| Literature DB >> 25032239 |
Mostofa Kamal Nasir1, Rafidah Md Noor1, M A Kalam2, B M Masum2.
Abstract
Greenhouse gas emitted by the transport sector around the world is a serious issue of concern. To minimize such emission the automobile engineers have been working relentlessly. Researchers have been trying hard to switch fossil fuel to alternative fuels and attempting to various driving strategies to make traffic flow smooth and to reduce traffic congestion and emission of greenhouse gas. Automobile emits a massive amount of pollutants such as Carbon Monoxide (CO), hydrocarbons (HC), carbon dioxide (CO2), particulate matter (PM), and oxides of nitrogen (NO x ). Intelligent transport system (ITS) technologies can be implemented to lower pollutant emissions and reduction of fuel consumption. This paper investigates the ITS techniques and technologies for the reduction of fuel consumption and minimization of the exhaust pollutant. It highlights the environmental impact of the ITS application to provide the state-of-art green solution. A case study also advocates that ITS technology reduces fuel consumption and exhaust pollutant in the urban environment.Entities:
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Year: 2014 PMID: 25032239 PMCID: PMC4086228 DOI: 10.1155/2014/836375
Source DB: PubMed Journal: ScientificWorldJournal ISSN: 1537-744X
Techniques and Technologies for fuel reduction of vehicle.
| Reduction Parameter | Reduction Type | Attribute | Techniques | Technologies | |
|---|---|---|---|---|---|
| Fuel Reduction | Importance of Reduction of Fuel Consumption for Green Driving | Vehicles | Improvement of Fuel Efficiency of Vehicle By Upgrading Mechanical Properties | Upgrading Mechanical Properties | |
| Roadways | Improvement of Highways | Upgrading Civil Properties | |||
| Reduction of Fuel by Intelligent Driving | Green Driving Behavior | Maintain Optimum Tire Pressure | |||
| Adjust Drive Technique | |||||
| Maintain The Ride | |||||
| Get Rid of Weight and Reduce the Drag | |||||
| Avoid Unnecessary Idling | |||||
| Use Latest Technology Car | |||||
| Traffic Flow | Intelligent Management of Highways | Lane | |||
| Electronic Toll Collection | |||||
| Traffic | Traffic Light Control | ||||
| Collision Avoidance | |||||
| Maximize Throughput | Intelligent Navigation System | ||||
| Bottleneck Elimination | Electronic Toll Collection | ||||
|
| |||||
| Shortest Distance | Traffic Reduction by Navigation | Increase Transportation Efficiency | Occupancy Increase | Car Sharing, Car Pool, | |
| Other Effective Factor For Transportation | Multi-Modality | Public Transportation | |||
| Traffic Reduction by Transportation Reduction | Minimization Of Transportation | Demand Management | Road Pricing | ||
| Parking Strategies | |||||
| No Transportation | Communication | VANET | |||
| City Planning | Compact City | ||||
Figure 1Relation between fuel consumption and average speed.
Figure 2Relation between fuel consumption and gear change of a manual driving car.
Figure 3Typical relation between emission and average speed. (a) CO versus average speed and (b) NO and VOC versus average speed.
Figure 4Three-tier open traffic control system.
Figure 5Electronic toll collection system.
Summary of ITS application.
