Earth observation imaging technologies, particularly multispectral
sensors, produce extensive high-dimensional data over time, thus
offering a wealth of information on global dynamics. These data
encapsulate crucial information in essential climate variables, such as
varying levels of soil moisture and temperature. However, current
cutting-edge machine learning models, including deep learning ones,
often overlook the treasure trove of multidimensional data, thus
analyzing each variable in isolation and losing critical interconnected
information. In our study, we enhance conventional convolutional neural
network models, specifically those based on the embedded temporal
convolutional network framework, thus transforming them into models that
inherently understand and interpret multidimensional correlations and
dependencies. This transformation involves recasting the existing
problem as a generalized case of N-dimensional observation analysis,
which is followed by deriving essential forward and backward pass
equations through tensor decompositions and compounded convolutions.
Consequently, we adapt integral components of established embedded
temporal convolutional network models, like encoder and decoder
networks, thus enabling them to process 4D spatial time series data that
encompass all essential climate variables concurrently. Through the
rigorous exploration of diverse model architectures and an extensive
evaluation of their forecasting prowess against top-tier methods, we
utilize two new, long-term essential climate variables datasets with
monthly intervals extending over four decades. Our empirical scrutiny,
particularly focusing on soil temperature data, unveils that the
innovative high-dimensional embedded temporal convolutional network
model-centric approaches markedly excel in forecasting, thus surpassing
their low-dimensional counterparts, even under the most challenging
conditions characterized by a notable paucity of training data.