The large scale polarization explorer (LSPE) for CMB measurements: performance forecast
The LSPE collaboration: G. Addamo, P. A. R. Ade, C. Baccigalupi, A. M., Baldini, P. M. Battaglia, E. S. Battistelli, A. Ba\`u, P. de Bernardis, M., Bersanelli, M. Biasotti, A. Boscaleri, B. Caccianiga, S. Caprioli, F., Cavaliere, F. Cei, K. A. Cleary, F. Columbro, G. Coppi

TL;DR
The LSPE project aims to measure CMB polarization to detect primordial B-modes, with two instruments in Tenerife and Arctic balloon flights, forecasting sensitivity to cosmological parameters including the tensor-to-scalar ratio.
Contribution
This paper provides an updated performance forecast for LSPE, detailing instrument features, sensitivity estimates, and systematic control strategies for CMB polarization measurements.
Findings
LSPE can reach a sensitivity of σ_r<0.01 for the tensor-to-scalar ratio.
Forecasted improvements in constraints on cosmological parameters.
Identification of critical design aspects affecting performance.
Abstract
[Abridged] The measurement of the polarization of the Cosmic Microwave Background radiation is one of the current frontiers in cosmology. In particular, the detection of the primordial B-modes, could reveal the presence of gravitational waves in the early Universe. The detection of such component is at the moment the most promising technique to probe the inflationary theory describing the very early evolution of the Universe. We present the updated performance forecast of the Large Scale Polarization Explorer (LSPE), a program dedicated to the measurement of the CMB polarization. LSPE is composed of two instruments: Strip, a radiometer-based telescope on the ground in Tenerife, and SWIPE (Short-Wavelength Instrument for the Polarization Explorer) a bolometer-based instrument designed to fly on a winter arctic stratospheric long-duration balloon. The program is among the few dedicated to…
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