Probabilistic Force Estimation and Event Localization (PFEEL) algorithm

Eng Struct. 2022 Feb 1:252:113535. doi: 10.1016/j.engstruct.2021.113535. Epub 2021 Nov 17.

Abstract

Localization of human activity using floor vibrations has gained attention in recent years. In human health technologies, floor vibrations have been recently used to estimate gait parameters to predict a patients' health status. Various methodologies such as using the characteristics of wave traveling (algorithms based on time of arrival) or the properties of structures (Force Estimation and Event Localization, FEEL, algorithm) have been investigated to localize the impact, fall, or step events. This paper presents a probabilistic approach that builds upon the FEEL algorithm to offer the advantage of eliminating the need for a robust experimental setup. The proposed Probabilistic Force Estimation and Event Localization (PFEEL) algorithm provides a probabilistic measure to an event's force estimation and localization using random variables associated with the floor's dynamics. The algorithm can also guide calibration by identifying calibration points that provide the maximum information. This reduces the number of calibration points needed, which has practical benefits during the implementation. In this manuscript, we presented the design, development, and validation of the algorithm.

Keywords: Bayesian inference; Event detection; FEEL algorithm; Floor vibrations; Impact location; Probabilistic event detection; Uncertainty quantification.