Literature DB >> 27997791

Neural-Network-Biased Genetic Algorithms for Materials Design: Evolutionary Algorithms That Learn.

Tarak K Patra1, Venkatesh Meenakshisundaram1, Jui-Hsiang Hung1, David S Simmons1.   

Abstract

Machine learning has the potential to dramatically accelerate high-throughput approaches to materials design, as demonstrated by successes in biomolecular design and hard materials design. However, in the search for new soft materials exhibiting properties and performance beyond those previously achieved, machine learning approaches are frequently limited by two shortcomings. First, because they are intrinsically interpolative, they are better suited to the optimization of properties within the known range of accessible behavior than to the discovery of new materials with extremal behavior. Second, they require large pre-existing data sets, which are frequently unavailable and prohibitively expensive to produce. Here we describe a new strategy, the neural-network-biased genetic algorithm (NBGA), for combining genetic algorithms, machine learning, and high-throughput computation or experiment to discover materials with extremal properties in the absence of pre-existing data. Within this strategy, predictions from a progressively constructed artificial neural network are employed to bias the evolution of a genetic algorithm, with fitness evaluations performed via direct simulation or experiment. In effect, this strategy gives the evolutionary algorithm the ability to "learn" and draw inferences from its experience to accelerate the evolutionary process. We test this algorithm against several standard optimization problems and polymer design problems and demonstrate that it matches and typically exceeds the efficiency and reproducibility of standard approaches including a direct-evaluation genetic algorithm and a neural-network-evaluated genetic algorithm. The success of this algorithm in a range of test problems indicates that the NBGA provides a robust strategy for employing informatics-accelerated high-throughput methods to accelerate materials design in the absence of pre-existing data.

Entities:  

Keywords:  Ising model; compatibilizer; genetic algorithm; machine learning; materials design; molecular dynamics simulation; neural network; optimization; polymers; soft matter

Mesh:

Substances:

Year:  2017        PMID: 27997791     DOI: 10.1021/acscombsci.6b00136

Source DB:  PubMed          Journal:  ACS Comb Sci        ISSN: 2156-8944            Impact factor:   3.784


  5 in total

1.  MDTS: automatic complex materials design using Monte Carlo tree search.

Authors:  Thaer M Dieb; Shenghong Ju; Kazuki Yoshizoe; Zhufeng Hou; Junichiro Shiomi; Koji Tsuda
Journal:  Sci Technol Adv Mater       Date:  2017-07-20       Impact factor: 8.090

Review 2.  Machine learning-driven new material discovery.

Authors:  Jiazhen Cai; Xuan Chu; Kun Xu; Hongbo Li; Jing Wei
Journal:  Nanoscale Adv       Date:  2020-06-22

3.  Multi-objective Optimization for Materials Discovery via Adaptive Design.

Authors:  Abhijith M Gopakumar; Prasanna V Balachandran; Dezhen Xue; James E Gubernatis; Turab Lookman
Journal:  Sci Rep       Date:  2018-02-27       Impact factor: 4.379

4.  Predicting the effect of 5-fluorouracil-based adjuvant chemotherapy on colorectal cancer recurrence: A model using gene expression profiles.

Authors:  Quan Chen; Peng Gao; Yongxi Song; Xuanzhang Huang; Qiong Xiao; Xiaowan Chen; Xinger Lv; Zhenning Wang
Journal:  Cancer Med       Date:  2020-03-09       Impact factor: 4.452

5.  Multiwalled Carbon Nanotube-N-Doped Graphene/Poly(3,4-ethylenedioxythiophene):Poly(styrenesulfonate) Nanohybrid for Electrochemical Application in Intelligent Sensors and Supercapacitors.

Authors:  Ting Xue; Peng Liu; Jie Zhang; Jingkun Xu; Ge Zhang; Peicong Zhou; Yingying Li; Yifu Zhu; Xinyu Lu; Yangping Wen
Journal:  ACS Omega       Date:  2020-10-27
  5 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.