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Use of artificial neuronal networks for prediction of the control parameters in the process of anaerobic digestion with thermal pretreatment

机译:人工神经网络在热预处理厌氧消化过程中预测控制参数的应用

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This article focuses on the analysis of the behavior patterns of the variables involved in the anaerobic digestion process. The objective is to predict the impact factor and the behavior pattern of the variables, i.e., temperature, pH, volatile solids (VS), total solids, volumetric load, and hydraulic residence time, considering that these are the control variables for the conservation of the different groups of anaerobic microorganisms. To conduct the research, samples of physicochemical sludge were taken from a water treatment plant in a poultry processing factory, and, then, the substrate was characterized, and a thermal pretreatment was used to accelerate the hydrolysis process. The anaerobic digestion process was analyzed in order to obtain experimental data of the control variables and observe their impact on the production of biogas. The results showed that the thermal pre-hydrolysis applied at 90 degrees C for 90min accelerated the hydrolysis phase, allowing a significant 52% increase in the volume of methane produced. An artificial neural network was developed, and it was trained with the database obtained by monitoring the anaerobic digestion process. The results obtained from the artificial neural network showed that there is an adjustment between the real values and the prediction of validation based on 60 samples with a 96.4% coefficient of determination, and it was observed that the variables with the major impact on the process were the loading rate and VS, with impact factors of 36% and 23%, respectively.
机译:本文着重分析厌氧消化过程中涉及的变量的行为模式。目的是预测变量的影响因子和行为模式,即温度,pH,挥发性固体(VS),总固体,体积负荷和水力停留时间,并考虑到这些是控制燃料的保存的控制变量。不同种类的厌氧微生物。为了进行研究,从家禽加工厂的水处理厂中提取了一些理化污泥样品,然后对底物进行了表征,并进行了热处理以加速水解过程。为了获得控制变量的实验数据并观察其对沼气生产的影响,对厌氧消化过程进行了分析。结果表明,在90摄氏度下进行90分钟的热预水解可加速水解阶段,使产生的甲烷量显着增加52%。开发了一个人工神经网络,并用通过监测厌氧消化过程获得的数据库对其进行了训练。从人工神经网络获得的结果表明,基于60个样品的96.4%的测定系数,真实值与验证预测之间存在调整,并且观察到对过程影响最大的变量是加载率和VS,影响因子分别为36%和23%。

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