基于自动微分的建筑仿真模型标定传感器数据质量评估

Sisi Li, Zhen Song, Mengchu Zhou, Yan Lu
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引用次数: 3

摘要

建筑仿真模型在建筑气候优化控制、能源审计、故障检测与诊断、连续调试和规划等方面发挥着重要作用。真实的系统参数通常是未知的或部分未知的,需要通过历史数据来识别,这些数据目前是通过启发式设计的实验获得的。如果没有高质量的传感器数据,即使校准算法合适,模型校准也容易失败。在本文中,我们提出了一个基于费雪信息矩阵(FIM)的度量来检查传感器数据测量及其质量与模型校准质量的关系。它旨在为整个建筑模型的校准周期提供定量指导,该周期考虑尽可能多的变量以保证准确性。我们所关注的模型基于众所周知的物理定律,并尽量避免简化,从而导致一个高度不连续的系统,由于季节或日常变化等原因导致模型切换。这样的模型以软件包的形式实现。因此,不能给出明确的数学表达式。一个关键的技术挑战是模型的复杂性阻碍了FIM的解析推导,而数值计算对传感器噪声和模型切换很敏感。因此,我们提出了一种利用面向对象编程语言的算子过载特性的自动微分方法,用于鲁棒的数值FIM计算。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sensor data quality assessment for building simulation model calibration based on automatic differentiation
Building simulation models play a vital role in optimal building climate control, energy audit, fault detection and diagnosis, continuous commissioning, and planning. Real system parameters are often unknown or partially unknown and need to be identified through historical data, which are currently acquired by heuristically designed experiments. Without quality sensor data, model calibration is prone to fail, even if the calibration algorithm is appropriate. In this paper, we propose a Fisher-information-matrix (FIM)-based metric to examine the sensor data measurements and how their quality is related to the model calibration quality. It aims to provide quantitative guidance in the calibration cycle of a whole building model that takes as many variables as possible into consideration for the sake of accuracy. Our concerned model is based on well-known physical laws and tries to avoid simplification, thereby leading to a highly discontinuous system with model switches due to the seasonal or daily variation and other reasons. Such a model is implemented in the form of a software package. Hence, no explicit mathematical expression can be given. A key technical challenge is that the complexity of the model prohibits the analytical derivation of FIM, while the numeric calculation is sensitive to sensor noise and model switches. We, hence, propose to adopt an automatic differentiation method, which exploits the operator overload feature of object oriented programming language, for robust numerical FIM calculation.
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