IoT in Weather Monitoring Systems and Forecasting for Agriculture
Hurricane Ian caused agribusinesses in Florida and both Carolinas to?lose?$1.03 billion. The Salinas River overflow in California?resulted?in $200 million damage to strawberry farmers. And consistent rains in New Zealand’s North Island have?impacted?harvesting schedules, product quality, and delivery.
Even if a disaster like this hasn’t hit them, anyone in agribusiness knows that climate change isn’t something to be taken lightly. Yield decreases, while extensive use of resources and higher operational costs affect everyone. While there’s no silver bullet, technology-powered weather monitoring systems can help businesses minimize the impacts of weather-related risks.
This article covers how?IoT?devices, artificial intelligence, and satellite sensing can help agribusinesses survive climate change, optimize operations, and maximize yields and profits.
But first, a bit of context.
Agricultural Market: Current State and Trends
Increased food demands, a favorable trade environment, and the potential for high returns have all contributed to increased investment in agriculture and market growth. The global agriculture market had a CAGR of?9.4%?in 2022 and was valued at $13 billion at the start of 2023.
At the same time, global inflation caused food prices to rise by?8.75%?in 2022 alone. Paired with the growing impact of climate change on farming, high food prices have led to a greater demand for effective agricultural practices. The answer? Technology in agriculture, or AgTech.
From traditional agriculture to AgTech
Innovative technologies and approaches like?precision and smart agriculture?have transformed the industry by helping farmers maximize yields while using fewer resources and creating less environmental impact.
Precision agriculture?applies technology and data-driven practices to optimize crop production. GPS mapping, soil sensors, and drones for gathering and analyzing crop growing conditions help maximize yields and reduce need for resources such as seeds, water, and chemicals. With precise application, farmers can?reduce?the use of fertilizers by as much as 40%, which cuts costs and leads to more healthy and organic consumer products.
Smart farming?doesn’t focus on precise measurements, but on optimizing complex farming systems with the help of technologies. Its main aim is to increase agricultural efficiency, productivity, and profitability. Smart farming involves the adoption of drones, IoT sensors, and weather monitoring stations to help agribusinesses effectively plan and respond to weather-related risks.
The rise of both precision agriculture and smart farming has led to the growth of the?IoT-based weather station market. Technavio's research?predicts?that this market will surge by more than $29,687 thousand by 2026, growing at 7.09% annually.
So what exactly does a weather station do? Let’s start with what it measures.
What Weather Data Is Vital for Agriculture?
While all weather data has the potential to impact crops in some way, not all of it is equally critical for agriculture. For instance, barometric pressure and UV index usually have a limited impact on crop growth and production, while temperature and precipitation are more critical.
Let’s look at which weather conditions influence crop growth and production most.
Temperature
High temperatures can cause water stress in plants, reducing their ability to absorb nutrients and leading to yield loss. In contrast, low temperatures can slow growth and delay flowering and fruiting. Agricultural weather forecasting can help farmers deal with temperature fluctuations and take measures to protect their crops—for example, by erecting row covers or increasing irrigation.
Precipitation
Inconsistent rain cycles can lead to soil erosion, flooding, and drought, negatively impacting crop growth. Accurate historical information, real-time monitoring, and weather forecasting can help farmers decide when and how much to irrigate. This helps keep crops in favorable conditions and reduces water consumption.
Sunlight
Weather forecasting highlights low and high sunlight periods, so producers can either increase their watering frequency to compensate for reduced photosynthesis or decrease it to prevent water stress in crops.
Wind
Strong winds can easily damage crops and disrupt pollination. Monitoring wind forecasts can help farmers avoid potential damage by using windbreaks or high-tunnel systems for protection. Accurate wind data can also help determine the best time to apply pest controls and harvest crops to minimize the risk of damage.
Soil moisture
Predicting changes in soil moisture helps farmers decide when to increase tilling to improve soil drainage or reduce it to conserve water in the soil.
In addition, a soil moisture forecast is essential for deciding on fertilizer timing and delivery. With favorable soil conditions, fertilizers penetrate the soil more effectively, while overly moist soil causes them to be washed away, wasting money and resources.
Pest and disease forecast
High humidity and warmer temperatures encourage pests and can also lead to disease development in crops. Monitoring these indicators allows farmers to know the likelihood of pest and disease outbreaks and protect their crops appropriately.
By measuring all these conditions and understanding their impact, farmers can manage their crops better and minimize weather-related damage.
Let’s take a closer look at the technologies behind weather monitoring and data analysis.
Agricultural Weather Monitoring and Forecasting: Key Technologies
Weather monitoring and forecasting in agriculture require a combination of accurate data collection, reliable technology, and effective decision-making processes.
Accurate collection requires a robust network of weather monitoring stations, including ground-based and satellite-based sensors. Advanced technologies like AI and ML can then analyze and find patterns in the information and improve the accuracy of forecasts.
Let’s start with what goes into a weather monitoring station.
IoT sensors for weather monitoring and forecasting
An effective weather monitoring system has two main components:
IoT?has the potential to improve the efficiency, productivity, and sustainability of agriculture and lay the foundation for building agricultural weather monitoring systems.
Sensors can collect a wide range of weather data—including temperature, humidity, wind speed and direction, precipitation, and soil moisture—and transmit it wirelessly to a cloud server.
