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ORIGINAL RESEARCH article

Front. Astron. Space Sci., 24 March 2020
Sec. Cosmology
This article is part of the Research Topic Quasars in Cosmology View all 8 articles

Cosmology With Quasars: Predictions for eROSITA From a Quasar Hubble Diagram

  • 1Dipartimento di Fisica e Astronomia, Università di Firenze, Firenze, Italy
  • 2INAF – Osservatorio Astrofisico di Arcetri, Firenze, Italy

The effort for understanding the matter and energy content of the Universe and its evolution relies on different probes, such as cosmic background radiation, cluster lensing, supernovae. Yet, we are still far from grasping what dark matter is made of, and what the physical origin of dark energy is. Our group has developed a technique that makes use of the observed non-linear relation between the ultraviolet and the X-ray luminosity in quasars to provide an independent measurement of their distances, thus turning quasars into standardizable candles. This technique, at present, it is mostly based upon quasar samples with data from public catalogs both in the X-rays and in the optical/ultraviolet and extends the Hubble diagram of supernovae to a redshift range still poorly explored (z > 2). From the X-ray perspective, we are now on the eve of a major change, as the upcoming mission eROSITA is going to provide us with up to ~3 millions of active galactic nuclei across the entire sky. Here we present predictions for constraining cosmological parameters, such as the amount of dark matter (Ωm), dark energy (ΩΛ) and the evolution of the equation of state of dark energy (w) through the Hubble diagram of quasars, based on the 4-years eROSITA all-sky survey. Our simulations show that the eROSITA quasars, complemented by redshift and broad-band photometric information, will supply the largest quasar sample at z < 2, but with very few objects available for cosmology at higher redshifts that survives the cut for the Malmquist bias, as eROSITA will sample the brighter end of the X-ray luminosity function. The power of the quasar Hubble diagram for precision cosmology lies in the high-redshift regime, where quasars can be observed up to redshift ~7.5, essential to discriminate amongst different model extrapolations. Therefore, to be competitive for cosmology, the eROSITA quasar Hubble diagram must be complemented with the already available quasar samples and dedicated (deep) large programmes at redshift z > 3.

1. Introduction

The driving forces behind the present era of precision cosmology have been the detection of anisotropies in the cosmic microwave background (CMB; e.g., Smoot et al., 1992) and the discovery of the accelerated expansion of the Universe, based on the Hubble diagram (i.e., the distance modulus vs. redshift relation) of Type Ia supernovae (SNe Ia), the standard candles par excellence (e.g., Riess et al., 1998; Perlmutter et al., 1999). The currently accepted parameterization of our Universe is based on the so-called Λ Cold Dark Matter (ΛCDM) model, hinging upon the existence of cold dark matter and on the cosmological constant (Λ). The nucleosynthesis of primordial elements, the large-scale galaxy distribution, and gravitational lensing are some of the usual probes into the nature of dark matter, and into how this interacts with visible (baryonic) matter. Yet, we are still far from grasping what the real constituents of this invisible cosmic ingredient are. Moreover, both the physical origin and the properties of dark energy are still unknown, as the interpretation of Λ is plagued by the extreme degree of fine tuning required to obtain the right amount of dark energy observed today. Only the combination of multiple perspectives and of the optimal cosmological probes at different redshifts is the way forward to solve the dark matter and dark energy problems.

In the past years, our group has developed a technique that makes use of the observed non-linear relation between the optical/ultraviolet and the X-ray luminosity in quasars (e.g., Steffen et al., 2006; Just et al., 2007; Lusso et al., 2010; Lusso and Risaliti, 2016). In contrast to previous ideas of high stochasticity, this relation can be employed to standardize the emission of quasars (Risaliti and Lusso, 2015; Lusso et al., 2019). The methodology is complementary to the traditional resort to Type Ia SNe to estimate the cosmological parameters, yet it extends the Hubble diagram to a redshift range currently inaccessible to supernovae (z = 2−6). The tightness of the UV-to-X-ray relation across both a wide redshift (up to z ≃ 5 − 6) and luminosity range (see Lusso and Risaliti, 2016) must be the manifestation of a universal physical mechanism that governs the disc-corona synergy in the quasar engines, yet the details of the physical process originating this relation is still unknown (e.g., Lusso and Risaliti, 2017).

The main result of our work is that the distance modulus/redshift relation of quasars at z < 1.4 is in agreement with that of supernovae and with the concordance model (Risaliti and Lusso, 2015; Lusso et al., 2019). Yet, a deviation from the ΛCDM model emerges at higher redshift, with a statistical significance of 4σ. If we consider an evolution of the dark energy equation of state in form w(z) = w0 + wa × z/(1 + z), the data suggest that the dark energy density is increasing with time (Lusso et al., 2019; Risaliti and Lusso, 2019).

