Crowd Models for Last Mile Delivery in an Emerging Economy
Abstract
:1. Introduction
“an information connectivity enabled marketplace concept that matches supply and demand for logistics services with an undefined and external crowd that has free capacity with regards to time and/or space, participates on a voluntary basis, and is compensated accordingly”
2. Background and Literature Review
2.1. Last Mile Delivery (LMD)
2.2. Challenges with LMD
2.3. The Context of Emerging Economies
3. Methodology and Research Design
3.1. Research Context
3.2. Sample
- Institutional: decision makers in transportation and other authorities
- Industrial: application owners and employees, retailers’ owners and employees, and Logistics Service Providers’ employees
- Individual: customers and drivers/crowd.
3.3. Data Collection
3.4. Data Analysis
4. Results
4.1. Business-to-Business Contract Model
4.2. Business-to-Customers Model
“We are a mediator between restaurants and customers.”BS (Application Owner)
4.3. Customer-to-Customer Model
“We realized that there is a problem people face in their daily life. People need items from shops that do not deliver, so we thought why don’t we have a solution that delivers anything from anywhere? So this application simply links someone who offers a delivery service with someone who needs that delivery service.”LA (Application Owner)
“I receive an order in my account and I post the price that I see as being reasonable for me. If the customer agrees on it, I start delivering. Sometimes the CLD provider takes a third of the delivery fees and sometimes they take 25%.”IND (Driver)
4.4. Comparison of the Models
4.5. How do CLD Business Models Help in LMD Issues?
4.5.1. Delivery Address Issues
4.5.2. Sharing Location and Real-Time Tracking
“We have in … (name of the company) full tracking of packages, from when they enter the country until they get to the final customer. The packages go through many moving phases. In each phase we know who is carrying it, I know which employee checks it, and who takes it.”WF (Local LSP Manager)
“Tracking, tracking, tracking. Knowing the estimated delivery time gives CLD the edge over the traditional delivery methods, in my opinion.”HG (Customer)
4.5.3. Speed of Delivery
“We studied the market, and we found that the average delivery time the LSP courier takes to deliver a package from e-commerce is 2-4 days. Keep in mind, four days for a product that is ready in the warehouse, which does not make sense as if you call domino’s pizza today, for example, and order a pizza, they will make it from scratch and deliver it within 40 minutes. Why should a final product in a local warehouse like an iPhone take up to 4 days to be delivered? What happens is that the final product arrives at the warehouse and they wait until they get more orders to the same zone before they deliver it, which is basically optimization and reducing cost for them. Let us say they have 1,000 items and 10 drivers; each driver takes 100 items to deliver to his zone, which will take days. Why not having 1,000 drivers who will get all items delivered in an hour. Who can do this? Crowd Logistics.”HD (Application Owner)
“We adopted the CLD model recently, for the locals who can drive using their own vehicles. We pay them per parcel. Different payments based on the season; in the high season, we pay more. We started less than a year ago. It was very successful, above our expectations.”RA (Int. LSP Regional Manager)
“Demand is very high, so we need this kind of solution to expand our capacity. The good thing is that CLD relies on a large number of people so if someone does not turn up, there are always replacements.”RA (Int. LSP regional Manager)
“We believe CLD reduces the operation headache, reduces it big time. Like we have here in … (name of the company) 200 drivers in the Kingdom and we have huge growth, which needs right now 800 drivers. With those 200 we need also to hire supervisors for them and then we hire a manager, and we will need more cars, insurance, salaries, system, so we get into an operation headache circle that is not easy. So, we can avoid all of this and hire third party …, …, …, and … (CLD companies) so we minimize costs. The idea we are thinking of is to build an application something like … (name of a CLD company) in a small version for us for those who want to work part-time.”WF (Local LSP Manager)
