Model for Crowdsourced Parcel Delivery Embedded into Mobility as a Service Based on Autonomous Electric Vehicles
Abstract
:1. Introduction
- What is this combined service and how it works?
- What information system and functions are proposed?
- What information management processes are elaborated for operation?
- Why this service benefit to energy management?
2. Literature Review
3. Service Concept
- Fresh products contain but not limited at: (hot) food/drink; material for cooking: vegetables, fruit, seafood, meat, etc.; significant document or letter; gift sending purpose: flowers, etc.; medicine, supermarket/grocery ordering, etc.
- General small sized parcel considering vehicle capacity, delivery requirement is within half or one day. Products in category A are also appropriate if no instant time limitation.
- Ud: deliverer. The users of vehicle sharing service, who accept the parcel delivery task on their travel route.
- Ur: receiver. The users of parcel delivery service, who accept the embedded delivery.
- M: MaaS operator. AV fleet operator is proposed to execute this role. The major task of M is service management and fleet operation.
- D: delivery service operator. Operate the traditional delivery service. The demand of crowdsourced delivery is shared and interoperated with M.
- P: parking lot operator.
- C: charging station operator.
- Vehicle with tasks: a. embedded service, b. only passenger transport, c. only parcel delivery,
- Charging, (and parking),
- Parking in short time to wait for very next task assignment,
- Return with empty run.
4. Information System Architecture
- −
- AV: autonomous vehicle (driverless).
5. Functional Model
6. Matching Condition and Estimated Energy Saving per Delivery
6.1. Matching Condition
6.2. Energy Consumption Calculation of Scenarios
- Base data input, e.g., ffc/100, eT/W, gT/W.
- Generate random distance for L1, L2, L3. Range of each is from 1 to 10 km.
- Calculate fuel consumption of cases in each scenario.
- Convert to standardized fuel consumption and CO2 equivalents.
- Calculate the ratio (percentage) and mode values.
- Record results in percentage.
7. Discussion and Conclusions
- Deliverers have to touch parcels.
- In ‘share-a-taxi’ model, the taxi driver has to handle both the passenger and parcel. The passenger can refuse to deliver parcel.
- Parcel security is enhanced by the separated cabin.
- The joint of two services: one service user is another service server.
- Driver related problems are eliminated. Except waiting time window, the journey of passenger transit is not interrupted.
- An information system is proposed to track the delivery process.
- The concept of service,
- The information system architecture model,
- The functional model,
- The matching conditions and energy consumption calculation per parcel delivery.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Defined Problem | Methodology | Focus | |
---|---|---|---|
[3] | Movement of passengers and goods are mixed on the same network. | Mathematical modelling, simulation, (periodic–optimization approach) | Planning and operating a shared PRT–FRT (personal–freight rapid transit) mode in shared networks |
[4] | To use the underused assets in people-based systems to transport goods, stochastic optimization problem. | Approximation method, neighborhood search algorithm | The optimization problem has been formulated as a pickup and delivery problem with time windows, with scheduled lines and stochastic passenger demand. |
[7] | Neighborhood delivery | Simulation, delivery and population density data, circle packing | The crowd to collect and deliver parcels using neighbors |
