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多Agent并行遗传算法在地震勘探属性优化中的应用
Seismic Exploration Attribute Optimization Based on Multi-Agent Parallel Genetic Algorithm
【摘要】 研究了基于多Agent的并行遗传算法,并将其应用于石油勘探的属性优化。针对常规遗传算法的不足,采用Agent构建多Agent系统实现了基于粗粒度的并行遗传算法,该算法能从进化环境中获取表征当前进化状态的有用信息,智能地监控调度GA的进化操作,在避免早熟的同时加快全局寻优,提高遗传算法搜索的效率,同时具有通讯开销小的特点。将该方法用于地震勘探属性优化,取得了良好的效果。
【Abstract】 The method of design and implementation for parallel genetic algorithm is based on thick grain,with the multi-Agent combined with genetic evolution technology,to optimize the seismic attribution selection.A multi-Agent system includes two kinds of Agents:N-Agent and M-Agent,they can exchange the useful information which can represent the current situation of evolution.The methods are benefit to improve the performance of parallel genetic algorithm,and to raise the searching efficiency of the parallel genetic algorithm.The projecting feature in the parallel module is less communicating overhead.It was used in the optimization of oil exploration attribute selection and the result is good.
【Key words】 Agent; Attribute optimization; Genetic algorithm; Parallel;
- 【文献出处】 计算机科学 ,Computer Science , 编辑部邮箱 ,2010年04期
- 【分类号】P631.4;TP18
- 【被引频次】2
- 【下载频次】151