In order to build a quasar sample that can be utilized for cosmological purposes, both X-ray and optical/UV data are required to cover the rest-frame 2 keV and the 2,500 Å. At the time of writing, the most extended spectroscopic coverage in the optical/UV is provided by the Sloan Digital Sky Survey (Pâris et al., 2018), which supplies more than ~500,000 quasars with spectroscopic redshift up to z ~ 7. This sample needs to be cross-matched with the current X-ray catalogs, namely the Chandra CXC2.01 (Evans et al., 2010) and the 3XMM Data Release 82 (Rosen et al., 2016), which contain all the X-ray sources detected by the XMM-Newton and Chandra observatories that are publicly available in the archives. The number of quasars with a detection in both the UV and X-rays ranges from about a few thousands to ~13,000, respectively. Once our filtering criteria are applied to select blue quasars with low levels of UV reddening and X-ray absorption and the Malmquist bias is corrected (the interested reader should refer to Risaliti and Lusso, 2015, 2019; Lusso and Risaliti, 2016; Bisogni et al., 2017 for details on the sample selection), the final samples drastically reduce to <2,000 objects (~1,000 in the case of SDSS-CXC2.0, Bisogni et al., in preparation). Our leverage in building extended quasar samples for cosmology is thus entirely based upon archival data of pointed X-ray observations, which cover a very limited portion of the sky compared to SDSS, i.e., roughly 1,000 deg2 for both 3XMM-DR8 and CXC2.0 compared to >14,000 deg2 for SDSS.

We are now on the eve of the next major revolution in the field of X-ray astrophysics. The extended Roentgen Survey with an Imaging Telescope Array (eROSITA, Merloni et al., 2012; Predehl, 2012) is the flagship instrument of the Russian Spektrum-Roentgen-Gamma (SRG) mission, and it will represent the most powerful and versatile X-ray observatory of the next decade. In the first 4 years of scientific operations, eROSITA will perform 8 deep scans of the entire sky, one every 6 months. When completed, the survey will be ~20 times deeper than ROSAT at 0.5–2 keV, and it will provide the very first sensitive imaging of the whole sky in the hard band (2–10 keV). eROSITA will bring an improvement of over two orders of magnitude in the number of sources shining close to or above the break in the X-ray luminosity function (i.e., Figure 5.2.2 in Merloni et al., 2012). eROSITA's sky will be dominated by the active galactic nuclei (AGN) population, with ~3 million AGN expected by the end of the nominal 4-years all-sky survey at the sensitivity of F0.5-2keV10-14 erg s−1 cm−2 and with a median redshift of z ~ 1.

In this work we discuss the potential of the 4-years eROSITA all-sky survey for constraining cosmological parameters, such as Ωm, ΩΛ and w, through the Hubble diagram of quasars.

2. The Simulated eROSITA Quasar Sample

The SDSS-DR14 quasar catalog contains 526,356 objects with 0.008 < z < 6.968. We first selected a clean quasar sample in the optical/UV based on the selection criteria discussed in depth in our previous works (Risaliti and Lusso, 2015, 2019; Lusso and Risaliti, 2016). The main goal of this first step is to obtain the intrinsic flux at the rest-frame 2,500 Å. We excluded all quasars flagged as broad absorption line (BAL, BI_CIV=0) and selected only the sources with a detection in all SDSS photometric bands, leading to a preliminary sample of 503,746 quasars. The SDSS-DR14 quasar catalog also provides us with multi-wavelength information from several surveys, from the radio (FIRST survey) to the UV (GALEX survey; see section 7 in Pâris et al., 2018). Thanks to this extended multi-band coverage, we built the spectral energy distributions (SEDs) that are then employed to compute the slope Γ1 of a log(ν)−log(ν) power law in the 0.3–1 μm (rest frame) range, and the analogous slope Γ2 in the 0.3–0.145 μm range (rest frame). We assumed a standard SMC extinction law (Prevot et al., 1984, appropriate for unobscured quasars, Hopkins et al., 2004; Salvato et al., 2009) to estimate the Γ1 − Γ2 correlation as a function of extinction [parameterized by E (B–V)]. The Γ1 − Γ2 value that corresponds to zero extinction (E(B–V) = 0) is derived from the standard quasar SED of Richards et al. (2006, i.e., Γ1 = 0.82, Γ2 = 0.40). We then selected all objects within a circle centered at E(B–V) = 0 with a radius of 0.8 (i.e., E(B-V)<0.1). From the SED we also calculated the flux at the rest-frame 2,500 Å (F2500) and the one at 6 cm from the FIRST flux using a slope of −0.8, and we further excluded all the objects with F6 cm/F2500 > 10. We also excluded all quasars in the sample defined as radio loud in the MIXR catalog (Mingo et al., 2016) within a matching radius of 2 arcsec. This leads to a final clean sample in the UV of 291,944 quasars, within a redshift interval 0.061 < z < 5.25 (〈z〉 ≃ 1.8).

