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엘만 순환 신경망을 사용한 전력 에너지 시계열의 예측 및 분석 KCI 등재

The Prediction and Analysis of the Power Energy Time Series by Using the Elman Recurrent Neural Network

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한국산업경영시스템학회지 (Journal of Society of Korea Industrial and Systems Engineering)
한국산업경영시스템학회 (Society of Korea Industrial and Systems Engineering)
초록

In this paper, we propose an Elman recurrent neural network to predict and analyze a time series of power energy consumption. To this end, we consider the volatility of the time series and apply the sample variance and the detrended fluctuation analyses to the volatilities. We demonstrate that there exists a correlation in the time series of the volatilities, which suggests that the power consumption time series contain a non-negligible amount of the non-linear correlation. Based on this finding, we adopt the Elman recurrent neural network as the model for the prediction of the power consumption. As the simplest form of the recurrent network, the Elman network is designed to learn sequential or time-varying pattern and could predict learned series of values. The Elman network has a layer of “context units” in addition to a standard feedforward network. By adjusting two parameters in the model and performing the cross validation, we demonstrated that the proposed model predicts the power consumption with the relative errors and the average errors in the range of 2%~5% and 3kWh~8kWh, respectively. To further confirm the experimental results, we performed two types of the cross validations designed for the time series data. We also support the validity of the model by analyzing the multi-step forecasting. We found that the prediction errors tend to be saturated although they increase as the prediction time step increases. The results of this study can be used to the energy management system in terms of the effective control of the cross usage of the electric and the gas energies.

목차
1. 서 론
 2. 전력 시계열의 비선형 상관관계
  2.1 변동성 척도
  2.2 표본 분산 분석
  2.3 비경향 섭동 분석
 3. 순환 신경망을 사용한 시계열 데이터 예측
  3.1 Elman 순환 신경망
  3.2 Elman 순환 신경망의 모수 조정 및 적합
  3.3 교차 검증
  3.4 다중 단계 시계열 예측
 4. 결론 및 요약
 References
저자
  • 이창용(공주대학교 산업시스템공학과) | Chang-Yong Lee (Dept. of Industrial and Systems Engineering, Kongju National University)
  • 김진호(공주대학교 산업시스템공학과) | Jinho Kim (Dept. of Industrial and Systems Engineering, Kongju National University) Corresponding Author