Resource allocation and spatial optimization in home healthcare services
for older adults in rural China
Abstract
Methods: This study established a home care routing and scheduling model
and determined the corresponding spatial optimization problems. The
problems were reduced to a multi-depot vehicle path optimization
problem, and the nondeterministic polynomial time difficulty of this
problem was demonstrated. Results: The results show that the algorithms
developed in this study were significantly more effective than the
benchmark and random algorithms. Considering the total operating costs
of home healthcare institutions, the service-time first greedy
algorithm, customized genetic algorithm, and customized tabu search
algorithm reduced costs by 45.8%, 53.0%, and 57.7%, respectively,
compared with the benchmark algorithm. In addition, the greedy algorithm
and customized genetic algorithm, which prioritize service time,
improved the service quality of family medical institutions by 31.7%
and 65.7%, respectively, compared to the benchmark algorithm, and by
65.7% and 126.3%, respectively, compared to the random algorithm.
Conclusions: By unveiling effective resource allocation and spatial
optimization strategies for home healthcare in rural China, this study
offers valuable insights for policymakers. The findings contribute to
informed decision-making, facilitate cost minimization, and maximize
service quality in healthcare policy formulation and implementation.
Keywords: home care, path planning, resource scheduling, society
population