Predicting and Analyzing Electric Bicycle Adoption to Enhance Urban Mobility in Belgrade Using ANN Models
Abstract
:1. Introduction
2. Related Work
2.1. What Does the Use of e-Bikes Depend On?
2.2. Which Models Should Be Used to Predict Mode Choices?
3. Materials and Methods
3.1. Development of a Multilayer Perceptron Model (MLP)
3.2. Development of the Radial Basis Function Model (RBF)
4. Research Methodology
4.1. Study Area Description
4.2. Sample and Data Collection
4.3. Data Preparation for ANN Model Development
- Socio-demographic and economic characteristics of respondents (5 attributes): gender, age, level of education, employment, and personal income;
- Trip characteristics (14 attributes): frequency of current use of modes of transport with the purpose of going to work/school/college (commuting trips) and for other travel purposes such as fun/recreation/shopping (trips with other purposes) and average mileage (in one direction) for both stated purposes of trip. The types of transportation that respondents could choose from are passenger cars, public transportation, motorcycles, bicycles, e-bikes, e-scooters, walking, and other types of transportation (taxi, carpool, etc.);
- Respondents’ views on the pollution of Belgrade by road traffic (2 attributes): views on the level of pollution from the aspect of pollutant emissions and noise level;
- Reasons for not using e-bikes (5 attributes): lack of infrastructure, insecurity when using electric bikes, price of electric bikes, unfavorable type of terrain, and (non)existence of parking for e-bikes.
4.4. Modeling Methodology
5. Research Results
5.1. Descriptive Statistics and the Application of the Chi-Square Test of Independence
5.2. Prediction Results of Multilayer Perceptron (MLP) and Radial Basis Function (RBF) Models
6. Discussion
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Authors | Classification Algorithm * | Data Sources | Transport Modes | Model Prediction Accuracy | Important Variables |
---|---|---|---|---|---|
Xie et al. [58] | DT, NN, MNL | n = 34,680 observations | Single-occupancy vehicle, | DT = 76.8%; NN = 78.2%; MNL = 72.9% | Socio-demographic and economic attributes, number of vehicles in the household and license ownership, service level attributes, and travel time and costs. |
Carpool, transit, bicycle, walk | DT = 86.0%; NN = 88.0%; MNL = 86.7% | ||||
Omrani et al. [66] | MLP, RBF, Bayes, DT, ENN, KNN, MNL, SVM | n = 3673 households | Private car, bus, train, cycling, walking | MLP = 80.12%; RBF = 81%; Bayes = 67%; DT = 78%; ENN = 83%; KNN = 77%; MNL = 62%; SVM = 79% | Costs, social and demographic variables, availability of transportation, and geographic information. |
Omrani et al. [59] | MLP, RBF, MLN, SVM | n = 3670 observations | Car, public transport, cycling, walking | MLP = 81.1%; RBF = 79.2%; MNL = 67.7%; SVM = 64.7% | Costs, places of work and residence, and social and demographic variables. |
Lee et al. [67] | BPN, RBF, PNN, CPN, MNL | n = 10,500 households | Walk, bike, transit | BPN = 79.4%; RBF = 78.4%; PNN = 82.9%; CPN = 83.3%; MNL = 70.5% | The cost of the car and transit cost were the sensitive variables, notably for MNL and BPN models. |
Assi et al. [69] | ELM, SVM, MLP | n = 2747 observations | Passenger car, walk | ELM = 97.30%; SVM = 89.53%; MLP = 98.99% | Family income, travel time, and parents’ education level. |
Komarica et al. [70] | BLR, MLP | n = 503 observations | Electric microvehicles | BLR = 84.7%; MLP = 85% | Attitudes about pollution, use of bicycles and motorcycles, mileage, and income. |
Tang et al. [71] | BPN, TAN | n = 2000 observations | Walk, bike, private car, bus | BPN = 72.2%; TAN = 75.4% | Traveler characteristic, household characteristic, and trip characteristic. |
Criterion | Multilayer Perceptron (MLP) | Radial Basis Function (RBF) |