| Authors | Application | Technology | Objectives |
|---|---|---|---|
| Fuyama [ | Electronic toll collection System (ETCS) | Wireless communication between a roadside antenna in a tollgate and a vehicle unit in a moving vehicle | Maintain a constant green speed in toll gate |
| Tengler and Heft [ | Vehicle Information Communication Systems (VICS) | Provide the traffic and travel data to the drivers by transmitting using wireless technology. | Reducing traffic congestion, traffic accidents, and improving road environment |
| Glass et al. [ | Traffic Management Systems (TMS) | TMS include onboard satellite navigation devices as well as dynamic driver assistance and variable message signs. | Transport can be made safer, cheaper, more reliable and greener. |
|
Boatright et al. [ | Vehicle Navigation System (VNS) | Uses information from a Global Positioning System (GPS) to obtain velocity vectors, which include speed and heading components. | Advice the driver for the shortest and fuel efficient path. |
| Pfeiffer et al. [ | Driver Assistance Systems | Based on intelligent sensor technology constantly monitor the vehicle surroundings as well as the driving behavior. | Detect potentially dangerous situations at an early stage and actively support the driver |
| Hoeger et al. [ | Automated Driving System | Real-time driving functions necessary to drive a ground-based vehicle without real-time input from a human operator. | Traffic-jam reduction and full-range automated cruise control |
| Masum et al. [ | Urban Traffic Information Systems (UTIS) | Create, analyze and process the location information of moving vehicle to improve convenience by providing improved flow of transportation logistics and analyzed traffic information to driver. | Total management system of the streetlight light and security light and reduction of pollution |
| Wiering et al. [ | Intelligent Traffic Light Control System. | Intelligent traffic light control system comprising a microprocessor, a manual input device, an enforced switching device and an intelligent detecting device, where in the microprocessor is used for controlling traffic lights. | Maximize the traffic efficiency of intersection of roads and achieving a best control for traffic. |
| Lemelson and Pedersen [ | Vehicle Collision Avoidance System | It uses radar and sometimes laser and camera sensors to detect an imminent crash. | To reduce the severity of an accident which in term reduce congestion. |
| de Fabritiiset al. [ | Traffic Estimation and Prediction System | Use computer, communication, and control technologies to monitor, manage, and control the transportation system. | Improve traffic conditions and reduce travel delays. |
| Smith, et al. [ | Scalable Urban Traffic Control | The SURTRAC dynamically optimizes the control of traffic signals in three sections: first, decision making in decentralized manner of individual intersections; second is an emphasis on real-time responsiveness to changing traffic condition and finally managing urban road networks. | Objectives include less waiting, reduced traffic congestion, shorter trips, and less pollution. |
| Blum et al. [ | Intelligent Speed Adaptation (ISA) | There are four types of technology used for ISA: GPS, Radio Beacons, Optical recognition, Dead Reckoning | ISA helps to reduction of accident risks and reductions of noise and exhaust emissions. |
Figure 6Typical traffic flow versus time of day.
Figure 7Three different routes of the same origin and destination.
Free flow Condition Fuel Consumption.
| Performance Measure | Route 1 | Route 2 | Route 3 | Remarks |
|---|---|---|---|---|
| Distance (Km) | 12.1 | 10.8 | 11.2 | |
| Running time (Minutes) | 12 m | 11 m | 12 m | |
| Stop time (Minutes) | 2 m | 2 m | 2 m | |
| Total time (Minutes) | 14 m | 13 m | 14 m | |
| Total distance w.r.t. time | 14 Km | 13 Km | 14 Km | Assumption-1 |
| Fuel used (Liter) | 1.82 | 1.69 | 1.456 | |
| Fuel consumption (Lt/Km) | 0.13 | 0.13 | 0.13 |
Figure 8Bar graph for the distance, total travel times, and fuel used in free flow condition.
Performance on moderate congestion road condition.
| Performance Measure | Route 1 | Route 2 | Route 3 | Remarks |
|---|---|---|---|---|
| Distance (Km) | 12.1 | 10.8 | 11.2 | |
| Running time (Minutes) | 17 m | 18 m | 18 m | |
| Stop time (Minutes) | 4 m | 4.5 m | 4 m | |
| Total time (Minutes) | 21 m | 22.5 m | 22 m | |
| Total distance w.r.t. time | 21 Km | 22.5 Km | 22 Km | Assumption-1 |
| Fuel used (Liter) | 2.73 | 2.925 | 2.86 | |
| Fuel consumption (Lt/Km) | 0.13 | 0.13 | 0.13 |
Figure 9Bar graph for the distance, total travel times, and fuel used in moderate congestion.
Performance on heavy congested road condition.
| Performance Measure | Route 1 | Route 2 | Route 3 | Remarks |
|---|---|---|---|---|
| Distance (Km) | 12.1 | 10.8 | 11.2 | |
| Running Time (Minutes) | 20 m | 21 m | 18 m | |
| Stop Time (Minutes) | 8 m | 9 m | 8 m | |
| Total time (Minutes) | 28 m | 30 m | 26 m | |
| Total distance w.r.t. time | 28 Km | 30 Km | 26 Km | Assumption-1 |
| Fuel used (Liter) | 3.64 | 3.9 | 3.38 | |
| Fuel Consumption (Lt/Km) | 0.13 | 0.13 | 0.13 |
Figure 10Bar graph for the distance, total travel times, and fuel used in heavy congestion.