Robotics Kits

Image Part Number Description / PDF Quantity Rfq
EKB-UCOS3-EVM

EKB-UCOS3-EVM

Texas Instruments

KIT EVALBOT FOR LM3S9B92

0

110090039

110090039

Seeed

MBOT-BLUE(2.4G VERSION)

0

ROB-13166

ROB-13166

SparkFun

REDBOT BASIC KIT

0

110990440

110990440

Seeed

CRAZYFLIE 2.0

0

MIME 003

MIME 003

Pimoroni

MEARM PI

0

110060010

110060010

Seeed

SHIELD BOT

0

KIT-14123

KIT-14123

SparkFun

TJBOT WATSON MAKER KIT

0

80080

80080

Parallax, Inc.

ELEV-8 CRASH PACK

0

5624

5624

Kitronik

:MOVE MINI BUGGY KIT (EXCL MICRO

0

114090001

114090001

Seeed

MBOT EXPANSION PACK SIX LEGGED

0

240-042

240-042

Digilent, Inc.

KIT SERVO ROBOT

0

FIT0046

FIT0046

DFRobot

DF15MG TILT/PAN KIT

0

R700

R700

Global Specialties

VECTOR ROBOTIC ARM

0

110990124

110990124

Seeed

MAKEBLOCK STARTER ROBOT

0

ARX-PARTS

ARX-PARTS

Global Specialties

SPARE PARTS

0

110090038

110090038

Seeed

MBOT-BLUE(BLUETOOTH VERSION)

0

FSLBOT

FSLBOT

NXP Semiconductors

KIT TOWER MECH BOARD

0

725-28915

725-28915

Parallax, Inc.

DUAL PING & IR STAND

0

89003

89003

Makeblock

MINI PAN-TILT KIT

0

110990107

110990107

Seeed

MULTI CHASSIS TANK

0

Robotics Kits

1. Overview

Maker/DIY educational robotics kits are modular platforms designed to teach robotics, programming, and engineering concepts through hands-on assembly and experimentation. These kits combine hardware components (sensors, actuators, microcontrollers) with software tools (IDEs, libraries) to enable learners to build functional robots. Their importance lies in fostering STEM (Science, Technology, Engineering, Mathematics) skills, computational thinking, and problem-solving abilities in educational and hobbyist environments.

2. Main Types and Functional Classification

Type Functional Features Application Examples
Entry-Level Kits Pre-assembled modules, visual programming (Scratch/Blockly), basic sensors K-12 classrooms, coding camps
Programming-Focused Kits Support for Python/C++, advanced AI/ML libraries, ROS integration University labs, robotics competitions
Mechanical Arm Kits 6-DOF articulated joints, precision control, CAD design tools Industrial automation training, mechatronics courses
Autonomous Navigation Kits LIDAR, SLAM algorithms, computer vision modules Self-driving car prototypes, drone development

3. Structure and Components

Typical robotics kits consist of:

  • Mechanical Structure: Aluminum/plastic frames, gears, wheels, and linkage systems
  • Electronic Components: Microcontrollers (Arduino/Raspberry Pi), motor drivers, power management modules
  • Sensors: Ultrasonic, IR, IMU (Inertial Measurement Units), vision cameras
  • Actuators: Servos, DC motors with encoders, stepper motors
  • Software: Cross-platform IDEs, simulation tools (Gazebo), firmware libraries

4. Key Technical Specifications

Parameter Importance
Processor Architecture Determines computational capability (e.g., ARM Cortex-M7 for real-time processing)
Sensor Compatibility Dictates environmental interaction capabilities
Programming Language Support Affects learning curve and project complexity (Python vs. C++)
Expansion Interfaces GPIO, I2C, UART for adding custom peripherals
Battery Life Critical for mobile/autonomous applications

5. Application Areas

Primary application sectors include:

  • Education: Classroom robotics labs, competition platforms (FIRST Robotics)
  • Research: Prototyping for academic studies in AI/robotics
  • Industrial Training: Automation system simulations
  • Healthcare: Assistive robot prototypes for therapy applications
  • Entertainment: Interactive installations and hobbyist projects

6. Leading Manufacturers and Products

Manufacturer Representative Product Key Features
LEGO Education Spike Prime Modular brick-based system with Scratch programming
Makeblock Ultimate 2.0 ROS-supported mechanical arm with Python API
Arduino Arduino Robot Kit C++ programming environment with sensor integration
UBTech Walker Humanoid robot with AI vision and motion algorithms
DJI RoboMaster EP SDK-enabled drone with computer vision capabilities

7. Selection Recommendations

Key consideration factors:

  • User skill level (beginner vs. advanced)
  • Educational objectives (coding vs. mechanical engineering focus)
  • Budget constraints ($50-$500 range typical)
  • Expansion potential (modular vs. fixed architecture)
  • Software ecosystem maturity (community support, documentation quality)

8. Industry Trends Analysis

Emerging trends include:

  • Integration with AI/ML frameworks (TensorFlow Lite, OpenCV)
  • Cloud-connected robotics via IoT platforms
  • Standardization of educational curricula (NGSS, Common Core)
  • Increased use of simulation environments (Webots, ROS Gazebo)
  • Growing emphasis on collaborative robots (cobots) for classroom safety
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