生物量(生态学)
碱金属
环境科学
工艺工程
废物管理
计算机科学
化学
工程类
有机化学
农学
生物
作者
Ying He,Danyang Zhao,Jie Xu,Xiaomei Chen,Ran Liu
标识
DOI:10.1680/jgele.24.00132
摘要
This study proposes a data-driven framework based on XGBoost and the whale optimisation algorithm (WOA) for predicting and designing the biomass ash alkali-activated pure solid waste cementitious materials. Based on 112 sets of experimental data, an XGBoost model was developed to predict 3-day and 28-day compressive strength and flowability based on input parameters including microchemical composition, alkali activator concentration, and water-to-binder ratio (W/B). To optimise material performance, WOA was employed to design and refine the material mix ratios and alkali activator concentrations. The results indicated that the W/B is the most critical parameter influencing compressive strength and flowability. The model’s prediction errors remained within 5% for both the training and test sets, validating the accuracy and feasibility of the proposed method. The framework has broad applicability and can serve as a reference for the development of similar solid waste–based materials.
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