In many applications, e.g. fault diagnostics and optimized control of supermarket refrigeration systems, it is important to determine the heat demand of the cabinets. This can easily be achieved by measuring the mass flow through each cabinet, however, that is expensive and not feasible in large-scale deployments. Therefore it is important to be able to estimate the valve sizes from the monitoring data, which is typically measured. The valve size is measured by an area, which can be used to calculate mass flow through the valve -- this estimated value is referred to as the valve constant. A novel method for estimating the cabinet evaporator valve constants is proposed in the present paper. It is demonstrated using monitoring data from a refrigeration system in a supermarket consisting of data sampled at a one-minute sampling rate, however it is shown that a sampling time of around 10-20 minutes is adequate for the method. Through thermodynamic analysis of a two-stage CO2 refrigeration system, a linear regression model for estimating valve constants was developed using time series data. The linear regression requires that transient dynamics are not present in the data, which depends on multiple factors e.g. the sampling time. If dynamics are not modeled it can be detected by a significant auto-correlation of the residuals. In order to include the dynamics in the model, an Auto-Regressive Moving Average model with eXogenous variables (ARMAX) was applied, and it is shown how it effectively eliminates the auto-correlation and provides more unbiased estimates, as well as improved the accuracy estimates. Furthermore, it is shown that the sample time has a huge impact on the valve estimates. Thus, a method for selecting the optimal sampling time is introduced. It works individually for each of the evaporators, by exploring their respective frequency spectrum.
翻译:在许多应用中,例如断层诊断和超市制冷系统的优化控制,必须确定柜子的热需求。通过测量每个柜子的质量流量,这很容易实现,但是,在大规模部署中,费用昂贵且不可行。因此,必须能够从监测数据中估计阀门大小,这是一般测量的。阀门大小用一个区域测量,可以用来计算阀门的质量流 -- 这一估计值被称为阀门常数。本文中提议了一种用于估计内阁蒸发阀阀常数的新颖方法。在由数据取样器组成的超市的制冷系统监测数据中,用一分钟的采样率进行测量,但显示,大约10-20分钟的采样时间对于这种方法是足够的。通过对两阶段CO2制冷系统的热力分析,用时间序列数据开发了一个用于估计阀门常数的线性回归模型。线性回归要求改进的动态不会存在于数据中,而这要取决于多个因素,例如:显示的是,自动振动的准确性估算值,如果没有进行精确的模型,那么,则自动动力是用来测测算的。