Skip to content
Free shipping on orders over 50€ to Austria, France, Germany, Italy, and Spain!
Free shipping on orders over 50€ to Austria, France, Germany, Italy, and Spain!

    Your cart is empty

    Time to spark some excitement 🛒⚡

Taxes and shipping calculated at checkout
Subtotal €0,00

TS80P (more) Soldering Iron (EU)

SKU TPX00109 Barcode 6970634010888 Show more
Original price €0
Original price €96,63 - Original price €96,63
Original price
Current price €96,63
€96,63 - €96,63
Current price €96,63
VAT included

S80P is a smart soldering iron powered by USB Type-C® PD2.0/QC3.0 standard input, which can be powered by charging plugs, power banks and mobile power supplies that comply with PD2.0 (12V 3A)/QC3.0 (9V 2A) standard.

Overview

TS80P controller is made of aluminum alloy through CNC into a compact structure and high-tech design, ergonomic, beautiful and fashionable.

S80P is a smart soldering iron powered by USB Type-C® PD2.0/QC3.0 standard input,, which can be powered by charging plugs, power banks and mobile power supplies that comply with PD2.0 (12V 3A)/QC3.0 (9V 2A) standard.

Its output power has been increased from 18W to 30W max, with an 8-second heating time at fastest from room temperature to 300℃, meeting a wider range of soldering.

It features a brand new easy-push tip fastener, which provides a best holding experience and an easy push to loosen the soldering tip for quick replacement.
With a built-in smart chip, TS80P can smartly control the rise and fall of tip temperature.
Adopt safety circuit design, anti-static structure, usage safe.
Have sleep mode and automatic over-heating warning.

Through edit the parameter file, custom your own temperature curve and buttons function.
Open source for writing your own App.


Tech specs

  • Screen: OLED Screen
  • Power Interface: USB Type-C Port 
  • Certification: Compliant with EU Certification CE FCC
  • Control Part: Length 96mm
  • Net weight: 38g (Control Part)
  • Data Transfer Interface: USB Type-C Port

Get Inspired

PROJECT HUB
Tiny ML in interactive spaces Arduino X K-WAY Challenge Project
Tiny ML in interactive spaces Arduino X K-WAY Challenge Project
Project Tutorial by fullmakeralchemist

An intelligent device to track moves with responses during an interactive space with mapping, backlight, music and smart sculptures. This project makes use of a machine learning algorithm capable of tracking and detecting moves to identify associated gesture recognition through a microcontroller. Smart sculptures, lighting, music and video projection to trigger with each assigned gesture, creating a powerful AV experience highlighting the incredible potential of TinyML for the performing arts. This allows the corresponding media set Tiny ML in interactive to play when the right move was made because all these elements interact to create a new experience. This allows us to create Interactive installations, these sculptures use a combination of motors, sensors, and other electronics to create an immersive and interactive experience for the viewer. They may include projections, sound, and other sensory elements to create a complete experience.

read more
BLOG
These projects from CMU incorporate the Arduino Nano 33 BLE Sense in clever ways
These projects from CMU incorporate the Arduino Nano 33 BLE Sense in clever ways
May 22, 2023

With an array of onboard sensors, Bluetooth® Low Energy connectivity, and the ability to perform edge AI tasks thanks to its nRF52840 SoC, the Arduino Nano 33 BLE Sense is a great choice for a wide variety of embedded applications. Further demonstrating this point, a group of students from the Introduction to Embedded Deep Learning course at Carnegie Mellon University have published the culmination of their studies through 10 excellent projects that each use the Tiny Machine Learning Kit and Edge Impulse ML platform. Wrist-based human activity recognition Traditional human activity tracking has relied on the use of smartwatches and phones to recognize certain exercises based on IMU data. However, few have achieved both continuous and low-power operation, which is why Omkar Savkur, Nicholas Toldalagi, and Kevin Xie explored training an embedded model on combined accelerometer and microphone data to distinguish between handwashing, brushing one’s teeth, and idling. Their project continuously runs inferencing on incoming data and then displays the action on both a screen and via two LEDs. Categorizing trash with sound In some circumstances, such as smart cities or home recycling, knowing what types of materials are being thrown away can provide a valuable datapoint for waste management systems. Students Jacky Wang and Gordonson Yan created their project, called SBTrashCat, to recognize trash types by the sounds they make when being thrown into a bin. Currently, the model can three different kinds, along with background noise and human voices to eliminate false positives. Distributed edge machine learning The abundance of Internet of Things (IoT) devices has meant an explosion of computational power and the amount of data needing to be processed before it can become useful. Because a single low-cost edge device does not possess enough power on its own for some tasks, Jong-Ik Park, Chad Taylor, and Anudeep Bolimera have designed a system where

read more

FAQs

  • Problem 1: OLED displays "Sen-err".
    Check 1: Is the soldering iron installed properly?
    Check 2: If check 1 passes, then replace the soldering iron tip.
     
  • Problem 2: Soldering iron restart automatically:
    Check 1: Is it properly plugged into the power source?(Power adaptor selection please find the User Manual)
    Check 2: Is the voltage too low? (Need to be set up in the config file)
    Check 3: Replace the soldering iron tip
     
  • Problem 3: No Display:
    Check 1: If the cable is broken?
    Check 2: Is there any data in USB mode?
    Check 3: If the screen needs to be replaced?
     
  • Problem 4: The temperature status display random numbers:
    Check 1: Means the machine is checking status, which is normal.
    Check 2: Is the soldering iron installed properly?
    Check 3: Is the power cable in loose or defective contact?
     
  • Problem 5: The tip doesn’t stick to the solder(TS80P)
    1. Tip temperature is over 400℃.
    2. The soldering side of the tip is not applied with solder properly.
    3. Lack of flux during operation.
    4. Rub the tip against dry or high sulfur sponge or fabric.
    5. Tip touched organic material like plastic, silicone oil or other chemicals. 6. Using impure solder or solder that contains low proportion of tin.
     
  • Problem 6: TS80P can be heated normally when it is powered by a power bank, but shuts down after maintaining a constant temperature.”
    Check: Set the “LowCur” menu option to “ON”.

Inspired by your shopping trends

  • Arduino Plug and Make Kit

    Plug and Make Kit is the easiest way to get started with Arduino. It includes everything you need for your very first seven projects – as well as many more that our community shares and you can inv...

  • Arduino Soldering Kit 220V

    This kit contains all the tools and safety gear needed to set your very own soldering station and it is the perfect way to start or expand your fab lab. The temperature of the soldering iron inclu...

  • Digital control soldering station

    Soldering station with digital temperature control between 160°C and 480°C and indication through display.

  • 30 watt stylus soldering iron

    Particularly suitable for making soldering in various applications. Power supply 230 Vac.

Compare products

0 of 3 items selected

Select first item to compare

Select second item to compare

Select third item to compare

Compare