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Air pollution emissions from Chinese power plants based on the continuous emission monitoring systems network

Ling Tang, Xiaoda Xue, Jiabao Qu, Zhifu Mi, Xin Bo, Xiangyu Chang, Shouyang Wang, Shibei Li, Weigeng Cui, Guangxia Dong

2020Scientific Data103 citationsDOIOpen Access PDF

Abstract

Abstract To meet the growing electricity demand, China’s power generation sector has become an increasingly large source of air pollutants. Specific control policymaking needs an inventory reflecting the overall, heterogeneous, time-varying features of power plant emissions. Due to the lack of comprehensive real measurements, existing inventories rely on average emission factors that suffer from many assumptions and high uncertainty. This study is the first to develop an inventory of particulate matter (PM), SO 2 and NO X emissions from power plants using systematic actual measurements monitored by China’s continuous emission monitoring systems (CEMS) network over 96–98% of the total thermal power capacity. With nationwide, source-level, real-time CEMS-monitored data, this study directly estimates emission factors and absolute emissions, avoiding the use of indirect average emission factors, thereby reducing the level of uncertainty. This dataset provides plant-level information on absolute emissions, fuel uses, generating capacities, geographic locations, etc. The dataset facilitates power emission characterization and clean air policy-making, and the CEMS-based estimation method can be employed by other countries seeking to regulate their power emissions.

Topics & Concepts

Environmental scienceEmission inventoryElectricityThermal power stationPower stationAir pollutionParticulatesElectricity generationPollutionEnvironmental economicsPower (physics)Environmental engineeringMeteorologyAir quality indexEngineeringWaste managementGeographyQuantum mechanicsPhysicsEcologyOrganic chemistryEconomicsChemistryBiologyElectrical engineeringAtmospheric chemistry and aerosolsAir Quality and Health ImpactsAir Quality Monitoring and Forecasting