Forecasting Methods for Road Accidents in the Case of Bucharest City †
Abstract
:1. Introduction
- Each year, road traffic accidents result in the deaths of approximately 1.19 million people;
- For individuals aged 5–29 years, road traffic injuries are the primary cause of death;
- Although low- and middle-income countries account for about 60% of the world’s vehicles, they experience 92% of the global road fatalities;
- Vulnerable road users, such as pedestrians, cyclists and motorcyclists, represent more than half of all road traffic deaths;
- The economic impact of road traffic crashes amounts to 3% of the gross domestic product in most countries;
- The United Nations General Assembly aims to reduce the global number of deaths and injuries from road traffic accidents by 50% by 2030 (A/RES/74/299).
2. Literature Background
- A country-level analysis indicated that the model could be effectively applied to most countries;
- Road safety is increasingly becoming a priority, occupying a prominent position on the agenda of both developed and developing nations.
3. Methodology
3.1. The Smeed Law
3.2. The Corrected Smeed Law
3.3. The Andreassen Law
4. Case Study: Bucharest City
5. Conclusions
- Romania has not made significant progress in utilizing technology in the field of road traffic or in modernizing the road infrastructure. This could contribute to maintaining an old vehicle fleet and poor traffic management in cities, including Bucharest.
- The vehicle fleet is old. Older vehicles may be less fuel-efficient and emit more pollutants, and the safety technologies may be less advanced. Additionally, these vehicles may require more maintenance and repairs, leading to a higher frequency of road incidents.
- The levels of road education among the population and adherence to traffic rules in Romania are not at the levels of other European countries. Poor road education can contribute to unsafe behaviors on roads and a higher frequency of road accidents.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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Year | Population 2 | Accidents 1 (Total) | Fatalities 1 | Seriously Injured 1 | Easily Injured 1 | Registered Vehicles 3 |
---|---|---|---|---|---|---|
2011 | 1,883,425 | 920 | 86 | 899 | 149 | 1131807 |
2012 | 1,886,866 | 960 | 79 | 946 | 248 | 1118125 |
2013 | 1,875,389 | 783 | 62 | 762 | 102 | 1131694 |
2014 | 1,865,563 | 614 | 61 | 583 | 91 | 1152796 |
2015 | 1,853,638 | 670 | 68 | 628 | 110 | 1193775 |
2016 | 1,843,962 | 480 | 66 | 441 | 87 | 1253692 |
2017 | 1,826,579 | 471 | 74 | 408 | 73 | 1320230 |
2018 | 1,828,869 | 569 | 58 | 521 | 109 | 1381620 |
2019 | 1,832,802 | 690 | 58 | 657 | 123 | 1457889 |
2020 | 1,841,052 | 535 | 52 | 498 | 58 | 1502169 |
2021 | 1,828,781 | 378 | 63 | 323 | 66 | 1535310 |
2022 | 1,722,865 | 441 | 47 | 415 | 69 | 1570965 |
2023 | 1,725,271 | 400 | 45 | 361 | 45 | 1598284 |
(a) Model Fit Measures | |||||||
Model | R | R2 | |||||
1 | 0.623 | 0.388 | |||||
(b) Model Coefficients—ln(D) | |||||||
95% Confidence Interval | |||||||
Predictor | Estimate | SE | t | p | Stand. Estimate | Lower | Upper |
Intercept | 56.84 | 19.960 | 2.85 | 0.016 | |||
ln(NP2) | −1.23 | 0.465 | −2.64 | 0.023 | −0.623 | −1.14 | −0.104 |
(a) Model Fit Measures | |||||||
Model | R | R2 | |||||
1 | 0.763 | 0.583 | |||||
(b) Model Coefficients—ln(D/P) | |||||||
95% Confidence Interval | |||||||
Predictor | Estimate | SE | t | p | Stand. Estimate | Lower | Upper |
Intercept | −9.51 | 0.202 | −47.01 | <0.001 | |||
N/P | −1.07 | 0.273 | −3.92 | 0.002 | −0.763 | −1.19 | −0.335 |
(a) Model Fit Measures | |||||||||||||||
Model | R | R2 | F | df1 | df2 | p | |||||||||
1 | 0.825 | 0.681 | 10.7 | 2 | 10 | 0.003 | |||||||||
(b) Model Coefficients—ln(D) | |||||||||||||||
95% Confidence Interval | 95% Confidence Interval | ||||||||||||||
Predictor | Estimate | SE | Lower | Upper | t | p | Stand. Estimate | Lower | Upper | ||||||
Intercept | −34.066 | 33.604 | −108.94 | 40.808 | −1.01 | 0.335 | |||||||||
ln(N) | −0.527 | 0.421 | −1.47 | 0.411 | −1.25 | 0.239 | −0.381 | −1.060 | 0.297 | ||||||
ln(P) | 3.164 | 1.984 | −1.26 | 7.585 | 1.59 | 0.142 | 0.485 | −0.193 | 1.164 |
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Oprea, C.; Rosca, E.; Preda, I.; Ilie, A.; Rosca, M.; Rusca, F. Forecasting Methods for Road Accidents in the Case of Bucharest City. Eng. Proc. 2024, 68, 3. https://doi.org/10.3390/engproc2024068003
Oprea C, Rosca E, Preda I, Ilie A, Rosca M, Rusca F. Forecasting Methods for Road Accidents in the Case of Bucharest City. Engineering Proceedings. 2024; 68(1):3. https://doi.org/10.3390/engproc2024068003
Chicago/Turabian StyleOprea, Cristina, Eugen Rosca, Ionuț Preda, Anamaria Ilie, Mircea Rosca, and Florin Rusca. 2024. "Forecasting Methods for Road Accidents in the Case of Bucharest City" Engineering Proceedings 68, no. 1: 3. https://doi.org/10.3390/engproc2024068003