- Version
- Download 12
- File Size 348.25 KB
- File Count 1
- Create Date 09/06/2025
- Last Updated 09/06/2025
Botanicare – Agricultural Portfolio for Medicinal Plants
Dr. C. Nandini
Vice -Principal &Head Of Department Of CSE
Dayananda Sagar Academy of Technology and Management
laasyanandini@gmail.com
Bharathraj
Dayananda Sagar Academy of Technology and Management
bharath3870@gmail.com
Dr. Nagaraj M. Lutimath
Associate Professor
Dayananda Sagar Academy of Technology and Management
nagarajlutimath@gmail.com
Himanshu Kumar Singh
Dayananda Sagar Academy of Technology and Management
himanshuks062@gmail.com
G Harikiran Rao
Dayananda Sagar Academy of Technology and Management
harikiranrao717@gmail.com
Abhishek Raj
Dayananda Sagar Academy of Technology and Management
abhishekrajranchi2004@gmail.com
Abstract
The agriculture sector is undergoing a transformative evolution driven by the integration of cutting-edge technologies such as Artificial Intelligence (AI), Machine Learning (ML), and Computer Vision (CV). These advancements are not only addressing long-standing challenges but also unlocking new possibilities for enhancing productivity, sustainability, and decision-making in agricultural practices. In this context, BotaniCare emerges as a comprehensive AI-based intelligent agricultural assistant, designed to support both farmers and agricultural researchers through a suite of innovative features and services.
BotaniCare delivers end-to-end solutions encompassing crop cultivation guidance, early disease detection and prevention, interactive chatbot assistance, and analysis of the medicinal value of plants. By employing Computer Vision, the system is capable of real-time monitoring and assessment of plant health, identifying symptoms of disease, nutrient deficiencies, and pest infestations through image-based diagnostics. This empowers users to take timely and informed actions, minimizing crop loss and reducing dependency on manual inspections.
At the core of BotaniCare is a robust Machine Learning framework that leverages vast datasets comprising geographical information, climate conditions, and soil profiles to recognize patterns and generate tailored recommendations. These predictive insights assist in optimizing planting schedules, irrigation plans, fertilizer usage, and crop selection strategies, ultimately improving yield and resource efficiency.
Furthermore, BotaniCare integrates Generative AI technologies to provide personalized and context-aware conversational support. The embedded intelligent chatbot serves as a 24/7 virtual advisor, offering dynamic assistance in local languages and dialects, answering queries, delivering updates on weather or market trends, and guiding users through complex agricultural practices with ease.
The architecture of the system combines cloud-based services, edge computing, and mobile accessibility to ensure scalability, low-latency interactions, and real-time decision support in both connected and remote environments. This paper explores the design and implementation methodology of BotaniCare, detailing the technical stack, data pipelines, training strategies, and deployment mechanisms involved in building the system.
Keywords: AI in Agriculture, Crop Recommendation System, Plant Disease Detection, Computer Vision, Generative AI, Medicinal Plants, Smart Farming.