Air Traffic Control 

ensures that aviation is safe.

can make air traffic operations more
efficient and sustainable,

especially in high-density traffic conditions.

Meet the actors:

The Aircrew:

Plan your flight – Fly your plan

The “plan”, aka Aircraft Intent, describes the planned route, altitude profile and sequence of airspeeds used.

The “preferred” Aircraft Intent assumes that the flight is not affected by external disturbances.

The Air Traffic Controllers:

The Decision-Making process of Controllers is based essentially on the prediction of the medium-term future.

This is facilitated by information ……..

    • provided before the flight,
    • sensed by ground-based installations,
    • transponded from aircraft,
    • computed from collated data,
    • communicated by aircrew and other Controllers.

If the predicted future seems unsatisfactory, then remedial action is undertaken by requesting the Aircrew to update the Aircraft Intent through Clearances.

The Decision Support Tools:

Decision Support Tools (DST) provide the Controllers with better support for making their decisions.

They require access to similar information as the Air Traffic Controllers.

Setting the scene

Setting the scene ….

The Air Traffic Control system is a complex, human-centered system comprising a wide variety of people and machines with many different competencies and capabilities.

The safe operation of aircraft is managed by the Aircrews.

The Ground System is best equipped for managing the traffic flows optimizing Safety, Efficiency and Sustainability.

The European Organization for the Safety of Air Navigation, EUROCONTROL, has been at the forefront  of R&D activities to improve Safety, Efficiency and Sustainability in Air Traffic Management.

 R&D into Decision Support Tools at EUROCONTROL HQ from the end of the 1960s. 

The tools evolved from straightforward “Conflict Alert” tools to the TMA 2010+ toolset based on the “Best Next Clearance” concept using Augmented Intelligence strategies.

 

Conflict Alert (CA)
Conflict Detection & Resolution (CDR)
Time-Based Flow Management (TBFM)
Best Next Clearances (BNC)

Conflict Alert
(CA)

The Conflict Alert (CA) function alerts Controllers for potential conflict situations within the target time horizon, e.g., covering the extent of their control sector.

A potential conflict is detected if the predicted separation between two flights is below a safe minimum. 

Strategy

For each aircraft in the control zone a trajectory is predicted based on the published Aircraft Intent, predicted meteorological conditions and aircraft performance.

Caveat

Uncertainties in the actual Aircraft Intent applied, meteorological conditions and aircraft performance result in uncertainties in the predicted aircraft positions. This results in numbers of Missed and False Alerts presented to the Controllers that increase with the look-ahead time and traffic density

The increased controller workload makes Medium term conflict detection only effective in low to medium complexity enroute sectors.

Note: Decision support tools in operation today barely extend beyond safety net features providing last-minute alerts for evasive actions.

The way forward

Develop a Trajectory Based Strategy that reduces the number of potential conflicts by adapting the Aircraft Intent at entry into the control zone. This reduces the controller workload by reducing the False Alert rate.

Learn more on Conflict Detection challenges

Conflict Detection & Resolution
(CDR)

When the Conflict Alert module is complemented with a Conflict Resolution module, it will be possible to create conflict-free paths for the aircraft through the control zone. This reduces the controller workload significantly.

Strategy

At entry in the control zone, the Conflict Resolution module will compute for each aircraft an updated Aircraft Intent by adding additional altitude and radar vector clearances so that the potential conflict situations will be resolved.

Caveat

The uncertainty in the predicted aircraft positions increases with the look-ahead time. This forces the Conflict resolution module to apply separation criteria that are much greater than the minimum required radar separations.

The increased controller workload makes Medium term conflict detection only effective in low to medium complexity enroute sectors.

Increasing traffic complexity significantly reduces sector capacity and flight efficiency.
Consequently, the project was shelved after the International Conference on Automatic Conflict Detection and Resolution in Luxembourg, 1976

The way forward

Potential conflicts occur at points where traffic converges. Develop a Trajectory Based Strategy that ensures that predicted trajectories will achieve minimum radar separation at the convergence point. This reduces potential conflict situations and optimizes control sector capacity.

Learn more on Conflict Resolution challenges

Time-Based Flow Management
(TBFM)

The Controllers strategy: Trajectory Prediction – Conflict Detection – Conflict Resolution is perfect for ensuring safety, but less efficient for smoothing traffic streams optimizing efficiency and sustainability. The conclusions from the 1976 Luxembourg seminar hinted on a requirement for a strategy change.

