Tackling Large-scale Home Health Care Delivery Problem with Uncertainty
Abstract
In this work, we investigate a multi-period Home Health Care Scheduling Problem (HHCSP) under stochastic service and travel times. We first model the deterministic problem as an integer linear programming model that incorporates real-world requirements, such as time windows, continuity of care, workload fairness, inter-visit temporal dependencies. We then extend the model to cope with uncertainty in durations, by introducing chance constraints into the formulation. We propose efficient solution approaches, which provide quantifiable near-optimal solutions and further handle the uncertainties by employing a sampling-based strategy. We demonstrate the effectiveness of our proposed approaches on instances synthetically generated by real-world dataset for both deterministic and stochastic scenarios.
BibTeX
@conference{Chen-2017-120475,author = {C. Chen and Z. B. Rubinstein and S. F. Smith and H. C. Lau},
title = {Tackling Large-scale Home Health Care Delivery Problem with Uncertainty},
booktitle = {Proceedings 27th International Conference on Automated Planning and Scheduling (ICAPS '17)},
year = {2017},
month = {June},
pages = {358 - 366},
}