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(2+1)维BBM方程的一类新的精确解 被引量:2
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作者 曹生让 卢殿臣 《科学技术与工程》 2007年第20期5316-5318,共3页
在F展开法和直接代数法的基础上,通过线性变换,将(2+1)维BBM方程约化为标准椭圆方程,再由标准方程的行波解的结构和参数假设法求出原方程的解,从而得到了(2+1)维BBM方程的丰富精确解。
关键词 (2+1)维BBM方程 行波解 精确解 参数假设法 标准椭圆方程
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Theoretical generalization of Markov chain random field from potential function perspective 被引量:2
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作者 黄翔 王志忠 郭建华 《Journal of Central South University》 SCIE EI CAS CSCD 2016年第1期189-200,共12页
The inner relationship between Markov random field(MRF) and Markov chain random field(MCRF) is discussed. MCRF is a special MRF for dealing with high-order interactions of sparse data. It consists of a single spatial ... The inner relationship between Markov random field(MRF) and Markov chain random field(MCRF) is discussed. MCRF is a special MRF for dealing with high-order interactions of sparse data. It consists of a single spatial Markov chain(SMC) that can move in the whole space. Generally, the theoretical backbone of MCRF is conditional independence assumption, which is a way around the problem of knowing joint probabilities of multi-points. This so-called Naive Bayes assumption should not be taken lightly and should be checked whenever possible because it is mathematically difficult to prove. Rather than trap in this independence proving, an appropriate potential function in MRF theory is chosen instead. The MCRF formulas are well deduced and the joint probability of MRF is presented by localization approach, so that the complicated parameter estimation algorithm and iteration process can be avoided. The MCRF model is then applied to the lithofacies identification of a region and compared with triplex Markov chain(TMC) simulation. Analyses show that the MCRF model will not cause underestimation problem and can better reflect the geological sedimentation process. 展开更多
关键词 localization approach Markov model potential fimction reservoir simulation transiogram fitting
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