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A short-term energy prediction system based on edge computing for smart city

机译:基于边缘计算的智慧城市短期能源预测系统

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The development of Internet of Things technologies has provided potential for real-time monitoring and control of environment in smart cities. In the field of energy management, energy prediction can be carried out by sensing and analyzing dynamic environmental information of the energy consumption side, and provide decision support for energy production to avoid excess or insufficient energy supply and achieve agile production. However, due to the complexity and diversity of the IoT data, it is difficult to build an efficient energy prediction system that reflects the dynamics of the IoT environment. To address this problem, a short-term energy prediction system based on edge computing architecture is proposed, in which data acquisition, data processing and regression prediction are distributed in sensing nodes, routing nodes and central server respectively. Semantics and stream processing techniques are utilized to support efficient IoT data acquisition and processing. In addition, an online deep neural network model adapted to the characteristics of IoT data is implemented for energy prediction. A real-world case study of energy prediction in a regional energy system is given to verify the feasibility and efficiency of our system. The results show that the system can provide support for real-time energy prediction with high precision in a promising way. (C) 2019 Elsevier B.V. All rights reserved.
机译:物联网技术的发展为智能城市环境的实时监控提供了潜力。在能源管理领域,可以通过感知和分析能耗侧的动态环境信息来进行能源预测,为能源生产提供决策支持,避免能源供应过多或不足,实现敏捷生产。但是,由于物联网数据的复杂性和多样性,很难构建能反映物联网环境动态的高效能源预测系统。针对这一问题,提出了一种基于边缘计算架构的短期能量预测系统,将数据采集,数据处理和回归预测分别分布在传感节点,路由节点和中央服务器上。语义和流处理技术用于支持高效的IoT数据采集和处理。此外,还实现了一种适用于IoT数据特征的在线深层神经网络模型,用于能源预测。给出了区域能源系统中能源预测的实际案例研究,以验证我们系统的可行性和效率。结果表明,该系统可以为有前途的高精度实时能量预测提供支持。 (C)2019 Elsevier B.V.保留所有权利。

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