In the aerospace domain, particularly within airport services and operations powered by SAP technologies, a frequent conflict arises between operational efficiency and passenger experience. Taking this as a scenario, trying to elaborate my take on how both these good goals create a conflict and how AI could be leveraged here.
For example, SAP-based AI systems managing gate assignments or baggage handling may face a trade-off between minimizing turnaround time (efficiency) and ensuring personalized service (experience). An AI might recommend rerouting ground staff or reallocating gates to optimize aircraft flow, but this could result in longer walking distances for passengers or reduced accessibility services.
To navigate this, AI should be designed to:
Analyse real-time operational metrics (e.g., aircraft delays, gate availability, staff capacity)
Incorporate passenger-centric data (e.g., special assistance requests, connecting flight urgency)
Simulate outcomes to forecast the impact of prioritizing one goal over another with the help of statistics and already existing datasets
The decision logic should be dynamic — for instance, during peak hours, efficiency may take precedence, while during off-peak times, passenger comfort could be prioritized.
Human oversight plays a pivotal role in setting these contextual thresholds. Airport operations managers, supported by SAP dashboards & monitoring mechanism, must define business rules and override AI decisions when exceptions arise for e.g. VIP movements, emergency landings, or regulatory constraints
Metrics AI Should Monitor
To make informed decisions, AI systems integrated with SAP (e.g., SAP S/4HANA, SAP EWM, SAP Fiori) should continuously monitor:
Operational Efficiency Metrics
Aircraft turnaround time
Gate utilization rates
Staff availability and workload
Baggage transfer time
Real-time flight schedules and delays
Passenger Experience Metrics
Walking distance to gates
Wait times at check-in, security, and boarding
Special assistance requests (e.g., elderly, disabled passengers)
Connection times for transfer passengers
Passenger satisfaction scores (from surveys, feedback apps, random on the go feedback on airport waiting areas to get the Gemba validation)
Contextual and External Factors
Weather conditions
Regulatory compliance requirements
Emergency Landings or VIP movements
Real-time disruptions (e.g., system outages, strikes)
Important Factor: How Should AI Decide Which Goal to Prioritize?
AI should not rely on static rules but instead use context-aware decision logic.
Dynamic Thresholds: AI can adjust priorities based on time of day, passenger volume, or disruption severity. For example, during peak hours, prioritize efficiency; during off-peak, enhance comfort
Weighted Scoring Models: Assign weights to each metric based on business rules. For instance, if a flight is delayed but carries many connecting passengers, AI may prioritize passenger experience over gate optimization
Predictive Analytics: Use historical data to forecast the impact of decisions. If rerouting baggage saves ~5 - 10 minutes but increases mishandling risk by ~20 – 30 %, AI can flag it for human review
Scenario Simulation: AI can simulate multiple outcomes and recommend the one with the least operational risk and highest passenger satisfaction
Important Parameter: Role of Human Oversight
Human oversight is essential to ensure AI decisions align with strategic, ethical, and regulatory considerations:
Define Guardrails: Operations managers must set business rules and thresholds that AI cannot override such as accessibility standards or regulatory mandates
Override Mechanism: SAP dashboards should allow supervisors to override AI decisions in real time, especially during emergencies or exceptions
Continuous Feedback Loop: Human feedback should be fed back into the AI model to improve future decision-making. For example, if AI’s gate assignment led to passenger complaints, that data should refine future logic
Ethical Judgment: AI may not fully grasp nuances like cultural sensitivities or reputational risks. Human judgment ensures decisions are empathetic and brand aligned
Efficiency vs Experience - AI should act as a decision support system, not a decision maker. By combining real-time SAP data, predictive intelligence, and human oversight, Airport Ops can strike the right balance between efficiency and experience — building trust with passengers while maintaining operational excellence