Machine Learning Predicts Biogeochemistry from Microbial Community Structure in a Complex Model System
Avishek Dutta, Thomas Goldman, Jeffrey Keating, Ellen Burke, Nicole Williamson, Reinhard Dirmeier, Jeff S. Bowman
Abstract
S production in a bioreactor from the effluent bacterial community structure without direct observations of the sessile community or other environmental conditions. This study establishes the ability to use machine learning approaches in predicting sulfide concentrations in a closed system, which can be further developed as a valuable tool for predicting biogeochemical processes in open environments. As machine learning algorithms continue to improve, we anticipate increased applications of microbial community structure to predict key environmental and industrial processes.
Topics & Concepts
Microbial population biologyBiogeochemical cycleCommunity structureMicrobial ecologyBiogeochemistryBioreactorEnvironmental scienceBiochemical engineeringSulfateMicrobial metabolismEcologyBiologyChemistryEngineeringBacteriaOrganic chemistryBotanyGeneticsMicrobial Community Ecology and PhysiologyWastewater Treatment and Nitrogen RemovalOdor and Emission Control Technologies