LSTM-Based Prediction of Mediterranean Vegetation Dynamics Using NDVI Time-Series Data

Vegetation index time-series analysis of multitemporal satellite data is widely used to study vegetation dynamics in the present climate change era. This paper proposes a systematic methodology to predict the Normalized Difference Vegetation Index (NDVI) using time-series data extracted from the Mod...

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Main Authors: Christos Vasilakos, George E. Tsekouras, Dimitris Kavroudakis
Format: Article
Language:English
Published: MDPI AG 2022-06-01
Series:Land
Subjects:
Online Access:https://www.mdpi.com/2073-445X/11/6/923
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author Christos Vasilakos
George E. Tsekouras
Dimitris Kavroudakis
author_facet Christos Vasilakos
George E. Tsekouras
Dimitris Kavroudakis
author_sort Christos Vasilakos
collection DOAJ
description Vegetation index time-series analysis of multitemporal satellite data is widely used to study vegetation dynamics in the present climate change era. This paper proposes a systematic methodology to predict the Normalized Difference Vegetation Index (NDVI) using time-series data extracted from the Moderate Resolution Imaging Spectroradiometer (MODIS). The key idea is to obtain accurate NDVI predictions by combining the merits of two effective computational intelligence techniques; namely, fuzzy clustering and long short-term memory (LSTM) neural networks under the framework of dynamic time warping (DTW) similarity measure. The study area is the Lesvos Island, located in the Aegean Sea, Greece, which is an insular environment in the Mediterranean coastal region. The algorithmic steps and the main contributions of the current work are described as follows. (1) A data reduction mechanism was applied to obtain a set of representative time series. (2) Since DTW is a similarity measure and not a distance, a multidimensional scaling approach was applied to transform the representative time series into points in a low-dimensional space, thus enabling the use of the Euclidean distance. (3) An efficient optimal fuzzy clustering scheme was implemented to obtain the optimal number of clusters that better described the underline distribution of the low-dimensional points. (4) The center of each cluster was mapped into time series, which were the mean of all representative time series that corresponded to the points belonging to that cluster. (5) Finally, the time series obtained in the last step were further processed in terms of LSTM neural networks. In particular, development and evaluation of the LSTM models was carried out considering a one-year period, i.e., 12 monthly time steps. The results indicate that the method identified unique time-series patterns of NDVI among different CORINE land-use/land-cover (LULC) types. The LSTM networks predicted the NDVI with root mean squared error (RMSE) ranging from 0.017 to 0.079. For the validation year of 2020, the difference between forecasted and actual NDVI was less than 0.1 in most of the study area. This study indicates that the synergy of the optimal fuzzy clustering based on DTW similarity of NDVI time-series data and the use of LSTM networks with clustered data can provide useful results for monitoring vegetation dynamics in fragmented Mediterranean ecosystems.
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spelling doaj.art-423c211c835f4aa483091e3b1139e5252023-11-23T17:32:56ZengMDPI AGLand2073-445X2022-06-0111692310.3390/land11060923LSTM-Based Prediction of Mediterranean Vegetation Dynamics Using NDVI Time-Series DataChristos Vasilakos0George E. Tsekouras1Dimitris Kavroudakis2Department of Geography, University of the Aegean, 81100 Mytilene, GreeceDepartment of Cultural Technology and Communications, University of the Aegean, 81100 Mytilene, GreeceDepartment of Geography, University of the Aegean, 81100 Mytilene, GreeceVegetation index time-series analysis of multitemporal satellite data is widely used to study vegetation dynamics in the present climate change era. This paper proposes a systematic methodology to predict the Normalized Difference Vegetation Index (NDVI) using time-series data extracted from the Moderate Resolution Imaging Spectroradiometer (MODIS). The key idea is to obtain accurate NDVI predictions by combining the merits of two effective computational intelligence techniques; namely, fuzzy clustering and long short-term memory (LSTM) neural networks under the framework of dynamic time warping (DTW) similarity measure. The study area is the Lesvos Island, located in the Aegean Sea, Greece, which is an insular environment in the Mediterranean coastal region. The algorithmic steps and the main contributions of the current work are described as follows. (1) A data reduction mechanism was applied to obtain a set of representative time series. (2) Since DTW is a similarity measure and not a distance, a multidimensional scaling approach was applied to transform the representative time series into points in a low-dimensional space, thus enabling the use of the Euclidean distance. (3) An efficient optimal fuzzy clustering scheme was implemented to obtain the optimal number of clusters that better described the underline distribution of the low-dimensional points. (4) The center of each cluster was mapped into time series, which were the mean of all representative time series that corresponded to the points belonging to that cluster. (5) Finally, the time series obtained in the last step were further processed in terms of LSTM neural networks. In particular, development and evaluation of the LSTM models was carried out considering a one-year period, i.e., 12 monthly time steps. The results indicate that the method identified unique time-series patterns of NDVI among different CORINE land-use/land-cover (LULC) types. The LSTM networks predicted the NDVI with root mean squared error (RMSE) ranging from 0.017 to 0.079. For the validation year of 2020, the difference between forecasted and actual NDVI was less than 0.1 in most of the study area. This study indicates that the synergy of the optimal fuzzy clustering based on DTW similarity of NDVI time-series data and the use of LSTM networks with clustered data can provide useful results for monitoring vegetation dynamics in fragmented Mediterranean ecosystems.https://www.mdpi.com/2073-445X/11/6/923remote sensingNDVImachine learningLSTMspatiotemporal forecasting
spellingShingle Christos Vasilakos
George E. Tsekouras
Dimitris Kavroudakis
LSTM-Based Prediction of Mediterranean Vegetation Dynamics Using NDVI Time-Series Data
Land
remote sensing
NDVI
machine learning
LSTM
spatiotemporal forecasting
title LSTM-Based Prediction of Mediterranean Vegetation Dynamics Using NDVI Time-Series Data
title_full LSTM-Based Prediction of Mediterranean Vegetation Dynamics Using NDVI Time-Series Data
title_fullStr LSTM-Based Prediction of Mediterranean Vegetation Dynamics Using NDVI Time-Series Data
title_full_unstemmed LSTM-Based Prediction of Mediterranean Vegetation Dynamics Using NDVI Time-Series Data
title_short LSTM-Based Prediction of Mediterranean Vegetation Dynamics Using NDVI Time-Series Data
title_sort lstm based prediction of mediterranean vegetation dynamics using ndvi time series data
topic remote sensing
NDVI
machine learning
LSTM
spatiotemporal forecasting
url https://www.mdpi.com/2073-445X/11/6/923
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AT georgeetsekouras lstmbasedpredictionofmediterraneanvegetationdynamicsusingndvitimeseriesdata
AT dimitriskavroudakis lstmbasedpredictionofmediterraneanvegetationdynamicsusingndvitimeseriesdata