Air travel safety has come a long way. And technology is partly to thank 
for it.
According to industry statistics, airplanes are the safest way to get 
from Point A to Point B. Driving a car is positively hazardous in 
comparison. In 1950, 17 out of every one million commercial airline 
passengers worldwide died. But since the mid-1970s, that figure has 
fluctuated around one in a million, and the U.S. average is .3 per 
million.
And technology plays a role in that safety record.
”Our aviation system is so robust with backups that a single problem 
almost never winds up hurting someone,” says Christopher Hart, the 
Federal Aviation Administration’s (FAA) systems administrator for System 
Safety.
To keep it that way, FAA investigators pore over wreckage from every 
accident to determine what went wrong and what steps to take to ensure it 
never happens again. But crashes now are so rare, and the circumstances 
so unique, that they offer little guidance.
”There is so little predictability in how the next accident will occur 
that it is hard to predict where an intervention should be to prevent 
accidents,” adds Hart.
To further improve safety, therefore, it is necessary to look at 
potential, rather than actual problems.
One way is to use simulations. Airplane manufacturers extensively use 
computer modeling to see how their equipment performs under various 
weather conditions and load factors. Another method is to look at small, 
but common, mechanical anomalies which could lead to problems down the 
road.
”We are trying to get smarter and look at events that happen relatively 
frequently, but are innocuous by themselves because of the robustness of 
the systems,” says Hart. ”But if they are part of the links in an 
accident chain, we can stop those links before they cause an accident.”
Achieving this requires overcoming two barriers.
The first is that the potentially useful data is held by thousands of 
different entities, including private and national airlines, 
manufacturers, maintenance companies, air traffic controllers, trade 
associations, labor unions and air forces. It would be useful, for 
example, to be able to aggregate the Boeing 747 maintenance records of 
all airlines that fly the plane so common problems could be identified 
and corrected, rather than each airline being limited to the information 
on the few 747’s in its own fleet. But these groups dont necessarily 
want to share detailed information about their operations, whether due to 
competitive advantage or fear of law suit.
The other barrier is that most of the data is unstructured, making it 
difficult to compare and analyze.
To address these shortcomings, the FAA facilitated the creation of the 
Global Aviation Information Network (GAIN) in 1996. GAIN is a voluntary 
international membership organization composed of public and private 
entities from more than 50 countries. It is structured around the 
philosophy that ”the collection, analysis, and sharing of safety 
information using advanced technologies in a just culture environment 
will illuminate safety concerns and permit identification and 
implementation of cost-effective mitigations.”
While getting its members to openly share information still has a long 
way to go, progress is being made in developing analytical tools 
specifically designed to analyze safety information.
”The airline industry generates two types of data — digital data from 
flight data recorders and textual data generated from reports written by 
pilots and others,” explains Hart. ”Several entities are looking at the 
digital data, so our main focus has been on the free text data where not 
as much work has been done.”
To fill this hole, GAIN’s Analytic Methods and Tools Working Group has 
sponsored the creation of several tools to analyze the text information. 
To date, each of these has been used by a single airline.
One of these tools was a proof of concept done by Southwest Airlines 
using the PolyAnalyst tool from Megaputer, Inc. of Bloomington, In. Hart 
says PolyAnalyst was selected, in part, because of its ability to analyze 
small data sets.
”One of the issues with text mining software is the volume of 
information needed to provide a valid analysis,” he says. ”Some of the 
software requires quite a large number of data inputs to develop 
relationships between words and terminology in the data set, but the 
Megaputer tool is more applicable to smaller data sets than other 
tools.”
The six-week test involved reports from Southwest’s pilots, detailing any 
abnormal occurrences during different flight phases. These reports are 
filed in an Oracle database containing 63 structured fields. It also has 
an unstructured field allowing input of up to 4,000 words of free text 
for pilots to give a narrative description of the incident.
The existing system for analyzing the material in the database was a 
time-consuming manual process which relied on the analyst’s memory and 
was prone to human error.
PolyAnalyst analyzed both the text and structured data of 2,000 database 
records, and generated graphic depictions of the types of anomalies for 
each type of aircraft in use. The user could click on any of the data 
points in the graph to drill down to the individual pilot reports to get 
all the details.
While it is helpful for an individual airline to have such safety 
information, the real benefit will come when airlines start sharing this 
information.
”Individual airlines have a certain quantity of data that they keep to 
themselves, so the Megaputer tool is only being applied to data from one 
airline,” says Hart. ”If we are successful in pooling data from other 
airlines it will be more successful.”
This is where GAIN’s other data sharing project comes into play.
Hart stresses that the FAA is not trying to get the airlines’ data. 
Instead, GAIN is working on creating a method where the raw data remains 
on the servers of each of its members, but they pool non-identifiable 
data.
”We are not only looking at what happens at the airline level, but at 
the system level — airlines, plus air traffic control systems, plus the 
maintenance network,” he says. ”The foundation for that will be what 
the individual entities are finding from programs like Southwest’s.”
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