School of Environment, Tsinghua University, 1 Qinghuayuan, Beijing 100084, China.
Department of Computer Science and Technology, Tsinghua University, 1 Qinghuayuan, Beijing 100084, China.
Environ Sci Technol. 2023 Dec 5;57(48):19860-19870. doi: 10.1021/acs.est.3c06482. Epub 2023 Nov 17.
Electricity consumption and sludge yield (SY) are important indirect greenhouse gas (GHG) emission sources in wastewater treatment plants (WWTPs). Predicting these byproducts is crucial for tailoring technology-related policy decisions. However, it challenges balancing mass balance models and mechanistic models that respectively have limited intervariable nexus representation and excessive requirements on operational parameters. Herein, we propose integrating two machine learning models, namely, gradient boosting tree (GBT) and deep learning (DL), to precisely pointwise model electricity consumption intensity (ECI) and SY for WWTPs in China. Results indicate that GBT and DL are capable of mining massive data to compensate for the lack of available parameters, providing a comprehensive modeling focusing on operation conditions and designed parameters, respectively. The proposed model reveals that lower ECI and SY were associated with higher treated wastewater volumes, more lenient effluent standards, and newer equipment. Moreover, ECI and SY showed different patterns when influent biochemical oxygen demand is above or below 100 mg/L in the anaerobic-anoxic-oxic process. Therefore, managing ECI and SY requires quantifying the coupling relationships between biochemical reactions instead of isolating each variable. Furthermore, the proposed models demonstrate potential economic-related inequalities resulting from synergizing water pollution and GHG emissions management.
电力消耗和污泥产量(SY)是污水处理厂(WWTP)中重要的间接温室气体(GHG)排放源。预测这些副产品对于制定与技术相关的政策决策至关重要。然而,这面临着平衡质量平衡模型和机理模型的挑战,这两种模型分别对变量间关系的表示有限,且对操作参数的要求过高。在此,我们提出将两种机器学习模型(梯度提升树(GBT)和深度学习(DL))集成,以精确地对中国 WWTP 的电力消耗强度(ECI)和 SY 进行逐点建模。结果表明,GBT 和 DL 能够挖掘大量数据来弥补可用参数的不足,分别提供了全面的侧重于操作条件和设计参数的建模。所提出的模型表明,较低的 ECI 和 SY 与更高的处理污水量、更宽松的出水标准和更新的设备有关。此外,在厌氧-缺氧-好氧工艺中,当进水生化需氧量(BOD)高于或低于 100mg/L 时,ECI 和 SY 呈现出不同的模式。因此,管理 ECI 和 SY 需要量化生化反应之间的耦合关系,而不是孤立地处理每个变量。此外,所提出的模型展示了协同水污染和 GHG 排放管理可能带来的潜在经济不平等。