Submitted:
21 August 2025
Posted:
22 August 2025
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Abstract
Keywords:
1. Introduction and Motivation
2. Literature Review
3. Model Development
3.1. Multi-period Optimization Problem MBSP
3.1.1. Computational Aspects of Problem MBSP
3.1.2. An Equivalent Reformulation of (MBSP)
3.2. Structural Properties of (MBSP-Equiv)
- If , then the optimal solution satisfy the following,
- If , and if and , for all t, we have the following. Define , as a set of hospitals and in-situ hospitals ranked based on their operating costs. Then the optimal solution satisfy the following1,
3.3. A Robust Reformulation
3.4. Simulating Demand on Hospital Beds
4. Case study: COVID-19 Pandemic and Bed Scheduling in Northern Virginia (NOVA)
4.1. Case study setup
4.2. Findings and Design Implications
4.3. Sensitivity Analysis
4.4. Robust Planning under Uncertain Pandemic Demand
4.4.1. Policy Recommendation
5. Conclusion and Future Directions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Appendix A Paper’s Notation
| Sets | Definition |
|---|---|
| set of hospitals | |
| set of in-situ hospitals | |
| set of symptom severity level | |
| time horizon | |
| Parameters | Definition |
| cost of accommodating a patient in hospital p at time t | |
| cost of accommodating a patient in an in-situ hospital k at time t | |
| cost of patient transfer from hospital p to hospital q | |
| cost of patient transfer from hospital p to in situ hospital k | |
| cost of demand shortage of patient of type i at time t | |
| patient demand of type i at time t | |
| B | available buffer beds |
| bed capacity of hospital p | |
| bed capacity of an in-situ hospital k | |
| recovery rate in hospital p | |
| recovery rate in an in-situ hospital k | |
| O | available tents |
| number of tents that can be fit in an in-situ hospital k | |
| N | population size |
| number of susceptible subjects at time t | |
| number of exposed subjects at time t | |
| number of infected subjects at time t | |
| number of recovered subjects at time t | |
| number of deceased subjects at time t | |
| , , and | average, lower, and upper bound values of the transmission rate |
| probability of incubated subjects turning back to S | |
| rate of incubated subjects moving to I | |
| recovery rate | |
| mortality rate | |
| re-infection rate | |
| Decision variables | Definition |
| allocated patients of type i to hospital p at time t | |
| allocated patients of type i to an in-situ hospital k at time t | |
| transferred patients of type i from hospital p to hospital q at time t | |
| transferred patients of type i from hospital p to an in-situ hospital k at time t | |
| number of occupied beds in a hospital p at time t | |
| number of occupied beds in an in-situ hospital k at time t | |
| number of buffer beds borrowed by hospital p at time t | |
| whether or not to open an in-situ hospital k |
Appendix A.1. Parameter Values in the SEIRD Model
Appendix B Mathematical proofs
- Decision variables , , , and , and their associated non-negativity constraints, introduced in Section 3.1.2, are added.
- The balance constraints defined in (13) are added.
- Decision variables , , , and , and their associated non-negativity constraints, are added.
- The balance constraints defined in () are added.
- (i) The balance constraints (13) and () are equivalent (with the equality replaced by inequality in ()).
- (ii) The objective functions of the modified problems are the same.
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| 1 | We assume, without loss of generality, that one of the hospitals has the lowest operating cost among all hospitals and in-situ hospitals. |
| 2 | This is based on the fact that the proportion of NOVA population in Virginia is 30%. |
| 3 | Due to lack of data, we assume that the recovery rate is the same across all hospitals and and in-situ hospitals. |
| 4 | The buffer of 898 was mainly estimated from the 68% pandemic hospital bed usage reported by [60]. |
| 5 | The current practice solution is derived using a myopic algorithm that assigns incoming patients to available beds following the allocation policy outlined in Theorem 1. |
| 6 | The values of the parameters of the SEIRD model along with the associated references are presented in Appendix A.1
|










| Decision variables | Type | Size |
|---|---|---|
| continuous | ||
| continuous | ||
| continuous | ||
| continuous | ||
| continuous | ||
| binary | ||
| continuous | ||
| continuous | ||
| Constraints | Type | Size |
| Equation (3) | inequality | |
| Equation (4) | inequality | |
| Equation (5) | inequality | |
| Equation (6) | equality | |
| Equation (7) | equality | |
| Binary | - | |
| Non-negativity | inequality | sum of the size of decision variables |
| Hospital Name | City | Number of Beds | Reference | Estimated Cost |
|---|---|---|---|---|
| Inova Fairfax Medical Campus | Falls Church | 928 | [46] | $1,7234 |
| Reston Hospital Center | Reston | 243 | [47] | $16,709 |
| Sentara Northern Virginia Medical Center | Woodbridge | 183 | [48] | $16,884 |
| Inova Fair Oaks Hospital | Fairfax | 174 | [49] | $16,534 |
| Virginia Hospital Center | Arlington | 343 | [50] | $17,059 |
| Mount Vernon Hospital | Alexandria | 219 | [51] | $16,184 |
| Alexandria Hospital | Alexandria | 318 | [52] | $16,009 |
| National Rehabilitation Hospital | Washington, D.C. | 137 | [53] | $15,834 |
| StoneSprings Hospital Center | Sterling | 124 | [54] | $16,359 |
| Westfields Hospital | Chantilly | 140 | [55] | $15,659 |
| Facility Name | City | Number of Beds | Reference | Estimated Cost |
|---|---|---|---|---|
| National Conference Center | Leesburg | 1,000 | [56] | $32,718 |
| Dulles Expo Center | Fairfax | 500 | ||
| George Mason University | Fairfax | 500 | ||
| Hilton Garden Inn | Woodbridge | 200 |
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