Sensor Data Prediction in Missile Flight Tests
Author:
Ryu Sang-GyuORCID, Jeong Jae JinORCID, Shim David HyunchulORCID
Abstract
Sensor data from missile flights are highly valuable, as a test requires considerable resources, but some sensors may be detached or fail to collect data. Remotely acquired missile sensor data are incomplete, and the correlations between the missile data are complex, which results in the prediction of sensor data being difficult. This article proposes a deep learning-based prediction network combined with the wavelet analysis method. The proposed network includes an imputer network and a prediction network. In the imputer network, the data are decomposed using wavelet transform, and the generative adversarial networks assist the decomposed data in reproducing the detailed information. The prediction network consists of long short-term memory with an attention and dilation network for accurate prediction. In the test, the actual sensor data from missile flights were used. For the performance evaluation, the test was conducted from the data with no missing values to the data with five different missing rates. The test results showed that the proposed system predicts the missile sensor most accurately in all cases. In the frequency analysis, the proposed system has similar frequency responses to the actual sensors and showed that the proposed system accurately predicted the sensors in both tendency and frequency aspects.
Subject
Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry
Reference43 articles.
1. Leon-Medina, J.X., Camacho, J., Gutierrez-Osorio, C., Salomón, J.E., Rueda, B., Vargas, W., Sofrony, J., Restrepo-Calle, F., and Tibaduiza, D.T. (2021). Temperature Prediction Using Multivariate Time Series Deep Learning in the Lining of an Electric Arc Furnace for Ferronickel Production. Sensors, 21. 2. Macias, E., Boquet, G., Serrano, J., Vicario, J.L., Ibeas, J., and Morel, A. (2019, January 8–11). Novel imputing method and deep learning techniques for early prediction of sepsis in intensive care units. Proceedings of the 2019 Computing in Cardiology, Singapore. 3. Spatio-temporal prediction of the COVID-19 pandemic in US counties: Modeling with a deep LSTM neural network;Nikparvar;Sci. Rep.,2021 4. Han, L., Yu, C., Xiao, K., and Zhao, X. (2019). A new method of mixed gas identification based on a convolutional neural network for time series classification. Sensors, 19. 5. EA-LSTM: Evolutionary attention-based LSTM for time series prediction;Li;Knowl.-Based Syst.,2019
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