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An Improved Particle Swarm Algorithm and Its Application in Low NOx Combustion Optimization of Coal-fired Utility Boiler

机译:改进的粒子群算法及其在燃煤电站锅炉低NOx燃烧优化中的应用

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To prevent premature convergence frequently appeared in the particle swarm optimization (PSO) for the complex and highly nonlinear relationship between the system inputs and output(s), an improved particle swarm optimization was proposed, named particle swarm optimization with invasive weed (IW-PSO). In IW-PSO, PSO and IWO were integrated in parallel form based on the powerful local search ability of the invasive weed optimization (IWO), and after some iterations, the more diversiform and adaptive invasive weeds were introduced in particle swarm for improving the diversity, the worse particles comparing the fitness of the best previous position were partly mutated for assistantly local searching in invasive weeds. Simulation results show that the method has better searching ability and stability for some complex multimodal functions. Then, IW-PSO was introduced into low Nox combustion optimization, comparison results indicate that the proposed method is a fast and effective one to reduce NOx emissions.
机译:为了防止在系统输入和输出之间的复杂和高度非线性关系中经常出现在粒子群优化(PSO)中经常出现的过早收敛,提出了一种改进的粒子群优化,并具有侵入杂草(IW-PSO)命名粒子群优化)。在IW-PSO,PSO和IWO基于侵入杂草优化(IWO)的强大本地搜索能力,并在一些迭代之后,在一些迭代之后,在粒子群中引入了更多的多样性和适应性侵入性杂草,以改善多样性,比较最佳先前位置的适应性的更糟糕的粒子部分变异,以促进杂草杂草的助攻局部搜索。仿真结果表明,该方法具有更好的搜索能力和稳定性,对某些复杂的多模态功能。然后,将IW-PSO引入低NOx燃烧优化,比较结果表明该方法是一种快速有效的,可以减少NOx排放。

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