4.6 Article

Uncertainty-Aware Management of Smart Grids Using Cloud-Based LSTM-Prediction Interval

Journal

IEEE TRANSACTIONS ON CYBERNETICS
Volume 52, Issue 10, Pages 9964-9977

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCYB.2021.3089634

Keywords

Smart grids; Energy management; Uncertainty; Generators; Load management; Multi-agent systems; Indexes; Cloud-fog architecture; deep learning; demand response; multiagent system; prediction intervals; uncertainty-aware management

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This article introduces an uncertainty-aware cloud-fog-based framework for power management of smart grids using a multiagent-based system. The proposed multiagent-based algorithm, utilizing deep learning method for uncertainty analysis, helps in optimizing social welfare in power management. By providing a preparation range for each agent based on predicted load demand and stochastic generation outputs, the method proves its capability to obtain optimal outcomes in a short time.
This article introduces an uncertainty-aware cloud-fog-based framework for power management of smart grids using a multiagent-based system. The power management is a social welfare optimization problem. A multiagent-based algorithm is suggested to solve this problem, in which agents are defined as volunteering consumers and dispatchable generators. In the proposed method, every consumer can voluntarily put a price on its power demand at each interval of operation to benefit from the equal opportunity of contributing to the power management process provided for all generation and consumption units. In addition, the uncertainty analysis using a deep learning method is also applied in a distributive way with the local calculation of prediction intervals for sources with stochastic nature in the system, such as loads, small wind turbines (WTs), and rooftop photovoltaics (PVs). Using the predicted ranges of load demand and stochastic generation outputs, a range for power consumption/generation is also provided for each agent called ``preparation range'' to demonstrate the predicted boundary, where the accepted power consumption/generation of an agent might occur, considering the uncertain sources. Besides, fog computing is deployed as a critical infrastructure for fast calculation and providing local storage for reasonable pricing. Cloud services are also proposed for virtual applications as efficient databases and computation units. The performance of the proposed framework is examined on two smart grid test systems and compared with other well-known methods. The results prove the capability of the proposed method to obtain the optimal outcomes in a short time for any scale of grid.

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