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2015年05月05日

【期刊论文】Crystal-Energy Optimization Algorithm

冯翔, 马美怡, 虞慧群

Computational Intelligence,2014,32(2):284-322

2014年11月28日

摘要

Nature has always been a muse for those who dream in art or science. As it goes, optimization algorithms inspired by nature have been widely used to solve various scientific and engineering problems because of their intelligence and simplicity. As a novel nature‐inspired algorithm, the crystal energy optimizer (CEO) is proposed in this article. The proposed CEO is motivated by the following general observation on lake freezing in nature: the dynamics of crystals have possession of parallelism, openness, local interactivity, and self‐organization. It stimulates us to extend a crystal dynamic model in physics to a generalized crystal energy optimizer for traveling salesman problems, so as to exploit the advantages of crystal dynamic system and to realize the aforementioned purposes. The proposed CEO has these advantages: (1) it has the ability to perform large‐scale distributed parallel optimization; (2) it can converge and avoid local optimum; and (3) it is flexible and easy to adapt to a wide range of optimization problems.

crystal energy optimizer (, CEO), , computational intelligence, parallel algorithm, nature-inspired algorithm, traveling salesman problem (, TSP),

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2020年11月25日

【期刊论文】Crystal-Energy Optimization Algorithm

冯翔, 马美怡, 虞慧群

Computational Intelligence,2014,32(2):284-322

2014年11月28日

摘要

Nature has always been a muse for those who dream in art or science. As it goes, optimization algorithms inspired by nature have been widely used to solve various scientific and engineering problems because of their intelligence and simplicity. As a novel nature-inspired algorithm, the crystal energy optimizer (CEO) is proposed in this article. The proposed CEO is motivated by the following general observation on lake freezing in nature: the dynamics of crystals have possession of parallelism, openness, local interactivity, and self-organization. It stimulates us to extend a crystal dynamic model in physics to a generalized crystal energy optimizer for traveling salesman problems, so as to exploit the advantages of crystal dynamic system and to realize the aforementioned purposes. The proposed CEO has these advantages: (1) it has the ability to perform large-scale distributed parallel optimization; (2) it can converge and avoid local optimum; and (3) it is flexible and easy to adapt to a wide range of optimization problems

crystal energy optimizer (, CEO), , omputational intelligence, parallel algorithm, nature-inspired algorithm, traveling salesman problem (, TSP),

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2020年11月26日

【期刊论文】CDN缓存资源分配的细胞优化算法

冯翔, 马美怡, 虞慧群

《计算机科学》,2018,41(1):105-110

2018年11月14日

摘要

为了缓解Internet网络拥挤状况,提高用户访问网站的响应速度,从技术上解决由于网络带宽小、用户访问量大、网点分布不均等原因所造成的用户访问网站响应速度慢的问题,提出了一种新的缓存资源分配方法——细胞优化算法。该算法是模仿自然细胞系统功能的一种智能优化方法,其通过模拟细胞内部结构和原理,对细胞核、细胞质的浓度、细胞间的亲和度、细胞优化机制、细胞的动态演化过程建立数学模型。给出了算法的并行计算结构和步骤。最后,通过理论证明、仿真实验与同类算法的比较,验证了算法求解CDN缓,存资源分配问题的有效性。

CDN, 缓存资源分配, 细胞优化算法, 分布并行算法

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2015年05月05日

【期刊论文】Behavioral Modeling With New Bio-inspired Coordination Generalized Molecular Model Algorithm

冯翔, Francis C.M. Lau, 虞慧群

Information Sciences,2013,252(12):1-19

2013年12月10日

摘要

Social Networks (SN) is an increasingly popular topic in artificial intelligence research. One of the key directions is to model and study the behaviors of social agents. In this paper, we propose a new computational model which can serve as a powerful tool for the analysis of SN. Specifically, we add to the traditional socio metric methods a novel analytical method in order to deal with social behaviors more effectively, and then present a new bio-inspired model, the coordination generalized molecule model (CGMM). The proposed analytical method for social behaviors and CGMM are combined to give an algorithm that can be used to solve complex problems in SN. Traditionally, SN models were mainly descriptive and were built at a very coarse level, typically with only a few global parameters, and turned out to be not sufficiently useful for analyzing social behaviors. In this work, we explore bio-inspired analytical models for analyzing social behaviors of intelligent agents. Our objective is to propose an effective and practical method to model intelligent systems and their behaviors in an open and complex unpredictable world.

Social networks (, SN), , Social behavior, Social coordination, Coordination generalized molecule model (, CGMM),

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2020年11月25日

【期刊论文】Behavioral Modeling With New Bio-inspired Coordination Generalized Molecular Model Algorithm

冯翔, Francis C.M. Lau, 虞慧群

Information Sciences,2013,252(12):1-19

2013年11月10日

摘要

Social Networks (SN) is an increasingly popular topic in artificial intelligence research. One of the key directions is to model and study the behaviors of social agents. In this paper, we propose a new computational model which can serve as a powerful tool for the analysis of SN. Specifically, we add to the traditional sociometric methods a novel analytical method in order to deal with social behaviors more effectively, and then present a new bio-inspired model, the coordination generalized molecule model (CGMM). The proposed analytical method for social behaviors and CGMM are combined to give an algorithm that can be used to solve complex problems in SN. Traditionally, SN models were mainly descriptive and were built at a very coarse level, typically with only a few global parameters, and turned out to be not sufficiently useful for analyzing social behaviors. In this work, we explore bio-inspired analytical models for analyzing social behaviors of intelligent agents. Our objective is to propose an effective and practical method to model intelligent systems and their behaviors in an open and complex unpredictable world.

Social networks(SN), Social behavior, Social coordination, Coordination generalized molecule model(, CGMM),

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  • 冯翔 邀请

    华东理工大学,上海

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