分布式轮询监测下的天然气泄漏量化反演方法
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山东省科学技术厅资助项目


Quantitative inversion method for natural gas leakage under distributed polling monitoring
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The Key R&D Plan of Shandong Province (Science and Technology Demonstration Project)

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    摘要:

    城镇天然气场站的泄漏监测与量化评估对事故预防及环境保护至关重要。现有方法在实时性、精度和复杂工业环境适应性,尤其在微小泄漏识别上存在局限。本研究提出一种结合分布式轮询采样与深度学习的天然气泄漏量化反演方法。首先,通过分布式气体轮询采样(distributed gas polling sampling, DGPS)的监测系统实现高时空分辨率数据采集。随后,构建了双分支深度学习模型,通过自适应融合主分支与针对微弱信号的小流量分支预测,实现了多尺度流量范围内的天然气泄漏精准量化反演,尤其增强了微小泄漏的识别能力。测试结果表明,模型整体预测的决定系数为0.9157,平均相对误差为12.18%,小流量(<0.1 m3/h)场景相对误差为17.51%。在真实天然气厂站24小时连续应用中,该方法与传统套袋法测量结果的相对误差为17.86%,验证了其在复杂工业环境下的高精度、鲁棒性与工程实用价值。本研究为天然气设施的甲烷排放在线监测与精准量化提供了一种经过现场验证的高精度在线监测方案。

    Abstract:

    Natural gas leak detection and quantitative assessment at urban gas stations are crucial for accident prevention and environmental protection. This study developed a novel method for the quantitative inversion of natural gas leaks, integrating distributed polling sampling with deep learning. We employed a Distributed Gas Polling Sampling (DGPS) monitoring system to acquire high spatiotemporal resolution data. Subsequently, we constructed a dual-branch deep learning model. This model achieved precise quantitative inversion of natural gas leaks across multiple flow rate scales, with a particular enhancement in identifying minute leaks, by adaptively fusing predictions from a main branch and a dedicated small-flow-rate branch for weak signals. Test results indicated that the model achieved a coefficient of determination (R2) of 0.9157 and an average relative error of 12.18% for overall predictions. For small flow rates (<0.1 m3/h), the relative error was 17.51%. During a 24-hour continuous application at an operational natural gas station, the method demonstrated a relative error of 17.86% compared to measurements obtained by the traditional bagging method. This research provides a field-validated, high-precision online monitoring solution for the online monitoring and accurate quantification of methane emissions from natural gas facilities.

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  • 收稿日期:2025-09-19
  • 最后修改日期:2026-02-05
  • 录用日期:2026-03-16
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