Reconstructing missing time-varying land subsidence data using back propagation neural network with principal component analysis
Chih-Yu Liu,
Cheng-Yu Ku,
Jia-Fu Hsu
Abstract:Land subsidence, a complex geophysical phenomenon, necessitates comprehensive time-varying data to understand regional subsidence patterns over time. This article focuses on the crucial task of reconstructing missing time-varying land subsidence data in the Choshui Delta, Taiwan. We propose a novel algorithm that leverages a multi-factorial perspective to accurately reconstruct the missing time-varying land subsidence data. By considering eight influential factors, our method seeks to capture the intricate int… Show more
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