IoT-Enabled Smart Car Parking System through Integrated Sensors and Mobile Applications
- URL: http://arxiv.org/abs/2412.10774v1
- Date: Sat, 14 Dec 2024 09:54:48 GMT
- Title: IoT-Enabled Smart Car Parking System through Integrated Sensors and Mobile Applications
- Authors: Abdullah Al Mamun, Abdul Hasib, Abu Salyh Muhammad Mussa, Rakib Hossen, Anichur Rahman,
- Abstract summary: This paper presents a novel Internet of Things (IoT)-based smart car parking system.
Infrared (IR) sensors, DHT22 sensors, MQ-2 gas sensors, and servo motors are used in the parking space.
An OLED display shows the status of parking slots in real-time.
- Score: 0.6652619295281612
- License:
- Abstract: Due to more population congestion and car ownership, the provision of parking spaces for vehicles is becoming a crucial factor. This paper aims to present a novel Internet of Things (IoT)--based smart car parking system that can effectively manage these problems with the help of sensor technology and automation. Infrared (IR) sensors, DHT22 sensors, MQ-2 gas sensors, and servo motors are used in the parking space. An OLED display shows the status of parking slots in real-time. Communicating with a mobile application through the Message Queuing Telemetry Transport (MQTT) protocol enables the efficient exchange of data. As a result, this innovative solution optimizes parking space, increases efficiency, and makes the parking lot more comfortable. This IoT system allows real-time monitoring and automation of parked cars as well as fast response to dynamic changes in environmental conditions, setting a new standard for smart parking systems.
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