Stochastic Modeling of 3-D Compositional Distribution in the Crust with Bayesian Inference and Application to Geoneutrino Observation in Japan
Nozomu Takeuchi, Kenta Ueki, Tsuyoshi Iizuka, Jun Nagao, Akiko Tanaka,, Sanshiro Enomoto, Yutaka Shirahata, Hiroko Watanabe, Makoto Yamano, Hiroyuki, K.M. Tanaka

TL;DR
This paper introduces a Bayesian inference-based stochastic model for 3-D crustal composition, improving geoneutrino flux predictions and uncertainty quantification in Japan's crust, without relying on traditional crust segmentation.
Contribution
It develops a novel probabilistic method that accounts for local crustal uniqueness and mass balance, enhancing geoneutrino flux modeling accuracy.
Findings
First local crustal model with probabilistic error estimation
Incorporates extensive geochemical data from Japan arc
Achieves 60-70% flux estimation errors due to correlation handling
Abstract
Geoneutrino observations, first achieved by KamLAND in 2005 and followed by Borexino in 2010, have accumulated statistics and improved sensitivity for more than ten years. The uncertainty of the geoneutrino flux at the surface is now reduced to a level small enough to set useful constraints on U and Th abundances in the bulk silicate earth (BSE). However, in order to make inferences on earth's compositional model, the contributions from the local crust need to be understood within a similar uncertainty. Here we develop a new method to construct a stochastic crustal composition model utilizing Bayesian inference. While the methodology has general applicability, it incorporates all the local uniqueness in its probabilistic framework. Unlike common approaches for this type of problem, our method does not depend on crustal segmentation into upper, (middle) and lower, whose classification…
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