Putra Ali Syahbana Matondang, W. Taparhudee, R. Yoonpundh, Roongparit Jongjaraunsuk
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引用次数: 0
摘要
在过去的几十年里,机器学习技术被广泛采用,尤其是在渔业领域。本研究旨在通过决策树算法确定机器学习技术的最佳实践,以降低在循环水养殖系统的室外土池中饲养的红罗非鱼(Oreochromis niloticus x Oreochromis mossambicus)鱼苗的死亡率。研究阶段从收集水质参数开始。以溶解氧(mg L-1)、pH、温度(°C)、总氨氮(mg L-1)、亚硝酸盐氮(mg L-1)、碱度(mg L-1)、透明度(cm)和死亡率(鱼日-1)的形式测量参数。数据建模采用10倍交叉验证。性能测量结果准确度为89.67%(±5.11%)(微平均值:89.60%),精密度为86.71%±18.02%(微平均值:80.00%),召回率为72.50%±24.86%(微平均值:71.79%),其中对水质参数影响最大的是亚硝酸盐氮(mg L-1)。基于本研究的结果表明,采用决策树算法进行数据分类,可以作为参考,确定养鱼户在采用循环水养殖系统的室外土池中降低红罗非鱼鱼种死亡率的决策或行动。
Water Quality Management Guidelines to Reduce Mortality Rate of Red Tilapia (Oreochromis niloticus x Oreochromis mossambicus) Fingerlings Raised in Outdoor Earthen Ponds with a Recirculating Aquaculture System Using Machine Learning Techniques
Machine learning techniques have been widely adopted over the last few decades, especially in fisheries. This study aimed to determine the best practice of machine learning techniques with a decision tree algorithm in reducing the mortality rate of red tilapia (Oreochromis niloticus x Oreochromis mossambicus) fingerlings raised in outdoor earthen ponds with a recirculating aquaculture system. The study phase begins with collecting water quality parameters. The parameters were measured in the form of dissolved oxygen (mg L-1), pH, temperature (°C), total ammonia nitrogen (mg L-1), nitrite-nitrogen (mg L-1), alkalinity (mg L-1), transparency (cm), and mortality rate (fish day-1). Data Modelling was carried out using 10-fold cross-validation. The results of the performance measurement obtained an accuracy of 89.67% with ± 5.11% (micro average: 89.60%), a precision of 86.71% ± 18.02% (micro average: 80.00%), and recall of 72.50% ± 24.86% (micro average: 71.79%), with the most influential water quality parameter being nitrite-nitrogen (mg L-1). Based on the results of this study show that data classification using a decision tree algorithm can be used as a reference to determine the decisions or actions of fish farmers in reducing the mortality rate of red tilapia fingerlings raised in outdoor earthen ponds with a recirculating aquaculture system.