Tackling Large-scale Home Health Care Delivery Problem with Uncertainty - Robotics Institute Carnegie Mellon University

Tackling Large-scale Home Health Care Delivery Problem with Uncertainty

C. Chen, Z. B. Rubinstein, S. F. Smith, and H. C. Lau
Conference Paper, Proceedings 27th International Conference on Automated Planning and Scheduling (ICAPS '17), pp. 358 - 366, June, 2017

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},
}