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基于模拟退火的微粒群算法

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摘要 微粒群算法具有较强的全局搜索能力,但容易陷入局部最小点,与模拟退火算法相结合,利用退火算法搜索过程中具有的概率突跳能力,能够有效地避免搜索过程陷入局部极小解。仿真结果表明,改进的算法能够有更好的优化效果。
出处 《山东电大学报》 2010年第2期70-72,共3页 Journal of Shandong TV University
关键词 PSO 模拟退火 算法
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参考文献12

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