Litcius/Paper detail

Home health care routing and scheduling in densely populated communities considering complex human behaviours

Ting Zhang, Yang Liu, Xintong Yang, Jingjing Chen, Jiaming Huang

2023Computers & Industrial Engineering19 citationsDOIOpen Access PDF

Abstract

This study focuses on the home health care routing problem (HHCRP) in the scenario of high population density areas where many elders live closely together. This study considers two main objectives. The first is to reduce travel and wait times for nurses or elders. The second concerns socially related objectives in scheduling problems, such as ‘quality of life’ and empowerment, by considering assumptions related to the acquaintanceship and mutual preferences of nurses and elders. This study models the effects of mutual preferences and acquaintanceship on service time in HHCRP. We use the Markov decision process and chance-constrained programming (CCP) to model the system to conserve the sequential service provision parameters and better represent the influence of stochastic service times. Because traditional deterministic algorithms cannot solve such a model, we apply a model-free reinforcement learning algorithm, Q-learning (QL), as well as the ant colony optimisation (ACO) algorithm. Thus, we tackle this problem by developing a model and algorithm to solve complex, large-scale systems. This study’s theoretical and practical contributions are verified by feedback from researchers and practitioners.

Topics & Concepts

Computer scienceMarkov decision processEmpowermentScheduling (production processes)Reinforcement learningOperations researchAnt colony optimization algorithmsMathematical optimizationPopulationVehicle routing problemService qualityMarkov processService (business)Artificial intelligenceRouting (electronic design automation)EngineeringMarketingMathematicsMedicineBusinessEconomicsComputer networkStatisticsEnvironmental healthEconomic growthVehicle Routing Optimization MethodsTransportation and Mobility InnovationsTransportation Planning and Optimization