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A decoupling-based unified fault detection and diagnosis approach for packaged air conditioners.

机译:一种基于解耦的成套空调统一故障检测与诊断方法。

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摘要

Existing methods addressing automated FDD for vapor compression air conditioning systems (1) require measurements over a wide range of conditions for training reference models, development of which can be time consuming and costly, and (2) can not deal with multiple faults that occur simultaneously. This thesis presents new methods that reduce engineering and installed costs for FDD, improve overall sensitivity for detecting and diagnosing faults, and handle multiple-simultaneous faults.; The mathematical formulation of model-based FDD techniques implied that decoupling is the key to handling multiple-simultaneous faults. To eliminate cost-prohibitive overall system models, an alternative physical decoupling methodology to mathematical decoupling was developed, which led to the decoupling-based FDD technique. During the mathematical development, a previously developed FDD method, termed the statistical rule-based (SRB) method, was re-examined and cast within the general mathematical framework, which led to two new detection and diagnosis classifiers with better performance and low implementation costs. Various component models and virtual sensors were proposed to generate decoupled features. These models are low-cost in that they exploit manufacturers' performance rating data and only require limited and readily available data for training. To justify fault service after diagnostics and evaluate the economic benefit associated with application of the proposed FDD technique, new economic evaluation approaches were developed, which involve a new overall economic performance degradation index termed EPDI.; Finally, the proposed techniques were validated using both laboratory and field data. The SRB FDD technique with improved components was shown to have better sensitivity than the original SRB method. A prototype was made to demonstrate the application of the decoupling-based FDD technique. Sensitivity tests showed that all the individual faults can be identified before they cause a 5% of degradation in cooling capacity, EER and SHR, and their EPDIs reach 10%. Robustness tests of forty-one multiple-simultaneous-fault combinations showed that there were only two false alarms and sensitivity losses for a liquid-line restriction. Preliminary application for sites in California showed that faults happen very frequently at the field sites: 71% are significantly impacted by faults, 38% have more than two simultaneous faults, and 43% justify service immediately. FDD evaluation showed that {dollar}108/ton-year, around 70% of the original service costs, can be saved, and the operation cost savings ranged from {dollar}20 to {dollar}180/ton-year. The savings are significant and the payback period for the technique is less than one year.
机译:解决蒸气压缩空调系统自动FDD的现有方法(1)要求在广泛的条件下进行测量以训练参考模型,其开发过程既耗时又昂贵,并且(2)无法处理同时发生的多个故障。本文提出了减少FDD的工程和安装成本,提高检测和诊断故障的整体灵敏度以及处理多同时故障的新方法。基于模型的FDD技术的数学公式表明,解耦是处理多同时故障的关键。为了消除成本高昂的整体系统模型,开发了一种替代物理解耦方法的数学解耦方法,这导致了基于解耦的FDD技术的发展。在数学开发过程中,重新检查了以前开发的FDD方法(称为基于统计规则(SRB)方法),并在通用数学框架内进行了强制转换,这导致了两个新的检测和诊断分类器,它们具有更好的性能和较低的实现成本。提出了各种组件模型和虚拟传感器以生成解耦特征。这些模型是低成本的,因为它们利用了制造商的性能等级数据,只需要有限且易于获得的数据进行培训。为了在诊断后证明故障服务的合理性并评估与所提出的FDD技术的应用相关的经济利益,开发了新的经济评估方法,其中涉及称为EPDI的新的整体经济绩效下降指标。最后,使用实验室和现场数据对所提出的技术进行了验证。结果表明,与原始SRB方法相比,具有改进组件的SRB FDD技术具有更高的灵敏度。制作了一个原型来演示基于去耦的FDD技术的应用。敏感性测试表明,所有单个故障都可以在导致冷却能力,EER和SHR降低5%且其EPDI达到10%之前得到识别。对41个多重同时故障组合的鲁棒性测试表明,对于液位限制,只有两个错误警报和灵敏度损失。对加利福尼亚站点的初步申请显示,故障在现场站点上非常频繁地发生:71%的故障受到严重影响,38%的同时发生两个以上的故障,而43%的用户可以立即进行维修。 FDD评估表明,每年可以节省$ 108 /吨,约占原始服务成本的70%,操作成本节省的幅度为$ 20 /美元至$ 180 / ton-year。节省了大量资金,该技术的投资回收期不到一年。

著录项

  • 作者

    Li, Haorong.;

  • 作者单位

    Purdue University.;

  • 授予单位 Purdue University.;
  • 学科 Engineering Mechanical.
  • 学位 Ph.D.
  • 年度 2004
  • 页码 271 p.
  • 总页数 271
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 机械、仪表工业;
  • 关键词

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