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An Efficient Deep Learning Framework for Intelligent Energy Management in IoT Networks

机译:IOT网络中智能能源管理的高效深度学习框架

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摘要

Green energy management is an economical solution for better energy usage, but the employed literature lacks focusing on the potentials of edge intelligence in controllable Internet of Things (IoT). Therefore, in this article, we focus on the requirements of todays' smart grids, homes, and industries to propose a deep-learning-based framework for intelligent energy management. We predict future energy consumption for short intervals of time as well as provide an efficient way of communication between energy distributors and consumers. The key contributions include edge devices-based real-time energy management via common cloud-based data supervising server, optimal normalization technique selection, and a novel sequence learning-based energy forecasting mechanism with reduced time complexity and lowest error rates. In the proposed framework, edge devices relate to a common cloud server in an IoT network that communicates with the associated smart grids to effectively continue the energy demand and response phenomenon. We apply several preprocessing techniques to deal with the diverse nature of electricity data, followed by an efficient decision-making algorithm for short-term forecasting and implement it over resource-constrained devices. We perform extensive experiments and witness 0.15 and 3.77 units reduced mean-square error (MSE) and root MSE (RMSE) for residential and commercial datasets, respectively.
机译:绿色能源管理是一个经济的能源使用解决方案,但就业的文献缺乏关注可控制的东西互联网(物联网)的边缘智能的潜力。因此,在本文中,我们专注于当今智能电网,房屋和行业的要求,为智能能源管理提出基于深度学习的框架。我们预测了短时间间隔的未来能源消耗,并提供了能源分销商和消费者之间的有效沟通方式。关键贡献包括通过基于云的数据监督服务器,最优标准化技术选择的基于边缘设备的实时能源管理,以及基于新的基于序列学习的能量预测机制,具有降低的时间复杂度和最低误差率。在所提出的框架中,边缘器件涉及与相关智能电网通信的IOT网络中的公共云服务器,以有效地继续进行能量需求和响应现象。我们采用多种预处理技术来处理电力数据的多样性,其次是用于短期预测的有效决策算法,并在资源受限的设备上实现它。我们分别执行广泛的实验和证人0.15和3.77单位,分别减少平均误差(MSE)和Root MSE(MSE),用于住宅和商业数据集。

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