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Introduction - Fatmah Ebrahim
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Traffic Jam Facts There are 500,000 traffic jams a year. That’s 10,000 a week. Or 200-300 a day. Traffic congestion costs the economy of England £22bn a year 1 [1] Eddington Transport Study, Rod Eddington (2006)
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Overview Queuing Theory Macroscopic Flow Theory Kinetic Theory Cellular Automata Three Phase Theory Vehicle Following Model Bifurcations Computer Model Mechanical Model Data Analysis Conclusions
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Queuing Theory - Roger Hackett
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Parameters of Queuing Theory Flow rate: q Capacity: Q Intensity: x=q/Q
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Pollaczek-Khintchine Formula
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Macroscopic Flow Theory - Peter Edmunds
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Macroscopic Flow Theory We need to define three variables: Spatial density, K: the number of vehicles per unit length of a given traffic system. Flow, Q: the number of vehicles per unit time Speed, v: the time rate of progression These lead to the fundamental equation of traffic flow: Q=Kv
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We can obtain an equation that resembles the equation of continuity for fluid flow: This is based on the assumption that no vehicles enter or leave the road. It can be adapted for n traffic lanes and for inflows or outflows of gΔxΔt. Modeling traffic flow as a fluid
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To solve this, we assume that the flow q is a function of the density k. We obtain the equation: This is solved by the method of characteristics. Eventually, after introducing a parameter s along the characteristic curves, the final equation can be derived:
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An analytic solution of this equation is usually impossible and so what is done in practice is to draw the graph of q=kf(k) against k.
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Kinetic Traffic Flow Theory - Joshua Mann
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Developed to explain the macroscopic properties of gases. Pressure, temperature and volume are modelled by considering the motion and molecular composition of the particles. Original theory was static repulsion. Kinetic Theory
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Primitive Speed Equation Convection term: change of the average speed V due to a spatial speed gradient carried with the flow V. Pressure term: change of average speed V as a result of individual vehicles that travel at v V. Smooth acceleration: change of average speed V due to smooth individual accelerations. Discrete acceleration 1: change of the average speed V due to events that cause a discrete change in the number of vehicles with expected speed v. Discrete acceleration 2: change of the average speed V due to a discrete change in the total number of vehicles.
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Where W is a drivers desired speed. is the relaxation time. Modified Speed Equation
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Advantages: It provides a realistic representation of multiclass traffic. It reproduces phenomena observed in congested traffic. It helps to relate traffic flow models to the behaviour of the driver. Disadvantages: The individual behaviour of drivers is still not fully accounted for. The model cannot fully describe complex traffic flows in towns. Advantages and Disadvantages
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Cellular Automata Traffic Model - Joshua Mann
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An idealization of a physical system. Physical quantities take a finite set of values and space and time are discrete. Traffic flow is modelled using the road traffic rule. Cellular Automata
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Road Traffic Rule Model Vehicles modelled as point particles moving along a line of sites. A vehicle can only move if its destination cell is free. If the destination cell is freed at the same time as motion the vehicle does not move until after the cell is vacated as it cannot observe the other vehicles motion.
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1 1 0 0 Traffic light situation. Numbers in grid are turn flags and indicate priority. Condition allowed is right turn on red light. Applications
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Advantages: It enables the study of traffic flow in towns and cities. It allows the implication of certain road regulations to be modelled. Disadvantages: It does not account in any way for the behaviour of the driver. The individual speed of vehicles is not accounted for. The differing sizes of vehicles are not accounted for. Advantages and Disadvantages
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Three Phase Theory - Eóin Davies
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The Three Phase Theory of Traffic Flow Classical Theory (Two Phases): Free Flow Congested Three Phase (Congested phase split into two): Free Flow Synchronized flow Wide-moving jam
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Fundamental Hypothesis of Three Phase Traffic Theory
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Transitions Free Flow -> Synchronised Flow Synchronised Flow -> Wide-moving Jam
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Conclusions It is qualitative theory. It is a description of traffic patterns not an explanation. Not widely accepted. Based on data from German freeways - there is no reason that the results would match other roads in other countries.
