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System design and house dynamic signature identification for intelligent energy management in residential buildings.

机译:用于住宅建筑智能能源管理的系统设计和房屋动态签名识别。

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摘要

Increasing energy demand from residential buildings and evolving utility pricing policy to regulate energy use during peak times require a new paradigm for energy management in residential buildings. As a prototype for intelligent energy management systems of residential buildings, DREAM (Demand Responsive Electrical Appliance Manager), based on a wireless sensor network, was developed. This autonomous system consisting of wireless sensors and actuators, a graphical user interface, and a main control reduces peak electrical demand and ultimately optimizes energy management by identifying house dynamic signature as well as occupant thermal preference and patterns. In summer 2007, functionality and overall performance were evaluated with two field tests and showed promise for the DREAM system.;Due to significance of the house dynamic signature learning in an intelligent energy management system, three approaches were studied. Despite the simplicity of the model and success in identifying thermal characteristics of a house, the 1st order differential equation method, which considered thermal influences of five heat sources, showed limitations in representing actual temperature behavior delicately. The tabular method was suggested to capture house nonlinear behavior by learning temperature change rate with respect to different events and periods. The prediction using the tabular method followed the actual measured temperature within a tolerable error range, except for a relatively long heater-on event. The last method, the ARX model fitting method, provided the best prediction result, but the performance was considerably influenced by the choice of sample data for parameter learning.;The multiple-model switching algorithm was proposed to minimize performance inconsistency in the ARX model fitting method. Instead of sticking to one model, it allows several candidates whose parameters are calculated from seven consecutive days, and selects one (multiple-model hard switching [MMHS]) or fuses all (multiple-model soft switching [MMSS]). Depending on the criterion to select or weight a candidate, the algorithm is divided into proximity-based model switching and applicability-based model switching. Overall, the MMSS showed better performance than the MMHS and, most of all, the applicability-based MMSS algorithm dramatically improved the prediction quality when anomalies in data were properly filtered.;All algorithms in this study were evaluated with the real data that were collected from more than 20 occupied houses in Northern California, Minnesota, and South Australia.
机译:住宅建筑物能源需求的增加以及不断发展的公用事业价格政策以调节高峰时段的能源使用,要求住宅建筑物能源管理的新范例。作为住宅智能能源管理系统的原型,开发了基于无线传感器网络的DREAM(需求响应电器管理器)。该自主系统由无线传感器和执行器,图形用户界面和主控制器组成,可通过识别房屋的动态特征以及居住者的喜好和模式来减少峰值用电需求并最终优化能源管理。 2007年夏季,通过两次现场测试对功能和总体性能进行了评估,并证明了DREAM系统的前景。由于智能能源管理系统中房屋动态签名学习的重要性,研究了三种方法。尽管该模型简单易行,并且可以成功识别房屋的热特性,但是考虑到五个热源的热影响的一阶微分方程法在精确地表示实际温度行为方面显示出局限性。建议通过表格方法通过学习有关不同事件和周期的温度变化率来捕获房屋的非线性行为。使用表格方法进行的预测遵循的是在可容忍的误差范围内的实际测量温度,除了相对较长的加热器开启事件。最后一种方法,即ARX模型拟合方法,提供了最佳的预测结果,但是性能受到参数学习的样本数据选择的影响很大。;提出了多模型切换算法,以最大程度地减少ARX模型拟合中的性能不一致方法。它不拘泥于一个模型,而是允许几个候选者,这些候选者的参数是从连续7天开始计算的,并选择一个(多模型硬切换[MMHS])或全部融合(多模型软切换[MMSS])。根据选择或加权候选者的标准,该算法分为基于接近度的模型切换和基于适用性的模型切换。总体而言,MMSS表现出比MMHS更好的性能,并且最重要的是,在适当过滤数据异常后,基于适用性的MMSS算法显着提高了预测质量。;本研究中的所有算法均以收集的真实数据进行评估来自北加利福尼亚州,明尼苏达州和南澳大利亚州的20多个房屋。

著录项

  • 作者

    Jang, Jae Hwi.;

  • 作者单位

    University of California, Berkeley.;

  • 授予单位 University of California, Berkeley.;
  • 学科 Engineering Mechanical.;Architecture.;Energy.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 142 p.
  • 总页数 142
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 机械、仪表工业;能源与动力工程;建筑科学;
  • 关键词

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