人工智能
特征提取
计算机科学
判别式
公制(单位)
校准
特征(语言学)
模式识别(心理学)
编码
随机漂移
适应(眼睛)
计算机视觉
瓦瑟斯坦度量
非线性系统
无线传感器网络
概念漂移
传感器阵列
实时计算
人工神经网络
电子鼻
萃取(化学)
性能指标
先验概率
工程类
理论(学习稳定性)
目标检测
方案(数学)
力矩(物理)
电子工程
信号(编程语言)
作者
Qilong Yang,J Liu,Yan Shi,Yue Wang,Hong Men
出处
期刊:ACS Sensors
[American Chemical Society]
日期:2026-04-28
卷期号:11 (5): 4057-4067
标识
DOI:10.1021/acssensors.6c00538
摘要
Gas sensors are prone to ageing, environmental fluctuations, and device-to-device variability during long-term deployment. The resulting sensor drift progressively erodes the recognition performance of Electronic nose (E-nose) systems. Here, a Meta-learning Driven Dual-branch Feature Extraction E-nose Drift Adaptation Network (MDFE-Net) was developed for few-shot drift compensation. A dual-branch feature extraction module (DBFE) was constructed to encode temporal dynamics and cross-sensor spatial response patterns, enabling discriminative feature-level modelling of drifted samples. Model-Agnostic Meta-Learning (MAML) was incorporated to learn task-shared priors and to enable rapid adaptation to unseen drift conditions with only a few labelled samples. An adaptive triplet loss and a dynamically reweighted cross-entropy loss were used to tighten intra-class clusters and enlarge inter-class margins. MDFE-Net achieves 95.53% accuracy under long-term drift and 95.71% accuracy under short-term drift on the Gas Sensor Array Drift Dataset. It maintains 97.89% accuracy under cross-device evaluation on the Twin Gas Sensor Arrays benchmark. Together, MDFE-Net couples deep metric learning with meta-learning to mitigate long-term nonlinear drift and improve cross-device generalisation when calibration labels are scarce.
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