堆肥
微生物群
微生物
钥匙(锁)
分解
产酸作用
生化工程
计算机科学
不动杆菌
过程(计算)
食品科学
废物管理
细菌
生物
生态学
工程类
生物信息学
遗传学
甲烷
操作系统
厌氧消化
作者
Shang Ding,Liyan Jiang,Jiyuan Hu,Wuji Huang,Liping Lou
标识
DOI:10.1016/j.biortech.2023.129731
摘要
Composting, reliant on microorganisms, effectively treats kitchen waste. However, it is difficult to precisely understand the specific role of key microorganisms in the composting process by relying solely on experimental research. This study aims to employ machine learning models to explore key microbial genera and to optimize composting systems. After introducing a novel microbiome preprocessing approach, Stacking models were constructed (R2 is about 0.8). The SHAP method (SHapley Additive exPlanations) identified Bacillus, Acinetobacter, Thermobacillus, Pseudomonas, Psychrobacter, and Thermobifida as prominent microbial genera (Shapley values ranging from 3.84 to 1.24). Additionally, microbial agents were prepared to target the identified key genera, and experiments demonstrated that the composting quality score was 76.06 for the treatment and 70.96 for the control. The exogenous agents enhanced decomposition and improved compost quality in later stages. In summary, this study opens up a new avenue to identifying key microorganisms and optimizing the biological treatment process.
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