DLinear Model for Microclimate Prediction of Coffee-Pine Agroforestry

Authors

Keywords:

DLinear model, Machine learning models, Microclimate prediction, Coffee-pine agroforestry, Environmental monitoring

Abstract

Date fruit is one of the most important economical and cultural agricultural crops in the Middle East that plays a critical role in trade and food sustainability. These merits have attracted increasing interest from researchers and the food industry to improve food sustainability. The advent and integration of computer vision and artificial intelligence (AI) technologies have rapidly accelerated the progress in the development of automated classification, quality assessment, and grading for date fruits. This study offers an inclusive comparative analysis for ten pre-trained convolutional neural network (CNN) models used to classify fifteen different date fruit cultivars. The dataset obtained from two publicly available datasets. They contain images of cultivars from Saudi Arabia and Pakistan. The images are first preprocessed to enhance their quality, segmented, augmented to overcome the imbalance problem, standardized, and normalized to be fed then to the CNNs. Transfer learning was applied to fine-tune the pre-trained models using MATLAB 2023a software package. The performance of models were evaluated based on the overall accuracy, per-class accuracy, training time, execution time, and average inference time per image. Results showed that DarkNet-50 achieved the highest accuracy (99.33%), while MobileNet-V2 and ShuffleNet provided the best balance between accuracy and efficiency, hence they are well-suited for real-time or embedded applications.

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Author Biographies

  • Mustafa Mat Deris, Universiti Muhammadiyah Malaysia

    Faculty: Faculty of Business, Management and Information Technology (FBIT)
    Programme: PhD in Information Technology

    Universiti Muhammadiyah Malaysia

  • Simon Oakley , UK Centre for Ecology & Hydrology

    Senior Science Project Manager

    United kingdom Centre for Ecology & Hydrology (UKCEH) 

  • Didik Suprayogo, University of Brawijaya

    Konservasi Tanah Dan Air

    Ilmu Tanah   

    Fakultas Pertanian 

    Universitas Brawijaya

     

  • Cahyo Prayogo , University of Brawijaya

    Ilmu Tanah

    Fakultas Pertanian

    Universitas Brawijaya

  • Aji Prasetya Wibawa, State University of Malang

    Faculty of Engineering, State University of Malang, Malang, Indonesia

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Published

28-12-2025

Issue

Section

Articles

How to Cite

Nurwarsito, H., Deris, M. M. ., Oakley , S. ., Suprayogo, D. ., Prayogo , C. ., & Wibawa, A. P. (2025). DLinear Model for Microclimate Prediction of Coffee-Pine Agroforestry. Journal of Soft Computing and Data Mining, 6(3), 118-134. https://penerbit.uthm.edu.my/ojs/index.php/jscdm/article/view/22757