4.5.4. Drop-Off Flexibility vs. Unattended Home Delivery and Returns
“We distribute drivers based on geographical areas. If the customer asks us to deliver it to a different address in a different area than the originally provided one, it will be assigned to a different driver who is in charge of delivering in that area, on another day, or the customer will have to pick it up from the branch.”RA (Int. LSP regional manager)
4.5.5. Cultural Factors That Impact on CLD
5. Discussion
5.1. The CLD Business Models in Saudi Arabia
5.2. Advantages for the Stakeholders Provided by CLD
5.2.1. Economic Benefits
5.2.2. Social Benefits
5.2.3. Environmental Benefits
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A. List of Interviewees
Interviewees’ Shareholder Group | Interviewees’ Position | Interviewees’ Abbreviations | Business Model the Stakeholder Belongs to |
---|---|---|---|
Industrial | Application owner | HD | B2B |
Industrial | Application owner | BS | B2C |
Industrial | Application owner | LA | C2C |
Industrial | Application owner | FE | B2C |
Industrial | Local LSP manager | WF | B2B |
Industrial | Int. LSP regional manager | RA | B2B |
Industrial | Local LSP vice president | DMJ | B2B |
Industrial | Restaurant owner | YL | B2C |
Industrial | Restaurant owner | TF | B2C |
Institutional | Decision maker address infrastructure | ZH | B2B, B2C, C2C |
Institutional | High level decision maker in regulations and laws | ZF | B2B, B2C, C2C |
Institutional | High level decision maker in Public Transport Authority | SR | B2B, B2C, C2C |
Institutional | High level decision maker in strategies and planning | IJ | B2B, B2C, C2C |
Institutional | High level decision maker in national address | SB | B2B, B2C, C2C |
Individual | Driver | MHS | B2B (B2) |
Individual | Driver | ATS | B2C |
Individual | Driver | ZIY | B2C |
Individual | Driver | IND | C2C |
Individual | Driver | ASL | C2C |
Individual | Driver | MHF | C2C |
Individual | Driver | BGT | C2C |
Individual | Driver | QH | B2C |
Individual | Driver | YSA | B2B (B2) |
Individual | Customer | ABS | C2C |
Individual | Customer | HG | C2C |
Individual | Customer | MAL | B2C, C2C |
Individual | Customer | DGN | B2C |
Individual | Customer | SMN | B2C |
Individual | Customer | RAJ | C2C |
Individual | Customer | ADL | C2C |
Individual | Customer | UF2 | B2C, C2C |
Individual | Customer | FMG | B2C |
Individual | Customer | QR | B2C |
Individual | Customer | NW | B2C |
Individual | Customer | KM | C2C |
Individual | Customer | UF1 | C2C |
Individual | Customer | ED | C2C |
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Environmental | Social | Economic | |||
---|---|---|---|---|---|
1. | Reduction in traffic congestion | 4. | Private interactions | 6. | Greater variety of goods |
2. | Reduction in traffic emissions | 5. | Supporting community | 7. | Faster delivery |
3. | Reduction in CO2 | 8. | More flexibility | ||
9. | More convenient | ||||
10. | Better priced | ||||
11. | More personal | ||||
12. | Less missed deliveries |
Environmental | Social | Economic | |||
---|---|---|---|---|---|
1. | Reducing noise | 2. | Connecting individual providers and consumers | 7. | Access to adequate IT infrastructure |
3. | Voluntary character | 8. | Attractive revenue model | ||
4. | Tracking transparency | 9. | Strategy of cooperation | ||
5. | Simplicity and trust | ||||
6. | Indicating country specifics and ethics in business model |
B2B-Contract | B2C | C2C | |
---|---|---|---|
Stakeholder who organizes the LMD: | E-commerce company contracts with CLD provider to organize LMD tasks. | App organizes the LMD for the customer by automatically selecting the drivers based on location | The customer organizes the LMD through the app by selecting the suitable driver for the LMD task |
Focus | B1 | B2 |
---|---|---|
Products flow path | From warehouses to the end consumers | From warehouses to the end consumers |
Assigning drivers | Based on driver’s availability Notification given | Based on driver’s availability No notification |
