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Multi-objective optimization of concentrated Photovoltaic-Thermoelectric hybrid system via non-dominated sorting genetic algorithm (NSGA II)

  • Aminu Yusuf
  • , Nevra Bayhan
  • , Hasan Tiryaki
  • , Bejan Hamawandi
  • , Muhammet S. Toprak
  • , Sedat Ballikaya*
  • *Šī darba korespondējošais autors
  • Istanbul University - Cerrahpaşa
  • KTH Royal Institute of Technology
  • Istanbul University

Zinātniskās darbības rezultāts: Devums žurnālamZinātniskais raksts (žurnālā)koleģiāli recenzēts

81 Atsauces (Scopus)

Kopsavilkums

Thermoelectric generators harvest additional electrical power when used in combination with concentrated photovoltaic cells given rise to a hybrid system. Overall cost of the system is high; therefore, the parameters of the system need to be optimized to obtain high output performance. This study determines the output performances of four sets of equations (models) used in the hybrid system, using the performance of recently developed nanostructured thermoelectric materials. Seven parameters of the system were optimized through these models using non-dominated genetic algorithm. Models 1 and 2 have the highest performance chosen by TOPSIS decision-making method. The power output and conversion efficiencies of the hybrid system in models 1 and 2 are 426.5 W, 11.45% and 461.12 W, 10.77%, respectively. Likewise, the highest TOPSIS solution for power output of one TEG module operating in the hybrid system and its corresponding efficiency is obtained in model 4 and are 1.97 W and 0.078%, respectively. This validates the fact that TEG operating in a hybrid system has optimum performance at a point when the load resistance is less than its internal resistance.

OriģinālvalodaAngļu
Raksta numurs114065
ŽurnālsEnergy Conversion and Management
Sējums236
DOIs
Publikācijas statussPublicēts - 15 maijs 2021
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