 
     David Crawford looks into the near-term future for Stockholm’s rail commuters.     
     
Swedish rail operator 
     
An app for passenger use based on the new service has been in live testing since October 2015 with, according to the operator, favourable results. The public launch is scheduled for early 2016.
     
Previously, the Stockholmståg control centre has analysed the causes of delays reactively as they occurred, and then take what appears at the time to be the best available course of action. Now, staff can use the Pendelprognosen database to simulate in advance the options available for responding to the delay to make better-informed decisions.
     
The system, which began operating in autumn 2015, originates from a proposal by Swedish marketing and brand strategy consultants Kärnhuset, which has been working with Stockholmståg for five years. The basis of the system is a mathematical algorithm to generate early forecasts developed by data scientist Wilhelm Landerholm.  
     
The idea, Kärnhuset founding partner Jonas Järnfeldt told ITS International, sprang from an open-ended discussion with Landerholm “to see if we could find ways of working together. The meeting led to the thought that the real-time data constantly being generated by commuter trains in service could be used to make advanced forecasts that could be updated approximately every minute.”
     
For the operator, being better prepared to manage and respond to delays offers passengers the assurance of a more reliable service. Says Stockholmståg communications director Mikael Lindskog: “We have built a prediction model, using big data, which lets us visualise the state of the entire commuter train network up to two hours into the future. The result is the continuously updated forecasting of both potential delays that will affect the performance of the system as a whole, and of the way in which these will affect the running of other services.  
 
 “Since we can now forecast disruptions much  earlier, our control centre can act in time to prevent the ripple  effects of an initial late-running train that are, in practice, the  cause of most delays. These can arise from subsequent services being  delayed in turn to accommodate, for example, changed platform arrival  availability.”
     
Landerholm  compares the operation to that of a seismograph monitoring earthquake  activity in search of significant peaks. In his system, the peaks  represent a train that is in danger of pulling into a station later than  scheduled.
     
Now, he says,  if the model predicts a 15-minute delay at a given station in 45  minutes’ time, unless remedial action is taken, the operations centre  will have enough notice to deal proactively with the problem. “It can in  practical terms prevent the delay from occurring, and then replace the  warning prediction with a fresh forecast within minutes.”
     
Available  responses include inserting an additional train into the schedule at an  appropriate point so a service will arrive at the expected time.  
     
To  create the databank the Pendelprognosen model automatically records the  movement, in real time, of each train in service as it runs through the  entire Stockholm network.
     
It  also collates data generated by the 
     
The  model can then match this with historic data, built up from the records  of actual arrival and departure time of every Stockholmståg train. It  can, for example, identify a similar or identical previous occurrence to  see how that impacted on the wider network, and use this to inform  decision-making on remedial action this time round.
     
Says  Lindskog: “Our travellers are very time sensitive, and early warnings  about delays can make a real difference to their journey planning. If a  parent who takes the train to pick up their children receives  information about a delay two hours before it happens, they can  rearrange their schedule to make it work.”
There  is also a clear financial benefit for the  agency in protecting  an  important additional revenue stream which is  based on the passenger   satisfaction ratings.
     
To    gauge how Stockholm’s commuters see their train service, over the  last   three years Kärnhuset has interviewed up to 100 people a week and    analysed their responses. Processing the results has identified the  main   drivers of satisfaction and enabled measurement of the effects on    passengers’ satisfaction levels of enhancements such as  infrastructure   upgrades, improved travel information or better train  cleaning   schedules. 
The approach   quantifies changes in passengers’ reactions by using the net promoter   score method, which measures responses to ‘how likely would you   recommend...?’-type questions asked before and after changes are made.
     
Kärnhuset   stresses the value of marketing strategies based on emotional   communication. Järnfeldt told ITS International: “Our clients hire us   because it is rational for them to want to invest in this approach.   People’s behaviour is controlled mainly by their emotions.
     
“By   exposing commuters to experiences that trigger emotional reactions, we   can observe the significance of increases in, for example, how clean  or  timely they perceive their trains as being.
     
“Our   finding is that when consumer satisfaction exceeds 70% there is a  clear  halo effect”. This is where people’s perceptions of one such  aspect of  an organisation’s performance (positive or negative) can  affect how they  rate all other aspects.
     
For  passengers, of course,  there is nothing new about real-time apps  keeping them updated about  public transport travel performance and  problems. Typically, however, by  the time that the information reaches  travellers, it is too late for  the individual to use an alternative  route to avoid being delayed.  Social media also plays a major  supporting role in communicating with  travellers.
One  refinement already in operation on  Stockholmståg’s website, and due  for later inclusion in the app, draws  on real-time data about the  weight of each train in service. Crowded  ones are heavier, travel more  slowly and take longer to load and unload  at stations, with  implications for service levels.
     
For   passengers who are in good time, if they know a subsequent train is   less busy they may prefer to wait. In the longer term the operator can   use the information when reviewing its schedules.
     
Kärnhuset   has worked with system integrator Integrationsbolaget on creating   Pendelprognosen, and with specialist back-end developer Johan Nilsson on   delivering the API for apps.
     
Says   Lindskog: “This is the next generation forecasting tool for the   commuter rail sector. It may be designed for trains in Stockholm, but it   could ultimately revolutionise traffic planning in public transport   worldwide”. Landerholm sees the system as being potentially applicable   to any rail network with timetabled services where detailed real-time   data is available.
     
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Other   initiatives developed by Kärnhuset to create positive feelings about   Stockholmståg (which Kärnhuset describes as “a very brave client”)   include making the uniforms of on-train staff match the seat upholstery.   It has also written a song for a band to perform in transit using  their  smartphones, installed brighter station furniture and bringing in   children from local schools to name individual trains.
 
     
         
        



