智能池塘水质监测和养鱼综合推荐 Aquabot 系统

Md. Moniruzzaman Hemal, Atiqur Rahman, Nurjahan, Farhana Islam, Samsuddin Ahmed, M. S. Kaiser, Muhammad Raisuddin Ahmed
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引用次数: 0

摘要

物联网(IoT)、机器人技术和机器学习(ML)等前沿技术的整合有可能显著提高传统养鱼业的生产率和盈利能力。使用传统养鱼方法的农民会因劳动密集型的日程监测和护理、疾病和鱼类突然死亡而产生巨大的经济成本。另一个持续存在的问题是根据水质自动推荐鱼种。一方面,有效监测水质的突然变化可以最大限度地降低日常运营成本并提高鱼类产量,另一方面,准确的自动鱼类推荐器可以帮助养殖户选择有利可图的鱼类品种进行养殖。本文介绍的 AquaBot 是一种基于物联网的系统,可自动收集、监测和评估水质,并根据各种水质指标值推荐合适的养殖鱼类。我们设计了一个移动机器人来收集池塘周围的 pH 值、温度和浊度等参数值。为了便于监测,我们开发了网络和移动界面。为了根据水质分析和推荐合适的鱼类,我们在实时池塘水数据集上训练和测试了几种 ML 算法,如建议的自定义集合模型、随机森林 (RF)、支持向量机 (SVM)、决策树 (DT)、K-近邻 (KNN)、逻辑回归 (LR)、bagging、boosting 和堆叠。数据集经过了特征缩放和数据集平衡预处理。我们根据多个性能指标对算法进行了评估。在我们的实验中,我们提出的集合模型取得了最佳结果,准确率为 94%,精确率为 94%,召回率为 94%,F1 分数为 94%,MCC 为 93%,多类分类的 AUC 分数为最佳。最后,我们在网络界面中部署了表现最佳的模型,为养殖者提供适合养鱼的建议。预计我们提出的系统不仅能提高产量、节约成本,还能减少生产者的人工劳动时间和强度。
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An Integrated Smart Pond Water Quality Monitoring and Fish Farming Recommendation Aquabot System
The integration of cutting-edge technologies such as the Internet of Things (IoT), robotics, and machine learning (ML) has the potential to significantly enhance the productivity and profitability of traditional fish farming. Farmers using traditional fish farming methods incur enormous economic costs owing to labor-intensive schedule monitoring and care, illnesses, and sudden fish deaths. Another ongoing issue is automated fish species recommendation based on water quality. On the one hand, the effective monitoring of abrupt changes in water quality may minimize the daily operating costs and boost fish productivity, while an accurate automatic fish recommender may aid the farmer in selecting profitable fish species for farming. In this paper, we present AquaBot, an IoT-based system that can automatically collect, monitor, and evaluate the water quality and recommend appropriate fish to farm depending on the values of various water quality indicators. A mobile robot has been designed to collect parameter values such as the pH, temperature, and turbidity from all around the pond. To facilitate monitoring, we have developed web and mobile interfaces. For the analysis and recommendation of suitable fish based on water quality, we have trained and tested several ML algorithms, such as the proposed custom ensemble model, random forest (RF), support vector machine (SVM), decision tree (DT), K-nearest neighbor (KNN), logistic regression (LR), bagging, boosting, and stacking, on a real-time pond water dataset. The dataset has been preprocessed with feature scaling and dataset balancing. We have evaluated the algorithms based on several performance metrics. In our experiment, our proposed ensemble model has delivered the best result, with 94% accuracy, 94% precision, 94% recall, a 94% F1-score, 93% MCC, and the best AUC score for multi-class classification. Finally, we have deployed the best-performing model in a web interface to provide cultivators with recommendations for suitable fish farming. Our proposed system is projected to not only boost production and save money but also reduce the time and intensity of the producer’s manual labor.
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