Mitigation of Hydrometeorological Hazards using AI techniques

수문기학적 자연재해 경감을 위한 Al의 적용

  • Jang, Won-Seok (University of Colorado Boulder Sustainability Innovation Lab at Colorado (SILC)) ;
  • Neff, Jason (University of Colorado Boulder Sustainability Innovation Lab at Colorado (SILC))
  • Published : 2019.08.31

Abstract

Keywords

References

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