祝贺周军辉论文“Machine-learning-aided hydrochar production through hydrothermal carbonization of biomass by engineering operating parameters and/or biomass mixture recipes”被Energy(IF:9.0)接收发表!
发布时间:2023-12-07
点击次数:
简介:Hydrochar serves not only as a fuel source but also as a versatile carbon material that has found extensive application across various domains. The application performance of hydrochar, e.g., energy recovery and carbon stability, is substantially influenced by its mass yield, higher heating value), and compositions, so the prediction and engineering of these properties is promising. In this study, two machine learning algorithms, namely gradient boosting regression (GBR) and random forest (RF), were used to predict the hydrochar properties mentioned above. The interpretation of ML models revealed the importance ranking of features for all targets. Then, engineering hydrochar was carried out through three different optimizations to the as-built multi-target prediction model: i) optimizations of HTC conditions for given biomass samples; ii) optimization of biomass mixture recipes; iii) simultaneous optimization of both biomass mixing recipes and HTC conditions.
是否译成外文:否
上一条: 祝贺张伟进论文“A novel intelligent system based on machine learning for hydrochar multi-target prediction from the hydrothermal carbonization of biomass”被Biochar(IF:12.7)接收发表!
下一条: 祝贺郑娇琴论文“Self-Constructing 100% Water-Resistant MetalSulfides through In-Situ Acid Etching for Effective Elemental Mercury (Hg0) Capture”被选为Langmuir杂志封面!