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Overseas Construction Order Forecasting Using Time Series Model

시계열 모형을 이용한 해외건설 수주 전망

  • 김운중 (동국대학교 일반대학원 경제학과)
  • Received : 2018.01.04
  • Accepted : 2018.02.09
  • Published : 2018.03.31

Abstract

Since 2010, Korea's overseas construction orders have seen dramatic fluctuations. I propose causes and remedies for the industry as a whole. Orders have recorded an annual average of $63.8 billion dollars from 2011 to 2014, reaching its highest at $71.6 billion dollars(2010) which marked the peak of Korea's overseas construction. However, due to a decline in international oil prices, starting in the last half of 2014, Korea's overseas construction orders have followed suit recording $46.1 billion dollar in 2014, $28.2 billion dollars in 2016, and $29.0 billion dollars in 2017. Facing uncertainty in Korea's overseas construction market, caused by continued slow growth of the global economy, Korean EPC contractors are at a critical point in regards to their award-winning capabilities. Together with declining oil prices, the challenges have never been bigger. To mitigate the challenges, I would suggest policy direction as a way to grow and develop the overseas construction industry. Proper counterplans are needed to foster Korea's overseas construction industry. Forecasting total order amount for overseas construction projects is essencial. Analyzing contract award & tender structure and its changing trends in both overseas and world construction markets should also be included. Korea has great potential and global competitiveness. These measures will serve to enhance Korea's overall export strategy in uncertain overseas markets and global economy.

2010년 이후 한국 해외건설 수주가 극적 변동을 보임에 따라, 이에 대한 원인과 대응방안을 모색하고자 한다. 한국 해외건설은 2010년 716억불을 정점으로 2011년에서 2014년까지 연평균 638억불을 기록하였다. 하지만, 2014년 하반기부터 시작된 국제유가 하락으로 2015년 461억불을, 2016년 282억불, 2017년 290억불의 수주에 그쳤다. 국제 유가 하락과 더불어, 세계 경제 저성장 지속과 우리 기업의 EPC 수주 역량 한계점 봉착 등으로 불확실성이 과거 어느 때보다 증가하고 있다. 이와 같은 불확실한 해외건설시장 상황 속에서 적절한 대응방안을 모색하고, 많은 가능성과 글로벌 경쟁력을 갖추고 있는 해외건설산업을 국가수 출전략산업으로 육성 발전시키기 위하여, 세계건설시장과 해외건설시장의 발주 및 수주 구조와 그 변화추세를 분석하고, 향후 해외건설 수주 규모를 예측함으로써 해외건설산업의 건전한 육성 및 발전을 위한 정책 방향을 제시하고자 한다.

Keywords

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