用于预测和自适应控制微藻培养赛道反应器 pH 值的新型数据驱动模型

IF 4.5 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS
M. Caparroz , J.L. Guzmán , M. Berenguel , F.G. Acién
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引用次数: 0

摘要

这项研究提出了一种新的数据驱动模型,用于估算和预测淡水赛道光生物反应器中的 pH 动态变化。该模型完全基于从反应器中测量到的数据,并将 pH 动态分为两种不同的行为。一种行为是由微藻类的光合作用现象引起的 pH 值变化;另一种行为是出于控制目的向培养基中注入 CO 的影响。此外,还观察到模型参数全天都在变化,这取决于天气条件和反应器状态。因此,还开发了一种决策树算法,根据系统的测量变量(如太阳辐射、介质温度和介质液位)来捕捉参数变化。在一个半工业滚道反应器中,对 10 个月内 100 多天的数据集进行了验证,涵盖了各种天气和系统情况。此外,提出的模型还被用于设计一种自适应控制算法,该算法也经过了实验测试,并与传统的固定参数控制方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel data-driven model for prediction and adaptive control of pH in raceway reactor for microalgae cultivation

This work proposes a new data-driven model to estimate and predict pH dynamics in freshwater raceway photobioreactors. The resulting model is based purely on data measured from the reactor and divides the pH dynamics into two different behaviors. One behavior is described by the variation of pH due to the photosynthesis phenomena made by microalgae; and the other comes from the effect of CO2 injections into the medium for control purposes. Moreover, it was observed that the model parameters vary throughout the day depending on the weather conditions and reactor status. Thus, a decision tree algorithm is also developed to capture the parameter variation based on measured variables of the system, such as solar radiation, medium temperature, and medium level. The proposed model has been validated for a data set of more than 100 days during 10 months in a semi-industrial raceway reactor, covering a wide range of weather and system scenarios. Additionally, the proposed model was used to design an adaptive control algorithm which was also experimentally tested and compared with a classical fixed parameter control approach.

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来源期刊
New biotechnology
New biotechnology 生物-生化研究方法
CiteScore
11.40
自引率
1.90%
发文量
77
审稿时长
1 months
期刊介绍: New Biotechnology is the official journal of the European Federation of Biotechnology (EFB) and is published bimonthly. It covers both the science of biotechnology and its surrounding political, business and financial milieu. The journal publishes peer-reviewed basic research papers, authoritative reviews, feature articles and opinions in all areas of biotechnology. It reflects the full diversity of current biotechnology science, particularly those advances in research and practice that open opportunities for exploitation of knowledge, commercially or otherwise, together with news, discussion and comment on broader issues of general interest and concern. The outlook is fully international. The scope of the journal includes the research, industrial and commercial aspects of biotechnology, in areas such as: Healthcare and Pharmaceuticals; Food and Agriculture; Biofuels; Genetic Engineering and Molecular Biology; Genomics and Synthetic Biology; Nanotechnology; Environment and Biodiversity; Biocatalysis; Bioremediation; Process engineering.
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