NEUROBAT, A PREDICTIVE AND ADAPTIVE HEATING CONTROL SYSTEM USING ARTIFICIAL NEURAL NETWORKS

N. Morel, M. Bauer, M. El-Khoury, J. Krauss
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引用次数: 139

Abstract

The paper describes a predictive and adaptive heating controller, using artificial neural networks to allow the adaptation of the control model to the real conditions (climate, building characteriitics user'viour) The controller algorithm has been developed and tested as a collaborative project between the CSEM (Centre Suisse d'onique et de Microtechnique, Neuchatel, Switzerland, project leader), and the LESO-PB (Solar Energy and Building Physics Laboratory, EPFL, Lausanne, Switzerland). A significant support has been provided by leading Swiss industries in HVAC control systems. The project itself has been funded by the Swiss Federal Office of Energy (SFOE) The project has allowed the development of an original algorithm, especially suited for water heating systems, and its testing both by simulation and by experimentation on an inhabited building. The experimentation has been done using a PC software implementation. A second phase of the project, currently going on, aims at building an industrial prototype system based on the NEUROBAT algorithm.
神经机器人,一种使用人工神经网络的预测和自适应加热控制系统
本文描述了一种预测和自适应加热控制器,使用人工神经网络允许控制模型适应实际条件(气候,建筑特征用户行为)。控制器算法已作为CSEM(瑞士纳沙特尔瑞士中心,项目负责人)和LESO-PB(太阳能和建筑物理实验室,洛桑,瑞士EPFL)之间的合作项目开发和测试。瑞士领先的暖通空调控制系统行业提供了重要的支持。该项目本身由瑞士联邦能源办公室(SFOE)资助,该项目允许开发一种原始算法,特别适用于热水系统,并通过模拟和在居住建筑上的实验对其进行测试。实验用PC机软件实现。该项目的第二阶段目前正在进行中,旨在建立一个基于neubat算法的工业原型系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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