Assigning items for drivers | Automated assigning | Drivers’ preferences, scan items on way out |
Customers’ role | Contact e-commerce/LSP company if issues arise | Contact e-commerce/LSPs company if issues arise |
Direct and definitive stakeholders to CLD | Application owners, E-commerce companies, LSPs companies, and drivers | Application owners, E-commerce companies, LSPs companies, and drivers |
Registration | Physically come and attend two-hour training session | Physically come and sign. No training required. |
2500 SR deposit | No deposit required, but agree to pay up to 100,000 SR in cases of non-delivery, damage, or loss | |
Older car models allowed | Not mentioned | |
Revenue Model: Application owners | Percentage of number of items assigned from e-commerce/LSPs | Percentage of number of items assigned from e-commerce/LSPs |
High transaction level needed | High transaction level needed | |
Payment method for drivers | Distance-based | Fixed-Price |
Aspect | B2B-Contract | B2C | C2C |
---|---|---|---|
Product flow path | Warehouse to customer’s place | Retailers to customer’s place | Any place to any place |
Registrations for drivers | Attendance required | Online | Online |
Payment method to the drivers | Distance-based | Distance-based | Bidding-based |
Fixed price | |||
Products generator | E-commerce companies | Retailers | Any |
LSPs | |||
Type of agreement | Contract-based | Contract-based | No contract (Matching individuals) |
Assigning drivers | Availability | Proximity and availability | Best offer/bid |
Direct stakeholder involvement | E-commerce company | Retailer Driver | Driver |
LSP | Customer | Customer | |
Driver | |||
Communication method | Calling on the way and upon arrival | Notification upon arrival/calling customers services | Chatting through application |
CLD Implementation | International | Saudi Context | Difference |
---|---|---|---|
B2B Contract | Amazon flex; Myways DHL (Europe—no longer active). | Company A | Registration method (attendance required); Payment method (fixed rate for drivers, customers not involved); Direct stakeholder involvement (e-commerce provider, LSP); Communication (calling on the way and upon arrival). |
B2C | Deliveroo; UberEat; Trunkrs [7]. | Company B | Communication method (calling customer services); Payment method (cash on delivery). |
C2C | None | Company C |
LMD-Related Benefits | Individual: Customers & Drivers | Industrial: Application Owners, Retailers, and LSPs | Institutional: Local Authorities and Decision Makers |
---|---|---|---|
Solved Address issues | Benefited customers and driver stakeholders in many ways, such as complexity and communication issues: cost and language barriers | More efficient deliveries, higher number of deliveries, easier way to locate destination, delay, and repeated visit | Less complex address and improves the social aspect. |
Sharing location and Real-time tracking | More transparency and less leading time for customers and faster to reach destination for drivers, and gained customers’ trust. | Increases efficiency as well as service quality, allows easier accessibility to remote and rural areas | |
Speed of delivery | Faster receiving for customers and more deliveries and income for drivers | More deliveries and high turn-over, lower inventory cost | |
Drop-off flexibility | Solves the unattended home delivery issue for both customers and drivers | More flexibility that overcomes the geographical limitation and unattended home issues. More deliveries and high turn-over, lower inventory cost, less reverse logistics |
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Alharbi, A.; Cantarelli, C.; Brint, A. Crowd Models for Last Mile Delivery in an Emerging Economy. Sustainability 2022, 14, 1401. https://doi.org/10.3390/su14031401
Alharbi A, Cantarelli C, Brint A. Crowd Models for Last Mile Delivery in an Emerging Economy. Sustainability. 2022; 14(3):1401. https://doi.org/10.3390/su14031401
Chicago/Turabian StyleAlharbi, Ahmad, Chantal Cantarelli, and Andrew Brint. 2022. "Crowd Models for Last Mile Delivery in an Emerging Economy" Sustainability 14, no. 3: 1401. https://doi.org/10.3390/su14031401