Indirect Feedback Measurement of Flow in a Water Pumping Network Employing Artificial Intelligence
Abstract
:1. Introduction
2. Theoretical Background
Indirect Measurements
3. Proposed Methodology
3.1. Pressure Measurement
3.2. Fuzzy Controller
3.3. ANN-Based Reconstruction
4. Experimental Results
4.1. Evaluation of the Fuzzy Controller
4.2. Evaluation of the Block at the ANN Training Stage
4.3. Evaluation of the Block at the ANN Test
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Variation of Error | ||||||||
---|---|---|---|---|---|---|---|---|
NB | NM | NS | Z | PS | PM | PB | ||
Error | NB | DS | DS | DS | DM | DM | DB | DB |
NM | Z | DS | DM | DM | DM | DB | DB | |
NS | Z | Z | DS | DS | DS | DS | DM | |
Z | IS | Z | Z | Z | Z | Z | DS | |
PS | IS | IS | IS | Z | IS | Z | Z | |
PM | IB | IB | IM | IM | IM | IM | IS | |
PB | IS | IB | IB | IB | IM | IM | IM |
Feature | System Response |
---|---|
Rise time | 1.76 s |
Settling time | 4.35 s |
Overshoot | - |
Steady-state error | 0.79% |
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Flores, T.K.S.; Villanueva, J.M.M.; Gomes, H.P.; Catunda, S.Y.C. Indirect Feedback Measurement of Flow in a Water Pumping Network Employing Artificial Intelligence. Sensors 2021, 21, 75. https://doi.org/10.3390/s21010075
Flores TKS, Villanueva JMM, Gomes HP, Catunda SYC. Indirect Feedback Measurement of Flow in a Water Pumping Network Employing Artificial Intelligence. Sensors. 2021; 21(1):75. https://doi.org/10.3390/s21010075
Chicago/Turabian StyleFlores, Thommas Kevin Sales, Juan Moises Mauricio Villanueva, Heber P. Gomes, and Sebastian Y. C. Catunda. 2021. "Indirect Feedback Measurement of Flow in a Water Pumping Network Employing Artificial Intelligence" Sensors 21, no. 1: 75. https://doi.org/10.3390/s21010075
APA StyleFlores, T. K. S., Villanueva, J. M. M., Gomes, H. P., & Catunda, S. Y. C. (2021). Indirect Feedback Measurement of Flow in a Water Pumping Network Employing Artificial Intelligence. Sensors, 21(1), 75. https://doi.org/10.3390/s21010075