Department of Chemical Engineering, Birla Institute of Technology and Science, Pilani, Rajasthan, India, 333031.
Environ Monit Assess. 2023 Jul 4;195(8):916. doi: 10.1007/s10661-023-11463-8.
In the past decade, machine learning techniques have seen wide industrial applications for design of data-based process monitoring systems with an aim to improve industrial productivity. An efficient process monitoring system for wastewater treatment process (WWTP) ensures increased efficiency and effluents meeting stringent emission norms. Benchmark simulation model No. 1 (BSM1) provides a simulation platform to researchers for developing efficient data-based process monitoring, quality monitoring, and process control systems for WWTPs. The present article presents a review of all research works reporting applications of various machine learning techniques for sensor and process fault detection of BSM1. The review focuses on process monitoring of biological wastewater treatment process, which uses a series of aerobic and anaerobic reactions followed by secondary settling process. Detailed information on various parameters monitored, different machine learning techniques explored, and results obtained by different researchers are presented in tabular and graphical format. In the review, it was observed that principal component analysis (PCA) and its variants account for the maximum number of research works for process monitoring in WWTPs and there are very few applications of recently developed deep learning techniques. Following the review and analysis, various future scopes of research (such as techniques yet to be explored or improvement of results for a particular fault) are also presented. These information will assist prospective researchers working on BSM1 to take forward the research.
在过去的十年中,机器学习技术在基于数据的过程监测系统设计方面得到了广泛的工业应用,旨在提高工业生产力。一个高效的废水处理过程(WWTP)监测系统可确保提高效率和符合严格的排放标准。基准模拟模型 1(BSM1)为研究人员提供了一个模拟平台,用于开发高效的基于数据的过程监测、质量监测和 WWTP 过程控制系统。本文综述了所有报告各种机器学习技术在 BSM1 的传感器和过程故障检测中应用的研究工作。综述重点介绍了使用一系列需氧和厌氧反应以及二次沉淀过程的生物废水处理过程的过程监测。以表格和图形格式详细介绍了监测的各种参数、探索的不同机器学习技术以及不同研究人员获得的结果。在综述中,观察到主成分分析(PCA)及其变体占 WWTP 过程监测研究工作的最大数量,而最近开发的深度学习技术的应用很少。在综述和分析之后,还提出了各种未来的研究范围(例如尚未探索的技术或特定故障的结果改进)。这些信息将帮助从事 BSM1 研究的未来研究人员推进研究。