Prof. Matt Edwards’ seminar

We had a seminar by our guest Prof. Matt Edwards from the University of Auckland, New Zealand on 9 October 14:30 at Building 6, 3 floor, 63H room.

Title: A novel stacked hybrid autoencoder for imputing data gaps in the Laser Interferometer Space Antenna

Abstract: The Laser Interferometer Space Antenna (LISA) data stream will contain gaps with missing or unusable data due to antenna repointing, orbital corrections, instrument malfunctions, and unknown random processes. We introduce a new deep learning model to impute data gaps in the LISA data stream. The stacked hybrid autoencoder combines a denoising convolutional autoencoder (DCAE) with a bi-directional gated recurrent unit (BiGRU). The DCAE is used to extract relevant features in the corrupted data, while the BiGRU captures the temporal dynamics of the gravitational-wave signals. We show for a massive black hole binary signal, corrupted by data gaps of various number and duration, that we yield an overlap of greater than 99.9% when the gaps do not occur in the merging phase, and greater than 98% when the gaps do occur in the merging phase. However, if data gaps occur during merger time, we show that we get biased astrophysical parameter estimates, highlighting the need for protected periods.

東京都市大学
デザイン・データ科学部 デザイン・データ科学科
総合研究所 宇宙科学研究センター

重力波物理学・天文学/
データサイエンス研究室

〒224-8551 神奈川県横浜市都筑区牛久保西3-3-1

Gravitational Wave Physics and Astronomy /
Data Science Group

Department of Design and Data Science,
Research Center for Space Science, Advanced Research Laboratories,
Tokyo City University

3-3-1 Ushikubo-Nishi, Tsuzuki-Ku, Yokohama, Kanagawa 224-8551, Japan

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and Astronomy / Data Science Group
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