LGDec 20, 2021

Efficient Wind Speed Nowcasting with GPU-Accelerated Nearest Neighbors Algorithm

arXiv:2112.10408v2
Originality Incremental advance
AI Analysis

This incremental improvement addresses computational bottlenecks in meteorological forecasting for aviation and climate modeling.

The paper tackles the problem of high-altitude wind speed nowcasting by processing live airplane data to reconstruct wind fields accurately, achieving a several-fold speedup over existing methods like Euclidean k-NN and KDTrees.

This paper proposes a simple yet efficient high-altitude wind nowcasting pipeline. It processes efficiently a vast amount of live data recorded by airplanes over the whole airspace and reconstructs the wind field with good accuracy. It creates a unique context for each point in the dataset and then extrapolates from it. As creating such context is computationally intensive, this paper proposes a novel algorithm that reduces the time and memory cost by efficiently fetching nearest neighbors in a data set whose elements are organized along smooth trajectories that can be approximated with piece-wise linear structures. We introduce an efficient and exact strategy implemented through algebraic tensorial operations, which is well-suited to modern GPU-based computing infrastructure. This method employs a scalable Euclidean metric and allows masking data points along one dimension. When applied, this method is more efficient than plain Euclidean k-NN and other well-known data selection methods such as KDTrees and provides a several-fold speedup. We provide an implementation in PyTorch and a novel data set to allow the replication of empirical results.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes