微生物燃料电池
弹性(材料科学)
抗性(生态学)
扰动(地质)
环境科学
理论(学习稳定性)
心理弹性
微生物种群生物学
摄动(天文学)
生化工程
生态学
计算机科学
风险分析(工程)
环境工程
生物
功率(物理)
工程类
机器学习
发电
材料科学
物理
细菌
业务
复合材料
古生物学
量子力学
心理治疗师
遗传学
心理学
作者
Keaton Larson Lesnik,Wenfang Cai,Hong Liu
标识
DOI:10.1021/acs.est.9b03667
摘要
Stability as evaluated by functional resistance and resilience is critical to the effective operation of environmental biotechnologies. To date, limited tools have been developed that allow operators of these technologies to predict functional responses to environmental and operational disturbances. In the present study, 17 Microbial Fuel Cells (MFCs) were exposed to a low pH perturbation. MFC power dropped 52.7 ± 35.8% during the low pH disturbance. Following the disturbance, 3 MFCs did not recover while 14 took 60.7 ± 58.3 h to recover to previous current output levels. Machine learning models based on genomic data inputs were developed and evaluated on their ability to predict resistance and resilience. Resistance and resilience levels corresponding to risk of deactivation could be classified with 70.47 ± 15.88% and 65.33 ± 19.71% accuracy, respectively. Models predicting resistance and resilience coefficient values projected postperturbation current drops within 6.7-15.8% and recovery times within 5.8-8.7% of observed values. Results suggest that abundances of specific genera are better predictors of resistance while overall microbial community structure more accurately predicts resilience. This approach can be used to assess operational risk and is a first step toward the further understanding and improvement of overall stability of environmental biotechnologies.
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