Redshifts and Classifications

本文详细介绍了SDSS( Sloan Digital Sky Survey)在确定星系、QSO(类星体)和恒星光谱的红移和分类方法,包括使用IDLspec2d软件进行红移拟合和分类的过程。方法涉及对不同类型的光谱进行PCA(主成分分析)训练,并采用多种模型进行拟合,最终确定最佳红移和分类。

摘要生成于 C知道 ,由 DeepSeek-R1 满血版支持, 前往体验 >

Redshifts and Classifications

http://www.sdss3.org/dr8/algorithms/redshifts.php

For each spectrum, we estimate a redshift and perform a classification into STAR, GALAXY,QSO or UNKNOWN. In addition, we define subclasses for some of these.  Here we describe the redshift and classification methods. The software used is called idlspec2d and is publicly available in our software repository.

The essential strategy for redshift fitting is to perform, at each potential redshift, a least-squares fit to each spectrum given the uncertainties, using a fairly general set of models, for galaxies, for stars, for cataclysmic variables, and for QSOs. The best fit model and redshift is chosen as the reported parameters for the object. The fits are applied without regard to the target category of the object (so that if an object targeted as a galaxy turns out to be a star, we can identify it as such). We describe the galaxy-template redshift analysis in detail here, and describe the differences of other template class analyses relative to the galaxy case.

In detail, for each spectroscopic plate, the fits are done to the spectra, with some pixels masked as untrustworthy as follows.  Thespreduce1d module in idlspec2d reads the calibrated spectrum flux vectors, associated inverse-variance vectors, and wavelength baseline from the spPlatefile written by the two-dimensional extraction procedures.  In addition to masking bad pixels within each spectrum, zero weight is given to pixels at wavelengths where the residual reduced chi-squared of the sky-subtracted sky spectra exceeds 3, and to pixels where the brightness from a sky line exceeds the sum of the extracted object flux plus ten times its associated error. 

The galaxy class is defined by a rest-frame principal-component analysis (PCA) of 480 galaxies observed on SDSS plate number 306, MJD 51690, which is used to define a basis of 4 "eigenspectra" corresponding to the four most significant modes of variation in the PCA analysis.  The redshifts of the galaxy PCA training sample are established by fitting each spectrum with a linear combination of two stellar template spectra and a set of narrow Gaussian profiles at the wavelengths of common nebular emission lines.  The stellar template spectra used in this procedure are obtained from the first two components of a PCA analysis of 10 velocity standard stars observed on SDSS plate 321, MJD 51612.  The galaxy PCA training sample redshifts are verified by visual inspection.

For all spectra, a range of trial galaxy redshifts is explored from redshift -0.01 to 1.00.  Trial redshifts are separated by 138 km/s (i.e., two pixels in the reduced spectra).  At each trial redshift, the galaxy eigenbasis is shifted accordingly, and the error-weighted data spectrum is modeled as a minimum-chi-squared linear combination of the redshifted eigenspectra, plus a quadratic polynomial to absorb low-order calibration uncertainties.  The chi-squared value for this trial redshift is stored, and the analysis proceeds to the next trial redshift.  The trial redshifts corresponding to the 5 lowest chi-squared values are then redetermined locally to sub-pixel accuracy, and errors in these values are determined from the curvature of the chi-squared curve at the position of the minimum.

QSO redshifts are determined for all spectra in similar fashion to the galaxy redshifts, but over a larger range of exploration (z = 0.0333 to 7.00) and with a larger initial velocity step (276 km/s). The QSO eigenspectrum basis is defined by a PCA of 412 QSO spectra with known redshifts.  Star redshifts are determined separately for each of 32 single sub-type templates (excluding CV stars) using a single eigenspectrum plus a cubic polynomial for each subtype, over a radial velocity range from -1200 to +1200 km/s.  Only the single best radial velocity is retained for each stellar subtype.  Because of their intrinsic emission-line diversity, CV stars are handled differently than other stellar subtypes, with a 3-component PCA eigenbasis plus a quadratic polynomial, over a radial velocity range of from -1000 to +1000 km/s.

Once the best 5 galaxy redshifts, best 5 QSO redshifts, and best stellar sub-type radial velocities for a given spectrum have been determined, these identifications are sorted in order of increasing reduced chi-squared, and the difference in reduced chi-squared between each fit and the next-best fit with a radial velocity difference of greater than 1000 km/s is computed.  The model spectra for all fits are redetermined, and used to compute statistics of the distribution of data-minus-model residual values in the spectrum for each fit. Both the spectra and the models are integrated over the SDSS imaging filter band-passes to determine the implied broadband magnitudes.

The combination of redshift and template class that yields the overall best fit (in terms of lowest reduced chi-squared) is adopted as the pipeline measurement of the redshift and classification of the spectrum.  Several warning flags can be set so as to indicate low confidence in this identification, which are documented in the online data model.  The most common flag is set to indicate that the change in reduced chi-squared between the best and next-best redshift/classification is less than 0.01, which indicates a poorly determined redshift.

