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运用机器学习技术评估养鱼场水体的物理化学特性和重金属含量以分析疾病爆发情况。

Evaluation of disease outbreak in terms of physico-chemical characteristics and heavy metal load of water in a fish farm with machine learning techniques.

作者信息

Yilmaz Mesut, Çakir Mustafa, Oral Mükerrem Atalay, Kazanci Hüseyin Özgür, Oral Okan

机构信息

Akdeniz University, Faculty of Fisheries, Antalya, Türkiye.

İskenderun Technical University, Iskenderun Vocational School of Higher Education, İskenderun, Hatay, Türkiye.

出版信息

Saudi J Biol Sci. 2023 Apr;30(4):103625. doi: 10.1016/j.sjbs.2023.103625. Epub 2023 Mar 9.

Abstract

Diseases are quite common in fish farms because of changes in physico-chemical characteristics in the aquatic environment, and operational concerns, i.e., overstocking and feeding issues. In the present study, potential factors (water physico-chemical characteristics and heavy metal load) on the disease-causing state of the pathogenic bacteria and sp. were examined with machine learning techniques in a trout farm. Recording of physico-chemical characteristics of the water, fish sampling and bacteria identification were carried out at bimonthly intervals. A dataset was generated from the physico-chemical characteristics of the water and the occurrence of bacteria in the trout samples. The eXtreme Gradient Boosting (XGBoost) algorithm was used to determine the most important independent variables within the generated dataset. The most important seven features affecting bacteria occurrence were determined. The model creation process continued with these seven features. Three well-known machine learning techniques (Support Vector Machine, Logistic Regression and Naïve Bayes) were used to model the dataset. Consequently, all the three models have produced comparable results, and Support Vector Machine (93.3% accuracy) had the highest accuracy. Monitoring changes in the aquaculture environment and detecting situations causing significant losses through machine learning techniques have a great potential to support sustainable production.

摘要

由于水产养殖环境中理化特性的变化以及运营方面的问题,如过度放养和投喂问题,疾病在养鱼场中相当常见。在本研究中,利用机器学习技术在一个鳟鱼养殖场中研究了潜在因素(水体理化特性和重金属负荷)对病原菌和 sp.致病状态的影响。每隔两个月对水体的理化特性进行记录、对鱼进行采样并鉴定细菌。根据水体的理化特性以及鳟鱼样本中细菌的出现情况生成了一个数据集。使用极端梯度提升(XGBoost)算法来确定生成数据集中最重要的自变量。确定了影响细菌出现的七个最重要特征。基于这七个特征继续进行模型创建过程。使用三种著名的机器学习技术(支持向量机、逻辑回归和朴素贝叶斯)对数据集进行建模。结果,所有这三个模型都产生了可比的结果,支持向量机(准确率为93.3%)具有最高的准确率。通过机器学习技术监测水产养殖环境的变化并检测导致重大损失的情况,对于支持可持续生产具有巨大潜力。

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