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      <ref-type name="Journal Article">17</ref-type>
      <contributors>
        <authors>
          <author>Ahmad Ali AlZubi</author>
        </authors>
      </contributors>
      <titles>
        <title>CNN-BASED DETECTION OF POWDERY MILDEW AND RUST IN APPLE ORCHARDS FOR OPTIMIZING CROP MANAGEMENT</title>
        <secondary-title>Journal of Animal and Plant Sciences</secondary-title>
        <alt-title>JAPS</alt-title>
      </titles>
      <dates><year>2025</year><pub-dates><date>2025/04/28</date></pub-dates></dates>
      <volume>35</volume>
      <number>2</number>
      <pages>381-389</pages>
      <isbn>1018-7081</isbn>
      <electronic-resource-num>https://doi.org/10.36899/JAPS.2025.2.0032</electronic-resource-num>
      <abstract>&lt;p&gt;&lt;span lang=&quot;EN-IN&quot;&gt;In many parts of India, apple trees are among the most popular crops. Large amounts of apples are exported annually, which has a major positive impact on the country&apos;s economy. However, a number of diseases in apple trees are common.&lt;/span&gt;&lt;span lang=&quot;EN-IN&quot;&gt;They indicate a significant risk to apple production and lead to&amp;nbsp;significant financial losses for producers. These diseases mostly affect the leaves of apple plants. In a country where a significant portion of the workforce is employed in agriculture, prompt identification and management of such diseases are essential. It used to take a lot of time and effort to diagnose diseases in apple plants via laboratory testing. Machine Learning (ML) methods offer a fast and accurate detection of diseased leaves in the apple orchard.&lt;/span&gt;&lt;span lang=&quot;EN-IN&quot;&gt;&amp;nbsp;This study aimed to develop a robust Convolutional Neural Network (CNN) model for identifying apple leaf diseases. A dataset comprising 1,532 images categorized into Healthy, Powdery mildew, and Rust classes was used. The CNN model consisted of six convolutional layers, six max-pooling layers, a flatten layer, and fully connected layers. Images were pre-processed (resized to 256x256 pixels, normalized, and augmented) to improve computational efficiency. The model was evaluated using metrics such as accuracy, precision, recall, F1-score, and a confusion matrix. The model achieved a training accuracy of 98.02%, validation accuracy of 85.17%, and overall accuracy of 91.34%. Precision and recall for individual classes ranged from 86.05% to 96.55%. F1-scores showed balanced performance across categories, with a weighted average of 92.54%. These results demonstrate the model&apos;s effectiveness in classifying leaf conditions and its potential to enhance disease management in apple orchards and similar crops.&lt;/span&gt;&lt;/p&gt;&lt;p&gt;Method: This research aimed to create a model for identifying diseases in apple orchards. The model used damaged leaves exhibiting characteristics and symptoms of two groups of diseases: Powdery mildew and Rust. A new class, called the Healthy Leaf class, was included for comparison. This work constructed a CNN model that had 6 convolutional layers,&amp;nbsp;6 max-pooling layers, flatten and fully connected layers. The model&apos;s performance was evaluated using measures such as accuracy, precision, F1-score, and confusion matrix.&lt;/p&gt;&lt;p&gt;Results:After 25 epochs, the CNN model architecture shows 98.02% training and 85.17% validation accuracy for apple leaf disease identification. An overall accuracy of 91.34% demonstrates the effectiveness of the model. This work is useful for leaf disease management in apples or other trees.&lt;/p&gt;</abstract>
      <keywords><keyword>Machine Learning, Apple Orchard, Crop Management, Convolutional Neural Network, Evaluation Metrics</keyword></keywords>
      <publisher>Pakistan Agricultural Scientists Forum</publisher>
      <urls><related-urls><url>https://thejaps.org.pk/AbstractView.aspx?mid=2024-JAPS-2099</url></related-urls></urls>
    </record>
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