Civil and Materials Engineering, University of Illinois at Chicago, Chicago, Illinois.
Complex and Sustainable Urban Networks (CSUN) Laboratory, University of Illinois at Chicago, Chicago, Illinois.
Water Environ Res. 2020 Mar;92(3):418-429. doi: 10.1002/wer.1191. Epub 2019 Aug 19.
Odorous compound emissions and odor complaints from the public are rising concerns for agricultural, industrial, and water resource recovery facilities (WRRFs) near urban areas. Many facilities are deploying sensors that measure malodorous compounds and other factors related to odor creation and dispersion. Focusing on the Metropolitan Water Reclamation District of Greater Chicago's (MWRDGCs) Thornton Composite Reservoir (7.9 billion gallon capacity), we used meteorological, operational, and H2S sensor data to train a 3-day advance-warning predictor of local odor complaints, so as to implement targeted odor prevention measures. Using a machine learning approach, we bypassed difficulties in modeling both physical dispersion and human perception of odors. Utilizing random forest algorithms with varied settings and input attributes, we find that a small network of H2S sensors, meteorological data, and operational data are able to predict odor complaints three days in advance with greater than 60% accuracy and less than 25% false-positive rates, exceeding MWRDGC's standards required for full-scale deployment. PRACTITIONER POINTS: A random forest algorithm trained on H S, weather, and operations data successfully predicted odor complaints surrounding a large composite reservoir. Thirty-two data attribute combinations were tested. It was found that H S sensor data alone are insufficient for predicting odor complaints. The best predictor was a Random Forest Classifier trained on weather, operational, and H S readings from the reservoir corner locations. This study demonstrates odor complaint prediction capability utilizing a limited set of data sources and open-source machine learning techniques. Given a small network of H S sensors and organized data management, WRRFs and similar facilities can conduct advance-warning odor complaint prediction.
有气味的化合物排放物和公众投诉的异味,是农业、工业和水资源回收设施(WRRFs)在城市附近面临的主要关切。许多设施正在部署传感器,以测量恶臭化合物和与气味产生和扩散有关的其他因素。以大芝加哥都会水区(MWRDGC)的桑顿综合水库(79 亿加仑容量)为例,我们使用气象、运营和 H2S 传感器数据来训练本地异味投诉的 3 天预警预测器,以便实施有针对性的异味预防措施。我们使用机器学习方法,绕过了物理扩散和人类对气味感知的建模困难。利用具有不同设置和输入属性的随机森林算法,我们发现,少量的 H2S 传感器、气象数据和运营数据网络能够以超过 60%的准确率和低于 25%的误报率提前 3 天预测异味投诉,超过了 MWRDGC 全面部署所需的标准。
基于 H2S、天气和运营数据训练的随机森林算法成功预测了大型综合水库周围的异味投诉。
测试了 32 种数据属性组合。
发现仅 H2S 传感器数据不足以预测异味投诉。
最佳预测器是在水库角落位置的天气、运营和 H2S 读数上训练的随机森林分类器。
本研究利用有限的数据源和开源机器学习技术展示了异味投诉预测能力。
考虑到少量的 H2S 传感器和组织良好的数据管理,WRRFs 和类似设施可以进行预警异味投诉预测。