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Short-Timescale Gravitational Microlensing Events Prediction with ARIMA-LSTM and ARIMA-GRU Hybrid Model

机译:短时间的引力微透镜事件与Arima-LSTM和Arima-Gru混合模型预测

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Astronomers hope to give early warnings based on lightdetection data when some celestial bodies may behave abnormal in the near future, which provides a new method to detect low-mass, freefloating planets. In particular, to search short-timescale microlensing (ML) events from high-cadence and wide-field survey in real time, we combined ARIMA with LSTM and GRU recurrent neural networks (RNN) to monitor all the observed light curves and to alert before abnormal deviation. Using the good linear fitting ability of ARIMA and the strong nonlinear mapping ability of LSTM and GRU, we can form an efficient method better than single RNN network on accuracy, time consuming and computing complexity. ARIMA can reach smaller alerting time and operating time, yet costing high false prediction rate. By sacrificing 15% operating time, hybrid models of ARIMA and LSTM or GRU can achieve improved 14.5% and 13.2% accuracy, respectively. Our work also provide contrast on LSTM and GRU, while the first type is commonly used for time series predicting systems, the latter is more novel. We proved that in the case of abnormal detection of light curves, GRU can be more suitable to apply to as it is less time consuming by 8% while yielding similar results as LSTM. We can draw a conclusion that in the case for short-timescale gravitational microlensing events prediction, hybrid models of ARIMA-LSTM and ARIMA-GRU perform better than separate models. If we concentrate more on accuracy, ARIMA-LSTM is the best option; on the other hand, if we concentrate more on time consuming, ARIMA-GRU can save more time.
机译:天文学家希望在不久的将来表现异常时基于LightDetection数据给出早期警告,这提供了一种检测低质量,自由行星的新方法。特别是,为了实时搜索短时间的微透镜(ML)事件和广泛的调查,我们将Arima与LSTM和GRU经常性神经网络(RNN)相结合,以监控所有观察到的光线曲线并以前提醒警报异常偏差。利用Arima的良好线性拟合能力和LSTM和GRU的强烈非线性映射能力,我们可以在精度,耗时和计算复杂性上比单一RNN网络更好地形成高效的方法。 Arima可以达到更小的警报时间和操作时间,但成本高的假误报率。通过牺牲15%的操作时间,Arima和LSTM或GRU的混合模型分别可以获得提高的14.5%和13.2%的精度。我们的工作还在LSTM和GRU上提供了对比,而第一种类型通常用于时间序列预测系统,后者更加新颖。我们证明,在光曲线的异常检测的情况下,GRU可以更适合于施加到8%的时间较小,同时产生与LSTM类似的结果。我们可以得出结论,在短时间的重力微透镜事件预测,ARIMA-LSTM和ARIMA-GRU的混合模型比单独的型号更好。如果我们专注于准确性,Arima-LSTM是最好的选择;另一方面,如果我们在耗时更集中,Arima-Gru可以节省更多时间。

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