数据预测及其在基于区块链的本地能源市场中的应用

A. Boumaiza, A. Sanfilippo
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引用次数: 3

摘要

分布式能源的产生消除了能源生产者和消费者之间的传统差异,创造了一个被称为产消者的新角色。本研究旨在部署一个通用的ABM模拟框架,以促进电力交换并展示区块链的功能。该仿真涉及一个基于区块链的鲁棒多智能体结构中的交易能源分布式能源。基于区块链的LEM提案使用拍卖系统来平衡供需。LTSM模型降低了预测误差对市场结果的影响。预测程序工作在基于区块链的LEM上,并调整了预测程序。在10个真实家庭用电数据集中,所提出的混合深度学习神经网络优于最先进的方法。为了补充所提出的框架用于实际应用,我们还提供了k步功耗预测技术。这项研究为从卡塔尔社会、金融和技术的角度分析能源区块链提供了一个可扩展的环境。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data Forecasting with Application to Blockchain-based Local Energy Markets
The creation of distributed energy generation that eliminates conventional differences between energy producers and consumers creates a new role called prosumer. This study aims at deploying a general ABM simulation framework to facilitate electricity exchange and demonstrate the functionality of blockchain. The simulation involved a Transactive Energy Distributed Energy Resource in a block chain dependent robust multi-agent structure. The LEM proposal based on blockchain uses auction system to balance supply and demand. Prediction error impacts on market outcomes were reduced by the LTSM model. The prediction procedure works on blockchain based LEM with adjusted prediction procedure. In ten real-world household power consumption datasets, the proposed hybrid deep learning neural network outperforms the state-of-the-art methods. To complement the proposed framework for actual application use, we additionally offer a k-step power consumption forecasting technique. This research offers a scalable environment for analyzing an energy blockchain from the perspective of Qatari society, finance, and technology.
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