“…The PSO has remarkable advantages in solving non-linear transient problems and there are several important areas where these derivative methods have made a majority contribution, like parameter magnet [7], [8], parameter identification [9], path planning [10] [11], large scale optimization [12], process synthesis [13], community detection [14], feature selection [15], risk prediction [16], biomass power plant [17] and financial management [18] In 2015, Li [19] proposed the HMPSO based on the historical memory of the particle, which uses a distribution estimation algorithm to estimate and preserve information about the distribution of the historical promising personal best position of the particle. The best position of the particle is selected from three candidate positions, generated from the historical memory, the particles' current personal best position, and the swarm's global best position.…”