Exploring stochastic differential equation for analyzing uncertainty in wastewater treatment plant-activated sludge modeling

Reza Shahidi Zonouz, V. Nourani, Mina Sayyah-Fard, H. Gokçekuş, Chang-Qing Ke
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Abstract

The management of wastewater treatment plant (WWTP) and the assessment of uncertainty in its design are crucial from an environmental engineering perspective. One of the key mechanisms in WWTP operation is activated sludge, which is related to the biological oxygen demand (BOD) parameter. In the modeling of BOD, the conventional approach utilizing ordinary differential equations (ODEs) fails to incorporate the stochastic nature of this parameter, leading to a considerable level of uncertainty in the design of WWTP. To address this issue, this study proposes a stochastic model that utilizes stochastic differential equations (SDEs) instead of ODE to simulate BOD activities of microorganisms and wastewater flow rate (Q). The SDEs and integral It̂o are solved using the Euler–Maruyama method for a period of 15 sequential days and the timespan of 2019–2020 for a WWTP in Tabriz City. SDE improves the design of WWTP facilities by identifying uncertainties and enhancing reliability. This, in turn, increases the reliability of the technical structures within the WWTP and improves the performance of its biological system. By considering the randomness of the problem, the proposed method significantly improves the results, with an enhancement of 11.47 and 10.11% for the BOD and Q models, respectively.
探索用于分析污水处理厂活性污泥模型不确定性的随机微分方程
从环境工程的角度来看,污水处理厂(WWTP)的管理及其设计中的不确定性评估至关重要。污水处理厂运行的关键机制之一是活性污泥,它与生物需氧量(BOD)参数有关。在建立 BOD 模型时,传统的常微分方程(ODE)方法未能考虑到该参数的随机性,从而导致污水处理厂设计中存在相当程度的不确定性。为解决这一问题,本研究提出了一种随机模型,利用随机微分方程 (SDE) 代替 ODE 来模拟微生物的 BOD 活性和废水流量 (Q)。使用 Euler-Maruyama 方法求解了大不里士市一家污水处理厂 2019-2020 年期间 15 个连续日的 SDE 和积分 It̂o。SDE 通过识别不确定性和提高可靠性来改进污水处理厂设施的设计。这反过来又提高了污水处理厂技术结构的可靠性,并改善了其生物系统的性能。通过考虑问题的随机性,所提出的方法显著改善了结果,BOD 和 Q 模型分别提高了 11.47% 和 10.11%。
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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