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미활용 열에너지를 이용한 바이너리 발전과 신경망 제어

Binary Power plant using unused thermal energy and Neural Network Controllers

  • 투고 : 2021.06.29
  • 심사 : 2021.08.14
  • 발행 : 2021.10.31

초록

최근, 정부는 경기침체 극복에 대응하고 구조적 변환에 따른 국제활동을 주도하기 위한 국가발전 전략으로 "한국판 뉴딜 종합계획"을 도입하였다. 한국판 뉴딜에서 에너지와 관련된 '그린뉴딜'은 배출 가스 제로화를 목표로 하고 저탄소 녹색 경제로의 전환을 가속화하는 것이며, 이를 위해 정부는 재생에너지 사용 확대를 촉진한다는 계획이다. 본 논문에서는 저탄소 녹색 경제로의 전환을 촉진하기 위해 미활용 저온 열에너지를 활용하는 바이너리 발전과 실제 발전환경에서 무인 자동운전을 통해 저 비용으로 유지관리가 가능한 신경망 기반 제어시스템에 대해 검토한다. 이러한 바이너리 발전의 실현은 태양광, 풍력 등과 더불어 재생에너지의 도입을 가속화 할 것으로 기대된다.

Recently, the Korean Government announced the Korean New Deal as a national development strategy to overcome the economic recession from the pandemic crisis and lead the global action against structural changes. In the Korean New Deal, the Green New Deal related with the energy aims to achieve net-zero emissions and accelerates the transition towards a low-carbon and green economy. To this end, the government plans to promote an increased use of renewable energy in the society at large. This paper introduces a binary power generation using unused low-grade thermal energy to accelerate the transition towards a low-carbon and green economy and examines a control system based on Neural Network which is capable maintenance at low-cost by an unmanned automated operation in actual power generation environment. It is expected that the realization of binary power generation accelerates introduction of renewable energy along with solar and wind power.

키워드

참고문헌

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