Machine learning informs mitigation strategies for nitrous oxide emissions from wastewater operations
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Abstract
ABSTRACT This study focused on the development of machine-learning- (ML) based strategies for mitigating nitrous oxide (N 2 O) 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 N 2 O 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 N 2 O emissions from both aerobic and anoxic zones of the process bioreactors. The optimal operational conditions identified for minimizing N 2 O emissions included operation of aerobic and anoxic zones at DO < 4 mg O 2 L -1 and < 1 mg O 2 L -1 , respectively, coupled with appropriate solids retention times (SRTs) that maximize process performance. Accordingly, our results strongly underscore the utility of ML models in combination with bioprocess fundamentals for predicting and mitigating N 2 O emissions, while concomitantly optimizing wastewater treatment operations.
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- europepmc
- last seen: 2026-05-20T01:45:00.602351+00:00