2022
DOI: 10.52547/crpase.8.1.2747
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Evaluation of Machine Learning Methods Application in Temperature Prediction

Abstract: Machine Learning (ML) techniques for time series prediction are becoming increasingly accurate and helpful, particularly in considering climate change. As more methods are developed, it follows that differentiating between them is becoming increasingly more important as well. This work took a local temperature time series as a dependent variable and a collection of relevant climatology time series as independent variables and applied leading Machine Learning methods to them. The six methods tested included fou… Show more

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Cited by 16 publications
(6 citation statements)
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“…However, the recent development in data-driven models like machine learning models has attracted the attention of researchers to apply these advanced tools for various problems related to different engineering areas (Worden et al, 2007;Akhani et al, 2019;Sparks et al, 2020;Lange and Sippel, 2020;Zounemat et al, 2021;Gandomi et al2021;Kashani et al, 2021;Akhani and Pezeshk, 2022;Azari et al, 2022;Ali et al, 2022). Machine learning models were adopted broadly for studying the scour around hydraulic structures because traditional methods like numerical or experimental models require a lot of data, and these models are costly.…”
Section: Figure 1 An Illustration Showing Scouring Around a Bridge Piermentioning
confidence: 99%
“…However, the recent development in data-driven models like machine learning models has attracted the attention of researchers to apply these advanced tools for various problems related to different engineering areas (Worden et al, 2007;Akhani et al, 2019;Sparks et al, 2020;Lange and Sippel, 2020;Zounemat et al, 2021;Gandomi et al2021;Kashani et al, 2021;Akhani and Pezeshk, 2022;Azari et al, 2022;Ali et al, 2022). Machine learning models were adopted broadly for studying the scour around hydraulic structures because traditional methods like numerical or experimental models require a lot of data, and these models are costly.…”
Section: Figure 1 An Illustration Showing Scouring Around a Bridge Piermentioning
confidence: 99%
“…Support Vector Regression (SVR) presents another method to identify relationships between input and output data (Quan et al, 2022). The multi-layer perceptron (MLP) or Artificial neural networks (ANNs) have also become valuable tools in meteorology, excelling at tasks like classification and forecasting (Azari et al;Nezhad et al, 2019). Their success lies in their ability to accurately: identify complex patterns in historical weather data, essential for prediction; capture non-linear relationships between diverse weather variables; and find optimal solutions within intricate weather models, ultimately tackling a broad range of ML problems (Gulrez, 2021;Poh, et al, 2021).…”
Section: Introductionmentioning
confidence: 99%
“…Linear regression (LR) is one of the oldest and most common ML methods used in diferent areas for regression tasks. LR is applicable to single or multiple variable problems [30][31][32]. Decision tree (DT) regression is another common ML method used in the literature to solve regression problems [33,34].…”
Section: Introductionmentioning
confidence: 99%
“…Decision tree (DT) regression is another common ML method used in the literature to solve regression problems [33,34]. Support vector machine (SVM) regression is also a well-known and typical ML method for determining the link between features and targets [32,[35][36][37]. Artifcial neural network (ANN), one of the most popular ML methods, has been used to solve many ML problems in diferent areas [38][39][40][41].…”
Section: Introductionmentioning
confidence: 99%