An assessment of the uncertainties of methane generation in landfills.

IF 2.2 4区 环境科学与生态学 Q3 ENGINEERING, ENVIRONMENTAL
Mohammad Ali Rasouli, Mehran Karimpour-Fard, Sandro Lemos Machado
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引用次数: 0

Abstract

The accurate estimation of methane generation in landfills is crucial for effective greenhouse gas management and energy recovery, requiring site-specific assessments due to the inherent variability in waste composition and properties before and after disposal. This study investigates the uncertainties associated with methane generation predictions by employing a combination of stoichiometric methods, Biochemical Methane Potential (BMP) assays, and Bayesian inference. Fresh and aged (1-year-old and 5-year-old) samples collected in the tropical Saravan dump site in Gilan, Iran, were used to evaluate the waste's methane generation potential and degradation rate in the field. The average methane generation potential (L0) for fresh samples by the stoichiometric simplified method was 83.4 m3 CH4/Mg MSW, which decreased to 44.8 m3 CH4/Mg MSW and 32.8 m3 CH4/Mg MSW for 1-year-old and 5-year-old waste samples, respectively. The BMP tests led to similar results, further validating the decreasing trend of L0 with waste age. The Bayesian approach combined with MCMC simulations revealed that uncertainty in methane estimation is highest in the early years and gradually declines as waste stabilizes, improving long-term prediction accuracy. By integrating sensitivity analysis with Bayesian inference, this study advances uncertainty quantification approaches, addressing limitations in existing landfill methane estimation models. This innovative framework identifies the most influential parameters, providing a robust foundation for refining predictive models. The decay rate constant (k) was determined to be 0.26 year-1, aligned with the guidelines for humid areas. Notably, the highest standard deviation in methane estimation was observed during the initial post-disposal years, reaching 1,384,751.5 m3 CH4/year using the BMP method and 2,266,762 m3 CH4/year with the simplified method, highlighting how early-stage variability impacts overall methane predictions, emphasizing the critical need for site-specific data. These insights contribute to improved landfill gas management strategies and support decision-making for sustainable waste management practices.Implications: This research underscores the importance of integrating methodologies like stoichiometric analysis, BMP assays, and Bayesian inference to enhance methane generation estimates from landfills. A significant outcome is the recognition of the inherent uncertainty in key parameters, particularly ultimate methane potential and decay rate constant. By employing Bayesian inference and Monte Carlo simulation, we quantified the uncertainty associated with these parameters and analyzed its influence on methane production predictions. The findings reveal that different methodologies yield varying levels of uncertainty, highlighting the necessity for a comprehensive framework that utilizes site-specific data. This approach not only improves the reliability of methane estimates but also informs greenhouse gas management strategies, fostering more effective decision-making in waste management practices.

垃圾填埋场产生甲烷的不确定性评估。
准确估计垃圾填埋场产生的甲烷对于有效的温室气体管理和能源回收至关重要,由于废物成分和性质在处理前后具有内在的可变性,因此需要对具体地点进行评估。本研究通过结合化学计量学方法、生化甲烷势(BMP)测定和贝叶斯推断,研究了与甲烷生成预测相关的不确定性。在伊朗吉兰的热带Saravan垃圾场收集的新鲜和陈年(1年和5年)样品用于评估废物的甲烷产生潜力和现场降解率。通过化学计量简化法,新鲜样品的平均甲烷生成势(L0)为83.4 m3 CH4/Mg MSW, 1年和5年的垃圾样品的平均甲烷生成势(L0)分别降至44.8 m3 CH4/Mg MSW和32.8 m3 CH4/Mg MSW。BMP试验结果相似,进一步验证了L0随废龄降低的趋势。贝叶斯方法结合MCMC模拟表明,甲烷估算的不确定性在早期最高,随着废物的稳定逐渐降低,提高了长期预测的准确性。通过将敏感性分析与贝叶斯推理相结合,本研究提出了不确定性量化方法,解决了现有垃圾填埋场甲烷估算模型的局限性。这个创新的框架确定了最具影响力的参数,为改进预测模型提供了坚实的基础。衰减速率常数(k)确定为0.26年-1,与潮湿地区的指南一致。值得注意的是,在处置后的最初几年中,甲烷估计的标准偏差最高,BMP方法达到1,384,751.5 m3 CH4/年,简化方法达到2,266,762 m3 CH4/年,这突出了早期变率如何影响总体甲烷预测,强调了对特定地点数据的迫切需求。这些见解有助于改善垃圾填埋气体管理战略,并支持可持续废物管理实践的决策。意义:本研究强调了整合化学计量学分析、BMP分析和贝叶斯推断等方法来提高垃圾填埋场甲烷生成估计的重要性。一个重要的成果是认识到关键参数的固有不确定性,特别是最终甲烷势和衰变速率常数。通过贝叶斯推理和蒙特卡罗模拟,量化了这些参数的不确定性,并分析了其对甲烷产量预测的影响。研究结果表明,不同的方法产生不同程度的不确定性,强调了利用特定地点数据的综合框架的必要性。这种方法不仅提高了甲烷估算的可靠性,而且为温室气体管理战略提供了信息,促进了废物管理实践中更有效的决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of the Air & Waste Management Association
Journal of the Air & Waste Management Association ENGINEERING, ENVIRONMENTAL-ENVIRONMENTAL SCIENCES
CiteScore
5.00
自引率
3.70%
发文量
95
审稿时长
3 months
期刊介绍: The Journal of the Air & Waste Management Association (J&AWMA) is one of the oldest continuously published, peer-reviewed, technical environmental journals in the world. First published in 1951 under the name Air Repair, J&AWMA is intended to serve those occupationally involved in air pollution control and waste management through the publication of timely and reliable information.
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