BioEngine, Research Team on Green Process Engineering and Biorefineries, Chemical Engineering Department, Université Laval, 1065, avenue de la Médecine, Québec, QC G1V 0A6, Canada; modelEAU, Département de génie civil et de génie des eaux, Université Laval, 1065, avenue de la Médecine, Québec G1V 0A6, QC, Canada; CentrEau, Centre de recherche sur l'eau, Université Laval, 1065 Avenue de la Médecine, Québec, QC G1V 0A6, Canada.
DHI, Agern Allé 5, 2970 Hørsholm, Denmark.
Bioresour Technol. 2018 Dec;269:375-383. doi: 10.1016/j.biortech.2018.08.108. Epub 2018 Aug 28.
This paper describes the use of global sensitivity analysis (GSA) for factor prioritization in nutrient recovery model (NRM) applications. The aim was to select the most important factors influencing important NRM model outputs such as biogas production, digestate composition and pH, ammonium sulfate recovery, struvite production, product purity, particle size and density, air and chemical requirements, scaling potential, among others. Factors considered for GSA involve: 1) input waste stream characteristics, 2) process operational factors, and 3) kinetic parameters incorporated in the NRMs. Linear regression analyses on Monte Carlo simulation outputs were performed, and the impact of the standardized regression coefficients on major performance indicators was evaluated. Finally, based on the results, the paper describes the original use of GSA to obtain insight in complex nutrient recovery systems and to propose an optimal nutrient and energy recovery treatment train configuration that maximizes resource recovery and minimizes energy and chemical requirements.
本文介绍了使用全局敏感性分析(GSA)对营养回收模型(NRM)应用中的因素进行优先级排序。目的是选择对重要的 NRM 模型输出(如沼气产量、消化物组成和 pH 值、硫酸铵回收、鸟粪石产量、产品纯度、粒径和密度、空气和化学需求、结垢潜力等)影响最大的因素。用于 GSA 的因素包括:1)输入废物流特征,2)过程操作因素,以及 3)NRMs 中包含的动力学参数。对蒙特卡罗模拟输出进行线性回归分析,并评估标准化回归系数对主要性能指标的影响。最后,根据结果,本文描述了 GSA 的原始用途,以深入了解复杂的营养回收系统,并提出一种最佳的营养和能源回收处理路线配置,以最大限度地回收资源并最小化能源和化学需求。