A fuzzy inference system using sensor measurements was developed to estimate the influent COD/N ratio and ammonia load. The sensors measured ORP, DO and pH. The sensor profiles had a close relationship with the influent COD/N ratio and ammonia load. To confirm this operational knowledge for constructing a rule set, a correlation analysis was conducted. The results showed that a rule generation method based only on operational knowledge did not generate a sufficiently accurate relationship between sensor measurements and target variables. To compensate for this defect, a decision tree algorithm was used as a standardized method for rule generation. Given a set of inputs, this algorithm was used to determine the output variables. However, the generated rules could not estimate the continuous influent COD/N ratio and ammonia load. Fuzzified rules and the fuzzy inference system were developed to overcome this problem. The fuzzy inference system estimated the influent COD/N ratio and ammonia load quite well. When these results were compared to the results from a predictive polynomial neural network model, the fuzzy inference system was more stable.
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Research Article|
January 01 2006
Rule-based fuzzy inference system for estimating the influent COD/N ratio and ammonia load to a sequencing batch reactor
Y.J. Kim;
* Department of Environmental Engineering, Pusan National University, Busan, 609-735, Korea, (E-mail: yjkim@pusan.ac.kr; joohko@pusan.ac.kr; kmboo@pusan.ac.kr; cwkim@pusan.ac.kr; hjwoo@pusan.ac.kr)
E-mail: yjkim@pusan.ac.kr
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H. Bae;
H. Bae
**School of Electrical and Computer Engineering, Pusan National University, Busan, Korea, (E-mail: baehyeon@pusan.ac.kr; sskim@pusan.ac.kr)
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J.H. Ko;
J.H. Ko
* Department of Environmental Engineering, Pusan National University, Busan, 609-735, Korea, (E-mail: yjkim@pusan.ac.kr; joohko@pusan.ac.kr; kmboo@pusan.ac.kr; cwkim@pusan.ac.kr; hjwoo@pusan.ac.kr)
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K.M. Poo;
K.M. Poo
* Department of Environmental Engineering, Pusan National University, Busan, 609-735, Korea, (E-mail: yjkim@pusan.ac.kr; joohko@pusan.ac.kr; kmboo@pusan.ac.kr; cwkim@pusan.ac.kr; hjwoo@pusan.ac.kr)
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S. Kim;
S. Kim
**School of Electrical and Computer Engineering, Pusan National University, Busan, Korea, (E-mail: baehyeon@pusan.ac.kr; sskim@pusan.ac.kr)
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C.W. Kim;
C.W. Kim
* Department of Environmental Engineering, Pusan National University, Busan, 609-735, Korea, (E-mail: yjkim@pusan.ac.kr; joohko@pusan.ac.kr; kmboo@pusan.ac.kr; cwkim@pusan.ac.kr; hjwoo@pusan.ac.kr)
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H.J. Woo
H.J. Woo
* Department of Environmental Engineering, Pusan National University, Busan, 609-735, Korea, (E-mail: yjkim@pusan.ac.kr; joohko@pusan.ac.kr; kmboo@pusan.ac.kr; cwkim@pusan.ac.kr; hjwoo@pusan.ac.kr)
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Water Sci Technol (2006) 53 (1): 199–207.
Citation
Y.J. Kim, H. Bae, J.H. Ko, K.M. Poo, S. Kim, C.W. Kim, H.J. Woo; Rule-based fuzzy inference system for estimating the influent COD/N ratio and ammonia load to a sequencing batch reactor. Water Sci Technol 1 January 2006; 53 (1): 199–207. doi: https://doi.org/10.2166/wst.2006.022
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