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Online Identification of Skidding Modes with Interactive Multiple Model Estimation

Ameya Salvi, Pardha Sai Krishna, Jonathon M. Smereka, Mark Brudnak, David Gorsich, Matthias Schmid, Venkat Krovi

Year
2025
Citations
2

Abstract

Skid-steered wheel mobile robots (SSWMRs) operate in a variety of outdoor environments exhibiting motion behaviors dominated by the effects of complex wheel-ground interactions. Characterizing these interactions is crucial from both the immediate robot autonomy perspective (for motion prediction and control) and a long-term predictive maintenance and diagnostics perspective. An ideal solution entails capturing precise state measurements for decisions and controls, which is considerably difficult, especially in increasingly unstructured outdoor regimes of operations for these robots. In this milieu, a framework to identify pre-determined discrete modes of operation can considerably simplify the motion model identification process. To this end, we propose an interactive multiple model (IMM) based filtering framework to probabilistically identify predefined robot operation modes that could arise due to traversal in different terrains or loss of wheel traction.

Keywords

Computer scienceIdentification (biology)EstimationArtificial intelligenceEngineeringSystems engineering

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