AIAA SCITECH 2023 Forum 2023
DOI: 10.2514/6.2023-0125
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Peaking into the Black-box: Prediction Intervals Give Insight into Data-driven Quadrotor Model Reliability

Abstract: Ensuring the reliability and validity of data-driven quadrotor model predictions is essential for their accepted and practical use. This is especially true for grey-and black-box models wherein the mapping of inputs to predictions is not transparent and subsequent reliability notoriously difficult to ascertain. Nonetheless, such techniques are frequently and successfully used to identify quadrotor models. Prediction intervals (PIs) may be employed to provide insight into the consistency and accuracy of model p… Show more

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