University of Illinois Chicago, Department of Civil, Materials, and Environmental Engineering, 842 West Taylor Street, Chicago, IL 60607, USA.
SRM University AP, Department of Civil Engineering, Guntur, Andhra Pradesh 522503, India.
Chemosphere. 2023 Dec;345:140476. doi: 10.1016/j.chemosphere.2023.140476. Epub 2023 Oct 20.
The growing number of contaminated sites across the world pose a considerable threat to the environment and human health. Remediating such sites is a cumbersome process with the complexity originating from the need for extensive sampling and testing during site characterization. Selection and design of remediation technology is further complicated by the uncertainties surrounding contaminant attributes, concentration, as well as soil and groundwater properties, which influence the remediation efficiency. Additionally, challenges emerge in identifying contamination sources and monitoring the affected area. Often, these problems are overly simplified, and the data gathered is underutilized rendering the remediation process inefficient. The potential of artificial intelligence (AI), machine-learning (ML), and deep-learning (DL) to address these issues is noteworthy, as their emergence revolutionized the process of data management/analysis. Researchers across the world are increasingly leveraging AI/ML/DL to address remediation challenges. Current study aims to perform a comprehensive literature review on the integration of AI/ML/DL tools into contaminated site remediation. A brief introduction to various emerging and existing AI/ML/DL technologies is presented, followed by a comprehensive literature review. In essence, ML/DL based predictive models can facilitate a thorough understanding of contamination patterns, reducing the need for extensive soil and groundwater sampling. Additionally, AI/ML/DL algorithms can play a pivotal role in identifying optimal remediation strategies by analyzing historical data, simulating scenarios through surrogate models, parameter-optimization using nature inspired algorithms, and enhancing decision-making with AI-based tools. Overall, with supportive measures like open-data policies and data integration, AI/ML/DL possess the potential to revolutionize the practice of contaminated site remediation.
全球受污染场地的数量不断增加,对环境和人类健康构成了相当大的威胁。修复这些场地是一个繁琐的过程,其复杂性源于场地特征描述过程中需要广泛的采样和测试。修复技术的选择和设计由于污染物属性、浓度以及土壤和地下水特性的不确定性而变得更加复杂,这些不确定性会影响修复效率。此外,在确定污染源和监测受影响区域方面也会遇到挑战。通常,这些问题被过度简化,收集的数据未得到充分利用,导致修复过程效率低下。人工智能 (AI)、机器学习 (ML) 和深度学习 (DL) 解决这些问题的潜力值得关注,因为它们的出现彻底改变了数据管理/分析的过程。世界各地的研究人员越来越多地利用 AI/ML/DL 来解决修复挑战。本研究旨在对将 AI/ML/DL 工具集成到污染场地修复中进行全面的文献综述。首先介绍了各种新兴和现有的 AI/ML/DL 技术,然后进行了全面的文献综述。从本质上讲,基于 ML/DL 的预测模型可以帮助深入了解污染模式,减少对广泛的土壤和地下水采样的需求。此外,AI/ML/DL 算法可以通过分析历史数据、通过替代模型模拟场景、使用自然启发式算法进行参数优化以及使用基于 AI 的工具增强决策来在确定最佳修复策略方面发挥关键作用。总的来说,通过开放数据政策和数据集成等支持措施,AI/ML/DL 有可能彻底改变污染场地修复的实践。