Deep Learning-Based Vehicle Anomaly Detection by Combining Vehicle Sensor Data
S Kim, S Kim, B Yoon - Journal of the Korea Academia-Industrial …, 2021 - koreascience.kr
S Kim, S Kim, B Yoon
Journal of the Korea Academia-Industrial cooperation Society, 2021•koreascience.krAbstract In the Industry 4.0 era, artificial intelligence has attracted considerable interest for
learning mass data to improve the accuracy of forecasting and classification. On the other
hand, the current method of detecting anomalies relies on traditional statistical methods for a
limited amount of data, making it difficult to detect accurate anomalies. Therefore, this paper
proposes an artificial intelligence-based anomaly detection methodology to improve the
prediction accuracy and identify new data patterns. In particular, data were collected and …
learning mass data to improve the accuracy of forecasting and classification. On the other
hand, the current method of detecting anomalies relies on traditional statistical methods for a
limited amount of data, making it difficult to detect accurate anomalies. Therefore, this paper
proposes an artificial intelligence-based anomaly detection methodology to improve the
prediction accuracy and identify new data patterns. In particular, data were collected and …
Abstract
In the Industry 4.0 era, artificial intelligence has attracted considerable interest for learning mass data to improve the accuracy of forecasting and classification. On the other hand, the current method of detecting anomalies relies on traditional statistical methods for a limited amount of data, making it difficult to detect accurate anomalies. Therefore, this paper proposes an artificial intelligence-based anomaly detection methodology to improve the prediction accuracy and identify new data patterns. In particular, data were collected and analyzed from the point of view that sensor data collected at vehicle idle could be used to detect abnormalities. To this end, a sensor was designed to determine the appropriate time length of the data entered into the forecast model, compare the results of idling data with the overall driving data utilization, and make optimal predictions through a combination of various sensor data. In addition, the predictive accuracy of artificial intelligence techniques was presented by comparing Convolutional Neural Networks (CNN) and Long Short Term Memory (LSTM) as the predictive methodologies. According to the analysis, using idle data, using 1.5 times of the data for the idling periods, and using CNN over LSTM showed better prediction results.
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