Improving the Sensitivity of LISA
K. Rajesh Nayak, A. Pai, S. V. Dhurandhar, J-Y. Vinet

TL;DR
This paper develops a formalism using computational algebra to optimize LISA's sensitivity by analyzing data combinations, leading to significant improvements in signal-to-noise ratio through eigenvector-based methods and a rotating detector model.
Contribution
It introduces a systematic algebraic approach to identify optimal data combinations for enhancing LISA's sensitivity and SNR, including a novel network SNR concept.
Findings
Maximum SNR improvement up to 70% over Michelson at high frequencies.
Network SNR improves sensitivity by 40% to over 100%.
Switching data combinations can yield about 55-60% sensitivity enhancement.
Abstract
It has been shown in the past, that the six Doppler data streams obtained LISA configuration can be combined by appropriately delaying the data streams for cancelling the laser frequency noise. Raw laser noise is several orders of magnitude above the other noises and thus it is essential to bring it down to the level of shot, acceleration noises. A rigorous and systematic formalism using the techniques of computational commutative algebra was developed which generates all the data combinations cancelling the laser frequency noise. The relevant data combinations form a first module of syzygies. In this paper we use this formalism for optimisation of the LISA sensitivity by analysing the noise and signal covariance matrices. The signal covariance matrix, averaged over polarisations and directions, is calculated for binaries whose frequency changes at most adiabatically. We then present…
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Taxonomy
TopicsEducational Assessment and Pedagogy · Experimental Learning in Engineering · Mathematics Education and Programs
