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Parkinson's Tremor Quantifier Kit with Arduino Nano + MPU6050
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Parkinson's Tremor Quantifier Kit

SKU: CDN-KIT-0726-CL-SLD Brand: Compoden Category: Electronics > Wearables & Health > Project Kits
Rs. 2,800.00
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Map Parkinson's Tremors into Clinical Data - Wearable Quantifier Kit with Arduino Nano + MPU6050

Every part needed, pre-tested for compatibility, with an AI build companion trained on this exact project. Shipped from Bengaluru in 3-5 days.

Difficulty: Advanced Build Time: 6-8 hrs Age: 18-21 Skill: FFT-based Tremor Classification

You're not just soldering a sensor - you're creating a clinical-grade wearable that quantifies Parkinsonian tremor in real time. With the MPU6050 sampling acceleration at 200 Hz, an FFT algorithm classifies rest, postural, and kinetic tremors, then stamps each severity score to an SD card with an RTC. By the end, you have a wrist-worn device ready for patient studies, hackathon demos, or your final-year biomedical project.

What You'll Build

A wearable bracelet that captures three-axis acceleration data, runs an embedded FFT to identify dominant tremor frequency bands (3-6 Hz rest tremor, 4-12 Hz postural/kinetic), and displays a real-time severity score on the OLED. Every reading is logged to a microSD as a CSV file with date, time, and tremor type, making post-session analysis straightforward.

What You'll Learn

  • Configure MPU6050 for high-speed (200 Hz) raw accelerometer sampling without FIFO overflow
  • Implement a 256-point FFT on an Arduino Nano and extract peak frequency bins for tremor classification
  • Sync DS3231 RTC timestamps to each log entry for longitudinal patient monitoring
  • Power a wearable system with a LiPo battery, charging circuit, and low-dropout regulation for safe extended use

Kit Contents

Component Quantity
Arduino Nano x1
MPU6050 x1
DS3231 RTC x1
MicroSD Module x1
0.96in OLED x1
4.7k? Resistors x5
100nF Caps x10
3.7V LiPo 500mAh x1
TP4056 Module x1
PCB Prototype Board x2
Velcro Wristband x1
Soldering Iron x1
Solder Wire x1

Why Buy This Kit Instead of Sourcing Parts Separately

Factor Sourcing Separately Compoden Kit
Compatibility checks You verify every part Pre-tested as a system
Build support Forums and scattered tutorials AI companion trained on this exact project
Time to first working build Days of debugging Hours, with step-by-step guidance
Shipping coordination Multiple sellers, multiple delays One shipment from Bengaluru in 3-5 days

Who This Kit Is For

Designed for final-year B.Tech students in ECE, EEE, or Biomedical Engineering who need a capstone project with real signal processing. It's also ready for Smart India Hackathon health-tech tracks, IIT/NIT/VIT/BITS engineering labs, and research interns working on movement disorder quantification. If you've already built basic Arduino projects and are comfortable with C, this kit pushes you into wearable DSP with a clear clinical application.

Built and Backed by Compoden

Every Compoden kit ships with an AI build companion trained on this exact project - accessible via a QR code on the box, with WhatsApp and email backup. We've spent 10 years building projects for makers, schools, and institutions across India. If a part fails because of a manufacturing defect, replace it free within 7 days.

What if I get stuck during the build?

Open the AI companion via QR code or drop a WhatsApp message with a photo of your setup. Our assistant is trained on this kit's exact code, wiring, and common pitfalls.

Do I need prior DSP experience to complete this kit?

The project includes a pre-optimized FFT library and line-by-line code walkthrough. You only need basic C and Arduino familiarity; the signal processing concepts are explained as you build.

Can this device detect essential tremor or drug-induced tremors?

Yes. The FFT-based classifier is frequency-agnostic - you can adjust the frequency bands in the firmware to match essential tremor (4-12 Hz) or cerebellar tremor patterns.

How do I analyse the logged tremor data after a session?

The microSD stores CSV files with timestamp, tremor type, and severity score. Simply remove the card and open the file in Excel or MATLAB/Python for trend analysis.

MPU6050 at 200Hz samples tremor acceleration. FFT classifies tremor type and logs severity score with RTC timestamps.

What's in this kit

Choose your assembly option:

  • Soldering Kit - 25W soldering iron, 60/40 solder wire, flux, and small perfboard for permanent assembly.
  • Breadboard Combo - 800-point full-size breadboard with 65-piece jumper wire pack for solderless prototyping.

Shipping Information

  • Prepaid Orders: ₹75 for orders up to ₹999, FREE shipping above ₹999
  • COD Orders: ₹125 shipping + ₹50 COD fee = ₹175 total
  • Delivery Timeline: Dispatch in 1-2 days, delivery in 2-7 days depending on location

Returns & Warranty

  • 7-Day Return: Manufacturing defects only (approval required)
  • Warranty: 7 days from delivery
  • Non-Returnable: Batteries, consumables, cut wires, clearance items

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