- Open Access
- Authors : Aparnna Binu, Alphy John Jacob, Chinchu Sabu, Dharmajith M D, Smruthy P Nair
- Paper ID : IJERTCONV10IS06087
- Volume & Issue : ICART – 2022 (Volume 10 – Issue 06)
- Published (First Online): 22-06-2022
- ISSN (Online) : 2278-0181
- Publisher Name : IJERT
- License: This work is licensed under a Creative Commons Attribution 4.0 International License
Analysis of Traffic Congestion At Ettumanoor Kottayam Route and Its Solution
Aparnna Binu 1
Student
Department of Civil Engineering Mangalam College of EngineeringEttumanoor, India
Alphy John Jacob 2
Student
Department of Civil Engineering Mangalam College of EngineeringEttumanoor, India
Chinchu Sabu 3
Student
Department of Civil Engineering Mangalam College of EngineeringEttumanoor, India
Dharmajith M D 4
Student
Department of Civil Engineering Mangalam College of EngineeringEttumanoor, India
Smruthy P Nair 5
Assistant Professor
Department of Civil Engineering Mangalam College of Engineering Ettumanoor, India
Abstract The spontaneous increase in number of vehicles onroad attributes the ingeneration of traffic problems like accidents, traffic congestion and delay. Traffic congestion is a condition in transportation characterized by slower speeds, long travel time and increased vehicular queueing. Nowadays it is the most complex issue of transportation due to increase in high ownership of vehicles. A substantial portion of working hours is getting wasted on the road. Poor public transportation system, rapid increase in population, unplanned transport infrastructure are the primary causes of congestion. The purpose of our study is to analyze the present condition of the area and to find out solutions for the problems using factor analysis. Etumanoor town is one of the most congested places along MC road in Kottayam district thats why we choose Ettumanoor Kottayam route for our study. There are many factors that lead to traffic congestions at different spots and by analyzing these factors we find out the solutions.
Keywords: Traffic congestion, traffic demand, transportation system.
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INTRODUCTION
Traffic congestion is a transport condition that occurs due to slower speeds, improper signals, less awareness about traffic rules and regulations, decrease in road capacity. Population rate of India is increasing day to day and the demand of private vehicle is also increasing. An efficient network of transport service is required to support the complex activity patterns within city, there is a strong relation between transportation and city development in our area.
The main purpose of transportation is to provide an efficient means to satisfy human needs for a heterogeneous variety of societal groups. Therefore, the general goal is to meet this need for mobility. urban transportation planning contains several activities like analyzing present condition of the area such as the land use patterns and travel demand produced from the land development. After that development plans are prepared by forecasting the land,
travel demand, population etc. the purpose of the process is to perform a prediction of travel demand and after that suitable alternative are implemented to reduce the traffic congestion.
In this study we analyze the traffic flow at Ettumanoor Kottayam route by conducting transportation surveys and traffic volume, speed is calculated. we selected 5 major spots for our study which contains intersections. After the pilot survey we find out many factors which lead to congestion and among those 9 factors are taken for detailed survey. Traffic volume at 5 spots is taken during morning and evening peak hours. Traffic speed is taken manually. Questionnaire survey is conducted based on 9 factors. SPSS software is used to analysisthese factors.
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LITERATURE REVIEW
The studies bring about the salient points of published literatures and other works.
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Tanzina Afrin and Nila Yodo(7 JUNE 2020) A survey of road traffic congestion measures towards sustainable and resilient transportation system. It identified the root causes of congestion. The advantages and disadvantages of each measure are identified from data analysis.
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A.Vinidha Roc, P.R , Banuprakash, G.Paul Asir Ninon Raj,L. Prasad.(July 2017) SMART TRAFFIC LIGHT SYSTEM,A system of cameras are used to regulate their obtained information in their respective places and coordinates with other camera in the system to change traffic signals and suggest green signal for that route to avoid maximum traffic. Image processing unit is the central unit to maintain the traffic in normal; speech processing unit is secondary unit, the combined processing is important only in emergence.
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Geethu Lal, Divya L.G., Nithin K.J,Susan Mathew , Bennet Kuriakose (2016) sustainable traffic improvement for urban road intersections of developing countries; A Case study of Ettumanoor , INDIA., The
analysis of the collected data from the direct field survey of traffic volume , land use, and pedestrian counts reveals that improper planning, unauthorised parking, lack of signal are the main causes. Junction signalization and junction improvement are the remedial measures proposed.
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C.H.Mohammed Koya KMGA Engineering College, Kerala. Volume 6, special issue 4 (march 2017). traffic and are improvement of baker junction, 2 intersection in Kottayam town is considered as the project stretch and relevant datas are collected. By analysing all the problems suitable improvement proposals are adopted.
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Shijilk, Geeva George , Dr Praveena, International Journal of Engineering, Construction Phase Road Safety Audit Of Kottayam Ettumanoor MC road, the challenges to road safety of spots are identified. Spot speed study was conducted. Factors were identified based on negative response survey and switching response survey.
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OBJECTIVES OF WORK
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To access the existing condition of road network andto identify the major gridlocks.
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To identify various factors governing the trafficcongestion.
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To collect the traffic volume and speed.
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To identify peoples opinion and suggestions.
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To establish proper solutions for the specificproblems.
Identify the major junctions at Etumanoor Kottayam route
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METHODOLOGY
Data analysis
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SPSS software
Result
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STUDY AREA
First, we visited the study area and reduce long route into 5 major spots which contains deviation.
Major spots are;
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Ettumanoor bus stand
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Adichira
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Chavittuvari
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Gandhinagar
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Nagambadam
5 major spots are taken
ROUTE MAP FROM ETUMANOOR TO KOTTAYAM
Conduct pilot survey and identify factors that cause
congestion.
