Application of artificial intelligence in aquaculture – Recent developments and prospects

IF 4.3 2区 农林科学 Q2 AGRICULTURAL ENGINEERING
Subha M. Roy , Mirza Masum Beg , Suraj Kumar Bhagat , Durga Charan , C.M. Pareek , Sanjib Moulick , Taeho Kim
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引用次数: 0

Abstract

Artificial intelligence (AI) offers innovative and efficient solutions to contemporary challenges in sustainable aquaculture. Machine learning (ML) and deep learning (DL) are integral components of smart aquaculture, driving significant advancements in the field. The integration of AI with ML, and DL technologies is transforming traditional aquaculture practices by enhancing operational efficiency, optimizing fish health management, improving environmental conditions, monitoring water quality and supporting advanced decision-making processes. This review highlights the latest applications of AI, including ML, and DL in aquaculture, emphasizing their roles in real-time water quality monitoring, disease detection, and automated estimation of fish biomass etc. Key techniques, including predictive modeling, image and video processing, and sensor data integration, are enabling these breakthroughs. Moreover, DL algorithms, such as convolutional neural networks (CNNs) and long short-term memory (LSTM) networks, have emerged as powerful tools for processing complex data and predicting critical events within aquaculture systems. Despite the notable progress, challenges such as the need for large, labeled datasets, high computational costs, and issues related to model interpretability continue to limit broader adoption. The current review aims to offer researchers and practitioners with a comprehensive overview of AI and its subfields such as ML and DL applications in smart aquaculture, discussing both the opportunities and challenges while suggesting future research directions to overcome existing limitations and expand AI-driven innovations in the industry.
人工智能在水产养殖中的应用——最新发展与展望
人工智能(AI)为可持续水产养殖中的当代挑战提供了创新和有效的解决方案。机器学习(ML)和深度学习(DL)是智能水产养殖的组成部分,推动了该领域的重大进步。人工智能与ML和DL技术的整合正在通过提高运营效率、优化鱼类健康管理、改善环境条件、监测水质和支持先进的决策过程,改变传统的水产养殖做法。本文综述了人工智能在水产养殖中的最新应用,包括机器学习和深度学习,重点介绍了它们在实时水质监测、疾病检测和鱼类生物量自动估算等方面的作用。包括预测建模、图像和视频处理以及传感器数据集成在内的关键技术正在实现这些突破。此外,卷积神经网络(cnn)和长短期记忆(LSTM)网络等深度学习算法已成为处理复杂数据和预测水产养殖系统内关键事件的强大工具。尽管取得了显著的进展,但诸如对大型标记数据集的需求、高计算成本以及与模型可解释性相关的问题等挑战仍然限制了模型的广泛采用。本综述旨在为研究人员和从业者提供人工智能及其子领域(如ML和DL)在智能水产养殖中的应用的全面概述,讨论机遇和挑战,同时提出未来的研究方向,以克服现有的限制,扩大人工智能驱动的行业创新。
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来源期刊
Aquacultural Engineering
Aquacultural Engineering 农林科学-农业工程
CiteScore
8.60
自引率
10.00%
发文量
63
审稿时长
>24 weeks
期刊介绍: Aquacultural Engineering is concerned with the design and development of effective aquacultural systems for marine and freshwater facilities. The journal aims to apply the knowledge gained from basic research which potentially can be translated into commercial operations. Problems of scale-up and application of research data involve many parameters, both physical and biological, making it difficult to anticipate the interaction between the unit processes and the cultured animals. Aquacultural Engineering aims to develop this bioengineering interface for aquaculture and welcomes contributions in the following areas: – Engineering and design of aquaculture facilities – Engineering-based research studies – Construction experience and techniques – In-service experience, commissioning, operation – Materials selection and their uses – Quantification of biological data and constraints
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