Welcome to Scholar Publishing Group

Kinetic Mechanical Engineering, 2023, 4(1); doi: 10.38007/KME.2023.040104.

Experimental Heat Transfer Performance of Plate Fin Heat Exchanger Based on Fuzzy Algorithm

Author(s)

Amaren Velmurugan

Corresponding Author:
Amaren Velmurugan
Affiliation(s)

Jimma University, Ethiopia

Abstract

With the continuous growth of industrial technology, the waste of energy is becoming more and more serious. As a kind of energy-saving, environmental protection and higher economic benefits, plate fin heat exchanger(PFHE) can effectively alleviate the resource tension. Therefore, the experimental study of plate fin regenerator is of great significance. This paper mainly introduces the mass transfer performance and working principle of the plate type heat recovery device at home and abroad. Combined with the actual situation, the test, analysis and calculation are carried out, and the design ideas and relevant equipment structure drawings after optimizing the process parameters and improving measures are proposed, so as to improve the heat exchange efficiency and reduce the production cost. Therefore, based on the fuzzy algorithm, this paper designs a PFHE model, and tests the model. The test results show that the pressure drop on both sides of the heat exchanger decreases slightly, and the number of channels on both sides increases slightly. The optimization results of this module show the applicability of fuzzy algorithm, as a modern optimization method, in the optimization design of PFHE, and the superiority of genetic algorithm in the optimization process and results compared with traditional design methods.

Keywords

Fuzzy Algorithm, Plate Fin Heat Exchanger, Heat Transfer Performance, Heat Recovery Performance

Cite This Paper

Amaren Velmurugan. Experimental Heat Transfer Performance of Plate Fin Heat Exchanger Based on Fuzzy Algorithm. Kinetic Mechanical Engineering (2023), Vol. 4, Issue 1: 30-39. https://doi.org/10.38007/KME.2023.040104.

References

[1]P. Rahul, N. Kanthimathi, B. Kaarthick, M. Leeban Moses:Fuzzy Fruit Fly Optimized Node Quality-Based Clustering Algorithm for Network Load Balancing. Comput. Syst. Sci. Eng. 44(2): 1583-1600 (2023).  

[2] Manas Ghosh, Aniruddha Dey:Fractional-weighted entropy-based fuzzy G-2DLDA algorithm: a new facial feature extraction method. Multim. Tools Appl. 82(2): 2689-2707 (2023).  

[3] Sina Nayeri, Mahdieh Tavakoli, Mehrab Tanhaeean, Fariborz Jolai:A robust fuzzy stochastic model for the responsive-resilient inventory-location problem: comparison of metaheuristic algorithms. Ann. Oper. Res. 315(2): 1895-1935 (2022).  

[4] Ankur Rai, Dushmanta Kumar Das:Ennoble class topper optimization algorithm based fuzzy PI-PD controller for micro-grid. Appl. Intell. 52(6): 6623-6645 (2022).  

[5]Antony Jaya Mabel Rani, Albert Pravin:Clustering by Hybrid K-Means-Based Rider Sunflower Optimization Algorithm for Medical Data. Adv. Fuzzy Syst. 2022: 7783196:1-7783196:9 (2022). 

[6]Mahdi Azizi, Siamak Talatahari:Improved arithmetic optimization algorithm for design optimization of fuzzy controllers in steel building structures with nonlinear behavior considering near fault ground motion effects. Artif. Intell. Rev. 55(5): 4041-4075 (2022).  

[7]Sina Nayeri, Mahdieh Tavakoli, Mehrab Tanhaeean, Fariborz Jolai:A robust fuzzy stochastic model for the responsive-resilient inventory-location problem: comparison of metaheuristic algorithms. Ann. Oper. Res. 315(2): 1895-1935 (2022).  

[8]Dinh Phamtoan, Khanh Nguyenhuu, Tai Vovan:Fuzzy clustering algorithm for outlier-interval  

[9]Ankur Rai, Dushmanta Kumar Das:Ennoble class topper optimization algorithm based fuzzy PI-PD controller for micro-grid. Appl. Intell. 52(6): 6623-6645 (2022).  

[10]Ali Aghasi, Kamal Jamshidi, Ali Bohlooli:A thermal-aware energy-efficient virtual machine placement algorithm based on fuzzy controlled binary gravitational search algorithm (FC-BGSA). Clust. Comput. 25(2): 1015-1033 (2022). 

[11]Salma Khan, Muhammad Gulistan, Nasreen Kausar, Sajida Kousar, Dragan Pamucar, Gezahagne Mulat Addis:Analysis of Cryptocurrency Market by Using q-Rung Orthopair Fuzzy Hypersoft Set Algorithm Based on Aggregation Operators. Complex. 2022: 7257449:1-7257449:16 (2022). 

[12]Yaser Rouzpeykar, Roya Soltani, Mohammad Ali Afashr Kazemi:EFP-GA: An Extended Fuzzy Programming Model and a Genetic Algorithm for Management of the Integrated Hub Location and Revenue Model under Uncertainty. Complex. 2022: 7801188:1-7801188:12 (2022).  

[13]Shashidhar B. Gurav, Kshama V. Kulhalli, Veena V. Desai:Fuzzy integrated salp swarm algorithm-based RideNN for prostate cancer detection using histopathology images. Evol. Intell. 15(2): 1329-1342 (2022).  

[14]Mojgan Rayenizadeh, Marjan Kuchaki Rafsanjani, Arsham Borumand Saeid:Cluster head selection using hesitant fuzzy and firefly algorithm in wireless sensor networks. Evol. Syst. 13(1): 65-84 (2022).  

[15]Iman Shafieenejad, Elham Dehghan Rouzi, Jamshid Sardari, Mohammad Siami Araghi, Amirhosein Esmaeili, Shervin Zahedi:Fuzzy logic, neural-fuzzy network and honey bees algorithm to develop the swarm motion of aerial robots. Evol. Syst. 13(2): 319-330 (2022).  

[16]Kim Khanh Le-Ngoc, Quan Thanh Tho, Thang H. Bui, Amir Masoud Rahmani, Mehdi Hosseinzadeh:Optimized fuzzy clustering in wireless sensor networks using improved squirrel search algorithm. Fuzzy Sets Syst. 438: 121-147 (2022). 

[17]Mohana Sundaram Kuppusamy, D. Nageswari, J. Prakash:Cuckoo search assisted fuzzy logic algorithm for smart WSN routing system. Int. J. Ad Hoc Ubiquitous Comput. 40(1/2/3): 106-115 (2022). 

[18]Harihar Kalia, Satchidananda Dehuri, Ashish Ghosh:Fitness inheritance in multi-objective genetic algorithms: a case study on fuzzy classification rule mining. Int. J. Adv. Intell. Paradigms 23(1/2): 89-112 (2022).