Ahmed Fizar, Bijoy Md Hasan Imam, Hemal Habibur Rahman, Noori Sheak Rashed Haider
Embedded System Research Center, Department of Computer Science and Engineering, Daffodil International University, Dhaka, 1216, Bangladesh.
Heliyon. 2024 Sep 2;10(17):e37330. doi: 10.1016/j.heliyon.2024.e37330. eCollection 2024 Sep 15.
Water quality is a critical factor in shrimp farming, and the success of shrimp production is closely tied to the overall condition of the water. Challenges such as rapid population growth, environmental pollution, and global warming have led to a decline in fisheries production, particularly in the freshwater shrimp sector. This study addresses these challenges by monitoring multiple water parameters in shrimp farms, including pH, temperature, TDS, EC, and salinity. Traditional manual monitoring systems are known to be cumbersome, time-consuming, and lacking real-time capabilities. Consequently, a continuous and automated monitoring system becomes imperative for efficient and real-time metrics handling. This study introduces a real-time freshwater shrimp (locally named Galda, i.e., Macrobrachium Rosenbergii) farm monitoring system. The proposed system incorporates technologies such as microcontroller-based physical devices, IoT, cloud storage with service, machine learning models, and web applications. This integrated system enables users to remotely monitor shrimp farms and receive alerts when water parameters fall outside the optimal range. The physical implementation involves a set of sensors for collecting data on water metrics in shrimp farms. Regression analysis is employed for predicting next-day values, and a newly developed decision-based algorithm classifies shrimp production levels into low, medium, and maximum categories using six well-known classification algorithms. The system demonstrates a high success rate for next-day predictions (r of 0.94) by multiple linear regression, and the accuracy in classifying shrimp production is 97.84 % by Random Forest. Additionally, a 'Smart Aquaculture Analytics' web application has been developed, offering features such as real-time dashboards, historical data visualization, prediction and classification tools, and automated notifications to farmers in Bangladesh.
水质是对虾养殖中的一个关键因素,对虾生产的成功与水的整体状况密切相关。人口快速增长、环境污染和全球变暖等挑战导致渔业产量下降,特别是在淡水虾养殖领域。本研究通过监测对虾养殖场的多个水质参数来应对这些挑战,这些参数包括pH值、温度、总溶解固体(TDS)、电导率(EC)和盐度。传统的手动监测系统已知既繁琐又耗时,且缺乏实时功能。因此,一个连续且自动化的监测系统对于高效和实时的指标处理变得至关重要。本研究引入了一种实时淡水虾(当地名为加尔达,即罗氏沼虾)养殖场监测系统。所提出的系统整合了诸如基于微控制器的物理设备、物联网、带服务的云存储、机器学习模型和网络应用等技术。这个集成系统使用户能够远程监测对虾养殖场,并在水质参数超出最佳范围时接收警报。物理实现包括一组用于收集对虾养殖场水质指标数据的传感器。采用回归分析来预测次日的值,并且一种新开发的基于决策的算法使用六种知名分类算法将对虾生产水平分为低、中、高三个类别。该系统通过多元线性回归在次日预测方面显示出较高的成功率(r为0.94),并且通过随机森林对虾生产分类的准确率为97.84%。此外,还开发了一个“智能水产养殖分析”网络应用程序,提供诸如实时仪表盘、历史数据可视化、预测和分类工具以及向孟加拉国农民发送自动通知等功能。