| Literature DB >> 27570366 |
Penghong Guo1, Daniel E Rivera1, Danielle S Downs2, Jennifer S Savage3.
Abstract
Excessive gestational weight gain (i.e., weight gain during pregnancy) is a significant public health concern, and has been the recent focus of novel, control systems-based interventions. This paper develops a control-oriented dynamical systems model based on a first-principles energy balance model from the literature, which is evaluated against participant data from a study targeted to obese and overweight pregnant women. The results indicate significant under-reporting of energy intake among the participant population. A series of approaches based on system identification and state estimation are developed in the paper to better understand and characterize the extent of under-reporting; these range from back-calculating energy intake from a closed-form of the energy balance model, to a constrained semi-physical identification approach that estimates the extent of systematic under-reporting in the presence of noise and possibly missing data. Additionally, we describe an adaptive algorithm based on Kalman filtering to estimate energy intake in real-time. The approaches are illustrated with data from both simulated and actual intervention participants.Entities:
Year: 2016 PMID: 27570366 PMCID: PMC5001697 DOI: 10.1109/ACC.2016.7525092
Source DB: PubMed Journal: Proc Am Control Conf ISSN: 0743-1619