An analysis of Intelligent Demand Management criteria applied in a building case study

C. Quintero M., J. Jiménez Mares
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引用次数: 2

Abstract

The power consumption in buildings represent a 30-40% of the final energy usage, which is caused by: HVAC (Heating, Ventilation and Air Conditioning), lighting and appliances with any connection to the power grid. The major challenge is to minimize the power consumption by optimizing the operation of several loads without impact in the customer's comfort. For this purpose, the design of an Intelligent Demand Management using Intelligent Systems is presented in this paper. Furthermore a comparative analysis is carried out to evaluate the power consumption performance of some Demand Side Management (DSM) techniques. In this case Direct Load Control (DLC), Load Priority (LP) and Scheduled Programming (SP) are compared with the proposed approach based on Artificial Neural Networks (ANNs). Experimental testing is performed with the consumption data base. The testing results show that energy savings can be achieved through control of the states of various loads.
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智能需求管理准则在楼宇个案研究中的应用分析
建筑物的电力消耗占最终能源使用量的30-40%,这是由暖通空调(采暖,通风和空调),照明和任何连接到电网的电器引起的。主要的挑战是在不影响客户舒适度的情况下,通过优化多个负载的运行来最大限度地减少功耗。为此,本文设计了一个基于智能系统的智能需求管理系统。此外,对一些需求侧管理(DSM)技术的电力消耗性能进行了比较分析。将直接负荷控制(DLC)、负荷优先级(LP)和调度规划(SP)与基于人工神经网络(ann)的方法进行了比较。利用消费数据库进行了实验测试。测试结果表明,通过控制各种负载的状态可以实现节能。
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