To improve the convergence and distribution of Multi-objective Evolutionary Algorithm(MOEA)in dealing with large-dimensional Multi-objective Optimization Problem(MOP),a multi-objective particle swarm optimization algorithm based on human disciplinary behavior is proposed.The strategies such as promoting/punishment factor,the elite learning strategy as well as restructuring topology structure strategy with dynamic population in period are introduced in proposed algorithm,to make the algorithm have strong global search ability and good robust...