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Vehicle Following Model - Steven Kinghorn
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VFM studies the relationship between two successive vehicles. Each following vehicle responds to the vehicle directly in front. Following vehicleLeading vehicle Velocity of the following vehicle Separation distance between two vehicles Velocity of the leading vehicle Vehicle Following Model (VFM)
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Response = SensitivityStimulus General form of model Response – Braking or accelerating Sensitivity – Driver reaction time Stimulus – Change in relative speed One example of a VFM equation: - Other VFM’s have different variations in sensitivity. For example, a VFM developed by Gazis, Herman & Potts (1959) has a greater sensitivity for smaller spacing between vehicles: - (1) (2) (3) Speed of leading vehicle Speed of following vehicle
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Limitations – following vehicles only react to the vehicles directly in front. However, majority of drivers would look further ahead to gauge traffic conditions. Computer simulations can be created to introduce many different types of traffic systems (Traffic lights, lanes closer etc) By applying a vehicle following model, we can study how congestion might be caused and develop ways to reduce it. VFM in Computer simulation
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Bifurcations - Roger Hackett
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Bifurcations This is the reaction time delay vehicle following model.
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The Computer Model - Alex Travis
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v 0 : desired velocity ; the velocity the vehicle would drive at in free traffic s*: desired dynamical distance s 0 : minimum spacing; a minimum net distance that is kept even at a complete stand-still in a traffic jam T: desired time headway; the desired time headway to the vehicle in front a: acceleration of vehicle b: comfortable braking deceleration δ is set to 4 as convention s: distance of vehicle ahead v: velocity of vehicle ∆v: velocity difference or approaching rate between the vehicle and that of the vehicle directly ahead. Intelligent Driver Model
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Acceleration on free roadDeceleration due to car ahead v 0 : desired velocity ; the velocity the vehicle would drive at in free traffic s*: desired dynamical distance s 0 : minimum spacing; a minimum net distance that is kept even at a complete stand-still in a traffic jam T: desired time headway; the desired time headway to the vehicle in front a: acceleration of vehicle b: comfortable braking deceleration δ is set to 4 as convention s: distance of vehicle ahead v: velocity of vehicle ∆v: velocity difference or approaching rate between the vehicle and that of the vehicle directly ahead.
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Graphs Produced for Single Lane Model
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The Mechanical Model - Eóin Davies
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Mechanical Model Q=k.v Q=Flow k=density v=velocity Want to confirm this relation. Need to measure these variables.
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Release balls at a fixed rate. Density and speed of balls varies when angle of ramp changes x Figure 1 Mechanical Model
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1. Set value of flow by releasing bearings at fixed intervals. 2. Measure speed of balls at certain angle of ramp. 3. Measure Density at different flow rates. 4. Use Q=k.v to calculate flow. Method
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Comparing set flow and flow calculated using K.v Ramp angle (low to High) Calculated flow (k.u)Set Flow (No. Of balls/Sec) 1 0.79 0.43 0.33 1.00 0.50 0.33 2 0.81 0.48 0.34 1.00 0.50 0.33 3 0.95 0.50 0.33 1.00 0.50 0.33 4 0.96 0.53 0.35 1.00 0.50 0.33 5 0.95 0.53 0.37 1.00 0.50 0.33 Results
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Data Analysis - Peter Edmunds
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Data Analysis We needed to analyze data to investigate which of the theories already mentioned is the most appropriate for traffic flow. On the 28 th of January our group attempted to take data from the M1. This was a failure. Professor Heydecker from the Transport Department at UCL very kindly allowed us to use his data, taken in conjunction with the Highways Agency.
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Data Analysis The M25 data seems to be in agreement with Greenshield’s original model. In truth, however, every road is different and will produce different curves. In modern traffic data analysis an amalgam of each theory is used, along with empirical data for the road in question.
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Conclusion - Fatmah Ebrahim
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TheoryProsCons Queuing Theory Macroscopic Theory Empirical corroborationLimited applications Kinetic Theory Multi-class traffic modeling Cannot model for stop-and-go traffic scenarios Cellular Automata Can model for stop-and- go traffic scenarios All components are modeled identically Vehicle-Following Models Good for creating computer simulations Cannot account for unexpected incidents Three-Phase Theory Describes complex congestion patterns Not widely tested Summary
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Future Possibilities Automated Highway Systems (AHS) Experiment carried out by National Automated Highway Systems Consortium In 1997
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Thanks For Listening Eóin Davies Fatmah Ebrahim Peter Edmunds Roger Hackett Steven Kinghorn Joshua Mann Alex Travis with thanks to Dr.Stan Zochowski and Dr. BG Heydecker For more information or a full report please visit our website http://ucltrafficproject.wordpress.com
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