Smart Drone-Based Precision Apple Orchard Management

Smart Drone-Based Precision Apple Orchard Management

Smart Drone-Based Precision Apple Orchard Management

Low-cost, data-driven drone system for crop monitoring, yield prediction, and targeted spraying

Low-cost, data-driven drone system for crop monitoring, yield prediction, and targeted spraying

Skills

  • Product Management

  • System Design

  • Research & Insights

  • Data Analysis

Tools & Technologies

  • Microcontrollers

  • LoRa Communication

  • Python

  • Multispectral Imaging

Key metrics

  • 70–80% Cost Reduction

  • Top 50 National Rank

  • 6-Band Imaging Model

  • 3-Month Research Cycle

Excerpt

Smart Drone is a low-cost, indigenous drone solution designed for apple orchards in Himachal Pradesh. It combines DIY multispectral imaging, deep learning, and variable rate spraying to help farmers monitor plant health, predict yield, and optimize fertilization and pesticide use. The system reduces commercial drone costs by 70–80% while maintaining high functionality.

Developed as part of the Smart India Hackathon 2024, it won the PDEU university round and advanced to the next round. The project demonstrates innovation, technical rigor, and measurable agricultural impact.


Oct 26, 2025

Oct 26, 2025

Oct 26, 2025

7 min read

Drone performing multispectral imaging and precision spraying in apple orchard

Drone performing multispectral imaging and precision spraying in apple orchard

Project Overview

The Smart Drone project addresses challenges in apple orchard management in Himachal Pradesh, including low efficiency in plant health monitoring, costly drone solutions, and unoptimized fertilizer/pesticide application.

Problem Statement

  • Commercial multispectral drones cost ₹3L+, making them inaccessible to most farmers.

  • Current monitoring methods are manual, time-consuming, and prone to error.

  • Fertilization and pesticide application is generalized, causing waste and environmental impact.

Process & Execution

  • Conceptual Design: CAD modeling of drone structure, electronics architecture, and weight/power optimization.

  • Multispectral Imaging: DIY sensors covering NIR (700–1000 nm), Red (620–750 nm), Red-Edge (700–750 nm), and Green (500–600 nm).

  • Electronics & Communication: Microcontroller-based central unit with LoRa long-range modules for orchard-wide coverage.

  • Deep Learning Models: Early disease detection and yield prediction trained on spectral band data.

  • Variable Rate Spraying (VRT): Fertilizer and pesticide application linked to plant health maps, reducing resource usage.

Outcome & Impact

  • Reduced cost by ~70–80% compared to commercial solutions.

  • PDEU university-level winners; advanced to national top 50.

  • Potential for early disease detection, yield prediction, and precision spraying at scale.

  • Demonstrates feasibility of low-cost, scalable, farmer-friendly drone solutions.

Team & Roles

  • Sumer Pandey: Microprocessors & Electronics, Project Lead

  • Dhruv Rathod: Communication Systems, LoRa architecture

  • Kandarp Trivedi: Electronic subsystem integration

  • Kashish Sharma: Mechanical CAD design and structural modeling

  • Diya: Software interface and control flow

  • Jimit Chavda: Deep learning for yield prediction and disease detection

Metrics & Technical Highlights

  • Plant health bands: NIR, Red, Red-Edge, Green

  • Communication: LoRa modules with orchard-wide coverage

  • DIY sensors reduce cost 70–80%

  • Competition outcome: PDEU winners

Author

Sumer Pandey

Project Duration

June - August, 2024