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Main Authors: Qayyum, Alif Bin Abdul, Luo, Xihaier, Urban, Nathan M., Qian, Xiaoning, Yoon, Byung-Jun
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2401.16936
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author Qayyum, Alif Bin Abdul
Luo, Xihaier
Urban, Nathan M.
Qian, Xiaoning
Yoon, Byung-Jun
author_facet Qayyum, Alif Bin Abdul
Luo, Xihaier
Urban, Nathan M.
Qian, Xiaoning
Yoon, Byung-Jun
contents World is looking for clean and renewable energy sources that do not pollute the environment, in an attempt to reduce greenhouse gas emissions that contribute to global warming. Wind energy has significant potential to not only reduce greenhouse emission, but also meet the ever increasing demand for energy. To enable the effective utilization of wind energy, addressing the following three challenges in wind data analysis is crucial. Firstly, improving data resolution in various climate conditions to ensure an ample supply of information for assessing potential energy resources. Secondly, implementing dimensionality reduction techniques for data collected from sensors/simulations to efficiently manage and store large datasets. Thirdly, extrapolating wind data from one spatial specification to another, particularly in cases where data acquisition may be impractical or costly. We propose a deep learning based approach to achieve multi-modal continuous resolution wind data prediction from discontinuous wind data, along with data dimensionality reduction.
format Preprint
id arxiv_https___arxiv_org_abs_2401_16936
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Multi-modal Representation Learning for Cross-modal Prediction of Continuous Weather Patterns from Discrete Low-Dimensional Data
Qayyum, Alif Bin Abdul
Luo, Xihaier
Urban, Nathan M.
Qian, Xiaoning
Yoon, Byung-Jun
Machine Learning
Computer Vision and Pattern Recognition
World is looking for clean and renewable energy sources that do not pollute the environment, in an attempt to reduce greenhouse gas emissions that contribute to global warming. Wind energy has significant potential to not only reduce greenhouse emission, but also meet the ever increasing demand for energy. To enable the effective utilization of wind energy, addressing the following three challenges in wind data analysis is crucial. Firstly, improving data resolution in various climate conditions to ensure an ample supply of information for assessing potential energy resources. Secondly, implementing dimensionality reduction techniques for data collected from sensors/simulations to efficiently manage and store large datasets. Thirdly, extrapolating wind data from one spatial specification to another, particularly in cases where data acquisition may be impractical or costly. We propose a deep learning based approach to achieve multi-modal continuous resolution wind data prediction from discontinuous wind data, along with data dimensionality reduction.
title Multi-modal Representation Learning for Cross-modal Prediction of Continuous Weather Patterns from Discrete Low-Dimensional Data
topic Machine Learning
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2401.16936