Numerous problems in agriculture, including unpredictable
crop yields, disease susceptibility, and the consequences of weather
variability, put nutrition and farmer livelihoods at risk. In order to increase
agricultural yields, detect diseases early, and provide valuable insights on
the Crop Yield Prediction Dataset and Plant Village Dataset, this research
provides an AI-powered solution to these issues by integrating deep learning,
sophisticated machine learning algorithms, and instantaneous data analysis. The
system employs a sophisticated methodology that forecasts temperature,
humidity, and conditions for the next five days using the PyOWM API; detects
crop diseases using data augmentation and deep learning models such as CNN
(accuracy 99.14%), DenseNet-201 (accuracy 99.04%), and Visual Geometry
Group-VGG19 (accuracy 97%); and predicts crop yield using models such as
Multi-Layer Perceptron-MLP (R2 Score: 0.8242), MLP + Regressor, and Random
Forest Regressor achieves the highest R2 Score (0.1789). An AI chatbot that
provides farmers with recommendations, disease control methods, and
personalised suggestions is part of the technology's real-time help. In order
to provide an AI-driven system for weather forecasting, disease detection,
yield prediction, and real-time assistance via a chatbot, this project
integrates models with high accuracy rates. The user-friendly Streamlit UI is
available in Telugu, Hindi, and English, and SQLite handles the secure login
and registration procedure.
Author(s) Details
Anantha Kranthi
Suravarapu
Department of CSE (Artificial Intelligence & Machine Learning),
Ramachandra College of Engineering, Eluru, Andhra Pradesh, India.
Please see the book here :- https://doi.org/10.9734/bpi/mcsru/v9/6825
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