•  14
    Forest Fire Detection using Deep Leaning
    with Mosa M. M. Megdad
    International Journal of Academic Information Systems Research (IJAISR) 8 (4): 59-65. 2024.
    Abstract: Forests are areas with a high density of trees, and they play a vital role in the health of the planet. They provide a habitat for a wide variety of plant and animal species, and they help to regulate the climate by absorbing carbon dioxide from the atmosphere. While in 2010, the world had 3.92Gha of forest cover, covering 30% of its land area, in 2019, there was a loss of forest cover of 24.2Mha according to the Global Forest Watch institute. Discovery and classification depend on …Read more
  •  11
    Using Deep Learning to Classify Corn Diseases
    with Mohanad H. Al-Qadi
    International Journal of Academic Information Systems (Ijaisr) 8 (4): 81-88. 2024.
    Abstract: A corn crop typically refers to a large-scale cultivation of corn (also known as maize) for commercial purposes such as food production, animal feed, and industrial uses. Corn is one of the most widely grown crops in the world, and it is a major staple food for many cultures. Corn crops are grown in various regions of the world with different climates, soil types, and farming practices. In the United States, for example, the Midwest is known as the "Corn Belt" due to its extensive co…Read more
  •  2
    Vegetable Classification Using Deep Learning
    with Mostafa El-Ghoul
    International Journal of Academic Information Systems Research (IJAISR) 8 (4): 105-112. 2024.
    Abstract: Vegetables are an essential component of a healthy diet and play a critical role in promoting overall health and well- being. Vegetables are rich in important vitamins and minerals, including vitamin C, folate, potassium, and iron. They also provide fiber, which helps maintain digestive health and prevent chronic diseases. We are proposing a deep learning model for the classification of vegetables. A dataset was collected from Kaggle depository for Vegetable with 15000 images for 15 …Read more
  •  1
    Pistachio Variety Classification using Convolutional Neural Networks
    with Ahmed S. Sabah
    International Journal of Academic Information Systems Research (IJAISR) 8 (4): 113-119. 2024.
    Abstract: Pistachio nuts are a valuable source of nutrition and are widely cultivated for commercial purposes. The accurate classification of different pistachio varieties is important for quality control and market analysis. In this study, we propose a new model for the classification of different pistachio varieties using Convolutional Neural Networks (CNNs). We collected a dataset of pistachio images form Kaggle depository with two varieties (Kirmizi and Siirt). The images were then prepro…Read more
  •  3
    Using Deep Learning to Detect the Quality of Lemons
    with Mohammed B. Karaja
    International Journal of Academic Information Systems Research (IJAISR) 8 (4): 97-104. 2024.
    Abstract: Lemons are an important fruit that have a wide range of uses and benefits, from culinary to health to household and beauty applications. Deep learning techniques have shown promising results in image classification tasks, including fruit quality detection. In this paper, we propose a convolutional neural network (CNN)-based approach for detecting the quality of lemons by analysing visual features such as colour and texture. The study aims to develop and train a deep learning model to…Read more
  •  3
    Tomato Leaf Diseases Classification using Deep Learning
    with Mohammed F. El-Habibi
    International Journal of Academic Information Systems Research (IJAISR) 8 (4): 73-80. 2024.
    Abstract: Tomatoes are among the most popular vegetables in the world due to their frequent use in many dishes, which fall into many varieties in common and traditional foods, and due to their rich ingredients such as vitamins and minerals, so they are frequently used on a daily basis, When we focus our attention on this vegetable, we must also focus and take into consideration the diseases that affect this vegetable, a deep learning model that classifies tomato diseases has been proposed. Th…Read more
  •  3
    Grape Leaf Species Classification Using CNN
    with Mohammed M. Almassri
    International Journal of Academic Information Systems Research (IJAISR) 8 (4): 66-72. 2024.
    Abstract: Context: grapevine leaves are an important agricultural product that is used in many Middle Eastern dishes. The species from which the grapevine leaf originates can differ in terms of both taste and price. Method: In this study, we build a deep learning model to tackle the problem of grape leaf classification. 500 images were used (100 for each species) that were then increased to 10,000 using data augmentation methods. Convolutional Neural Network (CNN) algorithms were applied to b…Read more
  •  6
    The Fast Food Image Classification using Deep Learning
    with Jehad El-Tantawi
    International Journal of Academic Information Systems Research (IJAISR) 8 (4): 37-43. 2024.
    Abstract: Fast food refers to quick, convenient, and ready-to-eat meals that are usually sold at chain restaurants or take-out establishments. Fast food is often criticized for its unhealthy ingredients, such as high levels of salt, sugar, and unhealthy fats, and its contribution to the growing obesity epidemic. Despite this, fast food remains popular due to its affordability, convenience, and widespread availability. Many fast food chains have attempted to respond to these criticisms by offerin…Read more
  •  2
    Fine-tuning MobileNetV2 for Sea Animal Classification
    with Mohammed Marouf
    International Journal of Academic Information Systems Research (IJAISR) 8 (4): 44-50. 2024.
