Canadian researchers Olivier Quirion-Blais, Martin Trépanier and André Langevin have developed an algorithm to determine the most efficient routes for snow ploughs and gritters.     
     
Snow plough routing has always been something of a ‘black art’: to direct a fleet of show plough to clear priority roads without having the same road cleared several times while others are left untreated. 
     
Increasingly, GPS is being used to track the routes the clearing vehicles have taken but until now it has not been possible to take the next step – to use GPS to individually route snow clearing vehicles. Now, however, a team of researchers at the centre for inter-university research and transport logistics (CIRRELT) and Polytechnique Montréal are developing algorithms to overcome these problems. 
     
For many years the ITS Industry and motorists alike have recognised that GPS is an excellent tool for determining the most efficient route from one location to the next. It is relatively straightforward to calculate the shortest and quickest of the available routes to get a single vehicle from one known point to another. In comparison to that, the routing problem for snow ploughing and de-icing is far more complicated.
     
 Instead of having to compute the path from a starting point to a destination for one vehicle, it is necessary to compute the paths of all available vehicles to cover the required road network. “From a mathematical point of view, the first problem is called the shortest path problem and the latter is called the arc routing problem. More precisely, we are dealing with the subclass of the rural postman problem, which means that in the network, some roads must be serviced while others may only be traversed if needed,” said André Langevin. 
     
To overcome this problem a set of routes, one for each vehicle, is needed. In order for it to be a feasible solution, it must cover all the required arcs while respecting certain constraints. “With the exception of some specific cases, most of these problems are deemed very hard to solve, which means that most of the real life scale problems could not be solved to optimality within years of computer calculation. In reality the snow would have melted before the computer calculated the optimum route to clear it,” said Olivier Quirion-Blais.
     
Fortunately, there exist some methodologies that can generate good, but not necessarily optimal solutions far more quickly. One of these methodologies, called metaheuristic, has been used by the researchers as the basis of their algorithms.
Before a metaheuristic solution can be developed, the conditions of the problem have to be established and in order that these are realistic, a case study was undertaken. The data used is from a small city in northern Quebec, Canada. The road network consists of about 260km of roadway which the local authority divides into four classes of priority for snow clearing purposes: priority one is the highest, three is the lowest and those classed as priority four are only cleared if vehicles are available after the others have been treated.
The  network mixes both urban and rural characteristics. The urban part is a  dense grid with mainly four-way intersections as opposed to the rural  part where there are mainly long stretches of road and three-way  intersections. A similar situation applies to many small cities  throughout Canada and beyond. The city authority has at its disposal  eight vehicles which can be classified into three types - some are  better equipped to treat roads farther from the depot while others are  better suited to narrow city streets. 
     
Various  objectives can be considered for the design of the snow ploughing  routes - one of the most frequently considered is to complete the  clearing operations in the shortest time. Among other objectives that  could be considered are road users’ safety, the cost of the operations  or the quality of the service. The important thing when choosing an  objective is to be able to measure the impact of changing the solution. 
     
However,  in most cases, all the operational constraints have to be considered  while optimising the routes. For the case studied, the main constraints  considered started with the partial network coverage as not all the  roads need to be serviced; most of them are serviced by the local  authority although national authorities also take care of some major  roads. Moreover there is a network hierarchy whereby some roads are  given higher priorities - such as those leading to and from hospitals or  police and firefighter stations which must be serviced as soon as  possible.
     
To achieve the  task in the shortest possible time all the vehicles must have about the  same workload, which has to be balanced while considering street or  vehicle dependency - narrow streets must be serviced by smaller vehicles  and roads farthest from the depot should be serviced by faster  vehicles. Consideration also had to be given to non-directed segments  where both directions of the streets can be serviced in one passage.  This specially applies to de-icing but it can be applied to snow  ploughing of narrow back alleys that can be serviced in either way.
     
Other  operational considerations included avoiding left turns when ploughing  as the snow discharged can block intersections, and the same applies for  U-turns - for security reasons. Constraints such as precedence,  periodicity or synchronisation could also be considered. 
 
To  design a good solution within reasonable time, the researchers are   developing a solution based on metaheuristic which is a two phase   methodology. In the first phase, an initial solution is calculated to   service all the required streets.
     
 The   objective of this first phase is not to design a good solution (in  fact  the initial solution might not even be feasible) but rather  provide a  starting point for the second phase where a search process is  performed.  From the initial solution, simple street exchanges will be  performed  from one route to another. It means that one or several  streets that  were initially scheduled to be treated by one vehicle are  transferred to  be treated by another vehicle. 
     
The   rules which guide these exchanges are called operators. Each time an   operator is applied, the solution is measured with respect to the   objective set earlier and this modified solution may be accepted even if   the objective has not improved. For example, a deteriorated solution   may simply be a transition point in the process to ultimately achieve a   better (although not necessarily optimal) routing. 
     
One   of the major challenges in the development process is to design   operators that can search properly among the feasible solutions. These   operators are designed to promote street exchanges that provide good   solutions while considering the specific constraints as described above.
 
 It   is important to note that this methodology is intended to be used  as a   tool for decision support; logistic managers may further improve  or  even  ignore the calculated routes. When initiating the process  several   parameters must be set manually in order to comply with local    constraints while event-specific situations can be accommodated in    real-time. 
     
One of the    main advantages of using such methodology lies in the fact that it    provides logistics managers with a new perspective. They can use their    knowledge and experience to adapt the results to local requirements.    Globally, designing the routes with the algorithm can results in    significant savings in time. 
     
Among    other perspectives, this methodology can also help to test various    scenarios such as the impact of the loss (or addition) of a vehicle on    the ending time of the operations. More immediately it would allow    real-time modification of the actual fleet routing if, for example, one    vehicle breaks down or is slowed by the traffic. This methodology  could   quickly design a new routing plan taking into account the  current   vehicle availability. 
     
For    real-time use, the algorithm would be installed on a computer linked   to  a global ITS architecture. An example of this type of architecture   is  shown in the graphic. GPS devices provide the current   location  of the vehicles. Based on the previous movements of the   vehicle and the  weather forecast, it would be possible to determine   which roads need to  be treated first. Using the current condition of   the network the  algorithm adapts the routing in real-time and the new   routes are  provided to the vehicles using a global system for mobile    communications. This would allow snow plough operators to focus on    driving their vehicles while followings the directions given by their    in-cab GPS devices. 
    
        
        



