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Selection of typical demand days for CHP optimization

机译:选择CHP优化的典型需求天数

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摘要

Optimizing the configuration and operation of a CHP system for a whole year becomes a computationally demanding task when, for example, integer variables are used to model the status (on/off) of different pieces of equipment. The reason is that a discrete optimization problem is fundamentally an enumerative problem, featuring that the number of possible solutions grows exponentially with the number of integer variables. This computational difficulty is known as the curse of dimensionality, and severely limits the chances to use mixed integer programming methods to design CHP systems. To work out this problem, this paper presents a new and unambiguous method to reduce a full year of demand data to a few representative days that adequately preserve significant characteristics such as the peak demands, the demand duration curves, and the temporal inter-relationship between the different types of demands (power, heating, and cooling). Days are selected using a partitional clustering method known as the k-medoids method, and their ability to resemble the original data is tested by means of two quality indexes and a calendar visual inspection. Two case studies are discussed for the completeness of the paper, showing how the method and the quality indexes can be used in practice.
机译:例如,当使用整数变量来建模不同设备的状态(开/关)时,优化全年热电联产系统的配置和运行就成为一项计算量巨大的任务。原因是离散优化问题从根本上讲是一个枚举问题,其特征在于,可能的解决方案的数量会随着整数变量的数量呈指数增长。这种计算难度被称为维数的诅咒,并严重限制了使用混合整数编程方法来设计CHP系统的机会。为了解决这个问题,本文提出了一种新的,明确的方法,可以将全年的需求数据减少到几个代表天,这些天可以充分保留重要特征,例如高峰需求,需求持续时间曲线以及时间之间的相互关系。不同类型的需求(电力,供暖和制冷)。使用称为k-medoids方法的分区聚类方法选择日,并通过两个质量指标和日历视觉检查来测试它们与原始数据相似的能力。讨论了两个案例研究以确保论文的完整性,说明如何在实践中使用该方法和质量指标。

著录项

  • 来源
    《Energy and Buildings》 |2011年第11期|p.3036-3043|共8页
  • 作者单位

    Crupo de Energetica, ETS Ingenieros Industrials, Universidad de Malaga, Calle Arquitecto Francisco Penalosa, 29071 Malaga, Spain;

    Crupo de Energetica, ETS Ingenieros Industrials, Universidad de Malaga, Calle Arquitecto Francisco Penalosa, 29071 Malaga, Spain;

    Crupo de Energetica, ETS Ingenieros Industrials, Universidad de Malaga, Calle Arquitecto Francisco Penalosa, 29071 Malaga, Spain;

    INGHO Engineering & Facility Management, Calle Ivan Pavlov 2-4, Edificio Hevimar 2, 13-14,29590 Malaga, Spain;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    typical demand days; CHP optimization; cluster analysis; k-medoids method;

    机译:典型需求日;CHP优化;聚类分析;k型方法;
  • 入库时间 2022-08-18 00:10:15

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