Hybrid Model for Efficient Anomaly Detection in Short-timescale GWAC Light Curves and Similar Datasets

Early warning during sky survey provides a crucial opportunity to detect low-mass, free-floating planets. In particular, to search short-timescale microlensing (ML) events from high-cadence and wide- field survey in real time, a hybrid method which combines ARIMA (Autoregressive Integrated Moving Av...

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Detalles Bibliográficos
Main Authors: Ying Sun, Zijun Zhao, Xiaobin Ma, Zhihui Du
Formato: Artigo
Idioma:English
Publicado: Ivannikov Institute for System Programming of the Russian Academy of Sciences 2019-06-01
Series:Труды Института системного программирования РАН
Subjects:
Acceso en liña:https://ispranproceedings.elpub.ru/jour/article/view/1160
Descripción
Summary:Early warning during sky survey provides a crucial opportunity to detect low-mass, free-floating planets. In particular, to search short-timescale microlensing (ML) events from high-cadence and wide- field survey in real time, a hybrid method which combines ARIMA (Autoregressive Integrated Moving Average) with LSTM (Long-Short Time Memory) and GRU (Gated Recurrent Unit) recurrent neural networks (RNN) is presented to monitor all observed light curves and identify ML events at their early stages. Experimental results show that the hybrid models perform better in accuracy and less time consuming of adjusting parameters. ARIMA+LSTM and ARIMA+GRU can achieve improvement in accuracy by 14.5% and 13.2%, respectively. In the case of abnormal detection of light curves, GRU can achieve almost the same result as LSTM with less time by 8%. Same models are also applied to MIT-BIH Arrhythmia Databases ECG dataset with similar abnormal pattern and we yield from both sets that we can reduce up to 40% of time consuming for researchers to adjust the model to 90% accuracy.
ISSN:2079-8156
2220-6426