美赛数学建模比赛论文模板(10页).doc
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1、-美赛数学建模比赛论文模板-第 9 页 The Keep-Right-Except-To-Pass RuleSummaryAs for the first question, it provides a traffic rule of keep right except to pass, requiring us to verify its effectiveness. Firstly, we define one kind of traffic rule different from the rule of the keep right in order to solve the probl
2、em clearly; then, we build a Cellular automaton model and a Nasch model by collecting massive data; next, we make full use of the numerical simulation according to several influence factors of traffic flow; At last, by lots of analysis of graph we obtain, we indicate a conclusion as follow: when veh
3、icle density is , the rule of lane speed control is more effective in terms of the factor of safe in the light traffic; , so the rule of keep right except passing is more effective In the heavy traffic. As for the second question, it requires us to testify that whether the conclusion we obtain in th
4、e first question is the same apply to the keep left rule. First of all, we build a stochastic multi-lane traffic model; from the view of the vehicle flow stress, we propose that the probability of moving to the right is 0.7and to the left otherwise by making full use of the Bernoulli process from th
5、e view of the ping-pong effect, the conclusion is that the choice of the changing lane is random. On the whole, the fundamental reason is the formation of the driving habit, so the conclusion is effective under the rule of keep left. As for the third question, it requires us to demonstrate the effec
6、tiveness of the result advised in the first question under the intelligent vehicle control system. Firstly, taking the speed limits into consideration, we build a microscopic traffic simulator model for traffic simulation purposes. Then, we implement a METANET model for prediction state with the use
7、 of the MPC traffic controller. Afterwards, we certify that the dynamic speed control measure can improve the traffic flow . Lastly neglecting the safe factor, combining the rule of keep right with the rule of dynamical speed control is the best solution to accelerate the traffic flow overall.Key wo
8、rds:Cellular automaton model Bernoulli process Microscopic traffic simulator model The MPC traffic controlContentContent21. Introduction32. Analysis of the problem33. Assumption34. Symbol Definition45. Models55.1 Building of the Cellular automaton model55.1.1 Verify the effectiveness of the keep rig
9、ht except to pass rule65.1.2 Numerical simulation results and discussion95.1.3 Conclusion145.2 The solving of second question155.2.1 The building of the stochastic multi-lane traffic model155.2.2 Conclusion165.3 Taking the an intelligent vehicle system into a account165.3.1 Introduction of the Intel
10、ligent Vehicle Highway Systems165.3.2 Control problem175.3.3 Results and analysis185.3.4 The comprehensive analysis of the result216. Improvement of the model226.1 strength and weakness226.1.1 Strength226.1.2 Weakness226.2 Improvement of the model227. Reference241. IntroductionAs is known to all, it
11、s essential for us to drive automobiles, thus the driving rules is crucial important. In many countries like USA, China, drivers obey the rules which called “The Keep-Right-Except-To-Pass (that is, when driving automobiles, the rule requires drivers to drive in the right-most unless they are passing
12、 another vehicle)”.2. Analysis of the problemFor the first question, we decide to use the Cellular automaton to build models, then analyze the performance of this rule in light and heavy traffic. Firstly, we mainly use the vehicle density to distinguish the light and heavy traffic; secondly, we cons
13、ider the traffic flow and safe as the represent variable which denotes the light or heavy traffic; thirdly, we build and analyze a Cellular automaton model; finally, we judge the rule through two different driving rules, and then draw conclusions.3. AssumptionIn order to streamline our model we have
14、 made several key assumptionsl The highway of double row three lanes that we study can represent multi-lane freeways.l The data that we refer to has certain representativeness and descriptive l Operation condition of the highway not be influenced by blizzardor accidental factorsl Ignore the drivers
15、own abnormal factors, such as drunk driving and fatigue drivingl The operation form of highway intelligent system that our analysis can reflect intelligent systeml In the intelligent vehicle system, the result of the sampling data has high accuracy.4. Symbol Definition The number of vehicles The tim
16、e5. ModelsBy analyzing the problem, we decided to propose a solution with building a cellular automaton model.5.1 Building of the Cellular automaton modelThanks to its simple rules and convenience for computer simulation, cellular automaton model has been widely used in the study of traffic flow in
17、recent years. Let be the position of vehicle at time , be the speed of vehicle at time , be the random slowing down probability, and R be the proportion of trucks and buses, the distance between vehicle and the front vehicle at time is:, if the front vehicle is a small vehicle., if the front vehicle
18、 is a truck or bus. Verify the effectiveness of the keep right except to pass rule In addition, according to the keep right except to pass rule, we define a new rule called: Control rules based on lane speed. The concrete explanation of the new rule as follow: There is no special passing lane under
19、this rule. The speed of the first lane (the far left lane) is 120100km/h (including 100 km/h);the speed of the second lane (the middle lane) is 10080km8/h (including80km/h);the speed of the third lane (the far right lane) is below 80km/ h. The speeds of lanes decrease from left to right.l Lane chang
20、ing rules based lane speed control If vehicle on the high-speed lane meets , , , the vehicle will turn into the adjacent right lane, and the speed of the vehicle after lane changing remains unchanged, where is the minimum speed of the corresponding lane.l The application of the Nasch model evolution
21、Let be the lane changing probability (taking into account the actual situation that some drivers like driving in a certain lane, and will not take the initiative to change lanes), indicates the distance between the vehicle and the nearest front vehicle, indicates the distance between the vehicle and
22、 the nearest following vehicle. In this article, we assume that the minimum safe distance gap safe of lane changing equals to the maximum speed of the following vehicle in the adjacent lanes.l Lane changing rules based on keeping right except to passIn general, traffic flow going through a passing z
23、one (Fig. 5.1.1) involves three processes: the diverging process (one traffic flow diverging into two flows), interacting process (interacting between the two flows), and merging process (the two flows merging into one) 4.Fig. Control plan of overtaking process(1) If vehicle on the first lane (passi
24、ng lane) meets and , the vehicle will turn into the second lane, the speed of the vehicle after lane changing remains unchanged. Numerical simulation results and discussion In order to facilitate the subsequent discussions, we define the space occupation rate as, where indicates the number of small
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