Quantitative Analysis of Regression-Based Temperature Dynamics Models for Households with A/C Units Subject to Unknown Disturbances

Nikola Hure, M. Vašak
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Abstract

This paper focuses on the identification of thermodynamic models for temperature prediction in households. The proposed temperature dynamics model falls under the class of Linear Time-Invariant (LTI) models, making it suitable for model predictive control synthesis. However, the presence of significant and variable thermal disturbances in households adds complexity to the identification process. The performance of various prediction error methods, such as ARX, ARARMAX, and BJ models, along with simplified models incorporating persistent disturbance excitation, is analyzed. The findings highlight the substantial impact of unknown disturbances on temperature predictions, emphasizing the crucial need for accurate prediction of these disturbances for effective household heating and cooling planning. The identification and evaluation of model performance measures are conducted using two months of experimental data collected from five households. This study contributes to understanding of the significance of addressing unknown disturbances and variability in thermodynamic model identification for temperature prediction.
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受未知干扰的空调户温度动态回归模型的定量分析
本文的重点是识别用于家庭温度预测的热力学模型。所提出的温度动力学模型属于线性时不变(LTI)模型,适用于模型预测控制综合。然而,家庭中显著和可变的热干扰的存在增加了识别过程的复杂性。分析了ARX、ARARMAX、BJ模型等各种预测误差方法的性能,以及包含持续扰动激励的简化模型。研究结果强调了未知干扰对温度预测的重大影响,强调了准确预测这些干扰对有效的家庭供暖和制冷规划的关键需求。使用从五个家庭收集的两个月的实验数据进行模型性能措施的识别和评估。本研究有助于理解在温度预测中处理未知扰动和变率在热力学模型识别中的重要性。
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