Optimisation of Small-Scale Aquaponics Systems Using Artificial Intelligence and the IoT: Current Status, Challenges, and Opportunities

Abdul Aziz Channa, K. Munir, Mark Hansen, Muhammad Fahim Tariq
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Abstract

Environment changes, water scarcity, soil depletion, and urbanisation are making it harder to produce food using traditional methods in various regions and countries. Aquaponics is emerging as a sustainable food production system that produces fish and plants in a closed-loop system. Aquaponics is not dependent on soil or external environmental factors. It uses fish waste to fertilise plants and can save up to 90–95% water. Aquaponics is an innovative system for growing food and is expected to be very promising, but it has its challenges. It is a complex ecosystem that requires multidisciplinary knowledge, proper monitoring of all crucial parameters, and high maintenance and initial investment costs to build the system. Artificial intelligence (AI) and the Internet of Things (IoT) are key technologies that can overcome these challenges. Numerous recent studies focus on the use of AI and the IoT to automate the process, improve efficiency and reliability, provide better management, and reduce operating costs. However, these studies often focus on limited aspects of the system, each considering different domains and parameters of the aquaponics system. This paper aims to consolidate the existing work, identify the state-of-the-art use of the IoT and AI, explore the key parameters affecting growth, analyse the sensing and communication technologies employed, highlight the research gaps in this field, and suggest future research directions. Based on the reviewed research, energy efficiency and economic viability were found to be a major bottleneck of current systems. Moreover, inconsistencies in sensor selection, lack of publicly available data, and the reproducibility of existing work were common issues among the studies.
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利用人工智能和物联网优化小型鱼菜共生系统:现状、挑战和机遇
环境变化、水资源匮乏、土壤耗竭和城市化正在使各个地区和国家更难使用传统方法生产粮食。鱼菜共生正在成为一种在闭环系统中生产鱼和植物的可持续食品生产系统。鱼菜共生不依赖土壤或外部环境因素。鱼菜共生利用鱼类排泄物为植物施肥,可节水 90-95%。鱼菜共生是一种创新的食物种植系统,预计前景非常广阔,但也存在挑战。它是一个复杂的生态系统,需要多学科知识、对所有关键参数的适当监控,以及高昂的维护和初始投资成本来构建系统。人工智能(AI)和物联网(IoT)是能够克服这些挑战的关键技术。最近的许多研究都侧重于利用人工智能和物联网来实现流程自动化、提高效率和可靠性、提供更好的管理并降低运营成本。然而,这些研究往往只关注系统的有限方面,各自考虑鱼菜共生系统的不同领域和参数。本文旨在整合现有工作,确定物联网和人工智能的最新应用,探索影响生长的关键参数,分析所采用的传感和通信技术,强调该领域的研究空白,并提出未来的研究方向。根据回顾的研究发现,能源效率和经济可行性是当前系统的主要瓶颈。此外,传感器选择不一致、缺乏可公开获得的数据以及现有工作的可重复性也是这些研究的共同问题。
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