LLM Reasoning 相关度: 5/10

Explainable machine learning workflows for radio astronomical data processing

S. Yatawatta, A. Ahmadi, B. Asabere, M. Iacobelli, N. Peters, M. Veldhuis
arXiv: 2603.16350v1 发布: 2026-03-17 更新: 2026-03-17

AI 摘要

提出了一种基于模糊规则和深度学习的、可解释的射电天文数据处理机器学习工作流。

主要贡献

  • 提出一种可解释的射电天文数据处理ML方法
  • 结合模糊规则和深度学习提高可解释性
  • 以射电天文校准为例展示方法有效性

方法论

结合Takagi-Sugeno-Kang (TSK)模糊系统和深度学习,用于射电天文数据处理的决策制定,并通过仿真验证。

原文摘要

Radio astronomy relies heavily on efficient and accurate processing pipelines to deliver science ready data. With the increasing data flow of modern radio telescopes, manual configuration of such data processing pipelines is infeasible. Machine learning (ML) is already emerging as a viable solution for automating data processing pipelines. However, almost all existing ML enabled pipelines are of black-box type, where the decisions made by the automating agents are not easily deciphered by astronomers. In order to improve the explainability of the ML aided data processing pipelines in radio astronomy, we propose the joint use of fuzzy rule based inference and deep learning. We consider one application in radio astronomy, i.e., calibration, to showcase the proposed approach of ML aided decision making using a Takagi-Sugeno-Kang (TSK) fuzzy system. We provide results based on simulations to illustrate the increased explainability of the proposed approach, not compromising on the quality or accuracy.

标签

射电天文学 机器学习 可解释性 模糊逻辑 深度学习

arXiv 分类

astro-ph.IM cs.AI