• DocumentCode
    1395661
  • Title

    Discovering Unique, Low-Energy Pure Water Isomers: Memetic Exploration, Optimization, and Landscape Analysis

  • Author

    Soh, Harold ; Ong, Yew-Soon ; Nguyen, Quoc Chinh ; Nguyen, Quang Huy ; Habibullah, Mohamed Salahuddin ; Hung, Terence ; Kuo, Jer-Lai

  • Author_Institution
    Imperial Coll. London, London, UK
  • Volume
    14
  • Issue
    3
  • fYear
    2010
  • fDate
    6/1/2010 12:00:00 AM
  • Firstpage
    419
  • Lastpage
    437
  • Abstract
    The discovery of low-energy stable and meta-stable molecular structures remains an important and unsolved problem in search and optimization. In this paper, we contribute two stochastic algorithms, the archiving molecular memetic algorithm (AMMA) and the archiving basin hopping algorithm (ABHA) for sampling low-energy isomers on the landscapes of pure water clusters (H2O)n. We applied our methods to two sophisticated empirical water cluster models, TTM2.1-F and OSS2, and generated archives of low-energy water isomers (H2O)n n=3-15. Our algorithms not only reproduced previously-found best minima, but also discovered new global minima candidates for sizes 9-15 on OSS2. Further numerical results show that AMMA and ABHA outperformed a baseline stochastic multistart local search algorithm in terms of convergence and isomer archival. Noting a performance differential between TTM2.1-F and OSS2, we analyzed both model landscapes to reveal that the global and local correlation properties of the empirical models differ significantly. In particular, the OSS2 landscape was less correlated and hence, more difficult to explore and optimize. Guided by our landscape analyses, we proposed and demonstrated the effectiveness of a hybrid local search algorithm, which significantly improved the sampling performance of AMMA on the larger OSS2 landscapes. Although applied to pure water clusters in this paper, AMMA and ABHA can be easily modified for subsequent studies in computational chemistry and biology. Moreover, the landscape analyses conducted in this paper can be replicated for other molecular systems to uncover landscape properties and provide insights to both physical chemists and evolutionary algorithmists.
  • Keywords
    genetic algorithms; isomerism; metastable states; molecular clusters; water; (H2O)n; OSS2 landscape analysis; archiving basin hopping algorithm; archiving molecular memetic algorithm; computational biology; computational chemistry; global correlation properties; global minima candidates; hybrid local search algorithm; isomer archival; local correlation properties; low-energy stable molecular structures; memetic exploration; metastable molecular structures; optimization; pure water isomers; sophisticated empirical water cluster models; stochastic algorithms; stochastic multistart local search algorithm convergence; Basin hopping; isomer sampling; landscape analysis; memetic algorithm; molecular optimization;
  • fLanguage
    English
  • Journal_Title
    Evolutionary Computation, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1089-778X
  • Type

    jour

  • DOI
    10.1109/TEVC.2009.2033584
  • Filename
    5398873