---|---|---|
Network Structure | Multilayer and feedforward neural network | One hidden layer, radial basis function net |
Learning Approach | Gradient-based backpropagation algorithm | Competitive learning algorithm followed by least-squares regression |
Activation Function | Nonlinear functions like sigmoid, ReLU, tanh, etc. | Gaussian radial basis functions |
Training Speed | Slow to moderate | Fast |
Training Data | Requires a large amount of labeled data | Requires fewer labeled data |
Interpretability | Less interpretable than RBF | More interpretable than MLP |
Performance | Good for complex classification tasks | Good for simple to moderately complex tasks |
Overfitting | More prone to overfitting | Less prone to overfitting |
Advantages | Can learn complex, nonlinear relations | Fast training, good for simple tasks |
Disadvantages | Slow to train, requires more data | Less flexible, may underfit complex tasks |
Input Attributes for Developing MLP and RBF Models | ||
---|---|---|
Socio-Demographic and Economic Characteristics of Respondents (5 Attributes) | ||
Gender | Female; Male | |
Age | <18; 18–25; 26–35; 36–45; 46–55; 56–65; >65 | |
Education | Primary education; High school education; Higher education; Bachelor of Science degree; Master of Science degree; Doctor of Philosophy degree | |
Employment | Student; Unemployed; Occasionally employed; Permanently employed; Retiree | |
Monthly personal income | EUR <250; EUR 250–500; EUR 501–750; EUR 751–1000; EUR 1001–1250; EUR 1251–1500; EUR >1500 | |
Trip characteristics (14 attributes) | ||
Using a mode of transport with a purpose | Frequency | |
Commuting trips | Passenger car; Motorcycle; Public transport; Bicycle; Walking; Other modes of transport | Daily; Several times a week; Several times a month; Several times a year; Never |
Trips with other purposes | ||
Average mileage (in one direction) for commuting trips | <0.5 km; 0.5–2.5 km; 2.5–5.0 km; 5.0–8.0 km; 8.0–12 km; 12–20 km; 20–30 km; >30 km | |
Average mileage (in one direction) for trips with other purposes | ||
Respondents’ views on the pollution of Belgrade by road traffic (2 attributes) | ||
Pollution of Belgrade by pollutant emissions from road vehicles | 1—very large extent; 2—large extent; 3—medium extent; 4—small extent; 5—very small extent | |
Pollution of Belgrade by noise from road vehicles | ||
Reasons for not using e-bikes (5 attributes) | ||
Non-existent infrastructure; (No) safety during the trip for e-bicycle users; Price of e-bicycle; Unfavorable type of terrain; No existent parking spaces for e-bicycles | 1—the most important; 2—significant; 3—moderately significant; 4—less significant; 5—the least significant |
Sample Characteristics | n | % | Sample Characteristics | n | % |
---|---|---|---|---|---|
Gender | Education | ||||
Female | 350 | 51.5% | Primary education | 7 | 1% |
Male | 330 | 48.5% | High school education | 167 | 24.6% |
Age | Higher education | 96 | 14.1% | ||
<18 | 6 | 0.9% | Bachelor of Science degree | 271 | 39.9% |
18–25 | 232 | 34.1% | Master of Science degree | 125 | 18.4% |
26–35 | 146 | 21.5% | Doctor of Philosophy degree | 14 | 2.1% |
36–45 | 122 | 17.9% | Average monthly personal income | ||
46–55 | 121 | 17.8% | EUR <250 | 153 | 22.5% |
56–65 | 39 | 5.7% | EUR 250–500 | 65 | 9.6% |
>65 | 14 | 2.1% | EUR 501–750 | 191 | 28.1% |
Employment status | EUR 751–1000 | 163 | 24% | ||
Student | 157 | 23.1% | EUR 1001–1250 | 50 | 7.4% |
Unemployed | 21 | 3.2% | EUR 1251–1500 | 25 | 3.7% |
Occasionally employed | 95 | 14.0% | EUR >1500 | 33 | 4.9% |
Permanently employed | 386 | 56.8% | |||
Retiree | 21 | 3.1% |
Multilayer Perceptron (MLP) | Radial Basis Function (RBF) | ||||||
---|---|---|---|---|---|---|---|
Existing Values | Correctly Classified Instances (%) | Existing Values | Correctly Classified Instances (%) | ||||
