水热碳化
污水污泥
磷
化学
碳纤维
热液循环
制浆造纸工业
环境科学
环境化学
碳化
污水
废物管理
化学工程
材料科学
环境工程
吸附
工程类
复合材料
有机化学
复合数
作者
Oraléou Sangué Djandja,Adekunlé Akim Salami,Zhicong Wang,Jia Duo,Lin-Xin Yin,Peigao Duan
出处
期刊:Energy
[Elsevier BV]
日期:2022-01-22
卷期号:245: 123295-123295
被引量:51
标识
DOI:10.1016/j.energy.2022.123295
摘要
The hydrochar produced from hydrothermal carbonization(HTC) of sewage sludge (SS) usually has a high phosphorous (P) content, and that would result in fouling and energy efficiency reduction. Therefore, it is important to monitor the P content during the hydrochar production process. This work suggests a data-driven Random Forest-based model to predict the total P content in the hydrochar (TP-hc) from the HTC of SS. Various configurations of inputs features were examined, including the data of proximate analysis, ultimate analysis, ultimate and proximate analyses, and for each configuration, either if the total P in the SS (TP-ss) was known or not. Overall, the models including TP-ss as input have accurately predicted the TP-hc with an R2 located in [92–95%]. Features’ importance approach and partial dependence analysis pointed out that the TP-ss, ash content, reaction temperature (T), reaction time (t), and initial pH of feedwater exhibit positive effect on the TP-hc. In contrast, contribution of the volatile matter (VM) of SS was mostly negative. Dry matter loading exhibits no obvious monotonicity with TP-hc. This work could guide the production of SS-hydrochar with the desired P content, and thus avoid time and resources consuming for many trials.
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