Following the development of large and high performance computers, it becomes possible to study and to process the large complex systems by computers and this task is putting on schedule. Many new algorithms are posed to meet the requirement of the research. This project is devoted to the research on the mathematical models, analysis methods and algorithms for the complex systems , such as the DNA sequences, which are the blue prints of human beings and other organisms. The theoretical analysis and applications on the algorithms, such as HMM, linguistic models, self-organized learning, etc., are considered. The stochastic resonance is studied and its relation to molecular motors, which widely attracting tremendous amount of attention, also considered.
自组织学习,演化算法,神经网络,模拟退火隐MARKOV模型,以及模拟MARKOV样本法等在对付大规复杂系统中出现的组合爆炸及非线性是很有力的工具,它们具有通用、稳健、简单,等重要优点。本研究可以说是对于象DNA序列分析这样未知结构,但在21世纪理论与应用两矫婢哂兄匾庖宓奈侍獾墓丶际酢
{{i.achievement_title}}
数据更新时间:2023-05-31
DNAgenie: accurate prediction of DNA-type-specific binding residues in protein sequences
多能耦合三相不平衡主动配电网与输电网交互随机模糊潮流方法
神经退行性疾病发病机制的研究进展
基于MCPF算法的列车组合定位应用研究
具有随机多跳时变时延的多航天器协同编队姿态一致性
随机算法与应用随机分析
矩阵分解的随机算法、随机扰动分析及其应用
随机分析及其在统计中的应用
非常规跟踪目标下随机系统迭代学习控制算法设计与分析