| Literature DB >> 32485884 |
Dazhou Li1, Chuan Lin2, Wei Gao1, Zihui Meng1, Qi Song3.
Abstract
As a kind of transportation in a smart city, urban public bicycles have been adopted by major cities and bear the heavy responsibility of the "last mile" of urban public transportation. At present, the main problem of the urban public bicycle system is that it is difficult for users to rent a bike during peak h, and real-time monitoring cannot be solved adequately. Therefore, predicting the demand for bicycles in a certain period and performing redistribution in advance is of great significance for solving the lag of bicycle system scheduling with the help of IoT. Based on the HOSVD-LSTM prediction model, a prediction model of urban public bicycles based on the hybrid model is proposed by transforming the source data (multiple time series) into a high-order tensor time series. Furthermore, it uses the tensor decomposition technology (HOSVD decomposition) to extract new features (kernel tenor) from higher-order tensors. At the same time, these kernel tenors are directly used to train tensor LSTM models to obtain new kernel tenors. The inverse tensor decomposition and high-dimensional, multidimensional, and tensor dimensionality reduction were introduced. The new kernel tenor obtains the predicted value of the source sequence. Then the bicycle rental amount is predicted.Entities:
Keywords: IoTs; blocking; high order singular value decomposition (HOSVD); long short-term memory (LSTM); meteorological; public bicycle system; smart city
Year: 2020 PMID: 32485884 PMCID: PMC7309029 DOI: 10.3390/s20113072
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1The stations in the geographic coordinates.
Block number and site ID number.
| Block Number | Site ID Number |
|---|---|
| 1 | 3430 3094 3089 3086 3084 3083 3081 3076 3074 |
| 2 | 3429 3417 3415 3413 467 416 353 298 274 243 241 83 |
| 3 | 3224 434 405 358 346 284 247 238 225 212 |
| 4 | 3182 3036 |
| 5 | 3427 3263 3260 3244 383 382 380 369 368 357 348 |
| 6 | 336 335 303 280 254 253 252 229 161 151 128 |
| 7 | 3423 3310 3306 3300 |
| 8 | 3254 2008 534 427 415 376 360 351 337 315 304 264 260 259 195 |
The symbols used in the proposed method.
| Symbol | Meaning of Symbolic Representation |
|---|---|
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| whole public bicycle trip data of all bike-sharing stations in the city, |
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| number of the bike-sharing stations |
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| the period of the public bicycle trip data |
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| range of the public bicycle trip data |
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| kernel tensor |
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| a series of factor submatrixes from the HOSVD decomposition method, |
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| a low-rank tensor |
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| |
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| |
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| the module- |
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| a multiplier variable |
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| |
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| results of singular value decomposition |
Higher-Order Singular Value Decomposition (HOSVD) algorithm detailed process description.
| Initialization: |
| Step 1: Calculate |
| Step 2: For |
| Step 3: Calculation parameter |
| Step 4: Determine the convergence condition |
Figure 2(a) Comparison chart of the predicted value and actual value of public bicycle rental in station Block 7. (b) Absolute value of error between the predicted value and actual value in the station Block 7.
Figure 3(a) Comparison chart of the predicted value and actual value of public bicycle rental in station Block 8. (b) Absolute value of error between the predicted value and actual value in the station Block 8.
Figure 4(a) Comparison of predicted value and actual value of public bicycle rental in the whole city. (b) The absolute value of error between the predicted value and actual value in the whole city.
Paired sample statics.
| Mean | N | Standard Deviation | the Standard Error of the Mean | |
|---|---|---|---|---|
| Block 7 reality | 60.72 | 240 | 68.753 | 4.447 |
| Block 7 prediction | 62.52 | 240 | 67.755 | 4.383 |
| Block 8 reality | 25.65 | 240 | 25.520 | 1.647 |
| Block 8 prediction | 27.55 | 240 | 26.789 | 1.729 |
Correlation coefficients of the paired sample.
| N | Correlation Coefficient | Sig | |
|---|---|---|---|
| Block 7 reality vs prediction | 240 | 0.956 | 0.000 |
| Block 8 reality vs prediction | 240 | 0.929 | 0.000 |
Test of the paired sample.
| Block Seven Reality vs. Prediction | Block Eight Reality vs. Prediction | |
|---|---|---|
| 95% confidence upper | −3.695 | −2.980 |
| 95% confidence lower | 0.097 | −0.829 |
| t | −1.869 | −3.488 |
| degrees of freedom | 239 | 239 |
| Sig (both sides) | 0.063 | 0.001 |
The error of rental.
| RMLSE | ER | |
|---|---|---|
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| 0.276 | 0.270 |
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| 0.320 | 0.322 |
Comparison with existing methods.
| RMLSE | ER | |
|---|---|---|
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| 0.395 | 0.401 |
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| 3.946 | 3.024 |
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| 1.854 | 1.252 |
Figure 5The processing flow of prediction in a real scenario with real data.