Assessment of the spatiotemporal prediction capabilities of machine learning algorithms on Sea Surface Temperature data: A comprehensive study

被引:25
作者
Kartal, Serkan [1 ,2 ]
机构
[1] Delft Univ Technol, Fac Civil Engn & Geosci, Geosci & Remote Sensing Dept, Delft, Netherlands
[2] Cukurova Univ, Engn Fac, Dept Comp Engn, Adana, Turkiye
关键词
Machine Learning; Prediction; Time series satellite data; Sea Surface Temperature; TIME-SERIES;
D O I
10.1016/j.engappai.2022.105675
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Spatiotemporal time series prediction plays a crucial role in a wide range of applications. However, in most of the studies, spatial information was ignored and predictions were carried out either on a few points or on average values. In this study, 37 different configurations of 4 traditional ML models and 3 Neural Network (NN) based models were utilized to provide a comprehensive comparison and evaluate the spatiotemporal data prediction capabilities of the ML models. Additionally, to reveal the importance of spatial data for the time series prediction process, the best configuration of each ML model was evaluated with and without using spatial information. The utilized models were: (i) Linear Regression (LR), (ii) K-Nearest Neighbors (KNN), (iii) Decision-Trees (DT), (iv) Support Vector Machine (SVM), (v) Multi-Layer Perceptron (MLP), (vi) Long Short-Term Memory (LSTM), and (vii) Gated Recurrent Unit (GRU). The study was performed on the Sea Surface Temperature (SST) data collected by satellite radiometers via infrared measurements. The models were evaluated according to their one-month ahead spatiotemporal SST prediction performance over the southern coasts of Turkey, and the effects of spatial information on model performance were presented. Results reveal that the spatial information increased the prediction performance by approximately 25%, in terms of RMSE. Additionally, acquired results show that the LSTM model outperforms all other ML models and gives the smallest prediction errors in all metrics.
引用
收藏
页数:11
相关论文
共 50 条
[41]   THE EMPLOYMENT OF MACHINE LEARNING ALGORITHMS FOR PREDICTION IN LEARNING ANALYTICS AND EDUCATIONAL DATA MINING WITHIN THE CONTEXT OF HIGHER EDUCATION [J].
Poturic, Vanja Cotic ;
Candrlic, Sanja ;
Drazic, Ivan .
ZBORNIK VELEUCILISTA U RIJECI-JOURNAL OF THE POLYTECHNICS OF RIJEKA, 2024, 12 (01) :223-242
[42]   Quantification of MODIS Land Surface Temperature Downscaled by Machine Learning Algorithms [J].
Su, Qi ;
Meng, Xiangchen ;
Sun, Lin ;
Guo, Zhongqiang .
REMOTE SENSING, 2025, 17 (14)
[43]   A comprehensive benchmarking of machine learning algorithms and dimensionality reduction methods for drug sensitivity prediction [J].
Eckhart, Lea ;
Lenhof, Kerstin ;
Rolli, Lisa-Marie ;
Lenhof, Hans-Peter .
BRIEFINGS IN BIOINFORMATICS, 2024, 25 (04)
[44]   Postoperative Nausea and Vomiting Prediction: Machine Learning Insights from a Comprehensive Analysis of Perioperative Data [J].
Kim, Jong-Ho ;
Cheon, Bo-Reum ;
Kim, Min-Guan ;
Hwang, Sung-Mi ;
Lim, So-Young ;
Lee, Jae-Jun ;
Kwon, Young-Suk .
BIOENGINEERING-BASEL, 2023, 10 (10)
[45]   Comparison of Two Spatiotemporal Reconstruction Methods for Spaceborne Sea Surface Temperature Data at Multiple Temporal Resolutions [J].
Ma, Xuehua ;
He, Junyu ;
He, Shuangyan ;
Gu, Yanzhen ;
Cao, Anzhou ;
Li, Peiliang ;
Zhou, Feng .
IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING, 2024, 17 :16289-16305
[46]   Lead time prediction using machine learning algorithms: A case study by a semiconductor manufacturer [J].
Lingitz, Lukas ;
Gallina, Viola ;
Ansari, Fazel ;
Gyulai, David ;
Pfeiffer, Andras ;
Sihn, Wilfried ;
Monostori, Laszlo .
51ST CIRP CONFERENCE ON MANUFACTURING SYSTEMS, 2018, 72 :1051-1056
[47]   Machine learning and deep learning approaches for enhanced prediction of hERG blockade: a comprehensive QSAR modeling study [J].
Liu, Jie ;
Khan, Md Kamrul Hasan ;
Guo, Wenjing ;
Dong, Fan ;
Ge, Weigong ;
Zhang, Chaoyang ;
Gong, Ping ;
Patterson, Tucker A. ;
Hong, Huixiao .
EXPERT OPINION ON DRUG METABOLISM & TOXICOLOGY, 2024, 20 (07) :665-684
[48]   Modeling spatiotemporal distribution of yellow rust wheat pathogen using machine learning algorithms: Insights from environmental assessment [J].
Mahmoodi, Shirin ;
Ganje, Meysam Bakhshi ;
Ahmadi, Kourosh ;
Dalvand, Yadollah ;
Naghibi, Amir ;
Newlands, Nathaniel K. .
ENVIRONMENTAL TECHNOLOGY & INNOVATION, 2024, 36
[49]   Hyperparameter tuning and performance assessment of statistical and machine-learning algorithms using spatial data [J].
Schratz, Patrick ;
Muenchow, Jannes ;
Iturritxa, Eugenia ;
Richter, Jakob ;
Brenning, Alexander .
ECOLOGICAL MODELLING, 2019, 406 :109-120
[50]   Prediction of PM2.5 Concentration Using Spatiotemporal Data with Machine Learning Models [J].
Ma, Xin ;
Chen, Tengfei ;
Ge, Rubing ;
Xv, Fan ;
Cui, Caocao ;
Li, Junpeng .
ATMOSPHERE, 2023, 14 (10)