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Unsupervised anomaly detection for autonomous vehicles

Grant US12586478B2 Kind: B2 Mar 24, 2026

Assignee

Wing Aviation LLC

Inventors

Vikas Sindhwani, Hakim Sidahmed, Krzysztof Choromanski, Brandon L. Jones

Abstract

In some embodiments, techniques are provided for analyzing time series data to detect anomalies. In some embodiments, the time series data is processed using a machine learning model. In some embodiments, the machine learning model is trained in an unsupervised manner on large amounts of previous time series data, thus allowing highly accurate models to be created from novel data. In some embodiments, training of the machine learning model alternates between a fitting optimization and a trimming optimization to allow large amounts of training data that includes untagged anomalous records to be processed. Because a machine learning model is used, anomalies can be detected within complex systems, including but not limited to autonomous vehicles such as unmanned aerial vehicles. When anomalies are detected, commands can be transmitted to the monitored system (such as an autonomous vehicle) to respond to the anomaly.

CPC Classifications

G08G 5/55 G08G 5/57 G08G 5/58 G08G 5/21 G08G 5/53 G05D 1/0011 G05D 1/0055 G05D 1/105 B64U 2201/20 B64U 10/25 B64U 50/13 G06F 2201/81 G06F 11/0736 G06F 11/0751 G06F 11/0772 G06F 11/079 G06F 11/3013 G06F 11/3447 G07C 5/0808 G06N 20/00 B64F 5/60

Filing Date

2023-10-26

Application No.

18495640

Claims

20