Faculty of Engineering, University of Regina, Regina, Saskatchewan, Canada S4S 0A2.
Waste Manag. 2009 Dec;29(12):2956-68. doi: 10.1016/j.wasman.2009.06.023. Epub 2009 Jul 19.
A stepwise-cluster microbial biomass inference (SMI) model was developed through introducing stepwise-cluster analysis (SCA) into composting process modeling to tackle the nonlinear relationships among state variables and microbial activities. The essence of SCA is to form a classification tree based on a series of cutting or mergence processes according to given statistical criteria. Eight runs of designed experiments in bench-scale reactors in a laboratory were constructed to demonstrate the feasibility of the proposed method. The results indicated that SMI could help establish a statistical relationship between state variables and composting microbial characteristics, where discrete and nonlinear complexities exist. Significance levels of cutting/merging were provided such that the accuracies of the developed forecasting trees were controllable. Through an attempted definition of input effects on the output in SMI, the effects of the state variables on thermophilic bacteria were ranged in a descending order as: Time (day)>moisture content (%)>ash content (%, dry)>Lower Temperature ( degrees C)>pH>NH(4)(+)-N (mg/Kg, dry)>Total N (%, dry)>Total C (%, dry); the effects on mesophilic bacteria were ordered as: Time>Upper Temperature ( degrees C)>Total N>moisture content>NH(4)(+)-N>Total C>pH. This study made the first attempt in applying SCA to mapping the nonlinear and discrete relationships in composting processes.
逐步聚类微生物生物量推断 (SMI) 模型是通过将逐步聚类分析 (SCA) 引入堆肥过程建模中开发的,以解决状态变量和微生物活性之间的非线性关系。SCA 的本质是根据给定的统计标准,通过一系列切割或合并过程形成分类树。在实验室中进行了 8 次台式反应堆设计实验,以证明该方法的可行性。结果表明,SMI 可以帮助建立状态变量与堆肥微生物特性之间的统计关系,其中存在离散和非线性复杂性。提供了切割/合并的显着性水平,以便可以控制所开发的预测树的准确性。通过尝试在 SMI 中定义输入对输出的影响,可以按降序排列状态变量对嗜热细菌的影响:时间(天)>水分含量(%)>灰分含量(%,干)>低温(摄氏度)>pH 值>NH(4)(+)-N(mg/kg,干)>总氮(%,干)>总碳(%,干);对中温细菌的影响顺序为:时间>上温度(摄氏度)>总氮>水分含量>NH(4)(+)-N>总碳>pH 值。本研究首次尝试将 SCA 应用于映射堆肥过程中的非线性和离散关系。