基于峰值感知条件生成框架的干扰下鲁棒化学检测 / Conditional Generative Framework with Peak-Aware Attention for Robust Chemical Detection under Interferences
1️⃣ 一句话总结
这篇论文提出了一种结合峰值感知机制和条件生成对抗网络的人工智能框架,能够生成高质量的模拟数据来增强化学检测模型在存在干扰物时的准确性和可靠性。
Gas chromatography-mass spectrometry (GC-MS) is a widely used analytical method for chemical substance detection, but measurement reliability tends to deteriorate in the presence of interfering substances. In particular, interfering substances cause nonspecific peaks, residence time shifts, and increased background noise, resulting in reduced sensitivity and false alarms. To overcome these challenges, in this paper, we propose an artificial intelligence discrimination framework based on a peak-aware conditional generative model to improve the reliability of GC-MS measurements under interference conditions. The framework is learned with a novel peak-aware mechanism that highlights the characteristic peaks of GC-MS data, allowing it to generate important spectral features more faithfully. In addition, chemical and solvent information is encoded in a latent vector embedded with it, allowing a conditional generative adversarial neural network (CGAN) to generate a synthetic GC-MS signal consistent with the experimental conditions. This generates an experimental dataset that assumes indirect substance situations in chemical substance data, where acquisition is limited without conducting real experiments. These data are used for the learning of AI-based GC-MS discrimination models to help in accurate chemical substance discrimination. We conduct various quantitative and qualitative evaluations of the generated simulated data to verify the validity of the proposed framework. We also verify how the generative model improves the performance of the AI discrimination framework. Representatively, the proposed method is shown to consistently achieve cosine similarity and Pearson correlation coefficient values above 0.9 while preserving peak number diversity and reducing false alarms in the discrimination model.
基于峰值感知条件生成框架的干扰下鲁棒化学检测 / Conditional Generative Framework with Peak-Aware Attention for Robust Chemical Detection under Interferences
这篇论文提出了一种结合峰值感知机制和条件生成对抗网络的人工智能框架,能够生成高质量的模拟数据来增强化学检测模型在存在干扰物时的准确性和可靠性。
源自 arXiv: 2601.21246