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      데이터 마이닝 기법을 활용한 군용 항공기 비행 예측모형 및 비행규칙 도출 연구 = A Study on the Development of Flight Prediction Model and Rules for Military Aircraft Using Data Mining Techniques

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      https://www.riss.kr/link?id=A108288278

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      다국어 초록 (Multilingual Abstract)

      Purpose This paper aims to prepare a full operational readiness by establishing an optimal flight plan considering the weather conditions in order to effectively perform the mission and operation of military aircraft. This paper suggests a flight prediction model and rules by analyzing the correlation between flight implementation and cancellation according to weather conditions by using big data collected from historical flight information of military aircraft supplied by Korean manufacturers and meteorological information from the Korea Meteorological Administration. In addition, by deriving flight rules according to weather information, it was possible to discover an efficient flight schedule establishment method in consideration of weather information.
      Design/methodology/approach This study is an analytic study using data mining techniques based on flight historical data of 44,558 flights of military aircraft accumulated by the Republic of Korea Air Force for a total of 36 months from January 2013 to December 2015 and meteorological information provided by the Korea Meteorological Administration. Four steps were taken to develop optimal flight prediction models and to derive rules for flight implementation and cancellation. First, a total of 10 independent variables and one dependent variable were used to develop the optimal model for flight implementation according to weather condition. Second, optimal flight prediction models were derived using algorithms such as logistics regression, Adaboost, KNN, Random forest and LightGBM, which are data mining techniques. Third, we collected the opinions of military aircraft pilots who have more than 25 years experience and evaluated importance level about independent variables using Python heatmap to develop flight implementation and cancellation rules according to weather conditions. Finally, the decision tree model was constructed, and the flight rules were derived to see how the weather conditions at each airport affect the implementation and cancellation of the flight.
      Findings Based on historical flight information of military aircraft and weather information of flight zone. We developed flight prediction model using data mining techniques. As a result of optimal flight prediction model development for each airbase, it was confirmed that the LightGBM algorithm had the best prediction rate in terms of recall rate. Each flight rules were checked according to the weather condition, and it was confirmed that precipitation, humidity, and the total cloud had a significant effect on flight cancellation. Whereas, the effect of visibility was found to be relatively insignificant. When a flight schedule was established, the rules will provide some insight to decide flight training more systematically and effectively.
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      Purpose This paper aims to prepare a full operational readiness by establishing an optimal flight plan considering the weather conditions in order to effectively perform the mission and operation of military aircraft. This paper suggests a flight pred...

      Purpose This paper aims to prepare a full operational readiness by establishing an optimal flight plan considering the weather conditions in order to effectively perform the mission and operation of military aircraft. This paper suggests a flight prediction model and rules by analyzing the correlation between flight implementation and cancellation according to weather conditions by using big data collected from historical flight information of military aircraft supplied by Korean manufacturers and meteorological information from the Korea Meteorological Administration. In addition, by deriving flight rules according to weather information, it was possible to discover an efficient flight schedule establishment method in consideration of weather information.
      Design/methodology/approach This study is an analytic study using data mining techniques based on flight historical data of 44,558 flights of military aircraft accumulated by the Republic of Korea Air Force for a total of 36 months from January 2013 to December 2015 and meteorological information provided by the Korea Meteorological Administration. Four steps were taken to develop optimal flight prediction models and to derive rules for flight implementation and cancellation. First, a total of 10 independent variables and one dependent variable were used to develop the optimal model for flight implementation according to weather condition. Second, optimal flight prediction models were derived using algorithms such as logistics regression, Adaboost, KNN, Random forest and LightGBM, which are data mining techniques. Third, we collected the opinions of military aircraft pilots who have more than 25 years experience and evaluated importance level about independent variables using Python heatmap to develop flight implementation and cancellation rules according to weather conditions. Finally, the decision tree model was constructed, and the flight rules were derived to see how the weather conditions at each airport affect the implementation and cancellation of the flight.
      Findings Based on historical flight information of military aircraft and weather information of flight zone. We developed flight prediction model using data mining techniques. As a result of optimal flight prediction model development for each airbase, it was confirmed that the LightGBM algorithm had the best prediction rate in terms of recall rate. Each flight rules were checked according to the weather condition, and it was confirmed that precipitation, humidity, and the total cloud had a significant effect on flight cancellation. Whereas, the effect of visibility was found to be relatively insignificant. When a flight schedule was established, the rules will provide some insight to decide flight training more systematically and effectively.

