Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
382495 | Expert Systems with Applications | 2014 | 8 Pages |
•We propose a particle swarm optimization based on a Markov chain and differential evolution.•The algorithm is evaluated in a comprehensive way in terms of some well-defined criteria.•SLEPSO algorithm is applied for quantification analysis of the lateral flow immunoassay system.
This paper presents a novel particle swarm optimization (PSO) based on a non-homogeneous Markov chain and differential evolution (DE) for quantification analysis of the lateral flow immunoassay (LFIA), which represents the first attempt to estimate the concentration of target analyte based on the well-established state-space model. A new switching local evolutionary PSO (SLEPSO) is developed and analyzed. The velocity updating equation jumps from one mode to another based on the non-homogeneous Markov chain, where the probability transition matrix is updated by calculating the diversity and current optimal solution. Furthermore, DE mutation and crossover operations are implemented to improve local best particles searching in PSO. Compared with some well-known PSO algorithms, the experiments results show the superiority of proposed SLEPSO. Finally, the new SLEPSO is successfully exploited to quantification analysis of the LFIA system, which is essentially nonlinear and dynamic. Therefore, this can provide a new method for the area of quantitative interpretation of LFIA system.