Energy Consumption Prediction of Electric City Buses Using Multiple Linear Regression
Abstract
:1. Introduction
State of the Art
- Most studies investigate only a few inputs, which are mainly focused on kinematic parameters or features that standard vehicles in many cases are not equipped to measure by themselves, such as the road slope or the location of bus stops. Characterizing speed profiles including, e.g., frequency and time domain reveals hidden and valuable information leading to higher prediction accuracy and generalization in the end.
- Often operational features such as route or trip length are considered. Explicitly, these are heavily dependent on the target scenario and vary from case to case, making them non-generally meaningful.
- Most data-driven studies typically use support vector machines or neural networks and do not consider statistical methods. Consequently, the models are comparably complex and of high computational costs, and extra caution has to be paid during training. As statistical methods are just a set of parameterized functions, they are likewise precise, robust and of low complexity at the same time and can be readily used in vehicle applications straight away.
- The database in almost all studies comes from a single vehicle or single route. Whole fleet data on the other side covers many vehicles, several routes and various drivers, capturing a huge number of different traffic situations and driving styles.
2. Materials and Methods
2.1. Data Collection and Pre-Processing
Energy Consumption Model
2.2. Segmentation into Microtrips
2.3. Feature Extraction
2.4. Prediction Model
3. Experiments
3.1. MLR Development
3.2. Prediction Results
4. Discussion
5. Conclusions
- Reliable and affordable public transportation;
- Improved quality of inner-city climate;
- Overall resource effectiveness and sustainability.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Feature Name | Symbol | Unit |
---|---|---|
Maximum Speed | Max | km/h |
Mean Speed | Mean | km/h |
Median Speed | Median | km/h |
25th Percentile | Q25 | km/h |
75th Percentile | Q75 | km/h |
Inter Quartile Range | IQR | km/h |
Standstill | v0 | % |
Percentage of time in which km/h | v5_15 | % |
Percentage of time in which km/h | v15_30 | % |
Percentage of time in which km/h | v30_40 | % |
Percentage of time in which km/h | v40 | % |
Standard Deviation | StDev | km/h |
Variance | vvariance | |
Mean Absolute Deviation | MAD | km/h |
Skewness | vskewness | - |
Kurtosis | vkurtosis | - |
Crest | vcrest | |
Clearance | vclearance | |
Shape | vshape | |
Impulse | vimpulse | |
Sqrt. Amplitude | ||
Abs. Amplitude | ||
Spectral Entropy | ventropy | - |
Velocity Oscillation | vfreq | - |
Number of Acceleration Shifts | nracc_shifts | - |
Spectral Kurtosis | MeanSpecKurt | - |
Percentage Constant Drive | accperc_const | % |
Mean acceleration constant drive | accconst_mean | m/s2 |
Percentage Accelerating | accperc_acc | % |
Mean acceleration | accpos_mean | m/s2 |
Percentage Decelerating | accperc_dec | % |
Mean deceleration | accneg_mean | m/s2 |
Relative Positive Acceleration | RPA | m/s2 |
Relative Negative Acceleration | RNA | m/s2 |
1 Average | MeanVA | m2/s3 |
1 Percentage of time m2/s3 | va0 | % |
1 Percentage of time when m2/s3 | va0_3 | % |
1 Percentage of time when m2/s3 | va3_6 | % |
1 Percentage of time when m2/s3 | va6 | % |
Total Mass (curb weight plus passengers) | mtotal | kg |
SumSq | DF | MeanSq | F | p-Value | |
---|---|---|---|---|---|
Total | 7654.5 | 15220 | 0.50292 | ||
Model | 6469.9 | 40 | 174.86 | 2241.3 | 0 |
Residual | 1184.6 | 15180 | 0.07802 |
MLR | Training | Test |
---|---|---|
r2 | 0.83 | 0.85 |
RMSE | 0.35 | 0.27 |
MSE | 0.12 | 0.07 |
MAE | 0.18 | 0.18 |
MLR | Mean Error | Std. Error | IQR | Overprediction |
---|---|---|---|---|
0.0015 | 0.27 | 0.27 | - |
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Sennefelder, R.M.; Martín-Clemente, R.; González-Carvajal, R. Energy Consumption Prediction of Electric City Buses Using Multiple Linear Regression. Energies 2023, 16, 4365. https://doi.org/10.3390/en16114365
Sennefelder RM, Martín-Clemente R, González-Carvajal R. Energy Consumption Prediction of Electric City Buses Using Multiple Linear Regression. Energies. 2023; 16(11):4365. https://doi.org/10.3390/en16114365
Chicago/Turabian StyleSennefelder, Roman Michael, Rubén Martín-Clemente, and Ramón González-Carvajal. 2023. "Energy Consumption Prediction of Electric City Buses Using Multiple Linear Regression" Energies 16, no. 11: 4365. https://doi.org/10.3390/en16114365
APA StyleSennefelder, R. M., Martín-Clemente, R., & González-Carvajal, R. (2023). Energy Consumption Prediction of Electric City Buses Using Multiple Linear Regression. Energies, 16(11), 4365. https://doi.org/10.3390/en16114365