Distributionally Robust Hospital Capacity Expansion Planning under Stochastic and Correlated Patient Demand
This paper investigates the optimal locations and capacities of hospital expansion facilities under uncertain future patient demands, considering both spatial and temporal correlations. We propose a novel two-stage distributionally robust optimization (DRO) model that integrates a Spatio-Temporal Ne...
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Zusammenfassung: | This paper investigates the optimal locations and capacities of hospital
expansion facilities under uncertain future patient demands, considering both
spatial and temporal correlations. We propose a novel two-stage
distributionally robust optimization (DRO) model that integrates a
Spatio-Temporal Neural Network (STNN). Specifically, we develop an STNN model
that predicts future hospital occupancy levels considering spatial and temporal
patterns in time-series datasets over a network of hospitals. The predictions
of the STNN model are then used in the construction of the ambiguity set of the
DRO model. To address computational challenges associated with two-stage DRO,
we employ the linear-decision-rules technique to derive a tractable
mixed-integer linear programming approximation. Extensive computational
experiments conducted on real-world data demonstrate the superiority of the
STNN model in minimizing forecast errors. Compared to neural network models
built for each individual hospital, the proposed STNN model achieves a 53%
improvement in average RMSE. Furthermore, the results demonstrate the value of
incorporating spatiotemporal dependencies of demand uncertainty in the DRO
model, as evidenced by out-of-sample analysis conducted with both ground truth
data and under perfect information scenarios. |
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DOI: | 10.48550/arxiv.2403.13234 |