整合基于视觉的人工智能和大型语言模型,实现水污染实时监控。

IF 2.5 4区 环境科学与生态学 Q3 ENGINEERING, ENVIRONMENTAL
Dinesh Jackson Samuel, Yusuf Sermet, David Cwiertny, Ibrahim Demir
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引用次数: 0

摘要

近年来,水污染已成为人们关注的一个主要问题,据联合国教科文组织统计,全球有 20 多亿人受到水污染的影响。这种污染既可能是自然造成的,如藻类大量繁殖;也可能是人为造成的,如有毒物质被释放到湖泊、河流、泉水和海洋等水体中。为解决这一问题并监测当地水体的地表水污染情况,我们结合大型语言模型(LLM)开发了一种基于视觉的信息实时监控系统。该系统有一个与树莓派(Raspberry Pi)相连的集成摄像头,用于处理输入帧,并进一步与大型语言模型(LLMs)相连,生成有关污染物类型、成因以及对人类健康和环境影响的上下文信息。这种多模型设置使地方当局能够监测水污染,并采取必要措施减轻污染。为了训练视觉模型,我们使用了在水体中发现的七种主要污染物,如藻类大量繁殖、合成泡沫、死鱼、溢油、木头、工业废水径流和垃圾,以实现精确检测。ChatGPT 应用程序接口已与模型集成,以生成有关检测到的污染的上下文信息。因此,多模型系统可以对水体进行监控,并自动提醒地方当局立即采取行动,无需人工干预。实践点:将摄像头和 LLM 与 Raspberry Pi 相结合,用于处理和生成污染物信息。使用 YOLOv5 检测藻华、合成泡沫、死鱼、漏油和工业废物。支持各种模块和环境,包括用于广泛监测的无人机和移动应用程序。开展环境健康教育,并向有关部门发出水污染警报。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating vision-based AI and large language models for real-time water pollution surveillance.

Water pollution has become a major concern in recent years, affecting over 2 billion people worldwide, according to UNESCO. This pollution can occur by either naturally, such as algal blooms, or man-made when toxic substances are released into water bodies like lakes, rivers, springs, and oceans. To address this issue and monitor surface-level water pollution in local water bodies, an informative real-time vision-based surveillance system has been developed in conjunction with large language models (LLMs). This system has an integrated camera connected to a Raspberry Pi for processing input frames and is further linked to LLMs for generating contextual information regarding the type, causes, and impact of pollutants on both human health and the environment. This multi-model setup enables local authorities to monitor water pollution and take necessary steps to mitigate it. To train the vision model, seven major types of pollutants found in water bodies like algal bloom, synthetic foams, dead fishes, oil spills, wooden logs, industrial waste run-offs, and trashes were used for achieving accurate detection. ChatGPT API has been integrated with the model to generate contextual information about pollution detected. Thus, the multi-model system can conduct surveillance over water bodies and autonomously alert local authorities to take immediate action, eliminating the need for human intervention. PRACTITIONER POINTS: Combines cameras and LLMs with Raspberry Pi for processing and generating pollutant information. Uses YOLOv5 to detect algal blooms, synthetic foams, dead fish, oil spills, and industrial waste. Supports various modules and environments, including drones and mobile apps for broad monitoring. Educates on environmental healthand alerts authorities about water pollution.

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来源期刊
Water Environment Research
Water Environment Research 环境科学-工程:环境
CiteScore
6.30
自引率
0.00%
发文量
138
审稿时长
11 months
期刊介绍: Published since 1928, Water Environment Research (WER) is an international multidisciplinary water resource management journal for the dissemination of fundamental and applied research in all scientific and technical areas related to water quality and resource recovery. WER''s goal is to foster communication and interdisciplinary research between water sciences and related fields such as environmental toxicology, agriculture, public and occupational health, microbiology, and ecology. In addition to original research articles, short communications, case studies, reviews, and perspectives are encouraged.
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