Model Masalah Lokasi Fasilitas Dinamis di Wilayah Pasca Bencana dalam Ketidakpastian Menggunakan Pendekatan Deep Learning

Date
2023Author
Tanti, Lili
Advisor(s)
Efendi, Syahril
Lydia, Maya Silvi
Mawengkang, Herman
Metadata
Show full item recordAbstract
Disaster logistics management is vital in planning and organizing humanitarian assistance
distribution. The planning problem is facing challenges, such as coordinating the allocation and
distribution of essential resources while considering the severity of the disaster, population
density, and accessibility This study proposes an optimized disaster relief management model,
including distribution center placement, demand point prediction, prohibited route mapping, and
efficient relief goods distribution. A dynamic model predicts the location of distribution centers
post-disaster using the K-Means method based on impacted demand points’ positions. Artificial
Neural Networks (ANN) aid in predicting assistance requests around formed distribution centers.
The Forbidden Route model maps permitted and prohibited routes, considering constraints to
enhance relief supply distribution efficacy. The objective function aims to minimize both cost and
time in post-disaster aid distribution. The Model Deep Location Routing Problem (DLRP)
effectively handles mixed nonlinear multi-objective programming, choosing the best forbidden
routes. The combination of these models provides a comprehensive framework for optimizing
disaster relief management, resulting in more effective and responsive disaster handling.
Numerical examples show the model’s effectiveness in solving complex humanitarian logistics
problems with lower computation time, crucial for quick decision-making during disasters.