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首页> 外文期刊>ASHRAE Transactions >The Nearest Neighborhood Method to Improve Uncertainty Estimates in Statistical Building Energy Models
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The Nearest Neighborhood Method to Improve Uncertainty Estimates in Statistical Building Energy Models

机译:统计建筑能耗模型中用于提高不确定度估计的最近邻域方法

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摘要

Accurate estimation of uncertainty in energy use predictions from statistical models finds applications in a number of diverse areas of interest to building energy professionals. Examples include the determination of measured energy savings in monitoring and verification (M&V) projects; continuous commissioning; and automated fault detection, wherein improper building or equipment performance is to be detected. All these applications generally involve identifying a baseline statistical model representative of energy use prior to the retrofit (or to energy use under fault-free operation) and then ascertaining the energy savings (or the penalty for faulty operation) as the difference between the measured post-retrofit energy use and the corresponding model-predicted value. Unfortunately, the model residual outliers are ill-behaved, and estimates of the uncertainty in the energy savings tend to be unrealistic. Developing a general methodology for determining more realistic, robust, and credible estimates of the uncertainty in energy savings would be of great value and is the objective of this paper. The proposed approach is to determine the uncertainty from "local" system behavior rather than from global statistical indices of the model fit, such as root-mean-square error and other measures, as is the current practice. This is done using the nonparametric nearest-neighborhood-points approach, which is well known in traditional statistics. The methodology is applicable to any type of statistical model approach, such as regression, time series, and neural networks, and could be codedinto a computer package that can be appended to existing M& V analysis programs. Two case study examples using daily building energy-use data serve to illustrate the proposed methodology. The ultimate benefit of such a reliable and statistically defensible method is to lend more credibility to the determination of risk associated with energy savings from energy efficiency projects and thereby induce financial agencies to become more involved in "white tag " and allied certification programs.
机译:通过统计模型对能源使用预测中的不确定性进行准确估计,可将其应用于建筑能源专业人员感兴趣的许多不同领域。例如,在监测与验证(M&V)项目中确定测得的节能量;连续调试;自动故障检测,其中要检测不正确的建筑物或设备性能。所有这些应用通常都涉及确定一个基线统计模型,该模型代表改造前的能源使用(或无故障运行下的能源使用),然后确定节能量(或故障运行的代价)作为测得的立柱之间的差异。 -改造能源使用量和相应的模型预测值。不幸的是,模型的剩余异常值是不正确的,并且对节能量不确定性的估计往往是不现实的。开发一种通用的方法来确定节能减排不确定性的更现实,更可靠和更可靠的估计将具有重要价值,并且是本文的目标。提议的方法是从“本地”系统行为中确定不确定性,而不是从模型拟合的全局统计指标中确定不确定性,例如当前均方根误差和其他度量。这是使用传统统计中众所周知的非参数最近邻点方法完成的。该方法适用于任何类型的统计模型方法,例如回归,时间序列和神经网络,并且可以编码为可附加到现有M&V分析程序的计算机软件包。使用每日建筑能耗数据的两个案例研究示例说明了所提出的方法。这种可靠且在统计上可辩护的方法的最终好处是,可以更加可靠地确定与能效项目节能相关的风险,从而促使金融机构更多地参与“白标”和相关认证计划。

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