[8] | Delivery-as-a-service, scheduling of Online-to-Offline parcels | Mixed-integer programming, hybrid neighborhood search strategy (tabu search) | Paired pickup and delivery problem with time window, pickup-first–delivery-second |
[9] | A review of available platforms and literatures | Method of classification and comparison | The current practices and literatures are summarized |
[10] | A grocery model with delivery time window limitation | Simulation method, case study | To illustrate the potential advantages of proposed concept by comparing results of scenarios |
[29] | Truck routes and schedule, simultaneous pickup and delivery problem | A mixed integer non-linear program, a tabu search based algorithm | Cyclists and pedestrians are as crowdsources who are willing to deliver parcels with truck carriers |
[30] | A realistic crowdsourced parcel delivery problem | Function approximation, artificial neural network, liner programming | Maximize profitability to manage orders and improve efficiency |
Aspects | Vehicle Sharing | Small Group Seat Sharing |
---|---|---|
Vehicle size | small | medium |
Capacity limit | individual, maximum 2 | 2–6 |
Separated parcel cabin | yes | no |
Embedded delivery service | yes | no |
Priority | embedded delivery | passenger transit |
Only parcel delivery (compensate empty run) | peak-off + redistribution | peak off + redistribution |
Affect passenger transit | yes | no |
Walking distance to access vehicle | no | yes |
Triangle Cooperation in Tasks: Information Process | |||
---|---|---|---|
Ud–D–M | Offered delivery opportunity | D–M–AV | Delivery vehicle management |
M–AV–Ur | Receiver–vehicle match | AV–Ur–Ud | Users–vehicle match |
Ur–Ud–D | Service request match | Ud–D–AV | Deliverer–vehicle notification |
D–M–Ur | Delivery request response | M–AV–Ud | Deliverer–vehicle match |
AV–Ur–D | Receiver–vehicle notification | Ur–Ud–M | Service match and notification |
Quadrilateral Cooperation in Tasks: Physical Process | |||
Ud–D–M–AV | Deliverer carries parcel on | D–M–AV–Ur | Receiver picks parcel off |
M–AV–Ur–Ud | Pick off confirmation to M | AV–Ur–Ud–D | Pick off confirmation to D |
Ur–Ud–D–M | Parcel service ending | Ur–Ud–D–M–AV | Ideal system optimum circulation |
F1. Demand Announcement | F2. Vehicle Checking 1 | F3. Assignment | F4. Booking |
F5. Routing | F6. Vehicle checking 2 | F7. Identification | F8. Monitoring |
F9. Feedback handling | F10. Payment | F11. Redistribution | F12. Maintenance |
Data Group | Static Data (s) | Semi-Dynamic Data (sd) | Dynamic Data (d) |
---|---|---|---|
User (U): Deliverer (Ud), Receiver (Ur) | account data customization setting | service data preferences payment feedback | position (GPS) identification current reservation |
Vehicle (V) | base data of vehicle battery capacity | service data maintenance | state of charge position (GPS) identification |
Charging station (C) | data of charging point data of charging station | point reservation maintenance | current reservation |
Parking lot (P) | data of parking space data of parking lot | space reservation maintenance | current reservation |
Network (N) | nodes, lines, interchange, etc. vehicles geographic, topology data of route | route recommendation | GPS of vehicle traffic signal route situation traffic, delay, congestion |
MaaS operator (M) | fleet data (e.g. number of vehicles, vehicle type, condition) historical records maintenance data | service coordination schedule of public transport reservation payment split and transfer service package | current coordination price data redistribution estimated time payment state feedback handling |
Parcel delivery operator (O) | base data of parcels (e.g. size, goods type, time limitation) | service data feedback | assignment GPS of parcel identification |
