Artificial intelligence and IoT driven technologies for environmental pollution monitoring and management

物联网 污染 环境科学 环境监测 环境资源管理 环境污染 业务 计算机科学 环境规划 环境保护 环境工程 计算机安全 生态学 生物
作者
Simona Mariana Popescu,Sheikh Mansoor,Owais Ali Wani,Shamal Shasang Kumar,Vikas Sharma,Arpita Sharma,Vivak M. Arya,M.B. Kirkham,Deyi Hou,Nanthi Bolan,Yong‐Suk Chung
出处
期刊:Frontiers in Environmental Science 卷期号:12
标识
DOI:10.3389/fenvs.2024.1336088
摘要

Detecting hazardous substances in the environment is crucial for protecting human wellbeing and ecosystems. As technology continues to advance, artificial intelligence (AI) has emerged as a promising tool for creating sensors that can effectively detect and analyze these hazardous substances. The increasing advancements in information technology have led to a growing interest in utilizing this technology for environmental pollution detection. AI-driven sensor systems, AI and Internet of Things (IoT) can be efficiently used for environmental monitoring, such as those for detecting air pollutants, water contaminants, and soil toxins. With the increasing concerns about the detrimental impact of legacy and emerging hazardous substances on ecosystems and human health, it is necessary to develop advanced monitoring systems that can efficiently detect, analyze, and respond to potential risks. Therefore, this review aims to explore recent advancements in using AI, sensors and IOTs for environmental pollution monitoring, taking into account the complexities of predicting and tracking pollution changes due to the dynamic nature of the environment. Integrating machine learning (ML) methods has the potential to revolutionize environmental science, but it also poses challenges. Important considerations include balancing model performance and interpretability, understanding ML model requirements, selecting appropriate models, and addressing concerns related to data sharing. Through examining these issues, this study seeks to highlight the latest trends in leveraging AI and IOT for environmental pollution monitoring.
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