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Weather data

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Weather data

Weather data provides information about the weather and climate of a region. It tracks patterns and predicts trends.

Weather refers to short-term atmospheric conditions of a region and can include indicators such as minimum /maximum temperature, humidity, or wind speed. Climate is the weather of a region averaged over a long period of time. Climate data covers details such as seasonal average temperatures or decade-long patterns of rains and contributes to climate prediction.

Weather data is tremendously important to agriculture and infrastructure planning. Various industries use weather data for real-world business cases, such as travel planning, demand forecast, and supply chain management. The easy availability of weather data for practically any region makes it possible to incorporate it in diverse analytical cases.

Where does the data come from?

Several governmental, semi-governmental, and private organizations (such as weather stations, the NOAA – national oceanic and atmospheric administration, the NWS – national weather service, and the world meteorological organization) collect weather data and make weather observations from various locations using different methods. They consider geography, topography, and elevation of the region to make the data more accurate. Some of the methods used for gathering weather data are:

The data gets updated constantly based on the information collected through satellites, airport observation stations, drone sensors, mapping devices, and other sources. The use of sophisticated technology and weather models can deliver more accurate and highly granular details.

Past weather data is usually available to download in bulk. For real-time data on current conditions and weather forecasts,  weather forecast APIs, feeds, and streams are used.

What types of attributes should I expect?

Common attributes of this type of data include daily weather summary and the following data points:

Additional attributes are delivered around specific requirements and upcoming events. For example, farmers need temperature and humidity information, while marine vessels need to track ocean currents. In another example, for any expected hurricanes, weather data provides regular updates on their location, movement, direction, and speed.

What are the different types of weather data?

Weather data is a broad data category. It can be divided into subcategories based on temporal and geographical coverage. Some customers need historical data, while some need real-time data. Some may focus on a smaller region or a city, while others may want the data for a state or across the globe. For climate change tracking, accurate analysis needs to take into account state, country, region, and global data.

How should I test the quality of the data?

The easiest way to test the quality of the data is by checking historical data to see if conclusions match predictions. On a more granular level, data coming from sensors need to be tested and thoroughly vetted.

The key factors for sensor data are type, location, and the number of sensors. Some types of sensors are more reliable and produce more accurate data. For example, images captured from planes are not as detailed as images captured by satellites, particularly near an urban area or a body of water. More sensors will deliver more accurate data by aggregating measurements from all of them. More sensors also provide an opportunity to compare results and identify faulty sensors.

The accuracy of sensor data depends on how the sensors are maintained and how often they get recalibrated.

To test the quality of the data:

Who uses the data?

Government and semi-governmental agencies use this type of data for strategic infrastructure planning.

The next biggest industries that use this data extensively are agriculture and food processing.  The energy sector and land management services also use it to track plant and animal populations. Traffic management is a key use of weather data to alert travelers and manage diversion. Emergency services use it to assess the nature of potential natural disasters and plan their response. It can also help disease specialists to forecast, track, and plan to eliminate disease outbreaks in a region.

The use of this type of data is widespread. Almost all small, medium, and large companies from diverse industries use weather analytics to drive their strategies and planning. These companies include manufacturers, marketers, advertising agencies, hospitality companies, entertainment businesses, transport and logistics groups, shipping companies, financial service providers, and healthcare companies.

Different business teams in sales, marketing, and manufacturing use the data in data-driven decision-making processes

What are the common challenges when buying the data?

The most significant challenge when buying weather data is ensuring data accuracy. Data from different sensors produce varying levels of accuracy, and assessing source credibility is essential. The data can be historical or real-time, some attributes get updated more often than others, and it is challenging in ascertaining their recency.

What are similar data types?

Weather data is similar to air quality index, climate data, and marine data, commonly used for weather forecasting. Other environmental data categories such as energy data, natural disaster data, and sustainability data are often used in conjunction with weather data and climate data.

You can find a variety of examples of time-based data in the Explorium Data Gallery.

Sign up for Explorium’s 14-day free trial to access the data available on the platform.

What are the most common use cases of weather data?

The most common use cases are weather forecasting, precision farming, agriculture waste management, traffic management, and fleet management.

Which industries commonly use this type of data?

Practically all governmental, semi-governmental, and private industries use this data. They include agriculture, food processing, energy, emergency services, healthcare, manufacturing, retail, CPG, travel, transport, logistics, hospitality, leisure, entertainment, financial institutes, insurance providers, banks, and hi-tech companies.

How can you judge the quality of your vendors?

The quality of vendors is critical in ensuring the success of your projects. Customer reviews, case studies, and demos are a good measure of vendor quality. Personal interaction with the vendor rep can help you resolve queries about their datasets matching your requirements.

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