To detect at-risk locations, a wide range of supervised and unsupervised learning algorithms are applied
Artificial intelligence and machine learning have matured to the point where they can make accurate predictions as well as perform identification and classification tasks. These AI applications can also be used to avert disasters or respond fast in an emergency. Here are 5 ways artificial intelligence can assist in emergencies:
Disaster assistance management
In the event of a disaster, the first step is to assemble a critical reaction team to assist individuals in need. Before the team gets into the action, it is critical to study and assess the degree of the damage and to ensure that the appropriate aid is delivered first to those in most need. AI tools like image recognition and classification, which can analyze and view photos from satellites, can be highly useful in analyzing the damage. From these photographs, AI can recognize things and features like damaged buildings, water, and obstructed highways. They can also locate transient settlements, which may suggest that people are homeless, and so direct first aid to them.
AI and ML systems can also combine and analyze data from many sources, like crowd-sourced mapping data or Google maps. To build heat maps, machine learning algorithms aggregate all of this data, remove untrustworthy data, and find informative sources. These heat maps help pinpoint locations that require immediate assistance and guide relief efforts there. Heat maps can also assist governments and other humanitarian organizations in determining where to perform aerial inspections.
Next-generation 911
During a crisis, the initial point of contact is 911. On a typical day, 911 dispatch centers are already overburdened with calls. The number is tripled, if not more, in the event of a disaster or crisis. This asks for traditional 911 emergency centers to be supplemented with contemporary technologies for improved administration. Traditional 911 centers rely solely on voice-based calls. To receive more sorts of data, next-generation dispatch providers are improving their emergency dispatch systems with machine learning. So, they can now consume data from not only conversations but also text, audio, video, and photos and evaluate it to make speedy decisions.
Social media sentiment analysis
In today’s world, social media platforms are a major source of news. During a tragedy, social media users provide some of the most actionable information. AI can evaluate and validate real-time photographs and comments from Instagram, Facebook, Twitter, and YouTube to separate true from fraudulent material. This information can also assist rescue crews in minimizing the time required to locate victims. Furthermore, artificial intelligence (AI) and predictive analytics tools can evaluate digital information from Twitter, Facebook, and YouTube to provide warning, ground-level geolocation data, and real-time report verification.
AI answers distress and help-calls
In the case of a disaster, emergency relief services are inundated with concern and help calls. It is also possible that vital information will be lost or overlooked. AI systems and voice assistants can analyze large volumes of calls, assess the type of incident that occurred, and confirm the location. They can not only naturally engage with callers and process messages, but they can also instantly record and translate languages. AI systems can assess voice tone for urgency, filtering out redundant or less important calls and prioritizing them based on the severity of the issue.
Predictive analytics for proactive disaster management
Machine learning and other data science techniques are not confined to supporting on-the-ground relief teams or simply after the event has occurred. Predictive analytics, for example, can examine historical events to discover and extract trends and populations prone to natural disasters. To detect at-risk locations and enhance forecasts of future events, a wide range of supervised and unsupervised learning algorithms are applied. Clustering techniques, for example, can categorize disaster data based on severity. They can distinguish between meteorological patterns that may create local storms and cloud conditions that may lead to a broad cyclone.
Source: analyticsinsight.net