The Capacity Decision-Making of Omnichannel Catering Firms Based on Queueing System Considering Customer Reference Behavior
Abstract
:1. Introduction
2. Literature Review
3. Channel Information Is Unavailable
3.1. Optimal Decision
3.2. Sensitivity Analysis
- (1)
- and . Then the omnichannel catering firm’s profit increases with the increase in and .
- (2)
- and . The firm’s profit increases with the increase in , but decreases with the increase in .
- (3)
- , and . The firm’s profit decreases with the increase in , but increases with the increase in in .
- (4)
- and . The firm’s profit will not only decrease with the increase in , but also increase with the increase in .
4. Channel Information Is Available
4.1. Optimal Decision
4.2. Sensitivity Analysis
4.3. Comparison of Different Situations
5. Numerical Analysis
5.1. Analysis of Offline Customers
5.2. Analysis of Online Customers
6. Conclusions
- (1)
- If channel information is unavailable, customers take their expectations of waiting time as the reference point. With the improvement of the reference point sensitivity of customers, the omnichannel catering firm should enhance the safety capacity of the ordering and production stages to meet the needs of customers. At the same time, the improvement of the reference point sensitivity of customers also contributes to the increase in the firm’s profit under the higher customer expected waiting time.
- (2)
- Once channel information is available, customers take the waiting time of customers in other channels as the reference point. In this case, the change of customer sensitivity does not affect the safety capacity in the production stage. At this time, the sensitivity of online customers and the sensitivity of offline customers have exactly opposite effects on the safety capacity in the ordering stage. Moreover, the impact of customer sensitivity on the firm’s profit is also different between the different channels.
- (3)
- We also found that when channel information is available, the firm can set lower safety capacities to reduce costs, and can obtain higher profit when customers’ expected waiting time is small than when information is unavailable. In fact, this provides theoretical support for the choice of the channel information disclosure strategy of firms, and is of great significance for the operation and development of catering enterprises.
Author Contributions
Funding
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Notations | Definitions |
---|---|
Capacity in stage | |
Base capacity in stage | |
Safety capacity in stage | |
Unit capacity cost in stage | |
Waiting time in stage | |
The revenue per customer | |
The proportion of offline customers in the market | |
or | The actual shopping rate of offline or online customers |
Total market demand | |
or | The expected waiting times (reference point) of offline or online customers |
The delivery time to online customers | |
or | The sensitivity of offline or online customers to reference points |
Customer sensitivity to waiting time | |
The proportion of anxiety cost in waiting cost per unit time | |
The base shopping rate of online and offline customers (determined by food quality) | |
The firm’s profits |
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Zhan, W.-T.; Wang, X.-P.; Jiang, M.-H.; Jiang, H.; Huo, D.; Liu, Y.-T. The Capacity Decision-Making of Omnichannel Catering Firms Based on Queueing System Considering Customer Reference Behavior. Systems 2022, 10, 229. https://doi.org/10.3390/systems10060229
Zhan W-T, Wang X-P, Jiang M-H, Jiang H, Huo D, Liu Y-T. The Capacity Decision-Making of Omnichannel Catering Firms Based on Queueing System Considering Customer Reference Behavior. Systems. 2022; 10(6):229. https://doi.org/10.3390/systems10060229
Chicago/Turabian StyleZhan, Wen-Tao, Xue-Ping Wang, Ming-Hui Jiang, Han Jiang, Da Huo, and Yun-Tao Liu. 2022. "The Capacity Decision-Making of Omnichannel Catering Firms Based on Queueing System Considering Customer Reference Behavior" Systems 10, no. 6: 229. https://doi.org/10.3390/systems10060229
APA StyleZhan, W. -T., Wang, X. -P., Jiang, M. -H., Jiang, H., Huo, D., & Liu, Y. -T. (2022). The Capacity Decision-Making of Omnichannel Catering Firms Based on Queueing System Considering Customer Reference Behavior. Systems, 10(6), 229. https://doi.org/10.3390/systems10060229