 
     An air quality evaluation system that utilises existing data has been modelled on the UK’s motorways and tested in Manchester as Peter Kirby and Paul Grayston describe.    
     
It has long been known that emissions from road transport are the principal source of NO2 pollution, especially in the urban environment, and that appropriate transport management can play a big role in meeting environment and public health objectives. What is less clear is what form that management should take – banning trucks or all vehicles, implementing low emission zones or encouraging low emission vehicles.   
 
     
However, this is not the case on motorways where there is a notable absence of proactive traffic control measures to reduce emissions. While some motorway projects have shown environmental benefits, these are largely fortunate side effects of schemes to increase capacity or improve journey time reliability.
     
As part of a small innovation study in 2014/5, 
 
The AEC coupled official fleet projections (the proportion of vehicle by  categories, fuel types…), of emission profiles by vehicle model and  speed with simulated real-time traffic data collected from virtual  inductive loops in the traffic model, to calculate emissions within the  motorway corridor. 
     
In this case the AEC prototype was a dynamic  corridor-wide control system which catered for network topography,  gradients and recurrent congestion on the southbound M1 near Sheffield.
The AEC determined the emissions  profile every 500m throughout a 9km (5.7mile) model and assessed in  real-time the occupancy within the modelled network using traditional  methods. If the real-time emissions profile exceeded the threshold at  any location, control mechanisms such as mandatory speed restrictions,  lane closures or vehicle-type bans were implemented to reduce vehicle  emissions at that location.  
     
By  taking a corridor-wide approach, the AEC showed that it is possible to  reduce vehicle emissions by more than 20% at sensitive locations within  the motorway network. While this is a clear achievement, analysis of the  overall modelled network showed a 1.7% increase in the total volume of  emissions generated – particularly upstream of the targeted area.   Although this sounds negative, the system could benefit the likes of air  quality management area currently exceeding the EU limits by  effectively moving the emissions to locations of less concern. 
 
While  the AEC employed non-standard control techniques  such as dynamic,  lane-specific vehicle-type bans, the project indicated  that emissions  from vehicles within the motorway network can be  reduced using traffic  control techniques. It also brought with it a  modest overall improvement  in journey times within the model.  
   
 Wider application    
 
 Following   completion of the AEC project, Dynniq began the development of the   Virtual Emissions Monitor (VEM).  This was based on the initial AEC   concept of estimating real-time emission profiles using datasets   generated by the National Atmospheric Emissions Inventory (NAEI),   real-time traffic speed, flow and vehicle classification. The VEM was   applied to 
     
The   VEM was subsequently improved to accommodate network and fleet filters   to show the emissions on the M60, or emissions generated by particular   vehicle type and/or Euro classification.  
This  was followed by interfacing  to Highways England’s central systems for  real-time functionality,  enabling operators to understand the current  emission profiles  throughout the network. At Intertraffic the company  demonstrated to an  international audience the VEM’s advanced  user-interface for  area-specific monitoring, historic data analysis  functions and a ‘what  if’ scenario management tool. 
 
By   using the existing infrastructure and datasets, the  VEM provides a   cost-effective tool for network managers while the  map/dashboard   presentation provides detailed insight to the specific  contributors to   network emissions. This allows network managers to  understand the   effects from HGVs or a particular Euro classification  of diesel cars -   knowledge that can inform traffic control  interventions and help shape   transport policy. 
     
As  the system calculates tailpipe   emissions, its output is not  influenced by variable factors such as   wind speeds, surrounding  buildings or road layouts and can therefore   enable like-for-like  comparisons of the effects of traffic changes. 
     
   
Urban areas
Dynniq was able to move the VEM into the urban environment when it partnered with Transport for Greater Manchester (TfGM), the University of Manchester and transport and environment specialist KAM Futures on a real-time urban air quality analysis, information and actuation solution named Aquaria.     
 
This   prototype system uses emissions profiles generated by the VEM  (through   the processing of real-time traffic data) in conjunction with  wind speed   measurements and dispersion modelling to predict and  spatially   visualise real-time estimates for NO2 concentrations within  urban   environments.
  
Part of  the   project involved an assessment of the conditions under which    implementing of a targeted traffic control plan could avoid or shorten    an NO2 concentration exceedance. Analysis of historic data (1 June 2014    to 29 Feb 2016) from Manchester University’s Whitworth Observatory  was   undertaken to determine incidents when the 95th percentile of  measured   NO2 exceeded 59.2µg m3. These were found to be highest in the  autumn  and  winter, with the wind speed below 2.5m/sec and in the  morning peak   during school terms.
In   order to test the emissions altering hypothesis and  attempt to reduce   the NO2 concentrations, a traffic control plan was  implemented in TfGM’s   SCOOT system for the morning peak over a  three-day period towards the   end of the three-month project in March  2016. 
  
