Implicit Neural Representations for Simultaneous Reduction and
Continuous Reconstruction of Multi-Altitude Climate Data
- URL: http://arxiv.org/abs/2409.17367v1
- Date: Wed, 25 Sep 2024 21:23:28 GMT
- Title: Implicit Neural Representations for Simultaneous Reduction and
Continuous Reconstruction of Multi-Altitude Climate Data
- Authors: Alif Bin Abdul Qayyum, Xihaier Luo, Nathan M. Urban, Xiaoning Qian and
Byung-Jun Yoon
- Abstract summary: We introduce a deep learning framework designed to simultaneously enable effective dimensionality reduction and continuous representation of multi-altitude wind data.
We aim to: (1) improve data resolution across diverse climatic conditions to recover high-resolution details; (2) reduce data dimensionality for more efficient storage of large climate datasets; and (3) enable cross-prediction between wind data measured at different heights.
- Score: 12.25603295884306
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The world is moving towards clean and renewable energy sources, such as wind
energy, in an attempt to reduce greenhouse gas emissions that contribute to
global warming. To enhance the analysis and storage of wind data, we introduce
a deep learning framework designed to simultaneously enable effective
dimensionality reduction and continuous representation of multi-altitude wind
data from discrete observations. The framework consists of three key
components: dimensionality reduction, cross-modal prediction, and
super-resolution. We aim to: (1) improve data resolution across diverse
climatic conditions to recover high-resolution details; (2) reduce data
dimensionality for more efficient storage of large climate datasets; and (3)
enable cross-prediction between wind data measured at different heights.
Comprehensive testing confirms that our approach surpasses existing methods in
both super-resolution quality and compression efficiency.
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