2021
DOI: 10.3390/s21144716
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Application of Machine Learning for Fenceline Monitoring of Odor Classes and Concentrations at a Wastewater Treatment Plant

Abstract: The development of low-cost sensors, the introduction of technical performance specifications, and increasingly effective machine learning algorithms for managing big data have led to a growing interest in the use of instrumental odor monitoring systems (IOMS) for odor measurements from industrial plants. The classification and quantification of odor concentration are the main goals of IOMS installed inside industrial plants in order to identify the most important odor sources and to assess whether the regulat… Show more

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Cited by 27 publications
(7 citation statements)
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References 34 publications
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“…Gas emission [61]- [63] Product quality [64]- [66] Water quality [67] CNN [66] DeepFM [65] SVM [64], [67] RF [61]- [63] Control systems [64]- [66] Environments [61], [62], [67] Productivity [64]- [67] Sustainability [61], [62], [64], [67] In [47], researchers introduce a CNN-based model for detecting arc faults, known for their electrical hazards due to high temperatures. This detection model is designed to classify normal and abnormal states of load currents without the need for additional transformation.…”
Section: Defect Detectionmentioning
confidence: 99%
See 1 more Smart Citation
“…Gas emission [61]- [63] Product quality [64]- [66] Water quality [67] CNN [66] DeepFM [65] SVM [64], [67] RF [61]- [63] Control systems [64]- [66] Environments [61], [62], [67] Productivity [64]- [67] Sustainability [61], [62], [64], [67] In [47], researchers introduce a CNN-based model for detecting arc faults, known for their electrical hazards due to high temperatures. This detection model is designed to classify normal and abnormal states of load currents without the need for additional transformation.…”
Section: Defect Detectionmentioning
confidence: 99%
“…The research in [61] focuses on predicting methane concentrations in shale gas fields for greenhouse gas emission measurement. [62] monitors odor concentrations and grades at wastewater treatment plants. Similarly, [63] predicts odor concentrations based on quantitative data from compounds emitted in urban areas, identifying odor emission sources.…”
Section: Defect Detectionmentioning
confidence: 99%
“…On the other hand, Cangialosi, Bruno & De Santis, (2021) tested ML algorithms, namely RF and ANN for fenceline monitoring of odor classes and concentrations at the WWTP. By utilization of instrumental odor monitoring systems and application of ML models, the most important sources of odor could be identified and their concentrations could be compared to permissible limits stated in the regulative (Cangialosi, Bruno & De Santis, 2021).…”
Section: Monitoring Modelsmentioning
confidence: 99%
“…Simultaneously in the United States and Canada, in addition to overall VOC management, concentration regulations have been introduced at fencelines for large-scale establishments, such as oil refineries. These facilities emit potentially health-impacting, carcinogenic VOCs like benzene [11]. In the case of benzene, should the level exceed the defined action level of 9 µg/m 3 , a reduction plan must be implemented.…”
Section: Introductionmentioning
confidence: 99%