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신경망 분석을 활용한 하수처리장 데이터 분석 기법 연구Wastewater Treatment Plant Data Analysis Using Neural Network

Other Titles
Wastewater Treatment Plant Data Analysis Using Neural Network
Authors
서정식김태욱이해각윤종호
Issue Date
Jul-2022
Publisher
한국환경과학회
Keywords
Multilayer perceptron analysis; Root mean square error analysis; TMS data; Wastewater treatment plants
Citation
한국환경과학회지, v.31, no.7, pp 555 - 567
Pages
13
Journal Title
한국환경과학회지
Volume
31
Number
7
Start Page
555
End Page
567
URI
https://scholarworks.bwise.kr/sch/handle/2021.sw.sch/21252
ISSN
1225-4517
2287-3503
Abstract
With the introduction of the tele-monitoring system (TMS) in South Korea, monitoring of the concentration of pollutants discharged from nationwide water quality TMS attachments is possible. In addition, the Ministry of Environment is implementing a smart sewage system program that combines ICT technology with wastewater treatment plants. Thus, many institutions are adopting the automatic operation technique which uses process operation factors and TMS data of sewage treatment plants. As a part of the preliminary study, a multilayer perceptron (MLP) analysis method was applied to TMS data to identify predictability degree. TMS data were designated as independent variables, and each pollutant was considered as an independent variables. To verify the validity of the prediction, root mean square error analysis was conducted. TMS data from two public sewage treatment plants in Chungnam were used. The values of RMSE in SS, T-N, and COD predictions (excluding T-P) in treatment plant A showed an error range of 10%, and in the case of treatment plant B, all items showed an error exceeding 20%. If the total amount of data used MLP analysis increases, the predictability of MLP analysis is expected to increase further.
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