Unraveling operational drivers of nitrous oxide emissions in biological wastewater treatment systems through machine learning analysis of multi-decadal datasets

root 提交于 周四, 09/04/2025 - 00:00
This study focused on the development of machine-learning- (ML-) based strategies for mitigating nitrous oxide (N2O) emissions from various wastewater treatment systems in the United States measured using a benchmark USEPA-endorsed protocol. Results revealed that in general, poor process performance correlated with higher N2O emissions. Specifically, local variables including zone-specific dissolved oxygen, ammonia, and nitrite concentrations and global variables including effluent nitrite and nitrate concentrations contributed positively towards N2O emissions from both aerobic and anoxic zones of the process bioreactors. The optimal operational conditions identified for minimizing N2O emissions included, operation of aerobic and anoxic zones at DO > 4 mg O2/L and