Paradigm change

The Conflict Detection & Resolution strategy starts from a Controller’s perspective:
Predict the future evolution from the “now” situation. Then take remedial action if required.

The limited accuracy of predicted trajectories limits the achievable time horizon in the control sector. In contrast, the TBO approach requires trajectory management over an extended part of the flight, aka multiple control sectors. This requires a paradigm shift.

Strategy

The focus of the traffic management strategy is changed from Conflict Detection to Conflict Resolution. First identify the convergence points of the traffic streams, then build a safe flow through scheduling and sequencing the individual aircraft whilst applying the minimum safety separations.

This defines for each aircraft the 4D-target conditions and thus the Required-Times-of-Arrival (RTAs)  at the convergence points.

If the target conditions are different from the ones of the predicted trajectories based on the current Aircraft Intent, then the latter needs to be adapted. Depending on the control strategy and/or aircraft equipment the required control actions can either be performed through clearances by the Controllers or delegated to airborne automation.

Approaches implemented include Arrival Management tools (AMAN) that inform the Controllers about “Time-to-Loose or -Gain” or through negotiating the Required-Time-of-Arrival with the Flight Management System (FMS) in the aircraft.

Caveat

The TBFM strategy facilitates TBO through a negotiation process with all client actors. During the flight, multiple perturbations, e.g., meteorological conditions, availability of resources, Controller clearances, limitations in the operational flight envelop of aircraft, etc., may impact the feasibility of the RTA plan resulting in a stability and workload challenge.

The way forward

These caveats became apparent during a man-in-the-loop experiment in 1982. The validity of basis of the concept, i.e., the practicality of sequencing and sequencing at convergence points could be validated. The control strategy needs to be adapted to mitigate the impact of required variations of the RTAs when adapting the flows to the evolving real-life conditions.

Learn more on Conflict Resolution challenges

Best Next Clearances
(BNC)

===> to be edited <===

The methodology proposed in this paper consists of an iterative approach that couples optimization and simulation to find solutions that are resilient to perturbations due to the uncertainty present in different phases of the arrival and departure process. 

What is the difference between AI and automated decision making?
 
 
As noted, AI systems perform tasks that normally require human intelligence, such as natural language processing, image recognition, and decision making. On the other hand, automated systems are designed to perform repetitive or routine tasks that do not require human intelligence
What is the difference between AI and automated decision making?
 
 
As noted, AI systems perform tasks that normally require human intelligence, such as natural language processing, image recognition, and decision making. On the other hand, automated systems are designed to perform repetitive or routine tasks that do not require human intelligence
  1. The human factor: ATC relies heavily on human controllers to make decisions and manage traffic. Human errors can occur, and it is important to have systems in place to detect and mitigate these errors. Furthermore, ATC controllers are facing high workloads and stress, which can lead to fatigue, making them more prone to errors.
  2.  

Learn more on Conflict Resolution challenges

Lessons learned

1976: The international seminar on conflict detection and resolution concluded that facilitating medium-term conflict-free flight paths was detrimental to sector capacity.

EUROCONTROL-CAA project

1982:  TBO concept implemented through trajectory synchronisation is not practical due to the impact of real-life perturbations
1980: Trajectory Based Operations have great potential for improving safety, efficiency and sustainability.

EEC simulation

1989: TBO  concept implemented through air-ground synchronization of Aircraft Intent proved to be efficient .

Mode S experiment

2001: ARETA project proved that TBO through synchronization of aircraft Intent is compatible with existing Flight Data Processing Systems

integration at Belgocontrol

2003:FAA/EUROCONTROL COOPERATIVE R&D – Common Trajectory Prediction Capability

need

collaboration

DASC

2009: EUROCONTROL demonstrated the compatibility of air-ground synchronization of trajectories in low-medium density traffic and Aircraft Intent in high-density traffic conditions.

Global 09 demonstration

Lessons ignored

PHARE

Garteur

Concept

PD3

emperor sesar

PHARE
EATCHIP/EATMP
SESAR-JU

datalink: focussed on air-ground trajectory synchronization
ASA focussed on TBO through trajectory synchronization (AMAN)
mention COMPAS, Maestro, CTAS

Validation programs became expensive so EU funding was required

EATMP progress unsatisfactory

Unsolicited proposal

Objectives
Based on PHARE results

Results in closing down EUROCONTROL R&D activities

Where are we now?

Heathrow story

1980 traffic

first managed through flight path extension. entry rate was appr 24 ac/hr.  Around  9:20 the entry rate increased to 36 ac/hr. The controllers switched to managed the flow through the holdings.