    Abstract: Classifying sea animals is an important problem in marine biology and ecology as it enables the accurate identification and monitoring of species populations, which is crucial for understanding and protecting marine ecosystems. This paper addresses the problem of classifying 19 different sea animals using convolutional neural networks (CNNs). The proposed solution is to use a pretrained MobileNetV2 model, which is a lightweight and efficient CNN architecture, and fine-tune it on a d…Read more
  •  1
    Classification of Chicken Diseases Using Deep Learning
    with Mohammed Al Qatrawi
    Information Journal of Academic Information Systems Research (Ijaisr) 8 (4): 9-17. 2024.
    Abstract: In recent years, the outbreak of various poultry diseases has posed a significant threat to the global poultry industry. Therefore, the accurate and timely detection of chicken diseases is critical to reduce economic losses and prevent the spread of diseases. In this study, we propose a method for classifying chicken diseases using a convolutional neural network (CNN). The proposed method involves preprocessing the chicken images, building and training a CNN model, and evaluating th…Read more
  •  5
    Classification of Apple Diseases Using Deep Learning
    with Ola I. A. Lafi
    International Journal of Academic Information Systems Research (IJAISR) 8 (4): 1-9. 2024.
    Abstract: In this study, we explore the challenge of identifying and preventing diseases in apple trees, which is a popular activity but can be difficult due to the susceptibility of these trees to various diseases. To address this challenge, we propose the use of Convolutional Neural Networks, which have proven effective in automatically detecting plant diseases. To validate our approach, we use images of apple leaves, including Apple Rot Leaves, Leaf Blotch, Healthy Leaves, and Scab Leaves …Read more
  •  153
    Predictive Modeling of Obesity and Cardiovascular Disease Risk: A Random Forest Approach
    with Mohammed S. Abu Nasser
    International Journal of Academic Information Systems Research (IJAISR) 7 (12): 26-38. 2024.
    Abstract: This research employs a Random Forest classification model to predict and assess obesity and cardiovascular disease (CVD) risk based on a comprehensive dataset collected from individuals in Mexico, Peru, and Colombia. The dataset comprises 17 attributes, including information on eating habits, physical condition, gender, age, height, and weight. The study focuses on classifying individuals into different health risk categories using machine learning algorithms. Our Random Forest model …Read more
  •  437
    Implications and Applications of Artificial Intelligence in the Legal Domain
    with Besan S. Abu Nasser and Marwan M. Saleh
    International Journal of Academic Information Systems Research (IJAISR) 7 (12): 18-25. 2024.
    Abstract: As the integration of Artificial Intelligence (AI) continues to permeate various sectors, the legal domain stands on the cusp of a transformative era. This research paper delves into the multifaceted relationship between AI and the law, scrutinizing the profound implications and innovative applications that emerge at the intersection of these two realms. The study commences with an examination of the current landscape, assessing the challenges and opportunities that AI presents within …Read more
  •  126
    Leveraging Artificial Neural Networks for Cancer Prediction: A Synthetic Dataset Approach
    with Mohammed S. Abu Nasser
    International Journal of Academic Engineering Research (IJAER) 7 (11): 43-51. 2023.
    Abstract: This research explores the application of artificial neural networks (ANNs) in predicting cancer using a synthetically generated dataset designed for research purposes. The dataset comprises 10,000 pseudo-patient records, each characterized by gender, age, smoking history, fatigue, and allergy status, along with a binary indicator for the presence or absence of cancer. The 'Gender,' 'Smoking,' 'Fatigue,' and 'Allergy' attributes are binary, while 'Age' spans a range from 18 to 100 year…Read more
  •  169
    Forecasting Stock Prices using Artificial Neural Network
    with Ahmed Munther Abdel Hadi
    International Journal of Engineering and Information Systems (IJEAIS) 7 (10): 42-50. 2023.
    Abstract: Accurate stock price prediction is essential for informed investment decisions and financial planning. In this research, we introduce an innovative approach to forecast stock prices using an Artificial Neural Network (ANN). Our dataset, consisting of 5582 samples and 6 features, including historical price data and technical indicators, was sourced from Yahoo Finance. The proposed ANN model, composed of four layers (1 input, 1 hidden, 1 output), underwent rigorous training and validatio…Read more
  •  151
    Prediction Heart Attack using Artificial Neural Networks (ANN)
    with Ibrahim Younis, Mohammed S. Abu Nasser, and Mohammed A. Hasaballah
    International Journal of Engineering and Information Systems (IJEAIS) 7 (10): 36-41. 2023.