Data Set | Estimated Values | I Would Accept | I Wouldn’t Accept | I Would Accept | I Wouldn’t Accept | ||
Training | I would accept | 278 | 9 | 96.9% | 272 | 15 | 94.8% |
I wouldn’t accept | 21 | 65 | 75.6% | 31 | 60 | 65.9% | |
Overall (%) | 80.2% | 19.8% | 92.0% | 80.2% | 19.8% | 87.8% | |
Testing | I would accept | 95 | 5 | 95.0% | 80 | 10 | 88.9% |
I wouldn’t accept | 9 | 15 | 62.5% | 12 | 11 | 47.8% | |
Overall (%) | 83.9% | 16.1% | 88.7% | 81.4% | 18.6% | 80.5% | |
Holdout | I would accept | 84 | 15 | 84.8% | 98 | 11 | 89.9% |
I wouldn’t accept | 14 | 16 | 53.3% | 17 | 9 | 34.6% | |
Overall (%) | 76.0% | 24.0% | 77.5% | 85.2% | 14.8% | 79.3% |
Model | Accuracy | FP Rate | Precision | Recall | F1 | MCC | ROC | Class |
---|---|---|---|---|---|---|---|---|
Multilayer Perceptron (MLP) | 0.887 | 0.375 | 0.913 | 0.950 | 0.931 | 0.618 | 0.927 | I would accept |
0.887 | 0.050 | 0.750 | 0.625 | 0.682 | 0.618 | 0.927 | I wouldn’t accept | |
0.887 | 0.213 | 0.832 | 0.788 | 0.807 | 0.618 | 0.927 | Avg. | |
Radial Basis Function (RBF) | 0.805 | 0.522 | 0.870 | 0.889 | 0.879 | 0.380 | 0.897 | I would accept |
0.805 | 0.111 | 0.524 | 0.478 | 0.500 | 0.380 | 0.897 | I wouldn’t accept | |
0.805 | 0.316 | 0.697 | 0.684 | 0.690 | 0.380 | 0.897 | Avg. |
Variables | Importance | Normalized Importance |
---|---|---|
Mileage when commuting | 0.064 | 100.0% |
Frequency of motorcycle for commuting trips | 0.062 | 97.0% |
Frequency of motorcycles for trips with other purposes | 0.054 | 85.3% |
Mileage for trips with other purposes | 0.053 | 83.2% |
Pollution of Belgrade by pollutant emissions from road vehicles | 0.047 | 73.8% |
Age | 0.046 | 72.6% |
Education | 0.046 | 71.7% |
Frequency of other modes of transport for commuting trips | 0.045 | 71.0% |
Unfavorable type of terrain | 0.045 | 70.6% |
(No) safety during the trip for e-bicycle users | 0.044 | 69.5% |
Frequency of bicycle for commuting trips | 0.042 | 65.1% |
Price of e-bicycle | 0.039 | 60.7% |
Monthly personal income | 0.038 | 58.8% |
Frequency of walking for trips with other purposes | 0.037 | 57.7% |
Frequency of bicycle for trips for other purposes | 0.034 | 53.5% |
Pollution of Belgrade by noise from road vehicles | 0.034 | 53.3% |
Frequency of use of other transport modes for trips with other purposes | 0.033 | 51.9% |
Frequency of public transport for commuting trips | 0.033 | 51.2% |
Frequency of passenger car use for trips with other purposes | 0.031 | 48.8% |
Employment | 0.029 | 45.5% |
Non-existent infrastructure | 0.028 | 44.2% |
Frequency of passenger car use for commuting trips | 0.027 | 42.6% |
Frequency of public transport for trips with other purposes | 0.026 | 41.2% |
No existent parking spaces for e-bicycles | 0.021 | 33.1% |
Gender | 0.021 | 32.6% |
Frequency of walking for commuting trips | 0.021 | 32.3% |
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Share and Cite
Komarica, J.; Glavić, D.; Kaplanović, S. Predicting and Analyzing Electric Bicycle Adoption to Enhance Urban Mobility in Belgrade Using ANN Models. Appl. Sci. 2024, 14, 8965. https://doi.org/10.3390/app14198965
Komarica J, Glavić D, Kaplanović S. Predicting and Analyzing Electric Bicycle Adoption to Enhance Urban Mobility in Belgrade Using ANN Models. Applied Sciences. 2024; 14(19):8965. https://doi.org/10.3390/app14198965
Chicago/Turabian StyleKomarica, Jelica, Draženko Glavić, and Snežana Kaplanović. 2024. "Predicting and Analyzing Electric Bicycle Adoption to Enhance Urban Mobility in Belgrade Using ANN Models" Applied Sciences 14, no. 19: 8965. https://doi.org/10.3390/app14198965
APA StyleKomarica, J., Glavić, D., & Kaplanović, S. (2024). Predicting and Analyzing Electric Bicycle Adoption to Enhance Urban Mobility in Belgrade Using ANN Models. Applied Sciences, 14(19), 8965. https://doi.org/10.3390/app14198965