Table of Contents
Using Artificial Intelligence in Buildings to Achieve Smart and Sustainable Construction Goals
Building Maintenance
Water Management
Parking Support
Fault Detection
Occupancy Monitoring
Make Artificial Intelligence Work for You
Home Technology peripherals AI How artificial intelligence makes buildings smart

How artificial intelligence makes buildings smart

Apr 10, 2023 pm 10:51 PM
AI Intelligent Building

How artificial intelligence makes buildings smart

One of the most important components of smart buildings is artificial intelligence. Without it, a building can hardly be considered smart because without it, owners and managers will be unable to provide the safest and most comfortable environment for their tenants.

A construction platform that collects data from multiple sources first needs to obtain information from smart technologies such as building management systems. Infogrid is a good example. It should then feed this data into an adaptable, scalable cloud-based platform that standardizes and securely stores the data. However, this does not yet meet the standards of smart buildings.

True innovation happens when using a platform with built-in AI. By integrating and enhancing intelligence throughout a building or property, these technologies enable its occupants to better operate the building. This includes modeling of building and equipment performance, as well as data on building systems and external inputs such as weather or traffic.

This, in turn, enables machine learning to continuously optimize floor space to reduce energy use and waste.

For example, energy savings can be achieved by automatically reducing electricity usage in areas with less traffic, by observing sensors around the facility and making decisions based on the data in real time. This helps the building's bottom line and environment while ensuring its personnel are comfortable at all times.

The following is the impact of the use of AI on building intelligence.

Using Artificial Intelligence in Buildings to Achieve Smart and Sustainable Construction Goals

With the help of cheap, easily accessible and sophisticated IoT devices, massive amounts of data are collected from every nook and cranny of the building Useful data. If data collection is properly reviewed and processed, it has the potential to provide managers with useful business insights for decision-making.

Artificial intelligence also plays an important role in transforming raw data into usable intelligence. Without this extraordinary technology, the information obtained would be useless or meaningless. Building managers can improve asset utilization, increase tenant comfort and ensure operational efficiency to a greater extent through AI. This is exactly what you get by using an information grid.

Building Maintenance

Everyone wants their building areas to be sanitary, regularly maintained and safe. Building managers can ensure that their building remains clean and safe at all times by working with a professional cleaning company.

Every nook and cranny of a building can be captured in detail by sensors and cameras. When this data is loaded into an AI tool, it can alert building managers to areas that need to be cleaned immediately, improving the resident experience.

Water Management

We spend 90% of our time indoors. Think about the amount of water we use every day for various purposes. It is estimated that the average American family uses 300 gallons of water in their home every day. Consider how much water is used globally.

We spend 90% of our time indoors. Consider the amount of water we use every day for various purposes. According to one rough estimate, the average American household uses 300 gallons of water per day, and think about how much water is used globally.

Water resources are drying up. Therefore, it is important to consider how much water we use and take the necessary steps to reduce it. Therefore, building managers need to pay close attention to the water consumption of each home or office.

However, manually tracking water usage is extremely impossible. Artificial intelligence is very useful in this regard.

Parking Support

In today’s fast-paced world, parking is a big problem for many people. When you go somewhere new, finding a parking space can take a long time. People prefer not to interact with others unless absolutely necessary.

Artificial intelligence can be very important in these situations. Parking lots can be studied using pressure sensors on the ground and several nearby cameras. When this information is entered, the AI ​​parking tool will analyze parking space utilization and provide comprehensive information on vacant spaces.

Visitors can get details of available parking spaces with just a few taps on their smartphone. In fact, the app guides users to find a suitable parking space. This support will enhance the visitor experience while also reducing energy usage. This is the advantage of artificial intelligence and smart structures.

Fault Detection

To maintain safety, buildings must be constantly checked for problems and anomalies. In order to do this, building managers need a dedicated team of experts to oversee the maintenance of the building.

However, depending on the complexity of the building, this can turn into a hassle. Artificial intelligence has the ability to continuously process data from a variety of sources. The AI ​​tool will examine the input, look for trends, and uncover any undiscovered information about issues or technical issues.

For example, sensors and cameras installed in elevators will record data about the operation of the elevator. Artificial intelligence tools will then evaluate the data to determine whether the elevator is functioning properly or may be malfunctioning. Proactive corrective actions can then be implemented before the elevator stops functioning properly.

Occupancy Monitoring

The use of artificial intelligence helps building owners track how people are using their buildings. Therefore, as an owner you can create a safer working environment for your employees. Infogrid is one of the best platforms for occupancy monitoring systems on the market.

Make Artificial Intelligence Work for You

The most critical factor in smart building technologies is that they perform as intended. Every construction manager, operations director or health and safety leader can connect to the platform and make decisions based on real-time data, which is why AI is so powerful.

This is the result of building a scalable cloud platform that helps monitor and take action on anything from HVAC to access control to the occupancy experience to fire detection. However, AI can be used by anyone; it’s not just people who are responsible for running the building.

Many smart buildings today make their technology available to every resident, whether they work in an office, are a teacher, a CEO, or a nurse. With just a tap of a finger, visitors can reserve a meeting space or operations suite, get directions from A to B, or alert maintenance when an issue arises with a building- or campus-specific smartphone app.

By implementing the right AI technology in the right way, building management companies can transform to become more aligned with tenant organizations’ businesses, deliver the experiences tenants need and want, and support their own operational and financial health .

Additionally, making buildings smarter will help us overcome some of the most difficult obstacles, not least the stringent net-zero emissions and sustainability standards that businesses must now meet.

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