Luca Alexandra-Veronica, Simon-Várhelyi Melinda, Mihály Norbert-Botond, Cristea Vasile-Mircea
Department of Chemical Engineering, Faculty of Chemistry and Chemical Engineering, Babes-Bolyai University of Cluj-Napoca, 11 Arany János Street, 400028, Cluj-Napoca, Romania.
Environ Monit Assess. 2025 Jan 2;197(1):121. doi: 10.1007/s10661-024-13593-z.
One of the leading challenges in Water Resource Recovery Facility monitoring and control is the poor data quality and sensor consistency due to the tough and complex circumstances of the process operation. This paper presents a new principal component analysis fault detection approach for the nitrate and nitrite concentration sensor based on Water Resource Recovery Facility measurements, together with the Fisher Discriminant Analysis identification of fault types. Five malfunction cases were considered: constant additive error, ramp changing error in time, incorrect amplification error, random additive error, and unchanging sensor value error. The faults' implementation, fault detection, and identification methods are presented and evaluated in terms of accuracy and promptitude. The models are originating from a municipal plant. The amount of required electrical energy and greenhouse gas released during the Water Resource Recovery Facility operation were assessed for the cases of nitrates and nitrites NO sensor normal and malfunctioning regimes. The environmental and economic evaluations show the benefits of detecting and identifying nitrates and nitrites NO sensor defects aimed at providing efficient and environmentally friendly operation of the Water Resource Recovery Facility. The fault-affected operation cases showed increased values, up to 10% for the total energy demand and 4% for the total greenhouse gas emissions, when they are compared to the normal operation case.
水资源回收设施监测与控制面临的主要挑战之一是,由于工艺运行环境恶劣复杂,导致数据质量差和传感器一致性问题。本文提出了一种基于水资源回收设施测量数据的新型主成分分析故障检测方法,用于检测硝酸盐和亚硝酸盐浓度传感器的故障,并结合Fisher判别分析来识别故障类型。考虑了五种故障情况:恒定附加误差、随时间的斜坡变化误差、错误的放大误差、随机附加误差和传感器值不变误差。从准确性和及时性方面对故障的实现、检测和识别方法进行了介绍和评估。这些模型源自一座市政工厂。针对硝酸盐和亚硝酸盐氮传感器正常和故障状态的情况,评估了水资源回收设施运行期间所需的电量和释放的温室气体量。环境和经济评估表明,检测和识别硝酸盐和亚硝酸盐氮传感器缺陷有利于实现水资源回收设施的高效和环境友好运行。与正常运行情况相比,受故障影响的运行情况显示,总能源需求增加了10%,温室气体总排放量增加了4%。