Afoma Ufondu Maryann, Singh Shilpy, Mishra Abhishek Kumar, Sharma Chetan Kumar, Gupta Kashish, Mishra Manoj Kumar, Roy Biswajit, Verma Ved Vrat, Sharma Varun Kumar
Department of Biotechnology & Microbiology, School of Sciences, Noida International University, Greater Noida, Gautam Budh Nagar, Uttar Pradesh, India.
Department of Mathematics, School of Sciences, Noida International University, Greater Noida, Gautam Budh Nagar, Uttar Pradesh, India.
Ecohealth. 2025 Aug 28. doi: 10.1007/s10393-025-01752-8.
Environmental monitoring is essential for understanding and minimizing human impact on ecosystems. Traditional methods like manual sampling and laboratory testing, while accurate, are often costly, time-consuming, and difficult to scale, especially in low-resource settings. Artificial intelligence (AI) is increasingly addressing these limitations by enabling automated data collection, real-time analysis, and predictive modeling. Techniques such as machine learning (ML) and deep learning (DL) are being applied to monitor air and water quality, track climate patterns, and support biodiversity efforts. Hybrid AI models further improve accuracy by integrating various analytical approaches. Key applications include species identification, habitat assessment, wildlife tracking, and anti-poaching, utilizing tools such as drone imagery, camera traps, and GPS data. This review explores the latest advancements in AI-based environmental monitoring, emphasizing technologies like explainable AI (XAI), edge computing, and the Internet of Things (IoT), which improve transparency and reduce processing costs. It also addresses ongoing challenges, including data quality, computational demands, and the need for interpretable models. By evaluating practical limitations and proposing interdisciplinary strategies, this article highlights the transformative potential of AI for sustainable environmental management. Successful implementation will depend on ethical frameworks, policy alignment, and cross-sector collaboration to fully realize AI's role in global ecological stewardship.
环境监测对于理解和最小化人类对生态系统的影响至关重要。传统方法,如手动采样和实验室检测,虽然准确,但往往成本高昂、耗时且难以扩展,尤其是在资源匮乏的环境中。人工智能(AI)正越来越多地通过实现自动数据收集、实时分析和预测建模来解决这些局限性。机器学习(ML)和深度学习(DL)等技术正被应用于监测空气质量和水质、跟踪气候模式以及支持生物多样性保护工作。混合人工智能模型通过整合各种分析方法进一步提高了准确性。关键应用包括物种识别、栖息地评估、野生动物追踪和反偷猎,利用无人机图像、相机陷阱和GPS数据等工具。本综述探讨了基于人工智能的环境监测的最新进展,重点介绍了可解释人工智能(XAI)、边缘计算和物联网(IoT)等技术,这些技术提高了透明度并降低了处理成本。它还讨论了当前面临的挑战,包括数据质量、计算需求以及对可解释模型的需求。通过评估实际限制并提出跨学科策略,本文强调了人工智能在可持续环境管理方面的变革潜力。成功实施将取决于道德框架、政策协调以及跨部门合作,以充分实现人工智能在全球生态管理中的作用。