AI-based Optimal scheduling of Renewable AC Microgrids with
bidirectional LSTM-Based Wind Power Forecasting
- URL: http://arxiv.org/abs/2208.04156v2
- Date: Tue, 9 Aug 2022 01:22:51 GMT
- Title: AI-based Optimal scheduling of Renewable AC Microgrids with
bidirectional LSTM-Based Wind Power Forecasting
- Authors: Hossein Mohammadi, Shiva Jokar, Mojtaba Mohammadi, Abdollah
Kavousifard, Morteza Dabbaghjamanesh
- Abstract summary: This paper proposes an effective framework for optimal scheduling of microgrids considering energy storage devices, wind turbines, micro turbines.
A deep learning model based on bidirectional long short-term memory is proposed to address the short-term wind power forecasting problem.
Results show the effective and efficient performance of the proposed framework in the optimal scheduling of microgrids.
- Score: 5.039813366558306
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In terms of the operation of microgrids, optimal scheduling is a vital issue
that must be taken into account. In this regard, this paper proposes an
effective framework for optimal scheduling of renewable microgrids considering
energy storage devices, wind turbines, micro turbines. Due to the nonlinearity
and complexity of operation problems in microgrids, it is vital to use an
accurate and robust optimization technique to efficiently solve this problem.
To this end, in the proposed framework, the teacher learning-based optimization
is utilized to efficiently solve the scheduling problem in the system.
Moreover, a deep learning model based on bidirectional long short-term memory
is proposed to address the short-term wind power forecasting problem. The
feasibility and performance of the proposed framework as well as the effect of
wind power forecasting on the operation efficiency are examined using IEEE
33-bus test system. Also, the Australian Wool north wind site data is utilized
as a real-world dataset to evaluate the performance of the forecasting model.
Results show the effective and efficient performance of the proposed framework
in the optimal scheduling of microgrids.
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