Guo Penghong, Rivera Daniel E, Savage Jennifer S, Downs Danielle S
School for Engineering of Matter, Transport, and Energy, Arizona State University, Tempe, AZ 85281 USA.
Center for Childhood Obesity Research and the Department of Nutritional Sciences, Penn State University, University Park, PA, USA.
IFAC Pap OnLine. 2017 Jul;50(1):13532-13537. doi: 10.1016/j.ifacol.2017.08.2347. Epub 2017 Oct 18.
The growing prevalence of obesity and related health problems warrants immediate need for effective weight control interventions. Quantitative energy balance models serve as powerful tools to assist in these interventions, as a result of their ability to accurately predict individual weight change based on reliable measurements of energy intake and energy expenditure. However, the data collected in most existing weight interventions is self-monitored; these measurements often have significant noise or experience losses resulting from participant non-adherence, which in turn, limits accurate model estimation. To address this issue, we develop a Kalman filter-based estimation algorithm for a practical scenario where on-line state estimation for weight, or energy intake/expenditure is still possible despite correlated partial data losses. To account for non-linearities in the models, an algorithm based on extended Kalman filtering is also developed for sequential state estimation in the presence of missing data. Simulation studies are presented to illustrate the performance of the algorithms and the potential benefits of these techniques in real-life interventions.
肥胖及相关健康问题的日益普遍,使得当下迫切需要有效的体重控制干预措施。定量能量平衡模型是协助开展这些干预措施的有力工具,因为它们能够基于可靠的能量摄入和能量消耗测量值,准确预测个体体重变化。然而,大多数现有体重干预措施所收集的数据是自我监测的;这些测量值往往存在大量噪声,或者因参与者不依从而出现数据缺失,进而限制了模型的准确估计。为解决这一问题,我们针对一种实际场景开发了一种基于卡尔曼滤波器的估计算法,即便存在相关的部分数据丢失,仍可对体重或能量摄入/消耗进行在线状态估计。为了考虑模型中的非线性因素,还开发了一种基于扩展卡尔曼滤波的算法,用于在存在缺失数据的情况下进行序列状态估计。本文给出了仿真研究,以说明这些算法的性能以及这些技术在实际干预中的潜在益处。