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Data Driven Models as A Powerful Tool to Simulate Emerging Bioprocesses: An Artificial Neural Network Model to Describe Methanotrophic Microbial Activity

机译:数据驱动模型作为模拟新兴生物处理的强大工具:一种描述甲脂肪植物微生物活动的人工神经网络模型

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The vision for sewage treatment plants is being revised and they are no longer considered as pollutant removing facilities but rather as water resources recovery facilities (WRRFs). However, the newly adopted bioprocesses in WRRFs are not fully understood from the microbiological and kinetic perspectives. Thus, large variations in the outputs of the kinetics-based numerical models are evident. In this research, data driven models (DDM) are proposed as a robust alternative towards modelling emerging bioprocesses. Methanotrophs are multi-use bacterium that can play key role in revalorizing the biogas in WRRFs, and thus, a Multi-Layer Perceptron Artificial Neural Network (ANN) model was developed and optimized to simulate the cultivation of mixed methanotrophic culture considering multiple environmental conditions. The influence of the input variables on the outputs was assessed through developing and analyzing several different ANN model configurations. The constructed ANN models demonstrate that the indirect and complex relationships between the inputs and outputs can be accurately considered prior to the full understanding of the physical or mathematical processes. Furthermore, it was found that ANN models can be used to better understand and rank the influence of different input variables (i.e., the physical parameters that influence methanotrophs) on the microbial activity. Methanotrophic-based bioprocesses are complex due to the interactions between the gaseous, liquid and solid phases. Yet, for the first time, this study successfully utilized DDM to model methanotrophic-based bioprocesses. The findings of this research suggest that DDM are a powerful, alternative modeling tool that can be used to model emerging bioprocesses towards their implementation in WRRFs.
机译:正在修订污水处理厂的愿景,它们不再被视为污染物去除设施,而是作为水资源恢复设施(WRRFS)。然而,从微生物和动力学的角度来看,WRRF中的新采用的生物过程尚不完全理解。因此,显而易见的基于动力学的数值模型的输出的大变化。在本研究中,提出了数据驱动模型(DDM)作为朝向建模出现的生物处理的稳健替代方案。甲基丙醇是多用菌,可以在重新控制WRRF中的沼气中发挥关键作用,因此开发并优化了考虑到多种环境条件的混合甲型营养培养的培养的多层。通过开发和分析几种不同的ANN模型配置,评估输入变量对输出的影响。构造的ANN模型表明,在全面了解物理或数学过程之前,可以准确地考虑输入和输出之间的间接和复杂关系。此外,发现ANN模型可用于更好地理解和排列不同输入变量的影响(即影响甲蛋白的物理参数)对微生物活性。由于气态,液体和固相之间的相互作用,基于甲脂肪酸的生物处理是复杂的。然而,这项研究首次成功地利用了DDM来模拟基于甲蛋白酶的生物处理。该研究的结果表明DDM是一种功能强大的替代建模工具,可用于模拟新兴生物处理朝着他们在WRRF中的实现。

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