窄、成本高且准确性低。为弥补这些差距,本研究基于高精度电力消耗数据和连续排放监测系统(CEMS)探索了一种铸造行业空气污染物排放预测模型。该模型随后被应用于计算无CEMS铸造厂的空气污染物排放量以及优化空气污染物排放时间分配因子。结果表明,2022年北京冬奥会期间的电力消耗与颗粒物排放具有相同的升降关系。此外,基于2021年全年数据建立了电力消耗与烟气流量之间的三次多项式模型(R = 0.85)。模型计算的颗粒物排放量与排放因子法之间的相对误差较小(-17.09 - 24.12%),两种方法的结果显示出很强的相关性(r = 0.93,p < 0.01)。此外,铸造厂的月度颗粒物排放主要集中在春季和冬季,周末的日排放量明显低于工作日。这些结果可用于铸造行业的环境监管和空气污染物排放清单优化。

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