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DATA COLLECTION
The different data required for study is collected through trafficsurveys.
Data collection by survey
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Traffic volume
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Traffic speed
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Questionnaire survey
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TRAFFIC VOLUME
-
-
-
It is defined as the procedure to determine volume of traffic moving on the roads at a particular time. It is done by counting the vehicles during morning peak hours [8 to 10am] and evening peak hours [3.30 to 5.30 pm]. The volume count at selected 5 spots was carried out and existing condition of the road stretches are analysed. The result obtained are shown below;
TRAFFIC VOLUME AT ETUMANOOR BUS JUNCTION
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MORNING PEAK HOURS
Table 1 numb of vehicles towards Adichira from Ettumanoor
VEHICLE |
TIME |
|||
CAR |
8:00 to 8:30 |
8:30 to 9:00 |
<>9:00
to 9:30 |
9:30 To 10:00 |
290 |
324 |
519 |
483 |
|
BIKE |
298 |
398 |
610 |
511 |
LORRY AND TRUCK |
35 |
30 |
35 |
38 |
BUS |
32 |
48 |
46 |
48 |
THREE-WHEELER |
45 |
62 |
127 |
108 |
EVENING PEAK HOURS
Table 2 numb of vehicles during evening peak hours
MORNING
700
600
500
400
300
200
100
0
Bike
Bus
Lorry and Truck
Car
3 Wheeler
Fig.1. Number of vehicles versus time on 21/03/2022
VEHICLE |
TIME |
||||
3:30 |
4:00 |
4:30 |
5:00 |
||
to |
to |
to |
to |
||
4:00 |
4:30 |
5:00 |
5:30 |
||
CAR |
455 |
495 |
520 |
539 |
|
BIKE |
460 |
503 |
548 |
560 |
|
BUS |
60 |
75 |
80 |
86 |
|
LORRY TRUCK |
AND |
38 |
30 |
29 |
24 |
THREE-WHEELER |
150 |
165 |
178 |
189 |
600
500
400
300
200
100
0
Evening
Bike Bus
Lorry or Truck
Car
3 Wheeler
Fig .2.Number of vehicles versus time on 21/03/2022
Vehicle count on remaining 4 spots were taken in similarmanner and was considered for result analysis.
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TRAFFIC SPEED
Traffic speed count was collected from 5 spots.Formula: SPEED = DISTANCE / TIME
Ettumanoor to Adichira, Distance = 5.9 km
Table .3. Speed count of car
CAR
12
10
8
6
4
2
0
0
2
4
6
No. of Vehicle
8
10
12
3PM TO 5PM 8AM TO 10AM
Speed (m/s)
TIME
VEHICLE
TYPE
VEHICLE
NUMBER
CONSUMPTION
OF TIME
SPEED
[M/ SEC]C C C
C
8:00-
10:00 C AM
C
AR
05 10
min
9.8
AR
25 12
min
8.2
AR
36 10
min
9.8
AR
45 14
min
7.0
AR
66 9
min
10.9
AR
28 12
min
8.2
CAR
55
9 min
10.9
CAR
58
14 min
7.0
CAR
15
9 min
10.9
CAR
18
12 min
8.2
3:00-
5:00
pm
CAR
08
13 min
7.5
CAR
67
10 min
9.8
CAR
52
10 min
9.8
CAR
75
13 min
7.5
CAR
29
9 min
10.9
CAR
38
15 min
6.5
CAR
24
10 min
9.8
CAR
30
9 min
10.9
CAR
86
9 min
10.9
CAR
59
11 min
8.9
Fig .3. numb of vehicle versus speed
The vehicle speed data of bus, bike, lorry and truck and three-wheeler was estimated and analysed similarly.
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QUESTIONNAIRE SURVEY
To identify peoples opinion regarding gridlock on the road, we conducted a well tabled questionnaire survey on a pool of 190. Each question booklet contained 12 questions fragmented to 9 factors and all the participants were enthusiastic about thesurvey.
Fig .4. Questionnaire survey format
The opinions from questionnaire survey is converted to Likert scale with 5 points. And kept for software analysis. We use Statistical Package for Social Science [SPSS] software and done factor analysis.
VI. DATA ANALYSIS
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SOFTWARE ANALYSIS
With the help of SPSS software, we done factor analysis and reduce 9 components to 3 variables. First of all, we have 9 factors for our analysis. The purpose of factor analysis is to reduce our number of variables into a smaller number of components. The number of variables we input in our analysis, will always be equal to the number of components. Eigenvalues are shown in fig. the number of factors or components that have eigenvalues greater than one are taken. All other components with eigenvalues less than one, we do not keep. Since only 3 components had an eigenvalue greater than one, we only have 3 components in our solution. We reduce those 9 factors to 3 components. Some of eigenvalues will be always equal to the number of components.
FFFFF
Table.4. Factor analysis
Table shows KMO and Bartletts test values. the std value for KMO and Bartletts test should be more than 0.5 and less than 0.05.it actually testing whether correlation matrix are related.
The test result shows that variable 6 contribute maximum amount of congestion in road. Roadside shops are variable 6 and it creates major traffic congestions. It reduces road width and parking spaces on road.
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CONCLUSION
Traffic congestions are mainly created by traffic users by misbehaving in road and violating the rules. Congestion on Ettumanoor Kottayam route can be solved by providing proper width for road, avoid congested road side shops, provide parking area for vehicles, separate lane for heavy vehicles, proper signals, bypass roads etc. Parking should be restricted on the roads as it decreases the width of carriageway. By factor analysis we found that each factors contribute how much amount of congestion on road. Public transport should be increased to reduce gridlocks and accidents.
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REFERENCES
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/Jan March 2009
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