    Abstract Heart Attack is the Cardiovascular Disease (CVD) which causes the most deaths among CVDs. We collected a dataset from Kaggle website. In this paper, we propose an ANN model for the predicting whether a patient has a heart attack or not that. The dataset set consists of 9 features with 1000 samples. We split the dataset into training, validation, and testing. After training and validating the proposed model, we tested it with testing dataset. The proposed model reached an accuracy of 9…Read more
  •  99
    Classification of plant Species Using Neural Network
    with Muhammad Ashraf Al-Azbaki, Mohammed S. Abu Nasser, and Mohammed A. Hasaballah
    International Journal of Engineering and Information Systems (IJEAIS) 7 (10): 28-35. 2023.
    Abstract: In this study, we explore the possibility of classifying the plant species. We collected the plant species from Kaggle website. This dataset encompasses 544 samples, encompassing 136 distinct plant species. Recent advancements in machine learning, particularly Artificial Neural Networks (ANNs), offer promise in enhancing plant Species classification accuracy and efficiency. This research explores plant Species classification, harnessing neural networks' power. Utilizing a rich dataset…Read more
  •  126
    Unlocking Literary Insights: Predicting Book Ratings with Neural Networks
    with Mahmoud Harara
    International Journal of Engineering and Information Systems (IJEAIS) 7 (10): 22-27. 2023.
    Abstract: This research delves into the utilization of Artificial Neural Networks (ANNs) as a powerful tool for predicting the overall ratings of books by leveraging a diverse set of attributes. To achieve this, we employ a comprehensive dataset sourced from Goodreads, enabling us to thoroughly examine the intricate connections between the different attributes of books and the ratings they receive from readers. In our investigation, we meticulously scrutinize how attributes such as genre, author…Read more
  •  273
    Spotify Status Dataset
    with Mohammad Ayman Mattar
    International Journal of Engineering and Information Systems (IJEAIS) 7 (10): 14-21. 2023.
    Abstract: The Spotify Status Dataset is a valuable resource that provides real-time insights into the operational status and performance of Spotify, a popular music streaming platform. This dataset contains a wide array of information related to server uptime, user activity, service disruptions, and more, serving as a critical tool for both Spotify's internal monitoring and the broader data analysis community. As digital services like Spotify continue to play a central role in music consumption,…Read more
  •  134
    Streamlined Book Rating Prediction with Neural Networks
    with Lana Aarra, Mohammed S. Abu Nasser, and Mohammed A. Hasaballah
    International Journal of Engineering and Information Systems (IJEAIS) 7 (10): 7-13. 2023.
    Abstract: Online book review platforms generate vast user data, making accurate rating prediction crucial for personalized recommendations. This research explores neural networks as simple models for predicting book ratings without complex algorithms. Our novel approach uses neural networks to predict ratings solely from user-book interactions, eliminating manual feature engineering. The model processes data, learns patterns, and predicts ratings. We discuss data preprocessing, neural network de…Read more
  •  1096
    Predictive Analysis of Lottery Outcomes Using Deep Learning and Time Series Analysis
    with Asil Mustafa Alghoul
    International Journal of Engineering and Information Systems (IJEAIS) 7 (10): 1-6. 2023.
    Abstract: Lotteries have long been a source of fascination and intrigue, offering the tantalizing prospect of unexpected fortunes. In this research paper, we delve into the world of lottery predictions, employing cutting-edge AI techniques to unlock the secrets of lottery outcomes. Our dataset, obtained from Kaggle, comprises historical lottery draws, and our goal is to develop predictive models that can anticipate future winning numbers. This study explores the use of deep learning and time ser…Read more
  •  119
    Predicting COVID-19 Using JNN
    with Mohammad S. Mattar
    International Journal of Academic Engineering Research (IJAER) 7 (10): 52-61. 2023.
    Abstract: In, this research embodies the spirit of interdisciplinary collaboration, bringing together data science, healthcare, and public health to address one of the most significant global health challenges in recent history. The achievements of this study underscore the potential of advanced machine learning techniques to enhance our understanding of the pandemic and guide effective decision-making. As we navigate the ongoing battle against COVID-19 and prepare for future health emergencies…Read more
  •  186
    Neural Network-Based Audit Risk Prediction: A Comprehensive Study
    with Saif al-Din Yusuf Al-Hayik
    International Journal of Academic Engineering Research (IJAER) 7 (10): 43-51. 2023.
