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Genetic algorithms and particle swarm optimization – MCQs – EE

1. Genetic algorithms are inspired by:

(A) Bird flocking behavior


(B) Evolution and natural selection


(C) Step response only


(D) Transformer operation



2. In GA, a population consists of:

(A) A single candidate solution


(B) Multiple candidate solutions


(C) Step response only


(D) Only voltage measurements



3. The main operators in GA include:

(A) Inertia, velocity, and position update


(B) Selection, crossover, and mutation


(C) Step response only


(D) Load flow only



4. Crossover in GA is used to:

(A) Combine genetic information from two parents


(B) Update particle velocity


(C) Step response only


(D) Measure RMS voltage



5. Mutation in GA helps to:

(A) Maintain genetic diversity


(B) Step response only


(C) Only selection process


(D) Load flow only



6. Fitness function in GA is used to:

(A) Evaluate the quality of candidate solutions


(B) Step response only


(C) Only particle position


(D) Load flow only



7. Particle swarm optimization is inspired by:

(A) Natural selection


(B) Social behavior of birds and fish


(C) Step response only


(D) Transformer dynamics



8. In PSO, each particle has:

(A) Only position


(B) Position and velocity


(C) Step response only


(D) Load flow only



9. Personal best (pBest) in PSO refers to:

(A) Best solution found by the particle itself


(B) Step response only


(C) Global best among all particles


(D) Load flow only



10. Global best (gBest) in PSO refers to:

(A) Best solution found by the entire swarm


(B) Step response only


(C) Personal best of a particle


(D) Load flow only



11. Inertia weight in PSO controls:

(A) Exploration and exploitation


(B) Step response only


(C) Crossover probability


(D) Mutation rate



12. GA is classified as:

(A) Deterministic search method


(B) Stochastic, population-based search


(C) Step response only


(D) Load flow only



13. PSO updates particle velocity using:

(A) Only gradient information


(B) Cognitive and social components


(C) Step response only


(D) Load flow only



14. Selection in GA ensures:

(A) Better solutions have higher chance to reproduce


(B) Step response only


(C) Only mutation occurs


(D) Load flow only



15. Termination criteria for GA or PSO can be:

(A) Maximum iterations, convergence, or fitness threshold


(B) Step response only


(C) Only particle velocity


(D) Load flow only



16. GA is suitable for:

(A) Only linear problems


(B) Complex, nonlinear, and multi-modal problems


(C) Step response only


(D) Load flow only



17. PSO advantages include:

(A) Easy implementation and fast convergence


(B) Step response only


(C) Requires gradient calculation


(D) Load flow only



18. Crossover rate in GA determines:

(A) Probability of combining parents to produce offspring


(B) Step response only


(C) Particle velocity update


(D) Load flow only



19. Mutation rate in GA helps to:

(A) Avoid premature convergence


(B) Step response only


(C) Only selection


(D) Load flow only



20. PSO particles communicate:

(A) Using global and local best solutions


(B) Step response only


(C) Only mutation


(D) Load flow only



21. GA uses:

(A) Operators like selection, crossover, and mutation


(B) Step response only


(C) Velocity updates


(D) Load flow only



22. PSO is:

(A) Deterministic method


(B) Stochastic, population-based optimizer


(C) Step response only


(D) Load flow only



23. Hybrid GA-PSO algorithms combine:

(A) Strengths of GA and PSO for better performance


(B) Step response only


(C) Only GA operators


(D) Load flow only



24. Encoding in GA involves:

(A) Representing candidate solutions as chromosomes


(B) Step response only


(C) Only particle position


(D) Load flow only



25. PSO is widely used in EE for:

(A) Economic dispatch, design optimization, and control tuning


(B) Step response only


(C) Only load flow


(D) Voltage measurement only



26. Fitness evaluation in GA affects:

(A) Selection probability of individuals


(B) Step response only


(C) Only inertia weight


(D) Load flow only



27. PSO can suffer from:

(A) Premature convergence to local optima


(B) Step response only


(C) Only mutation errors


(D) Load flow only



28. GA mutation is usually:

(A) Small random changes in chromosome


(B) Step response only


(C) Velocity update only


(D) Load flow only



29. PSO swarm size affects:

(A) Convergence speed and solution quality


(B) Step response only


(C) Only mutation rate


(D) Load flow only



30. GA and PSO are examples of:

(A) Metaheuristic optimization techniques


(B) Step response only


(C) Only linear programming methods


(D) Load flow only



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