Department of Civil, Environmental and Architectural Engineering, University of Colorado, 428 UCB, Boulder, CO 80309, USA.
Department of Civil, Environmental and Architectural Engineering, University of Colorado, 428 UCB, Boulder, CO 80309, USA; Cooperative Institute for Research in Environmental Sciences, University of Colorado, CIRES Building, Rm 318, Boulder, CO 80309, USA.
Sci Total Environ. 2017 Nov 15;598:249-257. doi: 10.1016/j.scitotenv.2017.03.236. Epub 2017 Apr 22.
A regression tree-based diagnostic approach is developed to evaluate factors affecting US wastewater treatment plant compliance with ammonia discharge permit limits using Discharge Monthly Report (DMR) data from a sample of 106 municipal treatment plants for the period of 2004-2008. Predictor variables used to fit the regression tree are selected using random forests, and consist of the previous month's effluent ammonia, influent flow rates and plant capacity utilization. The tree models are first used to evaluate compliance with existing ammonia discharge standards at each facility and then applied assuming more stringent discharge limits, under consideration in many states. The model predicts that the ability to meet both current and future limits depends primarily on the previous month's treatment performance. With more stringent discharge limits predicted ammonia concentration relative to the discharge limit, increases. In-sample validation shows that the regression trees can provide a median classification accuracy of >70%. The regression tree model is validated using ammonia discharge data from an operating wastewater treatment plant and is able to accurately predict the observed ammonia discharge category approximately 80% of the time, indicating that the regression tree model can be applied to predict compliance for individual treatment plants providing practical guidance for utilities and regulators with an interest in controlling ammonia discharges. The proposed methodology is also used to demonstrate how to delineate reliable sources of demand and supply in a point source-to-point source nutrient credit trading scheme, as well as how planners and decision makers can set reasonable discharge limits in future.
基于回归树的诊断方法用于评估影响美国污水处理厂氨排放许可证限值合规性的因素,该方法使用了 2004-2008 年期间 106 个市政处理厂的每月排放报告 (DMR) 数据。用于拟合回归树的预测变量是使用随机森林选择的,包括前一个月的出水氨、进水流量和工厂能力利用率。该树模型首先用于评估每个工厂现有的氨排放标准的合规性,然后在许多州考虑更严格的排放限制的情况下应用。该模型预测,满足当前和未来限制的能力主要取决于前一个月的处理性能。随着更严格的排放限制,预测的氨浓度相对于排放限制增加。内部验证表明,回归树可以提供>70%的中位数分类准确性。使用运行中的污水处理厂的氨排放数据对回归树模型进行验证,能够准确预测观察到的氨排放类别约 80%的时间,表明回归树模型可用于预测单个处理厂的合规性,为有兴趣控制氨排放的公用事业和监管机构提供实际指导。所提出的方法还用于演示如何在点源到点源营养物信用交易计划中划定可靠的需求和供应源,以及规划者和决策者如何在未来设定合理的排放限制。