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用遗传算法求解广义S形增长模型
引用本文:朱义东,杜鹏,刘宇,李玉林. 用遗传算法求解广义S形增长模型[J]. 中国海上油气, 2007, 19(2): 100-102
作者姓名:朱义东  杜鹏  刘宇  李玉林
作者单位:1. 中海石油(中国)有限公司深圳分公司
2. 中海石油(中国)有限公司湛江分公司文昌作业公司
3. 中国石油大庆油田有限责任公司采油工程研究院
4. 中国石油塔里木油田分公司
摘    要:广义S形增长模型在用于预测油气田累积产量和含水率方面功能显著,但该模型是具有多个未知参数的非线性模型,常规求解方法存在的不足可能会造成计算精度变差,从而影响预测效果。以累积产油量广义S形增长模型的求解为例,说明了采用遗传算法求解的方法和效果。遗传算法可提高求解的精度,是求解广义S形增长模型的较好方法。

关 键 词:广义S形增长模型  遗传算法  非线性模型  累积产油量
修稿时间:2006-03-30

Making a solution for generalized S-shaped increasing model by genetic algorithms
Zhu Yidong,Du Peng,Liu Yu,Li Yulin. Making a solution for generalized S-shaped increasing model by genetic algorithms[J]. China Offshore Oil and Gas, 2007, 19(2): 100-102
Authors:Zhu Yidong  Du Peng  Liu Yu  Li Yulin
Abstract:Generalized S-shaped increasing model is useful in prediction of cumulative production and water-cut in fields,but the conventional approach to make its solution could result in poor calculation accuracy and prediction efficiency because it is a nonlinear model with several unknown parameters.The method and efficiency to make a solution for the model by genetic algorithms are illustrated during prediction of cumulative production for the generalized S-shaped increasing model.It is considered that the genetic algorithms can improve solution accuracy,and this is a better method to make a solution for the increasing model.
Keywords:generalized S-shaped increasing model  genetic algorithms  nonlinear model  cumulative oil production
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