首页 /研究 /Probabilistically valid stochastic extensions of deterministic models for systems with uncertainty
LOCOMOTION

Probabilistically valid stochastic extensions of deterministic models for systems with uncertainty

Konstantinos Karydis, Ioannis Poulakakis, Jianxin Sun, Herbert G. Tanner

发表年份
2015
引用次数
38

摘要

Models capable of capturing and reproducing the variability observed in experimental trials can be valuable for planning and control in the presence of uncertainty. This paper reports on a new data-driven methodology that extends deterministic models to a stochastic regime and offers probabilistic guarantees of model fidelity. From an acceptable deterministic model, a stochastic one is generated, capable of capturing and reproducing uncertain system–environment interactions at given levels of fidelity. The reported approach combines methodological elements from probabilistic model validation and randomized algorithms, to simultaneously quantify the fidelity of a model and tune the distribution of random parameters in the corresponding stochastic extension, in order to reproduce the variability observed experimentally in the physical process of interest. The approach can be applied to an array of physical processes, the models of which may come in different forms, including differential equations; we demonstrate this point by considering examples from the areas of miniature legged robots and aerial vehicles.

关键词

FidelityProbabilistic logicComputer scienceStochastic modellingStochastic differential equationStochastic processUncertainty quantificationProcess (computing)Extension (predicate logic)Physical system

相关论文

查看 LOCOMOTION 分类全部论文