class='kwd-title'>Method name: A Global, Multi O'/> Accurate and reliable estimation of kinetic parameters for environmental engineering applications: A global multi objective Bayesian optimization approach
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Accurate and reliable estimation of kinetic parameters for environmental engineering applications: A global multi objective Bayesian optimization approach

机译:准确可靠地估算环境工程应用动力学参数:一种全局多目标贝叶斯优化方法

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摘要

class="kwd-title">Method name: A Global, Multi Objective, Bayesian Optimization Approach for Parameter Estimation of Unstructured Kinetic Models class="kwd-title">Keywords: Parameter estimation, Model calibration, Unstructured kinetic models, Global optimization, Bioremediation, Water and wastewater treatment class="head no_bottom_margin" id="abs0010title">AbstractAccurate and reliable predictions of bacterial growth and metabolism from unstructured kinetic models are critical to the proper operation and design of engineered biological treatment and remediation systems. As such, parameter estimation has progressed into a routine challenge in the field of Environmental Engineering. Among the main issues identified with parameter estimation, the model-data calibration approach is a crucial, yet an often overlooked and difficult optimization problem. Here, a novel and rigorous global, multi objective, and fully Bayesian optimization approach that overcomes challenges associated with multi-variate, sparse and noisy data, as well as highly non-linear model structures commonly encountered in Environmental Engineering practice is presented. This optimization approach allows an improved definition and targeting of the compromise solution space for all multivariate problems, allowing efficient convergence, and a Bayesian component to thoroughly explore parameter and model prediction uncertainty. This global optimization approach outperformed, in terms of parameter accuracy and precision, standard, local non-linear regression routines and overcomes issues associated with premature convergence and addresses overfitting of different variables in the calibration process. class="first-line-outdent" id="lis0005">
  • • A sequential single, multi-objective, and Bayesian optimization workflow was developed to accurately and reliably estimate unstructured kinetic model parameters.
  • • The global, single objective approach defines the global optimum (the best compromise solution) and “extreme” parameter solutions for each variable, while the global, multi-objective approach confirms the “best” compromise solution space for the Bayesian search to target and convergence is assessed using the single objective results.
  • • The Approximate Bayesian Computational approach fully explores parameter and model prediction uncertainty targeting the compromise solution space previously identified.
  • 机译:<!-fig ft0-> <!-fig @ position =“ anchor” mode =文章f4-> <!-fig mode =“ anchred” f5-> <!-fig / graphic | fig / alternatives / graphic mode =“ anchored” m1-> class =“ kwd-title”>方法名称:一种用于非结构动力学模型参数估计的全局多目标贝叶斯优化方法 class = “ kwd-title”>关键字:参数估计,模型校准,非结构动力学模型,全局优化,生物修复,水和废水处理 class =“ head no_bottom_margin” id =“ abs0010title”>摘要非结构化动力学模型对细菌生长和代谢的准确和可靠的预测对于工程化生物处理和修复系统的正确运行和设计至关重要。因此,参数估计已成为环境工程领域的常规挑战。在通过参数估计确定的主要问题中,模型数据校准方法是至关重要的,但也是经常被忽视且困难的优化问题。在这里,提出了一种新颖而严谨的全局,多目标和完全贝叶斯优化方法,该方法克服了与多变量,稀疏和嘈杂数据以及环境工程实践中常见的高度非线性模型结构相关的挑战。这种优化方法允许针对所有多变量问题的折衷解决方案空间进行改进的定义和目标定位,从而实现有效的收敛,并且贝叶斯组件可以彻底探索参数和模型预测的不确定性。在参数准确性和精度方面,这种全局优化方法优于标准的局部非线性回归例程,并克服了与过早收敛相关的问题,并解决了校准过程中不同变量的过拟合问题。 class =“ first-line-outdent “ id =” lis0005“> <!-list-behavior =简单的前缀-word = mark-type = none max-label-size = 9->
  • •连续的单个,多个目标,开发了贝叶斯优化工作流以准确可靠地估计非结构动力学模型参数。
  • •全局,单一目标方法定义了全局最优(最佳折衷解决方案)和“极限”。 ”中的每个变量的参数解,而全局的多目标方法则确定了用于贝叶斯搜索目标和收敛的“最佳”折衷解空间,并使用单个目标结果进行了评估。
  • •近似贝叶斯计算a pproach充分探索了针对先前确定的折衷解决方案空间的参数和模型预测不确定性。
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