Natural language processing (NLP) is another valuable AI method for hindsight analysis. NLP is used to analyze and understand human language. This includes, for example, sentiment analysis and classification methods. By using NLP, airports and airlines can process and sort textual information, such as feedback and complaints from customers, and provide more proactive and personalized responses. This can help identify hidden pain points in operational processes, for which otherwise no data or only unstructured textual data exists. What’s more, analyzing safety reports using NLP methods enables the historic and real-time tracking of safety events at airports. This allows for quick intervention in case of common or crucial safety findings. In general, NLP can help make new data sources usable and provide a more holistic picture.
Better decisions with AI-based real-time analysis
Another way that AI can improve the aviation industry is by providing real-time analysis, which is the simultaneous examination of current events and outcomes. This can help airports and airlines to monitor and manage their operations in real time, and to react quickly and effectively to changing situations and demands. AI-based real-time analysis and decision-support systems are useful for improving overall punctuality, especially with respect to standardized rerouting and replanning decisions. By using advanced optimization methods, airports and airlines can adjust their schedules and plans in real time, helping them to cope with unforeseen events, such as delays, cancellations, or disruptions.
Unexpected inbound flight delays are a good example of where this would be needed. Firstly, passengers with connecting flights need to be rerouted. Planners needing to make complex decisions quickly should be supported by algorithms that take all relevant factors into account. There are advanced optimization methods that can handle multiple tasks – such as minimizing passenger delays while keeping the cost of rerouting low – all while respecting complex constraints, such as time frame and availability. Similarly, decisions such as choosing a new parking position for deboarding and reboarding passengers at the gate or apron, after an initial position is lost, can also be addressed with optimization methods. In critical situations, these AI-powered tools would require approval from the planner, or would need to produce a selection of possible solutions. In this regard, AI can give the person in charge transparency over the consequences of their actions, helping them to make more informed decisions even in complex situations. Being able to respond dynamically in real time to issues or delays via automated systems will give airlines and airports a cutting edge in improving stability, and therefore punctuality.
Telling the future with AI foresight analysis
A third way that AI can improve the aviation industry is by providing foresight analysis, which is the prospective examination or prediction of future events and outcomes. This can help airports and airlines to anticipate and prepare for the future, and to leverage the opportunities and challenges that may arise.
Foresight analysis is especially useful in the airline industry for aircraft maintenance activities. Every minute an aircraft is on the ground results in lost revenue, so it is crucial to minimize maintenance time. With many constraints, such as obligatory repetitive tasks, the available time between flights, man-hours and material availability, this is a challenging task even for routine maintenance. It becomes even harder when un-scheduled incidents such as defects in the cabin area or paint jobs on the airframe arise, which cannot be completed during the planned shift. This calls for planned buffer time for non-routine maintenance via advanced prediction models. Such models allow for dynamic buffer calculations for maintenance events, and they can be integrated into automated planning tools to ensure the continuous operability and punctuality of aircrafts.
In fact, AI-powered digital twins are at the forefront when it comes to making strategic use of foresight analytics as an AI method. Preparing for the future means developing contingency plans for potential future scenarios. This could include modelling scenarios for disruptive events, such as extreme weather, unexpected labor shortages, or resource blockages, and determining optimal countermeasures via an optimization- or simulation-backed digital twin. Similarly, strategic decisions or investments today should be based on simulation and sensitivity analyses of important questions such as: what happens if we increase or reduce the minimum connecting time? What is the impact on punctuality if we add staff to baggage handling? How must I adapt my maintenance plan to ensure airworthiness while dealing with a low availability of man-hours? Data-driven simulations can model these effects and help derive important strategic decisions and increase operational resilience.
Strategic use of AI for seamless air travel
AI is a major lever for airlines and airports to increasing punctuality and should be used to deliver insights that aid decision-making processes: from strategic decisions based on hindsight analysis (e.g., identifying and combating outbound delay causes) and real-time decisions (e.g., rerouting passengers) to foresight operational decisions (e.g., optimal maintenance planning).