Since eROSITA is expected to survey the entire X-ray sky down to a flux that well matches the SDSS quasar optical magnitudes, we forecast that almost all SDSS quasars will be detected by eROSITA (Menzel et al., 2016). We thus simulated an X-ray flux measurement for each object as follows.

We assumed the observed linear log F2 keV − log F2500 relation, with a slope α = 0.6, a flat ΛCDM cosmology with H0 = 70 km s−1 Mpc−1, Ωm = 0.3 and ΩΛ = 1 − Ωm, and a dispersion in the F2 keVF2500 relation on the order of 0.1 dex. These values have been chosen to be representative of the mainstream models, although we know that the constraints on the cosmological parameters from observations in the local and in the early Universe are somewhat different (see section 4.1). We started from fluxes as they are cosmology independent, and we have demonstrated in our previous works that the log F2 keV − log F2500 relation in narrow redshift bins displays the same slope (i.e., γ ≃ 0.6) across a wide redshift range (see Figure 8 in Risaliti and Lusso, 2019, Supplementary Material). Moreover, the main aim of our simulations is to quantify the expected uncertainties on the cosmological parameters rather than focus on the absolute values per se. As such, we defer possible extensions of these simulations to non-standard cosmological values and to a possible evolution of these parameters with redshift to future works.

As the eROSITA survey is flux limited, we also need to take into account the Malmquist bias (also known as the Eddington bias), which is a redshift dependent correction. We conservatively assumed an observed flux limit in the soft X-ray band of 3 × 10−14 erg s−1 cm−2, which will be reached after the first year of operations, and considered all the sources with an expected monochromatic flux at 2 keV that corresponds to about twice the value above, i.e., 5 × 10−32 erg s−1 cm−2 Hz−1, assuming a photon index of 1.9. This selection leaves very few sources at redshift higher than 2. We obtain a final sample of ~11,000 quasars in the redshift range 0.061−2.850, with a mean redshift 〈z〉 ≃ 0.64, consistent with the predicted statistical properties based on the best available redshift-dependent AGN X-ray luminosity function (Kolodzig et al., 2013).

3. Results

The distance modulus-redshift relation of the eROSITA quasars is presented in Figure 1 with 1σ uncertainties. The error bars on the distance modulus values for the quasar sample are estimated by propagating the uncertainties on the slope γ, F2 keV and F2500. We assumed typical uncertainties on the slope and F2 keV of 0.02 and 20%, respectively. Uncertainties on F2500 are computed by propagating the magnitude uncertainties from the SEDs we compiled for each SDSS quasar in the catalog (see section 2 in Risaliti and Lusso, 2019, Supplementary Material). The red points are the mean (also with 1σ uncertainties) of the distance modulus in narrow redshift bins for quasars (shown for visualization purposes). Here we also show the SNe Ia sample from the Pantheon survey consisting of 1,048 objects ranging from 0.01 < z < 2.26 (Scolnic et al., 2018). The dashed magenta line shows the input flat ΛCDM cosmology with Ωm = 0.3 and ΩΛ = 0.7.

FIGURE 1
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Figure 1. Hubble diagram of eROSITA quasars (~11,000, yellow points) and SNe Ia (Pantheon, cyan points) with 1σ uncertainties. Red points are the mean (also with 1σ uncertainties) of the distance modulus in narrow redshift bins for quasars only (shown for visualization purposes). The dashed magenta line shows a flat ΛCDM model fit with Ωm = 0.3. The blue line is the best MCMC fit of the eROSITA quasars (with uncertainties) only for a ΛCDM cosmology where Ωm and ΩΛ are left free to vary (section 3).

