Table of Contents
INTELLIGENT GREENHOUSE
Fertilizer Management
Computer Imaging
Disease Detection
Predictive Analysis
Robots and Autonomous Machines
Conclusion
Home Technology peripherals AI Internet of Things Applications in Smart Agriculture

Internet of Things Applications in Smart Agriculture

Jan 25, 2024 pm 02:30 PM
Internet of things AI

Internet of Things Applications in Smart Agriculture

The population is growing exponentially, and agriculture needs to solve the problem of feeding the population. It’s clear that we must rely on technology to make agriculture more efficient and more sustainable.

We have seen that many technologies are changing different fields. Machine learning, artificial intelligence and the Internet of Things are making waves in different fields and improving efficiency.

The IoT applications we see include areas such as disaster management, e-commerce, music, tourism, manufacturing and construction. We will explore the capabilities of IoT in agriculture and its agricultural applications.

INTELLIGENT GREENHOUSE

Greenhouse agriculture hopes to increase yields by adjusting environmental parameters, which can use a balance control system or manual intervention. However, manual intervention increases labor costs, energy losses, and output losses. Therefore, smart greenhouses are considered a better option.

The Internet of Things can be used to build smart greenhouses that can monitor and regulate the climate on their own without any human intervention.

Smart greenhouses use sensors to evaluate environmental parameters and improve crop adaptability. Remote access eliminates the need for regular monitoring.

IoT sensors in greenhouses collect essential data such as temperature, pressure, humidity and light levels to manage operations such as ventilation, lighting, temperature and cooling.

Fertilizer Management

The Internet of Things is an important tool in smart agriculture and can provide farmers with timely soil quality information. With the help of this technology, farmers can accurately determine the type and amount of fertilizer required on their farm, thereby improving fertilizer use efficiency and the quality of crop growth.

Farmers can use sensors to monitor parameters such as soil moisture and humidity to ensure effective and efficient crop growth. Sensors can help farmers determine how much nitrogen and potassium their crops need.

This greatly benefits fertilizer management as it will reduce waste and other associated costs.

Computer Imaging

The farm uses sensor cameras for computer imaging. These cameras are distributed throughout the farm and the captured images are digitally processed. By comparing centralized data sets with photos of produce, image processing and machine learning can determine the size, color, shape and growth of crops, allowing for quality adjustments.

Computer imaging can also be used to classify and grade products based on their quality. With computer imaging, mapping irrigated areas becomes more manageable and helps decide whether to harvest during the pre-harvest season.

Disease Detection

Disease control is an important aspect of agriculture because diseases can reduce food yields, impact farm costs and threaten the world's food supply. On the other hand, excessive use of pesticides is harmful to the environment as it affects natural ecosystems and contaminates water sources.

Fortunately, advances in IoT technology are creating new ways to solve these problems. IoT and sensors can be used in the field to detect early signs of disease or insect infestation and continuously monitor crop health. These sensors can collect data on various biological and environmental factors that affect crop health and plant growth patterns.

The Internet of Things in pest control can prevent diseases and mitigate the negative impact of pests on crop yields. IoT technology also facilitates data-driven decision-making for agricultural pest control.

Farmers can evaluate the success of their pest management programs by examining data from IoT devices and make necessary adjustments to their operations. Farmers can discover crop health and choose effective pest control techniques.

Predictive Analysis

Predictive data analysis and precision agriculture go hand in hand. Farmers’ application of data analytics helps them make sense of the vast amounts of real-time data provided by IoT technology, allowing them to make critical predictions about crop harvest timing, pest risk, yields and other related issues. Since farming by its very nature is highly dependent on weather, data analytics solutions help make farming more manageable.

For example, farmers can know in advance the quality and yield of their crops, as well as their susceptibility to severe weather events such as droughts and floods. In addition, farmers can select yield characteristics to improve crop quality and maximize the amount of nutrients and water available to each crop.

When applied to agriculture, these technologies can help producers conserve irrigation water, reduce fertilizer loss from overwatering, and provide useful information regardless of weather or season.

Robots and Autonomous Machines

Robotics technology brings a bright future to agriculture. Farmers are already using tractors, automated harvesters and vehicles that do not require manual operation. Such robots help complete repetitive, labor-intensive and challenging tasks.

For example, agricultural robots such as autonomous tractors can start working at pre-specified times and routes, send progress notifications to farmers, and so on. The robots are driverless and help reduce labor costs.

In addition, robots are also used in smart agriculture for watering, planting and weeding seeds. Tasks assigned are labor intensive and challenging. Still, it can identify weeds and sow them. Through careful operation, these agricultural robots significantly reduce damage to plants and the environment.

Conclusion

There is a bright future for IoT integration in agriculture. It changed agricultural management, animal husbandry and agricultural cultivation. Additionally, farmers need help balancing dwindling farmland and depleting limited natural resources.

By harnessing the power of IoT, farmers can ensure sustainable and efficient farming operations by increasing yields, optimizing resource consumption and making data-driven decisions.

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