基于高效物联网深度学习框架的智能能源管理系统

C. Bazil Wilfred, Santhi M. George, S. Sivaranjani, S. Selvan, J. M. Feros Khan, D. Beulah David
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引用次数: 0

摘要

利用现有的绿色能源管理系统,确保能源的高效和经济利用。然而,该技术与物联网(IoT)和边缘智能的集成尚未完全探索。本文提出了一种具有深度学习框架的智能能源管理系统,以解决智能工业、家庭和电网的能源管理需求。在短时间内预测未来能源消耗的同时,建立了消费者和能源分销商之间的有效沟通。介绍了一种具有最优归一化模型选择和基于云的数据监控服务器的智能能源管理系统,以最小的错误率和降低的时间复杂度,用于物联网和边缘设备的能源预测。智能电网与连接到公共云服务器的物联网网络中的边缘设备之间关于高效能源需求和响应特性的通信以安全和连续的方式进行。利用多种预处理技术对具有多样性的电力数据进行管理,并采用高效的决策算法进行短期能源需求预测。该模型在资源受限的设备上实现,并显示出良好的效果。对于商业和住宅数据集,该系统提供了更小的均方误差(MSE)和均方根误差(RMSE)值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Intelligent Energy Management System with an Efficient IoT based Deep Learning Framework
Efficient and economical energy utilization is ensured using green energy management systems that currently exist. However, integration of this technology with the Internet of Things (IoT) and edge intelligence is not completely explored. A smart energy management system with a deep learning framework is presented in this paper to address the requirements of energy management in smart industries, homes and grids. An efficient communication is established between the consumers and energy distributors while predicting the future energy consumptions over short time intervals. With least error rate and reduced time complexity, a smart energy management system with optimal normalization model selection and cloud-based data supervising server for energy forecasting in IoT and edge devices is introduced. Communication between the smart grids and the edge devices in the IoT networks connected to a common cloud server regarding efficient energy demand and response features occur in a secure and continuous manner. Short-term energy requirement forecasting is performed with an efficient decision making algorithm while using various preprocessing techniques to manage the electricity data which is of diverse nature. This model is implemented in resource constrained devices and shows promising outcomes. For commercial and residential datasets, the proposed system offers reduced mean-square error (MSE) and root MSE (RMSE) values.
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