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Assessment of rice crop yield prediction models based on big data analytics to support decision-making processes in the agricultural sector of Thailand | |
Author | Sumanya Ngandee |
Call Number | AIT Diss. no.ICT-20-02 |
Subject(s) | Big data--Analysis Decision Making Agriculture--Thailand Crop yields--Thailand |
Note | A dissertation submitted in partial fulfillment of the requirements for the degree of Doctor of Philosophy in Information and Communications Technologies, School of Engineering and Technology |
Publisher | Asian Institute of Technology |
Series Statement | Dissertation ; no. ICT-20-02 |
Abstract | In this dissertation rice yield prediction models based on historical datasets (1989-2017) for the main type of in-season rice cultivated in Thailand was studied. Models were generated using the following Machine Learning (ML) algorithms: Generalized Linear Model (GLM), Feed-Forward Neural Network (FFNN), Support Vector Machine (SVM), and Random Forest (RF). The prediction models were evaluated using Mean Absolute Percentage Error (MAPE), Root Mean Square Error (RMSE), and R 2 statistic. The results show that the FFNN outperforms the other models for rice yield prediction accuracy. In addition, the results are shown to be better than the existing prediction techniques including Linear Regression (LR), the k-Nearest Neighbor algorithm (kNN), Naive Bayes (NB), J48 a decision tree, RF, SVM, and Artificial Neural Network (ANN). The results confirm that the FFNN, a.k.a., Multi-Layered Perceptron (MLP), which is a deep neural network, can simultaneously account for complex nonlinear relationships in high-dimensional datasets. While the Big-O complexity and the execution runtime for training of the FFNN exceed the other models, its execution of predictions takes the least execution runtime. The practical implication of this study is to improve the quality of agricultural information dissemination services to farmers, wholesalers, retailers, middlemen, processors, financial institutions, policy makers, and the general public for the development of Thailand’s agricultural sector, rice supply chains and the economy as a whole. |
Year | 2020 |
Corresponding Series Added Entry | Asian Institute of Technology. Dissertations ; no. ICT-20-02 |
Type | Dissertation |
School | School of Engineering and Technology (SET) |
Department | Department of Information and Communications Technologies (DICT) |
Academic Program/FoS | Information and Communication Technology (ICT) |
Chairperson(s) | Attaphongse Taparugssanagorn; |
Examination Committee(s) | Chutiporn Anutariya;Kuwornu, John K.M.; |
Scholarship Donor(s) | Ministry of Agriculture and Cooperatives (MOAC) Thailand;Asian Institute of Technology Fellowship; |
Degree | Thesis (Ph.D.) - Asian Institute of Technology, 2020 |