4.7 Article

Boosting Data-Driven Evolutionary Algorithm With Localized Data Generation

期刊

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TEVC.2020.2979740

关键词

Optimization; Iron; Data models; Buildings; Boosting; Computational modeling; Adaptation models; Boosting strategy (BS); data-driven evolutionary algorithm (DDEA); expensive optimization problems (EOPs); localized data generation (LDG); surrogate

资金

  1. National Key Research and Development Program of China [2019YFB2102102]
  2. Outstanding Youth Science Foundation [61822602]
  3. National Natural Science Foundations of China [61772207, 61873097]
  4. Guangdong Natural Science Foundation Research Team [2018B030312003]
  5. Ministry of Science and ICT through the National Research Foundation of Korea [NRF-2019H1D3A2A01101977]
  6. National Research Foundation of Korea [2019H1D3A2A01101977] Funding Source: Korea Institute of Science & Technology Information (KISTI), National Science & Technology Information Service (NTIS)

向作者/读者索取更多资源

By efficiently building and exploiting surrogates, data-driven evolutionary algorithms (DDEAs) can be very helpful in solving expensive and computationally intensive problems. However, they still often suffer from two difficulties. First, many existing methods for building a single ad hoc surrogate are suitable for some special problems but may not work well on some other problems. Second, the optimization accuracy of DDEAs deteriorates if available data are not enough for building accurate surrogates, which is common in expensive optimization problems. To this end, this article proposes a novel DDEA with two efficient components. First, a boosting strategy (BS) is proposed for self-aware model managements, which can iteratively build and combine surrogates to obtain suitable surrogate models for different problems. Second, a localized data generation (LDG) method is proposed to generate synthetic data to alleviate data shortage and increase data quantity, which is achieved by approximating fitness through data positions. By integrating the BS and the LDG, the BDDEA-LDG algorithm is able to improve model accuracy and data quantity at the same time automatically according to the problems at hand. Besides, a tradeoff is empirically considered to strike a better balance between the effectiveness of surrogates and the time cost for building them. The experimental results show that the proposed BDDEA-LDG algorithm can generally outperform both traditional methods without surrogates and other state-of-the-art DDEA son widely used benchmarks and an arterial traffic signal timing real-world optimization problem. Furthermore, the proposed BDDEA-LDG algorithm can use only about 2% computational budgets of traditional methods for producing competitive results.

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