An   experimental  traffic control plan was implemented by making  changes to   the SCOOT  model to prioritise a main arterial route into  Manchester at   the  expense of the side roads. The system predicted air  quality using   the  VEM to capture the changes in traffic behaviours  and the NO2    dispersion model. 
     
Data     including live spot vehicle classification, speed and vehicle flow  from    automatic traffic count (ATC) sites was used to generate the     representative urban traffic profiles in combination with traffic     volumes reported by the SCOOT system. Link journey times and a     combination of live Google journey time predictions and Bluetooth data     were used to infer speed.
     
These inputs enabled the NO2 concentrations to be estimated using an urban dispersion model     specific to Manchester and the estimations were cross checked using     actual NO2 measurements acquired using a NOx analyser located within  the    study area. The NO2 predicted  by the  VEM’s traffic data and dispersion modelling was compared with  actual  measured NO2 and the modelled vs measured results for the  Manchester  study area plotted for one 24 hour period (25 January 2016).  These are  only indicative due to the limited time period but show a good   correlation – indeed the two profiles achieve a coefficient of   determination (R2) of 0.66 which is comparable with the accuracy of   existing air quality models.     
 
     
The  VEM    evaluation indicated that the effect of altering the traffic  control    plan generated a reduction in tailpipe emissions of between  nine and 17%    (see graph).  Using a fixed 2.5m/sec wind speed in the  dispersion   model  (to compare with/without traffic control scenarios),  the modelled NO2 concentrations were reduced by between 2.9 – 4.9µg  m3 in the   morning  peaks over the three-day period. The company is now    investigating how  the potential effects on air quality of the  traffic   control plan on the  wider area can be represented.
While    the reduction in NO2 concentrations are  favourable the results can   only  be indicative due to the fixed wind  speed and limited dataset   mean. But  what they do show is that the  traffic data inputs and   calculations used  by the VEM have recognised  the change resulting from   the implementation  of the traffic control  plan.  This provides   confidence that the system  can be used to assess  a wider range of   interventions.
 
     
The   AEC   project confirmed that traffic control techniques in the   inter-urban   environment can be utilised to reduce emissions at  sensitive  locations   and the VEM tool has the potential to help local  and national    authorities manage air quality. 
     
From     an urban perspective, it demonstrated that bans and curfews are not    the  only way to improve air quality in sensitive areas. It showed  that    existing real-time traffic data and dispersion modelling can be  used  to   predict NO2 concentrations within urban traffic networks as   accurately   as the existing air quality models used by many local   authorities.   Furthermore, VEM can be used to assess the effects of a   range of   interventions without the need to deploy air quality   monitoring devices.
 
     
The     validation of the modelling approach indicates that the VEM can help     road network managers to devise temporary traffic control intervention     plans and decide when and where to deploy these to mitigate the  overall    effect of vehicle emissions.  
   
However, further implementations on other corridors and wider geographic areas are recommended along with the collection and validation of data over a full 12-month period.
| Day | NO2  Concentrations (ug m3) with TCP                     | NO2 Concentrations (ug m3) without TCP | Difference between averages (ug m3) | Percentage change | ||
| Sum           |         5-minute average | Sum | 5-minute average |  | ||||
| Wednesday | 318.1         |         28.9 | 366.5         |         33.3 | -4.4 | -13 | ||
| Thursday | 314.6         |         28.6 | 346.2         |         31.5 | -2.9 | -9 | ||
| Friday | 269.7         |         24.5 | 323.7         |         29.4 | -4.9 | -17 | 
     
 
    
 Air quality limits         
         
European Directives on Ambient Air Quality stipulate limits for the concentration levels of nitrogen dioxide (NO2) within road networks to protect public health. The regulations set an upper limit of 200µg m3 which is not to be exceeded more than 18 times a calendar year and an annual hourly average limit of 40μg m3. Official UK forecasts are that the majority of the UK’s air quality reporting zones will still be non-compliant for NO2 by the 2020 target date. 
     
 
- ABOUT THE AUTHORS: Peter Kirby and Paul Grayston work for Dynniq UK as principal consultant and senior solutions manager respectively.
    
 
 
     
         
        



