DocumentCode
165241
Title
Model-IQ: Uncertainty propagation from sensing to modeling and control in buildings
Author
Behl, Madhur ; Nghiem, Truong X. ; Mangharam, Rahul
Author_Institution
Dept. of Electr. & Syst. Eng., Univ. of Pennsylvania, Philadelphia, PA, USA
fYear
2014
fDate
14-17 April 2014
Firstpage
13
Lastpage
24
Abstract
A fundamental problem in the design of closed-loop Cyber-Physical Systems (CPS) is in accurately capturing the dynamics of the underlying physical system. To provide optimal control for such closed-loop systems, model-based controls require accurate physical plant models. It is hard to analytically establish (a) how data quality from sensors affects model accuracy, and consequently, (b) the effect of model accuracy on the operational cost of model-based controllers. We present the Model-IQ toolbox which, given a plant model and real input data, automatically evaluates the effect of this uncertainty propagation from sensor data to model accuracy to controller performance. We apply the Model-IQ uncertainty analysis for model-based controls in buildings to demonstrate the cost-benefit of adding temporary sensors to capture a building model. We show how sensor placement and density bias training data. For the real building considered, a bias of 1% degrades model accuracy by 20%. Model-IQ´s automated process lowers the cost of sensor deployment, model training and evaluation of advanced controls for small and medium sized buildings. Such end-to-end analysis of uncertainty propagation has the potential to lower the cost for CPS with closed-loop model based control. We demonstrate this with real building data in the Department of Energy´s HUB.
Keywords
building management systems; buildings (structures); closed loop systems; energy conservation; optimal control; CPS; Department of Energy; HUB; advanced control; automated process; building model; closed-loop cyber-physical systems; closed-loop model based control; closed-loop system; controller performance; cost-benefit; data quality; density bias training data; end-to-end analysis; model accuracy; model training; model-IQ toolbox; model-IQ uncertainty analysis; model-based controller; operational cost; optimal control; physical plant model; real building data; sensor data; sensor deployment; sensor placement; small and medium sized building; temporary sensor; uncertainty propagation; Accuracy; Analytical models; Buildings; Data models; Predictive models; Sensors; Uncertainty;
fLanguage
English
Publisher
ieee
Conference_Titel
Cyber-Physical Systems (ICCPS), 2014 ACM/IEEE International Conference on
Conference_Location
Berlin
Print_ISBN
978-1-4799-4931-1
Type
conf
DOI
10.1109/ICCPS.2014.6843707
Filename
6843707
Link To Document