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Meteorological Information Analysis Algorithm based on Weight for Outdoor Activity Decision-Making
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  • Journal title : Journal of Digital Convergence
  • Volume 14, Issue 3,  2016, pp.209-217
  • Publisher : The Society of Digital Policy and Management
  • DOI : 10.14400/JDC.2016.14.3.209
 Title & Authors
Meteorological Information Analysis Algorithm based on Weight for Outdoor Activity Decision-Making
Lee, Moo-Hun; Kim, Min-Gyu;
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 Abstract
Recently, the outdoor activities were increased in accordance with economic growth and improved quality of life. In addition, weather and outdoor activities are closely related. Currently, Outdoor Activities decisions are determined by the Korea Meteorological Administrator`s forecasts and subjective experience. Therefore, we need the analysis method that can provide a basis for the decision on outdoor activities based on meteorological information. In this paper, we propose an algorithm that can analyze meteorological information to support decision-making outdoor activities. And the algorithm is based on the data mining. In addition, we have constructed a baseball game schedule with automatic weather system`s observation data in the training data. We verified the improved performance of the proposed algorithm.
 Keywords
Meteorological Information;Data Mining;Classification Algorithm;Decision Support System;AWS(Automatic Weather System);
 Language
Korean
 Cited by
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