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Arti Chouksey,
Khushboo Puri,
Aman Ahlawat,
Manvendra Verma,
- Assistant Professor, Department of Civil Engineering, DCRUST, Murthal, Haryana, India
- Student, Department of Civil Engineering, DCRUST, Murthal, Haryana, India
- Student, Department of Civil Engineering, DCRUST, Murthal, Haryana, India
- Assistant Professor, Department of Civil Engineering, GLA University, Mathura, Uttar Pradesh, India
Abstract
The incorporation of polymer chemistry has become more essential in the design and upkeep of roadways, greatly improving their strength, adaptability, and overall effectiveness. The use of polymers in road building mainly focuses on the alteration of bitumen (asphalt) and the creation of novel pavement materials. The roads are one of the best and most suitable modes of transport for every person in India, but in this highly populated country, there are several chances of road accidents that cause fatalities, injuries and property damage. To minimise the risk of road accidents, it is important to know the reasons, and road factors of the stretch where accidents are frequently happened and set the priority list to take the necessary actions in highly risky locations. In this paper, a detailed analysis of road accident data has been carried out for Panipat and Rohtak City, Haryana (India). The accident data accessed from the Haryana Police website have been analysed for the 5-year period spanning 2018-2022, and then based on this data identification & representation by Arcmap10.8 of accident-prone locations, blackspots and predict the impact of Population & Land use pattern by using neural network approach has been done for the selected study area.
Keywords: Road accidents; Polymer Modified Asphalt; Full-Depth Reclamation; Geosynthetics; Land use pattern
[This article belongs to Special Issue under section in Journal of Polymer and Composites (jopc)]
Arti Chouksey, Khushboo Puri, Aman Ahlawat, Manvendra Verma. Impact of Polymer Chemistry on Population and Land Use Pattern to Identify Black Spot. Journal of Polymer and Composites. 2024; 13(01):540-548.
Arti Chouksey, Khushboo Puri, Aman Ahlawat, Manvendra Verma. Impact of Polymer Chemistry on Population and Land Use Pattern to Identify Black Spot. Journal of Polymer and Composites. 2024; 13(01):540-548. Available from: https://journals.stmjournals.com/jopc/article=2024/view=190167
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Journal of Polymer and Composites
Volume | 13 |
Special Issue | 01 |
Received | 23/04/2024 |
Accepted | 09/08/2024 |
Published | 18/12/2024 |
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