Domain-aware Control-oriented Neural Models for Autonomous Underwater
Vehicles
- URL: http://arxiv.org/abs/2208.07333v1
- Date: Mon, 15 Aug 2022 17:01:14 GMT
- Title: Domain-aware Control-oriented Neural Models for Autonomous Underwater
Vehicles
- Authors: Wenceslao Shaw Cortez, Soumya Vasisht, Aaron Tuor, J\'an Drgo\v{n}a,
Draguna Vrabie
- Abstract summary: We present control-oriented parametric models with varying levels of domain-awareness.
We employ universal differential equations to construct data-driven blackbox and graybox representations of the AUV dynamics.
- Score: 2.4779082385578337
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Conventional physics-based modeling is a time-consuming bottleneck in control
design for complex nonlinear systems like autonomous underwater vehicles
(AUVs). In contrast, purely data-driven models, though convenient and quick to
obtain, require a large number of observations and lack operational guarantees
for safety-critical systems. Data-driven models leveraging available partially
characterized dynamics have potential to provide reliable systems models in a
typical data-limited scenario for high value complex systems, thereby avoiding
months of expensive expert modeling time. In this work we explore this
middle-ground between expert-modeled and pure data-driven modeling. We present
control-oriented parametric models with varying levels of domain-awareness that
exploit known system structure and prior physics knowledge to create
constrained deep neural dynamical system models. We employ universal
differential equations to construct data-driven blackbox and graybox
representations of the AUV dynamics. In addition, we explore a hybrid
formulation that explicitly models the residual error related to imperfect
graybox models. We compare the prediction performance of the learned models for
different distributions of initial conditions and control inputs to assess
their accuracy, generalization, and suitability for control.
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