An ideal mass assignment scheme for measuring the Power Spectrum with FFTs
Weiguang Cui, Lei Liu, Xiaohu Yang, Yu Wang, Longlong Feng, Volker, Springel

TL;DR
This paper introduces an optimal mass assignment scheme using Daubechies wavelet scale functions to accurately measure the dark matter power spectrum with FFTs, reducing sampling effects without deconvolution.
Contribution
Proposes a new mass assignment method with wavelet functions that minimizes window function effects, improving power spectrum measurement accuracy.
Findings
Achieves better than 2% accuracy up to k=0.7k_N in simulations.
Eliminates the need for deconvolution of window effects.
Demonstrates effectiveness with Millennium Simulation data.
Abstract
In measuring the power spectrum of the distribution of large numbers of dark matter particles in simulations, or galaxies in observations, one has to use Fast Fourier Transforms (FFT) for calculational efficiency. However, because of the required mass assignment onto grid points in this method, the measured power spectrum obtained with an FFT is not the true power spectrum but instead one that is convolved with a window function in Fourier space. In a recent paper, Jing (2005) proposed an elegant algorithm to deconvolve the sampling effects of the window function and to extract the true power spectrum, and tests using N-body simulations show that this algorithm works very well for the three most commonly used mass assignment functions, i.e., the Nearest Grid Point (NGP), the Cloud In Cell (CIC) and the Triangular Shaped Cloud (TSC)…
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