IOT BASED METROPOLITAN GARDENING SYSTEM
Keywords:
IoT, Soil Moisture Sensor, Monitoring Of Crops, Meteorological ParametersAbstract
This paper introduces IoT-Based Metropolitan Gardening System specifically designed to thrive within the constraints of urban space crunch. This system introduces an Internet of Things (IoT)-based Metropolitan Gardening System designed to optimize and enhance urban Gardening practices for enthusiasts. This system integrates Internet of Things (IoT) technology with efficient gardening practices to maximize the utilization of limited space while ensuring optimal growing conditions for plants. The proposed system leverages the integration of advanced sensor technologies, data analytics, and automation to create a smart and efficient gardening environment in densely populated urban settings. Key components of the IoT-based Metropolitan Farming System include a network of sensors for monitoring crucial environmental factors such as soil moisture, temperature, humidity, and sunlight. These sensors continuously collect real-time data, which is then processed and analyzed by a central control unit. The control unit utilizes machine learning algorithms to derive actionable insights, enabling precise control over irrigation, nutrient supply, and other essential parameters. Thus, by doing this we are trying to optimize the areas for gardening in metropolitan cities.
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Copyright (c) 2024 Prajakta Vanjare, Arzoo Mhatre, Anushka Mhatre , Sandhra Santhosh , Shreedevi Kulkarni (Author)

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