At the best galaxy redshift, the stellar velocity dispersion is also determined.  This is done by computing a PCA basis of eigenspectra from the ELODIE stellar library (Prugniel& Soubiran 2001), convolved and binned to match the instrumental resolution and constant-velocity pixel scale of the reduced SDSS spectra, and broadened by Gaussian kernels of successively larger velocity width ranging from 100 to 850 km/s in steps of 25 km/s.  The broadened stellar template sets are redshifted to the best-fit galaxy redshift, and the spectrum is modeled as a least-squares linear combination of the basis at each trial broadening, masking pixels at the position of common emission lines in the galaxy-redshift rest frame.  The best-fit velocity dispersion is determined by fitting locally for the position of the minimum of chi-squared versus trial velocity dispersion in the neighborhood of the lowest gridded chi-squared value.  Velocity-dispersion error estimates are determined from the curvature of the chi-squared curve at the global minimum, and are set to a negative value if the best value occurs at the high-velocity end of the fitting range. Reported best-fit velocity-dispersion values less than about 100 km/s are below the resolution limit of the SDSS spectrograph and are to be regarded with caution.

Flux values, redshifts, line-widths, and continuum levels are computed for common rest-frame ultraviolet and optical emission lines by fitting multiple Gaussian-plus-background models at their observed positions within the spectra.  The initial-guess emission-line redshift is taken from the main redshift analysis, but is subsequently re-fit nonlinearly in the emission-line fitting routine.  All lines are constrained to have the same redshift except for Lyman-alpha. Intrinsic line-widths are constrained to be the same for all emission lines, with the exception of the hydrogen Balmer series, which is given its own line-width as a free parameter, and Lyman-alpha and NV 1214, which each have their own free line-width parameters.  Known 3:1 line flux ratios between the members of the [OIII] 5007 and [NII] 6583 doublets are imposed.  When the signal-to-noise of the line measurements permits doing so, spectra classified as galaxies and QSOs are sub-classified into AGN and star-forming galaxies based upon measured [OIII]/Hβ and [NII]/Hα line ratios, and galaxies with very high equivalent width in Hα are sub-classified as starburst objects. See the spectro catalogspage for details on the line ratio criteria.

The output of the redshift and classification pipeline is stored in three files for each spectroscopic plate observation.  The spZbestfile contains the detailed results for the best-fit redshift/classification of each spectrum, and includes the best-fit model spectrum that was used to make the redshift measurement.  The spZallfile contains parameters from all the next-best identifications, without the full representation of the associated model spectra (although these can be reconstructed from template files and reported coefficients).  The spZlinefile contains the results of the emission-line fits for each object.

一、综合实战—使用极轴追踪方式绘制信号灯 实战目标:利用对象捕捉追踪和极轴追踪功能创建信号灯图形 技术要点:结合两种追踪方式实现精确绘图,适用于工程制图中需要精确定位的场景 1. 切换至AutoCAD 操作步骤: 启动AutoCAD 2016软件 打开随书光盘中的素材文件 确认工作空间为"草图与注释"模式 2. 绘图设置 1)草图设置对话框 打开方式:通过"工具→绘图设置"菜单命令 功能定位:该对话框包含捕捉、追踪等核心绘图辅助功能设置 2)对象捕捉设置 关键配置: 启用对象捕捉(F3快捷键) 启用对象捕捉追踪(F11快捷键) 勾选端点、中心、圆心、象限点等常用捕捉模式 追踪原理:命令执行时悬停光标可显示追踪矢量,再次悬停可停止追踪 3)极轴追踪设置 参数设置: 启用极轴追踪功能 设置角度增量为45度 确认后退出对话框 3. 绘制信号灯 1)绘制圆形 执行命令:"绘图→圆→圆心、半径"命令 绘制过程: 使用对象捕捉追踪定位矩形中心作为圆心 输入半径值30并按Enter确认 通过象限点捕捉确保圆形位置准确 2)绘制直线 操作要点: 选择"绘图→直线"命令 捕捉矩形上边中点作为起点 捕捉圆的上象限点作为终点 按Enter结束当前直线命令 重复技巧: 按Enter可重复最近使用的直线命令 通过圆心捕捉和极轴追踪绘制放射状直线 最终形成完整的信号灯指示图案 3)完成绘制 验证要点: 检查所有直线是否准确连接圆心和象限点 确认极轴追踪的45度增量是否体现 保存绘图文件(快捷键Ctrl+S)
评论
添加红包

请填写红包祝福语或标题

红包个数最小为10个

红包金额最低5元

当前余额3.43前往充值 >
需支付:10.00
成就一亿技术人!
领取后你会自动成为博主和红包主的粉丝 规则
hope_wisdom
发出的红包
实付
使用余额支付
点击重新获取
扫码支付
钱包余额 0

抵扣说明:

1.余额是钱包充值的虚拟货币,按照1:1的比例进行支付金额的抵扣。
2.余额无法直接购买下载,可以购买VIP、付费专栏及课程。

余额充值