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      참고문헌 (Reference)

      1 이휘영, "항공사 수입관리를 위한 효율적인 운항관리 방안에 관한 연구" (55) : 67-88, 2010

      2 이미숙 ; 김병종, "항공 수요 증가에 따른 항공사 운영 생산성 및 수익성 변화 추정" 한국교통연구원 20 (20): 55-66, 2013

      3 최영은 ; 양봄이, "제주국제공항의 항공기 지연요인 분석" 대한교통학회 39 (39): 137-148, 2021

      4 김덕현 ; 유동희 ; 정대율, "의사결정나무 기법을 이용한 노인들의 자살생각 예측모형 및 의사결정 규칙 개발" 한국정보시스템학회 28 (28): 249-276, 2019

      5 이준호, "외부요인에 의한 항공기 소음도 증감에 관한 연구" (57) : 21-40, 2011

      6 정치영 ; 이재영, "연관성 분석 기법을 활용한 항공기 결함 분석" 한국자료분석학회 12 (12): 261-269, 2010

      7 최근호 ; 서용무 ; 유동희, "산재근로자들의 고용안정과 건강한 삶을 위한 데이터마이닝 기반의 규칙 도출 연구" 한국직업재활학회 25 (25): 5-24, 2015

      8 김찬조, "민항기 개발 비행시험을 위한 최적 시험장소 연구" 1286-1289, 2010

      9 최종후, "데이터마이닝 의사결정나무의 응용" 4 (4): 61-83, 1999

      10 김량형 ; 유동희 ; 김건우, "데이터마이닝 기법을 이용한 기업부실화 예측 모델 개발과 예측 성능 향상에 관한 연구" 한국경영정보학회 18 (18): 173-198, 2016

      1 이휘영, "항공사 수입관리를 위한 효율적인 운항관리 방안에 관한 연구" (55) : 67-88, 2010

      2 이미숙 ; 김병종, "항공 수요 증가에 따른 항공사 운영 생산성 및 수익성 변화 추정" 한국교통연구원 20 (20): 55-66, 2013

      3 최영은 ; 양봄이, "제주국제공항의 항공기 지연요인 분석" 대한교통학회 39 (39): 137-148, 2021

      4 김덕현 ; 유동희 ; 정대율, "의사결정나무 기법을 이용한 노인들의 자살생각 예측모형 및 의사결정 규칙 개발" 한국정보시스템학회 28 (28): 249-276, 2019

      5 이준호, "외부요인에 의한 항공기 소음도 증감에 관한 연구" (57) : 21-40, 2011

      6 정치영 ; 이재영, "연관성 분석 기법을 활용한 항공기 결함 분석" 한국자료분석학회 12 (12): 261-269, 2010

      7 최근호 ; 서용무 ; 유동희, "산재근로자들의 고용안정과 건강한 삶을 위한 데이터마이닝 기반의 규칙 도출 연구" 한국직업재활학회 25 (25): 5-24, 2015

      8 김찬조, "민항기 개발 비행시험을 위한 최적 시험장소 연구" 1286-1289, 2010

      9 최종후, "데이터마이닝 의사결정나무의 응용" 4 (4): 61-83, 1999

      10 김량형 ; 유동희 ; 김건우, "데이터마이닝 기법을 이용한 기업부실화 예측 모델 개발과 예측 성능 향상에 관한 연구" 한국경영정보학회 18 (18): 173-198, 2016

      11 김원종 ; 최연식 ; 유동희, "데이터 마이닝을 활용한 한국 프로야구 구단의 승패예측과 승률향상을 위한 전략 도출 연구" 한국스포츠산업경영학회 23 (23): 88-104, 2018

      12 이동욱, "데이터 마이닝을 활용한 자동차 재구매 증진 방안에 관한 연구" 경상대학교 2017

      13 김연풍, "공항주변지역 소음도 분포특성에 관한 연구 : 광주·여수 공항을 중심으로" 조선대학교 대학원 2010

      14 이재규, "경영정보시스템 원론" 법영사 2005

      15 Hand, David J, "Principles of data mining" 621-622, 2007

      16 Macheret, Y, "Improving Reliability and Operational Availability of Military Systems" 3948-3957, 2005

      17 Song, Y., "Decision Tee Methods : Applications for Classification and Prediction" 27 (27): 130-135, 2015

      18 Written, I. H., "Data Mining:Practice Machine Learning Tools and Technique" Morgan Kaufmann Publishers 2005

      19 Mustafa, R. H., "Big Data Analysis using WEKA Machine Learning Program and SPSS Package: A Comparative Study" SUDAN UNIVERSITY OF SCIENCE AND TECHNOLOGY 2020

      20 Mao. X, "A Decision Support Method for Flight Cancellation in Adverse Weather: An Airport Perspective" 1E2-1-1E2-9, 2015

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