How can you use Kalman filtering to improve flight data accuracy?

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If you are an aerospace engineer, you know how important it is to have accurate and reliable flight data. Flight data can help you monitor the performance, safety, and efficiency of your aircraft, as well as support decision-making and troubleshooting. However, flight data can also be noisy, incomplete, or corrupted by various sources of error, such as sensor faults, measurement noise, environmental disturbances, or model uncertainties. How can you deal with these challenges and improve the quality of your flight data? One possible solution is to use Kalman filtering, a powerful and widely used technique for data fusion and estimation. In this article, you will learn what Kalman filtering is, how it works, and how you can use it to improve your flight data accuracy.

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