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research-article

A new hybrid model combining EMD and neural network for multi-step ahead load forecasting

Published: 01 January 2022 Publication History

Abstract

The electric load forecasting (ELF) is a key area of the modern power system (MPS) applications and also for the virtual power plant (VPP) analysis. The ELF is most prominent for the distinct applications of MPS and VPP such as real-time analysis of energy storage system, distributed energy resources, demand side management and electric vehicles etc. To manage the real-time challenges and map the stable power demand, in different time steps, the ELF is evaluated in yearly, monthly, weekly, daily, and hourly, etc. basis. In this study, an intelligent load predictor which is able to forecast the electric load for next month or day or hour is proposed. The proposed approach is a hybrid model combining empirical mode decomposition (EMD) and neural network (NN) for multi-step ahead load forecasting. The model performance is demonstrated by suing historical dataset collected form GEFCom2012 and GEFCom2014. For the demonstration of the performance, three case studies are analyzed into two categories. The demonstrated results represents the higher acceptability of the proposed approach with respect to the standard value of MAPE (mean absolute percent error).

References

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            Published In

            cover image Journal of Intelligent & Fuzzy Systems: Applications in Engineering and Technology
            Journal of Intelligent & Fuzzy Systems: Applications in Engineering and Technology  Volume 42, Issue 2
            Digital transformation through advances in artificial intelligence and machine learning
            2022
            626 pages

            Publisher

            IOS Press

            Netherlands

            Publication History

            Published: 01 January 2022

            Author Tags

            1. Feature extraction
            2. decomposition
            3. intelligent data analytics
            4. short-term forecasting
            5. power system planning

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