    Abstract: This research focuses on utilizing Artificial Neural Networks (ANNs) to predict Audit Risk accurately, a critical aspect of ensuring financial system integrity and preventing fraud. Our dataset, gathered from Kaggle, comprises 18 diverse features, including financial and historical parameters, offering a comprehensive view of audit-related factors. These features encompass 'Sector_score,' 'PARA_A,' 'SCORE_A,' 'PARA_B,' 'SCORE_B,' 'TOTAL,' 'numbers,' 'marks,' 'Money_Value,' 'District,' …Read more
  •  175
    Rice Classification using ANN
    with Abdulrahman Muin Saad
    International Journal of Academic Engineering Research (IJAER) 7 (10): 32-42. 2023.
    Abstract: Rice, as a paramount staple crop worldwide, sustains billions of lives. Precise classification of rice types holds immense agricultural, nutritional, and economic significance. Recent advancements in machine learning, particularly Artificial Neural Networks (ANNs), offer promise in enhancing rice type classification accuracy and efficiency. This research explores rice type classification, harnessing neural networks' power. Utilizing a rich dataset from Kaggle, containing 18,188 entries…Read more
  •  132
    Forecasting COVID-19 cases Using ANN
    with Ibrahim Sufyan Al-Baghdadi
    International Journal of Academic Engineering Research (IJAER) 7 (10): 22-31. 2023.
    Abstract: The COVID-19 pandemic has posed unprecedented challenges to global healthcare systems, necessitating accurate and timely forecasting of cases for effective mitigation strategies. In this research paper, we present a novel approach to predict COVID-19 cases using Artificial Neural Networks (ANNs), harnessing the power of machine learning for epidemiological forecasting. Our ANNs-based forecasting model has demonstrated remarkable efficacy, achieving an impressive accuracy rate of 97.87%…Read more
  •  255
    Chances of Survival in the Titanic using ANN
    with Udai Hamed Saeed Al-Hayik
    International Journal of Academic Engineering Research (IJAER) 7 (10): 17-21. 2023.
    Abstract: The sinking of the RMS Titanic in 1912 remains a poignant historical event that continues to captivate our collective imagination. In this research paper, we delve into the realm of data-driven analysis by applying Artificial Neural Networks (ANNs) to predict the chances of survival for passengers aboard the Titanic. Our study leverages a comprehensive dataset encompassing passenger information, demographics, and cabin class, providing a unique opportunity to explore the complex interp…Read more
  •  88
    Google Stock Price Prediction Using Just Neural Network
    with Mohammed Mkhaimar AbuSada and Ahmed Mohammed Ulian
    International Journal of Academic Engineering Research (IJAER) 7 (10): 10-16. 2023.
    Abstract: The aim behind analyzing Google Stock Prices dataset is to get a fair idea about the relationships between the multiple attributes a day might have, such as: the opening price for each day, the volume of trading for each day. With over a hundred thousand days of trading data, there are some patterns that can help in predicting the future prices. We proposed an Artificial Neural Network (ANN) model for predicting the closing prices for future days. The prediction is based on these featu…Read more
  •  913
    Smoke Detectors Using ANN
    with Marwan R. M. Al-Rayes
    International Journal of Academic Engineering Research (IJAER) 7 (10): 1-9. 2023.
    Abstract: Smoke detectors are critical devices for early fire detection and life-saving interventions. This research paper explores the application of Artificial Neural Networks (ANNs) in smoke detection systems. The study aims to develop a robust and accurate smoke detection model using ANNs. Surprisingly, the results indicate a 100% accuracy rate, suggesting promising potential for ANNs in enhancing smoke detection technology. However, this paper acknowledges the need for a comprehensive evalu…Read more
  •  75
    Predicting Carbon Dioxide Emissions in the Oil and Gas Industry
    with Yousef Mohammed Meqdad
    International Journal of Academic Information Systems Research (IJAISR) 7 (10): 34-40. 2023.
    Abstract: This study has effectively tackled the critical challenge of accurate calorie prediction in dishes by employing a robust neural network-based model. With an outstanding accuracy rate of 99.32% and a remarkably low average error of 0.009, our model has showcased its proficiency in delivering precise calorie estimations. This achievement equips individuals, healthcare practitioners, and the food industry with a powerful tool to promote healthier dietary choices and elevate awareness of …Read more
  •  407
    Predicting Fire Alarms in Smoke Detection using Neural Networks
    with Maher Wissam Attia, Baraa Akram Abu Zaher, Nidal Hassan Nasser, Ruba Raed Al-Hour, and Aya Haider Asfour
    International Journal of Academic Information Systems Research (IJAISR) 7 (10): 26-33. 2023.
    Abstract: This research paper presents the development and evaluation of a neural network-based model for predicting fire alarms in smoke detection systems. Using a dataset from Kaggle containing 15 features and 3487 samples, we trained and validated a neural network with a three-layer architecture. The model achieved an accuracy of 100% and an average error of 0.0000003. Additionally, we identified the most influential features in predicting fire alarms.