Ferrández-Pastor Francisco Javier, García-Chamizo Juan Manuel, Gomez-Trillo Sergio, Valdivieso-Sarabia Rafael, Nieto-Hidalgo Mario
Department of Computer Technology and Computation, University of Alicante, 03690 Alicante, Spain.
Federación Empresas Metal Provincia Alicante (FEMPA), 03008 Alicante, Spain.
Sensors (Basel). 2019 Jul 5;19(13):2967. doi: 10.3390/s19132967.
Advances in embedded electronic systems, the development of new communication protocols, and the application of artificial intelligence paradigms have enabled the improvement of current automation systems of energy management. Embedded devices integrate different sensors with connectivity, computing resources, and reduced cost. Communication and cloud services increase their performance; however, there are limitations in the implementation of these technologies. If the cloud is used as the main source of services and resources, overload problems will occur. There are no models that facilitate the complete integration and interoperability in the facilities already created. This article proposes a model for the integration of smart energy management systems in new and already created facilities, using local embedded devices, Internet of Things communication protocols and services based on artificial intelligence paradigms. All services are distributed in the new smart grid network using edge and fog computing techniques. The model proposes an architecture both to be used as support for the development of smart services and for energy management control systems adapted to the installation: a group of buildings and/or houses that shares energy management and energy generation. Machine learning to predict consumption and energy generation, electric load classification, energy distribution control, and predictive maintenance are the main utilities integrated. As an experimental case, a facility that incorporates wind and solar generation is used for development and testing. Smart grid facilities, designed with artificial intelligence algorithms, implemented with Internet of Things protocols, and embedded control devices facilitate the development, cost reduction, and the integration of new services. In this work, a method to design, develop, and install smart services in self-consumption facilities is proposed. New smart services with reduced costs are installed and tested, confirming the advantages of the proposed model.
嵌入式电子系统的进步、新通信协议的发展以及人工智能范式的应用,使得当前的能源管理自动化系统得到了改进。嵌入式设备将不同的传感器与连接性、计算资源集成在一起,并降低了成本。通信和云服务提高了它们的性能;然而,这些技术的实施存在局限性。如果将云用作服务和资源的主要来源,将会出现过载问题。在已建成的设施中,没有促进完全集成和互操作性的模型。本文提出了一种在新建和已建成的设施中集成智能能源管理系统的模型,该模型使用本地嵌入式设备、物联网通信协议以及基于人工智能范式的服务。所有服务都使用边缘和雾计算技术分布在新的智能电网网络中。该模型提出了一种架构,既用作智能服务开发的支持,也用作适用于该设施(一组共享能源管理和能源生成的建筑物和/或房屋)的能源管理控制系统的支持。机器学习用于预测能耗和发电量、电力负荷分类、能量分配控制以及预测性维护是集成的主要实用功能。作为一个实验案例,一个包含风能和太阳能发电的设施被用于开发和测试。采用人工智能算法设计、通过物联网协议实施并配备嵌入式控制设备的智能电网设施,有助于新服务的开发、成本降低以及集成。在这项工作中,提出了一种在自消费设施中设计、开发和安装智能服务的方法。安装并测试了成本降低的新智能服务,证实了所提出模型的优势。