Meaning | Unit | |
---|---|---|
Fec | Energy consumption | L or kwh |
ffc/100km | Fuel consumption per hundred kilometer | L/100 km or kwh/100 km |
L | Travel distance: length of route | km |
T | TTW, tank-to-wheel. Direct consumption and emission from vehicle operation. | |
W | WTW, well-to-wheel. Consumption from energy generation and vehicle operation. | |
ET/W | Standardized energy consumption (tank-to-wheel or well-to-wheel) | MJ |
GT/W | CO2 equivalence (tank-to-wheel or well-to-wheel) | kg |
eT/W | Covert factor of standardized energy consumption | MJ/L or MJ/kwh |
gT/W | Covert factor of CO2 equivalence | kg/L or kg/kwh |
wi | Weight of parcel i | kg |
W | Weight of vehicle | t or kg |
n | Number of parcels delivered per delivery | |
cv | Conventional vehicle (petrol or diesel powered) | |
Ed | Electric delivery vehicle (small size) | |
AEV/EV | Electric vehicles or autonomous electric vehicles |
Fuel Type | Standardized Energy Consumption | CO2 Equivalents | ||
---|---|---|---|---|
eT | eW | gT | gW | |
MJ/L | kg (CO2e)/L | |||
Petrol | 32.2 | 37.7 | 2.42 | 2.88 |
Diesel | 35.9 | 42.7 | 2.67 | 3.24 |
MJ/kwh | kg (CO2e)/kwh | |||
Electricity (c) | 3.6 | 10.2 | 0 | 0.424 |
Type | Weight | Fuel Consumption | Petrol | Diesel | Electricity |
---|---|---|---|---|---|
conventional vehicle (cv) | 1.5 t | L/100 km | 6 | 4.5 | |
AEV/EV | 1.2 t | kwh/100 km | 16 | ||
Electric delivery vehicle (Ed) | 0.35 t | kwh/100 km | 3.3 |
Scenario 1 | ||||||||||
---|---|---|---|---|---|---|---|---|---|---|
Fuel | eT (MJ) | Sum | gT (kg) (CO2e) | Sum | eW (MJ) | Sum | gW (kg) (CO2e) | Sum | ||
Case 1 | cv | petrol | 46.368 | 46.962 | 3.485 | 3.485 | 54.288 | 55.971 | 4.147 | 4.399 |
diesel | 38.772 | 39.366 | 2.884 | 2.884 | 46.116 | 47.799 | 3.499 | 3.751 | ||
Ed | electricity | 0.594 | - | 0 | 0 | 1.683 | - | 0.252 | - | |
Case 2 | AEV | electricity | 13.824 | 13.824 | 0 | 0 | 39.168 | 39.168 | 1.628 | 1.628 |
Scenario 2 | ||||||||||
Case 1 | EV | electricity | 13.824 | 14.418 | 0 | 0 | 39.168 | 40.851 | 1.628 | 1.880 |
Ed | electricity | 0.594 | - | 0 | 0 | 1.683 | - | 0.252 | - | |
Case 2 | AEV | electricity | 13.824 | 13.824 | 0 | 0 | 39.168 | 39.168 | 1.628 | 1.628 |
Per Parcel Delivery | Energy Saving (MJ) | CO2e Decrease (kg) | |||
---|---|---|---|---|---|
Compared Fuel | eT | eW | gT | gW | |
Scenario 1: case 1 compare with case 2 | petrol and electricity | 33.138 | 16.803 | 3.485 | 2.771 |
diesel and electricity | 25.542 | 8.631 | 2.884 | 2.123 | |
Scenario 2: case 1 compare with case 2 | electricity | 0.594 | 1.683 | 0 | 0.252 |
Scenario 1 case 1 compare with Scenario 2 case 1 | petrol and electricity | 32.544 | 15.12 | 3.485 | 2.519 |
diesel and electricity | 24.948 | 6.948 | 2.884 | 1.871 |
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He, Y.; Csiszár, C. Model for Crowdsourced Parcel Delivery Embedded into Mobility as a Service Based on Autonomous Electric Vehicles. Energies 2021, 14, 3042. https://doi.org/10.3390/en14113042
He Y, Csiszár C. Model for Crowdsourced Parcel Delivery Embedded into Mobility as a Service Based on Autonomous Electric Vehicles. Energies. 2021; 14(11):3042. https://doi.org/10.3390/en14113042
Chicago/Turabian StyleHe, Yinying, and Csaba Csiszár. 2021. "Model for Crowdsourced Parcel Delivery Embedded into Mobility as a Service Based on Autonomous Electric Vehicles" Energies 14, no. 11: 3042. https://doi.org/10.3390/en14113042
APA StyleHe, Y., & Csiszár, C. (2021). Model for Crowdsourced Parcel Delivery Embedded into Mobility as a Service Based on Autonomous Electric Vehicles. Energies, 14(11), 3042. https://doi.org/10.3390/en14113042