aesthetic176 / TSP_USING_GA

It is bioinformatics project

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TSP_USING_GA

Done as part of the Final Project Evaluation for 19BIO201 - Intelligence of Biological Systems - 3, It is bioinformatics project

  • It starts with a population of a random size and random pathways (the first city is the last one)
  • The user chooses the number of generations to run before the genetic algorithm starts.
  • By adding pathways through crossover, mutations, and random routes, the population is doubled at the end of each generation.
  • Only half of the greatest will survive to the following generation, according to the survival of the fittest theory.
  • In order for the algorithm to avoid becoming stuck in a local minimum solution, new paths are built at each iteration.
  • Routes through crossover genetic function are produced at every generation
  • Routes through mutation genetic function are also produced at each generation.

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It is bioinformatics project


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