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MPSO-Based Operational Conditions Optimization in Chemical Process: A Case Study

机译:基于MPSO的化工过程运行条件优化:一个案例研究

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A multi-swarm PSO (MPSO) was proposed, with which the whole swarm is divided into by K-means clustering algorithm randomly to accelerate searching process of global optimum. The big swarm clustering will obey the standard PSO principle to search the global optimal result, which the number of particle is more than a threshold. The small swarm clustering will search randomly inner neighborhood of the global optimal value, and then the outlier particle does not care about the optimal result but flies freely according to themselves velocities and positions. The proposed algorithm enhances its global searching space, and enriches particles' diversity in order to let particles jump out local optimization points. Testing and comparing results with standard PSO and linearly decreasing weight PSO using several benchmark functions show the proposed algorithm is better than other algorithms. Furthermore, the MPSO algorithm is used to optimize the operational conditions in a chemical process case for an ethylene cracking furnace.
机译:提出了一种多群PSO算法,通过K-means聚类算法将整个种群随机划分,以加速全局最优搜索过程。大群聚类将遵循标准的PSO原理来搜索全局最优结果,即粒子数量大于阈值。小群聚类将随机搜索全局最优值的内部邻域,然后异常值粒子并不关心最优结果,而是根据自己的速度和位置自由飞行。该算法增强了其全局搜索空间,丰富了粒子的多样性,使粒子跳出局部优化点。使用几个基准函数对标准PSO和线性递减的PSO进行测试并进行比较,结果表明该算法优于其他算法。此外,MPSO算法用于优化乙烯裂解炉化学过程中的操作条件。

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