Download PDF
Predicting Passenger Flows at Dubai International Airport: An IoT Case Study
Technology Category
- Sensors - Flow Meters
- Sensors - Liquid Detection Sensors
Applicable Industries
- Aerospace
- Equipment & Machinery
Applicable Functions
- Procurement
Use Cases
- Real-Time Location System (RTLS)
- Virtual Prototyping & Product Testing
The Challenge
Dubai International Airport, known for its high volume of transfer traffic, faced a significant challenge in managing passenger flows. The airport experienced peaks in passenger volumes throughout the day, with immigration halls and transfer security checkpoints fluctuating between being completely empty and overcrowded within short periods. While the airport could plan for expected passenger load profiles, changes to flight arrival times could significantly impact the actual passenger load profile. The Airport Operations Control Center (AOCC) had access to real-time queue information from sensors and cameras, but there was a need for advanced passenger load predictions and resource requirements. This would enable operational teams to collaborate with other stakeholders and proactively open more security or immigration lanes, in anticipation of passenger arrivals. The challenge was to predict passenger load profiles and manage resources effectively to prevent overcrowding and long queues.
About The Customer
The customer in this case study is Dubai International Airport, one of the busiest airports in the world in terms of international passenger traffic. The airport is known for its high volume of transfer traffic, with peaks in passenger volumes occurring throughout the day. The airport's operational departments, in collaboration with the Strategy & Development and IT departments, are responsible for managing passenger flows and ensuring smooth operations. The airport's Airport Operations Control Center (AOCC) uses sensors and cameras to monitor real-time queue information. However, the airport faced a challenge in predicting passenger load profiles and managing resources effectively to prevent overcrowding and long queues.
The Solution
The airport developed a prototype of a passenger flow prediction tool using Alteryx and Tableau. The tool used a real-time feed from the airport's flight database, enriched with supporting reference tables, to provide the latest information on expected flight arrival times and aircraft parking locations. Two detailed workflows per terminal, PAX Demand and Counter Supply, were created using Alteryx Designer. These workflows combined flight-level data with other reference inputs, cleansed the combined data, processed it into required passenger demand aggregations, optimized the counter requirement, and wrote the output into a database for visualization in Tableau. The workflows were scheduled to run every five minutes to keep the data as near real-time as possible. The output data was used to create visualizations and dashboards in Tableau Desktop, which were then hosted on Tableau Server and shared across the organization and wider airport community. The deployment strategy was to keep the workflows simple and streamlined for easy tweaks and improvements.
Operational Impact
Related Case Studies.
Case Study
Smart Water Filtration Systems
Before working with Ayla Networks, Ozner was already using cloud connectivity to identify and solve water-filtration system malfunctions as well as to monitor filter cartridges for replacements.But, in June 2015, Ozner executives talked with Ayla about how the company might further improve its water systems with IoT technology. They liked what they heard from Ayla, but the executives needed to be sure that Ayla’s Agile IoT Platform provided the security and reliability Ozner required.
Case Study
IoT enabled Fleet Management with MindSphere
In view of growing competition, Gämmerler had a strong need to remain competitive via process optimization, reliability and gentle handling of printed products, even at highest press speeds. In addition, a digitalization initiative also included developing a key differentiation via data-driven services offers.
Case Study
Predictive Maintenance for Industrial Chillers
For global leaders in the industrial chiller manufacturing, reliability of the entire production process is of the utmost importance. Chillers are refrigeration systems that produce ice water to provide cooling for a process or industrial application. One of those leaders sought a way to respond to asset performance issues, even before they occur. The intelligence to guarantee maximum reliability of cooling devices is embedded (pre-alarming). A pre-alarming phase means that the cooling device still works, but symptoms may appear, telling manufacturers that a failure is likely to occur in the near future. Chillers who are not internet connected at that moment, provide little insight in this pre-alarming phase.
Case Study
Premium Appliance Producer Innovates with Internet of Everything
Sub-Zero faced the largest product launch in the company’s history:It wanted to launch 60 new products as scheduled while simultaneously opening a new “greenfield” production facility, yet still adhering to stringent quality requirements and manage issues from new supply-chain partners. A the same time, it wanted to increase staff productivity time and collaboration while reducing travel and costs.
Case Study
Integration of PLC with IoT for Bosch Rexroth
The application arises from the need to monitor and anticipate the problems of one or more machines managed by a PLC. These problems, often resulting from the accumulation over time of small discrepancies, require, when they occur, ex post technical operations maintenance.
Case Study
Airbus Soars with Wearable Technology
Building an Airbus aircraft involves complex manufacturing processes consisting of thousands of moving parts. Speed and accuracy are critical to business and competitive advantage. Improvements in both would have high impact on Airbus’ bottom line. Airbus wanted to help operators reduce the complexity of assembling cabin seats and decrease the time required to complete this task.