We then fitted to this sample a ΛCDM model where Ωm and ΩΛ are left free to vary, and a model with a dark energy equation of state parameter w (assuming a flat Universe, wCDM). The results are shown in Figure 2, whilst a summary of the predictions on the cosmographic parameters from the analysis of the eROSITA quasar Hubble diagram is presented in Table 1. The confidence contours are at 68 and 95% levels and all the plotted uncertainties are statistical, computed from the marginalized posterior probability distributions. All the simulations have been performed through a standard fully Bayesian procedure by making use of the affine invariant Monte Carlo Markov Chain ensemble sampler (Foreman-Mackey et al., 2013). We adopted uniform priors on the cosmological parameters with 0 < Ωm < 1.2 and 0 < ΩΛ < 1.5 for the ΛCDM model, whilst we used 0 < Ωm < 1.2 and −3 < w0 < 1 for wCDM. The adopted likelihood also contains an intrinsic dispersion (δ) as a free parameter (see Risaliti and Lusso, 2019 for details). An additional free parameter is the cross-calibration (β′) between supernovae Ia and quasars. Overall we have four free parameters for both the ΛCDM (i.e., Ωm, ΩΛ, β′ and δ) and the flat wCDM (i.e., Ωm, w0, β′ and δ).

FIGURE 2
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Figure 2. (Left) Confidence contours at 68 and 95% levels for the Ωm and ΩΛ cosmological parameters in the ΛCDM model, where both Ωm and ΩΛ are free to vary. All the plotted uncertainties are statistical. Orange/red contours: Pantheon. Blue/cyan: eROSITA simulated sample. (Right) Confidence contours at 68 and 95% levels for the Ωm and w0 cosmological parameters in the wCDM model. All the plotted uncertainties are statistical. Orange/red contours: Pantheon. Filled dark/light gray: Planck constraints from a Plik TT+lowl+lowE likelihood. Blue/cyan: eROSITA simulated sample. The dashed/dotted contours represent the constraints on the cosmological parameters of a mock eROSITA quasar sample of ~17,000 quasars assuming a dispersion in the L2 keVL2500 relation of 0.2 dex.

TABLE 1
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Table 1. Prediction on the cosmographic parameters from the analysis of the eROSITA quasar Hubble diagram.

Our method governs the shape of the Hubble diagram, whilst to determine the absolute value of the distances we need an external calibrator to build the distance ladder (like Cepheids are for supernovae Ia).

As a consequence of the marginalization over the β′, our technique does not provide any direct constraint on the Hubble parameter, H0. In the simulations, the value of H0 used for the calibration with the supernovae Ia is thus assumed and then marginalized over β′. Considering a different value of H0 would just modify the final cross-calibration with no change on the values of the best fit cosmological parameters and confidence intervals.

4. Discussion

The precision on Ωm that can be achieved with the eROSITA quasars only is similar to that obtained today by supernovae Ia in the case Ωm and ΩΛ are fitted simultaneously (i.e., Ωm = 0.35 ± 0.04, see Table 8 in Scolnic et al., 2018). The current accuracy on ΩΛ from supernovae Ia is ~8%, whilst the precision on ΩΛ from the simulated quasar Hubble diagram is on the order of ~30%. This is due to the much higher dispersion of the data in the quasar Hubble diagram with respect to Pantheon in the common redshift range. We also note that the assumed dispersion on the L2 keVL2500 relation is rather optimistic. In fact, we can obtain a dispersion of ~ 0.12 − 0.15 dex only when we consider pointed X-ray observations (see the Supplementary Material in Risaliti and Lusso, 2019), whilst the dispersion in the L2 keVL2500 relation that we can achieve at present is 0.2 − 0.24 dex. We also considered another mock quasar sample where we assume a dispersion of 0.2 dex, having similar statistics and redshift distribution to the one in Figure 1. The accuracy on Ωm and ΩΛ decreases to ~30 and ~40%, respectively. The precision on Ωm is more affected by the increased dispersion in the L2 keVL2500 relation than the one on ΩΛ. This is somewhat expected given the redshift distribution of the mock sample (see also Figure 5 in Kolodzig et al., 2013 for the statistical quasar sample predictions). The range of accuracy on w0 for the best-case scenario and the more realistic one is shown in Figure 2 for a wCDM.

From our simulations one can conclude that, with the eROSITA quasars alone and the current observed dispersion in the L2 keVL2500 relation, it will be challenging to provide stringent constraints on the cosmological parameters. Nonetheless, the simulated quasar sample does not include the hundreds of quasars at redshift z > 2.5 that are already available from the public archives, which would not only improve the precision of the determination of both Ωm and ΩΛ, but will allow us to test with greater precision a possible evolution of the equation of state of dark energy with redshift w(z). In fact, the parameter Ωm is partly degenerate with wa in models with an evolving equation of state of the dark energy, wzCDM.

