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"item_title" : "First-Stage Lisa Data Processing and Gravitational Wave Data Analysis",
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"item_description" : "Introduction.- LISA data processing chain.- Applying the Kalman filter to a simple case.- The inter-spacecraft measurements.- Design a hybrid extended Kalman filter for the entire LISA constellation.- Alternative Kalman filter models.- Broken laser links and robustness.- Optimal filtering for LISA with effective system models.- Clock noise and disordered measurements.- Octahedron configuration for a displacement noise-canceling gravitational wave detector in space.- EMRI data analysis with a phenomenological waveform.- Fast detection and automatic parameter estimation of a gravitational wave signal with a novel method.- Likelihood transform: making optimization and parameter estimation easier. ",
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First-Stage Lisa Data Processing and Gravitational Wave Data Analysis : Ultraprecise Inter-Satellite Laser Ranging, Clock Synchronization and Novel Gra
by Yan Wang
Overview
Introduction.- LISA data processing chain.- Applying the Kalman filter to a simple case.- The inter-spacecraft measurements.- Design a hybrid extended Kalman filter for the entire LISA constellation.- Alternative Kalman filter models.- Broken laser links and robustness.- Optimal filtering for LISA with effective system models.- Clock noise and disordered measurements.- Octahedron configuration for a displacement noise-canceling gravitational wave detector in space.- EMRI data analysis with a phenomenological waveform.- Fast detection and automatic parameter estimation of a gravitational wave signal with a novel method.- Likelihood transform: making optimization and parameter estimation easier.
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Details
- ISBN-13: 9783319263885
- ISBN-10: 3319263889
- Publisher: Springer
- Publish Date: December 2015
- Dimensions: 9.21 x 6.14 x 0.63 inches
- Shipping Weight: 1.19 pounds
- Page Count: 228
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