The collected data can then be used to:
领英推荐
Let’s start with IoT sensors. The market can offer a wide variety of sensors for any agricultural need. Sensors can be placed in the field or even on specific crops, allowing farmers to monitor the weather in real time. Some examples of sensor types are:
Data transmission
LoRa,?Sigfox, and?Zigbee?are the most popular technologies for systems that collect data from agricultural sensors. Each has its peculiarities in terms of data protocol, network range, and technology lifespan.
LoRaWAN is a standard for building low-power, wide-area networks (LPWANs), which provide low-cost, long-range connectivity for IoT devices. LoRaWAN is well-suited for large-scale agricultural deployments that require support for a large number of devices.
Sigfox is a proprietary LPWAN technology that is also designed to provide low-cost, long-range connectivity for simple IoT sensors. Sigfox is well-suited for large-scale agricultural deployments or for monitoring remote assets such as water pumps or soil moisture sensors.
Zigbee is a wireless networking technology that offers low-cost, energy-efficient, short-range connectivity for IoT sensors. This makes it well-suited for?small-scale?agricultural deployments, which need to support multiple devices with high reliability and security.
The choice of technology for an AgTech solution will depend on sensor types, the specific task, and the area of application.
Satellite remote sensing and monitoring for agricultural weather forecasting
Satellite remote sensing?works by using multispectral cameras and sensors fitted on satellites to detect reflected, absorbed, and transmitted electromagnetic energy which hits the crops. The correlation between these three parameters defines the spectral signature of the plants, which is unique to each crop type and identifies stressed areas.
Farmers can use satellite remote sensing to measure parameters such as reflected sunlight, air quality, and crop health. For instance, optical visible and infrared (VIR) sensing lets growers see their crops beyond visible wavelengths and find crop health, damage, and stress areas.
Agribusinesses can also use this technology to collect data about the physical, chemical, and biological properties of soil. Ongoing observation can promote better irrigation, fertilization, and crop selection.
In contrast to remote sensing,?satellite monitoring?involves continuously observing and collecting data from satellites to track changes in weather patterns and environmental conditions. Satellites can cover large areas, providing accurate and real-time information about weather conditions over specifically chosen areas. This data can serve to make short-term weather forecasts and provide long-term climate information.
Paired with data from IoT sensors, satellite images can help farmers monitor the condition of the soil in different areas, identify productivity zones, and find problem areas. Thanks to this, they can create maps for differentiated sowing and fertilization.
AI and machine learning to predict weather events
The application of AI and ML have a huge potential to help farmers boost the accuracy of weather predictions. However, they’re also?data-hungry.
Luckily, IoT sensors, satellites, and local weather stations produce terabytes of data. When sorted and labeled right, this data can help build ML models to recognize and accurately predict the impact of weather conditions on crops.
In addition to historical and seasonal patterns, these models can consider current weather conditions and long-term climate trends. All this data feeds into algorithms that result in early warnings, helping farmers stay on top of potential weather-related risks and manage their crops accordingly.
For instance, by using machine learning algorithms to analyze soil moisture data in correlation with weather forecasts, producers can make smarter decisions about the amount of water they need to apply to their crops. It helps reduce water waste and increase watering efficiency.
AI-powered tools like?HelioPas?and?Cultyvate?have already shown excellent results in helping farmers monitor water usage productivity and even automate irrigation workflows.
Now that we’ve seen which technologies go into an agricultural weather monitoring system, let’s see how they work in practice.
Techstack case
Techstack implemented an?aggregation system?for harvesting beans. The system is comprised of hardware devices, a mobile app, and a cloud platform that allows agribusiness to collect data about GPS location, farmer information, and harvest quality. Thanks to the project, our client can easily track harvesting, transportation, and quality control, and manage production data.
Advantages of Using an IoT-based Weather Monitoring System
IoT weather monitoring lets producers do more than just observe the basic weather conditions. A system of interconnected sensors can increase process agility and highlight dependencies between crop quality and conditions, which leads to more accurate predictions and planning.
Here are the main benefits IoT-based weather forecasting technology can bring to agribusinesses:
All of these factors make the idea of building an IoT-based weather forecasting solution quite promising. When implemented right, it can lead to better efficiency, higher revenue, greener farming, and better protection from extreme weather conditions.
Final Thoughts
Concerns about climate change and its effects on farming have fueled the rise of precise and smart agricultural practices. These practices are built on advanced technologies such as IoT, satellite remote sensing, artificial intelligence, and machine learning.
Using different kinds of IoT sensors as a part of the agricultural weather monitoring solution lets farmers gather and analyze information on temperature, precipitation, soil structure, and other crop-growing conditions. Feeding this data to ML algorithms helps find patterns and correlations between two or several weather factors and take proactive measures, like additional irrigation or pest control, right when they are needed.
As a result, agribusinesses can minimize the disrupting impact of weather conditions, improve farming and growth efficiency, and minimize expenses.
Still, developing a system that gives agribusiness all these advantages takes time, effort, and an experienced?software development?partner who can bring your vision to life. As experienced?IoT solution builders, Techstack can help you overcome any IoT challenges and build a scalable connected system with AI and ML capabilities.?Contact us?today to learn more about how IoT development can improve your business operations!