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One-dimensional modeling of secondary settling tanks.

机译:二次沉降池的一维建模。

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摘要

Sedimentation is one of the most important processes that determine the performance of the activated sludge process, and secondary settling tanks (SSTs) have been investigated with the mathematical models for design and operation optimization. However, the practical application of SST models still remains a challenge due to several difficulties, such as the lack of efficient (high accuracy and low computation cost) solution techniques and reliable model calibration strategies. To facilitate the practical application of SST models, this dissertation focuses on the one-dimensional (1-D) modeling of SSTs, including the numerical analysis to introduce and select efficient solution techniques, sensitivity and practical identifiability analysis to reliably calibrate the 1-D SST models, and evaluation of the implications of SST modeling on the design and control of waste water treatment plants.;To improve the understanding of 1-D modeling of SSTs, this dissertation provides a comprehensive literature review of the batch settling methodology and the flux theory, which played a significant role in the early stage of SST investigation. The literature review also contains an explicit introduction of the established 1-D SST models, including the relevant physical laws, various settling behaviors, the constitutive functions, available solution techniques and calibration strategies.;As the only available method for analytical solution development of ideal continuous settling model, the method of characteristics has been successfully implemented to investigate the dynamics of SST for various solids loading conditions. This dissertation also introduced the Yee-Roe-Davis method, which able to capture solution discontinuities based on gradient, thus providing numerical solutions with second-order accuracy. By using the method of characteristics as a reference, the convergence analysis of Methods Simplified-Godunov, Godunov and Yee-Roe-Davis shows that all are reliable, since they are able to provide arbitrarily close approximations to the reference solutions as discretization is refined. For a given discretization level, the Yee-Roe-Davis method is most efficient in reducing error, and provides the most accurate approximations. However, this advantage of high accuracy of the Yee-Roe-Davis method is at the cost of larger computation time and coding complexity.;To facilitate model calibration, the important parameters for 1-D SST model calibration were identified under non-ideal flow and settling conditions using global sensitivity analysis (GSA). This dissertation also demonstrated that reliable reduction of 1-D SST models can be achieved based on GSA results; for example under the bulking condition, the hindered-compression-dispersion model can be reduced to the hindered-dispersion model without impacting model accuracy. The model uncertainty analysis efficiently evaluates model reduction reliability. In terms of developing batch settling methodology for reliable model calibration, this dissertation found that the hindered settling parameters are more influential in situations where only batch settling data are available, while the sensitivity to compression parameters can be greatly increased if concentration profile observations are included. The practical identifiability analysis further showed that parameter estimates obtained from data sets that only include batch settling data or the concentration profiles cannot generally predict concentration profiles and batch settling curve observations, respectively. Because of the application of local sensitivity functions, the parameter identifiability analysis can be sensitive to the initial parameter value selection. Estimates obtained by identifiable parameter subsets estimation are conditional on the values of fixed parameters.;From the view of optimizing the process design and control, this dissertation demonstrated that the bioreactor and SST should be designed as a whole, and a safety constraint can be introduced in the design process to greatly improve the system's efficiency and reliability. A comprehensive selection of the designed alternatives should consider three aspects: economic plausibility, contaminant removal efficiency, and system robustness. Least-cost points can usually be attained, but their locations will vary depending on the weighting of the relative cost factor.
机译:沉降是决定活性污泥工艺性能的最重要过程之一,并且已经使用数学模型对二级沉降池(SST)进行了研究,以进行设计和操作优化。但是,由于一些困难,例如缺乏有效的(高精度和低计算成本)解决方案技术以及可靠的模型校准策略,SST模型的实际应用仍然是一个挑战。为了方便SST模型的实际应用,本文着重于SST的一维(1-D)建模,包括数值分析以引入和选择有效的求解技术,灵敏度和实用的可识别性分析以可靠地校准1-D。 SST模型,以及对SST建模对废水处理厂的设计和控制的意义的评估。为了提高对SST的一维建模的理解,本论文对批量沉降方法和通量进行了全面的文献综述。理论,在SST调查的早期阶段起了重要作用。文献综述还明确介绍了已建立的一维SST模型,包括相关的物理定律,各种沉降行为,本构函数,可用的求解技术和校准策略。;作为理想的解析解决方案开发的唯一可用方法在连续沉降模型中,已经成功地采用了特征方法来研究各种固体载荷条件下SST的动力学。本文还介绍了Yee-Roe-Davis方法,该方法能够基于梯度捕获解的不连续性,从而提供具有二阶精度的数值解。通过使用特征方法作为参考,Simplified-Godunov,Godunov和Yee-Roe-Davis方法的收敛性分析表明,所有方法都是可靠的,因为随着离散化的进行,它们能够提供与参考解任意近似的近似值。对于给定的离散化级别,Yee-Roe-Davis方法在减少误差方面最有效,并且提供了最准确的近似值。然而,Yee-Roe-Davis方法具有高精度的优点是以较大的计算时间和编码复杂度为代价的。为了便于模型校准,在非理想流下确定了用于1-D SST模型校准的重要参数和使用全球敏感性分析(GSA)的解决条件。本文还证明了基于GSA的结果可以可靠地减少一维SST模型。例如,在膨胀条件下,受阻压缩模型可以简化为受阻分散模型,而不会影响模型的准确性。模型不确定性分析可有效评估模型简化的可靠性。就开发用于可靠模型校准的批次沉降方法而言,本论文发现,在仅可获得批次沉降数据的情况下,受阻沉降参数的影响更大,而如果包括浓度分布观测资料,则对压缩参数的敏感性会大大提高。实际的可识别性分析进一步表明,从仅包括批次沉降数据或浓度分布的数据集获得的参数估计值通常不能分别预测浓度分布和批次沉降曲线的观测值。由于局部灵敏度函数的应用,参数可识别性分析可能对初始参数值选择很敏感。通过可识别的参数子集估计获得的估计值取决于固定参数的值。;从优化过程设计和控制的角度出发,本文表明生物反应器和SST应该整体设计,并且可以引入安全约束在设计过程中大大提高了系统的效率和可靠性。对设计方案的全面选择应考虑三个方面:经济上的合理性,污染物去除效率和系统的坚固性。通常可以达到最低成本点,但是它们的位置将根据相对成本因子的权重而变化。

著录项

  • 作者

    Li, Ben.;

  • 作者单位

    University of California, Los Angeles.;

  • 授予单位 University of California, Los Angeles.;
  • 学科 Civil engineering.;Environmental engineering.;Applied mathematics.
  • 学位 Ph.D.
  • 年度 2016
  • 页码 240 p.
  • 总页数 240
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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