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首页> 外文期刊>European transactions on electrical power engineering >An integrated neural network for the dynamic domestic energy management of a solar house
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An integrated neural network for the dynamic domestic energy management of a solar house

机译:一种综合神经网络,用于太阳能屋的动态国内能源管理

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Energy management system in residential areas has attracted the attention of several researchers for the development of smart cities as well as smart houses. Throughout this study, a neural network based on home energy management system (NNHEMS) has been developed to set optimal consumer priorities considering many factors, such as load priority, load profiles, environmental aspects, and user comfort. This NNHEMS; has been applied to a grid-connected photovoltaic system with a storage battery to power a house. Based on the available energy of the PV system and the loads type and priority (critical and not-critical loads), the authors design an advanced control system incorporating artificial neural network (ANN) concepts in order to satisfy the energy needs of home users and increase the performance of electricity networks. In this approach, the type of the ANN is the multi-level feedback network (MLFN); interconnection is provided by the Levenberg-Marquardt algorithm; in which data and computations flow in a specific direction from input to output. The efficiency of the proposed NNHEMS; is demonstrated in an installed house in Bouismail (Algeria) during a summer week (July 2019) with favorable weather conditions. Results demonstrate that the developed NNHEMS could achieve an optimal energy management in this solar house by saving 24.6% of energy consumption. Consequently, demand and supply of renewable energy are to be improved along with electricity network efficiency increase.
机译:住宅区的能源管理系统引起了几位研究人员的发展,以发展智能城市以及智能房屋。在本研究过程中,已经开发了一种基于家庭能源管理系统(NNHEM)的神经网络,以便在考虑许多因素,例如负载优先级,负载概况,环境方面和用户舒适性等因素来设置最佳消费优先级。这个nnhems;已应用于网格连接的光伏系统,蓄电池供电。基于PV系统的可用能量和负载类型和优先级(临界和不关键负载),作者设计了一种具有人工神经网络(ANN)概念的先进控制系统,以满足家庭用户的能量需求增加电力网络的性能。在这种方法中,ANN的类型是多级反馈网络(MLFN);互连由Levenberg-Marquardt算法提供;其中数据和计算在从输入到输出的特定方向上流动。拟议的NNHEMS的效率;在夏季(2019年7月)的夏季(2019年7月)中,在鲍伊伊尔(阿尔及利亚)的安装房屋中展示。结果表明,发达的NNHEM可以通过节省24.6%的能量消耗来实现这座太阳能房屋的最佳能源管理。因此,要改善可再生能源的需求和供应以及电网效率增加。

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