论文标题

用于甲烷监测的源归因和现场重建的多任务学习

Multi-task Learning for Source Attribution and Field Reconstruction for Methane Monitoring

论文作者

Daw, Arka, Yeo, Kyongmin, Karpatne, Anuj, Klein, Levente

论文摘要

从空间稀疏的传感器观察中推断温室气体(例如甲烷)的来源信息是缓解气候变化的重要元素。虽然众所周知,这种污染物的大气分散的复杂行为受到对流扩散方程的控制,但由于在空间稀疏和噪声上的观察中,很难直接应用管理方程来识别源位置和幅度(反问题),即仅在传感器的位置污染浓度,并且仅在传感器的位置进行污染浓度。在这里,我们开发了一个多任务学习框架,可以从稀疏的传感器观察中提供浓度领域的高保真重建并确定污染源的发射特性,例如其位置,排放强度等。我们证明,我们提出的框架能够从稀疏的传感器测量值以及精确地点点点这些污染源的位置和发射强度来准确地重建甲烷浓度。

Inferring the source information of greenhouse gases, such as methane, from spatially sparse sensor observations is an essential element in mitigating climate change. While it is well understood that the complex behavior of the atmospheric dispersion of such pollutants is governed by the Advection-Diffusion equation, it is difficult to directly apply the governing equations to identify the source location and magnitude (inverse problem) because of the spatially sparse and noisy observations, i.e., the pollution concentration is known only at the sensor locations and sensors sensitivity is limited. Here, we develop a multi-task learning framework that can provide high-fidelity reconstruction of the concentration field and identify emission characteristics of the pollution sources such as their location, emission strength, etc. from sparse sensor observations. We demonstrate that our proposed framework is able to achieve accurate reconstruction of the methane concentrations from sparse sensor measurements as well as precisely pin-point the location and emission strength of these pollution sources.

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