The invention discloses a
quantum particle swarm multi-objective optimization method. The method comprises the following steps: S1, establishing a
quantum double-
delta potential well model based on double-
potential well simplification; S2, establishing a
particle position updating model based on the double
potential well model; S3, constructing a
shared learning strategy of the particles; And S4,constructing a
quantum particle swarm multi-objective optimization
algorithm. According to the quantum double-potential well model, a
particle position updating formula is established, an inner localattractor and an outer local
attractor are introduced, the local optimization precision of the
algorithm is improved, and solution distribution is more uniform; According to the
shared learning mechanism provided by the invention, the searching range of particles can be expanded, the diversity of solutions is increased, and the tendency that a
quantum particle swarm
algorithm is easy to converge to a boundary solution is avoided; When the method is used for
processing the high-dimensional target
optimization problem, the good convergence performance and distribution performance can still be kept, and the multi-target
optimization problem in
engineering application can be solved more practically.