Artificial Neural Networks for Modeling Harmful Algal Blooms: A Review

IF 1.8 4区 生物学 Q3 MARINE & FRESHWATER BIOLOGY
Uma Maheshwera Reddy Paturi, C. Ramesh, Manjusha Muppala, Rishitha Reddy Mekala, Shriya Reddy Kasu, N. S. Reddy
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引用次数: 0

Abstract

Harmful algal blooms (HABs) are a growing environmental concern that require better understanding, prediction, and study. Even though photosynthesizing algae produce 70% of atmospheric oxygen, their unexpected outbreaks can harm the environment. A delicate interplay of various environmental factors drives the intricate dynamics of algal blooms. Artificial neural network (ANN) models provide profound insights into the nonlinear and unpredictable behavior of algal blooms. Neural networks can also improve prediction accuracy, pattern recognition, species identification, and correlation analysis. The ANN's ability to comprehend and process diverse datasets, along with its adaptability, makes it suitable for real-time monitoring systems, allowing for early warnings and proactive mitigation in HAB management. This review paper summarizes recent findings and demonstrates how ANNs contribute to HAB research. Based on this review, we discuss the challenges of using ANNs in this context and offer recommendations for future research directions to explore emerging trends in the field.

人工神经网络模拟有害藻华研究进展
有害藻华(HABs)是一个日益严重的环境问题,需要更好的理解、预测和研究。尽管光合藻类产生70%的大气氧气,但它们的意外爆发可能会破坏环境。各种环境因素的微妙相互作用驱动了藻华的复杂动态。人工神经网络(ANN)模型对藻华的非线性和不可预测行为提供了深刻的见解。神经网络还可以提高预测精度、模式识别、物种识别和相关性分析。人工神经网络理解和处理各种数据集的能力,以及它的适应性,使其适合于实时监测系统,允许在有害藻华管理中进行早期预警和主动缓解。本文综述了近年来的研究成果,并阐述了人工神经网络对赤潮研究的贡献。在此基础上,我们讨论了在此背景下使用人工神经网络的挑战,并提出了未来研究方向的建议,以探索该领域的新趋势。
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来源期刊
Marine Ecology-An Evolutionary Perspective
Marine Ecology-An Evolutionary Perspective 生物-海洋与淡水生物学
CiteScore
2.70
自引率
0.00%
发文量
37
审稿时长
>12 weeks
期刊介绍: Marine Ecology publishes original contributions on the structure and dynamics of marine benthic and pelagic ecosystems, communities and populations, and on the critical links between ecology and the evolution of marine organisms. The journal prioritizes contributions elucidating fundamental aspects of species interaction and adaptation to the environment through integration of information from various organizational levels (molecules to ecosystems) and different disciplines (molecular biology, genetics, biochemistry, physiology, marine biology, natural history, geography, oceanography, palaeontology and modelling) as viewed from an ecological perspective. The journal also focuses on population genetic processes, evolution of life histories, morphological traits and behaviour, historical ecology and biogeography, macro-ecology and seascape ecology, palaeo-ecological reconstruction, and ecological changes due to introduction of new biota, human pressure or environmental change. Most applied marine science, including fisheries biology, aquaculture, natural-products chemistry, toxicology, and local pollution studies lie outside the scope of the journal. Papers should address ecological questions that would be of interest to a worldwide readership of ecologists; papers of mostly local interest, including descriptions of flora and fauna, taxonomic descriptions, and range extensions will not be considered.
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