Even with a dispersion on the L2 keVL2500 relation that matches the current ones (see Supplementary Figure 6 in Risaliti and Lusso, 2019), thanks to the much greater statistics at redshift lower than 2 offered by eROSITA, we will sample the knee of the Hubble diagram with several thousands of sources. The eROSITA sample combined to the high redshift quasars (in particular z > 3) from the archives will allow us to test models where the dark energy equation of state w is allowed to evolve with redshift.

4.1. On the Tension of the Hubble Parameter

It is clear from the left panel of Figure 2 that CMB data alone do not constrain the equation of state of dark energy, w, due to strong geometrical model degeneracies. Indeed, Planck data on their own (i.e., CMB+lensing) can only assess the equation of state with ~30% uncertainty: w=-1.57-0.40+0.50, whilst this measure becomes w = −1.04 ± 0.1 by considering a combination of Planck with Baryon Acoustic Oscillation (BAO, Aghanim et al., 2018, Planck collaboration). This value is consistent with the expected one for a cosmological constant in the standard ΛCDM model, but the comparison between the concordance cosmological parameters obtained from the different probes brings out some tensions. For example, the most recent results from Planck assuming the standard ΛCDM cosmology are in tension at the 4.4σ level with the direct measurement of the Hubble parameter (H0, which measures the current expansion rate of the Universe) from Cepheids plus supernovae Ia (Riess et al., 2019), and at about 2.5σ with the matter density estimates from supernovae Ia (e.g., Rest et al., 2014) and with the Lyα BAO measurements (e.g., Font-Ribera et al., 2014; Delubac et al., 2015). Recently, results on H0 (assuming a standard flat ΛCDM cosmology) from six multiple-imaged quasar systems through strong gravitational lensing have confirmed this tension at more than 5σ level with respect to Planck (H0LiCOW collaboration; Wong et al., 2019). Whilst the reason for these tensions can be partially alleviated by accounting for the systematics in the different data sets (e.g., dependence of the supernovae Ia luminosity on age, Kang et al., 2020), most of the discrepancy still remains unclear. In fact, within the ΛCDM framework, where w is assumed to be constant (w = −1) across the cosmic time, there should be no difference between the H0 value measured locally and the one measured in the early Universe. These discrepancies can in fact be the indication of new physics beyond the standard ΛCDM cosmology.

Our technique does not provide constraints on H0 since this parameter is degenerate with the absolute cross-calibration of the Hubble diagram. Nonetheless, if we could confirm with high accuracy that w indeed evolves with time (see Zhao et al., 2017; Lusso et al., 2019; Risaliti and Lusso, 2019), this will provide an independent, compelling proof that this tension is real. Reducing the measurement uncertainties on cosmological parameters has become the main goal of current and forthcoming cosmological projects, in order to either corroborate the standard model or find new physics beyond it (see also results from N-body simulations, e.g., Adamek et al., 2016). Only the combination of different approaches, supported by an increased data quality and sample statistics, is the way forward to solve the H0 tension.

Data Availability Statement

The datasets generated for this study are available on request to the corresponding author.

Author Contributions

The author confirms being the sole contributor of this work and has approved it for publication.

Conflict of Interest

The author declares that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

Acknowledgments

We acknowledge financial contribution from the agreement ASI-INAF n.2017-14-H.O.

This work was initiated at the Aspen Center for Physics, which was supported by National Science Foundation grant PHY-1607611.

This research made use of Astropy a community-developed core Python package for Astronomy (Price-Whelan et al., 2018). This research made use of Matplotlib, a 2D graphics package used for Python (Hunter, 2007).

Footnotes

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Keywords: active galactic nuclei, quasar, observational cosmology, dark energy, surveys

Citation: Lusso E (2020) Cosmology With Quasars: Predictions for eROSITA From a Quasar Hubble Diagram. Front. Astron. Space Sci. 7:8. doi: 10.3389/fspas.2020.00008

Received: 03 October 2019; Accepted: 26 February 2020;
Published: 24 March 2020.

Edited by:

Mairi Sakellariadou, King's College London, United Kingdom

Reviewed by:

C. S. Unnikrishnan, Tata Institute of Fundamental Research, India
Sayantan Choudhury, Max Planck Institute for Gravitational Physics (AEI), Germany
Ashkbiz Danehkar, University of Michigan, United States
Siamak Akhshabi, Golestan University, Iran

Copyright © 2020 Lusso. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

*Correspondence: Elisabeta Lusso, ZWxpc2FiZXRhLmx1c3NvJiN4MDAwNDA7dW5pZmkuaXQ=

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