4.6 Article

Peer-to-Peer Energy Trading Mechanism Based on Blockchain and Machine Learning for Sustainable Electrical Power Supply in Smart Grid

Journal

IEEE ACCESS
Volume 9, Issue -, Pages 39193-39217

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2021.3060457

Keywords

Blockchain; Smart contracts; Predictive models; Crowdsourcing; Machine learning; Peer-to-peer computing; Energy consumption; Energy trading; energy prediction; predictive analysis; machine learning; blockchain

Funding

  1. Energy Cloud Research and Development Program through the National Research Foundation of Korea (NRF) by the Ministry of Science, and ICT (MSIT) [2019M3F2A1073387]
  2. Institute for Information and Communications Technology Planning and Evaluation (IITP) Grant by the Korean Government through MSIT (AutoMaTa: Autonomous Management framework based on artificial intelligent Technology for adaptive and disposable IoT) [2018-0-01456]
  3. National Research Foundation of Korea [5199990414118] Funding Source: Korea Institute of Science & Technology Information (KISTI), National Science & Technology Information Service (NTIS)

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The paper proposes a blockchain-based predictive energy trading platform to address the challenge of energy trading and demand, providing real-time support, day-ahead control, and generation scheduling of distributed energy resources.
It is expected that peer to peer energy trading will constitute a significant share of research in upcoming generation power systems due to the rising demand of energy in smart microgrids. However, the on-demand use of energy is considered a big challenge to achieve the optimal cost for households. This paper proposes a blockchain-based predictive energy trading platform to provide real-time support, day-ahead controlling, and generation scheduling of distributed energy resources. The proposed blockchain-based platform consists of two modules; blockchain-based energy trading and smart contract enabled predictive analytics modules. The blockchain module allows peers with real-time energy consumption monitoring, easy energy trading control, reward model, and unchangeable energy trading transaction logs. The smart contract enabled predictive analytics module aims to build a prediction model based on historical energy consumption data to predict short-term energy consumption. This paper uses real energy consumption data acquired from the Jeju province energy department, the Republic of Korea. This study aims to achieve optimal power flow and energy crowdsourcing, supporting energy trading among the consumer and prosumer. Energy trading is based on day-ahead, real-time control, and scheduling of distributed energy resources to meet the smart grid's load demand. Moreover, we use data mining techniques to perform time-series analysis to extract and analyze underlying patterns from the historical energy consumption data. The time-series analysis supports energy management to devise better future decisions to plan and manage energy resources effectively. To evaluate the proposed predictive model's performance, we have used several statistical measures, such as mean square error and root mean square error on various machine learning models, namely recurrent neural networks and alike. Moreover, we also evaluate the blockchain platform's effectiveness through hyperledger calliper in terms of latency, throughput, and resource utilization. Based on the experimental results, the proposed model is effectively used for energy crowdsourcing between the prosumer and consumer to attain service quality.

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