TR
EN
Detection of Vortex Cavitation With The Method Adaptive Neural Fuzzy Networks in the Deep Well Pumps
Öz
Nowadays submersible deep well pumps are the most used irrigation systems in agriculture field. Efficient operation and economical life of pumps is an important issue. One of the most important parameters affecting pump efficiency and life is cavitation The cavitation is one of the problems frequently faced in the pump systems that widely used in the agriculture field. The cavitation could cause more undesired effects such as loss of hydraulic performance, erosion, vibration and noise. This paper presents a novel model for the detection of vortex cavitation in the deep well pump used in the agriculture system using adaptive neural fuzzy networks. The data submergence, flow rate, power consumption, pressure values, and noise values used for training the ANFIS (Adaptive-Network Based Fuzzy Inference Systems) network are acquired from an experimental pump. In this study, we use to the sixty-seven data for training process, while the fifteen data have used for testing of our model. The average percentage error (APE) has obtained as 0.08 % and as 0.34 % respectively for 67 training data and for 15 test data. The performance of the implemented model shows the advantages of ANFIS. The result of this study shows that ANFIS can be successfully used to detect vortex cavitation. This paper has two novel contributions which are the usage of noise value on cavitation detection and find out cavitation by using adaptive neural fuzzy networks. During the cavitation, the pump parameters must change by controller for prevent unwanted pump errors. The strategy proposed could be preliminary study of automatic pump control. Also proposed novel control strategy can be used for cavitation control in agriculture irrigation pumps, because of easy set up and no need extra cost. The ANFIS based model has real-time applicable thanks to rapid and easy control. It is possible to set safe boundaries in submergence in this model. Thus, users by adjusting controllable parameters can prevent cavitation and increase pump efficiency.
Anahtar Kelimeler
Destekleyen Kurum
TUBİTAK
Proje Numarası
213O140
Teşekkür
This study was supported by The Scientific and Technical Research Council of Turkey (TUBITAK, Project No:213O140). The authors would also like to thank the Karamanoglu Mehmetbey University for providing the access MATLAB Software and Prof. Dr. Sedat Calisir.
Kaynakça
- Albayrak, K., Konuralp, O., & Canbaz, Ö. (2013). Dünya Dışındaki Gökcisimleri İçin Santrifüj Pompa Seçimi ve Olasi Sorunlar. Paper presented at the 8. Pompa ve Vana Kongresi, İstanbul.
- Atmaca, H., Cetisli, B., & Yavuz, H. S. (2001). The comparison of fuzzy inference systems and neural network approaches with ANFIS method for fuel consumption data. Paper presented at the Second International Conference on Electrical and Electronics Engineering Papers ELECO.
- Avci, E., & Akpolat, Z. H. (2006). Speech recognition using a wavelet packet adaptive network based fuzzy inference system. Expert Systems with Applications, 31(3), 495-503.
- Avci, E., Turkoglu, I., & Poyraz, M. (2005). Intelligent target recognition based on wavelet adaptive network based fuzzy inference system. Paper presented at the Iberian Conference on Pattern Recognition and Image Analysis.
- Boyacioglu, M. A., & Avci, D. (2010). An adaptive network-based fuzzy inference system (ANFIS) for the prediction of stock market return: the case of the Istanbul stock exchange. Expert Systems with Applications, 37(12), 7908-7912.
- Caner, M., & Akarslan, E. (2009). Estimation of specific energy factor in marble cutting process using ANFIS and ANN. Pamukkale University Journal of Engineering Sciences, 15(2), 221-226.
- Čdina, M. (2003). Detection of cavitation phenomenon in a centrifugal pump using audible sound. Mechanical systems and signal processing, 17(6), 1335-1347.
- Demirel, O., Kakilli, A., & Tektas, M. (2010). Electric energy load forecasting using ANFIS and ARMA methods.
Ayrıntılar
Birincil Dil
İngilizce
Konular
-
Bölüm
Araştırma Makalesi
Yayımlanma Tarihi
20 Aralık 2021
Gönderilme Tarihi
13 Temmuz 2020
Kabul Tarihi
1 Eylül 2021
Yayımlandığı Sayı
Yıl 2021 Cilt: 18 Sayı: 4
APA
Durdu, A., Çeltek, S. A., & Orhan, N. (2021). Detection of Vortex Cavitation With The Method Adaptive Neural Fuzzy Networks in the Deep Well Pumps. Tekirdağ Ziraat Fakültesi Dergisi, 18(4), 613-624. https://doi.org/10.33462/jotaf.769037
AMA
1.Durdu A, Çeltek SA, Orhan N. Detection of Vortex Cavitation With The Method Adaptive Neural Fuzzy Networks in the Deep Well Pumps. JOTAF. 2021;18(4):613-624. doi:10.33462/jotaf.769037
Chicago
Durdu, Akif, Seyit Alperen Çeltek, ve Nuri Orhan. 2021. “Detection of Vortex Cavitation With The Method Adaptive Neural Fuzzy Networks in the Deep Well Pumps”. Tekirdağ Ziraat Fakültesi Dergisi 18 (4): 613-24. https://doi.org/10.33462/jotaf.769037.
EndNote
Durdu A, Çeltek SA, Orhan N (01 Aralık 2021) Detection of Vortex Cavitation With The Method Adaptive Neural Fuzzy Networks in the Deep Well Pumps. Tekirdağ Ziraat Fakültesi Dergisi 18 4 613–624.
IEEE
[1]A. Durdu, S. A. Çeltek, ve N. Orhan, “Detection of Vortex Cavitation With The Method Adaptive Neural Fuzzy Networks in the Deep Well Pumps”, JOTAF, c. 18, sy 4, ss. 613–624, Ara. 2021, doi: 10.33462/jotaf.769037.
ISNAD
Durdu, Akif - Çeltek, Seyit Alperen - Orhan, Nuri. “Detection of Vortex Cavitation With The Method Adaptive Neural Fuzzy Networks in the Deep Well Pumps”. Tekirdağ Ziraat Fakültesi Dergisi 18/4 (01 Aralık 2021): 613-624. https://doi.org/10.33462/jotaf.769037.
JAMA
1.Durdu A, Çeltek SA, Orhan N. Detection of Vortex Cavitation With The Method Adaptive Neural Fuzzy Networks in the Deep Well Pumps. JOTAF. 2021;18:613–624.
MLA
Durdu, Akif, vd. “Detection of Vortex Cavitation With The Method Adaptive Neural Fuzzy Networks in the Deep Well Pumps”. Tekirdağ Ziraat Fakültesi Dergisi, c. 18, sy 4, Aralık 2021, ss. 613-24, doi:10.33462/jotaf.769037.
Vancouver
1.Akif Durdu, Seyit Alperen Çeltek, Nuri Orhan. Detection of Vortex Cavitation With The Method Adaptive Neural Fuzzy Networks in the Deep Well Pumps. JOTAF. 01 Aralık 2021;18(4):613-24. doi:10.33462/jotaf.769037