Višekriterijumski BWM-COPRAS model za izbor optimalnog terenskog vozila za prevoz putnika

  • Dragan S. Pamučar Univerzitet odbrane u Beogradu, Vojna akademija
  • Lazar M. Savin Univerzitet odbrane u Beogradu, Vojna akademija
Ključne reči: BWM||, ||BWM, COPRAS||, ||COPRAS, MABAC||, ||MABAC, MAIRCA||, ||MAIRCA, vehicle selection||, ||izbor vozila, multi-criteria decision making||, ||donošenje višekriterijumskih odluka,

Sažetak


Uvod/cilj: Adekvatna evaluacija i izbor terenskog vozila za izvršenje različitih vrsta zadataka veoma je važan faktor koji utiče na mobilnost korisnika, njihovu bezbednost, kao i na kvalitet i efikasnost izvršavanja transportnih aktivnosti u Vojsci Srbije (VS).

Metode: Stoga je za izbor optimalnog terenskog vozila za potrebe VS, u ovom radu predložen BWM (Best Worst Method) i COPRAS (Compressed Proportional Assessment) model . Određivanje relativnih težina kriterijuma,  na osnovu kojih se vrši vrednovanje potencijalnih terenskih vozila, izvršeno je primenom BWM metode. Pored COPRAS metode, koja je sastavni deo osnovnog modela za donošenje odluke, u ovom radu su, kroz validaciju rezultata, primenjene i metode MABAC (MultiAttributive Border Approximation area Comparison) i MAIRCA (MultiAtributive Ideal-Real Comparative Analysis).

Rezultati: Testiranjem BWM-COPRAS modela na primeru izbora optimalnog terenskog vozila u VS dobijena je visoka korelacija rangova. Validacija rezultata izvršena je statističkom obradom rezultata dobijenih različitim višekriterijumskim tehnikama, primenom Spirmanovog koeficijenta korelacije.

Zaključak: Rezultati pokazuju stabilnost rezultata predloženog modela u rangiranju alternativa i dokazuju njegovu primenjivost za rešavanje višekriterijumskih problema.

Biografije autora

Dragan S. Pamučar, Univerzitet odbrane u Beogradu, Vojna akademija

Doktor nauka

Lazar M. Savin, Univerzitet odbrane u Beogradu, Vojna akademija
University of defence, Military academy, Serbia

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Objavljeno
2020/02/04
Rubrika
Originalni naučni radovi