Low-Cost Architecture for an Advanced Smart Shower System Using Internet
of Things Platform
- URL: http://arxiv.org/abs/2311.07712v1
- Date: Mon, 13 Nov 2023 19:55:01 GMT
- Title: Low-Cost Architecture for an Advanced Smart Shower System Using Internet
of Things Platform
- Authors: Shadeeb Hossain, Ahmed Abdelgawad
- Abstract summary: Three different scenarios are discussed that can allow reliably predicting any accidental fall in the shower vicinity.
Motion sensors, sound sensors and gesture sensors can be used to compliment prediction of possible injuries in the shower.
The proposed proof-of-concept prototype is cost effective and can be incorporated into an existing system for the added precedence of safety and convenience.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Wastage of water is a critical issue amongst the various global crises. This
paper proposes an architecture model for a low-cost, energy efficient SMART
Shower system that is ideal for efficient water management and be able to
predict reliably any accidental fall in the shower space. The sensors in this
prototype can document the surrounding temperature and humidity in real time
and thereby circulate the ideal temperature of water for its patron, rather
than its reliance on predictive values . Three different scenarios are
discussed that can allow reliably predicting any accidental fall in the shower
vicinity. Motion sensors, sound sensors and gesture sensors can be used to
compliment prediction of possible injuries in the shower. The integration with
the Internet of Things (IoT) platform will allow caretakers to monitor the
activities in the shower space especially in the case of elderly individuals as
there have been reported cases of casualties in the slippery shower space. The
proposed proof-of-concept prototype is cost effective and can be incorporated
into an existing system for the added precedence of safety and convenience. The
intelligent system is conserving water by optimizing its flow temperature and
the IoT platform allows real time monitoring for safety.
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