Journey over Destination: Dynamic Sensor Placement Enhances Generalization

Agnese Marcato, E. Guiltinan, Hari S. Viswanathan, Dan O’Malley, Nicholas Lubbers, Javier E. Santos
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Abstract

Reconstructing complex, high-dimensional global fields from limited data points is a challenge across various scientific and industrial domains. This is particularly important for recovering spatio-temporal fields using sensor data from, for example, laboratory-based scientific experiments, weather forecasting, or drone surveys. Given the prohibitive costs of specialized sensors and the inaccessibility of certain regions of the domain, achieving full field coverage is typically not feasible. Therefore, the development of machine learning algorithms trained to reconstruct fields given a limited dataset is of critical importance. In this study, we introduce a general approach that employs moving sensors to enhance data exploitation during the training of an attention based neural network, thereby improving field reconstruction. The training of sensor locations is accomplished using an end-to-end workflow, ensuring differentiability in the interpolation of field values associated to the sensors, and is simple to implement using differentiable programming. Additionally, we have incorporated a correction mechanism to prevent sensors from entering invalid regions within the domain. We evaluated our method using two distinct datasets; the results show that our approach enhances learning, as evidenced by improved test scores.
旅程重于目的地:动态传感器定位增强通用性
从有限的数据点重建复杂的高维全局场是各种科学和工业领域面临的挑战。这对于利用来自实验室科学实验、天气预报或无人机勘测等的传感器数据恢复时空场尤为重要。由于专用传感器的成本过高,而且无法进入领域的某些区域,实现全场覆盖通常是不可行的。因此,开发经过训练的机器学习算法,以便在有限数据集的情况下重建实地至关重要。在本研究中,我们引入了一种通用方法,在基于注意力的神经网络训练过程中,利用移动传感器来加强数据利用,从而改善场重建。传感器位置的训练采用端到端工作流程完成,确保与传感器相关的场值插值的可微分性,并通过可微分编程简单实现。此外,我们还采用了一种校正机制,以防止传感器进入域内的无效区域。我们使用两个不同的数据集对我们的方法进行了评估;结果表明,我们的方法提高了学习效果,测试分数的提高就是证明。
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