An evolutionary approach to dissolved oxygen mathematical modeling: A case study of the Klamath River

IF 4.3 2区 农林科学 Q2 AGRICULTURAL ENGINEERING Aquacultural Engineering Pub Date : 2024-08-01 Epub Date: 2024-05-08 DOI:10.1016/j.aquaeng.2024.102428
W.K. Wong , Dini Fronitasari , Filbert H. Juwono , Jeffery T.H. Kong
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Abstract

Aquaculture has emerged as a crucial sector in many countries. In the Recirculating Aquaculture System (RAS), Dissolved Oxygen (DO) levels are critical to the health of aquatic animals. As DO sensors are costly, a number of studies have proposed a soft sensor technique utilizing machine learning for estimating DO levels in water. However, the existing research work mainly focuses on black-box approaches, which do not provide numerical analysis between the DO levels and the related parameters. To solve this issue, a sequential Genetic Programming (GP) approach with an evolutionary refinement method is proposed to generate a mathematical expression that represents DO levels in water. In particular, a coarse mathematical model is generated using GP and subsequently fine-tuned using the Covariance Matrix Adaptation Evolution Strategy (CMA-ES). As a study case, the Klamath River dataset is used to generate the model. The evaluation of our proposed method uses datasets from both the Klamath River and the Fanno Creek. Two models are generated in this paper; one model uses six features, while the other only employs three. The results indicate that the model with six features exhibits relatively higher accuracy. However, it is worth noting that a smaller dataset of features is also capable of achieving generalization of the model.

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进化法溶解氧数学建模:克拉马斯河案例研究
水产养殖已成为许多国家的一个重要行业。在循环水养殖系统(RAS)中,溶解氧(DO)水平对水生动物的健康至关重要。由于溶解氧传感器成本高昂,许多研究提出了一种利用机器学习估算水中溶解氧水平的软传感器技术。然而,现有的研究工作主要集中在黑箱方法上,无法提供溶解氧水平与相关参数之间的数值分析。为了解决这个问题,我们提出了一种带有进化细化方法的顺序遗传编程(GP)方法,以生成代表水中溶解氧水平的数学表达式。具体而言,使用 GP 生成粗略的数学模型,然后使用协方差矩阵适应进化策略(CMA-ES)进行微调。作为一个研究案例,克拉玛依河数据集被用来生成模型。对我们提出的方法的评估使用了克拉玛斯河和 Fanno Creek 的数据集。本文生成了两个模型,其中一个模型使用了六个特征,而另一个模型只使用了三个特征。结果表明,使用六个特征的模型准确率相对较高。但值得注意的是,较小的特征数据集也能实现模型的泛化。
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来源期刊
Aquacultural Engineering
Aquacultural Engineering 农林科学-农业工程
CiteScore
8.60
自引率
10.00%
发文量
63
审稿时长
>24 weeks
期刊介绍: Aquacultural Engineering is concerned with the design and development of effective aquacultural systems for marine and freshwater facilities. The journal aims to apply the knowledge gained from basic research which potentially can be translated into commercial operations. Problems of scale-up and application of research data involve many parameters, both physical and biological, making it difficult to anticipate the interaction between the unit processes and the cultured animals. Aquacultural Engineering aims to develop this bioengineering interface for aquaculture and welcomes contributions in the following areas: – Engineering and design of aquaculture facilities – Engineering-based research studies – Construction experience and techniques – In-service experience, commissioning, operation – Materials selection and their uses – Quantification of biological data and constraints
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