Connect with us

Hi, what are you looking for?

Economy

UnaBiz Singapore Launches Hybrid Floor Wetness Solution with Edge-Computing to Prevent Falls in Washrooms

UnaBiz, Massive Internet of Things service provider and integrator, proudly announces the launch of its innovative Hybrid Floor Wetness Sensor with Machine Learning capabilities.

This advanced solution is designed to help prevent falls in washrooms due to wet floors by triggering timely cleaning interventions.

The hybrid sensor solution transmits data through either the Sigfox 0G network or LoRaWAN, making it highly adoptable by all existing customers and beyond. Users just need to choose a preferred communication network during deployment.

Manual monitoring is impossible as water is transparent and hard to spot, especially on large floor areas. Using thermal sensors, this solution detects temperature differences to monitor wet floors 24/7.

The sensor reports four critical events to prompt cleaning and maintenance actions.:

Floor is normal, Floor is wet Floor is cleaned Someone fell down

This cutting-edge solution utilises edge computing and AI to analyse washroom floors in real time, enabling facilities managers to take immediate action. Developed in-house by UnaBiz Singapore, the product leverages collected washroom data to train a predictive model. The sensor uses thermal imaging to gather floor temperature data, analyzes it locally, and only sends the final information to the cloud. This ensures anonymous monitoring with no privacy issues. Additionally, this accident prevention solution can reduce insurance liability.

Real-time monitoring and alerts significantly enhance safety and efficiency in facilities management. The potential for expansion into other use cases through additional machine learning applications makes this sensor a versatile tool for other use cases in various sectors.

Calvin Foo, Director of Ecosystem of UnaBiz Singapore, commented on the launch, “Our Hybrid Floor Wetness Sensor is a game-changer in facilities management. By combining thermal imaging, AI, and edge computing, we are delivering a solution that addresses the immediate needs of our customers – facility management companies that manage shopping malls, offices or public spaces. This significantly reduces the risk of slippage and severe accidents, particularly for the elderly in Singapore, due to the ageing demographic.”

Remi Lorrain, VP of Convergence at UnaBiz added, “Following the successful implementations of Sigfox and LoRa at both the device firmware (dual stack) and middleware (UnaConnect device management) levels, UnaBiz continues to break down barriers to LPWAN Convergence by offering comprehensive hybrid solutions that leverage the strengths of both the Sigfox and LoRa ecosystems.”

The Hybrid Floor Wetness Sensor will be launched at CleanEnviro Summit Singapore 2024, a biennial event organized by Singapore’s National Environment Agency. The summit brings together thought leaders, industry captains, and policymakers to discuss solutions for enabling a sustainable and clean environment.

The post UnaBiz Singapore Launches Hybrid Floor Wetness Solution with Edge-Computing to Prevent Falls in Washrooms appeared first on IoT Business News.

You May Also Like

Stock

In this video from StockCharts TV, Julius examines the theoretical sector rotation model and aligns it with current state of sector rotation on Relative...

Latest News

Independent presidential candidate Robert F. Kennedy, Jr. has revealed what he says is his path to the White House as he faces increased pressure...

Stock

In this edition of StockCharts TV‘s The Final Bar, Dave uncovers strength in SQSP using the Stochastics Oscillator and the StochRSI indicator. He shares...

Economy

Chair Jerome Powell leads the Federal Open Market Committee (FOMC) press conference. 2022. Inflation is once again on the decline, new data from the...



Disclaimer: Paybackinvestigators.com, its managers, its employees, and assigns (collectively “The Company”) do not make any guarantee or warranty about what is advertised above. Information provided by this website is for research purposes only and should not be considered as personalized financial advice. The Company is not affiliated with, nor does it receive compensation from, any specific security. The Company is not registered or licensed by any governing body in any jurisdiction to give investing advice or provide investment recommendation. Any investments recommended here should be taken into consideration only after consulting with your investment advisor and after reviewing the prospectus or financial statements of the company.


Copyright © 2023 Paybackinvestigators.com